细胞状态动力学建模的进展:整合组学数据和预测技术。

IF 2.5 2区 生物学 Q3 CELL BIOLOGY
Animal Cells and Systems Pub Date : 2025-01-10 eCollection Date: 2025-01-01 DOI:10.1080/19768354.2024.2449518
Sungwon Jung
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引用次数: 0

摘要

细胞状态的动态建模已经成为理解复杂生物过程(如细胞分化、疾病进展和组织发育)的关键方法。本文综述了当前细胞状态动力学建模方法的全面概述,重点介绍了从动态或静态生物分子网络模型到深度学习模型的技术。我们强调这些方法如何与各种组学数据(如转录组学)和单细胞RNA测序相结合,用于捕获和预测细胞行为和转变。我们还讨论了这些建模方法在预测基因敲除效应、设计靶向干预和模拟器官发育方面的应用。这篇综述强调了基于可扩展性和分辨率要求选择适当的建模策略的重要性,这些要求根据所研究的生物系统的复杂性和规模而变化。通过评估这些方法的优势、局限性和最新进展,我们的目标是指导未来的研究,以开发更强大和可解释的模型,以理解和操纵各种生物学背景下的细胞状态动力学,最终推进治疗策略和精准医学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advances in modeling cellular state dynamics: integrating omics data and predictive techniques.

Dynamic modeling of cellular states has emerged as a pivotal approach for understanding complex biological processes such as cell differentiation, disease progression, and tissue development. This review provides a comprehensive overview of current approaches for modeling cellular state dynamics, focusing on techniques ranging from dynamic or static biomolecular network models to deep learning models. We highlight how these approaches integrated with various omics data such as transcriptomics, and single-cell RNA sequencing could be used to capture and predict cellular behavior and transitions. We also discuss applications of these modeling approaches in predicting gene knockout effects, designing targeted interventions, and simulating organ development. This review emphasizes the importance of selecting appropriate modeling strategies based on scalability and resolution requirements, which vary according to the complexity and size of biological systems under study. By evaluating strengths, limitations, and recent advancements of these methodologies, we aim to guide future research in developing more robust and interpretable models for understanding and manipulating cellular state dynamics in various biological contexts, ultimately advancing therapeutic strategies and precision medicine.

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来源期刊
Animal Cells and Systems
Animal Cells and Systems 生物-动物学
CiteScore
4.50
自引率
24.10%
发文量
33
审稿时长
6 months
期刊介绍: Animal Cells and Systems is the official journal of the Korean Society for Integrative Biology. This international, peer-reviewed journal publishes original papers that cover diverse aspects of biological sciences including Bioinformatics and Systems Biology, Developmental Biology, Evolution and Systematic Biology, Population Biology, & Animal Behaviour, Molecular and Cellular Biology, Neurobiology and Immunology, and Translational Medicine.
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