Artificial‐Intelligence‐Enabled Reagent‐Free Imaging Hematology Analyzer

Xin Shu, S. Sansare, Di Jin, Xiang-Hui Zeng, K. Tong, Rishikesh Pandey, R. Zhou
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引用次数: 22

Abstract

Leukocyte differential test is a widely carried out clinical procedure for screening infectious diseases. Existing hematology analyzers require labor‐intensive work and a panel of expensive reagents. Herein, an artificial‐intelligence‐enabled reagent‐free imaging hematology analyzer (AIRFIHA) modality is reported that can accurately classify subpopulations of leukocytes with minimal sample preparation. AIRFIHA is realized through training a two‐step residual neural network using label‐free images of isolated leukocytes acquired from a custom‐built quantitative phase microscope. By leveraging the rich information contained in quantitative phase images, not only high accuracy is achieved in differentiating B and T lymphocytes, but also CD4 and CD8 T cells are classified, therefore outperforming the classification accuracy of most current hematology analyzers. The performance of AIRFIHA in a randomly selected test set is validated and is cross‐validated across all blood donors. Due to its easy operation, low cost, and accurate discerning capability of complex leukocyte subpopulations, AIRFIHA is clinically translatable and can also be deployed in resource‐limited settings, e.g., during pandemic situations for the rapid screening of infectious diseases.
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人工智能-启用试剂-无成像血液学分析仪
白细胞鉴别检查是临床广泛采用的传染病筛查方法。现有的血液学分析仪需要劳动密集型工作和一组昂贵的试剂。本文报道了一种人工智能启用的无试剂成像血液学分析仪(AIRFIHA)模式,该模式可以用最少的样品制备准确地分类白细胞亚群。AIRFIHA是通过训练一个两步残差神经网络来实现的,该神经网络使用了从定制的定量相显微镜获得的分离白细胞的无标签图像。利用定量相位图像所包含的丰富信息,不仅对B淋巴细胞和T淋巴细胞的区分具有较高的准确性,而且对CD4和CD8 T细胞进行了分类,因此优于目前大多数血液学分析仪的分类精度。在随机选择的测试集中验证AIRFIHA的性能,并在所有献血者中交叉验证。由于其操作简单、成本低、对复杂白细胞亚群的准确识别能力,AIRFIHA具有临床可翻译性,也可在资源有限的环境中部署,例如,在大流行情况下快速筛查传染病。
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