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基于数字病理图像对切除的肝细胞癌中贬义和非贬义词结构的深度学习分类和量化。

Deep Learning Classification and Quantification of Pejorative and Nonpejorative Architectures in Resected Hepatocellular Carcinoma from Digital Histopathologic Images.

机构信息

Department of Pathology, Bicêtre Hospital, Assistance Publique-Hôpitaux de Paris, Le Kremlin-Bicêtre, France.

Centre de Vision Numérique, Paris-Saclay University, Inria, CentraleSupélec, Gif-sur-Yvette, France.

出版信息

Am J Pathol. 2024 Sep;194(9):1684-1700. doi: 10.1016/j.ajpath.2024.05.007. Epub 2024 Jun 13.

DOI:10.1016/j.ajpath.2024.05.007
PMID:38879083
Abstract

Liver resection is one of the best treatments for small hepatocellular carcinoma (HCC), but post-resection recurrence is frequent. Biotherapies have emerged as an efficient adjuvant treatment, making the identification of patients at high risk of recurrence critical. Microvascular invasion (mVI), poor differentiation, pejorative macrotrabecular architectures, and vessels encapsulating tumor clusters architectures are the most accurate histologic predictors of recurrence, but their evaluation is time-consuming and imperfect. Herein, a supervised deep learning-based approach with ResNet34 on 680 whole slide images (WSIs) from 107 liver resection specimens was used to build an algorithm for the identification and quantification of these pejorative architectures. This model achieved an accuracy of 0.864 at patch level and 0.823 at WSI level. To assess its robustness, it was validated on an external cohort of 29 HCCs from another hospital, with an accuracy of 0.787 at WSI level, affirming its generalization capabilities. Moreover, the largest connected areas of the pejorative architectures extracted from the model were positively correlated to the presence of mVI and the number of tumor emboli. These results suggest that the identification of pejorative architectures could be an efficient surrogate of mVI and have a strong predictive value for the risk of recurrence. This study is the first step in the construction of a composite predictive algorithm for early post-resection recurrence of HCC, including artificial intelligence-based features.

摘要

肝切除术是治疗小肝细胞癌(HCC)的最佳方法之一,但术后复发率很高。生物疗法已成为一种有效的辅助治疗方法,因此识别高复发风险的患者至关重要。微血管侵犯(mVI)、低分化、恶性大小梁结构和包裹肿瘤簇结构的血管是复发最准确的组织学预测指标,但它们的评估既耗时又不完善。在此,我们使用基于 ResNet34 的有监督深度学习方法对 107 例肝切除标本的 680 张全切片图像(WSI)进行分析,以构建一种用于识别和量化这些恶性结构的算法。该模型在斑块水平的准确率为 0.864,在 WSI 水平的准确率为 0.823。为了评估其稳健性,我们将其在另一家医院的 29 例 HCC 外部队列中进行了验证,在 WSI 水平的准确率为 0.787,证实了其泛化能力。此外,从模型中提取的恶性结构的最大连通区域与 mVI 的存在和肿瘤栓子的数量呈正相关。这些结果表明,识别恶性结构可能是 mVI 的有效替代指标,对复发风险具有很强的预测价值。本研究是构建包括人工智能特征在内的 HCC 术后早期复发综合预测算法的第一步。

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Deep Learning Classification and Quantification of Pejorative and Nonpejorative Architectures in Resected Hepatocellular Carcinoma from Digital Histopathologic Images.基于数字病理图像对切除的肝细胞癌中贬义和非贬义词结构的深度学习分类和量化。
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引用本文的文献

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Artificial intelligence-driven pathomics in hepatocellular carcinoma: current developments, challenges and perspectives.人工智能驱动的肝细胞癌病理组学:当前进展、挑战与展望
Discov Oncol. 2025 Jul 28;16(1):1424. doi: 10.1007/s12672-025-03254-z.
2
Advances and challenges in pathomics for liver cancer: From diagnosis to prognostic stratification.肝癌病理组学的进展与挑战:从诊断到预后分层
World J Clin Oncol. 2025 Jun 24;16(6):107646. doi: 10.5306/wjco.v16.i6.107646.