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Review

Early Insights into AI and Machine Learning Applications in Hydrogel Microneedles: A Short Review

1
Faculty of Mechanical and Aerospace Engineering, Bandung Institute of Technology, Bandung 40132, Indonesia
2
Department of Building, School of Design and Environment, National University of Singapore, Singapore 117566, Singapore
*
Authors to whom correspondence should be addressed.
Micro 2025, 5(4), 48; https://doi.org/10.3390/micro5040048 (registering DOI)
Submission received: 13 April 2025 / Revised: 30 October 2025 / Accepted: 30 October 2025 / Published: 31 October 2025

Abstract

Hydrogel microneedles (HMNs) act as non-invasive devices that can effortlessly merge with the human body for drug delivery and diagnostic purposes. Nonetheless, their improvement is limited by intricate and repetitive issues related to material composition, structural geometry, manufacturing accuracy, and performance enhancement. At present, there are only a limited number of studies accessible since artificial intelligence and machine learning (AI/ML) for HMN are just starting to emerge and are in the initial phase. Data is distributed across separate research efforts, spanning different fields. This review aims to tackle the disjointed and narrowly concentrated aspects of current research on AI/ML applications in HMN technologies by offering a cohesive, comprehensive synthesis of interdisciplinary insights, categorized into five thematic areas: (1) material and microneedle design, (2) diagnostics and therapy, (3) drug delivery, (4) drug development, and (5) health and agricultural sensing. For each domain, we detail typical AI methods, integration approaches, proven advantages, and ongoing difficulties. We suggest a systematic five-stage developmental pathway covering material discovery, structural design, manufacturing, biomedical performance, and advanced AI integration, intended to expedite the transition of HMNs from research ideas to clinically and commercially practical systems. The findings of this review indicate that AI/ML can significantly enhance HMN development by addressing design and fabrication constraints via predictive modeling, adaptive control, and process optimization. By synchronizing these abilities with clinical and commercial translation requirements, AI/ML can act as key facilitators in converting HMNs from research ideas into scalable, practical biomedical solutions.

1. Introduction

HMNs are developing as next-gen tools for transdermal drug delivery, with uses that include insulin delivery, vaccine administration, continuous glucose monitoring, and precise agricultural sensing. They offer a non-invasive substitute to hypodermic needles, enhancing patient compliance and accessibility [1,2]. Integrating the minimal invasiveness of microneedles with the tunability of hydrogels, HMNs serve in drug encapsulation, wound healing, and regenerative medicine [3,4].
Notwithstanding this potential, HMN development encounters ongoing technical challenges: a shortage of biocompatible hydrogels with reliable swelling and degradation characteristics, issues with maintaining consistent tip sharpness and pore structure, deformation risks during production, and complexities in regulating drug-release kinetics for multifaceted therapeutic payloads. Conventional trial-and-error methods are inefficient, resource-demanding, and inadequate for understanding nonlinear connections among material characteristics, design, and in vivo outcomes. Sofian et al. [5] applied ML (Reinforcement learning (RF), Gaussian Processes, convolutional neural networks (CNNs), Bayesian optimization) in the production of bioinks to enhance the printability, strength, and porosity of alginate-carrageenan hydrogels. Wang et al. [6] utilized deep learning and cloud-driven AI in wearable microneedle sensors to enable real-time calibration and detection of multiple fluid biomarkers. AI/ML therefore facilitate extensive analysis, forecasting models, and automated enhancement to tackle these obstacles.
At present, there are limited studies accessible since AI/ML for HMN is still developing and in its initial phase, with data dispersed among separate fields. AI/ML can analyze extensive datasets that exceed traditional techniques [7] and enhance various factors such as hydrogel formulation, shape, and drug release [8]. This advancement necessitates cooperation between data scientists, engineers, and clinicians to guarantee that models are scientifically valid and clinically pertinent [9]. In spite of this potential, the majority of studies concentrate on one specific stage—like material characterization, tip optimization, or defect detection—rather than encompassing multiple stages. This disjointed method hinders iterative feedback across stages, where material characteristics, structural effectiveness, and clinical results could be improved. Without this integration, AI’s capability to speed up timelines, minimize variability, and facilitate personalized, adaptive HMN systems is not achieved.
The goal of this review is to tackle the divided and limited scope of current studies at an initial stage. To address this gap, this review provides a comprehensive synthesis of AI/ML applications covering the entire HMN development continuum. Our discussion revolves around five key thematic areas: (1) materials and manufacturing, (2) diagnostics and treatment, (3) medication delivery, (4) drug innovation, and (5) health/agriculture monitoring. We outline key algorithms and integration methods while also pinpointing outstanding technical and translational challenges. We suggest a systematic development route linking material discovery, structural enhancement, production, and biomedical efficacy toward smooth AI integration, providing a clear pathway for advancing HMNs from research ideas to clinical and market implementation.
Key applications consist of predictive modeling for hydrogel swelling, degradation, and drug release [10], enhancement of hydrogel mechanical properties [11,12], supporting polymer formulation [13], and optimizing microneedle–tissue configurations [14]. In production, evolutionary algorithms and reinforcement learning improve fabrication precision and consistency [15,16]. In addition to fabrication, AI facilitates real-time observation and closed-loop feedback, employing comparable approaches in wound-healing hydrogels and biosensors for dynamic diagnosis and therapy [17,18,19,20].
HMNs provide a minimally invasive method for accurate drug delivery, diagnostics, and biosensing, yet their advancement is obstructed by complex design, material, and production issues. This review seeks to establish a thorough basis for progressing HMN technologies from theoretical models to clinically and commercially feasible solutions by mapping AI applications across five thematic areas and suggesting a structured development pathway.

2. Methodology

The reviewed literature on hydrogel microneedles (HMNs) can be organized into five thematic domains, each representing a distinct application of AI and ML. These domains highlight critical aspects of HMN development, including material design, diagnostics, therapeutics, drug delivery, drug development, and sensor-based monitoring for health and agriculture. Based on this categorization, Table 1 presents a detailed overview of the five thematic domains, summarizing their focus and the contributions of AI/ML tools in each area.
This research employs a systematic thematic synthesis approach to explore the integration of AI/ML into microneedle and hydrogel technologies. The evaluation is grounded in review articles, each chosen for its emphasis on AI/ML uses in material innovation, drug delivery, or wearable diagnostics. The articles were classified into five thematic categories, as detailed in the included reference Table 1: Material and Microneedle Design, Microneedles for Diagnostics and Therapy, Microneedles for Drug Delivery, Microneedles for Drug Development, and Microneedle Sensors for Health and Agriculture.

2.1. Article Selection and Inclusion Criteria

Both review and research articles were included to maintain relevance and scientific rigor. Every article had to explicitly address the involvement of AI or ML regarding hydrogel materials, microneedle production, drug formulation, diagnostics, or intelligent sensor systems. The chosen articles needed to cover not just technical implementations but also obstacles and future pathways for AI/ML integration. Articles that did not have AI/ML relevance or did not address future applications were omitted. The final group of articles was pinpointed via full-text evaluation, guaranteeing an even distribution among fields like biomedicine, materials science, and intelligent sensing.

2.2. Thematic Grouping Developmental Pathways

After conducting a thorough text analysis of the chosen articles, the review employed a thematic grouping approach to organize the literature into five unique categories: (1) Material and Microneedle Design, (2) Microneedles for Diagnostics and Therapy, (3) Microneedles for Drug Delivery, (4) Microneedles for Drug Development, and (5) Microneedle Sensors for Health and Agriculture.
This classification was established according to the primary research focus of each article, the AI methods discussed, the intended biomedical application, and the contextual difficulties encountered. Thematic categorization facilitated a more organized synthesis of the field’s expansiveness and permitted direct comparisons of technological advancements, constraints, and suggested future tasks.

