Sign in to use this feature.

Years

Between: -

Subjects

remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline

Journals

remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline

Article Types

Countries / Regions

remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline
remove_circle_outline

Search Results (2,296)

Search Parameters:
Keywords = eRF3

Order results
Result details
Results per page
Select all
Export citation of selected articles as:
19 pages, 5007 KB  
Article
A Study on the Key Factors Influencing Power Grid Outage Restoration Times: A Case Study of the Jiexi Area
by Jiajun Lin, Ruiyue Xie, Haobin Lin, Xingyuan Guo, Yudong Mao and Zhaosong Fang
Processes 2025, 13(9), 2708; https://doi.org/10.3390/pr13092708 (registering DOI) - 25 Aug 2025
Abstract
In rural and mountainous regions, power supply reliability remains a persistent challenge due to structural vulnerabilities, data incompleteness, and limited automation. In this study, a data-driven methodology is leveraged, wherein a validated machine learning framework comprising Random Forest (RF), Lasso Regression, and Recursive [...] Read more.
In rural and mountainous regions, power supply reliability remains a persistent challenge due to structural vulnerabilities, data incompleteness, and limited automation. In this study, a data-driven methodology is leveraged, wherein a validated machine learning framework comprising Random Forest (RF), Lasso Regression, and Recursive Feature Elimination (RFE) is applied to analyze outage data. The machine learning models, validated on a held-out test set, demonstrated modest but positive predictive performance, confirming a quantifiable, non-random relationship between grid structure and restoration time. This validation provides a credible foundation for the subsequent feature importance analysis. Through a transparent, consensus-based analysis of these models, the most robust influencing factors were identified. The results reveal that key structural indicators related to network redundancy (e.g., Inter-Bus Loop Rate) and electrical stress (e.g., Peak Daily Load Current, Load Factor) are the most significant predictors of prolonged outages. Furthermore, statistical analyses confirm that increasing structural redundancy and regulating line loads can effectively reduce outage duration. These findings offer practical, data-driven guidance for prioritizing investments in rural grid planning and reinforcement. This study contributes to the broader application of machine learning in energy systems, particularly showcasing a robust methodology for identifying key drivers under data and resource constraints. Full article
Show Figures

Figure 1

20 pages, 4430 KB  
Article
Identification of Self-Incompatibility Related Genes in Sweet Cherry Based on Transcriptomic Analysis
by Chen Feng, Chuanbao Wu, Jing Wang, Wei Wang, Guohua Yan, Yu Zhou, Kaichun Zhang, Xiaoming Zhang and Xuwei Duan
Biology 2025, 14(9), 1125; https://doi.org/10.3390/biology14091125 (registering DOI) - 25 Aug 2025
Abstract
Most sweet cherry varieties exhibit typical gametophytic self-incompatibility (GSI) characteristics, necessitating careful configuration of pollination trees to ensure adequate yields. This requirement increases the costs associated with orchard labor, management, and other related expenses. Consequently, cultivating and developing sweet cherry cultivars with self-compatibility [...] Read more.
Most sweet cherry varieties exhibit typical gametophytic self-incompatibility (GSI) characteristics, necessitating careful configuration of pollination trees to ensure adequate yields. This requirement increases the costs associated with orchard labor, management, and other related expenses. Consequently, cultivating and developing sweet cherry cultivars with self-compatibility can effectively address these challenges. Research into the molecular mechanisms underlying GSI formation can provide vital theoretical support and genetic resources for breeding self-compatible sweet cherries. In this study, we assessed the fruit set rates of ‘Tieton’ following both self- and cross-pollination. Additionally, we conducted a transcriptome analysis of the ‘Tieton’ style (which includes the stigma) at 0, 12, 24, and 48 h post-pollination to identify key genes involved in the self-incompatibility process of sweet cherries. The results indicated that the self-fruiting rate of ‘Tieton’ was significantly lower than that of cross-pollination. We identified a total of 8148 differentially expressed genes (DEGs) through transcriptome analysis, with KEGG pathway analysis revealing that the plant-pathogen interaction, plant hormone signal transduction, and plant MAPK signaling pathways were primarily involved in sweet cherry GSI. Furthermore, we identified 13 core transcription factors (TFs) based on their differential expression patterns, including three ERFs, three NACs, three WRKYs, two HD-ZIPs, one RAV, and one MYB. Co-expression analysis identified 132 core DEGs significantly associated with these TFs. Ultimately, this study provides initial insights into the key genes within the sweet cherry GSI network, laying a theoretical foundation and offering genetic resources for the future molecular design breeding of new self-compatible varieties. Full article
(This article belongs to the Special Issue Molecular Biology of Plants)
Show Figures

