2022
DOI: 10.1155/2022/2069756
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Identification of Immune-Related Genes and Small-Molecule Drugs in Interstitial Cystitis/Bladder Pain Syndrome Based on the Integrative Machine Learning Algorithms and Molecular Docking

Abstract: Background. Interstitial cystitis/bladder pain syndrome (IC/BPS) is a chronic, severely distressing clinical syndrome characterized by bladder pain and pressure perceptions. The origin and pathophysiology of IC/BPS are currently unclear, making it difficult to diagnose and formulate successful treatments. Our study is aimed at investigating the role of immune-related genes in the diagnosis, progression, and therapy of IC/BPS. Method. The gene expression datasets GSE11783, GSE11839, GSE28242, and GSE57560 were … Show more

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“…The feature importance was determined by the mean decrease Gini index calculated by RF, and genes with relative importance >2 were determined as characteristic genes. SVM-RFE is a novel method for pattern recognition that adopts the principle of structural risk minimization, accounts for training error and generalizability, and demonstrates distinctive advantages in solving small samples, high-dimensional nonlinearity, local minima, and other pattern recognition problems [ 28 ]. R packages “e1071” and “caret” for the SVM-RFE algorithm were used to calculate the point with the smallest cross-validation error, so as to screen characteristic genes.…”
Section: Methodsmentioning
confidence: 99%
“…The feature importance was determined by the mean decrease Gini index calculated by RF, and genes with relative importance >2 were determined as characteristic genes. SVM-RFE is a novel method for pattern recognition that adopts the principle of structural risk minimization, accounts for training error and generalizability, and demonstrates distinctive advantages in solving small samples, high-dimensional nonlinearity, local minima, and other pattern recognition problems [ 28 ]. R packages “e1071” and “caret” for the SVM-RFE algorithm were used to calculate the point with the smallest cross-validation error, so as to screen characteristic genes.…”
Section: Methodsmentioning
confidence: 99%