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      Profiling Stem Cell States in Three-Dimensional Biomaterial Niches using High Content Image Informatics

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          Abstract

          A predictive framework for the evolution of stem cell biology in 3-D is currently lacking. In this study we propose deep image informatics of the nuclear biology of stem cells to elucidate how 3-D biomaterials steer stem cell lineage phenotypes. The approach is based on high content imaging informatics to capture minute variations in the 3-D spatial organization of splicing factor SC-35 in the nucleoplasm as a marker to classify emergent cell phenotypes of human mesenchymal stem cells (hMSCs). The cells were cultured in varied 3-D culture systems including hydrogels, electrospun mats and salt leached scaffolds. The approach encompasses high resolution 3-D imaging of SC-35 domains and high content image analysis (HCIA) to compute quantitative 3-D nuclear metrics for SC-35 organization in single cells in concert with machine learning approaches to construct a predictive cell-state classification model. Our findings indicate that hMSCs cultured in collagen hydrogels and induced to differentiate into osteogenic or adipogenic lineages could be classified into the three lineages (stem, adipogenic, osteogenic) with ≥ 80% precision and sensitivity, within 72 hours. Using this framework, the augmentation of osteogenesis by scaffold design exerted by porogen leached scaffolds was also profiled within 72 hours with ~80% high sensitivity. Furthermore, by employing 3-D SC-35 organizational metrics, differential osteogenesis induced by novel electrospun fibrous polymer mats incorporating decellularized matrix could also be elucidated and predictably modeled at just 3 days with high precision. We demonstrate that 3-D SC-35 organizational metrics can be applied to model the stem cell state in 3-D scaffolds. We propose that this methodology can robustly discern minute changes in stem cell states within complex 3-D architectures and map single cell biological readouts that are critical to assessing population level cell heterogeneity.

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          Author and article information

          Journal
          101233144
          32834
          Acta Biomater
          Acta Biomater
          Acta biomaterialia
          1742-7061
          1878-7568
          8 September 2016
          31 August 2016
          November 2016
          01 November 2017
          : 45
          : 98-109
          Affiliations
          [1 ]Department of Biomedical Engineering, Rutgers University, Piscataway, NJ
          [2 ]Department of Microbiology, Biochemistry and Molecular Genetics, Rutgers University, Newark, NJ
          [3 ]Department of Chemistry and Chemical Biology, New Jersey Center for Biomaterials, Rutgers University, Piscataway, NJ
          [4 ]Department of Chemical and Biochemical Engineering, Rutgers University, Piscataway, NJ
          Author notes
          [* ]Corresponding Author: Prabhas V. Moghe, Distinguished Professor, Rutgers University, 599 Taylor Road, Piscataway, NJ, 08854, moghe@ 123456rutgers.edu , Phone: 908-230-0147
          Article
          PMC5262522 PMC5262522 5262522 nihpa814578
          10.1016/j.actbio.2016.08.052
          5262522
          27590870
          501b50e6-e877-4ace-8ccc-d3a6a0bd7fe4
          History
          Categories
          Article

          SC-35,high content image analysis,3-D culture systems,mesenchymal stem cells

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