Figure 1

28 pages, 7744 KB  
Article
Optimizing Random Forest with Hybrid Swarm Intelligence Algorithms for Predicting Shear Bond Strength of Cable Bolts
by Ming Xu, Yingui Qiu, Manoj Khandelwal, Mohammad Hossein Kadkhodaei and Jian Zhou
Machines 2025, 13(9), 758; https://doi.org/10.3390/machines13090758 - 24 Aug 2025
Abstract
This study combines three optimization algorithms, Tunicate Swarm Algorithm (TSA), Whale Optimization Algorithm (WOA), and Jellyfish Search Optimizer (JSO), with random forest (RF) to predict the shear bond strength of cable bolts under different types and grouting conditions. Based on the original dataset, [...] Read more.
This study combines three optimization algorithms, Tunicate Swarm Algorithm (TSA), Whale Optimization Algorithm (WOA), and Jellyfish Search Optimizer (JSO), with random forest (RF) to predict the shear bond strength of cable bolts under different types and grouting conditions. Based on the original dataset, a database of 860 samples was generated by introducing random noise around each data point. After establishing three hybrid models (RF-WOA, RF-JSO, RF-TSA) and training them, the obtained models were evaluated using six metrics: coefficient of determination (R2), root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), variance account for (VAF), and A-20 index. The results indicate that the RF-JSO model exhibits superior performance compared to the other models. The RF-JSO model achieved an excellent performance on the testing set (R2 = 0.981, RMSE = 11.063, MAE = 6.457, MAPE = 9, VAF = 98.168, A-20 = 0.891). In addition, Shapley Additive exPlanations (SHAP), Partial Dependence Plot (PDP), and Local Interpretable Model-agnostic Explanations (LIME) were used to analyze the interpretability of the model, and it was found that confining pressure (Stress), elastic modulus (E), and a standard cable type (cable type_standard) contributed the most to the prediction of shear bond strength. In summary, the hybrid model proposed in this study can effectively predict the shear bond strength of cable bolts. Full article
(This article belongs to the Special Issue Key Technologies in Intelligent Mining Equipment)
Show Figures

Figure 1

23 pages, 7350 KB  
Article
Mechanisms of Spatial Coupling Between Plantation Species Distribution and Historical Disturbance in the Complex Topography of Eastern Yunnan
by Xiyu Zhang, Chao Zhang and Lianjin Fu
Remote Sens. 2025, 17(17), 2925; https://doi.org/10.3390/rs17172925 - 22 Aug 2025
Viewed by 207
Abstract
Forest disturbance is a major driver shaping the structure and function of plantation ecosystems. Current research predominantly focuses on single forest types or landscape scales. However, species-level fine-scale assessments of disturbance dynamics are still scarce. In this study, we investigated Chinese fir ( [...] Read more.
Forest disturbance is a major driver shaping the structure and function of plantation ecosystems. Current research predominantly focuses on single forest types or landscape scales. However, species-level fine-scale assessments of disturbance dynamics are still scarce. In this study, we investigated Chinese fir (Cunninghamia lanceolata), Armand pine (Pinus armandii), and Yunnan pine (Pinus yunnanensis) plantations in the mountainous eastern Yunnan Plateau. We developed a Spatial Coupling Framework of Disturbance Legacy (SC-DL) to systematically elucidate the spatial associations between contemporary species distribution patterns and historical disturbance regimes. Using the Google Earth Engine (GEE) platform, we reconstructed pixel-level disturbance trajectories by integrating long-term Landsat time series (1993–2024) and applying the LandTrendr algorithm. By fusing multi-source remote sensing features (Sentinel-1/2) with terrain factors, employing RFE, and performing a multi-model comparison, we generated 10 m-resolution species distribution maps for 2024. Spatial overlay analysis quantified the cumulative proportion of the historically disturbed area and the spatial aggregation patterns of historical disturbances within current species ranges. Key results include the following: (1) The model predicting disturbance year achieved high accuracy (R2 = 0.95, RMSE = 2.02 years, MAE = 1.15 years). The total disturbed area from 1993 to 2024 was 872.7 km2, exhibiting three distinct phases. (2) The random forest (RF) model outperformed other classifiers, achieving an overall accuracy (OA) of 95.17% and a Kappa coefficient (K) of 0.93. Elevation was identified as the most discriminative feature. (3) Significant spatial differentiation in disturbance types emerged: anthropogenic disturbances (e.g., logging and reforestation/afforestation) dominated (63.1% of total disturbed area), primarily concentrated within Chinese fir zones (constituting 70.2% of disturbances within this species’ range). Natural disturbances accounted for 36.9% of the total, with fire dominating within the Yunnan pine range (79.3% of natural disturbances in this zone) and drought prevailing in the Armand pine range (71.3% of natural disturbances in this zone). (4) Cumulative disturbance characteristics differed markedly among species zones: Chinese fir zones exhibited the highest cumulative proportion of disturbed area (42.6%), with strong spatial aggregation. Yunnan pine zones followed (36.5%), exhibiting disturbances linearly distributed along dry–hot valleys. Armand pine zones showed the lowest proportion (20.9%), characterized by sparse disturbances within fragmented, high-altitude habitats. These spatial patterns reflect the combined controls of topographic adaptation, management intensity, and environmental stress. Our findings establish a scientific basis for identifying disturbance-prone areas and inform the development of differentiated precision management strategies for plantations. Full article
Show Figures

