Informatics and data science in cell death research.

3区 生物学 Q2 Biochemistry, Genetics and Molecular Biology
Hue Vu-Thi, Huy Than Quang, Vu-Hung Nguyen, Ha-Trang Le, Thu-Trang Cao Thi, Minh-Phuc Le Mau, Dinh-Toi Chu
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引用次数: 0

Abstract

Cell death are essential for maintaining cell balance, including remove the damage or harmful cells. Disorders of cell death related to the progression of various diseases, such as cancer, and autoimmune disorders. However, some challenge about quantify, define the types, or detecting in cell death still occur. To overcome the challenges, scientists have been focusing on the applications of informatics and data science in cell death research due to the advantages and the potentials over traditional methods. The implementations of informatics and data science in cell death research have shown results in improving the efficiency of the complex data processes and modeling biological systems, thus improving the performances of diagnostic methods and procedures. The aim of this chapter is to provide an overview of the existing informatics and data science applications in cell death research. In addition, this chapter discusses the main advantages and limitations of traditional cell death research methods, with the implementation of informatics, data science, and AI to overcome the challenges. From the evidence on the topic, researchers can based on the existing findings to come up with a suitable and effective research plan, hence improving the cell death research methods in the future.

细胞死亡研究中的信息学和数据科学。
细胞死亡是维持细胞平衡的必要条件,包括清除受损或有害细胞。与各种疾病进展有关的细胞死亡紊乱,如癌症和自身免疫性疾病。然而,在细胞死亡的量化、类型界定和检测方面仍存在一些挑战。为了克服这些挑战,科学家们一直关注信息学和数据科学在细胞死亡研究中的应用,因为它们比传统方法有优势和潜力。信息学和数据科学在细胞死亡研究中的应用已经在提高复杂数据处理和生物系统建模的效率方面取得了成果,从而提高了诊断方法和程序的性能。本章的目的是概述现有的信息学和数据科学在细胞死亡研究中的应用。此外,本章还讨论了传统细胞死亡研究方法的主要优点和局限性,并利用信息学、数据科学和人工智能来克服这些挑战。从这个课题的证据中,研究者可以在已有的发现的基础上提出合适有效的研究计划,从而改进未来细胞死亡的研究方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.00
自引率
0.00%
发文量
110
审稿时长
4-8 weeks
期刊介绍: Progress in Molecular Biology and Translational Science (PMBTS) provides in-depth reviews on topics of exceptional scientific importance. If today you read an Article or Letter in Nature or a Research Article or Report in Science reporting findings of exceptional importance, you likely will find comprehensive coverage of that research area in a future PMBTS volume.
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