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多组学时代的计算肿瘤学:现状

Computational Oncology in the Multi-Omics Era: State of the Art.

作者信息

de Anda-Jáuregui Guillermo, Hernández-Lemus Enrique

机构信息

Computational Genomics Division, National Institute of Genomic Medicine, Mexico City, Mexico.

Cátedras Conacyt Para Jóvenes Investigadores, National Council on Science and Technology, Mexico City, Mexico.

出版信息

Front Oncol. 2020 Apr 7;10:423. doi: 10.3389/fonc.2020.00423. eCollection 2020.

Abstract

Cancer is the quintessential complex disease. As technologies evolve faster each day, we are able to quantify the different layers of biological elements that contribute to the emergence and development of malignancies. In this multi-omics context, the use of integrative approaches is mandatory in order to gain further insights on oncological phenomena, and to move forward toward the precision medicine paradigm. In this review, we will focus on computational oncology as an integrative discipline that incorporates knowledge from the mathematical, physical, and computational fields to further the biomedical understanding of cancer. We will discuss the current roles of computation in oncology in the context of multi-omic technologies, which include: data acquisition and processing; data management in the clinical and research settings; classification, diagnosis, and prognosis; and the development of models in the research setting, including their use for therapeutic target identification. We will discuss the machine learning and network approaches as two of the most promising emerging paradigms, in computational oncology. These approaches provide a foundation on how to integrate different layers of biological description into coherent frameworks that allow advances both in the basic and clinical settings.

摘要

癌症是典型的复杂疾病。随着技术日新月异的发展,我们能够对导致恶性肿瘤发生和发展的不同层次的生物元素进行量化。在这种多组学背景下,必须采用整合方法,以便更深入地了解肿瘤学现象,并朝着精准医学范式迈进。在本综述中,我们将聚焦计算肿瘤学,这是一门整合学科,它融合了数学、物理和计算领域的知识,以深化对癌症的生物医学理解。我们将在多组学技术的背景下讨论计算在肿瘤学中的当前作用,其中包括:数据采集与处理;临床和研究环境中的数据管理;分类、诊断和预后;以及研究环境中模型的开发,包括其用于治疗靶点识别的用途。我们将讨论机器学习和网络方法,它们是计算肿瘤学中最有前途的两种新兴范式。这些方法为如何将不同层次的生物学描述整合到连贯的框架中提供了基础,从而推动基础和临床环境的发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4131/7154096/0a53125629a7/fonc-10-00423-g0001.jpg

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