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66 pages, 1148 KB  
Review
Explainability and Trust in Deep Learning for Cancer Imaging: Systematic Barriers, Clinical Misalignment, and a Translational Roadmap
by Surekha Borra, Nilanjan Dey, Simon Fong, R. Simon Sherratt and Fuqian Shi
Cancers 2026, 18(9), 1361; https://doi.org/10.3390/cancers18091361 - 24 Apr 2026
Abstract
Deep learning (DL) has transformed cancer imaging by enabling automated tumour detection, classification, and risk prediction. Despite impressive diagnostic performance, limited explainability and poor uncertainty calibration continue to restrict clinical integration. This review is guided by five research questions that examine the challenges, [...] Read more.
Deep learning (DL) has transformed cancer imaging by enabling automated tumour detection, classification, and risk prediction. Despite impressive diagnostic performance, limited explainability and poor uncertainty calibration continue to restrict clinical integration. This review is guided by five research questions that examine the challenges, impact, and translational implications of explainable artificial intelligence (XAI) in oncology imaging. We identify key barriers to trust, including dataset bias, shortcut learning, opacity of convolutional neural networks, and workflow misalignment. Evidence suggests that explainable models can increase clinician confidence, reduce false positives, and improve collaborative decision-making when explanations are faithful, semantically meaningful, and uncertainty aware. We evaluate architectural strategies that embed interpretability such as concept-bottleneck models, prototype-based learning, and attention regularization along with post hoc techniques. Beyond performance metrics, we examine how interpretable AI aligns with clinical reasoning processes and analyse regulatory, ethical, and medico-legal considerations influencing deployment. The findings indicate that explainability alone is insufficient, durable trust requires epistemic alignment, prospective validation, lifecycle governance, and equity-focused evaluation. By reframing explainability as a structural design principle rather than a supplementary feature, this review outlines a pathway toward accountable and clinically dependable AI systems in oncology. Full article
(This article belongs to the Section Cancer Informatics and Big Data)
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53 pages, 2972 KB  
Review
Neural Computing Advancements in Cardiac Imaging: A Review of Deep Learning Approaches for Heart Disease Diagnosis
by Tarek Berghout
J. Imaging 2026, 12(5), 180; https://doi.org/10.3390/jimaging12050180 - 22 Apr 2026
Abstract
Heart disease remains a leading cause of mortality worldwide, and timely and accurate diagnosis is crucial for improving patient outcomes. Medical imaging plays a pivotal role in this process, yet traditional diagnostic methods often suffer from limitations, including dependency on manual interpretation, susceptibility [...] Read more.
Heart disease remains a leading cause of mortality worldwide, and timely and accurate diagnosis is crucial for improving patient outcomes. Medical imaging plays a pivotal role in this process, yet traditional diagnostic methods often suffer from limitations, including dependency on manual interpretation, susceptibility to observer variability, and inefficiency in handling large-scale data. Deep learning has emerged as an innovative technology in medical imaging, providing unparalleled advancements in feature extraction, segmentation, classification, and prediction tasks. Despite its proven potential, comprehensive reviews of deep learning methods specifically targeted at cardiac imaging remain scarce. This review paper seeks to bridge this gap by analyzing the state-of-the-art deep learning applications for heart disease diagnosis, covering the period from 2015 to 2025. Employing a well-structured methodology, this review categorizes and examines studies based on imaging modalities: Ultrasound (US), Magnetic Resonance Imaging (MRI), X-ray, Computed Tomography (CT), and Electrocardiography (ECG). For each modality, the analysis focuses on utilized datasets, processing techniques (e.g., extraction, segmentation and classification), and paradigms (e.g., transfer learning, federated learning, explainability, interpretability, and uncertainty quantification). Additionally, the types of heart disease addressed and prediction accuracy metrics are also scrutinized. These findings point toward future opportunities, including the study of data quality, optimization, transfer learning, uncertainty quantification and model explainability or interpretability. Furthermore, exploring advanced techniques such as recurrent expansion, transformers, and other architectures may unlock new pathways in cardiac imaging research. This review is a critical synthesis offering a roadmap for researchers and practitioners to advance the application of deep learning in heart disease diagnosis. Full article
(This article belongs to the Special Issue Advances and Challenges in Cardiovascular Imaging)
60 pages, 7000 KB  
Article
Biometric Embedded Non-Blind Color Image Watermarking with Geometric Tamper Resistance via SIFT-ORB Keypoint Matching
by Swapnaneel Dhar, Riyanka Manna, Khaldi Amine and Aditya Kumar Sahu
Computers 2026, 15(5), 264; https://doi.org/10.3390/computers15050264 - 22 Apr 2026
Abstract
This work introduces a non-blind watermarking framework for color images to address tamper detection, particularly under geometric transformations. The proposed scheme fuses two watermarks, a personal signature and a biometric fingerprint, into a unified composite watermark embedded into the chrominance component of the [...] Read more.
