Kameda Moe, Kobayashi Sayaka, Nishijima Yoshimi, Akuzawa Ryosuke, Kaneko Rio, Shibanuma Rio, Arai Seiji, Ikota Hayato, Suzuki Kazuhiro, Yokoo Hideaki, Saio Masanao
Laboratory of Histopathology and Cytopathology, Department of Laboratory Sciences, Gunma University Graduate School of Health Sciences, Gunma, Japan.
Department of Urology, Gunma University Graduate School of Medicine, Gunma, Japan.
J Cytol. 2025 Jul-Sep;42(3):124-133. doi: 10.4103/joc.joc_158_24. Epub 2025 Aug 29.
This study conducted an unsupervised learning cluster analysis on urine cytological images of high-grade urothelial carcinoma to assess their explanatory potential.
A total of 124 urine cytology specimens of urothelial carcinoma, collected between December 2010 to December 2021 at Gunma University Hospital, were analyzed. Ten cytological image fields per specimen were captured, and pathological T factors were examined using principal component analysis and t-distributed stochastic neighbor embedding (t-SNE) with machine learning (ML) software. Common image features were also verbalized and manually reevaluated.
In the t-SNE analysis, the T1-dominant region was characterized by "few cells in the background," whereas the T2-dominant region showed "many cells in the image," "numerous neutrophils in the image," and "abundant tumor cells in the image." Human reassessment identified significant differences related to muscle invasion status for all findings except "abundant tumor cells in the image." Furthermore, we confirmed that histological neutrophil infiltration was related to the abundance of neutrophils in the cytological specimens.
This study is noteworthy as the cluster analysis identified previously unreported variations in background cell types and quality linked to muscle invasion status, and it also demonstrated the explainability of ML-derived findings through manual reassessment.
本研究对高级别尿路上皮癌的尿液细胞学图像进行无监督学习聚类分析,以评估其解释潜力。
分析了2010年12月至2021年12月在群马大学医院收集的124例尿路上皮癌尿液细胞学标本。每个标本采集10个细胞学图像视野,并使用机器学习(ML)软件通过主成分分析和t分布随机邻域嵌入(t-SNE)检查病理T因子。还对常见图像特征进行了描述并进行人工重新评估。
在t-SNE分析中,T1为主的区域特征为“背景中细胞少”,而T2为主的区域表现为“图像中细胞多”、“图像中中性粒细胞多”和“图像中肿瘤细胞丰富”。人工重新评估发现,除“图像中肿瘤细胞丰富”外,所有结果与肌肉浸润状态均存在显著差异。此外,我们证实组织学中性粒细胞浸润与细胞学标本中中性粒细胞的丰度有关。
本研究值得关注,因为聚类分析发现了与肌肉浸润状态相关的背景细胞类型和质量方面以前未报道的差异,并且还通过人工重新评估证明了ML衍生结果的可解释性。