2.3. Analytical Dimensions

Articles within each thematic group were analyzed based on four key parameters:
  • Thematic Group Description—A synthesized definition of the core AI/ML application within the domain.
  • Author-Year Attribution—Each contributing author was assigned to only one group to maintain exclusivity and balance.
  • Data Structure—Parameters for analytical comparison that enable systematic evaluation across groups while preserving domain-specific depth.
  • Future Work—Suggestions from the authors for advancing the field, harmonized across thematic groups.
Thematic summary tables (Table 2, Table 3, Table 4 and Table 5 in Section 3) provide a structured comparative assessment of review studies, detailing AI/ML components, methodologies, and applications. This approach allows identification of patterns or connections that may be overlooked when examining individual articles.
Each table is organized with the following columns:
  • Author(s) and Year—Identifies researchers and publication date, placing studies in chronological context.
  • AI/ML—Indicates the use of AI, ML, or both.
  • HMN—Specifies the type of material or platform, such as microneedles or hydrogels.
  • AI/ML Techniques & Algorithms—Details computational models and data-driven approaches (e.g., CNNs, SVM, PCA, RL).
  • Key AI/ML Role/Purpose/Application—Defines primary functions of AI/ML, including predictive modeling, formulation optimization, biosignal analysis, or drug release profiling.
  • AI/ML Integration in HMN—Explains how AI/ML is embedded in microneedle systems to enhance functionality.
  • AI-Enhanced HMN Features—Highlights functional improvements, such as optimized material selection, microneedle design, enhanced drug release, predictive alerts, or adaptive performance.
  • Materials Used—Lists polymers, nanomaterials, or conductive substances employed (e.g., PVA, chitosan, graphene, CNTs).
  • AI-Enhanced Targeted Design Features—Describes AI-enabled customization of performance metrics, such as hydrogel porosity, degradability, drug release kinetics, or mechanical-electrical synergy.
  • Dataset/Data Type/Size—Provides the nature and scale of data used, including experimental, simulated, field-collected, or real-time streaming data.
  • Targeted Application—Defines practical use, including drug delivery, biosensing, wound healing, drug discovery, or precision agriculture.
  • Target Drug Parameter—Lists compounds or physiological markers studied (e.g., glucose, doxorubicin, environmental toxins).
  • Targeted Parameter/Sickness—Specifies targeted diseases or conditions (e.g., diabetes, cancer, crop stress, environmental contamination).
  • Results, Limitations, and Future Work—Summarizes performance indicators (accuracy, sensitivity), acknowledged limitations (data availability, computational cost, biocompatibility), and anticipated research directions (closed-loop optimization, clinical testing, AI-health integration).
Together, these columns provide a comprehensive framework for assessing AI-driven innovations in multi-domain systems involving materials and microneedle technologies, enabling readers to compare studies systematically and identify gaps for future research.

2.4. Methodological Strengths and Limitations

The strength of this thematic approach is its capacity to chart the AI/ML landscape within microneedle research while maintaining domain relevance. Nonetheless, constraints involve possible thematic redundancies and the omission of experimental research, which might highlight recent advancements that have not been assessed. Notwithstanding this, the approach provides a thorough and adaptable developmental pathway for forthcoming meta-analyses in AI-augmented biomedical technologies.

3. Developmental Pathway of Five Thematic Groupings

3.1. Thematic Group 1: Material and Microneedle Design

AI/ML tools are transforming material design by enabling predictive modeling of hydrogel properties like swelling, strength, and drug release. This thematic group covers nine studies using algorithms such as CNN, FEM, and Bayesian Optimization. Table 2A,B summarize AI roles, integration strategies, materials used, targeted applications, performance outcomes, and future directions in microneedle design and function.
Table 2. (A) AI/ML Techniques and Design Strategies in Microneedle Material Innovation. (B) Materials, Datasets, Applications, and Outcomes in Microneedle Material Studies.
Table 2. (A) AI/ML Techniques and Design Strategies in Microneedle Material Innovation. (B) Materials, Datasets, Applications, and Outcomes in Microneedle Material Studies.
(A) Thematic Group 1: Material and Microneedle Design
Author (Year)AI/ML BothHydrogel Microneedle HMNAI/ML Techniques&
Algorithms
Key AI/ML Role/
Purpose
Application
AI/MLIntegration Innovation in HMNAI-Enhanced HMN FeaturesAI-Enhanced Targeted Design Features
1He W et al. [21]ML HMNXGBoost, SVM, RF, PCA, K-means, CNN, RNN, GNN, GAT, BO.Material screening, drug release, pain prediction, stress analysis Pain minimization via FEA-COMSOL, BO.; CNN for defect detectionStability, defect detection, optimized length, reduced pain, improved flow & geometryDesign, QC, material selection, geometry, stress, flow, comfort
2Teodoro et al. [22]BothHMNPredictive modeling, generative design, supervised ML, FEMDefect prediction, design optimization, signal tuningPredictive modeling and performanceGeometry, signal responseGeometry, drug release kinetics, Insertion force, signal mapping
3Negut & Bita [10]BothHydrogelDOE, PCA ANN, SVM, RF, CNN, GAN, DNNModeling, formulation optimization, release kineticsVirtual screening, ML-guided synthesis, gelation, print QCMechanical strength, precise release, swelling, degradationPorosity, biodegradability, swelling, printability, delivery tuning
4Finster et al. [23]BothHydrogelANN, DNN, XGBoost, PCA, DDPG, DFT, FEA, MD, CFD, SVM, RF, NN, GAOptimize formulations, predict properties, automate bioprintingConductive hydrogel design, real-time sensing, ML-guided tuningMechanical strength, precise release, electrical, adhesive propertiesPorosity, conductivity, mech–electrical synergy, biocompatibility
5Ji Wang et al. [24]BothHMNAlphaFold, ML design toolmRNA sequence design and structure predictionAlphaFold for LNP-mRNA structure optimizationEnhanced wound healing via mRNA designPredictive targeting for pro-healing proteins
(B) Thematic Group 1: Material and Microneedle Design
Author (Year)Materials UsedDataset/Data Type/SizeTargeted
Application
Target Drug/Biosensing
Parameter
Targeted
Parameter/
Sickness
ResultsLimitationsFuture Work
1He W et al. [21]Hydrogel, sugar, Silicon, glass, metals, polymers, sugar, ceramicsSimulated (30 k), empirical (2.4 k)Drug delivery, biosensing, wound healing, dermatologyTriamcinolone, glucose, Minoxidil, TA, acyclovir, AZA, MTX, VEGF, PBNs, SD-208, EGCG, quercetin, etc.Diabetes, Alopecia, acne, herpes, lupus, psoriasis, wounds, cancerCNN = 96% accuracy, GAT = 8.3 × 10−5 MPa MSE, optimized flow & pain scoresLimited clinical trials, High cost (MEMS, TPP), complexity, data volumeIoT integration, personalized models, real-time ML feedback, explainable AI
2Teodoro et al. [22]PVA, Ag NPs, methacrylated polymers, Thermoplastics, UV polymersSimulated + empiricalBiosensing, DiagnosticsGlucose, LactateBiosensing, drug delivery, Diabetes, Metabolic disorderThiram LOD: 10-710-7 M; 95% Cu release, Enhanced sensitivity and wearable designScalability, data gaps, biocompatibility, regulatory hurdlesAI-closed-loop design, smart integration
3Negut & Bita [10]Alginate, PNIPAAm, PEG NIPAAm, AAc, PEG, PLGA, PVA, ChitosanExperimental (small), simulated (large)Tissue engineering Drug delivery, biosensingAntibiotic permeability Doxorubicin, glucose, stressBacterial infections Cancer, chronic woundsAccurate modeling (93.5% CNN accuracy)Data scarcity, model opacity, limited interpretabilityDL for personalization, domain-integrated ML, scalable data
4Finster et al. [23]Chitosan, PNIPAm, carbon nanotubes, PEDOT:PSS, PVA, polyaniline, alginateExperimental/SimulatedDrug delivery, wound healing, Bioelectronics Biosensing, NeuromodulationDoxorubicin, PTEN inhibitors, Glucose, dopamine, electrical signalsDiabetic ulcers, infections, Neurodegeneration95% gesture recognition, 40% fewer trials, Higher accuracy, faster optimizationSmall datasets, high computational cost, Data scarcity, transfer-abilityMulti-objective RL, clinical trials, real-time ML, feedback loop
5Ji Wang et al. [24]MXene hydrogel MNs + HA + LNPsAlphaFold mRNA designWound healing therapyTriplet mRNA: PDGF, FGF-7, VEGFDiabetic wound healing92.33% wound closure in 12 daysScalability, human trial lackingAnti-inflammatory mRNA, real-time monitoring, clinical trials
He W et al. [21] utilized ML (NN, decision trees, Bayesian optimization) within a COMSOL–MATLAB environment to enhance MN production, decreasing anticipated pain by 37% while maintaining structural integrity. ML improved the prediction of skin penetration, monitoring pH levels in diabetic wounds, extracting interstitial fluid, and detecting biomarkers. Future efforts focus on developing adaptive MN therapeutic platforms that utilize IoT technology.
Teodoro et al. [22] broadened the emphasis on MN microfabrication, showcasing AI’s involvement throughout development phases. In 3D printing, AI identified and anticipated flaws, enhanced material choice, and optimized parametric design for durability, biocompatibility, and expense. Analytics powered by AI improved the processing of biosensor data for glucose, urea, and pH, whereas integration with IoT facilitated cloud monitoring without wires. Future directions involve developing biodegradable MNs and expanding ML datasets to tackle environmental and patient variability.
Negut & Bita [10] reviewed AI/ML strategies for hydrogel design and optimization, employing NN, SVM, RF, and CNNs to predict swelling, strength, and biocompatibility. RF models classified cardiomyocyte yields (75% accuracy) and predicted antibiotic skin permeability, while CNNs improved 3D bioprinting precision (93.5%). RL and GANs accelerated formulation, enabling self-healing, stimuli-responsive hydrogels for drug delivery, wound healing, and tissue engineering.
Finster et al. [23] highlighted AI/ML–simulation integration (ANN, DNN, CNN, XGBoost, SVR, PCA, DDPG) for hydrogel optimization in wound healing, tissue engineering, and biosensing. BO reduced bioink iterations by 40%, ANN/DNN improved mechanical and drug release properties, and CNNs achieved > 95% biosensing accuracy. RL balanced porosity and conductivity, with future work targeting multi-objective RL and expanded in vivo validation.
Ji Wang et al. [24] exhibited the integration of AI and biomaterials, creating MXene–hyaluronic acid hydrogel MNs infused with AI-enhanced triplet mRNA (PDGF, FGF-7, VEGF) for healing diabetic wounds. Protein design using AlphaFold (version 2.3.2) improved cell migration, collagen deposition, and angiogenesis. Preclinical findings indicated a 92.33% healing of wounds within 12 days. Ongoing obstacles encompass mass production and clinical validation, with forthcoming intentions for anti-inflammatory mRNA, combined wound monitoring, and regulatory progress.
Together, these studies combine computational modeling, sophisticated fabrication, and AI-enhanced optimization to speed up targeted material synthesis. This thematic group illustrates the importance of interdisciplinary cooperation between materials scientists, engineers, and data scientists in discovering new therapeutic options. To tackle issues like data limitations and model transparency, they suggest strong, data-informed approaches. Combined, their efforts indicate a transformative change in the creation of sophisticated materials and nanocomposites for medical use, providing both theoretical understanding and actionable methods for swift biomedical prototyping.

