2024
DOI: 10.1002/iub.2930
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Integrated multi‐omics and machine learning reveal a gefitinib resistance signature for prognosis and treatment response in lung adenocarcinoma

Dong Zhou,
Zhi Zheng,
Yanqi Li
et al.

Abstract: Gefitinib resistance (GR) presents a significant challenge in treating lung adenocarcinoma (LUAD), highlighting the need for alternative therapies. This study explores the genetic basis of GR to improve prediction, prevention, and treatment strategies. We utilized public databases to obtain GR gene sets, single‐cell data, and transcriptome data, applying univariate and multivariate regression analyses alongside machine learning to identify key genes and develop a predictive signature. The signature's performan… Show more

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