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An Integral R-Banded Karyotype Analysis System of Bone Marrow Metaphases Based on Deep Learning.

Authors :
Jiyue Wang
Chao Xia
Yaling Fan
Lu Jiang
Guang Yang
Zhijun Chen
Jie Yang
Bing Chen
Source :
Archives of Pathology & Laboratory Medicine. Aug2024, Vol. 148 Issue 8, p905-913. 9p.
Publication Year :
2024

Abstract

Context.--: Conventional karyotype analysis, which provides comprehensive cytogenetic information, plays a significant role in the diagnosis and risk stratification of hematologic neoplasms. The main limitations of this approach include long turnaround time and laboriousness. Therefore, we developed an integral R-banded karyotype analysis system for bone marrow metaphases, based on deep learning. Objective.--: To evaluate the performance of the internal models and the entire karyotype analysis system for R-banded bone marrow metaphase. Design.--: A total of 4442 sets of R-banded normal bone marrow metaphases and karyograms were collected. Accordingly, 4 deep learning-based models for different analytic stages of karyotyping, including denoising, segmentation, classification, and polarity recognition, were developed and integrated as an R-banded bone marrow karyotype analysis system. Five-fold cross validation was performed on each model. The whole system was implemented by 2 strategies of automatic and semiautomatic workflows. A test set of 885 metaphases was used to assess the entire system. Results.--: The denoising model achieved an intersection-over-union (IoU) of 99.20% and a Dice similarity coefficient (DSC) of 99.58% for metaphase acquisition. The segmentation model achieved an IoU of 91.95% and a DSC of 95.79% for chromosome segmentation. The accuracies of the segmentation, classification, and polarity recognition models were 96.77%, 98.77%, and 99.93%, respectively. The whole system achieved an accuracy of 93.33% with the automatic strategy and an accuracy of 99.06% with the semiautomatic strategy. Conclusions.--: The performance of both the internal models and the entire system is desirable. This deep learning-based karyotype analysis system has potential in a clinical application. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00039985
Volume :
148
Issue :
8
Database :
Academic Search Index
Journal :
Archives of Pathology & Laboratory Medicine
Publication Type :
Academic Journal
Accession number :
178863288
Full Text :
https://doi.org/10.5858/arpa.2022-0533-OA