Stain-free artificial intelligence-assisted light microscopy for the identification of blood cells in microfluidic flow.

IF 3.9 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Frontiers in bioinformatics Pub Date : 2025-08-14 eCollection Date: 2025-01-01 DOI:10.3389/fbinf.2025.1628724
Alexander Hunt, Holger Schulze, Kay Samuel, Robert B Fisher, Till T Bachmann
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Abstract

The identification and classification of blood cells are essential for diagnosing and managing various haematological conditions. Haematology analysers typically perform full blood counts but often require follow-up tests such as blood smears. Traditional methods like stained blood smears are laborious and subjective. This study explores the application of artificial neural networks for rapid, automated, and objective classification of major blood cell types from unstained brightfield images. The YOLO v4 object detection architecture was trained on datasets comprising erythrocytes, echinocytes, lymphocytes, monocytes, neutrophils, and platelets imaged using a microfluidic flow system. Binary classification between erythrocytes and echinocytes achieved a network F1 score of 86%. Expanding to four classes (erythrocytes, echinocytes, leukocytes, platelets) yielded a network F1 score of 85%, with some misclassified leukocytes. Further separating leukocytes into lymphocytes, monocytes, and neutrophils, while also increasing the dataset and tweaking model parameters resulted in a network F1 score of 84.1%. Most importantly, the neural network's performance was comparable to that of flow cytometry and haematology analysers when tested on donor samples. These findings demonstrate the potential of artificial intelligence for high-throughput morphological analysis of unstained blood cells, enabling rapid screening and diagnosis. Integrating this approach with microfluidics could streamline conventional techniques and provide a fast automated full blood count with morphological assessment without the requirement for sample handling. Further refinements by training on abnormal cells could facilitate early disease detection and treatment monitoring.

无染色人工智能辅助光学显微镜在微流控流中的血细胞鉴定。
血细胞的鉴定和分类是诊断和管理各种血液病必不可少的。血液学分析仪通常进行全血细胞计数,但通常需要后续测试,如血液涂片。传统的方法,如染色血涂片,既费力又主观。本研究探讨了人工神经网络在未染色明场图像中对主要血细胞类型进行快速、自动和客观分类的应用。YOLO v4目标检测架构在使用微流控系统成像的数据集上进行训练,这些数据集包括红细胞、棘细胞、淋巴细胞、单核细胞、中性粒细胞和血小板。红细胞和棘球细胞的二元分类达到86%的网络F1评分。扩大到四类(红细胞、棘球细胞、白细胞、血小板)的网络F1评分为85%,其中有一些白细胞分类错误。进一步将白细胞分为淋巴细胞、单核细胞和中性粒细胞,同时增加数据集并调整模型参数,网络F1得分为84.1%。最重要的是,当对供体样本进行测试时,神经网络的性能可与流式细胞仪和血液学分析仪相媲美。这些发现证明了人工智能对未染色血细胞进行高通量形态学分析的潜力,从而实现快速筛选和诊断。将这种方法与微流体相结合可以简化传统技术,并提供快速自动化全血细胞计数和形态学评估,而无需样品处理。通过对异常细胞的训练进一步改进,可以促进疾病的早期检测和治疗监测。
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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CiteScore
2.60
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0.00%
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