This work introduces a non-blind watermarking framework for color images to address tamper detection, particularly under geometric transformations. The proposed scheme fuses two watermarks, a personal signature and a biometric fingerprint, into a unified composite watermark embedded into the chrominance component of the cover image using a multi-level transform domain approach, discrete wavelet transforms (DWTs), discrete cosine transforms (DCTs), and singular value decomposition (SVD). By leveraging the rotation-invariant properties of scale-invariant feature transform (SIFT) and oriented FAST and rotated BRIEF (ORB) descriptors, the framework ensures robust tamper detection without requiring alignment, thus mitigating the limitations of conventional detection techniques vulnerable to transformation-induced tamper obfuscation (TITO). Extensive experimentation demonstrates that the method maintains high perceptual fidelity, achieving PSNR values ranging from 50 to 55 dB for embedding strength factor μ (0.01–0.04) and SSIM indices near 1 across multiple benchmark images. Furthermore, the scheme exhibits notable resilience to a range of image processing attacks and geometric distortion. Comparative evaluation reveals its superiority over existing grayscale, color, SIFT-based and DWT-DCT-SVD-based watermarking techniques, affirming its applicability in scenarios demanding secure, imperceptible, and transformation-invariant image watermarking. Full article
25 pages, 13764 KB  
Article
A 3D Fold-Modeling Method Based on Multiple-Point Statistics and Long Short-Term Memory Networks
by Xueye Chen, Gang Liu, Hongfeng Fang, Qiyu Chen, Ce Zhang, Zhesi Cui, Zhenwen He, Wenyao Fan and Junping Xiong
Appl. Sci. 2026, 16(9), 4079; https://doi.org/10.3390/app16094079 - 22 Apr 2026
Abstract
Accurate fold models are of great significance for mineralization control, resource exploration, and underground engineering. However, existing automated modeling methods show difficulty in quantitatively describing fold development patterns and lack the available reference models required for multiple-point statistics and intelligent modeling techniques. This [...] Read more.
Accurate fold models are of great significance for mineralization control, resource exploration, and underground engineering. However, existing automated modeling methods show difficulty in quantitatively describing fold development patterns and lack the available reference models required for multiple-point statistics and intelligent modeling techniques. This study proposes a novel three-dimensional (3D) fold-modeling method that integrates multiple-point-statistics-based pattern library construction with a long short-term memory (LSTM) network-based modeling framework. The multiple-point geostatistic is employed to quantify spatial distributions and correlations in geological data, thereby identifying the intrinsic structural patterns of folds. The extracted patterns are transformed into a training library that effectively represents the geological semantics and morphological diversity of folds, providing a reliable dataset for LSTM-based model training. An optimized ConvLSTM network is designed to ensure robust representation of fold complexity and variability. Based on the network, 3D models can be rapidly generated from geological profiles. Multiple experiments demonstrate that the proposed method can automatically produce 3D models that conform to realistic geological conditions and accurately reflect true fold geometries. The approach significantly improves modeling efficiency and geological feature representation, providing a reliable tool for geological engineering applications. Full article
(This article belongs to the Special Issue Advances in Geostatistical Information Analysis and Mapping)
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27 pages, 2435 KB  
Article
Shaping Sacred: Rituals, Theatre and the Generation of Sacred Spaces for the Centenary Celebration of Singapore Hin Ann Thain Hiaw Keng
by Xinyan Zeng and Tek Soon Ling
Religions 2026, 17(4), 500; https://doi.org/10.3390/rel17040500 - 19 Apr 2026
Viewed by 197
Abstract
Singapore Hin Ann Thain Hiaw Keng held its centenary celebration in October 2025. As this event utilized pre-existing or temporary venues, it offers a valuable case for exploring how ritual and theatre contribute to the generation of sacred space. Through the observation of [...] Read more.
