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Design of a Computer-Assisted System to Automatically Detect Cell Types Using ANA IIF Images for the Diagnosis of Autoimmune Diseases

机译:使用ANA IIF图像自动检测细胞类型以诊断自身免疫性疾病的计算机辅助系统的设计

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Indirect immunofluorescence technique applied on HEp-2 cell substrates provides the major screening method to detect ANA patterns in the diagnosis of autoimmune diseases. Currently, the ANA patterns are mostly inspected by experienced physicians to identify abnormal cell patterns. The objective of this study is to design a computer-assisted system to automatically detect cell patterns of IIF images for the diagnosis of autoimmune diseases in the clinical setting. The system simulates the functions of modern flow cytometer and provides the diagnostic reports generated by the system to the technicians and physicians through the radar graphs, box-plots, and tables. The experimental results show that, among the IIF images collected from 17 patients, 6 were classified as coarse-speckled, 3 as diffused, 2 as discrete-speckled, 1 as fine-speckled, 2 as nucleolar, and 3 as peripheral patterns, which were consistent with the patterns determined by the physicians. In addition to recognition of cell patterns, the system also provides the function to automatically generate the report for each patient. The time needed for the whole procedure is less than 30 min, which is more efficient than the manual operation of the physician after inspecting the ANA IIF images. Besides, the system can be easily deployed on many desktop and laptop computers. In conclusion, the designed system, containing functions for automatic detection of ANA cell pattern and generation of diagnostic report, is effective and efficient to assist physicians to diagnose patients with autoimmune diseases. The limitations of the current developed system include (1) only a unique cell pattern was considered for the IIF images collected from a patient, and (2) the cells during the process of mitosis were not adopted for cell classification.
机译:间接免疫荧光技术应用于HEp-2细胞底物提供了检测自身免疫性疾病诊断ANA模式的主要筛选方法。当前,ANA模式主要由经验丰富的医师检查以识别异常细胞模式。这项研究的目的是设计一种计算机辅助系统,以自动检测IIF图像的细胞模式,以在临床环境中诊断自身免疫性疾病。该系统模拟了现代流式细胞仪的功能,并通过雷达图,箱形图和表格将系统生成的诊断报告提供给技术人员和医生。实验结果表明,在17例患者的IIF图像中,有6个分类为粗糙斑点,3个为弥散斑点,2个为离散斑点,1个为精细斑点,2个为核仁,3个为周围模式。与医生确定的模式一致。除了识别细胞模式外,该系统还提供了自动为每位患者生成报告的功能。整个过程所需的时间少于30分钟,这比检查ANA IIF图像后医生的手动操作效率更高。此外,该系统可轻松部署在许多台式机和笔记本电脑上。总之,设计的系统包含自动检测ANA细胞模式和生成诊断报告的功能,可以有效地帮助医师诊断自身免疫性疾病的患者。当前开发的系统的局限性包括(1)对于从患者那里收集的IIF图像,仅考虑了独特的细胞模式;(2)有丝分裂过程中的细胞未用于细胞分类。

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