3.2. Thematic Group 2: Microneedles for Diagnostics and Therapy

Integration of AI with MN systems allows for immediate diagnostics and smart drug administration. This thematic group emphasizes the transformation of MNs into closed-loop, personalized healthcare tools through AI-driven logic, signal filtering, and adaptive control. Table 3A,B provide a summary of AI techniques, control methods, sensor incorporation, materials, targets, diseases, results, and potential future avenues in the studies reviewed.
Table 3. (A) AI/ML Techniques and Smart Integration in Diagnostic and Therapeutic Microneedles. (B) Materials, Datasets, Applications, and Performance Outcomes in Smart Diagnostic Microneedles.
Table 3. (A) AI/ML Techniques and Smart Integration in Diagnostic and Therapeutic Microneedles. (B) Materials, Datasets, Applications, and Performance Outcomes in Smart Diagnostic Microneedles.
(A) Thematic Group 2: Microneedles for Diagnostics and Therapy
Author (Year)AI/ML BothHydrogel
Microneedle HMN
AI/ML
Techniques
&Algorithms
Key AI/ML Role/Purpose ApplicationAI/ML
Integration
Innovation in HMN
AI-Enhanced HMN
Features
AI-Enhanced
Targeted Design
Features
1Ashraf et al. [25]BothMN ML, DL, supervised/unsupervised, signal denoisingNoise reduction, biomarker prediction, sensor calibration, signal filtering, diagnosticsIntegrated into wearable MNs for real-time diagnosticsPredictive sensing, personalized biosensing, improved accuracy, adaptive calibrationSignal calibration, multi-biomarker detection
2S. Wang et al. [26]BothHMNAI, ANN, Logic Encoding, IoTLogic encoding, real-time monitoring, smart tracking, adaptive therapyProgrammable MNs, AI-driven control, therapeutic pathwaysAdaptive release, biosensing, multi-therapy MNs, remote controlMulti-disease targeting, drug timing control
3Merzougui et al. [27] AI (proposed)HMNNot specified (general AI/ML for data analysis)Enhance diagnostic accuracy, real-time POC analysisAI for biomarker signal interpretationSignal filtering, noise reduction, automated quantificationData processing efficiency
4Liu et al. [28] BothHMNXGBoost, LSTMClosed-loop inflammation monitoringReal-time biosensing with integrated feedbackTheranostic system for RAPrediction of cytokine levels & treatment response
5Xiao et al. [29]BothHMNMobileNet, PCASmartphone-assisted pH detectionAI-visualization via smartphone fluorescenceReal-time wound pH monitoringDynamic healing status identification
(B) Thematic Group 2: Microneedles for Diagnostics and Therapy
Author (Year)Materials UsedData Type/SizeTargeted
Application
Biosensing
Parameter
Targeted
Parameter/
Sickness
ResultsLimitationsFuture Work
1Ashraf et al. [25]Metals, semiconductors, polymers, colorimetric/electrochemical MNSimulated/empirical (small data), High-dimensional time-series biosensor dataBiosensing, therapy, Non-invasive diagnostics, AI-guided monitoringGlucose, lactate, cortisol, nucleic acids, pH, electrolytesGlucose, Diabetes, cancer, inflammation, autoimmune diseaseAI-enabled real-time monitoring with high-fidelity, adaptive biosensingHigh accuracy, limited scalability; ISF variability, signal drift, costly integrationAI-driven closed-loop systems, novel materials, Standardized datasets, clinical trials, cost savings, regulatory compliance
2S. Wang et al. [26]GelMA, PLGA, PVP, metals MeHA, PEGDA, PDA, GO, AuNR, BP, MOFsExperimental (in vivo/in vitro)Drug delivery, biosensing Wound healing, cancer, diabetes, obesity, alopeciaInsulin, chemotherapeutics, ROS, TNF-α, VEGF, NOCancer, Tumor, wounds, diabetes12-day wound healing, tumor suppression Strong therapeutic outcomesPreclinical stage; no AI; mechanical design; complex data handlingAI-driven MN chips, clinical trials, Wireless AI control, full wearable systems
3Merzougui et al. [27]Polymers, hydrogels, metalsSimulated/empirical (small datasets)Biosensing (cancer biomarkers)Tyrosinase, CA15-3, GPC1 exosomesBreast cancer, melanoma, colorectal cancerDetection limits: 0.52 μM–1.1 copies/μLLow sample volume, no clinical AI validationAI-driven portable readers, multiplex detection
4Liu et al. [28]PPy-based HMNs(PEGDA + dopants)Impedance, temp, clinical score (RA rats)RA drug delivery + inflammation monitoringMethotrexate (MTX), Rhodamine BRheumatoid ArthritisPaw swelling ↓40%, cytokines ↓, ML AUC = 0.787ML accuracy (76.74%), rat-only studyClosed-loop system, multiplexing, human trials
5Xiao et al. [29]MOF-HMNs, fluorescent reagentsSmartphone image dataset (fluorescence pH data)Wound pH monitoringNo drug (self-sterilization + pH monitoring)Chronic wounds, sepsis preventionReliable pH detection via ML, self-sterilization confirmedNo clinical data, device scalabilityClinical trials, biomarker expansion, IoT integration
Ashraf et al. [25] applied deep learning (CNNs, RNNs) to optical and electrochemical MN sensor data, reducing noise, calibrating outputs, and detecting biomarker patterns. Clustering aided disease subtyping, while RL achieved 98.4% glucose monitoring accuracy in closed-loop diabetes care. Applications included stress and cortisol monitoring, though challenges remain with ISF variability and the scarcity of large, diverse datasets for robust model generalization.
Expanding on the concept of adaptive systems, S. Wang et al. [26] conceptually examined the integration of AI/ML with MNs, imagining programmable, smart MNs for immediate monitoring and drug release responsive to biomarkers. Suggested designs featured neural network–driven dosing and adaptive photodynamic therapy, focusing on improving treatment accuracy. Despite the absence of experimental AI execution, the review highlighted the possibilities for data-driven, autonomous MN platforms.
Merzougui et al. [27] addressed MN array–based dermal ISF biopsy for cancer diagnostics, focusing on material and sensor innovations. While AI/ML was not implemented, the authors noted its potential for noise filtering, real-time analysis, and automated biomarker quantification. Electrochemical and fluorescent MN sensors detected tyrosinase at 0.52 μM for melanoma screening, with AI expected to improve multiplex detection accuracy.
Liu et al. [28] developed a wearable hydrogel MN device for rheumatoid arthritis, integrating impedance sensing, methotrexate delivery, and electrical stimulation. Logistic regression predicted inflammation with 76.74% accuracy in rat models, enabling therapy adjustments. Treatment reduced paw thickness by 40% and preserved bone density. Biodegradable within four weeks, the system shows promise for closed-loop chronic disease management despite limited predictive accuracy and lack of human validation.
Xiao et al. [29] introduced a MOF–hydrogel MN patch for wound pH monitoring and localized antimicrobial action, using smartphone fluorescence imaging. ML classified pH levels with >90% accuracy. In vitro and ex vivo tests confirmed stability, bacterial inhibition, and clinically relevant sensitivity. Limitations include no clinical validation and limited dataset diversity, with future work targeting broader biomarker detection and improved scalability.
Together, this thematic group foresees future MN systems effortlessly combined with wearable devices and cloud-driven data platforms. The research highlights addressing mechanical and regulatory obstacles via AI-driven, iterative design enhancements. Collectively, they delineate a strategy for smart MN platforms that can provide diagnostics and therapeutics instantly. These adaptive, clinically applicable, and predictive systems connect the divide between laboratory prototypes and commercial healthcare solutions, promoting personalized, minimally invasive digital health.

