Journal Article10.1016/j.ymeth.2024.03.005
Machine learning aided single cell image analysis improves understanding of morphometric heterogeneity of human mesenchymal stem cells.
Risani Mukhopadhyay,Pulkit Chandel,Keerthana Prasad,Uttara Chakraborty +3 more
2
TL;DR: This study employs machine learning to analyze single-cell images of human mesenchymal stem cells, identifying morphometric heterogeneity and developing a Convolutional Neural Network-based classifier with 97.54% accuracy to standardize hMSC therapeutics.
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Abstract: The multipotent stem cells of our body have been largely harnessed in biotherapeutics. However, as they are derived from multiple anatomical sources, from different tissues, human mesenchymal stem cells (hMSCs) are a heterogeneous population showing ambiguity in their in vitro behavior. Intra-clonal population heterogeneity has also been identified and pre-clinical mechanistic studies suggest that these cumulatively depreciate the therapeutic effects of hMSC transplantation. Although various biomarkers identify these specific stem cell populations, recent artificial intelligence-based methods have capitalized on the cellular morphologies of hMSCs, opening a new approach to understand their attributes. A robust and rapid platform is required to accommodate and eliminate the heterogeneity observed in the cell population, to standardize the quality of hMSC therapeutics globally. Here, we report our primary findings of morphological heterogeneity observed within and across two sources of hMSCs namely, stem cells from human exfoliated deciduous teeth (SHEDs) and human Wharton jelly mesenchymal stem cells (hWJ MSCs), using real-time single-cell images generated on immunophenotyping by imaging flow cytometry (IFC). We used the ImageJ software for identification and comparison between the two types of hMSCs using statistically significant morphometric descriptors that are biologically relevant. To expand on these insights, we have further applied deep learning methods and successfully report the development of a Convolutional Neural Network-based image classifier. In our research, we introduced a machine learning methodology to streamline the entire procedure, utilizing convolutional neural networks and transfer learning for binary classification, achieving an accuracy rate of 97.54%. We have also critically discussed the challenges, comparisons between solutions and future directions of machine learning in hMSC classification in biotherapeutics.
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Citations
Current Trends and Future Opportunities of AI-Based Analysis in Mesenchymal Stem Cell Imaging: A Scoping Review
Maksim Solopov,Elizaveta Chechekhina,Viktor Turchin,Andrey Popandopulo,Dmitry Filimonov,Anzhelika Burtseva,Roman Ishchenko +6 more
TL;DR: This scoping review of 25 studies (2014-2024) reveals AI-based image analysis outperforms traditional methods in MSCs analysis, with machine learning algorithms achieving up to 97.5% accuracy, primarily using convolutional neural networks for cell classification, segmentation, and differentiation assessment.
Advancements of artificial intelligence-driven approaches in the use of stem cell therapy in diseases or disorders: clinical applications and ethical issues
Vinay Suresh,Jomon De Joseph,Goudicherla Manasa,Hariharan Seshadri,Priyanka Singla,Vineeth Rajagopal,Vinay Suresh,Jomon De Joseph,Goudicherla Manasa,Hariharan Seshadri,Priyanka Singla,Vineeth Rajagopal +11 more
- 11 Jul 2024
Abstract: The convergence of artificial intelligence (AI) and stem cell therapy marks a transformative advancement in regenerative medicine. This manuscript explores how AI-driven approaches are being integrated into stem cell research and therapy, enhancing disease mechanism insights, therapeutic strategies, and clinical practices. AI's role spans from diagnostic algorithms to predictive analytics for patient outcomes, particularly in complex biomedical data analysis. This integration addresses challenges in stem cell therapy, such as precise cell characterization and optimization of cell differentiation processes. AI-enhanced therapies are showing promise in treating various conditions, including neurodegenerative diseases, orthopedic ailments, and cardiovascular disorders. The manuscript highlights several case studies demonstrating AI's impact on stem cell therapy, such as predictive analytics in post-transplant relapse and automated cell classification. It also discusses the broadening scope of AI in medical fields, economic and accessibility considerations, and the ethical and regulatory challenges posed by this technological integration. The future direction emphasizes ongoing AI advancements, improving predictive models, and robust ethical frameworks. This synthesis underscores the potential of AI and stem cell therapy to revolutionize healthcare by offering new treatment avenues for previously incurable diseases.
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