Figure 1

19 pages, 2119 KB  
Article
Stress Responses to Hydrogen Peroxide and Hydric Stress-Related Acoustic Emissions (MHAF) in Capsicum annuum L. Applied in a Single or Combined Manner
by Pablo L. Godínez-Mendoza, Amanda K. Rico-Chávez, Ireri A. Carbajal-Valenzuela, Luis M. Contreras-Medina, Rosalía V. Ocampo-Velázquez, Enrique Rico-García, Irineo Torres-Pacheco and Ramón G. Guevara-González
Plants 2025, 14(16), 2591; https://doi.org/10.3390/plants14162591 - 20 Aug 2025
Viewed by 143
Abstract
Hydrogen peroxide (H2O2) application in several plant species has been widely studied as a plant biostimulant; however, the use of acoustic emissions related to hydric stress (MHAF) in biostimulating plants has not been widely studied, including the response of [...] Read more.
Hydrogen peroxide (H2O2) application in several plant species has been widely studied as a plant biostimulant; however, the use of acoustic emissions related to hydric stress (MHAF) in biostimulating plants has not been widely studied, including the response of plants to the interaction of different stress factors. The aim of the present work was to evaluate the stress response in some morphological, biochemical, and molecular variables of the single or combined application of H2O2 and MHAF in C. annuum L. plants. Acoustic emission frequencies were obtained in a previous study where the frequencies came from C. annuum plants submitted to medium hydric stress (MHAF). Our results showed that the combination of the two stressors evaluated has a possible synergistic effect on variables such as SOD activity and relative gene expressions of ros1, met1, and MAPkinases (mkk5, mpk4-1, mpk6-2), as well as an antagonistic effect for flavonoid content, DPPH, and ABTS free radical inhibition, and def1 gene expression. MHAF showed increased plant height, PAL activity, and mpk6-1 and erf1 gene upregulation, while H2O2 increased POD activity and upregulated pr1a gene. These findings suggest possible stress response pathways that are activated and enhanced by the presence of these stress factors, both individually and in conjunction with one another, making it possible to use them as novel strategies for agricultural stress management. Full article
Show Figures