3.3. Thematic Group 3: Microneedles for Drug Delivery

This thematic group covers hydrogel and polymer-based microneedles for sustained drug delivery, emphasizing biocompatibility, dissolution, and formulation control. Reviewed studies apply AI/ML methods like DL and FEM to optimize geometry, kinetics, and dosing. Table 4A,B summarize AI strategies, materials, drug targets, diseases treated, outcomes, limitations, and proposed improvements for future delivery systems.
Table 4. (A) AI/ML Techniques and Design Optimization in Microneedle-Based Drug Delivery. (B) Materials, Drug Targets, Outcomes, and Future Directions in Microneedle-Based Drug Delivery.
Table 4. (A) AI/ML Techniques and Design Optimization in Microneedle-Based Drug Delivery. (B) Materials, Drug Targets, Outcomes, and Future Directions in Microneedle-Based Drug Delivery.
(A) Thematic Group 3: Microneedles for Drug Delivery
Author (Year)AI/ML BothHydrogel Microneedle HMNAI/ML Techniques & AlgorithmsKey AI/ML Role/Purpose ApplicationAI/ML Integration Innovation in HMNAI-Enhanced HMN FeaturesAI-Enhanced Targeted Design Features
1Albayati et al. [30]BothHMNDNN, ANN, BioSIM, COMSOL, KNN, SVMPersonalized delivery, predictive skin permeability, diffusion & release modelingOptimized MN geometry, ML-integrated skin data, AI-driven real-time deliveryPermeability prediction, real-time dosing, personalized delivery, spatial MN design, kinetic controlDrug release precision, Microneedle geometry, diffusion control
2Aghajani et al. [31]ProposedHMNNo specific technique appliedFuture optimization of delivery systemsBriefly mentioned (AI for future optimization)None (theoretical potential)Sustained release, drug penetration, Riluzole CNS targeting
3Suriyaamporn et al. [32]BothHMNRF, PCA, SVM, ANNOptimization of formulation & release predictionAI-guided optimization of PEGylated formulationsImproved drug permeation and cancer cell apoptosisFeature extraction for enhanced therapeutic targeting
4Bagde et al. [33]BothHydrogelCNNQuality control and drug diffusion modelingCNN-based image inspection of MN printsControlled ibuprofen releaseBiphasic delivery modeling with CNN
5Yuan et al. [34]BothHMNXGBoost, Ridge, Lasso, SVRDrug flux predictionXGBoost outperforming traditional Fick modelsData-driven simulation of MN performanceMulti-drug transport modeling
6Zong et al. [35] BothHMNReal-time sensor monitoring, adaptive ML algorithmsOptimize gas production, drug penetration, safety controlDynamic feedback for microbial metabolism and gas/drug controlReal-time monitoring, 94% dermal retention, controlled gas propulsionSpatiotemporal drug release, minimized systemic exposure
(B) Thematic Group 3: Microneedles for Drug Delivery
Author (Year)Materials UsedDataset/Data Type/SizeTargeted ApplicationTarget Drug/Biosensing ParameterTargeted Parameter/SicknessResultsLimitationsFuture Work
1Albayati et al. [30]Chitosan, ethosomes, liposomes, PLA, hydrogels, metallic/biodegradable MNs (referenced)Clinical trials, simulated & empirical wearable biosensor dataPersonalized transdermal drug delivery and biosensingAcyclovir, SARS-CoV-2 vaccine, insulin, lidocaine, fentanyl, biologics; pH, temp, hydrationHSV, COVID-19, Alzheimer’s, Diabetes, pain, hormone therapy, neurological diseasesFewer side effects; improved dose prediction, adaptive delivery, enhanced bioavailabilityData bias, dataset standardization, skin variability, wearable integration complexityAI-nano integration, real-time AI patches, IoT feedback, smart skin models, AI-guided fabrication
2Aghajani et al. [31]Polymers, lipids (nano-particles); phospho-lipids (liposomes), micellesPreclinical (rodents), small trials, review-based analysisDrug deliveryRiluzoleALS (Amyotrophic Lateral Sclerosis)Improved CNS riluzole delivery in animal models, better complianceRegulatory barriers, scalability, cost, BBB penetration, patient variability, no AIAI-driven optimization, MN refinement, AI/ML for personalization & scale-up
3Suriyaamporn et al. [32]Crosslinked hydrogel MNs (PEGylated liposomes, HPβCD, limonene)75 formulations (experimental dataset)Transdermal chemotherapy5-FU (fluorouracil)Non-melanoma skin cancer (BCC, SCC)91.5% apoptosis, 41.78% permeation, >90% recoveryLimited to in vitro/ex vivo, scalability issuesClinical trials, other drugs, real-time tracking, long-term stability
4Bagde et al. [33]PEGDAMA-based resin MNsCNN-analyzed print images + in vivo drug dataTransdermal drug deliveryIbuprofen (IBU)Pain/inflammationSustained release (AUC = 62,812 ng/mL*h), biphasic deliverySingle drug, small-scale testingBiologic delivery, clinical trials, IoT integration
5Yuan et al. [34]Hydrogel & plastic MNs191 points (6 drugs) for ML predictionTransdermal drug delivery simulationCaffeine, Lidocaine, Rhodamine B, GHK, BSA, CopperGeneric delivery modelingXGBoost: R2 = 0.98; better than Fick’s lawSmall, unbalanced datasetExpand data, model validation, clinical integration
6Zong et al. [35]Gas-permeable hydrogels, thermosensitive polymersExperimental, porcine & murine modelsTransdermal drug deliveryCalcipotriol, H2, NO, H2SPsoriasis, tumors, chronic wounds94% dermal drug retention, 1000 μm depth, effective symptom reductionMicrobial safety, gas control precision, clinical scalabilityUse safer microbes, smart hydrogels, regulatory advancement
Albayati et al. [30] utilized DNN and SVM to forecast drug skin permeability and enhance TDDS parameters, increasing flux by 50% compared to conventional methods. COMSOL/BioSIM (version 5.3) simulations demonstrated temperature-dependent absorption, whereas ANN-optimized hydrogels facilitated prolonged Alzheimer’s medication release. Patches with integrated sensors modified dosing based on physiological feedback, shortening rivastigmine trial time by 30%. Future efforts aim at merging AI with nanotechnology for targeted oncology.
Expanding to neurodegenerative therapies, Aghajani et al. [31] reviewed HMN delivery of riluzole for ALS, tackling low bioavailability and limited blood–brain barrier (BBB) penetration. Although AI/ML was not applied, the authors proposed its use for optimizing formulations, predicting release kinetics, and tailoring MN geometry to drug properties—enabling scalable, reproducible, patient-specific systems. A related example of AI integration is shown in [32] (Graphical abstract), where AI modeling guided the optimization of crosslinked hydrogel microneedles for localized 5-FU delivery.
Predictive modeling using a Gaussian Process Regressor optimized crosslinking parameters, enabling incorporation of 5-FU–HPβCD liposomes to improve permeation, stability, and localized delivery. In vitro/ex vivo studies demonstrated significant cancer cell apoptosis, underscoring the translational potential of AI-driven formulation strategies in microneedle-mediated drug delivery. Adapted from Suriyaamporn et al. [32].
Bagde et al. [33] developed an AI-optimized 3D-printed PEGDAMA MN patch for biphasic ibuprofen delivery. CNNs refined MN geometry for fidelity and reproducibility via DLP printing. The patch achieved burst and sustained release over 72 h, with strong IVIVR and first-then zero-order kinetics. Validation in vitro, ex vivo, and in vivo supports broader potential, though scalability, clinical testing, and expanded APIs remain future needs.
Yuan et al. [34] used ML to predict drug permeation through MN-treated skin, analyzing 191 experiments with six drugs. Among Fick’s law, MLR, RF, and XGBoost, the latter performed best (R2 = 0.98). Permeation time and drug loading emerged as key predictors. While highlighting ML’s promise for MN design optimization, dataset homogeneity limits clinical and industrial generalizability.
Zong et al. [35] presented a HMN platform powered by microbial metabolism for self-sufficient drug delivery. Encapsulated microbes produced gas to drive calcipotriol into the dermis, achieving 94% retention. A thermoresponsive barrier halted leakage, allowing for regulated release without outside energy. Although AI/ML was not utilized, the modular biohybrid method demonstrates potential for personalized medicine, cancer treatment, and wound healing, yet microbial safety and gas regulation continue to be significant challenges.
Together, this collection of research shows how microneedles made from hydrogels—when paired with smart design concepts—can produce systems that are both efficient and minimally invasive. Numerous writers anticipate developments arising from AI-based biosensors for immediate therapeutic observation. Collectively, these investigations enhance transdermal drug delivery through the incorporation of intelligent polymers with sophisticated manufacturing, providing dosage-efficient, personalized, and clinically pertinent solutions while fostering sustainable, budget-friendly treatment approaches.

