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Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells

Human bone marrow mesenchymal stem cells (hBMSCs) are widely used cell source for clinical bone regeneration. Achieving the greatest therapeutic effect is dependent on the osteogenic differentiation potential of the stem cells to be implanted. However, there are still no practical methods to charact...

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Autores principales: Matsuoka, Fumiko, Takeuchi, Ichiro, Agata, Hideki, Kagami, Hideaki, Shiono, Hirofumi, Kiyota, Yasujiro, Honda, Hiroyuki, Kato, Ryuji
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3578868/
https://www.ncbi.nlm.nih.gov/pubmed/23437049
http://dx.doi.org/10.1371/journal.pone.0055082
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author Matsuoka, Fumiko
Takeuchi, Ichiro
Agata, Hideki
Kagami, Hideaki
Shiono, Hirofumi
Kiyota, Yasujiro
Honda, Hiroyuki
Kato, Ryuji
author_facet Matsuoka, Fumiko
Takeuchi, Ichiro
Agata, Hideki
Kagami, Hideaki
Shiono, Hirofumi
Kiyota, Yasujiro
Honda, Hiroyuki
Kato, Ryuji
author_sort Matsuoka, Fumiko
collection PubMed
description Human bone marrow mesenchymal stem cells (hBMSCs) are widely used cell source for clinical bone regeneration. Achieving the greatest therapeutic effect is dependent on the osteogenic differentiation potential of the stem cells to be implanted. However, there are still no practical methods to characterize such potential non-invasively or previously. Monitoring cellular morphology is a practical and non-invasive approach for evaluating osteogenic potential. Unfortunately, such image-based approaches had been historically qualitative and requiring experienced interpretation. By combining the non-invasive attributes of microscopy with the latest technology allowing higher throughput and quantitative imaging metrics, we studied the applicability of morphometric features to quantitatively predict cellular osteogenic potential. We applied computational machine learning, combining cell morphology features with their corresponding biochemical osteogenic assay results, to develop prediction model of osteogenic differentiation. Using a dataset of 9,990 images automatically acquired by BioStation CT during osteogenic differentiation culture of hBMSCs, 666 morphometric features were extracted as parameters. Two commonly used osteogenic markers, alkaline phosphatase (ALP) activity and calcium deposition were measured experimentally, and used as the true biological differentiation status to validate the prediction accuracy. Using time-course morphological features throughout differentiation culture, the prediction results highly correlated with the experimentally defined differentiation marker values (R>0.89 for both marker predictions). The clinical applicability of our morphology-based prediction was further examined with two scenarios: one using only historical cell images and the other using both historical images together with the patient's own cell images to predict a new patient's cellular potential. The prediction accuracy was found to be greatly enhanced by incorporation of patients' own cell features in the modeling, indicating the practical strategy for clinical usage. Consequently, our results provide strong evidence for the feasibility of using a quantitative time series of phase-contrast cellular morphology for non-invasive cell quality prediction in regenerative medicine.
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spelling pubmed-35788682013-02-22 Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells Matsuoka, Fumiko Takeuchi, Ichiro Agata, Hideki Kagami, Hideaki Shiono, Hirofumi Kiyota, Yasujiro Honda, Hiroyuki Kato, Ryuji PLoS One Research Article Human bone marrow mesenchymal stem cells (hBMSCs) are widely used cell source for clinical bone regeneration. Achieving the greatest therapeutic effect is dependent on the osteogenic differentiation potential of the stem cells to be implanted. However, there are still no practical methods to characterize such potential non-invasively or previously. Monitoring cellular morphology is a practical and non-invasive approach for evaluating osteogenic potential. Unfortunately, such image-based approaches had been historically qualitative and requiring experienced interpretation. By combining the non-invasive attributes of microscopy with the latest technology allowing higher throughput and quantitative imaging metrics, we studied the applicability of morphometric features to quantitatively predict cellular osteogenic potential. We applied computational machine learning, combining cell morphology features with their corresponding biochemical osteogenic assay results, to develop prediction model of osteogenic differentiation. Using a dataset of 9,990 images automatically acquired by BioStation CT during osteogenic differentiation culture of hBMSCs, 666 morphometric features were extracted as parameters. Two commonly used osteogenic markers, alkaline phosphatase (ALP) activity and calcium deposition were measured experimentally, and used as the true biological differentiation status to validate the prediction accuracy. Using time-course morphological features throughout differentiation culture, the prediction results highly correlated with the experimentally defined differentiation marker values (R>0.89 for both marker predictions). The clinical applicability of our morphology-based prediction was further examined with two scenarios: one using only historical cell images and the other using both historical images together with the patient's own cell images to predict a new patient's cellular potential. The prediction accuracy was found to be greatly enhanced by incorporation of patients' own cell features in the modeling, indicating the practical strategy for clinical usage. Consequently, our results provide strong evidence for the feasibility of using a quantitative time series of phase-contrast cellular morphology for non-invasive cell quality prediction in regenerative medicine. Public Library of Science 2013-02-21 /pmc/articles/PMC3578868/ /pubmed/23437049 http://dx.doi.org/10.1371/journal.pone.0055082 Text en © 2013 Matsuoka et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Matsuoka, Fumiko
Takeuchi, Ichiro
Agata, Hideki
Kagami, Hideaki
Shiono, Hirofumi
Kiyota, Yasujiro
Honda, Hiroyuki
Kato, Ryuji
Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title_full Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title_fullStr Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title_full_unstemmed Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title_short Morphology-Based Prediction of Osteogenic Differentiation Potential of Human Mesenchymal Stem Cells
title_sort morphology-based prediction of osteogenic differentiation potential of human mesenchymal stem cells
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3578868/
https://www.ncbi.nlm.nih.gov/pubmed/23437049
http://dx.doi.org/10.1371/journal.pone.0055082
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