학술논문

Differentiating IDH status in human gliomas using machine learning and multiparametric MR/PET
Document Type
article
Source
Cancer Imaging. 21(1)
Subject
Biomedical and Clinical Sciences
Oncology and Carcinogenesis
Cancer
Brain Disorders
Biomedical Imaging
Clinical Research
Rare Diseases
Neurosciences
Machine Learning and Artificial Intelligence
Brain Neoplasms
Female
Glioma
Humans
Isocitrate Dehydrogenase
Machine Learning
Magnetic Resonance Imaging
Male
Middle Aged
Positron-Emission Tomography
Retrospective Studies
Machine learning
F-18-DOPA PET
MRI
IDH mutation
Clustering
Diffuse glioma
18F-DOPA PET
Nuclear Medicine & Medical Imaging
Clinical sciences
Oncology and carcinogenesis
Language
Abstract
BackgroundThe purpose of this study was to develop a voxel-wise clustering method of multiparametric magnetic resonance imaging (MRI) and 3,4-dihydroxy-6-[18F]-fluoro-L-phenylalanine (FDOPA) positron emission tomography (PET) images using an unsupervised, two-level clustering approach followed by support vector machine in order to classify the isocitrate dehydrogenase (IDH) status of gliomas.MethodsSixty-two treatment-naïve glioma patients who underwent FDOPA PET and MRI were retrospectively included. Contrast enhanced T1-weighted images, T2-weighted images, fluid-attenuated inversion recovery images, apparent diffusion coefficient maps, and relative cerebral blood volume maps, and FDOPA PET images were used for voxel-wise feature extraction. An unsupervised two-level clustering approach, including a self-organizing map followed by the K-means algorithm was used, and each class label was applied to the original images. The logarithmic ratio of labels in each class within tumor regions was applied to a support vector machine to differentiate IDH mutation status. The area under the curve (AUC) of receiver operating characteristic curves, accuracy, and F1-socore were calculated and used as metrics for performance.ResultsThe associations of multiparametric imaging values in each cluster were successfully visualized. Multiparametric images with 16-class clustering revealed the highest classification performance to differentiate IDH status with the AUC, accuracy, and F1-score of 0.81, 0.76, and 0.76, respectively.ConclusionsMachine learning using an unsupervised two-level clustering approach followed by a support vector machine classified the IDH mutation status of gliomas, and visualized voxel-wise features from multiparametric MRI and FDOPA PET images. Unsupervised clustered features may improve the understanding of prioritizing multiparametric imaging for classifying IDH status.