3.4. Thematic Group 4: Drug Development for Microneedles

This thematic group examines AI applications in drug development, including screening, formulation, toxicity prediction, and bioavailability. Studies highlight tools like deep learning, neural networks, and systems modeling. While not MN-specific, they inform MN-compatible delivery strategies. Table 5A,B summarize AI techniques, design roles, materials, datasets, drug targets, medical conditions, outcomes, limitations, and future directions.
Table 5. (A) AI/ML Techniques and Applications in Drug Development for Microneedle-Enabled Therapeutics. (B) Materials, Datasets, Therapeutic Targets, and Outcomes in AI-Supported Drug Development.
Table 5. (A) AI/ML Techniques and Applications in Drug Development for Microneedle-Enabled Therapeutics. (B) Materials, Datasets, Therapeutic Targets, and Outcomes in AI-Supported Drug Development.
(A) Thematic Group 4: Drug Development for Microneedles
Author (Year)AI/ML BothHydrogel Microneedle HMNAI/ML Techniques &
Algorithms
Key AI/ML Role/
Purpose
Application
AI/ML
Integration Innovation in HMN
AI-Enhanced HMN
Features
AI-Enhanced
Targeted Design
Features
1Biswas et al. [15]BothHMNVoting Regressor, Ensemble MLPrediction of transdermal drug deliveryModel ensemble for flux predictionImproved RMSE in simulated releaseFramework validation across various drugs
2Reddy et al. [36]Both (conceptual)HMNPredictive modeling, deep learning (conceptual)Design optimization, personalized dosing, feedback systemsConceptual integration with biosensors and smart releaseProposed: Real-time feedback, adaptive dosingResponsive release, closed-loop regulation (future)
(B) Thematic Group 4: Drug Development for Microneedles
Author (Year)Materials UsedDataset/Data Type/SizeTargeted
Application
Target Drug/
Biosensing Parameter
Targeted
Parameter/Sickness
ResultsLimitationsFuture Work
1Biswas et al. [15]Hydrogel MNs and solid MNsDataset from Yuan et al., ML predictionsDrug permeation predictionUnspecifiedGeneral drug deliveryVoting regressor RMSE: 3.24 (percentage), 654.94 (amount)No experimental validationAdvanced models, expanded datasets, clinical validation
2Reddy et al. [36]Chitosan, HA, gelatin, PEG, PVA, smart hydrogelsReview, multiple cited worksSmart drug deliveryInsulin, doxorubicin, 5-FU, curcumin, antibioticsDiabetes, cancer, infection, pain, inflammationImproved compliance, targeted release, reduced toxicityToxicity, clinical translation, regulation, costAI integration, feedback DDS, better targeting and biocompatibility
Biswas et al. [15] evaluated ML models—including stacking regressor, voting regressor, and ANN—for forecasting drug permeation from hydrogel and solid MNs based on Yuan et al. [34] dataset. The voting regressor reached the highest accuracy (RMSE: 3.24% and 654.94 µg), exceeding previous models. A web application based on Flask was developed for practical purposes. Constraints involve the diversity of the dataset and the absence of experimental validation, with future efforts aimed at deep learning and real-time quality assurance.
Complementing this modeling focus, Reddy et al. [36] reviewed smart drug delivery systems using hydrogels, microneedles, and other stimuli-responsive carriers for site-specific release triggered by pH, temperature, or enzymes. While lacking experimental data, they proposed integrating AI/ML for predictive modeling, biosensor feedback, and closed-loop delivery. Applications span diabetes, cancer, and infection, but challenges remain in toxicity, cost, and regulatory approval.
Collectively, this thematic group highlights the significance of cooperation between AI experts and pharmaceutical researchers in developing tailored, adaptive medication treatments. Their research demonstrates AI’s capability to revolutionize all phases of pharmaceutical development—from molecular design to clinical implementation—while providing a developmental pathway for quicker, more dependable formulation. These investigations aid in establishing new benchmarks for efficiency, accuracy, and adherence to regulations, indicating a shift toward smart, data-informed drug discovery methods that are both creative and clinically significant.

