Medical Imaging Center, The First Affiliated Hospital of Guangzhou University of Traditional Chinese Medicine, Guangzhou, Guangdong, 510405, People's Republic of China.
Department of Psychology, The Fourth Military Medical University, Xi'an, Shaanxi, 710032, People's Republic of China.
Cancer Imaging. 2019 Mar 25;19(1):19. doi: 10.1186/s40644-019-0203-y.
The purpose/aim of this study was to 1) use magnetic resonance diffusion tensor imaging (DTI), fibre bundle/tract-based spatial statistics (TBSS) and machine learning methods to study changes in the white matter (WM) structure and whole brain WM network in different periods of the nasopharyngeal carcinoma (NPC) patients after radiotherapy (RT), 2) identify the most discriminating WM regions and WM connections as biomarkers of radiation brain injury (RBI), and 3) supplement the understanding of the pathogenesis of RBI, which is useful for early diagnosis in the clinic.
A DTI scan was performed in 77 patients and 67 normal controls. A fractional anisotropy map was generated by DTIFit. TBSS was used to find the region where the FA differed between the case and control groups. Each resulting FA value image is registered with each other to create an average FA value skeleton. Each resultant FA skeleton image was connected to feature vectors, and features with significant differences were extracted and classified using a support vector machine (SVM). Next, brain segmentation was performed on each subject's DTI image using automated anatomical labeling (AAL), and deterministic white matter fiber bundle tracking was performed to generate symmetrical brain matrix, select the upper triangular component as a classification feature. Two-sample t-test was used to extract the features with significant differences, then classified by SVM. Finally, we adopted a permutation test and ROC curves to evaluate the reliability of the classifier.
For FA, the accuracy of classification between the 0-6, 6-12 and > 12 months post-RT groups and the control group was 84.5, 83.9 and 74.5%, respectively. In the case groups, the FA with discriminative ability was reduced, mainly in the bilateral cerebellum and bilateral temporal lobe, with prolonged time, the damage was aggravated. For WM connections, the SVM classifier classification recognition rates of the 0-6, 6-12 and > 12 months post-RT groups reached 82.5, 78.4 and 76.3%, respectively. The WM connections with discriminative ability were reduced.
RBI is a disease involving whole brain WM network anomalies. These brain discriminating WM regions and WM connection modes can supplement the understanding of RBI and be used as biomarkers for the early clinical diagnosis of RBI.
本研究旨在:1)使用磁共振扩散张量成像(DTI)、纤维束/束空间统计学(TBSS)和机器学习方法,研究鼻咽癌(NPC)患者放疗后不同时期的白质(WM)结构和全脑 WM 网络变化;2)确定最具鉴别力的 WM 区域和 WM 连接,作为辐射性脑损伤(RBI)的生物标志物;3)补充 RBI 发病机制的理解,这对临床早期诊断很有帮助。
对 77 例患者和 67 例正常对照进行 DTI 扫描。通过 DTIFit 生成各向异性分数(FA)图。采用 TBSS 方法寻找病例组与对照组 FA 差异的区域。将每个得到的 FA 值图像与其他图像进行配准,创建平均 FA 值骨架。将每个 FA 骨架图像连接到特征向量,使用支持向量机(SVM)提取具有显著差异的特征并进行分类。然后,对每个受试者的 DTI 图像进行自动解剖标记(AAL)的脑分割,采用确定性白质纤维束追踪生成对称脑矩阵,选择上三角组件作为分类特征。采用两样本 t 检验提取具有显著差异的特征,然后由 SVM 进行分类。最后,我们采用置换检验和 ROC 曲线来评估分类器的可靠性。
对于 FA,0-6、6-12 和>12 个月放疗后组与对照组的分类准确率分别为 84.5%、83.9%和 74.5%。在病例组中,具有判别能力的 FA 降低,主要在双侧小脑和双侧颞叶,随着时间的延长,损伤加重。对于 WM 连接,0-6、6-12 和>12 个月放疗后组 SVM 分类器的分类识别率分别达到 82.5%、78.4%和 76.3%。具有判别能力的 WM 连接减少。
RBI 是一种涉及全脑 WM 网络异常的疾病。这些具有判别力的 WM 区域和 WM 连接模式可以补充 RBI 的理解,并作为 RBI 早期临床诊断的生物标志物。