Vokurka Elizabeth A, Herwadkar Amit, Thacker Neil A, Ramsden Richard T, Jackson Alan
Division of Imaging Science and Biomedical Engineering, Department of Medicine, University of Manchester, England.
AJNR Am J Neuroradiol. 2002 Mar;23(3):459-67.
True 3D measurements of tumor volume are time-consuming and subject to errors that are particularly pronounced in cases of small tumors. These problems complicate the routine clinical assessment of tumor growth rates. We examined the accuracy of currently available methods of size and growth measurement of vestibular schwannomas compared with that of a novel fast partial volume tissue classification algorithm.
Sixty-three patients with unilateral sporadic vestibular schwannomas underwent imaging. Thirty-eight of these patients underwent imaging two or more times at approximately 12-month intervals. Contrast-enhanced 3D T1-weighted images were used for all measurements. An experienced radiologist performed standard size estimations, including maximal diameter, elliptical area, perimeter, manually segmented area, intensity thresholded seeding volume, and manually segmented volume. A method for calculating volume was also used, incorporating Bayesian probability statistics to estimate partial volume effects. Manually segmented volume was obtained as a baseline standard measure. A computer-generated phantom exhibiting the intensity and partial volume characteristics of brain tissue, CSF, and intracanalicular vestibular schwannoma tissue was used to measure absolute accuracy of the standard technique and Bayesian partial volume segmentation.
The Bayesian partial volume segmentation method showed the highest correlation (R(2) = 0.994) with the standard method, whereas the commonly used method of maximal diameter measurement showed poor correlation (R(2) = 0.732). Accuracy of Bayesian segmentation was shown to be more than twice that of manual segmentation, with an absolute accuracy of 5% (cf, 13%) and a remeasurement accuracy of 70 mm(3) (cf, 150 mm(3)). For the 38 patients who underwent imaging twice, definite tumor growth was shown for 12, potential growth for seven, no growth for 17, and definite shrinkage for two.
Commonly used methods such as maximal diameter measurements do not provide adequate statistical accuracy with which to monitor tumor growth in patients with small vestibular schwannomas. Bayesian partial volume segmentation provides a more accurate and rapid method of volume and growth estimation. These differences in measurement accuracy translated into a significant improvement in clinical assessment, allowing identification of tumor growth in 10 of 12 cases that appeared to be static in size when manual segmentation techniques are used. The technique is quick to perform and suitable for use in routine clinical practice.
肿瘤体积的真正三维测量耗时且容易出现误差,在小肿瘤病例中尤为明显。这些问题使肿瘤生长速率的常规临床评估变得复杂。我们比较了目前可用的前庭神经鞘瘤大小和生长测量方法与一种新型快速部分容积组织分类算法的准确性。
63例单侧散发性前庭神经鞘瘤患者接受了影像学检查。其中38例患者每隔约12个月进行了两次或更多次影像学检查。所有测量均使用对比增强三维T1加权图像。一位经验丰富的放射科医生进行了标准大小估计,包括最大直径、椭圆面积、周长、手动分割面积、强度阈值化种子体积和手动分割体积。还使用了一种计算体积的方法,纳入贝叶斯概率统计以估计部分容积效应。手动分割体积作为基线标准测量值获得。使用一个计算机生成的模拟体,其具有脑组织、脑脊液和内听道前庭神经鞘瘤组织的强度和部分容积特征,以测量标准技术和贝叶斯部分容积分割的绝对准确性。
贝叶斯部分容积分割方法与标准方法显示出最高的相关性(R² = 0.994),而常用的最大直径测量方法显示出较差的相关性(R² = 0.732)。贝叶斯分割的准确性显示是手动分割的两倍多,绝对准确性为5%(相比之下为13%),重新测量准确性为70立方毫米(相比之下为150立方毫米)。对于38例接受两次影像学检查的患者,显示明确肿瘤生长的有12例,可能生长的有7例,无生长的有17例,明确缩小的有2例。
常用方法如最大直径测量不能提供足够的统计准确性来监测小前庭神经鞘瘤患者的肿瘤生长。贝叶斯部分容积分割提供了一种更准确、快速的体积和生长估计方法。这些测量准确性的差异转化为临床评估的显著改善,在使用手动分割技术时看似大小静止的12例病例中,有10例通过该技术能够识别出肿瘤生长。该技术执行快速,适用于常规临床实践。