3.5. Thematic Group 5: Microneedles Sensors for Health and Agriculture

This thematic group explores AI-integrated microneedle sensors for real-time monitoring in healthcare and agriculture. Studies highlight applications in disease management, crop stress detection, and VOC tracking. AI enhances signal fidelity, feedback control, and scalability. Table 6A,B summarize AI techniques, integration methods, materials, targets, conditions monitored, outcomes, limitations, and future directions across wearable and implantable sensor platforms.
Kharb et al. [37] investigated the integration of AI/ML with non-invasive MN patches, smart tattoos, and implantable biosensors for the real-time analysis of biomarkers in ISF, sweat, and breath. CNNs and RNNs eliminated noise and identified substances such as glucose, lactate, and cortisol. Uses encompassed detecting COVID-19 from data collected by wearable devices. Obstacles encompass calibration, variety in datasets, privacy concerns, and ethical issues, with advances dependent on strong models and interdisciplinary teamwork.
Ermis et al. [38] reviewed wearable materials, including hydrogels and MNs, for health and sports, noting AI/ML’s potential for personalized hydration and stress management. ML-calibrated MN glucose sensors using light polarization achieved up to 95% correlation with invasive tests. While AI/ML was not the main focus, the study highlights predictive analytics as an emerging tool for athletic performance optimization.
Similarly, A. Sen et al. [39] synthesized advancements in polymer nanocomposite (PNC) devices for enhancing glucose biosensors and enabling controlled insulin release. While AI/ML was not explored in depth, the review positioned these technologies as emerging enablers of real-time glucose monitoring and predictive analytics in diabetes care.
Kachouei et al. [40] analyzed IoT-integrated sensors utilizing AI/ML for sustainable farming and food security. The applications featured CRISPR-Cas12a combined with AI-enhanced colorimetry for detecting pathogens (LoD: 3.4 × 102 CFU/mL) and machine learning-enabled drone imaging for evaluating crop health. Systems also analyzed plant VOCs for early detection of stress. Challenges encompass energy requirements of IoT, absence of data standards, and calibration in varying environments.
Fucheng Zhang et al. [41] utilized AI/ML on agricultural sensor data for forecasting yields and predicting diseases. ANNs measured IAA (LoD: 10.8 pg/mL) and forecasted crop stress based on ethylene concentrations (0.5–20 ppm). Hyperspectral imaging utilizing deep learning identified disease VOCs with over 97% accuracy, whereas ML-driven 3D-printed strain sensors monitored plant growth. Ongoing challenges involve field signal drift and sensor expenses, with upcoming efforts focusing on self-calibration and environmentally friendly designs.
Ausri et al. [42] developed a dopamine–hyaluronic acid HMN patch for continuous ketone monitoring in DKA management. Using β-hydroxybutyrate dehydrogenase and NAD+ for selective β-HB detection, a GBDT model corrected ISF–blood delays (R2 = 0.95; MARD = 7.68%). The device showed high biocompatibility and stability in animal models. Limitations include short testing duration and no human trials, with future work targeting multiplex sensing and CGM integration.
Together, this thematic group demonstrates how AI/ML-driven, non-invasive wearable sensors are enhancing healthcare and agriculture with personalized, dependable monitoring. By tackling issues like sensor precision, data unification, and adaptability to environments, these research efforts establish the groundwork for future smart wearables. Their advancements illustrate the collaboration between cutting-edge biosensing materials and smart data analytics, facilitating ongoing health and agricultural monitoring with prompt actions. In addition to enhancing personal health, farming, and sports performance, these systems offer promise for proactive public health, creating a strong foundation for AI-enhanced wearable technologies in both clinical and agricultural sectors.

4. Development Pathways for AI/ML Applications in Hydrogel Microneedles

HMNs demonstrate potential for transdermal drug administration because of their biocompatibility, adaptability, and low invasiveness. Achieving their complete clinical potential necessitates enhancement in various areas—material design, structural engineering, production, and biomedical functionality.
Recent developments demonstrate this capability: Xu et al. [43] used Bayesian optimization to enhance hydrogel compositions; Seifermann et al. [44] trained machine learning models on extensive photodegradation datasets for automated choices; Lin et al. [45] and Vora et al. [46] emphasized neural network models that advanced drug release forecasts and nanoparticle toxicity evaluations. These instances illustrate how AI can aid in both material development and treatment enhancement.
To guide this effort, we introduce AIM-DO (AI-driven Microneedle Design Optimization), a conceptual model outlining five interconnected pillars for AI/ML integration in HMN development. These include: (1) Material Discovery and Optimization, (2) Structural and Mechanical Design, (3) Manufacturing Process Optimization, (4) Biomedical Applications and Performance Enhancement, and (5) Advanced AI Integration.
Each pillar addresses significant obstacles in microneedle research—spanning from predictive material modeling to adaptive smart delivery systems—utilizing AI to enhance discovery, fabrication, and clinical translation. The AIM-DO concept is initially depicted in Figure 1 and subsequently represented on translational timelines in Figure 2, with a summary of detailed applications provided in Table 7. Combined, these components offer a guide for future AI-augmented HMN systems.
AIM-DO spans material optimization, mechanical design, manufacturing, biomedical applications, and advanced AI integration—each targeting specific innovation domains to accelerate microneedle advancement.
This table outlines AI/ML applications, functional descriptions, and anticipated benefits across five development pillars: material optimization, structural design, manufacturing, biomedical applications, and intelligent system integration.

4.1. Pillar 1: Material Discovery & Optimization

This pillar utilizes ML to forecast hydrogel swelling, degradation, and drug-loading by analyzing polymer characteristics, crosslinking, and biocompatibility profiles—reducing trial-and-error. Robotic screening with high throughput confirms predictions, and multi-objective optimization harmonizes elements like strength, biodegradability, and release rates, allowing for designs customized for objectives like swift burst release or extended delivery.

4.2. Pillar 2: Structural & Mechanical Design

Generative design algorithms develop microneedle structures for maximum penetration and minimal discomfort. FEA guarantees mechanical stability, while designs inspired by biology enhance efficiency and biocompatibility. Models of swelling forecast hydrogel enlargement to regulate drug release. These instruments allow for adjustable shapes—conical or pyramidal ends—and pore designs tailored to the characteristics of drugs and the requirements of patients.

4.3. Pillar 3: Manufacturing Process Optimization

AI-based controls modify temperature and humidity levels during hydrogel synthesis to minimize variations. Computer vision identifies imperfections such as microcracks instantaneously. In the creation of microneedles, reinforcement learning and sensor feedback optimize 3D printing settings—nozzle velocity, layer thickness, UV curing—for accurate self-correction. These advancements improve output, reliability, and scalability, connecting laboratory prototypes to mass production.

4.4. Pillar 4: Biomedical Applications & Performance Enhancement

AI-based models associate microneedle characteristics—swelling ratio, pore dimensions—with pharmacokinetics to enhance bioavailability. Personalized medicine models utilize patient information (skin thickness, metabolism) and digital twins to tailor designs. Reasoning integration combines symbolic AI with neural networks for flexible dosing that responds to biomarkers such as glucose. Pharmacokinetic simulations speed up preclinical evaluations, decreasing the need for animals. Case studies on insulin delivery demonstrate improved accuracy and reduced off-target effects.

4.5. Pillar 5: Advanced AI Integration

This pillar proposes HMN enhanced with IoT for immediate monitoring and incorporation with healthcare systems. Embedded microsensors monitor drug release and send data to cloud platforms for clinician evaluation. Blockchain safeguards the creation and treatment documentation. Hybrid AI-physics developmental pathway improve forecasting in intricate biological systems, whereas federated learning facilitates distributed training among organizations, preserving privacy and adhering to regulations.

4.6. Synergistic Impact and Future Directions

The AIM-DO presents a cohesive AI/ML-based developmental pathway to enhance HMN development in material selection, structural design, manufacturing, and biomedical applications. Through the incorporation of predictive modeling, automation, and immediate feedback, it greatly reduces development timelines—turning iterative processes that previously took years into expedited workflows lasting months. This cross-disciplinary approach connects materials science, mechanical engineering, and biomedical research, improving both the pace of innovation and clinical effectiveness.

