Center for Pathobiochemistry & Genetics, Institute of Medical Genetics, Medical University of Vienna, Vienna, Austria.
Center for Pathobiochemistry & Genetics, Institute of Medical Chemistry and Pathobiochemistry, Medical University of Vienna, Vienna, Austria.
Aging Cell. 2023 Dec;22(12):e14012. doi: 10.1111/acel.14012. Epub 2023 Oct 16.
Enlarged or irregularly shaped nuclei are frequently observed in tissue cells undergoing senescence. However, it remained unclear whether this peculiar morphology is a cause or a consequence of senescence and how informative it is in distinguishing between proliferative and senescent cells. Recent research reveals that nuclear morphology can act as a predictive biomarker of senescence, suggesting an active role for the nucleus in driving senescence phenotypes. By employing deep learning algorithms to analyze nuclear morphology, accurate classification of cells as proliferative or senescent is achievable across various cell types and species both in vitro and in vivo. This quantitative imaging-based approach can be employed to establish links between senescence burden and clinical data, aiding in the understanding of age-related diseases, as well as assisting in disease prognosis and treatment response.
在衰老的组织细胞中经常观察到细胞核增大或形状不规则。然而,目前尚不清楚这种特殊的形态是衰老的原因还是结果,以及它在区分增殖细胞和衰老细胞方面有多大的信息量。最近的研究表明,核形态可以作为衰老的预测生物标志物,这表明核在驱动衰老表型方面起着积极的作用。通过使用深度学习算法分析核形态,可以在体外和体内的各种细胞类型和物种中实现对增殖细胞和衰老细胞的准确分类。这种基于定量成像的方法可以用于建立衰老负担与临床数据之间的联系,有助于理解与年龄相关的疾病,并辅助疾病预后和治疗反应的评估。