论文标题
核心:术前CT扫描预测肝切除复杂性的自动管道
CoRe: An Automated Pipeline for The Prediction of Liver Resection Complexity from Preoperative CT Scans
论文作者
论文摘要
手术切除术是原发性肝癌最普遍的治疗方法。已知位于临界位置的肿瘤将使肝切除术(LR)复杂化。尽管专业医疗中心的经验丰富的外科医生可能具有必要的专业知识来准确地预测LR的复杂性,并进行相应的准备,一种能够重现此行为的客观方法将有可能改善标准的护理程序,并避免术中和术后并发症。在本文中,我们提出了使用成像生物标志物预测术后LR复杂性的自动医学图像处理管道,以预测术后LR复杂性。核心管道将带有两个深度学习网络的肝脏,病变和血管首先段。然后根据拓扑标准对肝脉管系统进行修剪,以定义肝中心区域(HCZ),肝中心区(HCZ)是凸出的主要肝脏容器,从中从中衍生出新的成像生物标志物BHCZ。提取和杠杆提取其他生物标志物以训练和评估LR复杂性预测模型。一项消融研究表明,基于HCZ的生物标志物是预测LR复杂性的主要特征。最佳预测模型的精度为F1和AUC分别为77.3、75.4和84.1%。
Surgical resections are the most prevalent curative treatment for primary liver cancer. Tumors located in critical positions are known to complexify liver resections (LR). While experienced surgeons in specialized medical centers may have the necessary expertise to accurately anticipate LR complexity, and prepare accordingly, an objective method able to reproduce this behavior would have the potential to improve the standard routine of care, and avoid intra- and postoperative complications. In this article, we propose CoRe, an automated medical image processing pipeline for the prediction of postoperative LR complexity from preoperative CT scans, using imaging biomarkers. The CoRe pipeline first segments the liver, lesions, and vessels with two deep learning networks. The liver vasculature is then pruned based on a topological criterion to define the hepatic central zone (HCZ), a convex volume circumscribing the major liver vessels, from which a new imaging biomarker, BHCZ is derived. Additional biomarkers are extracted and leveraged to train and evaluate a LR complexity prediction model. An ablation study shows the HCZ-based biomarker as the central feature in predicting LR complexity. The best predictive model reaches an accuracy, F1, and AUC of 77.3, 75.4, and 84.1% respectively.