Author:
Xu Xiaolu,Qi Zitong,Wang Lei,Zhang Meiwei,Geng Zhaohong,Han Xiumei
Abstract
Abstract
Background
Cancer, a disease with high morbidity and mortality rates, poses a significant threat to human health. Driver genes, which harbor mutations accountable for the initiation and progression of tumors, play a crucial role in cancer development. Identifying driver genes stands as a paramount objective in cancer research and precision medicine.
Results
In the present work, we propose a method for identifying driver genes using a Generalized Linear Regression Model (GLM) with Shrinkage and double-Weighted strategies based on Functional Impact, which is named GSW-FI. Firstly, an estimating model is proposed for assessing the background functional impacts of genes based on GLM, utilizing gene features as predictors. Secondly, the shrinkage and double-weighted strategies as two revising approaches are integrated to ensure the rationality of the identified driver genes. Lastly, a statistical method of hypothesis testing is designed to identify driver genes by leveraging the estimated background function impacts. Experimental results conducted on 31 The Cancer Genome Altas datasets demonstrate that GSW-FI outperforms ten other prediction methods in terms of the overlap fraction with well-known databases and consensus predictions among different methods.
Conclusions
GSW-FI presents a novel approach that efficiently identifies driver genes with functional impact mutations using computational methods, thereby advancing the development of precision medicine for cancer.
Funder
Basic Scientific Research Project of Liaoning Provincial Department of Education
University-Industry Collaborative Education Program
Natural Science Foundation of Liaoning Province
Dalian Medical Science Research Program
Dalian City Science and Technology Talent Innovation Project
Publisher
Springer Science and Business Media LLC
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