Profiling Dynamic Patterns of Single‐Cell Motility

Author:

Maity Debonil12,Sivakumar Nikita12,Kamat Pratik23,Zamponi Nahuel4,Min Chanhong12,Du Wenxuan23,Jayatilaka Hasini2,Johnston Adrian23,Starich Bartholomew23,Agrawal Anshika3,Riley Deanna2,Venturutti Leandro5,Melnick Ari4,Cerchietti Leandro4,Walston Jeremy26,Phillip Jude M.1237ORCID

Affiliation:

1. Department of Biomedical Engineering Johns Hopkins University Baltimore MD 21212 USA

2. Institute for Nanobiotechnology Johns Hopkins University Baltimore MD 21212 USA

3. Department of Chemical and Biomolecular Engineering Johns Hopkins University Baltimore MD 21212 USA

4. Department of Medicine Division of Hematology and Medical Oncology Weill Cornell Medicine New York 10065 USA

5. Department of Pathology and Laboratory Medicine University of British Columbia Centre for Lymphoid Cancer British Columbia Cancer Research Institute Vancouver British Columbia V6T 1Z4 Canada

6. Department of Medicine Geriatrics and Gerontology Johns Hopkins School of Medicine Baltimore MD 21224 USA

7. Department of Oncology Sidney Kimmel Comprehensive Cancer Center Johns Hopkins School of Medicine Baltimore MD 21287 USA

Abstract

AbstractCell motility plays an essential role in many biological processes as cells move and interact within their local microenvironments. Current methods for quantifying cell motility typically involve tracking individual cells over time, but the results are often presented as averaged values across cell populations. While informative, these ensemble approaches have limitations in assessing cellular heterogeneity and identifying generalizable patterns of single‐cell behaviors, at baseline and in response to perturbations. In this study, CaMI is introduced, a computational framework designed to leverage the single‐cell nature of motility data. CaMI identifies and classifies distinct spatio‐temporal behaviors of individual cells, enabling robust classification of single‐cell motility patterns in a large dataset (n = 74 253 cells). This framework allows quantification of spatial and temporal heterogeneities, determination of single‐cell motility behaviors across various biological conditions and provides a visualization scheme for direct interpretation of dynamic cell behaviors. Importantly, CaMI reveals insights that conventional cell motility analyses may overlook, showcasing its utility in uncovering robust biological insights. Together, a multivariate framework is presented to classify emergent patterns of single‐cell motility, emphasizing the critical role of cellular heterogeneity in shaping cell behaviors across populations.

Funder

National Institutes of Health

National Institute on Aging

Publisher

Wiley

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