Wang S J, Zhang W, He J P, Sun W H, Zhang R, Zhu M J, Feng Z Z, Yang M, Sun Y
Department of Radiology, Children's Hospital of Nanjing Medical University, International Laboratory for Children's Medical Imaging Research Nanjing, Nanjing 210008, China.
Department of Neurosurgery, Children's Hospital of Nanjing Medical University, Nanjing 210008, China.
Zhonghua Yi Xue Za Zhi. 2020 Jan 21;100(3):178-181. doi: 10.3760/cma.j.issn.0376-2491.2020.03.004.
To evaluate the classification of the types of pediatric posterior fossa brain tumors based on routine MRI (T(1)WI, T(2)WI and ADC) using wavelet transformation analysis of whole tumor. MRI images of medulloblastoma (59), ependymoma (13) and pilocytic astrocytoma (27) confirmed by pathology before treatments in Children's Hospital of Nanjing Medical University from January 2014 to February 2019 were enrolled in this retrospective study as well as the clinical data of age, gender and symptoms. Registration was performed among the three sequences and wavelet features of ROI were acquired. Afterwards, the top ten features were ranked and trained among groups by using random forest classifier. Finally, the results were compared and analyzed according to the classification. The top ten contribution three sequences and wavelet features of ROI were acquired from the ADC sequence. The random forest classifier achieved 100% accuracy on training data and was validated best accuracy (86.8%) when combined of first and third wavelet features. The sensitivity was 100%, 94.8%, 76.9%, and the specificity was 97.6%, 88.0%, 98.8% respectively. Features based on wavelet transformation of ADC sequence of entire tumor can provide more quantitative information, which could provide help in the differential diagnosis of pediatric posterior fossa brain tumors. The optimum combination to distinguish three pediatric posterior fossa brain tumors is sixth and twelfth wavelet features of ADC sequence.
基于常规MRI(T(1)WI、T(2)WI和ADC)利用全肿瘤的小波变换分析来评估儿童后颅窝脑肿瘤的类型分类。收集了2014年1月至2019年2月在南京医科大学附属儿童医院接受治疗前经病理证实的髓母细胞瘤(59例)、室管膜瘤(13例)和毛细胞型星形细胞瘤(27例)的MRI图像以及年龄、性别和症状等临床数据。对三个序列进行配准并获取感兴趣区域(ROI)的小波特征。之后,利用随机森林分类器对组间的十大特征进行排序和训练。最后,根据分类结果进行比较和分析。从ADC序列中获取了ROI的十大贡献性三个序列和小波特征。随机森林分类器在训练数据上的准确率达到100%,当结合第一和第三小波特征时验证的最佳准确率为86.8%。敏感性分别为100%、94.8%、76.9%,特异性分别为97.6%、88.0%、98.8%。基于全肿瘤ADC序列小波变换的特征可提供更多定量信息,这有助于儿童后颅窝脑肿瘤的鉴别诊断。区分三种儿童后颅窝脑肿瘤的最佳组合是ADC序列的第六和第十二小波特征。