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机器学习:一种识别与特定癌症类型相关的关键微生物因子的有力工具。

Machine learning: a powerful tool for identifying key microbial agents associated with specific cancer types.

机构信息

Department of Laboratory Medicine, The Affiliated Hospital of Southwest Medical University, Sichuan Province Engineering Technology Research Center of Molecular Diagnosis of Clinical Diseases, Molecular Diagnosis of Clinical Diseases Key Laboratory of Luzhou, Sichuan, China.

Department of Obstetrics, The Affiliated Hospital of Southwest Medical University, Luzhou, Sichuan, China.

出版信息

PeerJ. 2023 Oct 23;11:e16304. doi: 10.7717/peerj.16304. eCollection 2023.

Abstract

Machine learning (ML) includes a broad class of computer programs that improve with experience and shows unique strengths in performing tasks such as clustering, classification and regression. Over the past decade, microbial communities have been implicated in influencing the onset, progression, metastasis, and therapeutic response of multiple cancers. Host-microbe interaction may be a physiological pathway contributing to cancer development. With the accumulation of a large number of high-throughput data, ML has been successfully applied to the study of human cancer microbiomics in an attempt to reveal the complex mechanism behind cancer. In this review, we begin with a brief overview of the data sources included in cancer microbiomics studies. Then, the characteristics of the ML algorithm are briefly introduced. Secondly, the application progress of ML in cancer microbiomics is also reviewed. Finally, we highlight the challenges and future prospects facing ML in cancer microbiomics. On this basis, we conclude that the development of cancer microbiomics can not be achieved without ML, and that ML can be used to develop tumor-targeting microbial therapies, ultimately contributing to personalized and precision medicine.

摘要

机器学习 (ML) 包括一大类计算机程序,这些程序通过经验得到改善,并在执行聚类、分类和回归等任务方面显示出独特的优势。在过去的十年中,微生物群落已被认为会影响多种癌症的发生、发展、转移和治疗反应。宿主-微生物相互作用可能是导致癌症发展的生理途径。随着大量高通量数据的积累,机器学习已成功应用于人类癌症微生物组学的研究,试图揭示癌症背后的复杂机制。在这篇综述中,我们首先简要概述了癌症微生物组学研究中包含的数据源。然后,简要介绍了 ML 算法的特点。其次,还回顾了 ML 在癌症微生物组学中的应用进展。最后,我们强调了 ML 在癌症微生物组学中面临的挑战和未来前景。在此基础上,我们得出结论,没有机器学习就无法实现癌症微生物组学的发展,而机器学习可以用于开发针对肿瘤的微生物疗法,最终有助于个性化和精准医学。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/995d/10601900/9f245097a2c1/peerj-11-16304-g001.jpg

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