Singapore Hin Ann Thain Hiaw Keng held its centenary celebration in October 2025. As this event utilized pre-existing or temporary venues, it offers a valuable case for exploring how ritual and theatre contribute to the generation of sacred space. Through the observation of Taoist rituals, puppet theatre, and Puxian opera featured in this event, and by drawing on Henri Lefebvre’s spatial triad, this paper argues that rituals and theatre do not merely occur in pre-existing sacred spaces. Instead, by multiple practices, including spatial planning and the implementation of ritual and theatrical techniques, they transform residences, commercial premises, and public spaces that originally possess secular attributes into spaces that can be experienced and recognized as sacred. Full article
(This article belongs to the Special Issue Temple Art, Architecture and Theatre)
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15 pages, 47858 KB  
Article
Establishing SSR-Based Variety Identification and Callus Regeneration Systems for the Novel Hordeum brevisubulatum Cultivar ‘Mengnong No. 2’
by Hui Yang, Ruijuan Yang, Yefei Liu, Xiao Han, Yaling Liu, Yuchen Li, Xintian Huang, Yuquan Gan, Cuiping Gao, Chunxiang Fu and Yan Zhao
Plants 2026, 15(8), 1257; https://doi.org/10.3390/plants15081257 - 19 Apr 2026
Viewed by 231
Abstract
Hordeum brevisubulatum ‘Mengnong No. 2’ is a new forage variety developed using traditional group selection breeding techniques. It features notable advantages in plant height, tillering capacity, and overall biomass yield. However, key molecular breeding techniques such as molecular marker identification and genetic manipulation [...] Read more.
Hordeum brevisubulatum ‘Mengnong No. 2’ is a new forage variety developed using traditional group selection breeding techniques. It features notable advantages in plant height, tillering capacity, and overall biomass yield. However, key molecular breeding techniques such as molecular marker identification and genetic manipulation have yet to be established for this variety, limiting improvements in important traits. Consequently, we assessed the biomass of ‘Mengnong No. 2’ against ‘Mengnong No. 1’, the most widely cultivated variety in the central and western regions of Inner Mongolia, China. We report that fresh forage, dry forage, and seed yields of ‘Mengnong No. 2’ increased by 20.6%, 31.78%, and 34.35%, respectively, compared with the control variety, indicating broad prospects for its application and promotion. To enable rapid identification of ‘Mengnong No. 2’ during its promotion and to prevent production losses caused by variety admixture, we used three screened SSR primer pairs (GST25, GST37, GST127) to construct a DNA fingerprint for five H. brevisubulatum varieties, including ‘Mengnong No. 2’. With the percentage of polymorphic bands exceeding 95%, these profiles enabled precise identification of the ‘Mengnong No. 2’ variety. Furthermore, callus regeneration in H. brevisubulatum represents a bottleneck for directed molecular breeding techniques such as genetic transformation and gene editing. Accordingly, we selected the inflorescences of ‘Mengnong No. 2’ as explants and investigated the callus induction and regeneration capacity of inflorescences at different developmental stages. We found that explants at the spikelet primordia differentiation stage exhibited the highest callus induction and regeneration efficiencies, reaching 62.7% and 72.8%, respectively. The resulting embryogenic callus lines can serve as recipients for Agrobacterium-mediated transformation or gene gun bombardment, facilitating the development of subsequent high-efficiency genetic transformation and gene-editing systems. The SSR-based variety identification system and the highly efficient regeneration technology using inflorescence-derived callus established in this study lay a solid foundation for the development of a molecular breeding system for ‘Mengnong No. 2’. Full article
(This article belongs to the Section Plant Development and Morphogenesis)
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24 pages, 1136 KB  
Review
Explainable Deep Learning for Research on the Synergistic Mechanisms of Multiple Pollutants: A Critical Review
by Chang Liu, Anfei He, Jie Gu, Mulan Ji, Jie Hu, Shufeng Qiao, Fenghe Wang, Jing Hua and Jian Wang
Toxics 2026, 14(4), 335; https://doi.org/10.3390/toxics14040335 - 16 Apr 2026
Viewed by 309
Abstract
The synergistic control of multiple pollutants is critically challenged by complex nonlinear interactions, strong spatiotemporal heterogeneity, and the difficulty of tracing causal drivers. Deep learning offers high predictive power but suffers from the “black-box” problem, limiting its acceptance in environmental decision-making. Explainable Deep [...] Read more.
