Organ at risk (OAR) segmentation is a crucial step for treatment planning and outcome determination in radiotherapy treatments of cancer patients. Several deep learning based segmentation algorithms have been developed in recent years, however, U-Net remains the de facto algorithm designed specifically for biomedical image segmentation and has spawned many variants with known weaknesses. In this study, our goal is to present simple architectural changes in U-Net to improve its accuracy and generalization properties. Unlike many other available studies evaluating their algorithms on single center data, we thoroughly evaluate several variations of U-Net as well as our proposed enhanced architecture on multiple data sets for an extensive and reliable study of the OAR segmentation problem. Our enhanced segmentation model includes (a)architectural changes in the loss function, (b)optimization framework, and (c)convolution type. Testing on three publicly available multi-object segmentation data sets, we achieved an average of 80% dice score compared to the baseline U-Net performance of 63%.
翻译:癌症病人放射疗法治疗的治疗规划和结果确定的关键步骤是风险器官(OAR)分解。近年来已经开发出若干基于深层次学习的分解算法,然而,U-Net仍然是专门为生物医学图像分解设计的实际算法,并产生了许多已知弱点的变异体。在这项研究中,我们的目标是展示U-Net的简单结构变化,以提高其准确性和概括性。与其他许多现有研究不同的是,对单一中心数据的算法进行评估,我们彻底评价了U-Net的若干变异,以及我们提议的多数据集强化结构,以便对OAR分解问题进行广泛可靠的研究。我们增强的分解模型包括:(a) 损失功能的结构性变化,(b) 优化框架,以及(c) 演化类型。测试了三种公开提供的多点分化数据集,与63%的U-Net基准性能相比,我们平均达到80%的dice分。