Graphical abstract

18 pages, 11894 KB  
Article
Genome-Wide Identification and Expression Profiling of AP2/ERF Transcription Factor Genes in Prunus armeniaca L.
by Yanguang He, Lin Wang, Nan Jiang, Donglin Zhang, Xiaodan Shi, Tana Wuyun and Huimin Liu
Forests 2025, 16(8), 1353; https://doi.org/10.3390/f16081353 - 20 Aug 2025
Viewed by 203
Abstract
The APETALA2/Ethylene Responsive Factor (AP2/ERF transcription factor) family plays pivotal roles in plant growth, stress responses, and metabolic regulation. Here, we identified 118 AP2/ERF family members in the apricot (Prunus armeniaca L.) genome, which were classified into four major subfamilies (AP2, DREB, [...] Read more.
The APETALA2/Ethylene Responsive Factor (AP2/ERF transcription factor) family plays pivotal roles in plant growth, stress responses, and metabolic regulation. Here, we identified 118 AP2/ERF family members in the apricot (Prunus armeniaca L.) genome, which were classified into four major subfamilies (AP2, DREB, ERF, and RAV) and Soloists (few unclassified factors), through phylogenetic analysis. The ERF subfamily exhibited the largest expansion (55 members), driven predominantly by 10 tandem and 14 segmental duplication events. Gene structures and conserved motifs exhibited similar patterns within each subfamily. Chromosomal distribution was uneven, with chromosome 1 harboring the highest gene density. PaWRI1 was specifically expressed in apricot kernel and positively correlated with oil accumulation. A total of 47 lipid-related genes were predicted as potential targets of PaWRI1 through correlation analysis, which covers the entire three-stage process of plant oil synthesis. These results advance our understanding of how core AP2/ERF transcription factors modulate oil accumulation pathways in apricot, offering potential targets for metabolic engineering. Full article
(This article belongs to the Special Issue Forest Tree Breeding: Genomics and Molecular Biology)
Show Figures

Figure 1

25 pages, 5569 KB  
Article
Effect of Indium Doping on the Photoelectric Properties of SnS Thin Films and SnS/TiO2 Heterojunctions
by Jiahao Leng, Yaoxin Ding, Mingyang Zhang and Jie Shen
Coatings 2025, 15(8), 972; https://doi.org/10.3390/coatings15080972 - 20 Aug 2025
Viewed by 230
Abstract
This study addresses the need for efficient photoelectric materials by fabricating Indium-doped tin sulfide (SnS-In)/titanium dioxide (TiO2) heterostructure thin films via radio frequency (RF) magnetron sputtering. We systematically investigated the synergistic enhancement of photoelectric properties from both In-doping and the heterostructure [...] Read more.
This study addresses the need for efficient photoelectric materials by fabricating Indium-doped tin sulfide (SnS-In)/titanium dioxide (TiO2) heterostructure thin films via radio frequency (RF) magnetron sputtering. We systematically investigated the synergistic enhancement of photoelectric properties from both In-doping and the heterostructure design. SnS-In films with controlled In concentrations were prepared by embedding varying numbers of indium pellets into the SnS sputtering target. Our findings reveal that an optimal In doping of 4.93 at% significantly improves the crystalline quality and light absorption of SnS, reducing its band gap from 1.27 eV to 1.13 eV and enhancing carrier concentration and mobility. Subsequently, the optimized SnS-In film combined with TiO2 formed a heterojunction, achieving a peak photocurrent density of 6.36 µA/cm2 under visible light. This is 2.2 and 53.0 times higher than standalone SnS-In and TiO2 films, respectively. This superior performance is attributed to the optimal In3+ doping effectively modulating the SnS band structure and the type-II heterojunction promoting efficient charge separation. This work demonstrates a promising strategy for optoelectronic conversion and photocatalysis by combining In-doping for SnS band structure engineering with TiO2 heterostructure construction. Full article
(This article belongs to the Special Issue Electrochemical Properties and Applications of Thin Films)
Show Figures

Graphical abstract

18 pages, 1357 KB  
Review
Nonsense-Mediated mRNA Decay: Mechanisms and Recent Implications in Cardiovascular Diseases
by Fasilat Oluwakemi Hassan, Md Monirul Hoque, Abdul Majid, Joy Olaoluwa Gbadegoye, Amr Raafat and Djamel Lebeche
Cells 2025, 14(16), 1283; https://doi.org/10.3390/cells14161283 - 19 Aug 2025
Viewed by 389
Abstract
This review highlights the emerging functional implications of nonsense-mediated mRNA decay (NMD) in human diseases, with a focus on its therapeutic potential for cardiovascular disease. NMD, conserved from yeast to humans, is involved in apoptosis, autophagy, cellular differentiation, and gene expression regulation. NMD [...] Read more.
This review highlights the emerging functional implications of nonsense-mediated mRNA decay (NMD) in human diseases, with a focus on its therapeutic potential for cardiovascular disease. NMD, conserved from yeast to humans, is involved in apoptosis, autophagy, cellular differentiation, and gene expression regulation. NMD is a highly conserved surveillance mechanism that degrades mRNAs containing premature termination codons (PTCs) located upstream of the final exon-exon junction. NMD serves to prevent the translation of aberrant mRNA and prevents the formation of defective protein products that could result in diseases. Key players in this pathway include up-frameshift proteins (UPFs), nonsense-mediated mRNA decay associated with p13K-related kinases (SMGs), and eukaryotic release factors (eRFs), among others. Dysregulation of NMD has been linked to numerous pathological conditions such as dilated cardiomyopathy, cancer, viral infections, and various neurodevelopmental and genetic disorders. This review will examine the regulatory mechanisms by which NMD regulation or dysregulation may contribute to disease mitigation or progression and its potential for cardiovascular disease therapy. We will further explore how modulating NMD could prevent the outcomes of mutations underlying genetically induced cardiovascular conditions and its applications in personalized medicine due to its role in gene regulation. While recent advances have provided valuable insights into NMD machinery and its therapeutic potential, further studies are needed to clarify the precise roles of key NMD components in cardiovascular disease prevention and treatment. Full article
(This article belongs to the Section Cells of the Cardiovascular System)
Show Figures

