Artificial intelligence assisted diagnoses of fine-needle aspiration of breast diseases: a single-center experience

P. Fritz, R. Raoufi, P. Dalquen, A. Sediqi, S. Müller, J. Mollin, S. Goletz, J. Dippon, M. Hubler, T. Aeppel, B. Soudah, H. Firooz, M. Weinhara, I. Fabian de Barreto, C. Aichmüller, G. Stauch
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Abstract

Abstract: Purpose: Since 2010, physicians from Afghanistan have been uploading images of histological and cytological specimens to a telemedicine internet platform (iPath network) for expert evaluation. From this collective work, all cases with fine-needle aspirations (FNA) of mammary gland diseases were extracted and analyzed. The aim of the present retrospective feasibility study is to investigate the utility of artificial intelligence assisted diagnoses in fine-needle aspiration (FNA) of breast diseases.Material and Methods: A total of 3304 microphotographic images from 438 patients of smears from FNA of the mammary gland were available for this study. Telemedical expert diagnoses from 4 experienced cytopathologists were available in all 438 cases. Their diagnosis (malignant tumor of the mammary gland or benign mammary gland disease) was set as the gold standard. AI analysis was performed using i) clinical context data and ii) two different image recognition methods to determine the probability values for the presence of malignant breast tumor. Youden index and AUC (area under the curve) were used to evaluate test performance. Results: A score for invasive breast cancer (IBC) calculated from contextual variables agreed with the expert diagnosis (accuracy) in 85.2% and with the two image recognition systems in 78.4% and 65.2%. This simplifies health healthcare management of breast diseases in low income countries as in many patients the less expensive and less time-consuming technique of FNA may replace a histological examination.Conclusion: Image classification and analysis of context variables can be used to test the validity and plausibility of cytologic diagnoses, especially when cytologic interpretation has to be performed by people who are inexperienced in cytopathology.
人工智能辅助乳腺疾病细针穿刺诊断:单中心体验
摘要:目的:自2010年以来,阿富汗医生将组织和细胞学标本图像上传到远程医疗互联网平台(iPath网络),供专家评估。在此基础上,对所有乳腺疾病的细针穿刺(FNA)病例进行了提取和分析。本研究旨在探讨人工智能在乳腺疾病细针穿刺诊断中的应用。材料与方法:本研究共收集438例乳腺FNA涂片患者的3304张显微摄影图像。所有438例病例均有4名经验丰富的细胞病理学家提供远程医疗专家诊断。他们的诊断(乳腺恶性肿瘤或乳腺良性疾病)被定为金标准。使用i)临床背景数据和ii)两种不同的图像识别方法进行人工智能分析,以确定乳腺恶性肿瘤存在的概率值。用约登指数(Youden index)和曲线下面积(AUC)评价试验性能。结果:根据上下文变量计算的浸润性乳腺癌(IBC)评分与专家诊断(准确率)的一致性为85.2%,与两种图像识别系统的一致性为78.4%和65.2%。这简化了低收入国家乳腺疾病的卫生保健管理,因为在许多患者中,更便宜、更省时的FNA技术可以取代组织学检查。结论:图像分类和上下文变量分析可用于检验细胞学诊断的有效性和合理性,特别是当细胞学解释必须由没有细胞病理学经验的人进行时。
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