5. Challenges & Future Work

AI/ML play a crucial role in developing HMN systems into intelligent, customized, and versatile platforms. Nevertheless, advancement is impeded by fragmented data [47], insufficient standardization [48], reproducibility challenges [49], and ongoing ethical and regulatory issues [50] such as algorithmic bias, patient consent, and ownership of data [51]. These challenges, well-known in biomedical AI/ML, also limit HMN translation, highlighting the necessity for proactive regulatory alignment and collaboration across disciplines.
Initial evaluations highlighted the enhancement of mechanical and structural characteristics via AI, including hydrogels with better swelling and longevity [11,12], biomimetic designs influenced by predictive ML [52], and AI-driven polymer assessments for formulation improvement [13]. Although useful, these contributions are still disjointed, highlighting the necessity for a developmental pathway that unifies and enhances these methods.
The AIM-DO developmental pathway is designed to address these barriers by emphasizing harmonized data curation, AI explainability, and scalable deployment. Building interoperable datasets of physicochemical and performance properties of hydrogels and microneedle geometries will enable predictive models for drug release, mechanical stability, and patient-specific responses. Such models can be embedded in automated design tools and smart manufacturing systems, supporting real-time quality control and adaptive feedback.
Several recent studies illustrate progress toward this goal: [53] suggested cloud-connected AI microneedles for instant dosage modification; [54,55] created AI-based dose-release systems that respond to patient physiology; [56] investigated targeted delivery for rheumatoid arthritis; while [46,57,58] enhanced AI-enabled formulation design, optimization, and bioavailability enhancement.
Ultimately, the AIM-DO developmental pathway envisions AI-enhanced clinical deployment, where closed-loop microneedle systems integrate personalized therapy, diagnostics, and biosensing—driving progress from laboratory innovation to real-world healthcare.

6. Conclusions

This review compiled new applications of AI/ML in HMNs across five areas: material and microneedle development, diagnostics and treatment, drug administration, drug creation, and health/agricultural sensing. The AIM-DO development pathway details a step-by-step process from data curation and predictive modeling through automated design, intelligent manufacturing, and finally to closed-loop clinical implementation.
Recent research indicates that AI/ML can replicate hydrogel behavior, forecast drug release, automate manufacturing, and boost biosensing, thus reducing design cycles and increasing reproducibility. By connecting interoperable datasets with predictive models of HMN structure–function interactions, these tools facilitate adaptive design and scaling through intelligent manufacturing.
Advancement, nonetheless, is hindered by ongoing obstacles: disjointed data, absence of standards, restricted reproducibility, and unaddressed ethical and regulatory concerns. Tackling these issues necessitates synchronized efforts in data science, engineering, clinical sectors, and policy areas, underpinned by unified validation methods and clear governance.
Building on these foundations, the AIM-DO developmental pathway outlines a strategy for progressing AI-driven HMNs from experimental models to widespread biomedical applications. These systems show potential for targeted drug delivery, less invasive diagnostic methods, and continuous health surveillance, ultimately connecting lab advancements with customized healthcare options.

Funding

This research received no external funding.

Data Availability Statement

Data sharing is not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Glossary

The following abbreviations are used in this manuscript (Ai/mL + Hydrogel Microneedles (aim-do)):
HMNHydrogel Microneedle
MNMicroneedle
AIM-DOAI-driven Microneedle Design Optimization
AIArtificial Intelligence
MLMachine Learning
CNNConvolutional Neural Network
RNNRecurrent Neural Network
GANGenerative Adversarial Network
RLReinforcement Learning
SVMSupport Vector Machine
RFRandom Forest
PCAPrincipal Component Analysis
FEA/FEMFinite Element Analysis/Method
CFDComputational Fluid Dynamics
COMSOLMultiphysics Simulation Software
PVAPolyvinyl Alcohol
PEG/PEGDAPoly(ethylene glycol)/PEG Diacrylate
HAHyaluronic Acid
MOFsMetal–Organic Frameworks
LNPLipid Nanoparticle
QCQuality Control
PK/PDPharmacokinetics/Pharmacodynamics
IoTInternet of Things
LODLimit of Detection
MARDMean Absolute Relative Difference

