开发并初步验证用于预测接受肝动脉灌注化疗的不可切除肝细胞癌患者治疗反应的新型卷积神经网络模型

Bing Quan, Jinghuan Li, Hailin Mi, Miao Li, Wenfeng Liu, Fan Yao, Rongxin Chen, Yan Shan, Pengju Xu, Zhenggang Ren, Xin Yin
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引用次数: 0

摘要

本研究旨在评估卷积神经网络(CNN)与术前磁共振成像和临床因素在预测接受肝动脉灌注化疗(HAIC)的不可切除肝细胞癌(HCC)患者治疗反应方面的性能。我们回顾性地招募了2019年5月至2022年3月期间在我院接受肝动脉灌注化疗的191例不可切除肝细胞癌患者。根据交叉熵损失(CEL),我们从三个具有代表性的 CNN 模型 AlexNet、ResNet 和 InceptionV4 中选择了 InceptionV4。我们随后开发了 InceptionV4,以融合合格的预处理 MRI 数据和患者临床因素的信息。我们根据几种恒定序列对放射组学信息进行了评估,包括增强 T1 加权序列(包括动脉期、门脉期和延迟期)、T2 FSE 序列和双回波序列。InceptionV4 的性能在训练队列(n = 127)中进行了交叉验证,并在独立队列(n = 64)中进行了内部验证,通过接收器操作特征曲线(ROC)与单一重要临床因素和放射科医生进行了比较。类激活图谱用于直观显示 InceptionV4 模型。InceptionV4 模型在交叉验证队列中的 AUC 为 0.871(95% 置信区间 [CI] 0.761-0.981),在内部验证队列中的 AUC 为 0.826(95% 置信区间 [CI] 0.682-0.970);这两个模型的表现优于其他方法(交叉验证和内部验证的 AUC 范围分别为 0.783-0.873 和 0.708-0.806; P
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Development and Preliminary Validation of a Novel Convolutional Neural Network Model for Predicting Treatment Response in Patients with Unresectable Hepatocellular Carcinoma Receiving Hepatic Arterial Infusion Chemotherapy.

The goal of this study was to evaluate the performance of a convolutional neural network (CNN) with preoperative MRI and clinical factors in predicting the treatment response of unresectable hepatocellular carcinoma (HCC) patients receiving hepatic arterial infusion chemotherapy (HAIC). A total of 191 patients with unresectable HCC who underwent HAIC in our hospital between May 2019 and March 2022 were retrospectively recruited. We selected InceptionV4 from three representative CNN models, AlexNet, ResNet, and InceptionV4, according to the cross-entropy loss (CEL). We subsequently developed InceptionV4 to fuse the information from qualified pretreatment MRI data and patient clinical factors. Radiomic information was evaluated based on several constant sequences, including enhanced T1-weighted sequences (with arterial, portal, and delayed phases), T2 FSE sequences, and dual-echo sequences. The performance of InceptionV4 was cross-validated in the training cohort (n = 127) and internally validated in an independent cohort (n = 64), with comparisons against single important clinical factors and radiologists in terms of receiver operating characteristic (ROC) curves. Class activation mapping was used to visualize the InceptionV4 model. The InceptionV4 model achieved an AUC of 0.871 (95% confidence interval [CI] 0.761-0.981) in the cross-validation cohort and an AUC of 0.826 (95% CI 0.682-0.970) in the internal validation cohort; these two models performed better than did the other methods (AUC ranges 0.783-0.873 and 0.708-0.806 for cross- and internal validations, respectively; P < 0.01). The present InceptionV4 model, which integrates radiomic information and clinical factors, helps predict the treatment response of unresectable HCC patients receiving HAIC treatment.

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