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DeepPrognosis: Preoperative Prediction of Pancreatic Cancer Survival and Surgical Margin via Contrast-Enhanced CT Imaging

机译:深度突出:通过对比增强CT成像对胰腺癌存活和手术边缘的术前预测

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Pancreatic ductal adenocarcinoma (PDAC) is one of the most lethal cancers and carries a dismal prognosis. Surgery remains the best chance of a potential cure for patients who are eligible for initial resection of PDAC. However, outcomes vary significantly even among the resected patients of the same stage and received similar treatments. Accurate preoperative prognosis of resectable PDACs for personalized treatment is thus highly desired. Nevertheless, there are no automated methods yet to fully exploit the contrast-enhanced computed tomography (CE-CT) imaging for PDAC. Tumor attenuation changes across different CT phases can reflect the tumor internal stromal fractions and vascularization of individual tumors that may impact the clinical outcomes. In this work, we propose a novel deep neural network for the survival prediction of resectable PDAC patients, named as 3D Contrast-Enhanced Convolutional Long Short-Term Memory network (CE-ConvLSTM), which can derive the tumor attenuation signatures or patterns from CE-CT imaging studies. We present a multi-task CNN to accomplish both tasks of outcome and margin prediction where the network benefits from learning the tumor resection margin related features to improve survival prediction. The proposed framework can improve the prediction performances compared with existing state-of-the-art survival analysis approaches. The tumor signature built from our model has evidently added values to be combined with the existing clinical staging system.
机译:胰腺导管腺癌(PDAC)是最致命的癌症之一,并进行令人沮丧的预后。手术仍然是有资格初始切除PDAC的患者潜在治愈的最佳机会。然而,即使在同一阶段的切除患者中,结果也会显着变化,并且接受了类似的治疗。因此,非常需要精确可重置PDAC的预术预后。然而,没有自动化方法尚未充分利用PDAC的对比增强的计算机断层扫描(CE-CT)成像。不同CT阶段的肿瘤衰减变化可以反映可能影响临床结果的个体肿瘤的肿瘤内部基质分数和血管化。在这项工作中,我们提出了一种新的神经网络,用于将可重症PDAC患者的生存预测生存预测,名为3D对比增强卷积的长短期内存网络(CE-COMMLSTM),可以导出CE的肿瘤衰减签名或模式-ct成像研究。我们提出了一个多任务CNN,实现了结果的两项任务和边缘预测,其中网络受益于学习肿瘤切除保证金相关特征以改善生存预测。与现有的最先进的生存分析方法相比,该框架可以改善预测性能。由我们模型建造的肿瘤签名明显增加了与现有的临床分期系统结合的值。

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