人工智能与单细胞组学在细胞可塑性研究中的结合展望。

IF 1.4 4区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Quantitative Biology Pub Date : 2025-12-01 Epub Date: 2025-04-24 DOI:10.1002/qub2.70004
Ahmed Ghobashi, Qin Ma
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引用次数: 0

摘要

细胞的可塑性使细胞能够通过改变其表型来动态适应环境的变化。这种可塑性在组织修复和再生中起着至关重要的作用,并有助于癌症转移等病理过程。单细胞组学的进展极大地促进了细胞状态的研究,并为准确的细胞分类和揭示细胞转变提供了新的机会。从这个角度来看,我们强调将染色质可及性数据和外部因素(如微环境线索)与单细胞转录组学数据相结合,以开发识别塑性细胞状态的整体模型。此外,将人工智能与单细胞组学相结合,为解决现有挑战和填补塑料细胞识别和表征方面的空白提供了革命性的潜力。我们设想发展一种通用的可塑性度量,一种量化细胞可塑性的标准化度量。这一标准将使不同研究之间的测量保持一致,创建一个统一的框架,连接发育生物学、癌症研究和再生医学等领域。培养识别和分析细胞可塑性的创新方法不仅可以加深我们对细胞可塑性的理解,还可以加速治疗的进步,为治疗癌症等复杂疾病的新型精准医学策略铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perspectives on integrating artificial intelligence and single-cell omics for cellular plasticity research.

Cellular plasticity enables cells to dynamically adapt to environmental changes by altering their phenotype. This plasticity plays a crucial role in tissue repair and regeneration and contributes to pathological processes such as cancer metastasis. Advances in single-cell omics have significantly advanced the study of cellular states and provided new opportunities for accurate cell classification and uncovering cellular transitions. In this perspective, we emphasize integrating chromatin accessibility data and extrinsic factors, such as microenvironmental cues, with single-cell transcriptomic data to develop holistic models for identifying plastic cell states. Additionally, coupling artificial intelligence with single-cell omics offers transformative potential to address existing challenges and fill gaps in identifying and characterizing plastic cells. We envision the development of a universal plasticity metric, a standardized metric for quantifying cellular plasticity. This metric would enable consistent measurement across diverse studies, creating a unified framework that bridges fields such as developmental biology, cancer research, and regenerative medicine. Fostering innovative approaches to identifying and analyzing cellular plasticity promises not only to deepen our understanding of cellular plasticity but also to accelerate therapeutic advancements, paving the way for novel precision medicine strategies to treat complex diseases such as cancer.

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来源期刊
Quantitative Biology
Quantitative Biology MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
5.00
自引率
3.20%
发文量
264
期刊介绍: Quantitative Biology is an interdisciplinary journal that focuses on original research that uses quantitative approaches and technologies to analyze and integrate biological systems, construct and model engineered life systems, and gain a deeper understanding of the life sciences. It aims to provide a platform for not only the analysis but also the integration and construction of biological systems. It is a quarterly journal seeking to provide an inter- and multi-disciplinary forum for a broad blend of peer-reviewed academic papers in order to promote rapid communication and exchange between scientists in the East and the West. The content of Quantitative Biology will mainly focus on the two broad and related areas: ·bioinformatics and computational biology, which focuses on dealing with information technologies and computational methodologies that can efficiently and accurately manipulate –omics data and transform molecular information into biological knowledge. ·systems and synthetic biology, which focuses on complex interactions in biological systems and the emergent functional properties, and on the design and construction of new biological functions and systems. Its goal is to reflect the significant advances made in quantitatively investigating and modeling both natural and engineered life systems at the molecular and higher levels. The journal particularly encourages original papers that link novel theory with cutting-edge experiments, especially in the newly emerging and multi-disciplinary areas of research. The journal also welcomes high-quality reviews and perspective articles.
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