应用多任务深度学习和多模态MRI预测局部晚期直肠癌复发。

IF 5.6 Q1 ONCOLOGY
Zonglin Liu, Runqi Meng, Qiong Ma, Zhen Guan, Rong Li, Caixia Fu, Yanfen Cui, Yiqun Sun, Tong Tong, Dinggang Shen
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引用次数: 0

摘要

目的:开发并验证深度多任务网络MultiRecNet,用于全自动预测新辅助放化疗(nCRT)治疗的局部晚期直肠癌(LARC)患者的无病生存期(DFS)。材料与方法本回顾性研究收集了2011年10月至2019年5月三个中心的LARC nCRT术后患者的临床信息和基线多模态MRI (T2、表观扩散系数[ADC]、Dapp和Kapp)数据。中心1和中心2的患者分为训练组、验证组和内部测试组,中心3的患者为外部测试组。MultiRecNet能够在一个框架内同时执行分割、分类和生存预测任务。将不同临床阶段(预处理和术后)的数据多次组合输入到MultiRecNet中,生成不同的模型,并识别性能最优的模型。评估指标包括Dice相似系数(DSC)、受试者工作特征曲线下面积(AUC)和Harrell一致性指数(C-index),分别用于分割、分类和生存预测任务。结果纳入445例患者:训练组261例(中位年龄60岁[IQR, 53-67岁];男性172例),验证组37例(中位年龄61岁[IQR, 55-68岁];男性30例),内测组75例(中位年龄60岁[IQR, 51-67岁];男性45例),外检组72例(中位年龄55岁[IQR, 49-61岁];38名男性)。在内部测试集中,基于MultiRecNet的最佳模型(All模型,包括t2加权成像、ADC、Dapp、Kapp、预处理临床指标和术后病理指标)在肿瘤分割方面的DSC为0.72,在3年复发或转移分类方面的AUC为0.97 (95% CI: 0.92, >.99),在预测DFS方面的c指数为0.92。在外部测试集中,该模型在生存预测方面继续表现良好(C-index = 0.81, P < .001)。结论基于multirecnet的模型能够以完全自动化的端到端方式预测nCRT后LARC患者的预后。关键词:磁共振成像,腹部/胃肠道,直肠,肿瘤学,本文有补充资料。在CC BY 4.0许可下发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Recurrence in Locally Advanced Rectal Cancer Using Multitask Deep Learning and Multimodal MRI.

Purpose To develop and validate a deep multitask network, MultiRecNet, for fully automatic prediction of disease-free survival (DFS) in patients with neoadjuvant chemoradiotherapy (nCRT)-treated locally advanced rectal cancer (LARC). Materials and Methods This retrospective study collected clinical information and baseline multimodal MRI (T2, apparent diffusion coefficient [ADC], Dapp, and Kapp) data from patients with LARC after nCRT at three centers between October 2011 and May 2019. Patients from centers 1 and 2 were divided into training, validation, and internal testing sets, while patients from center 3 served as the external testing set. MultiRecNet is capable of simultaneously performing segmentation, classification, and survival prediction tasks within a single framework. Multiple combinations of data from different clinical stages (pretreatment and postoperative) were input into MultiRecNet to generate different models and identify the model with optimal performance. Evaluation metrics included the Dice similarity coefficient (DSC), the area under the receiver operating characteristic curve (AUC), and the Harrell concordance index (C-index) for the segmentation, classification, and survival prediction tasks, respectively. Results The study included 445 patients: 261 in the training set (median age, 60 years [IQR, 53-67 years]; 172 male), 37 in the validation set (median age, 61 years [IQR, 55-68 years]; 30 male), 75 in the internal testing set (median age, 60 years [IQR, 51-67 years]; 45 male), and 72 in the external testing set (median age, 55 years [IQR, 49-61 years]; 38 male). In the internal testing set, the best model based on MultiRecNet (the All model, with T2-weighted imaging, ADC, Dapp, Kapp, pretreatment clinical indicators, and postoperative pathologic indicators) achieved a DSC of 0.72 for tumor segmentation, an AUC of 0.97 (95% CI: 0.92, >.99) for recurrence or metastasis classification at 3 years, and a C-index of 0.92 for DFS prediction. In the external testing set, the model continued to perform well for survival prediction (C-index = 0.81, P < .001). Conclusion The MultiRecNet-based model enabled prognostic prediction in a fully automated end-to-end manner in patients with LARC following nCRT. Keywords: MR-Imaging, Abdomen/GI, Rectum, Oncology Supplemental material is available for this article. Published under a CC BY 4.0 license.

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