Paper
16 February 2022 Deep learning radiomics model based on contrast-enhanced T1-weighted image multi-plane reconstruction for prediction of glioma grading
Author Affiliations +
Proceedings Volume 12083, Thirteenth International Conference on Graphics and Image Processing (ICGIP 2021); 120831H (2022) https://doi.org/10.1117/12.2623421
Event: Thirteenth International Conference on Graphics and Image Processing (ICGIP 2021), 2021, Kunming, China
Abstract
The survival time of high-grade and low-grade gliomas is different, so it is very important to accurately identify the grade of gliomas and develop personalized treatment plans for patients. We aim to non-invasively differentiate glioma grades based on the deep learning radiology (DLR) model of multiplanar reconstruction of contrast-enhanced T1-weighted (CE-T1W) images. First, we included 122 and 52 patients with gliomas diagnosed by pathology in the two institutions, respectively, and made sure that these cases had MPR axial, coronal, and sagittal CE-T1W images. Then, we extract the radiomics features from CE-T1W images and the deep learning features of the VGG6 pre-training model respectively. Spearman and recursive feature elimination (RFE) feature selection methods are used to select important features, and support vector machine (SVM) and logical regression (LR) modeling are used to distinguish high-grade and low-grade gliomas. Finally, the area under receiver operating curve (AUC), sensitivity, specificity, and accuracy were evaluated in an independent test set. In SVM and LR models that use radiomics features, the result of the MPR three-phase merge model is better than that of the MPR single-phase model. In LR, the merged model of deep learning and radiomics is better than the model of using both alone. Therefore, the CE-T1W image MPR three-phase merge feature is superior to the singlephase feature in differentiating high-grade and low-grade gliomas. The model combined with radiomics features and deep learning features can improve the prediction accuracy of glioma grading.
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jialin Ding, Rubin Zhao, Qingtao Qiu, Jinhu Chen, Jinghao Duan, Xiujuan Cao, and Yong Yin "Deep learning radiomics model based on contrast-enhanced T1-weighted image multi-plane reconstruction for prediction of glioma grading", Proc. SPIE 12083, Thirteenth International Conference on Graphics and Image Processing (ICGIP 2021), 120831H (16 February 2022); https://doi.org/10.1117/12.2623421
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KEYWORDS
Lawrencium

Tumors

Magnetism

Cancer

Feature selection

Convolution

Image segmentation

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