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首页> 外文期刊>World Journal of Gastroenterology >Multiphase convolutional dense network for the classification of focal liver lesions on dynamic contrast-enhanced computed tomography
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Multiphase convolutional dense network for the classification of focal liver lesions on dynamic contrast-enhanced computed tomography

机译:用于动态对比增强计算断层扫描的局灶性肝病变分类的多相卷积致密网络

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BACKGROUND The accurate classification of focal liver lesions (FLLs) is essential to properly guide treatment options and predict prognosis. Dynamic contrast-enhanced computed tomography (DCE-CT) is still the cornerstone in the exact classification of FLLs due to its noninvasive nature, high scanning speed, and high-density resolution. Since their recent development, convolutional neural network-based deep learning techniques has been recognized to have high potential for image recognition tasks. AIM To develop and evaluate an automated multiphase convolutional dense network (MP-CDN) to classify FLLs on multiphase CT. METHODS A total of 517 FLLs scanned on a 320-detector CT scanner using a four-phase DCE-CT imaging protocol (including precontrast phase, arterial phase, portal venous phase, and delayed phase) from 2012 to 2017 were retrospectively enrolled. FLLs were classified into four categories: Category A, hepatocellular carcinoma (HCC); category B, liver metastases; category C, benign non-inflammatory FLLs including hemangiomas, focal nodular hyperplasias and adenomas; and category D, hepatic abscesses. Each category was split into a training set and test set in an approximate 8:2 ratio. An MP-CDN classifier with a sequential input of the four-phase CT images was developed to automatically classify FLLs. The classification performance of the model was evaluated on the test set; the accuracy and specificity were calculated from the confusion matrix, and the area under the receiver operating characteristic curve (AUC) was calculated from the SoftMax probability outputted from the last layer of the MP-CDN. RESULTS A total of 410 FLLs were used for training and 107 FLLs were used for testing. The mean classification accuracy of the test set was 81.3% (87/107). The accuracy/specificity of distinguishing each category from the others were 0.916/0.964, 0.925/0.905, 0.860/0.918, and 0.925/0.963 for HCC, metastases, benign non-inflammatory FLLs, and abscesses on the test set, respectively. The AUC (95% confidence interval) for differentiating each category from the others was 0.92 (0.837-0.992), 0.99 (0.967-1.00), 0.88 (0.795-0.955) and 0.96 (0.914-0.996) for HCC, metastases, benign non-inflammatory FLLs, and abscesses on the test set, respectively. CONCLUSION MP-CDN accurately classified FLLs detected on four-phase CT as HCC, metastases, benign non-inflammatory FLLs and hepatic abscesses and may assist radiologists in identifying the different types of FLLs.
机译:背景技术局灶性肝病变(FLLS)的准确分类对于正确指导治疗方案并预测预后至关重要。动态对比度增强的计算机断层扫描(DCE-CT)仍然是FLLS的精确分类的基石,因为其非侵入性自然,高扫描速度和高密度分辨率。自最近的发展以来,已经认识到基于卷积神经网络的深度学习技术具有高潜力的图像识别任务。旨在开发和评估自动化的多相卷积密度致密网络(MP-CDN)以对多相CT进行分类FLL。方法通过2012年至2017年使用来自2012年至2017年的四相DCE-CT成像协议(包括预乘积阶段,动脉阶段,门静脉期和延迟阶段)在320探测器CT扫描仪上扫描的总共517个FLL。回顾性地注册。 FLLS分为四类:A类,肝细胞癌(HCC); B类,肝转转移; c类别c,良性非炎症fll,包括血管瘤,局灶性结节性增生和腺瘤;和类别D,肝脓肿。每个类别被分成培训集和测试集,近似8:2比率。开发了具有四相CT图像的连续输入的MP-CDN分类器以自动对FLL进行分类。在测试集中评估模型的分类性能;从混淆矩阵计算精度和特异性,并且从PM-CDN的最后一层输出的软MAX概率计算接收器操作特性曲线(AUC)下的区域。结果共410个FLL用于训练,107个FLLS用于测试。测试集的平均分类准确性为81.3%(87/107)。将每个类别与其他类别区别为0.916 / 0.964,0.925 / 0.905,0.860 / 0.918和0.925 / 0.963的HCC,转移,良性非炎症FLLS和试验组的脓肿。用于区分从其他类别的AUC(95%置信区间)为0.92(0.837-0.992),0.99(0.967-1.00),0.88(0.795-0.955)和0.96(0.914-0.996)的HCC,转移,良性非-INGRAMAMATORY FLLS,以及测试集的脓肿。结论MP-CDN在四相CT中检测到HCC,转移,良性非炎症FLLS和肝脓肿中检测到的PH-CDN精确分类FLL,并且可以帮助放射科医师识别不同类型的FLLS。

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