【新冠肺炎研究的数字化转型】。

Uirusu Pub Date : 2022-01-01 DOI:10.2222/jsv.72.39
Hyeongki Park, Joo Hyeon Woo, Shoya Iwanami, Shingo Iwami
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引用次数: 0

摘要

在当前的生命科学研究中,我们正处于一个先进技术不断涌现并利用大数据的时代。机器学习等数据驱动方法在分析这些数据集方面发挥着重要作用。然而,有限的临床(时间进程)数据集可用于传染病、癌症和其他疾病。特别是在新出现的传染病暴发的情况下,必须使用从有限数量的病例中获得的临床数据来制定治疗策略和公共卫生政策。这意味着许多临床数据不是大数据,这往往使数据驱动方法的应用变得困难。在本文中,我们主要将基于数学模型的方法应用于新冠肺炎的临床数据,并讨论如何从有限的数据中提取具有生物学意义的信息,以及如何使社会受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Digital transformation of COVID-19 research].

In a current life sciences research, we are in an era in which advanced technology emerging and utilize big data. Data-driven approaches such as machine learnings play an important role to analyze these datasets. However, limited clinical (time-course) datasets are available for infectious diseases, cancer, and other diseases. Especially in the case of emerging infectious disease outbreaks, clinical data obtained from a limited number of cases must be used to develop treatment strategies and public health policies. This means that many clinical data are not big data, which often makes the application of data-driven approaches difficult. In this paper, we mainly apply a mathematical model-based approach to the clinical data of COVID-19 and discuss how biologically important information can be extracted from the limited data and how they can benefit society.

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