基因
生物标志物
成对比较
排名(信息检索)
生物
Lasso(编程语言)
计算生物学
卵巢癌
生物标志物发现
癌症
遗传学
计算机科学
肿瘤科
生物信息学
医学
机器学习
人工智能
蛋白质组学
万维网
作者
Pengfei Zhao,Dian Meng,Zunkai Hu,Yining Liang,Yating Feng,Tongjie Sun,Lixin Cheng,Xubin Zheng,Haili Li
标识
DOI:10.1016/j.compbiomed.2024.108208
摘要
Ovarian cancer, a major gynecological malignancy, often remains undetected until advanced stages, necessitating more effective early screening methods. Existing biomarker based on differential genes often suffers from variations in clinical practice. To overcome the limitations of absolute gene expression values including batch effects and biological heterogeneity, we introduced a pairwise biosignature leveraging intra-sample differentially ranked genes (DRGs) and machine learning for ovarian cancer detection across diverse cohorts. We analyzed ten cohorts comprising 872 samples with 796 ovarian cancer and 76 normal. Our method, DRGpair, involves three stages: intra-sample ranking differential analysis, reversed gene pair analysis, and iterative LASSO regression. We identified four DRG pairs, demonstrating superior diagnostic performance compared to current state-of-the-art biomarkers and differentially expressed genes in seven independent cohorts. This rank-based approach not only reduced computational complexity but also enhanced the specificity and effectiveness of biomarkers, revealing DRGs as promising candidates for ovarian cancer detection and offering a scalable model adaptable to varying cohort characteristics.
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