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An integrative sparse boosting analysis of cancer genomic commonality and difference

Authors :
Yifan Sun
Zhengyang Sun
Yang Li
Shuangge Ma
Yu Jiang
Source :
Stat Methods Med Res
Publication Year :
2022

Abstract

In cancer research, high-throughput profiling has been extensively conducted. In recent studies, the integrative analysis of data on multiple cancer patient groups/subgroups has been conducted. Such analysis has the potential to reveal the genomic commonality as well as difference across groups/subgroups. However, in the existing literature, methods with a special attention to the genomic commonality and difference are very limited. In this study, a novel estimation and marker selection method based on the sparse boosting technique is developed to address the commonality/difference problem. In terms of technical innovation, a new penalty and computation of increments are introduced. The proposed method can also effectively accommodate the grouping structure of covariates. Simulation shows that it can outperform direct competitors under a wide spectrum of settings. The analysis of two TCGA (The Cancer Genome Atlas) datasets is conducted, showing that the proposed analysis can identify markers with important biological implications and have satisfactory prediction and stability.<br />13 pages

Details

Language :
English
Database :
OpenAIRE
Journal :
Stat Methods Med Res
Accession number :
edsair.doi.dedup.....08b9aa1eee38ac379be4e3c984da2538