基于全幻灯片图像的无监督人工智能T1型结直肠癌淋巴结转移预测。

Yuki Takashina, S. Kudo, Y. Kouyama, K. Ichimasa, H. Miyachi, Y. Mori, T. Kudo, Y. Maeda, Y. Ogawa, Takemasa Hayashi, K. Wakamura, Enami Yuta, N. Sawada, T. Baba, T. Nemoto, F. Ishida, M. Misawa
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引用次数: 0

摘要

T1期结直肠癌(CRC)的淋巴结转移(LNM)预测对于确定内镜切除后是否需要手术至关重要,因为LNM的发生率为10%。我们的目标是开发一种新的人工智能(AI)系统,使用全幻灯片图像(wsi)来预测LNM。方法采用回顾性单中心研究。为了训练和测试人工智能模型,我们在2001年4月至2021年10月期间纳入了LNM状态确认的T1和T2 CRC。这些病变被分为两组:训练组(T1和T2)和测试组(T1)。wsi被裁剪成小块,并通过无监督k均值聚类。从每个WSI中计算属于每个聚类的补丁百分比。每个聚类的百分比、性别和肿瘤位置被提取并使用随机森林算法学习。我们计算了接受者操作者特征曲线(auc)下的面积,以确定人工智能模型和指南的LNM和过度手术率。结果训练组T1患者217例,T2患者268例,测试组T1患者100例(lnm阳性15%)。使用指南标准(p=0.0028),测试队列的AI系统的AUC为0.74(95%置信区间[CI], 0.58-0.86)和0.52 (95% CI, 0.50-0.55)。与指南相比,这种人工智能模型可以减少21%的过度手术。结论:我们建立了一个独立于病理的T1 CRC LNM预测模型,使用WSI来确定内镜切除后是否需要手术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Whole slide images-based prediction of lymph node metastasis in T1 colorectal cancer using unsupervised artificial intelligence.
BACKGROUND AND AIMS Lymph node metastasis (LNM) prediction for T1 colorectal cancer (CRC) is critical for determining the need for surgery after endoscopic resection because LNM occurs in 10%. We aimed to develop a novel artificial intelligence (AI) system using whole slide images (WSIs) to predict LNM. METHODS We conducted a retrospective single center study. To train and test the AI model, we included LNM status-confirmed T1 and T2 CRC between April 2001 and October 2021. These lesions were divided into two cohorts: training (T1 and T2) and testing (T1). WSIs were cropped into small patches and clustered by unsupervised K-means. The percentage of patches belonging to each cluster was calculated from each WSI. Each cluster's percentage, sex, and tumor location were extracted and learned using the random forest algorithm. We calculated the areas under the receiver operator characteristics curves (AUCs) to identify the LNM and the rate of over-surgery of the AI model and the guidelines. RESULTS The training cohort contained 217 T1 and 268 T2 CRCs, while 100 T1 cases (LNM-positivity 15%) were the test cohort. The AUC of the AI system for the test cohort was 0.74 (95% confidence interval [CI], 0.58-0.86), and 0.52 (95% CI, 0.50-0.55) using the guidelines criteria (p=0.0028). This AI model could reduce the 21% of over-surgery compared to the guidelines. CONCLUSION We developed a pathologist-independent predictive model for LNM in T1 CRC using WSI for determination of the need for surgery after endoscopic resection.
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