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arxiv: 2007.09471 · v1 · pith:PFQWJ3DR · submitted 2020-07-18 · eess.IV · cs.CV· q-bio.CB· q-bio.QM

Automated Phenotyping via Cell Auto Training (CAT) on the Cell DIVE Platform

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classification eess.IV cs.CVq-bio.CBq-bio.QM
keywords cellautomatedtrainingmethodmodelsingletissuecells
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We present a method for automatic cell classification in tissue samples using an automated training set from multiplexed immunofluorescence images. The method utilizes multiple markers stained in situ on a single tissue section on a robust hyperplex immunofluorescence platform (Cell DIVE, GE Healthcare) that provides multi-channel images allowing analysis at single cell/sub-cellular levels. The cell classification method consists of two steps: first, an automated training set from every image is generated using marker-to-cell staining information. This mimics how a pathologist would select samples from a very large cohort at the image level. In the second step, a probability model is inferred from the automated training set. The probabilistic model captures staining patterns in mutually exclusive cell types and builds a single probability model for the data cohort. We have evaluated the proposed approach to classify: i) immune cells in cancer and ii) brain cells in neurological degenerative diseased tissue with average accuracies above 95%.

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