Highly adaptable deep-learning platform for automated detection and analysis of vesicle exocytosis.

用于自动检测和分析囊泡胞吐作用的高度适应性深度学习平台

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作者:Chouaib Abed Alrahman, Chang Hsin-Fang, Khamis Omnia M, Alawar Nadia, Echeverry Santiago, Demeersseman Lucie, Elizarova Sofia, Daniel James A, Tian Qinghai, Lipp Peter, Fornasiero Eugenio F, Valitutti Salvatore, Barg Sebastian, Pape Constantin, Shaib Ali H, Becherer Ute
Activity recognition in live-cell imaging is labor-intensive and requires significant human effort. Existing automated analysis tools are largely limited in versatility. We present the Intelligent Vesicle Exocytosis Analysis (IVEA) platform, an ImageJ plugin for automated, reliable analysis of fluorescence-labeled vesicle fusion events and other burst-like activity. IVEA includes three specialized modules for detecting: (1) synaptic transmission in neurons, (2) single-vesicle exocytosis in any cell type, and (3) nano-sensor-detected exocytosis. Each module uses distinct techniques, including deep learning, allowing the detection of rare events often missed by humans at a speed estimated to be approximately 60 times faster than manual analysis. IVEA's versatility can be expanded by refining or training new models via an integrated interface. With its impressive speed and remarkable accuracy, IVEA represents a seminal advancement in exocytosis image analysis and other burst-like fluorescence fluctuations applicable to a wide range of microscope types and fluorescent dyes.

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