基于深度半监督学习的外周血涂片评估贫血恢复。

IF 3 3区 医学 Q2 HEMATOLOGY
Qianming Yan, Yingying Zhang, Lei Wei, Xuehui Liu, Xiaowo Wang
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引用次数: 0

摘要

监测贫血恢复对临床干预至关重要。外周血涂片(PBSs)对红细胞(rbc)的形态学评估提供了常规血液检查之外的额外信息。然而,PBS测试是劳动密集型的,依赖于人工分析,并且容易受到专家解释的变化。在这里,我们介绍了一种深度半监督学习方法,RBCMatch,用于对贫血恢复期间的红细胞进行分类。使用急性溶血性贫血小鼠模型,获得贫血恢复期间四个不同时间点的PBS图像,并将其分割为10091张单个RBC图像,其中只有5%进行了注释并用于模型训练。通过采用半监督策略Fixmatch, RBCMatch在验证数据集上的平均分类准确率达到了91.2%,在保留数据集上达到了87.5%,这表明与监督学习方法相比,RBCMatch具有更高的准确性和鲁棒性,特别是在标记样本稀缺的情况下。为了描述贫血恢复过程,提取红细胞包埋的主成分(PCs)并进行可视化。我们的研究结果表明,红细胞嵌入量化了贫血恢复的状态,第二PC与红细胞计数和血红蛋白浓度有很强的相关性,表明该模型能够准确描述贫血恢复过程中红细胞形态的变化。因此,本研究为红细胞的自动分类提供了有价值的工具,并为贫血恢复的评估提供了新的见解,具有帮助临床决策和未来预后分析的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of anemia recovery using peripheral blood smears by deep semi-supervised learning

Monitoring anemia recovery is crucial for clinical intervention. Morphological assessment of red blood cells (RBCs) with peripheral blood smears (PBSs) provides additional information beyond routine blood tests. However, the PBS test is labor-intensive, reliant on manual analysis, and susceptible to variability in expert interpretations. Here we introduce a deep semi-supervised learning method, RBCMatch, to classify RBCs during anemia recovery. Using an acute hemolytic anemic mouse model, PBS images at four different time points during anemia recovery were acquired and segmented into 10,091 single RBC images, with only 5% annotated and used in model training. By employing the semi-supervised strategy Fixmatch, RBCMatch achieved an impressive average classification accuracy of 91.2% on the validation dataset and 87.5% on a held-out dataset, demonstrating its superior accuracy and robustness compared to supervised learning methods, especially when labeled samples are scarce. To characterize the anemia recovery process, principal components (PCs) of RBC embeddings were extracted and visualized. Our results indicated that RBC embeddings quantified the state of anemia recovery, and the second PC had a strong correlation with RBC count and hemoglobin concentration, demonstrating the model’s ability to accurately depict RBC morphological changes during anemia recovery. Thus, this study provides a valuable tool for the automatic classification of RBCs and offers novel insights into the assessment of anemia recovery, with the potential to aid in clinical decision-making and prognosis analysis in the future.

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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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