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Publication : New open-source software for subcellular segmentation and analysis of spatiotemporal fluorescence signals using deep learning.

First Author  Kamran SA Year  2022
Journal  iScience Volume  25
Issue  5 Pages  104277
PubMed ID  35573197 Mgi Jnum  J:332310
Mgi Id  MGI:7280362 Doi  10.1016/j.isci.2022.104277
Citation  Kamran SA, et al. (2022) New open-source software for subcellular segmentation and analysis of spatiotemporal fluorescence signals using deep learning. iScience 25(5):104277
abstractText  Cellular imaging instrumentation advancements as well as readily available optogenetic and fluorescence sensors have yielded a profound need for fast, accurate, and standardized analysis. Deep-learning architectures have revolutionized the field of biomedical image analysis and have achieved state-of-the-art accuracy. Despite these advancements, deep learning architectures for the segmentation of subcellular fluorescence signals is lacking. Cellular dynamic fluorescence signals can be plotted and visualized using spatiotemporal maps (STMaps), and currently their segmentation and quantification are hindered by slow workflow speed and lack of accuracy, especially for large datasets. In this study, we provide a software tool that utilizes a deep-learning methodology to fundamentally overcome signal segmentation challenges. The software framework demonstrates highly optimized and accurate calcium signal segmentation and provides a fast analysis pipeline that can accommodate different patterns of signals across multiple cell types. The software allows seamless data accessibility, quantification, and graphical visualization and enables large dataset analysis throughput.
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