Gudmundsson Eyjolfur, Straus Christopher M, Li Feng, Armato Samuel G
The University of Chicago, Department of Radiology, Chicago, Illinois, United States.
J Med Imaging (Bellingham). 2020 Jan;7(1):012705. doi: 10.1117/1.JMI.7.1.012705. Epub 2020 Jan 29.
Tumor volume is a topic of interest for the prognostic assessment, treatment response evaluation, and staging of malignant pleural mesothelioma. Many mesothelioma patients present with, or develop, pleural fluid, which may complicate the segmentation of this disease. Deep convolutional neural networks (CNNs) of the two-dimensional U-Net architecture were trained for segmentation of tumor in the left and right hemithoraces, with the networks initialized through layers pretrained on ImageNet. Networks were trained on a dataset of 5230 axial sections from 154 CT scans of 126 mesothelioma patients. A test set of 94 CT sections from 34 patients, who all presented with both tumor and pleural effusion, in addition to a more general test set of 130 CT sections from 43 patients, were used to evaluate segmentation performance of the deep CNNs. The Dice similarity coefficient (DSC), average Hausdorff distance, and bias in predicted tumor area were calculated through comparisons with radiologist-provided tumor segmentations on the test sets. The present method achieved a median DSC of 0.690 on the tumor and effusion test set and achieved significantly higher performance on both test sets when compared with a previous deep learning-based segmentation method for mesothelioma.
肿瘤体积是恶性胸膜间皮瘤预后评估、治疗反应评估及分期中备受关注的一个话题。许多间皮瘤患者会出现或发展为胸腔积液,这可能会使该疾病的分割变得复杂。对二维U-Net架构的深度卷积神经网络(CNN)进行训练,以分割左右半胸的肿瘤,网络通过在ImageNet上预训练的层进行初始化。网络在来自126例间皮瘤患者的154次CT扫描的5230个轴向切片的数据集上进行训练。使用来自34例患者的94个CT切片的测试集(所有患者均同时存在肿瘤和胸腔积液)以及来自43例患者的130个CT切片的更通用测试集来评估深度CNN的分割性能。通过与放射科医生提供的测试集上的肿瘤分割结果进行比较,计算骰子相似系数(DSC)、平均豪斯多夫距离和预测肿瘤面积的偏差。本方法在肿瘤和积液测试集上的DSC中位数为0.690,与之前基于深度学习的间皮瘤分割方法相比,在两个测试集上均取得了显著更高的性能。