The Comprehensive Cancer Centre of Nanjing Drum Tower Hospital, Affiliated Hospital of Medical School, Nanjing University, Nanjing, 210000, Jiangsu, China.
Radiol Med. 2023 Oct;128(10):1250-1261. doi: 10.1007/s11547-023-01690-x. Epub 2023 Aug 19.
The large variability in tumor appearance and shape makes manual delineation of the clinical target volume (CTV) time-consuming, and the results depend on the oncologists' experience. Whereas deep learning techniques have allowed oncologists to automate the CTV delineation, multi-site tumor analysis is often lacking in the literature. This study aimed to evaluate the deep learning models that automatically contour CTVs of tumors at various sites on computed tomography (CT) images from objective and subjective perspectives.
577 patients were selected for the present study, including nasopharyngeal (n = 34), esophageal (n = 40), breast-conserving surgery (BCS) (left-sided, n = 71; right-sided, n = 71), breast-radical mastectomy (BRM) (left-sided, n = 43; right-sided, n = 37), cervical (radical radiotherapy, n = 45; postoperative, n = 85), prostate (n = 42), and rectal (n = 109) carcinomas. Manually delineated CTV contours by radiation oncologists are served as ground truth. Four models were evaluated: Flexnet, Unet, Vnet, and Segresnet, which are commercially available in the medical product "AccuLearning AI model training platform". The data were divided into the training, validation, and testing set at a ratio of 5:1:4. The geometric metrics, including Dice Similarity Coefficient (DSC) and Hausdorff Distance (HD), were calculated for objective evaluation. For subjective assessment, oncologists rated the segmentation contours of the testing set visually.
High correlations were observed between automatic and manual contours. Based on the results of the independent test group, most of the patients achieved satisfactory quantitative results (DSC > 0.8), except for patients with esophageal carcinoma (DSC: 0.62-0.64). The subjective review indicated that 82.65% of predicted CTVs scored either as clinically accepting (8.68%) or requiring minor revision (73.97%), and no patients were scored as rejected.
This experimental work demonstrated that auto-generated contours could serve as an initial template to help oncologists save time in CTV delineation. The deep learning-based auto-segmentations achieve acceptable accuracy and show the potential to improve clinical efficiency for radiotherapy of a variety of cancer.
肿瘤形态和外观的巨大差异使得临床靶区(CTV)的手动勾画既耗时又费力,且结果还取决于肿瘤学家的经验。而深度学习技术已经使肿瘤学家能够实现 CTV 自动勾画,但文献中往往缺乏多站点肿瘤分析。本研究旨在从客观和主观两个方面评估能够自动勾画不同部位肿瘤 CT 图像 CTV 的深度学习模型。
本研究共纳入 577 例患者,包括鼻咽癌(n=34)、食管癌(n=40)、保乳手术(左侧,n=71;右侧,n=71)、乳腺癌根治术(左侧,n=43;右侧,n=37)、宫颈癌(根治性放疗,n=45;术后,n=85)、前列腺癌(n=42)和直肠癌(n=109)。由肿瘤学家手动勾画的 CTV 轮廓作为金标准。评估了四种模型:Flexnet、Unet、Vnet 和 Segresnet,它们可在医疗产品“AccuLearning AI 模型训练平台”中获得。将数据按 5:1:4 的比例分为训练集、验证集和测试集。使用几何指标,包括 Dice 相似系数(DSC)和 Hausdorff 距离(HD),进行客观评估。对于主观评估,肿瘤学家对测试集的分割轮廓进行了视觉评估。
自动勾画和手动勾画之间存在高度相关性。基于独立测试组的结果,除了食管癌患者(DSC:0.62-0.64)外,大多数患者的定量结果(DSC>0.8)都令人满意。主观评价表明,82.65%的预测 CTV 评分属于临床可接受(8.68%)或只需少量修改(73.97%),没有患者被评为不可接受。
这项实验工作表明,自动生成的轮廓可以作为帮助肿瘤学家节省 CTV 勾画时间的初始模板。基于深度学习的自动分割实现了可接受的准确性,并显示出提高多种癌症放射治疗临床效率的潜力。