髓系白血病
骨髓
医学
深度学习
髓样
病理
肿瘤科
生物信息学
计算机科学
人工智能
内科学
生物
作者
Jacqueline Kockwelp,Sebastian Thiele,Jannis Bartsch,Lars Haalck,Jörg Gromoll,Stefan Schlatt,Rita Exeler,Annalen Bleckmann,Georg Lenz,Sebastian Wolf,Björn Steffen,Wolfgang E. Berdel,Christoph Schliemann,Benjamin Risse,Linus Angenendt
出处
期刊:Blood Advances
[American Society of Hematology]
日期:2023-11-15
卷期号:8 (1): 70-79
被引量:6
标识
DOI:10.1182/bloodadvances.2023011076
摘要
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.
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