volume 138 issue 20 pages 1917-1927

Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set

Christian Matek 1, 2, 3
Sebastian Krappe 4, 5
Christian Münzenmayer 4
Torsten Haferlach 6
Carsten Marr 1, 3
Publication typeJournal Article
Publication date2021-11-18
scimago Q1
wos Q1
SJR5.823
CiteScore23.0
Impact factor23.1
ISSN00064971, 15280020
Biochemistry
Cell Biology
Immunology
Hematology
Abstract

Biomedical applications of deep learning algorithms rely on large expert annotated data sets. The classification of bone marrow (BM) cell cytomorphology, an important cornerstone of hematological diagnosis, is still done manually thousands of times every day because of a lack of data sets and trained models. We applied convolutional neural networks (CNNs) to a large data set of 171 374 microscopic cytological images taken from BM smears from 945 patients diagnosed with a variety of hematological diseases. The data set is the largest expert-annotated pool of BM cytology images available in the literature. It allows us to train high-quality classifiers of leukocyte cytomorphology that identify a wide range of diagnostically relevant cell species with high precision and recall. Our CNNs outcompete previous feature-based approaches and provide a proof-of-concept for the classification problem of single BM cells. This study is a step toward automated evaluation of BM cell morphology using state-of-the-art image-classification algorithms. The underlying data set represents an educational resource, as well as a reference for future artificial intelligence–based approaches to BM cytomorphology.

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GOST |
Cite this
GOST Copy
Matek C. et al. Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set // Blood. 2021. Vol. 138. No. 20. pp. 1917-1927.
GOST all authors (up to 50) Copy
Matek C., Krappe S., Münzenmayer C., Haferlach T., Marr C. Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set // Blood. 2021. Vol. 138. No. 20. pp. 1917-1927.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1182/blood.2020010568
UR - https://doi.org/10.1182/blood.2020010568
TI - Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set
T2 - Blood
AU - Matek, Christian
AU - Krappe, Sebastian
AU - Münzenmayer, Christian
AU - Haferlach, Torsten
AU - Marr, Carsten
PY - 2021
DA - 2021/11/18
PB - American Society of Hematology
SP - 1917-1927
IS - 20
VL - 138
PMID - 34792573
SN - 0006-4971
SN - 1528-0020
ER -
BibTex |
Cite this
BibTex (up to 50 authors) Copy
@article{2021_Matek,
author = {Christian Matek and Sebastian Krappe and Christian Münzenmayer and Torsten Haferlach and Carsten Marr},
title = {Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set},
journal = {Blood},
year = {2021},
volume = {138},
publisher = {American Society of Hematology},
month = {nov},
url = {https://doi.org/10.1182/blood.2020010568},
number = {20},
pages = {1917--1927},
doi = {10.1182/blood.2020010568}
}
MLA
Cite this
MLA Copy
Matek, Christian, et al. “Highly accurate differentiation of bone marrow cell morphologies using deep neural networks on a large image data set.” Blood, vol. 138, no. 20, Nov. 2021, pp. 1917-1927. https://doi.org/10.1182/blood.2020010568.