FigureĀ 1.
Overview of our pipeline. (Left to right) Whole bone marrow smear scan images are processed using a CFM to automatically extract the most relevant single-cell crops, which are rudimentary classified into 4 cell classes. Subsequently, a GFEN is used to predict 5 genetic indicators that are important for first-line therapy decisions (CBFB::MYH11, MRC cytogenetics, FLT3mut, NPM1mut, and ELN 2017 favorable risk) based on appropriate single-cell images only. Additionally, visualization strategies were used to gain explainability with respect to the used deep learning models.

Overview of our pipeline. (Left to right) Whole bone marrow smear scan images are processed using a CFM to automatically extract the most relevant single-cell crops, which are rudimentary classified into 4 cell classes. Subsequently, a GFEN is used to predict 5 genetic indicators that are important for first-line therapy decisions (CBFB::MYH11, MRC cytogenetics, FLT3mut, NPM1mut, and ELN 2017 favorable risk) based on appropriate single-cell images only. Additionally, visualization strategies were used to gain explainability with respect to the used deep learning models.

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