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Cellular reprogramming: Mathematics meets medicine

Journal

WIRES MECHANISMS OF DISEASE
Volume 13, Issue 4, Pages -

Publisher

WILEY
DOI: 10.1002/wsbm.1515

Keywords

Reprogramming; Control Theory; Transcription Factors

Funding

  1. University of Michigan
  2. NIH NIGMS Bioinformatics Training Grant [T32 GM070449]
  3. AFOSR [FA9550-18-1-0028]
  4. NIH Medical Scientist Training Program [T32 GM007863-41]

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Cellular reprogramming is a promising strategy for tissue function restoration using transcription factors. Successful grafting of autologous reprogrammed cells has been achieved, but identifying appropriate transcription factors for specific transformation remains challenging. Computational methods leveraging gene expression data for predicting relevant transcription factors, based on mathematical frameworks, are highlighted for their utility and impact in the field of cellular reprogramming.
Generating needed cell types using cellular reprogramming is a promising strategy for restoring tissue function in injury or disease. A common method for reprogramming is addition of one or more transcription factors that confer a new function or identity. Advancements in transcription factor selection and delivery have culminated in successful grafting of autologous reprogrammed cells, an early demonstration of their clinical utility. Though cellular reprogramming has been successful in a number of settings, identification of appropriate transcription factors for a particular transformation has been challenging. Computational methods enable more sophisticated prediction of relevant transcription factors for reprogramming by leveraging gene expression data of initial and target cell types, and are built on mathematical frameworks ranging from information theory to control theory. This review highlights the utility and impact of these mathematical frameworks in the field of cellular reprogramming. This article is categorized under: Reproductive System Diseases > Reproductive System Diseases>Genetics/Genomics/Epigenetics Reproductive System Diseases > Reproductive System Diseases>Stem Cells and Development Reproductive System Diseases > Reproductive System Diseases>Computational Models

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