肝硬化患者的肝细胞癌风险分层:将肝脏和脾脏的放射组学和深度学习计算机断层扫描特征整合到临床模型中。

IF 4.2 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Rong Fan, Ya-Ru Shi, Lei Chen, Chuan-Xin Wang, Yun-Song Qian, Yan-Hang Gao, Chun-Ying Wang, Xiao-Tang Fan, Xiao-Long Liu, Hong-Lian Bai, Dan Zheng, Guo-Qing Jiang, Yan-Long Yu, Xie-Er Liang, Jin-Jun Chen, Wei-Fen Xie, Lu-Tao Du, Hua-Dong Yan, Yu-Jin Gao, Hao Wen, Jing-Feng Liu, Min-Feng Liang, Fei Kong, Jian Sun, Sheng-Hong Ju, Hong-Yang Wang, Jin-Lin Hou
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引用次数: 0

摘要

背景和目的:鉴于肝细胞癌(HCC)的高负担,肝硬化患者的风险分层至关重要,但仍不充分。在这项研究中,我们旨在通过将肝脏和脾脏计算机断层扫描(CT)图像的放射组学和深度学习特征整合到已建立的年龄-男性albi -血小板(aMAP)临床模型中,开发并验证HCC预测模型。方法:从2018年至2023年的中国多中心、前瞻性、观察性肝硬化队列中招募患者,所有患者在入组时均接受了3期增强腹部CT扫描。计算aMAP临床评分,并从感兴趣的肝脏和脾脏区域提取放射组学(PyRadiomics)和深度学习(ResNet-18)特征。使用最小的绝对收缩和选择算子进行特征选择。结果:2411例患者(中位随访42.7个月[IQR: 32.9-54.1])中,118例发生HCC(3年累积发病率:3.59%)。慢性乙型肝炎病毒感染是主要病因,占91.5%。纳入CT特征的aMAP-CT模型明显优于现有模型(在三个队列中,接受者工作特征曲线下面积为0.809-0.869)。将患者分为高危组(3年HCC发病率:26.3%)和低危组(1.7%)。逐步应用(aMAP→aMAP- ct)进一步细化分层(三年发病率:1.8%[93.0%的队列]vs. 27.2%[7.0%])。结论:aMAP-CT模型通过整合基于ct的肝脏和脾脏特征,提高了HCC的风险预测,能够精确识别肝硬化高危患者。这种方法使监测策略个性化,有可能促进早期发现和改善结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hepatocellular Carcinoma Risk Stratification for Cirrhosis Patients: Integrating Radiomics and Deep Learning Computed Tomography Signatures of the Liver and Spleen into a Clinical Model.

Background and aims: Given the high burden of hepatocellular carcinoma (HCC), risk stratification in patients with cirrhosis is critical but remains inadequate. In this study, we aimed to develop and validate an HCC prediction model by integrating radiomics and deep learning features from liver and spleen computed tomography (CT) images into the established age-male-ALBI-platelet (aMAP) clinical model.

Methods: Patients were enrolled between 2018 and 2023 from a Chinese multicenter, prospective, observational cirrhosis cohort, all of whom underwent 3-phase contrast-enhanced abdominal CT scans at enrollment. The aMAP clinical score was calculated, and radiomic (PyRadiomics) and deep learning (ResNet-18) features were extracted from liver and spleen regions of interest. Feature selection was performed using the least absolute shrinkage and selection operator.

Results: Among 2,411 patients (median follow-up: 42.7 months [IQR: 32.9-54.1]), 118 developed HCC (three-year cumulative incidence: 3.59%). Chronic hepatitis B virus infection was the main etiology, accounting for 91.5% of cases. The aMAP-CT model, which incorporates CT signatures, significantly outperformed existing models (area under the receiver-operating characteristic curve: 0.809-0.869 in three cohorts). It stratified patients into high-risk (three-year HCC incidence: 26.3%) and low-risk (1.7%) groups. Stepwise application (aMAP → aMAP-CT) further refined stratification (three-year incidences: 1.8% [93.0% of the cohort] vs. 27.2% [7.0%]).

Conclusions: The aMAP-CT model improves HCC risk prediction by integrating CT-based liver and spleen signatures, enabling precise identification of high-risk cirrhosis patients. This approach personalizes surveillance strategies, potentially facilitating earlier detection and improved outcomes.

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来源期刊
Journal of Clinical and Translational Hepatology
Journal of Clinical and Translational Hepatology GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
6.40
自引率
2.80%
发文量
496
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