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Machine Learning to Quantitate Neutrophil NETosis

Authors: Laila Elsherif, Noah Sciaky, Carrington A. Metts, Md Modasshir, Ioannis Rekleitis, Christine A. Burris, Joshua A. Walker, Nadeem Ramadan, Tina M. Leisner, Stephen P. Holly, Martis Cowles, Kenneth I. Ataga, Joshua N. Cooper, Leslie V. Parise

Abstract: We introduce machine learning (ML) to perform classification and quantitation of images of nuclei from human blood neutrophils. Here we assessed the use of convolutional neural networks (CNNs) using free, open source software to accurately quantitate neutrophil NETosis, a recently discovered process involved in multiple human diseases. CNNs achieved >94\% in performance accuracy in differentiating NETotic from non-NETotic cells and vastly facilitated dose-response analysis and screening of the NETotic response in neutrophils from patients. Using only features learned from nuclear morphology, CNNs can distinguish between NETosis and necrosis and between distinct NETosis signaling pathways, making them a precise tool for NETosis detection. Furthermore, by using CNNs and tools to determine object dispersion, we uncovered differences in NETotic nuclei clustering between major NETosis pathways that is useful in understanding NETosis signaling events. Our study also shows that neutrophils from patients with sickle cell disease were unresponsive to one of two major NETosis pathways. Thus, we demonstrate the design, performance, and implementation of ML tools for rapid quantitative and qualitative cell analysis in basic science.

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@article{Elsherif2019, author = {Laila Elsherif and Noah Sciaky and Carrington A. Metts and Md Modasshir and Ioannis Rekleitis and Christine A. Burris and Joshua A. Walker and Nadeem Ramadan and Tina M. Leisner and Stephen P. Holly and Martis Cowles and Kenneth I. Ataga and Joshua N. Cooper and Leslie V. Parise}, booktitle = {}, title = {Machine Learning to Quantitate Neutrophil NETosis}, year = {2019}, volume = {9}, number = {1}, pages = {1-12}, keywords = {}, doi = {https://doi.org/10.1038/s41598-019-53202-5} }