Figure 1

22 pages, 10127 KB  
Article
Ensemble-Based Susceptibility Modeling with Predictive Symmetry Optimization: A Case Study from Mount Tai, China
by Zhuang Zhao, Bin Chen, Pan Liu, Xiong Duan, Zhonglin Ji, Changjuan Feng, Xin Tan, Yixin Zhang and Fuhai Cui
Symmetry 2025, 17(8), 1353; https://doi.org/10.3390/sym17081353 - 19 Aug 2025
Viewed by 247
Abstract
Accurate prediction of geological hazard susceptibility forms the foundation of effective risk management, yet small-sample constraints often limit model generalization. In order to address this issue, this study applied an ensemble method based on predictive symmetry quantification, using Mount Tai, China, as a [...] Read more.
Accurate prediction of geological hazard susceptibility forms the foundation of effective risk management, yet small-sample constraints often limit model generalization. In order to address this issue, this study applied an ensemble method based on predictive symmetry quantification, using Mount Tai, China, as a test case. Thirteen influencing factors were integrated using six machine learning algorithms—Logistic Regression (LR), Multilayer Perceptron (MLP), Random Forest (RF), Gradient Boosting Decision Tree (GBDT), eXtreme Gradient Boosting (XGB), and Support Vector Machine (SVM)—trained on 34 hazard sites. Symmetry breaking in model outputs was quantified, and XGB and MLP, which showed the lowest correlation (0.59), were selected for dynamic weighted integration. Symmetry-adjusted weighting counteracts bias from individual models. For hyperparameter tuning, grid search was employed, while SHapley Additive exPlanations (SHAP) was used to quantify factor contributions. The performance of each model was evaluated using AUC and AP metrics. The key results show that all base models performed robustly (AUC > 0.8), with XGB showing high consistency (AUC = 0.927), and the performance of the symmetry-optimized ensemble (MLP + XGB) exceeded that of all the individual models (AUC = 0.964). The dominant drivers of Geohazards included elevation, slope, the topographic wetness index, and road adjacency, with high-susceptibility zones clustered in southeastern high-altitude terrain, central mountains, and road-intensive north-central sectors. The approach presented here provides an ensemble method based on predictive symmetry quantification that is effective under the constraints of small sample sizes. Full article
(This article belongs to the Section Computer)
Show Figures

