celldeath: A tool for detection of cell death in transmitted light microscopy images by deep learning-based visual recognition

celldeath:一种通过基于深度学习的视觉识别检测透射光显微镜图像中细胞死亡的工具

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作者:Alejandro Damián La Greca, Nelba Pérez, Sheila Castañeda, Paula Melania Milone, María Agustina Scarafía, Alan Miqueas Möbbs, Ariel Waisman, Lucía Natalia Moro, Gustavo Emilio Sevlever, Carlos Daniel Luzzani, Santiago Gabriel Miriuka

Abstract

Cell death experiments are routinely done in many labs around the world, these experiments are the backbone of many assays for drug development. Cell death detection is usually performed in many ways, and requires time and reagents. However, cell death is preceded by slight morphological changes in cell shape and texture. In this paper, we trained a neural network to classify cells undergoing cell death. We found that the network was able to highly predict cell death after one hour of exposure to camptothecin. Moreover, this prediction largely outperforms human ability. Finally, we provide a simple python tool that can broadly be used to detect cell death.

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