The synergistic control of multiple pollutants is critically challenged by complex nonlinear interactions, strong spatiotemporal heterogeneity, and the difficulty of tracing causal drivers. Deep learning offers high predictive power but suffers from the “black-box” problem, limiting its acceptance in environmental decision-making. Explainable Deep Learning (XDL) integrates physical mechanisms with interpretable algorithms, achieving both prediction accuracy and explanatory transparency. This review systematically evaluates the effectiveness and limitations of XDL in analyzing multi-pollutant interactions, with a comparative focus on atmospheric and aquatic environments. Key techniques, including SHAP, attention mechanisms, and physics-informed neural networks, are examined for their roles in synergistic monitoring, source apportionment, and regulatory optimization. The main findings reveal that: (1) XDL, particularly the “tree model + SHAP” paradigm, has become a dominant tool for quantifying driving factors, yet most attributions remain correlational rather than causal; (2) physics-informed fusion (soft vs. hard constraints) improves physical consistency but faces unresolved conflicts between data and physical laws, with current models lacking a conflict detection mechanism; (3) cross-media comparison shows a unified technical logic of “physical mechanism guidance + post hoc feature attribution”, but atmospheric applications lead in embedding advection–diffusion constraints, while aquatic research excels in spatial topology modeling via graph neural networks; (4) critical bottlenecks include the lack of causal inference, uncertainty-unaware interpretations, and data scarcity. Future directions demand a shift from correlation-only to causal-aware attribution, from blind fusion to conflict-detecting systems, and from no evaluation standards to domain-specific validation benchmarks. XDL is poised to transform multi-pollutant governance from experience-driven to intelligence-driven approaches, provided that verifiable interpretability and physical consistency become core design principles. Full article
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19 pages, 9464 KB  
Article
A New Probabilistic Approach to Fault Detection for Tidal Stream Turbine Blades
by Dongqing Ye, Tianzhen Wang, Qinqin Fan and Ting Xue
J. Mar. Sci. Eng. 2026, 14(8), 721; https://doi.org/10.3390/jmse14080721 - 14 Apr 2026
Viewed by 226
Abstract
To improve the safety and reliability of tidal stream turbines (TSTs) under harsh marine environments, a novel probabilistic approach is proposed for blades fault detection in TSTs subject to stochastic disturbances of unknown probability distribution. On the basis of analytically analyzing the influence [...] Read more.