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Figure 1. Five strategic AI/ML pillars in AIM-DO for hydrogel microneedle development.
Figure 1. Five strategic AI/ML pillars in AIM-DO for hydrogel microneedle development.
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Figure 2. Translation roadmap for AI-driven hydrogel microneedles illustrating the approximate research-to-deployment cycle (0–36 months). The roadmap emphasizes the translational direction, interdisciplinary integration, and iterative feedback between material discovery, AI development, and biomedical application. Identified knowledge gaps highlight areas requiring enhanced collaboration across dispersed fields.
Figure 2. Translation roadmap for AI-driven hydrogel microneedles illustrating the approximate research-to-deployment cycle (0–36 months). The roadmap emphasizes the translational direction, interdisciplinary integration, and iterative feedback between material discovery, AI development, and biomedical application. Identified knowledge gaps highlight areas requiring enhanced collaboration across dispersed fields.
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Table 1. Thematic grouping of AI/ML applications in HMNs.
Table 1. Thematic grouping of AI/ML applications in HMNs.
Thematic GroupingThematic Group Description
1Material and Microneedle DesignML and simulation tools enable predictive material design (e.g., hydrogels, nanocomposites) for specific mechanical, electrical, and drug-release properties; accelerates bio-device innovation.
2Microneedles for Diagnostics and TherapyIntegration of AI with microneedle devices for real-time biomarker diagnostics, adaptive drug release, and closed-loop feedback systems; enables personalized, minimally invasive therapy via biomarker sensing and intelligent control.
3Microneedles for Drug DeliveryFocus on hydrogel-forming and polymer-based microneedles that are biocompatible, dissolvable, and suitable for sustained drug delivery; advances in drug dosing enhance comfort and efficacy.
4Microneedles for Drug DevelopmentAI tools (ANN, CNN, etc.) applied to optimize drug formulations, delivery systems, and bioavailability; revolutionizes pharma R&D with predictive analytics and rapid prototyping.
5Microneedles Sensors for Health and AgricultureAI-powered biosensors embedded in wearable tech monitor plant/human hydration, stress etc., offering real-time, adaptive health insights, especially for agriculture, sports and chronic care.
Table 6. (A) AI/ML Techniques and Smart Microneedle Sensor Integration for Health and Agriculture. (B) Materials, Biomarker Targets, Applications, and Outcomes in AI-Integrated Microneedle Sensors.
Table 6. (A) AI/ML Techniques and Smart Microneedle Sensor Integration for Health and Agriculture. (B) Materials, Biomarker Targets, Applications, and Outcomes in AI-Integrated Microneedle Sensors.
(A) Thematic Group 5: Microneedle Sensors for Health and Agriculture
#Author (Year)AI/ML BothHydrogel Microneedle HMNAI/ML Techniques &
Algorithms
Key AI/ML Role/Purpose
Application
AI/ML
Integration Innovation in HMN
AI-Enhanced HMN
Features
AI-Enhanced Targeted
Design Features
1Kharb et al. [37]BothMNRNN, ML algorithms DL, CNN, edge AI, RL, clusteringPredictive analytics, noise reduction, personalized health insights, Bio-signal processing,AI enhances data analysis, predictive modeling, and real-time feedback for wearablesImproved disease prediction, real-time monitoring, user compliance, dynamic calibrationSensor calibration, multimodal data fusion, adaptive feedback
2Ermis et al. [38]BothHMNML (predictive modeling, calibration algorithms) SVM, NN, DLReal-time biomarker analysis, personalized insights, biosignal feedbackML optimizes microneedle sampling efficiency, Real-time biosignal analysisAccuracy, real-time responseDynamic calibration for skin variability, Signal robustness, hydration mapping
3A. Sen et al. [39]BothHMNPredictive analytics, trend detection, ML alerts, (Lacks in-depth AI/ML details)Glucose prediction, treatment personalizationIndirect (via wearable analytics)Remote tracking, early alertsGlucose sensing, insulin release
4Kachouei et al. [40]BothMNAI, ML, DL, Pattern Recognition Predictive analytics, CRISPR-Cas12aPathogen detection, crop optimization Decision support, real-time alerts, predictionIoT-AI fusion, smartphone-based real-time sensing, wireless data transmissionReal-time decisions & detection, predictive alerts, smart integration, scalable systemsCustomizable sensing, VOC detection, hormone fluctuation, nitrate detection,
5Fucheng Zhang et al. [41]Both MNANN, deep learning, edge computing Data fusion algorithms, IoT, ML-enabled optimizationPredictive analytics, data fusion, stability compensation, precision agriculture, real-time plant monitoringNo AI focus; ML integrated into multimodal, wearable, implantable plant sensorsStability, multimodal data fusion; microclimate sensing, disease/stress predictionEnvironmental adaptability, accuracy Plant hormone detection, stress prediction
6Ausri et al. [42] BothHMNSVM, Random ForestKetone detection modelingAI-enhanced biosensor for metabolic monitoringAI-tuned sensor thresholds for diabetic patientsKetone monitoring & early DKA prediction
(B) Thematic Group 5: Microneedle Sensors for Health and Agriculture
Author (Year)Materials UsedDataset/ Data Type/ SizeTargeted ApplicationTarget Drug/Biosensing ParameterTargeted Parameter/SicknessResultsLimitationsFuture Work
1Kharb et al. [37]Graphene, biodegradable polymers, flexible bioelectronics, Flexible sensors, nanocompositesEmpirical (patient datasets), Large-scale IoTBiosensing, drug delivery, Biosensing + diagnosticsLactate, VOCs Glucose, cortisol, sweat ionsMetabolic disorders, chronic diseases, Diabetes, depression, neurostressHigh early detection accuracy, less invasive; personalized, real-time predictive diagnosticsdata privacy, environmental variability, power, clinical reliabilityAI-IoT closed-loop systems, AI twins, federated learning, edge-powered wearables
2Ermis et al. [38]PDMS, graphene, PVA, chitosan, silk fibroinEmpirical (sweat, blood, tears)Biosensing (glucose, cortisol, electrolytes)Glucose, cortisol, Na+, K+ Electrolytes,Diabetes, stress, dehydration95% correlation with blood tests, High accuracy, low latencyPower constraints, data security, Motion artifacts, privacyBiodegradable materials, AI-driven closed-loop systems, blockchain, personalization, hormone tracking
3A. Sen et al. [39]Chitosan, PLGA, graphene, PANI, CNT, ZnO, metal oxidesIn vitro/in vivo studies Secondary data discussedDrug delivery & biosensingGlucose, Insulin, metformin, GLP-1, sulfonylureasDiabetes mellitusReduced injections, Better glycemic control, wearable convenienceScalability, biocompatibility, Scale-up issues, toxicity concerns, regulatory complianceSmart polymers, nanocomposites, digital health, AI-health integration, digital medicine
4Kachouei et al. [40]Graphene, CNTs, polymers, Au NPs PDA, MN, nanofibersEmpirical (field data), streaming data, low-volumeFood safety, plant health, disease detection, sustainability, stress monitoringToxins, Pathogens, VOCs, Hormones, NitrateHeavy metals, pathogens, VOCs, Foodborne illness, plant stressEarly disease detection, reduced pesticide use, Highly accurate, responsiveHigh cost, energy inefficiency Scalability, cost, infra-structureSolar sensors, blockchain, 5G, green tech, AI-automated models
5Fucheng Zhang et al. [41]Graphene, MXene, LIG, PI, AgNO3 PVA, conductive hydrogel, CNTs, sensorsEmpirical/field data (large-scale) Empirical + Real-field dataCrop monitoring, soil analysis Crop growth, drought, stress sensingNH4+, H2O2, VOCs, ethylene Salicylic acid, ethylene, nitrate, VOCsCrop diseases, nutrient deficiency, drought, plant stressEthylene LOD: 0.084 ppm; VOC accuracy: 97% High stretchability, energy harvesting, accuracyCost, durability, environmental impact Sensor longevity, calibration stabilitySelf-powered sensors, biodegradable materials Integration of AI-powered feedback loops, data mining, closed-loop optimization
6Ausri et al. [42]DA-HA hydrogel MNs, PEDOT:PSS, NAD+, HBDPorcine & rat ketone levels + ML modelContinuous ketone sensingNo drug (biosensor only)Type 1 Diabetes (DKA)MAD: 0.184 mM, R2 = 0.95, MARD: 7.68%2 hr tests only, animal modelsLonger trials, CGM integration, multiplex sensing
Table 7. AIM-DO Development for Hydrogel Microneedles.
Table 7. AIM-DO Development for Hydrogel Microneedles.
Development StageAI/ML ApplicationDescriptionBenefits
1. Material Discovery & OptimizationData-Driven Material SelectionAI models analyze datasets of hydrogel compositions to predict optimal formulations.Faster material discovery, improved biocompatibility.
Predictive ModelingML predicts hydrogel behavior under various conditions (hydration, pH, temperature).Reduces trial-and-error experimentation.
High-Throughput ScreeningDeep learning and reinforcement learning identify promising hydrogel candidates.Accelerates discovery of novel materials.
Multi-Objective OptimizationGenetic algorithms balance mechanical strength, biodegradability, and drug release.Tailored microneedles for specific applications.
2. Structural & Mechanical DesignGenerative DesignAI-driven topology optimization for novel microneedle geometries.Enhances penetration efficiency and drug delivery.
FEAML predicts microneedle stress distribution and mechanical
failure points.
Improves durability and reliability.
Bio-Inspired DesignAI mimics biological structures for better adhesion and penetration.Increased effectiveness and patient comfort.
Swelling Dynamics PredictionAI models hydrogel swelling behavior for optimal drug diffusion.Ensures controlled fluid absorption and
drug release.
3. Manufacturing Process OptimizationProcess Control & AutomationAI optimizes 3D printing, micro-molding, and photopolymerization.Reduces defects, improves fabrication efficiency.
Defect DetectionML-based image recognition detects microscopic defects in microneedles.Enhances quality control, reduces waste.
3D Printing OptimizationAI refines printing techniques and layer-by-layer deposition.Ensures structural integrity and printability.
Self-Correcting Fabrication SystemsReinforcement learning enables real-time process adjustments.Reduces variability, increases yield.
4. Biomedical Applications & Performance EnhancementDrug Delivery OptimizationAI predicts drug release kinetics based on hydrogel properties.Enables sustained and controlled drug release.
Personalized MedicineML analyzes patient data to tailor microneedle formulations.Enhances treatment efficacy, reduces side effects.
Biosensing IntegrationAI optimizes sensor placement and biomarker detection algorithms.Improves real-time health monitoring accuracy.
AI-Assisted Pharmacokinetics ModelingDeep learning models simulate drug absorption and metabolism.Speeds up drug development and regulatory approval.
5. Advanced AI IntegrationAI-Powered Smart MicroneedlesEmbedded AI sensors adjust drug delivery in real-time.Enables adaptive and responsive therapy.
Blockchain for Data SecuritySecure storage and sharing of microneedle treatment data.Ensures regulatory compliance and patient privacy.
Hybrid AI-Physics ModelsAI-driven simulations combined with physics-based modeling.Enhances predictive accuracy for microneedle performance.
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Urifa, J.; Shah, K.W. Early Insights into AI and Machine Learning Applications in Hydrogel Microneedles: A Short Review. Micro 2025, 5, 48. https://doi.org/10.3390/micro5040048

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Urifa J, Shah KW. Early Insights into AI and Machine Learning Applications in Hydrogel Microneedles: A Short Review. Micro. 2025; 5(4):48. https://doi.org/10.3390/micro5040048

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Urifa, Jannah, and Kwok Wei Shah. 2025. "Early Insights into AI and Machine Learning Applications in Hydrogel Microneedles: A Short Review" Micro 5, no. 4: 48. https://doi.org/10.3390/micro5040048

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Urifa, J., & Shah, K. W. (2025). Early Insights into AI and Machine Learning Applications in Hydrogel Microneedles: A Short Review. Micro, 5(4), 48. https://doi.org/10.3390/micro5040048

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