Monfort-Lanzas Pablo, Rungger Katja, Madersbacher Leonie, Hackl Hubert
Institute of Bioinformatics, Biocenter, Medical University of Innsbruck, Austria.
Institute of Medical Biochemistry, Biocenter, Medical University of Innsbruck, Austria.
Comput Struct Biotechnol J. 2025 Feb 26;27:832-842. doi: 10.1016/j.csbj.2025.02.028. eCollection 2025.
Understanding the responses of biological systems to various perturbations, such as genetic, chemical, or environmental challenges, is essential for reconstructing causal network models. Emerging single-cell technologies have become instrumental in elucidating cell states and phenotypes and they have been used in combination with genetic screening. Recent advances in machine learning and artificial intelligence architectures have stimulated the development of computational tools for modeling perturbations and the response to compounds. This study outlined core principles underpinning perturbation analysis and discussed the methodologies and analytical frameworks used to decode drug and genetic perturbation responses, complex multicellular interactions, and network dynamics. The current tools used for various applications were overviewed. These developments hold great promise for improving drug development and personalized medicine. Foundation models and perturbation cell and tissue atlases offer immense potential for advancing our understanding of cellular behavior and disease mechanisms.
了解生物系统对各种扰动(如基因、化学或环境挑战)的反应,对于重建因果网络模型至关重要。新兴的单细胞技术已成为阐明细胞状态和表型的重要工具,并已与基因筛选结合使用。机器学习和人工智能架构的最新进展推动了用于对扰动和化合物反应进行建模的计算工具的发展。本研究概述了扰动分析的核心原则,并讨论了用于解码药物和基因扰动反应、复杂多细胞相互作用和网络动态的方法和分析框架。概述了目前用于各种应用的工具。这些进展对于改进药物开发和个性化医疗具有巨大的前景。基础模型以及扰动细胞和组织图谱为推进我们对细胞行为和疾病机制的理解提供了巨大潜力。