Zhaozhao Wu, Yiting Feng, Ran Bi, Zhiqiang Liu, Yudi Niu, Yuhong Jin, Wenjing Li, Huijun Chen, Yan Shi, Yanan Du
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引用次数: 0
Abstract
Mechanical properties of cells have been proposed as potential biophysical markers for cell phenotypes and functions since they are vital for maintaining biological activities. However, current approaches used to measure single-cell mechanics suffer from low throughput, high technical complexity, and stringent equipment requirements, which cannot satisfy the demand for large-scale cell sample testing. In this study, we proposed to evaluate cell stiffness at the single-cell level using deep learning. The image-based deep learning models could non-invasively predict the stiffness ranges of mesenchymal stem cells (MSCs) and macrophages in situ with high throughput and high sensitivity. We further applied the models to evaluate MSC functions including senescence, stemness, and immunomodulatory capacity as well as macrophage diversity in phenotypes and functions. Our image-based deep learning models provide potential techniques and perspectives for cell-based mechanobiology research and clinical translation.
Cell RegenerationBiochemistry, Genetics and Molecular Biology-Cell Biology
CiteScore
5.80
自引率
0.00%
发文量
42
审稿时长
35 days
期刊介绍:
Cell Regeneration aims to provide a worldwide platform for researches on stem cells and regenerative biology to develop basic science and to foster its clinical translation in medicine. Cell Regeneration welcomes reports on novel discoveries, theories, methods, technologies, and products in the field of stem cells and regenerative research, the journal is interested, but not limited to the following topics:
◎ Embryonic stem cells
◎ Induced pluripotent stem cells
◎ Tissue-specific stem cells
◎ Tissue or organ regeneration
◎ Methodology
◎ Biomaterials and regeneration
◎ Clinical translation or application in medicine