Figure 1

22 pages, 2887 KB  
Article
Autoencoder-Assisted Stacked Ensemble Learning for Lymphoma Subtype Classification: A Hybrid Deep Learning and Machine Learning Approach
by Roseline Oluwaseun Ogundokun, Pius Adewale Owolawi, Chunling Tu and Etienne van Wyk
Tomography 2025, 11(8), 91; https://doi.org/10.3390/tomography11080091 - 18 Aug 2025
Viewed by 243
Abstract
Background: Accurate subtype identification of lymphoma cancer is crucial for effective diagnosis and treatment planning. Although standard deep learning algorithms have demonstrated robustness, they are still prone to overfitting and limited generalization, necessitating more reliable and robust methods. Objectives: This study presents an [...] Read more.
Background: Accurate subtype identification of lymphoma cancer is crucial for effective diagnosis and treatment planning. Although standard deep learning algorithms have demonstrated robustness, they are still prone to overfitting and limited generalization, necessitating more reliable and robust methods. Objectives: This study presents an autoencoder-augmented stacked ensemble learning (SEL) framework integrating deep feature extraction (DFE) and ensembles of machine learning classifiers to improve lymphoma subtype identification. Methods: Convolutional autoencoder (CAE) was utilized to obtain high-level feature representations of histopathological images, followed by dimensionality reduction via Principal Component Analysis (PCA). Various models were utilized for classifying extracted features, i.e., Random Forest (RF), Support Vector Machine (SVM), Multi-Layer Perceptron (MLP), AdaBoost, and Extra Trees classifiers. A Gradient Boosting Machine (GBM) meta-classifier was utilized in an SEL approach to further fine-tune final predictions. Results: All the models were tested using accuracy, area under the curve (AUC), and Average Precision (AP) metrics. The stacked ensemble classifier performed better than all the individual models with a 99.04% accuracy, 0.9998 AUC, and 0.9996 AP, far exceeding what regular deep learning (DL) methods would achieve. Of standalone classifiers, MLP (97.71% accuracy, 0.9986 AUC, 0.9973 AP) and Random Forest (96.71% accuracy, 0.9977 AUC, 0.9953 AP) provided the best prediction performance, while AdaBoost was the poorest performer (68.25% accuracy, 0.8194 AUC, 0.6424 AP). PCA and t-SNE plots confirmed that DFE effectively enhances class discrimination. Conclusion: This study demonstrates a highly accurate and reliable approach to lymphoma classification by using autoencoder-assisted ensemble learning, reducing the misclassification rate and significantly enhancing the accuracy of diagnosis. AI-based models are designed to assist pathologists by providing interpretable outputs such as class probabilities and visualizations (e.g., Grad-CAM), enabling them to understand and validate predictions in the diagnostic workflow. Future studies should enhance computational efficacy and conduct multi-centre validation studies to confirm the model’s generalizability on extensive collections of histopathological datasets. Full article
Show Figures

Figure 1

16 pages, 1109 KB  
Article
Development and Validation of a Machine Learning Model for Early Prediction of Acute Kidney Injury in Neurocritical Care: A Comparative Analysis of XGBoost, GBM, and Random Forest Algorithms
by Keun Soo Kim, Tae Jin Yoon, Joonghyun Ahn and Jeong-Am Ryu
Diagnostics 2025, 15(16), 2061; https://doi.org/10.3390/diagnostics15162061 - 17 Aug 2025
Viewed by 390
Abstract
Background: Acute Kidney Injury (AKI) is a pivotal concern in neurocritical care, impacting patient survival and quality of life. This study harnesses machine learning (ML) techniques to predict the occurrence of AKI in patients receiving hyperosmolar therapy, aiming to optimize patient outcomes in [...] Read more.
Background: Acute Kidney Injury (AKI) is a pivotal concern in neurocritical care, impacting patient survival and quality of life. This study harnesses machine learning (ML) techniques to predict the occurrence of AKI in patients receiving hyperosmolar therapy, aiming to optimize patient outcomes in neurocritical settings. Methods: We conducted a retrospective cohort study of 4886 patients who underwent hyperosmolar therapy in the neurosurgical intensive care unit (ICU). Comparative predictive analyses were carried out using advanced ML algorithms—eXtreme Gradient Boosting (XGBoost), Gradient Boosting Machine (GBM), Random Forest (RF)—against standard multivariate logistic regression. Predictive performance was assessed using an 8:2 training-testing data split, with model fine-tuning through cross-validation. Results: The RF with KNN imputation showed slightly better performance than other approaches in predicting AKI. When applied to an independent test set, it achieved a sensitivity of 79% (95% CI: 70–87%) and specificity of 85% (95% CI: 82–88%), with an overall accuracy of 84% (95% CI: 81–87%) and AUROC of 0.86 (95% CI: 0.82–0.91). The multivariate logistic regression analysis, while informative, showed less predictive strength compared to the ML models. Delta chloride levels and serum osmolality proved to be the most influential predictors, with additional significant variables including pH, age, bicarbonate, and the osmolar gap. Conclusions: The prominence of delta chloride and serum osmolality among the predictive variables underscores its potential as a biomarker for AKI risk in this patient population. Full article
(This article belongs to the Section Machine Learning and Artificial Intelligence in Diagnostics)
Show Figures

