Interpretable Fine-Grained Phenotypes of Subcellular Dynamics via Unsupervised Deep Learning

被引:0
作者
Wang, Chuangqi [1 ,2 ]
Choi, Hee June [2 ,3 ,4 ]
Woodbury, Lucy [2 ,5 ]
Lee, Kwonmoo [2 ,3 ,4 ]
机构
[1] Univ Colorado, Dept Immunol & Microbiol, Anschutz Med Campus, Aurora, CO 80045 USA
[2] Worcester Polytech Inst, Dept Biomed Engn, Worcester, MA 01609 USA
[3] Harvard Med Sch, Boston Childrens Hosp, Vasc Biol Program, Boston, MA 02115 USA
[4] Harvard Med Sch, Boston Childrens Hosp, Dept Surg, Boston, MA 02115 USA
[5] Univ Arkansas, Dept Biomed Engn, Fayetteville, AR 72701 USA
关键词
cell migration; live cell imaging; machine learning; morphodynamics; phenotyping; ACTIN; HETEROGENEITY; METASTASIS; MIGRATION; NETWORK; CELLS; VASP;
D O I
10.1002/advs.202403547
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Uncovering fine-grained phenotypes of live cell dynamics is pivotal for a comprehensive understanding of the heterogeneity in healthy and diseased biological processes. However, this endeavor poses significant technical challenges for unsupervised machine learning, requiring the extraction of features that not only faithfully preserve this heterogeneity but also effectively discriminate between established biological states, all while remaining interpretable. To tackle these challenges, a self-training deep learning framework designed for fine-grained and interpretable phenotyping is presented. This framework incorporates an unsupervised teacher model with interpretable features to facilitate feature learning in a student deep neural network (DNN). Significantly, an autoencoder-based regularizer is designed to encourage the student DNN to maximize the heterogeneity associated with molecular perturbations. This method enables the acquisition of features with enhanced discriminatory power, while simultaneously preserving the heterogeneity associated with molecular perturbations. This study successfully delineated fine-grained phenotypes within the heterogeneous protrusion dynamics of migrating epithelial cells, revealing specific responses to pharmacological perturbations. Remarkably, this framework adeptly captured a concise set of highly interpretable features uniquely linked to these fine-grained phenotypes, each corresponding to specific temporal intervals crucial for their manifestation. This unique capability establishes it as a valuable tool for investigating diverse cellular dynamics and their heterogeneity. An unsupervised deep learning framework is developed to analyze live cell dynamics by combining an unsupervised teacher model with a student deep neural network. This method successfully delineates detailed subcellular protrusion phenotypes and their responses to drugs. This approach preserves cellular heterogeneity while improving feature discrimination and interpretation, making it a valuable tool for studying subcellular dynamics. image
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页数:21
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