From microscope to micropixels: A rapid review of artificial intelligence for the peripheral blood film

IF 6.9 2区 医学 Q1 HEMATOLOGY
Bingwen Eugene Fan , Bryan Song Jun Yong , Ruiqi Li , Samuel Sherng Young Wang , Min Yi Natalie Aw , Ming Fang Chia , David Tao Yi Chen , Yuan Shan Neo , Bruno Occhipinti , Ryan Ruiyang Ling , Kollengode Ramanathan , Yi Xiong Ong , Kian Guan Eric Lim , Wei Yong Kevin Wong , Shu Ping Lim , Siti Thuraiya Binte Abdul Latiff , Hemalatha Shanmugam , Moh Sim Wong , Kuperan Ponnudurai , Stefan Winkler
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Abstract

Artificial intelligence (AI) and its application in classification of blood cells in the peripheral blood film is an evolving field in haematology. We performed a rapid review of the literature on AI and peripheral blood films, evaluating the condition studied, image datasets, machine learning models, training set size, testing set size and accuracy. A total of 283 studies were identified, encompassing 6 broad domains: malaria (n = 95), leukemia (n = 81), leukocytes (n = 72), mixed (n = 25), erythrocytes (n = 15) or Myelodysplastic syndrome (MDS) (n = 1). These publications have demonstrated high self-reported mean accuracy rates across various studies (95.5% for malaria, 96.0% for leukemia, 94.4% for leukocytes, 95.2% for mixed studies and 91.2% for erythrocytes), with an overall mean accuracy of 95.1%. Despite the high accuracy, the challenges toward real world translational usage of these AI trained models include the need for well-validated multicentre data, data standardisation, and studies on less common cell types and non-malarial blood-borne parasites.

从显微镜到微像素:外周血膜人工智能的快速回顾。
人工智能(AI)及其在外周血膜血细胞分类中的应用是血液学研究的一个新兴领域。我们快速回顾了有关人工智能和外周血膜的文献,评估了研究条件、图像数据集、机器学习模型、训练集大小、测试集大小和准确性。共确定了283项研究,包括6个广泛领域:疟疾(n = 95)、白血病(n = 81)、白细胞(n = 72)、混合(n = 25)、红细胞(n = 15)或骨髓增生异常综合征(MDS) (n = 1)。这些出版物在各种研究中显示出较高的自我报告平均准确率(疟疾95.5%、白血病96.0%、白细胞94.4%、混合研究95.2%和红细胞91.2%),总体平均准确率为95.1%。尽管准确率很高,但这些人工智能训练模型在现实世界中的转化使用面临的挑战包括需要经过良好验证的多中心数据、数据标准化以及对不太常见的细胞类型和非疟疾血源性寄生虫的研究。
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来源期刊
Blood Reviews
Blood Reviews 医学-血液学
CiteScore
13.80
自引率
1.40%
发文量
78
期刊介绍: Blood Reviews, a highly regarded international journal, serves as a vital information hub, offering comprehensive evaluations of clinical practices and research insights from esteemed experts. Specially commissioned, peer-reviewed articles authored by leading researchers and practitioners ensure extensive global coverage across all sub-specialties of hematology.
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