用于癌症研究中多组学数据分析的综合机器学习方法

A. S. M. Shoaib, Nourin Nishat, Muniroopesh Raasetti, Imran Arif
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摘要

综合机器学习方法已成为癌症研究中分析多组学数据的重要工具,为理解复杂的生物系统提供了重大进展。本综述强调了这些技术的最新进展,突出了它们管理多组学数据集(包括基因组学、转录组学、蛋白质组学和代谢组学)的复杂性和异质性的能力。通过有效整合这些不同类型的数据,机器学习方法提供了前所未有的癌症机理见解,有助于发现新型生物标记物和治疗靶点。本综述评估了各种机器学习方法,讨论了它们在癌症研究中各自的优势和局限性。它还探讨了未来潜在的研究方向,强调需要持续的方法创新和跨学科合作,以充分利用综合机器学习的力量,推动癌症治疗和个性化医疗的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INTEGRATIVE MACHINE LEARNING APPROACHES FOR MULTI-OMICS DATA ANALYSIS IN CANCER RESEARCH
Integrative machine learning approaches have emerged as essential tools in the analysis of multi-omics data in cancer research, offering significant advancements in understanding complex biological systems. This review emphasizes recent progress in these techniques, highlighting their ability to manage the complexity and heterogeneity of multi-omics datasets, which include genomics, transcriptomics, proteomics, and metabolomics. By effectively integrating these diverse data types, machine learning approaches provide unprecedented insights into cancer mechanisms, facilitating the discovery of novel biomarkers and therapeutic targets. The review evaluates various machine learning methods, discussing their respective strengths and limitations in the context of cancer research. It also explores potential future directions for research, underscoring the need for continued methodological innovation and interdisciplinary collaboration to fully harness the power of integrative machine learning in advancing cancer treatment and personalized medicine.
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