Improving the noninvasive classification of glioma genetic subtype with deep learning and diffusion-weighted imaging
Autor: | Cluceru, Julia, Interian, Yannet, Phillips, Joanna J, Molinaro, Annette M, Luks, Tracy L, Alcaide-Leon, Paula, Olson, Marram P, Nair, Devika, LaFontaine, Marisa, Shai, Anny, Chunduru, Pranathi, Pedoia, Valentina, Villanueva-Meyer, Javier E, Chang, Susan M, Lupo, Janine M |
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Rok vydání: | 2022 |
Předmět: |
glioma subtype
screening and diagnosis Brain Neoplasms diffusion-weighted imaging Oncology and Carcinogenesis Neurosciences convolutional neural network deep learning Glioma Magnetic Resonance Imaging Isocitrate Dehydrogenase Brain Disorders Brain Cancer Detection Diffusion Magnetic Resonance Imaging Deep Learning Rare Diseases ADC Clinical Research Mutation Humans Biomedical Imaging Oncology & Carcinogenesis Cancer 4.2 Evaluation of markers and technologies |
Zdroj: | Neuro-oncology, vol 24, iss 4 |
Popis: | BackgroundDiagnostic classification of diffuse gliomas now requires an assessment of molecular features, often including IDH-mutation and 1p19q-codeletion status. Because genetic testing requires an invasive process, an alternative noninvasive approach is attractive, particularly if resection is not recommended. The goal of this study was to evaluate the effects of training strategy and incorporation of biologically relevant images on predicting genetic subtypes with deep learning.MethodsOur dataset consisted of 384 patients with newly diagnosed gliomas who underwent preoperative MRI with standard anatomical and diffusion-weighted imaging, and 147 patients from an external cohort with anatomical imaging. Using tissue samples acquired during surgery, each glioma was classified into IDH-wildtype (IDHwt), IDH-mutant/1p19q-noncodeleted (IDHmut-intact), and IDH-mutant/1p19q-codeleted (IDHmut-codel) subgroups. After optimizing training parameters, top performing convolutional neural network (CNN) classifiers were trained, validated, and tested using combinations of anatomical and diffusion MRI with either a 3-class or tiered structure. Generalization to an external cohort was assessed using anatomical imaging models.ResultsThe best model used a 3-class CNN containing diffusion-weighted imaging as an input, achieving 85.7% (95% CI: [77.1, 100]) overall test accuracy and correctly classifying 95.2%, 88.9%, 60.0% of the IDHwt, IDHmut-intact, and IDHmut-codel tumors. In general, 3-class models outperformed tiered approaches by 13.5%-17.5%, and models that included diffusion-weighted imaging were 5%-8.8% more accurate than those that used only anatomical imaging.ConclusionTraining a classifier to predict both IDH-mutation and 1p19q-codeletion status outperformed a tiered structure that first predicted IDH-mutation, then 1p19q-codeletion. Including apparent diffusion coefficient (ADC), a surrogate marker of cellularity, more accurately captured differences between subgroups. |
Databáze: | OpenAIRE |
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