To improve the safety and reliability of tidal stream turbines (TSTs) under harsh marine environments, a novel probabilistic approach is proposed for blades fault detection in TSTs subject to stochastic disturbances of unknown probability distribution. On the basis of analytically analyzing the influence of blade imbalance fault on stator current signals, stationary wavelet transform (SWT) is first performed to extract multiscale time–frequency characteristics of blade faults from stator current data corrupted by non-stationary stochastic disturbances. Then an enhanced feature space is established by further computing the energy, standard deviation and kurtosis of SWT decomposition coefficients. By introducing the mean-covariance-based ambiguity set to characterize the probability distribution of feature vector in both fault-free and faulty cases, an optimal separating hyperplane for fault detection is learned using a distributionally robust optimization technique. It can achieve an optimal trade-off between the false alarm rate and the missed detection rate in a probabilistic setting, without requiring any specific distribution assumption. In this way, the proposed fault detection system is robust not only against disturbances but also against distributional uncertainties of disturbances. Finally, an experimental study based on a 0.23 kW tidal stream turbine platform is carried out to validate the effectiveness of the proposed method. Full article
(This article belongs to the Section Marine Energy)
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25 pages, 4225 KB  
Article
Canonical Spectral Transformation for Raman Spectra Enables High Accuracy AI Identification of Marine Microplastics
by Oscar Ramsés Ruiz-Varela, José Juan García-Sánchez, Roberto Narro-García, Claudia Georgina Nava-Dino, Juan Pablo Flores-De los Ríos, Luis Fernando Gaxiola-Orduño, Alain Manzo-Martínez and María Cristina Maldonado-Orozco
Microplastics 2026, 5(2), 71; https://doi.org/10.3390/microplastics5020071 - 13 Apr 2026
Viewed by 269
Abstract
The growing accumulation of microplastics in marine environments demands fast and accurate analytical methods for polymer identification. This study presents a new canonical spectral transformation (CST) strategy designed to extract the most relevant information of Raman spectra and enhance the performance of artificial [...] Read more.
The growing accumulation of microplastics in marine environments demands fast and accurate analytical methods for polymer identification. This study presents a new canonical spectral transformation (CST) strategy designed to extract the most relevant information of Raman spectra and enhance the performance of artificial intelligence (AI) models in the classification of microplastics. Using the Marine Plastic Database (MPDB) as the source of Raman spectra, five supervised models—k-Nearest Neighbor (KNN), Random Forest (RF), Extreme Gradient Boosting (XGBoost), Multilayer Perceptron (MLP), and a one-dimensional Convolutional Neural Network (CNN-1D)—were trained and evaluated under both typical (conventional methodology) and CST workflows using 500 noisy samples per category. The CST consists of representing a Raman spectra in a vector where only the magnitude peaks of the most relevant frequency bands of the spectra are retained and the remaining values are null. This CST minimizes the inclusion of non-target data reaching the AI models. All models achieved higher accuracy with CST, where CNN-1D achieved the most significant performance, increasing accuracy to 0.90. In addition, CNN-1D identified Polystyrene (PS) and Poly(methyl methacrylate) (PMMA) with a score of 100% and 99%, respectively. The results demonstrate that CST effectively enhances spectral feature extraction and can be generalized to other spectroscopic techniques, providing a scalable framework for AI-assisted microplastic identification in seawater samples. Full article
(This article belongs to the Collection Feature Papers in Microplastics)
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21 pages, 2642 KB  
Article
Pectic Polysaccharides Recovery from Rapeseed Meal via Conventional and Enzyme-Assisted Extraction Techniques: Toward Emerging Prebiotic Pectic Oligosaccharide Development
by Katarina Banjanac, Milica Veljković, Milica Simović, Aleksandra Tomić, Paula López-Revenga, Antonia Montilla, Francisco Javier Moreno and Dejan Bezbradica
Foods 2026, 15(8), 1338; https://doi.org/10.3390/foods15081338 - 12 Apr 2026
Viewed by 362
Abstract
This study investigates the extraction of pectic polysaccharides from rapeseed meal (RSM) using both conventional and enzyme-assisted techniques, and the obtained pectic polysaccharide fractions will be used later to produce prebiotic pectic oligosaccharides (POS). A two-step process was developed, involving enzymatic treatment with [...] Read more.
