Schistocyte detection in artificial intelligence age

IF 2.2 4区 医学 Q3 HEMATOLOGY
Zeng Zhang, Su Yang, Xiuhong Wang
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Abstract

Schistocytes are fragmented red blood cells produced as a result of mechanical damage to erythrocytes, usually due to microangiopathic thrombotic diseases or mechanical factors. The early laboratory detection of schistocytes has a critical impact on the timely diagnosis, effective treatment, and positive prognosis of diseases such as thrombocytopenic purpura and hemolytic uremic syndrome. Due to the rapid development of science and technology, laboratory hematology has also advanced. The accuracy and efficiency of tests performed by fully automated hematology analyzers and fully automated morphology analyzers have been considerably improved. In recent years, substantial improvements in computing power and machine learning (ML) algorithm development have dramatically extended the limits of the potential of autonomous machines. The rapid development of machine learning and artificial intelligence (AI) has led to the iteration and upgrade of automated detection of schistocytes. However, along with significantly facilitated operation processes, AI has brought challenges. This review summarizes the progress in laboratory schistocyte detection, the relationship between schistocytes and clinical diseases, and the progress of AI in the detection of schistocytes. In addition, current challenges and possible solutions are discussed, as well as the great potential of AI techniques for schistocyte testing in peripheral blood.

Abstract Image

人工智能时代的血吸虫检测。
裂形红细胞是红细胞机械损伤后产生的碎红细胞,通常是由于微血管病变性血栓疾病或机械因素造成的。裂形红细胞的早期实验室检测对血小板减少性紫癜和溶血性尿毒症等疾病的及时诊断、有效治疗和积极预后有着至关重要的影响。随着科学技术的飞速发展,实验室血液学也在不断进步。全自动血液分析仪和全自动形态分析仪的准确性和检测效率都有了很大提高。近年来,计算能力的大幅提高和机器学习(ML)算法的发展极大地拓展了自主机器的潜力极限。机器学习和人工智能(AI)的快速发展带动了血吸虫自动检测的迭代和升级。然而,在大幅简化操作流程的同时,人工智能也带来了挑战。本综述总结了实验室血吸虫检测的进展、血吸虫与临床疾病的关系以及人工智能在血吸虫检测方面的进展。此外,还讨论了当前面临的挑战和可能的解决方案,以及人工智能技术在外周血血吸虫检测中的巨大潜力。
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来源期刊
CiteScore
4.50
自引率
6.70%
发文量
211
审稿时长
6-12 weeks
期刊介绍: The International Journal of Laboratory Hematology provides a forum for the communication of new developments, research topics and the practice of laboratory haematology. The journal publishes invited reviews, full length original articles, and correspondence. The International Journal of Laboratory Hematology is the official journal of the International Society for Laboratory Hematology, which addresses the following sub-disciplines: cellular analysis, flow cytometry, haemostasis and thrombosis, molecular diagnostics, haematology informatics, haemoglobinopathies, point of care testing, standards and guidelines. The journal was launched in 2006 as the successor to Clinical and Laboratory Hematology, which was first published in 1979. An active and positive editorial policy ensures that work of a high scientific standard is reported, in order to bridge the gap between practical and academic aspects of laboratory haematology.
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