Figure 1

31 pages, 3109 KB  
Article
Spatial-Temporal Forecasting of Air Pollution in Saudi Arabian Cities Based on a Deep Learning Framework Enabled by AI
by Rafat Zrieq, Souad Kamel, Faris Al-Hamazani, Sahbi Boubaker, Rozan Attili and Marcos J. Araúzo-Bravo
Toxics 2025, 13(8), 682; https://doi.org/10.3390/toxics13080682 - 16 Aug 2025
Viewed by 352
Abstract
Air pollution is steadily increasing due to industrialization, economic activities, and transportation. High levels pose a significant threat to human health and well-being worldwide. Saudi Arabia is a growing country with air quality indices ranging from moderate to unhealthy. Although there are many [...] Read more.
Air pollution is steadily increasing due to industrialization, economic activities, and transportation. High levels pose a significant threat to human health and well-being worldwide. Saudi Arabia is a growing country with air quality indices ranging from moderate to unhealthy. Although there are many monitoring stations distributed throughout the country, mathematical modeling of air pollution is still crucial for health and environmental decision-making. From this perspective, in this study, a data-driven approach based on pollutant records and a Deep Learning (DL) Long Short-Term Memory (LSTM) algorithm is carried out to perform temporal modeling of selected pollutants (PM10, PM2.5, CO and O3) based on time series combined with a spatial modeling focused on selected cities (Riyadh, Jeddah, Mecca, Rabigh, Abha, Dammam and Taif), covering ~48% of the total population of the country. The best forecasts were provided by LSTM in cases where the datasets used were of relatively large size. Numerically, the obtained performance metrics such as the coefficient of determination (R2) ranged from 0.2425 to 0.8073. The best LSTM results were compared to those provided by two ensemble methods, Random Forest (RF) and eXtreme Gradient Boosting (XGBoost), where the merits of LSTM were confirmed mainly in terms of its ability to capture hidden relationships. We also found that overall, meteorological factors showed a weak association with pollutant concentrations, with ambient temperature exerting a moderate influence. However, incorporating ambient temperature into LSTM models did not lead to a significant improvement in predictive accuracy. The developed approach can be used to support decision-making in environmental and health domains, as well as to monitor pollutant concentrations based on historical time series records. Full article
Show Figures

Figure 1

23 pages, 5632 KB  
Article
Classification of Rockburst Intensity Grades: A Method Integrating k-Medoids-SMOTE and BSLO-RF
by Qinzheng Wu, Bing Dai, Danli Li, Hanwen Jia and Penggang Li
Appl. Sci. 2025, 15(16), 9045; https://doi.org/10.3390/app15169045 - 16 Aug 2025
Viewed by 276
Abstract
Precise forecasting of rockburst intensity categories is vital to safeguarding operational safety and refining design protocols in deep underground engineering. This study proposes an intelligent forecasting framework through the integration of k-medoids-SMOTE and the BSLO-optimized Random Forest (BSLO-RF) algorithm. A curated dataset encompassing [...] Read more.
Precise forecasting of rockburst intensity categories is vital to safeguarding operational safety and refining design protocols in deep underground engineering. This study proposes an intelligent forecasting framework through the integration of k-medoids-SMOTE and the BSLO-optimized Random Forest (BSLO-RF) algorithm. A curated dataset encompassing 351 rockburst instances, stratified into four intensity grades, was compiled via systematic literature synthesis. To mitigate data imbalance and outlier interference, z-score normalization and k-medoids-SMOTE oversampling were implemented, with t-SNE visualization confirming improved inter-class distinguishability. Notably, the BSLO algorithm was utilized for hyperparameter tuning of the Random Forest model, thereby strengthening its global search and local refinement capabilities. Comparative analyses revealed that the optimized BSLO-RF framework outperformed conventional machine learning methods (e.g., BSLO-SVM, BSLO-BP), achieving an average prediction accuracy of 89.16% on the balanced dataset—accompanied by a recall of 87.5% and F1-score of 0.88. It exhibited superior performance in predicting extreme grades: 93.3% accuracy for Level I (no rockburst) and 87.9% for Level IV (severe rockburst), exceeding BSLO-SVM (75.8% for Level IV) and BSLO-BP (72.7% for Level IV). Field validation via the Zhongnanshan Tunnel project further corroborated its reliability, yielding an 80% prediction accuracy (four out of five cases correctly classified) and verifying its adaptability to complex geological settings. This research introduces a robust intelligent classification approach for rockburst intensity, offering actionable insights for risk assessment and mitigation in deep mining and tunneling initiatives. Full article
Show Figures