This study investigates the extraction of pectic polysaccharides from rapeseed meal (RSM) using both conventional and enzyme-assisted techniques, and the obtained pectic polysaccharide fractions will be used later to produce prebiotic pectic oligosaccharides (POS). A two-step process was developed, involving enzymatic treatment with Alcalase® 2.4 L for 2 h and Cellic® CTec3 HS preparations for 24 h, followed by ammonium oxalate extraction, which effectively isolated two pectic polysaccharide-enriched fractions: PP-EAE (first step) and the resulting Ca-bound pectic polysaccharides fraction (CaPP-EAE) (second step). Both fractions exhibited a bimodal molecular weight profile, indicative of the presence of long-chain polysaccharides alongside oligosaccharides. CaPP-EAE compositional analysis revealed that the fraction contained 56.8% galacturonic acid (GalA), low methyl-esterified (LM) pectins with 53.2% homogalacturonan (HG) and 30.2% rhamnogalacturonan I (RG-I) domains, featuring side chains of arabinan, arabinogalactan, and galactan. Subsequent enzymatic treatment with 0.5% (v/v) of Pectinex® Ultra Passover for 30 min transformed these fragments into a mixture of short-chain POS. Importantly, the produced short-chain POS fraction demonstrated enhanced prebiotic activity, particularly for bacterial strains of the family Lactobacillaceae, compared to a yeast strain. These findings provide a sustainable, biorefinery-compatible approach for extracting and modifying RSM polysaccharides, supporting the development of structurally defined POS as novel prebiotics. Full article
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36 pages, 3990 KB  
Article
Tourism Ecological Security of Cultural Landscape Heritage: Dynamic Assessment and Prediction Using an Improved DPSIR-TOPSIS-RBF Framework
by Shuang Du, Zhengji Yang and Xiaoli Li
Sustainability 2026, 18(8), 3797; https://doi.org/10.3390/su18083797 - 11 Apr 2026
Viewed by 266
Abstract
Against the backdrop of global sustainable development and ecological civilization construction, tourism ecological security at cultural landscape heritage sites faces both opportunities and challenges. This study constructs a cultural landscape heritage tourism ecological security (CLHTES) evaluation system based on the Driver–Pressure–State–Impact–Response (DPSIR) framework. [...] Read more.
Against the backdrop of global sustainable development and ecological civilization construction, tourism ecological security at cultural landscape heritage sites faces both opportunities and challenges. This study constructs a cultural landscape heritage tourism ecological security (CLHTES) evaluation system based on the Driver–Pressure–State–Impact–Response (DPSIR) framework. It dynamically assesses CLHTES in the Yangtze River Delta Integrated Demonstration Zone (YRDIDZ) from 2014 to 2023 using the entropy-weighted Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS) and linear stretching transformation, identifies obstacle factors with the obstacle degree model, and predicts CLHTES trends for 2024–2030 using a radial basis function (RBF) neural network. Results show that: (1) The CLHTES index in the YRDIDZ presented a three-stage fluctuating upward trend during 2014–2023, with medium-clustered security levels and divergent evolution across the DPSIR criteria layers; (2) CLHTES obstacles feature a multi-level differentiated structure, with rising barriers in D and P layers, the R layer as the future core obstacle, and high-frequency barriers concentrated in cultural and social indicators; (3) Under the assumption of structural continuity in current trajectories, the conditional trend projection suggests that the CLHTES index of the YRDIDZ may sustain a general upward tendency during 2024–2030, with a possibility of approaching Level VII after 2028; however, these projections should be interpreted as exploratory and scenario-like rather than as robust forecasts, given the short annual series and the absence of exogenous disturbance variables. This study explores tourism-ecology interactions from a social-ecological complex system perspective, supporting synergistic tourism development and ecological protection of cultural landscape heritage. Full article
(This article belongs to the Section Tourism, Culture, and Heritage)
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37 pages, 1408 KB  
Article
Artificial Intelligence, Academic Resilience, and Gender Equity in Education Systems: Ethical Challenges, Predictive Bias, and Governance Implications
by Francisco R. Trejo-Macotela, Mayra Fabiola González-Peralta, Gregoria C. Godínez-Flores and Mayte Olivares-Escorza
Educ. Sci. 2026, 16(4), 605; https://doi.org/10.3390/educsci16040605 - 10 Apr 2026
Viewed by 263
Abstract
The rapid integration of artificial intelligence (AI) into educational systems is transforming how student performance is analysed and how educational policies are informed by large-scale data. Within this context, machine learning techniques are increasingly used to identify patterns associated with academic success and [...] Read more.
