Cell fate decisions, such as proliferation, differentiation, and death, are driven by complex molecular interactions and signaling cascades. While significant progress has been made in understanding the molecular determinants of these processes, historically, cell fate transitions were identified through light microscopy that focused on changes in cell morphology and function. Modern techniques have shifted toward probing molecular effectors to quantify these transitions, offering more precise quantification and mechanistic understanding. However, challenges remain in cases where the molecular signals are ambiguous, complicating the assignment of cell fate. During viral infection, programmed cell death (PCD) pathways, including apoptosis, necroptosis, and pyroptosis, exhibit complex signaling and molecular cross-talk. This can lead to simultaneous activation of multiple PCD pathways, which confounds assignment of cell fate based on molecular information alone. To address this challenge, we employed deep learning-based image classification of dying cells to analyze PCD in single herpes simplex virus-1 (HSV-1)-infected cells. Our approach reveals that despite heterogeneous activation of signaling, individual cells adopt predominantly prototypical death morphologies. Nevertheless, PCD is executed heterogeneously within a uniform population of virus-infected cells and varies over time. These findings demonstrate that image-based phenotyping can provide valuable insights into cell fate decisions, complementing molecular assays.
Deep learning-based image classification reveals heterogeneous execution of cell death fates during viral infection.
基于深度学习的图像分类揭示了病毒感染过程中细胞死亡命运的异质性执行
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作者:Centofanti Edoardo, Oyler-Yaniv Alon, Oyler-Yaniv Jennifer
| 期刊: | Molecular Biology of the Cell | 影响因子: | 2.700 |
| 时间: | 2025 | 起止号: | 2025 Mar 1; 36(3):ar29 |
| doi: | 10.1091/mbc.E24-10-0438 | 种属: | Viral |
| 研究方向: | 细胞生物学 | ||
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