Background and purpose: Radiation-induced erectile dysfunction (RiED) is commonly seen in prostate cancer patients. Clinical trials have been developed in multiple institutions to investigate whether dose-sparing to the internal-pudendal-arteries (IPA) will improve retention of sexual potency. The IPA is usually not considered a conventional organ-at-risk (OAR) due to segmentation difficulty. In this work, we propose a deep learning (DL)-based auto-segmentation model for the IPA that utilizes CT and MRI or CT alone as the input image modality to accommodate variation in clinical practice. Materials and methods: 86 patients with CT and MRI images and noisy IPA labels were recruited in this study. We split the data into 42/14/30 for model training, testing, and a clinical observer study, respectively. There were three major innovations in this model: 1) we designed an architecture with squeeze-and-excite blocks and modality attention for effective feature extraction and production of accurate segmentation, 2) a novel loss function was used for training the model effectively with noisy labels, and 3) modality dropout strategy was used for making the model capable of segmentation in the absence of MRI. Results: The DSC, ASD, and HD95 values for the test dataset were 62.2%, 2.54mm, and 7mm, respectively. AI segmented contours were dosimetrically equivalent to the expert physician's contours. The observer study showed that expert physicians' scored AI contours (mean=3.7) higher than inexperienced physicians' contours (mean=3.1). When inexperienced physicians started with AI contours, the score improved to 3.7. Conclusion: The proposed model achieved good quality IPA contours to improve uniformity of segmentation and to facilitate introduction of standardized IPA segmentation into clinical trials and practice.
翻译:背景和目的:在前列腺癌症患者中常见的辐射诱发性勃起功能障碍(RiED),在多个机构中已经开发临床试验,以调查对内弹道动脉(IPA)进行剂量分解是否有助于保持性能。由于分解困难,IPA通常不被视为常规的器官风险障碍(OAR)。在这项工作中,我们为IPA提出了一个基于深度学习(DL)的自动分解模式,该模式使用CT和MRI或CT单独作为输入图像模式,以适应临床实践的变异。材料和方法:在这项研究中聘用了86个具有CT和MRI图像的病人以及IPA标签。我们将数据分成42/14/30,分别用于模型培训、测试和临床观察者研究。这个模型中有三大创新:(1) 我们设计了一个结构,用挤压和分解块和模式关注有效地提取和生产精确分解功能,2个新损失功能用于对模型进行高调压标签的有效培训,3 材料和方法计算结果:86个具有CT和MRI图像的病人分解方法分别用于模型、DSD分解为D数据。