The rapid integration of artificial intelligence (AI) into educational systems is transforming how student performance is analysed and how educational policies are informed by large-scale data. Within this context, machine learning techniques are increasingly used to identify patterns associated with academic success and educational inequality. However, the use of predictive algorithms in education also raises important questions regarding transparency, fairness, and potential algorithmic bias. This study examines the predictive performance and fairness implications of machine learning models used to identify academically resilient students using data from the Programme for International Student Assessment (PISA) 2022. The analysis is based on a dataset containing more than 600,000 student observations across multiple national education systems. Academic resilience is operationalised following the OECD framework, identifying students who belong to the lowest quartile of the socioeconomic status index (ESCS) within their country while simultaneously achieving mathematics performance in the top quartile (PV1MATH). A predictive framework incorporating six supervised learning algorithms—Logistic Regression, Random Forest, Gradient Boosting, XGBoost, LightGBM, and CatBoost—was implemented. The modelling pipeline includes data preprocessing, missing value imputation, class imbalance correction using SMOTE, and model evaluation through multiple classification metrics, including accuracy, F1-score, and the area under the ROC curve (AUC). In addition, fairness diagnostics are conducted to examine potential disparities in prediction outcomes across gender groups, while feature importance analysis and SHAP-based explanations are used to interpret the contribution of key predictors. The results indicate that ensemble-based models achieve the highest predictive performance, particularly those based on gradient boosting techniques. At the same time, the analysis reveals that socioeconomic status, migration background, and school repetition constitute the most influential predictors of academic resilience. Although gender displays relatively low predictive importance, measurable differences in positive prediction rates across gender groups suggest the presence of potential algorithmic disparities. These findings highlight the importance of integrating fairness evaluation, transparency, and interpretability into educational data science workflows. The study contributes to ongoing discussions on the responsible use of artificial intelligence in education by emphasising the need for governance frameworks capable of ensuring that algorithmic systems support equity-oriented educational policies. Full article
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15 pages, 4018 KB  
Article
Combining Interpolation Techniques and Lightweight Convolutional Neural Networks for Partial Discharge Image Signal Identification in Transformer Bushings
by Yi-Pin Hsu
Electronics 2026, 15(8), 1584; https://doi.org/10.3390/electronics15081584 - 10 Apr 2026
Viewed by 263
Abstract
Partial discharge detection is a key technology for maintaining the normal operation of industrial power equipment. Oil-impregnated paper bushings are crucial components connecting transformers to the power grid. Insulation degradation leads to partial discharge, posing a significant threat to power system operation. Developing [...] Read more.
Partial discharge detection is a key technology for maintaining the normal operation of industrial power equipment. Oil-impregnated paper bushings are crucial components connecting transformers to the power grid. Insulation degradation leads to partial discharge, posing a significant threat to power system operation. Developing on-line diagnostics for partial discharge in transformer bushings and automatic identification of insulation defects can effectively protect system and personnel safety. Due to limitations of small sample sizes and lightweight networks, this study combines interpolation techniques with a lightweight convolutional neural network to improve identification accuracy. This network uses interpolation to maintain the undistorted sample signal from the initial input and reduces training defects from a small sample size. The neural network extracts partial discharge features to determine the defect type and its cause. This study uses a publicly available dataset with discharge signals from generators. Although from a different source from the discharge signals generated by oil-impregnated paper bushings, the signal distribution is similar, allowing for a fair analysis and providing a reference for evaluating discharge signals obtained from oil-impregnated paper bushings or other discharge devices. The experimental results show that the accuracy of this network improved from 97% to over 99% while maintaining low computational complexity and excellent real-time performance. Furthermore, this network was implemented and validated on existing industrial equipment. Full article
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19 pages, 3100 KB  
Article
Genome-Wide Identification and Characterization of WOX Genes in Amorphophallus konjac and Functional Analysis of AbWOX2 in Amorphophallus bulbifer During Somatic Embryogenesis
by Yaxin Liu, Zemei Li, Fuyuan Lu, Liangrui Yang, Lishan Liu, Zhen Tian, Jinmin Zhou, Siyi Ge and Xuewei Wu
Horticulturae 2026, 12(4), 466; https://doi.org/10.3390/horticulturae12040466 - 9 Apr 2026
Viewed by 263
Abstract
Background: Konjac (Amorphophallus spp.) is an economically important crop valued for the glucomannan content in its corms. Currently, the konjac industry faces germplasm degeneration due to long-term asexual propagation. Developing tissue culture and genetic transformation techniques is essential for its genetic improvement. [...] Read more.
