生殖组学:探索计算工具的应用和发展。

IF 1.9 4区 医学 Q3 PHYSIOLOGY
P Sengupta, S Dutta, F Liew, A Samrot, S Dasgupta, M A Rajput, P Slama, A Kolesarova, S Roychoudhury
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引用次数: 0

摘要

近几十年来,蛋白质组学、基因组学、表观基因组学、代谢组学、转录组学和微生物组学等全局组学技术的发展极大地增强了我们对各种生理和病理过程的分子机制的了解。然而,由于激素和其他多种因素的周期性调节,再加上个体的基因构成,导致了不同的生物反应,因此分析和解释有关生殖疾病的大量 omics 数据非常复杂。生殖组学研究个体激素调节、环境因素、遗传倾向(DNA 组成和表观基因组)、健康影响以及由此产生的生物学结果之间的相互作用。这是一个迅速崛起的领域,它利用计算工具来分析和解释生殖数据,目的是改善生殖健康结果。现在是探索生殖组学在了解不孕症的分子机制、识别诊断和治疗的潜在生物标志物以及改进辅助生殖技术(ARTs)方面的应用的时候了。生殖组学工具包括用于预测生育结果的机器学习算法、用于纠正基因异常的基因编辑技术,以及用于分析单个细胞水平基因表达模式的单细胞测序技术。然而,生殖组学的应用也面临着一些挑战、限制和伦理问题,例如基因编辑技术的应用及其对后代的潜在影响。这篇综述全面介绍了生殖组学的应用和进展,强调了它在改善生殖健康结果和加深我们对生殖分子机制的了解方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reproductomics: Exploring the Applications and Advancements of Computational Tools.

Over recent decades, advancements in omics technologies, such as proteomics, genomics, epigenomics, metabolomics, transcriptomics, and microbiomics, have significantly enhanced our understanding of the molecular mechanisms underlying various physiological and pathological processes. Nonetheless, the analysis and interpretation of vast omics data concerning reproductive diseases are complicated by the cyclic regulation of hormones and multiple other factors, which, in conjunction with a genetic makeup of an individual, lead to diverse biological responses. Reproductomics investigates the interplay between a hormonal regulation of an individual, environmental factors, genetic predisposition (DNA composition and epigenome), health effects, and resulting biological outcomes. It is a rapidly emerging field that utilizes computational tools to analyze and interpret reproductive data, with the aim of improving reproductive health outcomes. It is time to explore the applications of reproductomics in understanding the molecular mechanisms underlying infertility, identification of potential biomarkers for diagnosis and treatment, and in improving assisted reproductive technologies (ARTs). Reproductomics tools include machine learning algorithms for predicting fertility outcomes, gene editing technologies for correcting genetic abnormalities, and single cell sequencing techniques for analyzing gene expression patterns at the individual cell level. However, there are several challenges, limitations and ethical issues involved with the use of reproductomics, such as the applications of gene editing technologies and their potential impact on future generations are discussed. The review comprehensively covers the applications and advancements of reproductomics, highlighting its potential to improve reproductive health outcomes and deepen our understanding of reproductive molecular mechanisms.

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来源期刊
Physiological research
Physiological research 医学-生理学
CiteScore
4.00
自引率
4.80%
发文量
108
审稿时长
3 months
期刊介绍: Physiological Research is a peer reviewed Open Access journal that publishes articles on normal and pathological physiology, biochemistry, biophysics, and pharmacology. Authors can submit original, previously unpublished research articles, review articles, rapid or short communications. Instructions for Authors - Respect the instructions carefully when submitting your manuscript. Submitted manuscripts or revised manuscripts that do not follow these Instructions will not be included into the peer-review process. The articles are available in full versions as pdf files beginning with volume 40, 1991. The journal publishes the online Ahead of Print /Pre-Press version of the articles that are searchable in Medline and can be cited.
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