AI-based detection of neutrophil dysplasia: an accessible and sensitive model for MDS diagnosis from peripheral blood.

IF 2.4 3区 医学 Q2 HEMATOLOGY
Nicole H Romano, Christian Ruiz, Pascal Schlaepfer, Stefan Balabanov, Stefan Habringer, Corinne C Widmer
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引用次数: 0

Abstract

Myelodysplastic syndrome / neoplasm (MDS) presents a diagnostic challenge due to the need of expert morphological analysis, and the reliance on genomic analysis of collected bone marrow material for the definite diagnosis. This study aimed to facilitate this process by developing a computer vision AI-based model that is capable of diagnosing MDS from images from peripheral blood smears (PBS). We used a cohort of 43,371 neutrophils from 84 MDS and 60 non-MDS samples to train a neutrophil classifier to differentiate between dysplastic and non-dysplastic cells. The model was initially fed with PBS images from patients with prominent MDS (pMDS) and further refined to detect non-prominent MDS (npMDS), i.e., without clear-cut dysplastic features in their neutrophils. The model learning was only based on the single-cell annotation of the neutrophils from pMDS, without human-generated morphological features as input. The trained neutrophil classifier achieved an overall accuracy of 94%, with a sensitivity and specificity of 0.95 and 0.94, respectively. On a patient-level, the model correctly identified 91 out of the 94 samples, with a sensitivity and specificity of 0.98 and 0.96, respectively, and AUC of 0.999. In npMDS, 43 out of the 44 samples were correctly identified. Our study demonstrates the potential of AI-based models to improve the efficiency of MDS diagnostics. Our model runs on standard CPUs, offering an accessible solution that can be integrated into existing clinical workflows and potentially reduces the dependence on specialized morphologists and genomic analysis from bone marrow punctures.

基于人工智能的中性粒细胞异常增生检测:外周血MDS诊断的一种方便、敏感的模型。
骨髓增生异常综合征/肿瘤(MDS)提出了一个诊断挑战,因为需要专家形态学分析,并依赖于收集骨髓材料的基因组分析进行明确诊断。本研究旨在通过开发一种基于计算机视觉的人工智能模型来促进这一过程,该模型能够从外周血涂片(PBS)的图像中诊断MDS。我们使用来自84个MDS和60个非MDS样本的43,371个中性粒细胞来训练中性粒细胞分类器来区分发育不良和非发育不良细胞。该模型最初使用来自突出MDS (pMDS)患者的PBS图像,并进一步细化以检测非突出MDS (npMDS),即中性粒细胞中没有明确的发育异常特征。模型学习仅基于pMDS中性粒细胞的单细胞注释,没有人为生成的形态特征作为输入。训练后的中性粒细胞分类器的总体准确率为94%,灵敏度和特异性分别为0.95和0.94。在患者水平上,该模型正确识别了94个样本中的91个,灵敏度和特异性分别为0.98和0.96,AUC为0.999。在npMDS中,44个样本中有43个被正确识别。我们的研究证明了基于人工智能的模型在提高MDS诊断效率方面的潜力。我们的模型运行在标准的cpu上,提供了一个易于访问的解决方案,可以集成到现有的临床工作流程中,并有可能减少对专业形态学家和骨髓穿刺基因组分析的依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Hematology
Annals of Hematology 医学-血液学
CiteScore
5.60
自引率
2.90%
发文量
304
审稿时长
2 months
期刊介绍: Annals of Hematology covers the whole spectrum of clinical and experimental hematology, hemostaseology, blood transfusion, and related aspects of medical oncology, including diagnosis and treatment of leukemias, lymphatic neoplasias and solid tumors, and transplantation of hematopoietic stem cells. Coverage includes general aspects of oncology, molecular biology and immunology as pertinent to problems of human blood disease. The journal is associated with the German Society for Hematology and Medical Oncology, and the Austrian Society for Hematology and Oncology.
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