Background: Konjac (Amorphophallus spp.) is an economically important crop valued for the glucomannan content in its corms. Currently, the konjac industry faces germplasm degeneration due to long-term asexual propagation. Developing tissue culture and genetic transformation techniques is essential for its genetic improvement. The WUSCHEL-related homeobox (WOX) transcription factors are critical regulators of somatic embryogenesis and stem cell maintenance in plants. Methods: In this study, we performed genome-wide identification and characterization of WOX genes in the A. konjac reference genome. Furthermore, comparative transcriptomic analyses and functional verification were conducted in A. bulbifer. Results: A total of 12 AkWOX genes were identified in A. konjac, and their structural features were documented. Comparative transcriptomic analysis of A. bulbifer revealed that AbWOX genes were differentially expressed between embryogenic calli (EC) and non-embryogenic calli (nEC). Notably, AbWOX2 was significantly upregulated in EC. Overexpression of AbWOX2 significantly promoted callus proliferation and shoot regeneration in A. bulbifer. Furthermore, AbWOX2-overexpressing lines exhibited a 5.3-fold increase in genetic transformation efficiency (from 5.12% to 27.31%) compared to the control. Conclusions: We characterized the diverse expression patterns of the WOX gene family in Amorphophallus. Crucially, we identified specific individual members—most notably the markedly upregulated AbWOX2—that function as pivotal drivers of somatic embryogenesis and serve as promising candidates for enhancing regeneration and genetic engineering efficiency in Amorphophallus species. Full article
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28 pages, 16466 KB  
Article
SAW-YOLOv8l: An Enhanced Sewer Pipe Defect Detection Model for Sustainable Urban Drainage Infrastructure Management
by Linna Hu, Hao Li, Jiahao Guo, Penghao Xue, Weixian Zha, Shihan Sun, Bin Guo and Yanping Kang
Sustainability 2026, 18(8), 3685; https://doi.org/10.3390/su18083685 - 8 Apr 2026
Viewed by 364
Abstract
Urban underground sewage pipelines often suffer from defects such as cracks, irregular joint misalignment, and stratified sedimentation blockages, which may lead to pipeline bursts, sewage overflow, and water pollution. Timely detection of abnormal defects in sewage pipelines is critical to ensuring public health [...] Read more.
Urban underground sewage pipelines often suffer from defects such as cracks, irregular joint misalignment, and stratified sedimentation blockages, which may lead to pipeline bursts, sewage overflow, and water pollution. Timely detection of abnormal defects in sewage pipelines is critical to ensuring public health and environmental sustainability. Vision-based sewage pipeline defect detection plays a crucial role in modern urban wastewater treatment systems. However, it still faces challenges such as limited feature extraction capabilities, insufficient multi-scale defect characterization, and poor positioning stability when dealing with low-contrast images and in environments with severe background interference. To address this issue, this study proposes an enhanced SAW-YOLOv8l model that integrates RT-DETR (real-time detection Transformer) with CNN (convolutional neural network) architecture. First, a C2f_SCA module improves the long-distance feature extraction capability and localization precision. Second, an AIFI-PRBN module enhances global feature correlation through attention-mechanism-based intra-scale feature interaction and reduces computational complexity using lightweight techniques. Finally, an adaptive dynamic weighted loss function based on Wise-IoU (weighted intersection over union) further improves training convergence and robustness by balancing the gradient distribution of samples. Experiments on a mixed dataset comprising Sewer-ML and industrial images demonstrate that the SAW-YOLOv8l model achieved mAP@0.5 of 86.2% and precision of 84.4%, which were improvements of 2.4% and 6.6% respectively over the baseline model, significantly enhancing the detection performance of abnormal defects in sewage pipelines. Full article
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