基于弥散的Wasserstein生成对抗网络在血细胞形态分析中的临床应用。

IF 2.9 4区 医学 Q2 MEDICAL LABORATORY TECHNOLOGY
Hyun-Young Kim, Emmanuel Edward Ngasa, Hee-Jin Kim, Boram Kim, Gyujin Lim, Chang-Hun Park, Hyeon Jeong Kwon, Mi-Ae Jang, Jiyoung Woo
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引用次数: 0

摘要

背景:外周血涂片的形态学分析对血液病的诊断和患者管理是必不可少的。虽然手工显微镜是传统的金标准,但它耗时且主观。数字形态学分析仪提高了自动化程度和准确性;然而,挑战仍然存在,特别是在分类某些细胞类型方面。近年来,基于扩散的Wasserstein梯度惩罚生成对抗网络(DWGAN-GP)在提高图像质量和解决数据不平衡方面表现出了很大的潜力。我们的目的是研究使用DWGAN-GP模型的血细胞分类的准确性。方法:在本研究中,使用78,494张外周血细胞图像对DWGAN-GP模型和effentnetb3分类模型进行评估。血样采集于血液学正常和异常的患者。通过使用合成图像增加未充分表示的类来平衡数据,从而使13个单元格类具有相等的表示。性能与PBIA (ANI Co., Suwon, Korea)进行比较,PBIA是一种商用数字形态学分析仪。结果:DWGAN-GP增强显著提高了EfficientNetB3模型的分类准确率,达到97.74%,f1评分为91.13%。该结果超过了非平衡数据集(准确率95.68%,f1得分82.12%)和PBIA系统(准确率95%)。值得注意的是,对白血病诊断至关重要的母细胞和髓细胞等少数细胞的改善是显著的。结论:使用DWGAN-GP结合合成数据可以显著提高模型性能并解决类别不平衡问题。这种方法显示了更准确和一致的血细胞分类的希望,为血液疾病的临床诊断提供了潜在的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Application of Using Diffusion-Based Wasserstein Generative Adversarial Network for Morphologic Analysis of Blood Cells.

Background: Morphologic analysis of peripheral blood smears is essential for diagnosing hematologic diseases and patient management. Although manual microscopy is the traditional gold standard, it is time-consuming and subjective. Digital morphology analyzers have improved automation and accuracy; however, challenges remain, particularly in classifying certain cell types. Recently, the diffusion-based Wasserstein generative adversarial network with gradient penalty (DWGAN-GP) showed potential by enhancing image quality and addressing data imbalance. We aim to investigate the accuracy of blood cell classification using the DWGAN-GP model.

Methods: In this study, the DWGAN-GP model in conjunction with the EfficientNetB3 classification model was evaluated using 78,494 peripheral blood cell images. Samples were collected from patients with normal and abnormal hematologic conditions. Data were balanced by augmenting underrepresented classes with synthetic images, resulting in equal representation across 13 cell classes. Performance was compared with PBIA (ANI Co., Suwon, Korea), a commercial digital morphology analyzer.

Results: DWGAN-GP augmentation significantly improved classification accuracy of the EfficientNetB3 model to 97.74% with an F1-score of 91.13%. This result surpassed both the unbalanced dataset (accuracy 95.68%, F1-score 82.12%) and PBIA system (accuracy 95%). Notably, improvements were significant in minority classes such as blasts and myelocytes, which are critical in diagnosing leukemia.

Conclusion: Incorporating synthetic data using DWGAN-GP significantly enhanced model performance and addressed class imbalance. This method shows promise for more accurate and consistent blood cell classification, offering potential improvements in clinical diagnostics for hematologic disorders.

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来源期刊
Journal of Clinical Laboratory Analysis
Journal of Clinical Laboratory Analysis 医学-医学实验技术
CiteScore
5.60
自引率
7.40%
发文量
584
审稿时长
6-12 weeks
期刊介绍: Journal of Clinical Laboratory Analysis publishes original articles on newly developing modes of technology and laboratory assays, with emphasis on their application in current and future clinical laboratory testing. This includes reports from the following fields: immunochemistry and toxicology, hematology and hematopathology, immunopathology, molecular diagnostics, microbiology, genetic testing, immunohematology, and clinical chemistry.
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