细胞病理学
胰腺癌
腺癌
胰腺导管腺癌
算法
单变量
单变量分析
细胞学
癌症
放射科
针吸细胞学
医学
病理
计算机科学
多元分析
内科学
多元统计
机器学习
作者
Reiko Yamada,Kazuaki Nakane,Noriyuki Kadoya,Chise Matsuda,Hiroshi Imai,Junya Tsuboi,Yasuhiko Hamada,Kyosuke Tanaka,Isao Tawara,Hayato Nakagawa
出处
期刊:Diagnostics
[Multidisciplinary Digital Publishing Institute]
日期:2022-05-05
卷期号:12 (5): 1149-1149
被引量:7
标识
DOI:10.3390/diagnostics12051149
摘要
Pancreatic ductal adenocarcinoma (PDAC) is a leading cause of cancer-related death worldwide. The accuracy of a PDAC diagnosis based on endoscopic ultrasonography-guided fine-needle aspiration cytology can be strengthened by performing a rapid on-site evaluation (ROSE). However, ROSE can only be performed in a limited number of facilities, due to a relative lack of available resources or cytologists with sufficient training. Therefore, we developed the Mathematical Technology for Cytopathology (MTC) algorithm, which does not require teaching data or large-scale computing. We applied the MTC algorithm to support the cytological diagnosis of pancreatic cancer tissues, by converting medical images into structured data, which rendered them suitable for artificial intelligence (AI) analysis. Using this approach, we successfully clarified ambiguous cell boundaries by solving a reaction–diffusion system and quantitating the cell nucleus status. A diffusion coefficient (D) of 150 showed the highest accuracy (i.e., 74%), based on a univariate analysis. A multivariate analysis was performed using 120 combinations of evaluation indices, and the highest accuracies for each D value studied (50, 100, and 150) were all ≥70%. Thus, our findings indicate that MTC can help distinguish between adenocarcinoma and benign pancreatic tissues, and imply its potential for facilitating rapid progress in clinical diagnostic applications.
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