Automatically measuring lesion/tumor size with RECIST (Response Evaluation Criteria In Solid Tumors) diameters and segmentation is important for computer-aided diagnosis. Although it has been studied in recent years, there is still space to improve its accuracy and robustness, such as (1) enhancing features by incorporating rich contextual information while keeping a high spatial resolution and (2) involving new tasks and losses for joint optimization. To reach this goal, this paper proposes a transformer-based network (MeaFormer, Measurement transFormer) for lesion RECIST diameter prediction and segmentation (LRDPS). It is formulated as three correlative and complementary tasks: lesion segmentation, heatmap prediction, and keypoint regression. To the best of our knowledge, it is the first time to use keypoint regression for RECIST diameter prediction. MeaFormer can enhance high-resolution features by employing transformers to capture their long-range dependencies. Two consistency losses are introduced to explicitly build relationships among these tasks for better optimization. Experiments show that MeaFormer achieves the state-of-the-art performance of LRDPS on the large-scale DeepLesion dataset and produces promising results of two downstream clinic-relevant tasks, i.e., 3D lesion segmentation and RECIST assessment in longitudinal studies.
翻译:为实现这一目标,本文件提议建立一个基于变压器的网络(Meaformer, 度量跨格式),用于RECIS直径预测和分解(LRDPS),这是三种相关和互补的任务:偏转、热映射预测和关键点回归。根据我们的知识,这是第一次使用关键点回归法进行RECIS直径预测。MeaFormer可以通过使用变压器捕捉其长距离依赖性来增强高分辨率特征。引入了两个一致性损失,以明确建立这些任务之间的关系,更好地优化。实验显示,MeAmerer实现了LRPS-D的状态状态性能。