Department of Radiation Oncology and Molecular Radiation Sciences, Johns Hopkins University, Baltimore, MD, United States of America.
Department of Radiation Oncology, Medical College of Wisconsin, Milwaukee, WI, United States of America.
Phys Med Biol. 2024 Oct 18;69(21). doi: 10.1088/1361-6560/ad84b2.
. MRI is the standard imaging modality for high-dose-rate brachytherapy of cervical cancer. Precise contouring of organs at risk (OARs) and high-risk clinical target volume (HR-CTV) from MRI is a crucial step for radiotherapy planning and treatment. However, conventional manual contouring has limitations in terms of accuracy as well as procedural time. To overcome these, we propose a deep learning approach to automatically segment OARs (bladder, rectum, and sigmoid colon) and HR-CTV from female pelvic MRI.. In the proposed pipeline, a coarse multi-organ segmentation model first segments all structures, from which a region of interest is computed for each structure. Then, each organ is segmented using an organ-specific fine segmentation model separately trained for each organ. To account for variable sizes of HR-CTV, a size-adaptive multi-model approach was employed. For coarse and fine segmentations, we designed a dual convolution-transformer UNet (DCT-UNet) which uses dual-path encoder consisting of convolution and transformer blocks. To evaluate our model, OAR segmentations were compared to the clinical contours drawn by the attending radiation oncologist. For HR-CTV, four sets of contours (clinical + three additional sets) were obtained to produce a consensus ground truth as well as for inter/intra-observer variability analysis.. DCT-UNet achieved dice similarity coefficient (mean ± SD) of 0.932 ± 0.032 (bladder), 0.786 ± 0.090 (rectum), 0.663 ± 0.180 (sigmoid colon), and 0.741 ± 0.076 (HR-CTV), outperforming other state-of-the-art models. Notably, the size-adaptive multi-model significantly improved HR-CTV segmentation compared to a single-model. Furthermore, significant inter/intra-observer variability was observed, and our model showed comparable performance to all observers. Computation time for the entire pipeline per subject was 12.59 ± 0.79 s, which is significantly shorter than the typical manual contouring time of >15 min.. These experimental results demonstrate that our model has great utility in cervical cancer brachytherapy by enabling fast and accurate automatic segmentation, and has potential in improving consistency in contouring. DCT-UNet source code is available athttps://github.com/JHU-MICA/DCT-UNet.
.MRI 是宫颈癌高剂量率近距离治疗的标准成像方式。从 MRI 中精确勾画危及器官(OAR)和高风险临床靶区(HR-CTV)是放疗计划和治疗的关键步骤。然而,传统的手动勾画在准确性和程序时间方面都存在局限性。为了克服这些问题,我们提出了一种深度学习方法,用于自动从女性盆腔 MRI 中分割 OAR(膀胱、直肠和乙状结肠)和 HR-CTV。在提出的流水线中,首先使用一个粗的多器官分割模型分割所有结构,然后为每个结构计算感兴趣区域。然后,使用分别针对每个器官训练的器官特异性精细分割模型单独分割每个器官。为了考虑 HR-CTV 的可变大小,采用了大小自适应多模型方法。对于粗分割和精细分割,我们设计了一种双卷积-Transformer UNet(DCT-UNet),它使用由卷积和 Transformer 块组成的双通道编码器。为了评估我们的模型,将 OAR 分割与主治放射肿瘤学家绘制的临床轮廓进行了比较。对于 HR-CTV,获得了四组轮廓(临床+另外三组),以产生共识的真实轮廓,并进行了观察者间/内变异性分析。DCT-UNet 达到了 0.932 ± 0.032(膀胱)、0.786 ± 0.090(直肠)、0.663 ± 0.180(乙状结肠)和 0.741 ± 0.076(HR-CTV)的骰子相似系数(均值±标准差),优于其他最先进的模型。值得注意的是,与单模型相比,大小自适应多模型显著提高了 HR-CTV 分割的性能。此外,观察到了显著的观察者间/内变异性,并且我们的模型与所有观察者的表现相当。每个患者的整个流水线的计算时间为 12.59 ± 0.79 秒,明显短于传统的手动轮廓绘制时间(>15 分钟)。这些实验结果表明,我们的模型通过实现快速准确的自动分割,在宫颈癌近距离治疗中具有很大的实用性,并具有改善轮廓一致性的潜力。DCT-UNet 的源代码可在 https://github.com/JHU-MICA/DCT-UNet 上获得。