Durmuş Mehmet Akif, Kömeç Selda
Medical Microbiology Laboratory, Cam and Sakura City Hospital, Istanbul, Türkiye.
Immunol Res. 2025 Apr 14;73(1):70. doi: 10.1007/s12026-025-09623-8.
Accurate and accessible classification of anti-nuclear antibodies (ANA) through indirect immunofluorescence (IIF) imaging is crucial for diagnosing autoimmune diseases. However, many laboratories, particularly those with limited resources, lack access to expensive commercial systems for automated analysis. This study evaluates the performance of an application developed by expert physicians using an artificial intelligence application (Microsoft Azure) to classify ANA IIF images. The results are compared with EuroPattern to assess the potential of AI in assisting laboratory experts, especially in resource-limited settings. A total of 648 ANA IIF images from the EuroPattern archive were used to train an AI model across nine classes with varying fluorescence intensities (+ to + + + +). Testing was conducted with 96 images, ensuring clarity by excluding mixed patterns. Microsoft Azure's Custom Vision service was employed for labeling and prediction. Expert evaluations, EuroPattern results, and AI classifications were compared. Both EuroPattern and the Azure-based AI model achieved 100% sensitivity, specificity, and accuracy in positive and negative discrimination. EuroPattern had an intraclass correlation coefficient (ICC) of 0.979, and the Azure-based AI model had an ICC of 0.948, indicating slightly lower performance. EuroPattern outperformed the Azure-based AI model in recognizing homogeneous, speckled, centromere, and dense fine-speckled patterns. The Azure-based AI model performed better in identifying cytoplasmic reticular/AMA-like patterns. The results suggest that AI-based image analysis tools, such as Azure, can be valuable for diagnostics in resource-limited labs. However, further testing with larger datasets and routine patient samples is needed to confirm their effectiveness in real-world clinical settings.
通过间接免疫荧光(IIF)成像对抗核抗体(ANA)进行准确且可及的分类对于自身免疫性疾病的诊断至关重要。然而,许多实验室,尤其是资源有限的实验室,无法使用昂贵的商业系统进行自动化分析。本研究评估了由专家医生使用人工智能应用程序(Microsoft Azure)开发的用于对ANA IIF图像进行分类的应用程序的性能。将结果与EuroPattern进行比较,以评估人工智能在协助实验室专家方面的潜力,特别是在资源有限的环境中。总共使用了来自EuroPattern存档的648张ANA IIF图像来训练一个跨越九个具有不同荧光强度(+至++++)类别的人工智能模型。使用96张图像进行测试,通过排除混合模式确保清晰度。Microsoft Azure的自定义视觉服务用于标记和预测。比较了专家评估、EuroPattern结果和人工智能分类。EuroPattern和基于Azure的人工智能模型在阳性和阴性判别中均达到了100%的敏感性、特异性和准确性。EuroPattern的组内相关系数(ICC)为0.979,基于Azure的人工智能模型的ICC为0.948,表明性能略低。在识别均匀、斑点状、着丝粒和密集细斑点状模式方面,EuroPattern优于基于Azure的人工智能模型。基于Azure的人工智能模型在识别细胞质网状/AMA样模式方面表现更好。结果表明,基于人工智能的图像分析工具,如Azure,对于资源有限的实验室的诊断可能很有价值。然而,需要使用更大的数据集和常规患者样本进行进一步测试,以确认它们在实际临床环境中的有效性。