Deep learning predicts therapy-relevant genetics in acute myeloid leukemia from Pappenheim-stained bone marrow smears

Author:

Kockwelp Jacqueline123,Thiele Sebastian12,Bartsch Jannis4,Haalck Lars12ORCID,Gromoll Jörg3,Schlatt Stefan3,Exeler Rita5,Bleckmann Annalen4,Lenz Georg4,Wolf Sebastian6,Steffen Björn6,Berdel Wolfgang E.4ORCID,Schliemann Christoph4,Risse Benjamin12ORCID,Angenendt Linus47ORCID

Affiliation:

1. 1Institute for Geoinformatics, University of Münster, Münster, Germany

2. 2Institute for Computer Science, University of Münster, Münster, Germany

3. 3Centre of Reproductive Medicine and Andrology, Institute of Reproductive and Regenerative Biology, Münster, Germany

4. 4Department of Medicine A, University Hospital Münster, Münster, Germany

5. 5Institute of Human Genetics, University Hospital Münster, Münster, Germany

6. 6Department of Medicine II, University Hospital Frankfurt, Frankfurt, Germany

7. 7Department of Biosystems Science and Engineering, ETH Zurich, Basel, Switzerland

Abstract

Abstract The detection of genetic aberrations is crucial for early therapy decisions in acute myeloid leukemia (AML) and recommended for all patients. Because genetic testing is expensive and time consuming, a need remains for cost-effective, fast, and broadly accessible tests to predict these aberrations in this aggressive malignancy. Here, we developed a novel fully automated end-to-end deep learning pipeline to predict genetic aberrations directly from single-cell images from scans of conventionally stained bone marrow smears already on the day of diagnosis. We used this pipeline to compile a multiterabyte data set of >2 000 000 single-cell images from diagnostic samples of 408 patients with AML. These images were then used to train convolutional neural networks for the prediction of various therapy-relevant genetic alterations. Moreover, we created a temporal test cohort data set of >444 000 single-cell images from further 71 patients with AML. We show that the models from our pipeline can significantly predict these subgroups with high areas under the curve of the receiver operating characteristic. Potential genotype-phenotype links were visualized with 2 different strategies. Our pipeline holds the potential to be used as a fast and inexpensive automated tool to screen patients with AML for therapy-relevant genetic aberrations directly from routine, conventionally stained bone marrow smears already on the day of diagnosis. It also creates a foundation to develop similar approaches for other bone marrow disorders in the future.

Publisher

American Society of Hematology

Subject

Hematology

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