Meier Raphael, Knecht Urspeter, Loosli Tina, Bauer Stefan, Slotboom Johannes, Wiest Roland, Reyes Mauricio
Institute for Surgical Technology &Biomechanics, University of Bern, Bern, Switzerland.
Support Center for Advanced Neuroimaging - Institute for Diagnostic and Interventional Neuroradiology, University Hospital and University of Bern, Bern, Switzerland.
Sci Rep. 2016 Mar 22;6:23376. doi: 10.1038/srep23376.
Information about the size of a tumor and its temporal evolution is needed for diagnosis as well as treatment of brain tumor patients. The aim of the study was to investigate the potential of a fully-automatic segmentation method, called BraTumIA, for longitudinal brain tumor volumetry by comparing the automatically estimated volumes with ground truth data acquired via manual segmentation. Longitudinal Magnetic Resonance (MR) Imaging data of 14 patients with newly diagnosed glioblastoma encompassing 64 MR acquisitions, ranging from preoperative up to 12 month follow-up images, was analysed. Manual segmentation was performed by two human raters. Strong correlations (R = 0.83-0.96, p < 0.001) were observed between volumetric estimates of BraTumIA and of each of the human raters for the contrast-enhancing (CET) and non-enhancing T2-hyperintense tumor compartments (NCE-T2). A quantitative analysis of the inter-rater disagreement showed that the disagreement between BraTumIA and each of the human raters was comparable to the disagreement between the human raters. In summary, BraTumIA generated volumetric trend curves of contrast-enhancing and non-enhancing T2-hyperintense tumor compartments comparable to estimates of human raters. These findings suggest the potential of automated longitudinal tumor segmentation to substitute manual volumetric follow-up of contrast-enhancing and non-enhancing T2-hyperintense tumor compartments.
对于脑肿瘤患者的诊断和治疗,需要有关肿瘤大小及其时间演变的信息。本研究的目的是通过将自动估计的体积与通过手动分割获取的真实数据进行比较,研究一种名为BraTumIA的全自动分割方法在纵向脑肿瘤体积测量中的潜力。分析了14例新诊断胶质母细胞瘤患者的纵向磁共振(MR)成像数据,包括64次MR采集,范围从术前到12个月的随访图像。由两名人类评估者进行手动分割。在BraTumIA与每位人类评估者对增强(CET)和非增强T2高信号肿瘤区域(NCE-T2)的体积估计之间观察到强相关性(R = 0.83 - 0.96,p < 0.001)。对评估者间差异的定量分析表明,BraTumIA与每位人类评估者之间的差异与人类评估者之间的差异相当。总之,BraTumIA生成的增强和非增强T2高信号肿瘤区域的体积趋势曲线与人类评估者的估计相当。这些发现表明自动纵向肿瘤分割有潜力替代增强和非增强T2高信号肿瘤区域的手动体积随访。