Department of Pathology and Laboratory Medicine, Taichung Veterans General Hospital, Taichung, Taiwan, R.O.C.
Department of Urology, Taichung Veterans General Hospital, Taichung, Taiwan, R.O.C.
In Vivo. 2024 Nov-Dec;38(6):3016-3021. doi: 10.21873/invivo.13785.
BACKGROUND/AIM: To evaluate efficacy of the AIxURO system, a deep learning-based artificial intelligence (AI) tool, in enhancing the accuracy and reliability of urine cytology for diagnosing upper urinary tract cancers.
One hundred and eighty-five cytology samples of upper urine tract were collected and categorized according to The Paris System for Reporting Urinary Cytology (TPS), yielding 168 negative for High-Grade Urothelial Carcinoma (NHGUC), 14 atypical urothelial cells (AUC), 2 suspicious for high-grade urothelial carcinoma (SHGUC), and 1 high-grade urothelial carcinoma (HGUC). The AIxURO system, trained on annotated cytology images, was employed to analyze these samples. Independent assessments by a cytotechnologist and a cytopathologist were conducted to validate the initial AIxURO assessment.
AIxURO identified discrepancies in 37 of the 185 cases, resulting in a 20% discrepancy rate. The cytotechnologist achieved an accuracy of 85% for NHGUC and 21.4% for AUC, whereas the cytopathologist attained accuracies of 95% for NHGUC and 85.7% for AUC. The cytotechnologist exhibited overcall rates of roughly 15% and undercall rates of greater than 50%, while the cytopathologist showed profoundly lower miscall rates from both undercall and overcall. AIxURO significantly enhanced diagnostic accuracy and consistency, particularly in complex cases involving atypical cells.
AIxURO can improve the accuracy and reliability of cytology diagnosis for upper urine tract urothelial carcinomas by providing precise detection on atypical urothelial cells and reducing subjectivity in assessments. The integration of AIxURO into clinical practice can significantly ameliorate diagnostic outcomes, highlighting the synergistic potential of AI technology and human expertise in cytology.
背景/目的:评估基于深度学习的人工智能 (AI) 工具 AIxURO 系统在提高上尿路癌尿液细胞学诊断准确性和可靠性方面的效果。
收集了 185 例上尿路细胞学样本,并根据巴黎尿细胞学报告系统(TPS)进行分类,得出 168 例高级别尿路上皮癌(NHGUC)阴性、14 例非典型尿路上皮细胞(AUC)、2 例疑似高级别尿路上皮癌(SHGUC)和 1 例高级别尿路上皮癌(HGUC)。使用经过标注的细胞学图像训练的 AIxURO 系统对这些样本进行分析。由细胞技术专家和细胞病理学家进行独立评估,以验证 AIxURO 的初始评估。
AIxURO 在 185 例病例中发现了 37 例差异,差异率为 20%。细胞技术专家对 NHGUC 的准确率为 85%,对 AUC 的准确率为 21.4%,而细胞病理学家对 NHGUC 的准确率为 95%,对 AUC 的准确率为 85.7%。细胞技术专家的过度诊断率约为 15%,漏诊率大于 50%,而细胞病理学家的误诊率(包括过度诊断和漏诊)均明显较低。AIxURO 显著提高了诊断准确性和一致性,特别是在涉及非典型细胞的复杂病例中。
AIxURO 通过对非典型尿路上皮细胞进行精确检测,减少评估中的主观性,从而提高上尿路尿路上皮癌细胞学诊断的准确性和可靠性。将 AIxURO 整合到临床实践中可以显著改善诊断结果,突显了人工智能技术和细胞学专家知识的协同潜力。