Optimizing hybrid ensemble feature selection strategies for transcriptomic biomarker discovery in complex diseases.

IF 4 Q1 GENETICS & HEREDITY
NAR Genomics and Bioinformatics Pub Date : 2024-07-11 eCollection Date: 2024-09-01 DOI:10.1093/nargab/lqae079
Elsa Claude, Mickaël Leclercq, Patricia Thébault, Arnaud Droit, Raluca Uricaru
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引用次数: 0

Abstract

Biomedical research takes advantage of omic data, such as transcriptomics, to unravel the complexity of diseases. A conventional strategy identifies transcriptomic biomarkers characterized by expression patterns associated with a phenotype by relying on feature selection approaches. Hybrid ensemble feature selection (HEFS) has become increasingly popular as it ensures robustness of the selected features by performing data and functional perturbations. However, it remains difficult to make the best suited choices at each step when designing such approaches. We conducted an extensive analysis of four possible HEFS scenarios for the identification of Stage IV colorectal, Stage I kidney and lung and Stage III endometrial cancer biomarkers from transcriptomic data. These scenarios investigate the use of two types of feature reduction by filters (differentially expressed genes and variance) conjointly with two types of resampling strategies (repeated holdout by distribution-balanced stratified and random stratified) for downstream feature selection through an aggregation of thousands of wrapped machine learning models. Based on our results, we emphasize the advantages of using HEFS approaches to identify complex disease biomarkers, given their ability to produce generalizable and stable results to both data and functional perturbations. Finally, we highlight critical issues that need to be considered in the design of such strategies.

为复杂疾病的转录组生物标记物发现优化混合集合特征选择策略。
生物医学研究利用转录组学等 omic 数据来揭示疾病的复杂性。传统的策略是通过特征选择方法来识别转录组生物标记物,这些标记物的特征是与表型相关的表达模式。混合集合特征选择(HEFS)通过执行数据和功能扰动来确保所选特征的稳健性,因此越来越受欢迎。然而,在设计这种方法时,仍然很难在每一步做出最合适的选择。我们对四种可能的 HEFS 方案进行了广泛分析,以便从转录组数据中识别 IV 期结直肠癌、I 期肾癌、I 期肺癌和 III 期子宫内膜癌生物标记物。这些方案研究了通过过滤器(差异表达基因和方差)和两种重采样策略(分布均衡分层重复保留和随机分层)减少特征的两种类型的使用,以便通过数千个包装机器学习模型的聚合进行下游特征选择。基于我们的研究结果,我们强调了使用 HEFS 方法识别复杂疾病生物标志物的优势,因为这种方法能够对数据和功能扰动产生可推广的稳定结果。最后,我们强调了在设计此类策略时需要考虑的关键问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.00
自引率
2.20%
发文量
95
审稿时长
15 weeks
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