Morphological profiling by high-throughput single-cell biophysical fractometry

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Abstract

Complex and irregular cell architecture is known to statistically exhibit fractal geometry, i.e., a pattern resembles a smaller part of itself. Although fractal variations in cells are proven to be closely associated with the disease-related phenotypes that are otherwise obscured in the standard cell-based assays, fractal analysis with single-cell precision remains largely unexplored. To close this gap, here we develop an image-based approach that quantifies a multitude of single-cell biophysical fractal-related properties at subcellular resolution. Taking together with its high-throughput single-cell imaging performance (~10,000 cells/sec), this technique, termed single-cell biophysical fractometry, offers sufficient statistical power for delineating the cellular heterogeneity, in the context of lung-cancer cell subtype classification, drug response assays and cell-cycle progression tracking. Further correlative fractal analysis shows that single-cell biophysical fractometry can enrich the standard morphological profiling depth and spearhead systematic fractal analysis of how cell morphology encodes cellular health and pathological conditions.

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Zhang, Z., Lee, K. C. M., Siu, D. M. D., Lo, M. C. K., Lai, Q. T. K., Lam, E. Y., & Tsia, K. K. (2023). Morphological profiling by high-throughput single-cell biophysical fractometry. Communications Biology, 6(1). https://doi.org/10.1038/s42003-023-04839-6

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