Department of Engineering, Università degli Studi di Perugia, Via Goffredo Duranti 93, 06125 Perugia, Italy.
Unit of Nuclear Medicine, Department of Medicine, Surgery and Pharmacy, University of Sassari, 07100 Sassari, Italy.
Sensors (Basel). 2023 Sep 18;23(18):7952. doi: 10.3390/s23187952.
Head and neck cancer (HNC) is the seventh most common neoplastic disorder at the global level. Contouring HNC lesions on [18F] Fluorodeoxyglucose positron emission tomography/computed tomography (FDG PET/CT) scans plays a fundamental role for diagnosis, risk assessment, radiotherapy planning and post-treatment evaluation. However, manual contouring is a lengthy and tedious procedure which requires significant effort from the clinician. We evaluated the performance of six hand-crafted, training-free methods (four threshold-based, two algorithm-based) for the semi-automated delineation of HNC lesions on FDG PET/CT. This study was carried out on a single-centre population of n=103 subjects, and the standard of reference was manual segmentation generated by nuclear medicine specialists. Figures of merit were the Sørensen-Dice coefficient (DSC) and relative volume difference (RVD). Median DSC ranged between 0.595 and 0.792, median RVD between -22.0% and 87.4%. Click and draw and Nestle's methods achieved the best segmentation accuracy (median DSC, respectively, 0.792 ± 0.178 and 0.762 ± 0.107; median RVD, respectively, -21.6% ± 1270.8% and -32.7% ± 40.0%) and outperformed the other methods by a significant margin. Nestle's method also resulted in a lower dispersion of the data, hence showing stronger inter-patient stability. The accuracy of the two best methods was in agreement with the most recent state-of-the art results. Semi-automated PET delineation methods show potential to assist clinicians in the segmentation of HNC lesions on FDG PET/CT images, although manual refinement may sometimes be needed to obtain clinically acceptable ROIs.
头颈部癌症(HNC)是全球第七大常见的肿瘤疾病。在[18F]氟脱氧葡萄糖正电子发射断层扫描/计算机断层扫描(FDG PET/CT)扫描上对头颈部癌症病变进行勾画对于诊断、风险评估、放疗计划和治疗后评估至关重要。然而,手动勾画是一个冗长而繁琐的过程,需要临床医生付出大量的努力。
我们评估了六种手工制作、无需训练的方法(四种基于阈值,两种基于算法)对头颈部癌症病变在 FDG PET/CT 上半自动勾画的性能。这项研究在单中心人群中进行,共纳入了 103 名患者,参考标准是核医学专家手动勾画的结果。评价指标是索里斯登-迪塞系数(DSC)和相对体积差异(RVD)。中位数 DSC 范围为 0.595 至 0.792,中位数 RVD 范围为-22.0%至 87.4%。点击和绘制以及 Nestle 的方法达到了最佳的分割准确性(中位数 DSC 分别为 0.792 ± 0.178 和 0.762 ± 0.107;中位数 RVD 分别为-21.6% ± 1270.8%和-32.7% ± 40.0%),明显优于其他方法。Nestle 的方法还显示出数据的分散性更小,因此具有更强的患者间稳定性。这两种最佳方法的准确性与最新的最先进的结果一致。
半自动 PET 勾画方法显示出有望帮助临床医生在 FDG PET/CT 图像上对头颈部癌症病变进行分割的潜力,尽管有时可能需要手动细化以获得临床可接受的 ROI。