Measuring lesion size is an important step to assess tumor growth and monitor disease progression and therapy response in oncology image analysis. Although it is tedious and highly time-consuming, radiologists have to work on this task by using RECIST criteria (Response Evaluation Criteria In Solid Tumors) routinely and manually. Even though lesion segmentation may be the more accurate and clinically more valuable means, physicians can not manually segment lesions as now since much more heavy laboring will be required. In this paper, we present a prior-guided dual-path network (PDNet) to segment common types of lesions throughout the whole body and predict their RECIST diameters accurately and automatically. Similar to [1], a click guidance from radiologists is the only requirement. There are two key characteristics in PDNet: 1) Learning lesion-specific attention matrices in parallel from the click prior information by the proposed prior encoder, named click-driven attention; 2) Aggregating the extracted multi-scale features comprehensively by introducing top-down and bottom-up connections in the proposed decoder, named dual-path connection. Experiments show the superiority of our proposed PDNet in lesion segmentation and RECIST diameter prediction using the DeepLesion dataset and an external test set. PDNet learns comprehensive and representative deep image features for our tasks and produces more accurate results on both lesion segmentation and RECIST diameter prediction.
翻译:在肿瘤图像分析中,放射科医生必须经常和人工地使用RECIST标准( Solid Tumors 中的反应评价标准)来完成这项任务。即使腐蚀分解可能是更准确和临床上更有价值的方法,医生也不能像现在这样手动处理分解损伤,因为现在需要更繁重的体力劳动。在本文件中,我们提出了一个先导的双路径网络(PDNet),将整个身体的常见损伤分为几类,并准确和自动地预测其RECIST的直径。与[1]类似,唯一需要的是放射科医生的点击指导。PDNet有两个关键特征:1) 与前一位摄取的摄像头(点名点击驱动的注意力)的点击前信息同步,学习偏差的注意矩阵;2) 将提取的多级特征综合整合起来,在拟议的脱分解码、取名双向连接中引入自上下连接,并准确和自下端预测 REC的直径网络直径直径。实验显示我们提议的直径和深层次预测数据的高级性,用REPD 测试结果,在深度预测中,在深度和深度分析中进行深度预测。