机构:[a]Beijing Neurosurgical Institute, Capital Medical University, Beijing, China研究所北京市神经外科研究所首都医科大学附属天坛医院[b]Chinese Academy of Sciences, Institute of Automation, Beijing, China[c]Department of Neuroradiology, Beijing Tiantan Hospital, Capital Medical University, Beijing, China重点科室医技科室放射科放射科首都医科大学附属天坛医院[d]Neurological Imaging Center, Beijing Neurosurgical Institute, Capital Medical University, Beijing, China重点科室诊疗科室研究所神经病学中心神经病学中心北京市神经外科研究所首都医科大学附属天坛医院[e]Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing, China重点科室诊疗科室神经外科神经外科首都医科大学附属天坛医院[f]Center of Brain Tumor, Beijing Institute for Brain Disorders, Beijing, China[g]China National Clinical Research Center for Neurological Diseases, Beijing, China
Background: P53 mutation status is a pivotal biomarker for gliomas. Here, we developed a machine-learning model to predict p53 status in lower-grade gliomas based on radiomic features extracted from conventional magnetic resonance (MR) images. Methods: Preoperative MR images were retrospectively obtained from 272 patients with primary grade II/III gliomas. The patients were randomly allocated in a 2: 1 ratio to a training (n =180) or validation (n=92) set. A total of 431 radiomic features were extracted from each patient. The lest absolute shrinkage and selection operator (LASSO) method was used for feature selection and radiomic signature construction. Subsequently, a machine-learning model to predict p53 status was established using the selected features and a Support Vector Machine classifier. The predictive performance of all individual features and the model was calculated using receiver operating characteristic curves in both the training and validation sets. Results: The p53-related radiomic signature was built using the LASSO algorithm; this procedure consisted of four first-order statistics or related wavelet features (including Maximum, Median, Minimum, and Uniformity), a shape and size-based feature (Spherical Disproportion), and ten textural features or related wavelet features (including Correlation, Run Percentage, and Sum Entropy). The prediction accuracies based on the area under the curve were 89.6% in the training set and 76.3% in the validation set, which were better than individual features. Conclusions: These results demonstrate that MR image texture features are predictive of p53 mutation status in lower-grade gliomas. Thus, our procedure can be conveniently used to facilitate presurgical molecular pathological diagnosis.
基金:
National Natural Science Foundation of ChinaNational Natural Science Foundation of China [81601452]; Beijing Natural Science FoundationBeijing Natural Science Foundation [7174295]; National Key Research and Development Plan [2016YFC0902500]; Capital Medical Development Research Fund [2016-1-1072]; Beijing Municipal Administration of Hospitals Clinical Medicine Development of Special Funding Support [ZYLX201708]
第一作者机构:[a]Beijing Neurosurgical Institute, Capital Medical University, Beijing, China
共同第一作者:
通讯作者:
通讯机构:[a]Beijing Neurosurgical Institute, Capital Medical University, Beijing, China[e]Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing, China[f]Center of Brain Tumor, Beijing Institute for Brain Disorders, Beijing, China[g]China National Clinical Research Center for Neurological Diseases, Beijing, China[*1]Beijing Neurosurgical Institute, Capital Medical University, 6 Tiantanxili, Beijing 100050, China[*2]Beijing Neurosurgical Institute, Capital Medical University, 6 Tiantanxili, Beijing 100050, China[*3]Beijing Tiantan Hospital, Department of Neurosurgery, 6 Tiantanxili, Beijing 100050, China.
推荐引用方式(GB/T 7714):
Li Yiming,Qian Zenghui,Xu Kaibin,et al.MRI features predict p53 status in lower-grade gliomas via a machine-learning approach[J].NEUROIMAGE-CLINICAL.2018,17:306-311.doi:10.1016/j.nicl.2017.10.030.
APA:
Li, Yiming,Qian, Zenghui,Xu, Kaibin,Wang, Kai,Fan, Xing...&Wang, Yinyan.(2018).MRI features predict p53 status in lower-grade gliomas via a machine-learning approach.NEUROIMAGE-CLINICAL,17,
MLA:
Li, Yiming,et al."MRI features predict p53 status in lower-grade gliomas via a machine-learning approach".NEUROIMAGE-CLINICAL 17.(2018):306-311