Department of Radiology, The University of Michigan, 1500 E Medical Center Dr, MIB C476, Box 5842, Ann Arbor, MI 48109-5842, USA.
AJR Am J Roentgenol. 2010 Apr;194(4):1083-9. doi: 10.2214/AJR.09.2817.
The objective of our study was to investigate the feasibility of computerized segmentation of lesions on head and neck CT scans and evaluate its potential for estimating changes in tumor volume in response to treatment of head and neck cancers.
Twenty-six CT scans were retrospectively collected from the files of 13 patients with 35 head and neck lesions. The CT scans were obtained from an examination performed before treatment (pretreatment scan) and an examination performed after one cycle of chemotherapy (posttreatment scan). Thirteen lesions were primary site cancers and 22 were metastatic lymph nodes. An experienced radiologist (radiologist 1) marked the 35 lesions and outlined each lesion's 2D contour on the best slice on both the pre- and posttreatment scans. Full 3D contours were also manually extracted for the 13 primary tumors. Another experienced radiologist (radiologist 2) verified and modified, if necessary, all manually drawn 2D and 3D contours. An in-house-developed computerized system performed 3D segmentation based on a level set model.
The computer-estimated change in tumor volume and percentage change in tumor volume between the pre- and posttreatment scans achieved a high correlation (intraclass correlation coefficient [ICC] = 0.98 and 0.98, respectively) with the estimates from manual segmentation for the 13 primary tumors. The average error in estimating the percentage change in tumor volume by automatic segmentation relative to the radiologists' average error was -1.5% +/- 5.4% (SD). For the 35 lesions, the ICC between the automatic and manual estimates of change in pre- to posttreatment tumor area was 0.93 and of percentage change in pre- to posttreatment tumor area was 0.85. The average error in estimating the percentage change in tumor area by automatic segmentation was -3.2% +/- 15.3%.
Preliminary results indicate that this computerized segmentation system can reliably estimate changes in tumor size on CT scans relative to radiologists' manual segmentation. This information can be used to calculate changes in tumor size on pre- and posttreatment scans to assess response to treatment.
本研究的目的是探讨头颈部 CT 扫描病变计算机分割的可行性,并评估其对头颈部癌症治疗后肿瘤体积变化估计的潜力。
从 13 名患者的 35 个头颈部病变的档案中回顾性收集了 26 个 CT 扫描。这些 CT 扫描分别在治疗前(预处理扫描)和化疗一个周期后(治疗后扫描)进行检查获得。13 个病变为原发部位癌症,22 个为转移性淋巴结。一名经验丰富的放射科医生(放射科医生 1)在预处理和治疗后扫描的最佳切片上标记了 35 个病变,并勾勒出每个病变的 2D 轮廓。还对手动提取的 13 个原发性肿瘤的全 3D 轮廓。另一名经验丰富的放射科医生(放射科医生 2)对所有手动绘制的 2D 和 3D 轮廓进行了验证和必要的修改。一个内部开发的计算机系统基于水平集模型进行 3D 分割。
计算机估计的肿瘤体积变化和治疗前后肿瘤体积百分比变化与手动分割的估计值高度相关(13 个原发性肿瘤的组内相关系数[ICC]分别为 0.98 和 0.98)。自动分割相对于放射科医生平均误差估计肿瘤体积百分比变化的平均误差为-1.5% +/- 5.4%(SD)。对于 35 个病变,自动和手动估计治疗前后肿瘤面积变化的 ICC 为 0.93,治疗前后肿瘤面积百分比变化的 ICC 为 0.85。自动分割估计肿瘤面积百分比变化的平均误差为-3.2% +/- 15.3%。
初步结果表明,该计算机分割系统可以可靠地估计 CT 扫描上肿瘤大小相对于放射科医生手动分割的变化。该信息可用于计算治疗前后扫描肿瘤大小的变化,以评估治疗反应。