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algorithm fibrin » algorithm within (Expand Search), algorithms within (Expand Search), algorithm from (Expand Search)
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881
Table 10_Identification of lactylation-related biomarkers in osteoporosis from transcriptome and single-cell data.csv
Published 2025“…Subsequently, nomograms, functional enrichment analyses, immune infiltration analyses, regulatory network construction, drug prediction, and molecular docking were performed to characterize the functional and clinical significance of the biomarkers. …”
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882
Data Sheet 1_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.pdf
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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883
Table 4_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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884
Table 1_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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885
Image 1_Immune-molecular nexus in reproductive disorders: mechanisms linking POI and RSA.pdf
Published 2025“…The analysis involved machine learning algorithms, mcode and Cytoscape, revealing important hub genes. …”
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886
Data Sheet 2_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.pdf
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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887
Supplementary file 1_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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888
Table 2_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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889
Supplementary file 2_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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890
Table 3_Novel diagnostic biomarkers associated with macrophage-microglia in spinal cord injury.xlsx
Published 2025“…Predictive models based on these genes demonstrated strong performance in both internal training and external validation cohorts. …”
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891
Table 2_Construction and validation of immune prognosis model for lung adenocarcinoma based on machine learning.docx
Published 2025“…Three machine learning algorithms—Random Forest, LASSO, and SVM-RFE—were applied to identify key hub genes. …”
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892
Supplementary file 1_Probiotic modulation of maternal gut and milk microbiota and potential implications for infant microbial development in the perinatal period.docx
Published 2025“…However, LEfSe revealed distinct genera in both maternal gut and milk microbiota linked to probiotic intake. …”
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893
Table 1_Construction and validation of immune prognosis model for lung adenocarcinoma based on machine learning.docx
Published 2025“…Three machine learning algorithms—Random Forest, LASSO, and SVM-RFE—were applied to identify key hub genes. …”
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894
Table 2_Comprehensive analysis of immunogenic cell death-related genes in liver ischemia-reperfusion injury.xlsx
Published 2025“…The RF and SVM machine learning algorithms were finally chosen to construct the models. …”
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895
Supplementary file 1_Transcriptomic analysis and machine learning modeling identifies novel biomarkers and genetic characteristics of hypertrophic cardiomyopathy.xlsx
Published 2025“…A predictive model for HCM was developed through systematic evaluation of 113 combinations of 12 machine-learning algorithms, employing 10-fold cross-validation on training datasets and external validation using an independent cohort (GSE180313).…”
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896
Supplementary file 1_Plasma FGF2 and YAP1 as novel biomarkers for MCI in the elderly: analysis via bioinformatics and clinical study.docx
Published 2025“…However, there is still a notable absence of novel biomarkers that are both efficient, minimally invasive, and cost-effective in real-world clinical settings. …”
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897
Table 1_Comprehensive analysis of immunogenic cell death-related genes in liver ischemia-reperfusion injury.xlsx
Published 2025“…The RF and SVM machine learning algorithms were finally chosen to construct the models. …”
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898
Image1_Exploring the pathogenesis, biomarkers, and potential drugs for type 2 diabetes mellitus and acute pancreatitis through a comprehensive bioinformatic analysis.pdf
Published 2024“…Subsequently, we used several machine learning algorithms to identify candidate biomarkers and construct a diagnostic nomogram for T2DM and AP. …”
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899
Table1_Exploring the pathogenesis, biomarkers, and potential drugs for type 2 diabetes mellitus and acute pancreatitis through a comprehensive bioinformatic analysis.xlsx
Published 2024“…Subsequently, we used several machine learning algorithms to identify candidate biomarkers and construct a diagnostic nomogram for T2DM and AP. …”
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900
Supplementary file 1_Identification of glycolysis-related clusters and immune cell infiltration in hepatic fibrosis progression using machine learning models and experimental valid...
Published 2025“…Integrated weighted gene co-expression network analysis (WGCNA) with six machine learning algorithms to identify core GRGs genes associated with HF progression, and systematically characterized their biological functions and immunoregulatory roles through immune infiltration assessment, functional enrichment, consensus clustering, and single-cell differential state analysis. …”