Showing 4,241 - 4,260 results of 4,419 for search '(( elements network algorithm ) OR ((( data code algorithm ) OR ( data processing algorithm ))))', query time: 0.49s Refine Results
  1. 4241

    Table 1_Erannis jacobsoni disturbance detection based on unmanned aerial vehicle red edge spectral features.docx by Liga Bai (22156009)

    Published 2025
    “…This study aims to provide with rapid and precise pest occurrence data, enabling timely and effective control measures to preserve and enhance the agroforestry ecological environment. …”
  2. 4242

    Image 2_Erannis jacobsoni disturbance detection based on unmanned aerial vehicle red edge spectral features.jpg by Liga Bai (22156009)

    Published 2025
    “…This study aims to provide with rapid and precise pest occurrence data, enabling timely and effective control measures to preserve and enhance the agroforestry ecological environment. …”
  3. 4243

    Image 1_Erannis jacobsoni disturbance detection based on unmanned aerial vehicle red edge spectral features.jpg by Liga Bai (22156009)

    Published 2025
    “…This study aims to provide with rapid and precise pest occurrence data, enabling timely and effective control measures to preserve and enhance the agroforestry ecological environment. …”
  4. 4244

    <b>R</b><b>esidual</b> <b>GCB-Net</b>: Residual Graph Convolutional Broad Network on Emotion Recognition by Qilin Li (535447)

    Published 2025
    “…<p dir="ltr">Electroencephalogram (EEG) data are commonly applied in the emotion recognition research area. …”
  5. 4245

    Image 1_Multi-omics integration analysis based on plasma circulating proteins reveals potential therapeutic targets for ulcerative colitis.pdf by Jihai Zhou (1876561)

    Published 2025
    “…This study aims to identify potential diagnostic and therapeutic biomarkers for UC through multi-omics integrative analysis, providing new insights into its precise diagnosis and treatment.</p>Methods<p>Data samples from the Gene Expression Omnibus database and protein quantitative trait loci data from genome-wide association studies were integrated to identify overlapping genes. …”
  6. 4246

    Table 1_Ensemble machine learning for predicting renal function decline in chronic kidney disease: development and external validation.docx by Hong Chen (108084)

    Published 2025
    “…Clinical, demographic, and laboratory data were processed with rigorous quality control. …”
  7. 4247

    Table 2_Identification and validation of pyroptosis-related genes in Alzheimer’s disease based on multi-transcriptome and machine learning.docx by Yuntai Wang (21356525)

    Published 2025
    “…Additionally, we validated the expression patterns of these key genes using the expression data from AD mice and constructed potential regulatory networks through time series and correlation analysis.…”
  8. 4248

    Table 1_Identification and validation of pyroptosis-related genes in Alzheimer’s disease based on multi-transcriptome and machine learning.xlsx by Yuntai Wang (21356525)

    Published 2025
    “…Additionally, we validated the expression patterns of these key genes using the expression data from AD mice and constructed potential regulatory networks through time series and correlation analysis.…”
  9. 4249

    Image 4_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.jpeg by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  10. 4250

    Table 1_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.docx by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  11. 4251

    Image 3_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.jpeg by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  12. 4252

    Image 1_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.jpeg by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  13. 4253

    Table 2_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.docx by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  14. 4254

    Image 2_The evolution of artificial intelligence technology in non-alcoholic fatty liver disease.jpeg by Jiawen He (7828505)

    Published 2025
    “…Recent research trends indicate that deep learning algorithms and multimodal data fusion have become research hotspots in AI applications for NAFLD diagnosis and treatment. …”
  15. 4255

    Preprocessed GEFCom 2012 Wind Power Forecasting Dataset by Yuan Shi (22779782)

    Published 2025
    “…</p><p dir="ltr">This processed dataset is suitable for research and development in wind power forecasting models, offering a clean and standardized input for machine learning algorithms.…”
  16. 4256

    Supplementary file 2_Educators’ reflections on AI-automated feedback in higher education: a structured integrative review of potentials, pitfalls, and ethical dimensions.docx by Latifah Hamdan Alghamdi (22611518)

    Published 2025
    “…Research indicates that AI can enhance customization, deliver immediate feedback, optimize repetitive processes, and increase student engagement. Nonetheless, these advantages are persistently compromised by concerns regarding algorithmic bias, data privacy, the deterioration of teacher-student relationships, and inadequate professional growth. …”
  17. 4257

    Supplementary file 1_Educators’ reflections on AI-automated feedback in higher education: a structured integrative review of potentials, pitfalls, and ethical dimensions.docx by Latifah Hamdan Alghamdi (22611518)

    Published 2025
    “…Research indicates that AI can enhance customization, deliver immediate feedback, optimize repetitive processes, and increase student engagement. Nonetheless, these advantages are persistently compromised by concerns regarding algorithmic bias, data privacy, the deterioration of teacher-student relationships, and inadequate professional growth. …”
  18. 4258

    Supplementary file 1_Development of a venous thromboembolism risk prediction model for patients with primary membranous nephropathy based on machine learning.docx by Lian Li (49049)

    Published 2025
    “…The data was divided into training and test sets at an 8:2 ratio, followed by processed using combinations of three imputation methods, three sampling methods, and three feature selection methods. …”
  19. 4259

    Supplementary file 1_Integrating bioinformatics and molecular experiments to reveal the critical role of the cellular energy metabolism-related marker PLA2G1B in COPD epithelial ce... by Jun Shi (289433)

    Published 2025
    “…</p>Material and methods<p>This research identified cell energy metabolism-related differentially expressed genes (CEM-DEGs) by collecting CEM-associated signatures from multiple public databases and integrating these markers with data from the GEO database. Subsequently, five machine learning algorithms—Boruta, Xgboost, GBM, SVM-RFE, and LASSO—were employed to screen for key variables. …”
  20. 4260

    Table 1_Integrating bioinformatics and molecular experiments to reveal the critical role of the cellular energy metabolism-related marker PLA2G1B in COPD epithelial cells.xlsx by Jun Shi (289433)

    Published 2025
    “…</p>Material and methods<p>This research identified cell energy metabolism-related differentially expressed genes (CEM-DEGs) by collecting CEM-associated signatures from multiple public databases and integrating these markers with data from the GEO database. Subsequently, five machine learning algorithms—Boruta, Xgboost, GBM, SVM-RFE, and LASSO—were employed to screen for key variables. …”