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process optimization » model optimization (Expand Search)
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genes based » gene based (Expand Search), lens based (Expand Search)
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b while » b whole (Expand Search), a while (Expand Search)
process optimization » model optimization (Expand Search)
while optimization » whale optimization (Expand Search), wolf optimization (Expand Search), phase optimization (Expand Search)
based process » based processes (Expand Search), based probes (Expand Search), based proteins (Expand Search)
genes based » gene based (Expand Search), lens based (Expand Search)
binary b » binary _ (Expand Search)
b while » b whole (Expand Search), a while (Expand Search)
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81
Data_Sheet_2_Feature Selection for Breast Cancer Classification by Integrating Somatic Mutation and Gene Expression.docx
Published 2021“…In the stage of feature selection, we propose a staged feature selection algorithm, using fold change, false discovery rate to select differentially expressed genes, mutual information to remove the irrelevant and redundant features, and the embedded method based on gradient boosting decision tree with Bayesian optimization to obtain an optimal model. …”
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82
Data_Sheet_1_Feature Selection for Breast Cancer Classification by Integrating Somatic Mutation and Gene Expression.CSV
Published 2021“…In the stage of feature selection, we propose a staged feature selection algorithm, using fold change, false discovery rate to select differentially expressed genes, mutual information to remove the irrelevant and redundant features, and the embedded method based on gradient boosting decision tree with Bayesian optimization to obtain an optimal model. …”
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83
Table2_Comprehensive analysis of key m5C modification-related genes in type 2 diabetes.XLSX
Published 2022“…The CIBERSORT algorithm was applied to analyze the interactions between hub gene expression and immune infiltration.…”
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84
Table1_Comprehensive analysis of key m5C modification-related genes in type 2 diabetes.XLSX
Published 2022“…The CIBERSORT algorithm was applied to analyze the interactions between hub gene expression and immune infiltration.…”
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85
Presentation1_Comprehensive analysis of key m5C modification-related genes in type 2 diabetes.PDF
Published 2022“…The CIBERSORT algorithm was applied to analyze the interactions between hub gene expression and immune infiltration.…”
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86
Image1_Comprehensive analysis of key m5C modification-related genes in type 2 diabetes.PDF
Published 2022“…The CIBERSORT algorithm was applied to analyze the interactions between hub gene expression and immune infiltration.…”
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87
DataSheet_1_Integrated analysis of potential gene crosstalk between non-alcoholic fatty liver disease and diabetic nephropathy.docx
Published 2022“…The PPI network built with the 80 common genes included 77 nodes and 83 edges. Ten optimal crosstalk genes were selected by LASSO regression and Boruta algorithm, including CD36, WIPI1, CBX7, FCN1, SLC35D2, CP, ZDHHC3, PTPN3, LPL, and SPP1. …”
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Data Sheet 1_Immunogenic cell death-related genes as prognostic biomarkers and therapeutic insights in uterine corpus endometrial carcinoma: an integrative bioinformatics analysis....
Published 2025“…</p>Methods<p>The ICD score was assessed using single-sample gene set enrichment analysis (ssGSEA). Differentially expressed genes (DEGs) were identified from transcriptomic data processed with the "DESeq2" R package. …”
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93
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Table_3_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.xlsx
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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95
Table_5_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.XLSX
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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96
Table_4_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.xlsx
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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97
Image_1_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.pdf
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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98
Table_1_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.XLSX
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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99
Table_2_NEM-Tar: A Probabilistic Graphical Model for Cancer Regulatory Network Inference and Prioritization of Potential Therapeutic Targets From Multi-Omics Data.XLSX
Published 2021“…An information theory-based score, weighted information gain (WIG), was proposed to assess the impact of signaling genes on a specific downstream biological process of interest. …”
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100