National Engineering Research Center of Personalized Diagnostic and Therapeutic Technology, Hunan, 410008, People's Republic of China.
Department of Radiology, Xiangya Hospital, Central South University, Hunan, 410008, People's Republic of China.
Phys Med Biol. 2023 Apr 25;68(9):095011. doi: 10.1088/1361-6560/accac9.
. Radiation therapy for head and neck (H&N) cancer relies on accurate segmentation of the primary tumor. A robust, accurate, and automated gross tumor volume segmentation method is warranted for H&N cancer therapeutic management. The purpose of this study is to develop a novel deep learning segmentation model for H&N cancer based on independent and combined CT and FDG-PET modalities.. In this study, we developed a robust deep learning-based model leveraging information from both CT and PET. We implemented a 3D U-Net architecture with 5 levels of encoding and decoding, computing model loss through deep supervision. We used a channel dropout technique to emulate different combinations of input modalities. This technique prevents potential performance issues when only one modality is available, increasing model robustness. We implemented ensemble modeling by combining two types of convolutions with differing receptive fields, conventional and dilated, to improve capture of both fine details and global information.. Our proposed methods yielded promising results, with a Dice similarity coefficient (DSC) of 0.802 when deployed on combined CT and PET, DSC of 0.610 when deployed on CT, and DSC of 0.750 when deployed on PET.. Application of a channel dropout method allowed for a single model to achieve high performance when deployed on either single modality images (CT or PET) or combined modality images (CT and PET). The presented segmentation techniques are clinically relevant to applications where images from a certain modality might not always be available.
. 头颈部 (H&N) 癌症的放射治疗依赖于对原发性肿瘤的准确分割。对于 H&N 癌症的治疗管理,需要一种强大、准确和自动化的大体肿瘤体积分割方法。本研究旨在开发一种基于 CT 和 FDG-PET 独立和联合模态的 H&N 癌症新型深度学习分割模型。. 在这项研究中,我们开发了一种基于深度学习的强大模型,利用来自 CT 和 PET 的信息。我们实现了一个具有 5 级编码和解码的 3D U-Net 架构,通过深度监督计算模型损失。我们使用通道丢弃技术来模拟不同的输入模态组合。这种技术可以防止在只有一种模态可用时出现潜在的性能问题,提高模型的稳健性。我们通过结合两种具有不同感受野的卷积(常规卷积和扩张卷积)来实现集成建模,以提高对精细细节和全局信息的捕获能力。. 我们提出的方法取得了有前景的结果,当部署在联合 CT 和 PET 上时,Dice 相似系数 (DSC) 为 0.802,当部署在 CT 上时,DSC 为 0.610,当部署在 PET 上时,DSC 为 0.750。. 应用通道丢弃方法允许单个模型在部署在单一模态图像(CT 或 PET)或联合模态图像(CT 和 PET)时实现高性能。所提出的分割技术对于那些在某些模态下的图像可能并不总是可用的应用具有临床相关性。