Figure 1

24 pages, 1094 KB  
Article
Machine Learning-Based Surrogate Ensemble for Frame Displacement Prediction Using Jackknife Averaging
by Zhihao Zhao, Jinjin Wang and Na Wu
Buildings 2025, 15(16), 2872; https://doi.org/10.3390/buildings15162872 - 14 Aug 2025
Viewed by 284
Abstract
High-fidelity finite element analysis (FEA) plays a key role in structural engineering by enabling accurate simulation of displacement, stress, and internal forces under static loads. However, its high computational cost limits applicability in real-time control, iterative design, and large-scale uncertainty quantification. Surrogate modeling [...] Read more.
High-fidelity finite element analysis (FEA) plays a key role in structural engineering by enabling accurate simulation of displacement, stress, and internal forces under static loads. However, its high computational cost limits applicability in real-time control, iterative design, and large-scale uncertainty quantification. Surrogate modeling provides a computationally efficient alternative by learning input–output mappings from precomputed simulations. Yet, the performance of individual surrogates is often sensitive to data distribution and model assumptions. To enhance both accuracy and robustness, we propose a model averaging framework based on Jackknife Model Averaging (JMA) that integrates six surrogate models: polynomial response surfaces (PRSs), support vector regression (SVR), radial basis function (RBF) interpolation, eXtreme Gradient Boosting (XGB), Light Gradient Boosting Machine (LGBM), and Random Forest (RF). Three ensembles are formed: JMA1 (classical models), JMA2 (tree-based models), and JMA3 (all models). JMA assigns optimal convex weights using cross-validated out-of-fold errors without a meta-learner. We evaluate the framework on the Static Analysis Dataset with over 300,000 FEA simulations. Results show that JMA consistently outperforms individual models in root mean squared error, mean absolute error, and the coefficient of determination, while also producing tighter, better-calibrated conformal prediction intervals. These findings support JMA as an effective tool for surrogate-based structural analysis. Full article
Show Figures

Figure 1

17 pages, 4999 KB  
Article
Simulating the Phylogenetic Diversity Metrics of Plant Communities in Alpine Grasslands of Xizang, China
by Mingxue Xiang, Tao Ma, Wei Sun, Shaowei Li and Gang Fu
Diversity 2025, 17(8), 569; https://doi.org/10.3390/d17080569 - 14 Aug 2025
Viewed by 257
Abstract
Phylogenetic diversity serves as a critical complement to traditional species diversity metrics. However, the performance variations among different computational models in simulating phylogenetic diversity within plant communities in the alpine grasslands of the Qinghai-Xizang Plateau remain insufficiently characterized. Here, we evaluated nine modeling [...] Read more.
Phylogenetic diversity serves as a critical complement to traditional species diversity metrics. However, the performance variations among different computational models in simulating phylogenetic diversity within plant communities in the alpine grasslands of the Qinghai-Xizang Plateau remain insufficiently characterized. Here, we evaluated nine modeling approaches—random forest (RF), generalized boosting regression (GBR), multiple linear regression (MLR), artificial neural network (ANN), generalized linear regression (GLR), conditional inference tree (CIT), extreme gradient boosting (eXGB), support vector machine (SVM), and recursive regression tree (RRT)—for predicting three key phylogenetic diversity metrics [Faith’s phylogenetic diversity (PD), mean pairwise distance (MPD), mean nearest taxon distance (MNTD)] using climate variables and NDVImax. Our comprehensive analysis revealed distinct model performance patterns under grazing vs. fencing regimes. The eXGB algorithm demonstrated superior accuracy for fencing conditions, achieving the lowest relative bias (−0.08%) and RMSE (9.54) for MPD, along with optimal performance for MNTD (bias = 2.95%, RMSE = 44.86). Conversely, RF emerged as the most robust model for grazing scenarios, delivering the lowest bias (−1.63%) and RMSE (16.89) for MPD while maintaining strong predictive capability for MNTD (bias = −1.09%, RMSE = 27.59). Notably, scatterplot analysis revealed that only RF, GBR, and eXGB maintained symmetrical distributions along the 1:1 line, while other models showed problematic one-to-many value mappings or asymmetric patterns. These findings show that machine learning (especially RF and eXGB) enhances phylogenetic diversity predictions by integrating climate and NDVI data, though model performance varies by metric and management context. This study offers a framework for ecological forecasting, emphasizing multi-metric validation in biodiversity modeling. Full article
Show Figures

Figure 1

Back to TopTop