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Published in: Journal of Hematology & Oncology 1/2023

Open Access 01-12-2023 | Acute Myeloid Leukemia | Correspondence

AMLnet, A deep-learning pipeline for the differential diagnosis of acute myeloid leukemia from bone marrow smears

Authors: Zebin Yu, Jianhu Li, Xiang Wen, Yingli Han, Penglei Jiang, Meng Zhu, Minmin Wang, Xiangli Gao, Dan Shen, Ting Zhang, Shuqi Zhao, Yijing Zhu, Jixiang Tong, Shuchong Yuan, HongHu Zhu, He Huang, Pengxu Qian

Published in: Journal of Hematology & Oncology | Issue 1/2023

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Abstract

Acute myeloid leukemia (AML) is a deadly hematological malignancy. Cellular morphology detection of bone marrow smears based on the French–American–British (FAB) classification system remains an essential criterion in the diagnosis of hematological malignancies. However, the diagnosis and discrimination of distinct FAB subtypes of AML obtained from bone marrow smear images are tedious and time-consuming. In addition, there is considerable variation within and among pathologists, particularly in rural areas, where pathologists may not have relevant expertise. Here, we established a comprehensive database encompassing 8245 bone marrow smear images from 651 patients based on a retrospective dual-center study between 2010 and 2021 for the purpose of training and testing. Furthermore, we developed AMLnet, a deep-learning pipeline based on bone marrow smear images, that can discriminate not only between AML patients and healthy individuals but also accurately identify various AML subtypes. AMLnet achieved an AUC of 0.885 at the image level and 0.921 at the patient level in distinguishing nine AML subtypes on the test dataset. Furthermore, AMLnet outperformed junior human experts and was comparable to senior experts on the test dataset at the patient level. Finally, we provided an interactive demo website to visualize the saliency maps and the results of AMLnet for aiding pathologists’ diagnosis. Collectively, AMLnet has the potential to serve as a fast prescreening and decision support tool for cytomorphological pathologists, especially in areas where pathologists are overburdened by medical demands as well as in rural areas where medical resources are scarce.
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Metadata
Title
AMLnet, A deep-learning pipeline for the differential diagnosis of acute myeloid leukemia from bone marrow smears
Authors
Zebin Yu
Jianhu Li
Xiang Wen
Yingli Han
Penglei Jiang
Meng Zhu
Minmin Wang
Xiangli Gao
Dan Shen
Ting Zhang
Shuqi Zhao
Yijing Zhu
Jixiang Tong
Shuchong Yuan
HongHu Zhu
He Huang
Pengxu Qian
Publication date
01-12-2023
Publisher
BioMed Central
Published in
Journal of Hematology & Oncology / Issue 1/2023
Electronic ISSN: 1756-8722
DOI
https://doi.org/10.1186/s13045-023-01419-3

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