Department of Radiation Oncology, The First Medical Center, People's Liberation Army General Hospital, No. 28 Fuxing Road, Haidian District, Beijing, 100853, China.
School of Physics Science and Technology, Wuhan University, No. 299, Bayi Road, Luojiashan Street, Wuhan, 430072, China.
BMC Cancer. 2021 Mar 8;21(1):243. doi: 10.1186/s12885-020-07595-6.
It is very important to accurately delineate the CTV on the patient's three-dimensional CT image in the radiotherapy process. Limited to the scarcity of clinical samples and the difficulty of automatic delineation, the research of automatic delineation of cervical cancer CTV based on CT images for new patients is slow. This study aimed to assess the value of Dense-Fully Connected Convolution Network (Dense V-Net) in predicting Clinical Target Volume (CTV) pre-delineation in cervical cancer patients for radiotherapy.
In this study, we used Dense V-Net, a dense and fully connected convolutional network with suitable feature learning in small samples to automatically pre-delineate the CTV of cervical cancer patients based on computed tomography (CT) images and then we assessed the outcome. The CT data of 133 patients with stage IB and IIA postoperative cervical cancer with a comparable delineation scope was enrolled in this study. One hundred and thirteen patients were randomly designated as the training set to adjust the model parameters. Twenty cases were used as the test set to assess the network performance. The 8 most representative parameters were also used to assess the pre-sketching accuracy from 3 aspects: sketching similarity, sketching offset, and sketching volume difference.
The results presented that the DSC, DC/mm, HD/cm, MAD/mm, ∆V, SI, IncI and JD of CTV were 0.82 ± 0.03, 4.28 ± 2.35, 1.86 ± 0.48, 2.52 ± 0.40, 0.09 ± 0.05, 0.84 ± 0.04, 0.80 ± 0.05, and 0.30 ± 0.04, respectively, and the results were greater than those with a single network.
Dense V-Net can correctly predict CTV pre-delineation of cervical cancer patients and can be applied in clinical practice after completing simple modifications.
在放疗过程中,准确描绘患者三维 CT 图像上的临床靶区(CTV)非常重要。由于临床样本的稀缺性和自动描绘的困难,基于 CT 图像对新患者进行宫颈癌 CTV 自动描绘的研究进展缓慢。本研究旨在评估密集全连接卷积网络(Dense-Fully Connected Convolution Network,Dense V-Net)在预测宫颈癌患者放疗前 CTV 预描绘中的价值。
在这项研究中,我们使用 Dense V-Net,这是一种具有适当特征学习能力的密集和全连接卷积网络,可以在小样本的基础上自动预描绘宫颈癌患者的 CTV,然后评估结果。这项研究纳入了 133 例具有可比描绘范围的 IB 期和 IIA 期宫颈癌术后患者的 CT 数据。其中 113 例患者被随机指定为训练集以调整模型参数,20 例患者被用作测试集以评估网络性能。还使用了 8 个最具代表性的参数从 3 个方面评估预描绘的准确性:描绘相似性、描绘偏移量和描绘体积差异。
结果表明,CTV 的 DSC、DC/mm、HD/cm、MAD/mm、∆V、SI、IncI 和 JD 分别为 0.82±0.03、4.28±2.35、1.86±0.48、2.52±0.40、0.09±0.05、0.84±0.04、0.80±0.05 和 0.30±0.04,这些结果均大于单个网络的结果。
Dense V-Net 可以正确预测宫颈癌患者的 CTV 预描绘,可以在完成简单修改后应用于临床实践。