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C-MORE: A high-content single-cell morphology recognition methodology for liquid biopsies toward personalized cardiovascular medicine

Jennifer Furkel, Maximilian Knoll, Shabana Din, Nicolai V. Bogert, Timon Seeger, Norbert Frey, Amir Abdollahi, Hugo A. Katus, Mathias H. Konstandin

2021Cell Reports Medicine15 citationsDOIOpen Access PDF

Abstract

Cellular morphology has the capacity to serve as a surrogate for cellular state and functionality. However, primary cardiomyocytes, the standard model in cardiovascular research, are highly heterogeneous cells and therefore impose methodological challenges to analysis. Hence, we aimed to devise a robust methodology to deconvolute cardiomyocyte morphology on a single-cell level: C-MORE (cellular morphology recognition) is a workflow from bench to data analysis tailored for heterogeneous primary cells using our R package cmoRe. We demonstrate its utility in proof-of-principle applications such as modulation of canonical hypertrophy pathways and linkage of genotype-phenotype in human induced pluripotent stem cell-derived cardiomyocytes (hiPSC-CMs). In our pilot study, exposure of cardiomyocytes to blood plasma prior to versus after aortic valve replacement allows identification of a disease fingerprint and reflects partial reversibility following therapeutic intervention. C-MORE is a valuable tool for cardiovascular research with possible fields of application in basic research and personalized medicine.

Topics & Concepts

Personalized medicinePhenotypeInduced pluripotent stem cellCellMedicineWorkflowRegenerative medicineMuscle hypertrophyComputational biologyStem cellNeuroscienceBioinformaticsComputer scienceInternal medicineBiologyEmbryonic stem cellDatabaseCell biologyGeneticsGeneSingle-cell and spatial transcriptomicsCell Image Analysis Techniques3D Printing in Biomedical Research
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