深度学习和数字病理学助力脂肪性肝病中 HCC 的发展预测。

IF 12.9 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY Hepatology Pub Date : 2025-03-01 Epub Date: 2024-05-20 DOI:10.1097/HEP.0000000000000904
Takuma Nakatsuka, Ryosuke Tateishi, Masaya Sato, Natsuka Hashizume, Ami Kamada, Hiroki Nakano, Yoshinori Kabeya, Sho Yonezawa, Rie Irie, Hanako Tsujikawa, Yoshio Sumida, Masashi Yoneda, Norio Akuta, Takumi Kawaguchi, Hirokazu Takahashi, Yuichiro Eguchi, Yuya Seko, Yoshito Itoh, Eisuke Murakami, Kazuaki Chayama, Makiko Taniai, Katsutoshi Tokushige, Takeshi Okanoue, Michiie Sakamoto, Mitsuhiro Fujishiro, Kazuhiko Koike
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引用次数: 0

摘要

背景和目的:确定哪些脂肪性肝病患者具有罹患 HCC 的高风险仍然是一项挑战。我们提出了一种深度学习(DL)模型,利用苏木精和伊红染色的活检证实的脂肪性肝病全切片图像预测 HCC 的发展:我们纳入了 639 例活检后≥7 年未发展为 HCC 的患者(非 HCC 类)和 46 例发展为 HCC 的患者:DL 模型能够捕捉纤维化以外的细微病理特征,这表明它具有识别脂肪性肝病患者早期肝癌发生迹象的潜力。
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Deep learning and digital pathology powers prediction of HCC development in steatotic liver disease.

Background and aims: Identifying patients with steatotic liver disease who are at a high risk of developing HCC remains challenging. We present a deep learning (DL) model to predict HCC development using hematoxylin and eosin-stained whole-slide images of biopsy-proven steatotic liver disease.

Approach and results: We included 639 patients who did not develop HCC for ≥7 years after biopsy (non-HCC class) and 46 patients who developed HCC <7 years after biopsy (HCC class). Paired cases of the HCC and non-HCC classes matched by biopsy date and institution were used for training, and the remaining nonpaired cases were used for validation. The DL model was trained using deep convolutional neural networks with 28,000 image tiles cropped from whole-slide images of the paired cases, with an accuracy of 81.0% and an AUC of 0.80 for predicting HCC development. Validation using the nonpaired cases also demonstrated a good accuracy of 82.3% and an AUC of 0.84. These results were comparable to the predictive ability of logistic regression model using fibrosis stage. Notably, the DL model also detected the cases of HCC development in patients with mild fibrosis. The saliency maps generated by the DL model highlighted various pathological features associated with HCC development, including nuclear atypia, hepatocytes with a high nuclear-cytoplasmic ratio, immune cell infiltration, fibrosis, and a lack of large fat droplets.

Conclusions: The ability of the DL model to capture subtle pathological features beyond fibrosis suggests its potential for identifying early signs of hepatocarcinogenesis in patients with steatotic liver disease.

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来源期刊
Hepatology
Hepatology 医学-胃肠肝病学
CiteScore
27.50
自引率
3.70%
发文量
609
审稿时长
1 months
期刊介绍: HEPATOLOGY is recognized as the leading publication in the field of liver disease. It features original, peer-reviewed articles covering various aspects of liver structure, function, and disease. The journal's distinguished Editorial Board carefully selects the best articles each month, focusing on topics including immunology, chronic hepatitis, viral hepatitis, cirrhosis, genetic and metabolic liver diseases, liver cancer, and drug metabolism.
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