Litcius/Paper detail

Machine learning-based MRI radiomics predict IL18 expression and overall survival of low-grade glioma patients

Zhe Zhang, Yao Xiao, Jun Liu, Feng Xiao, Jie Zeng, Hong Zhu, Wei Tu, Hua Guo

2025npj Precision Oncology6 citationsDOIOpen Access PDF

Abstract

Interleukin-18 has broad immune regulatory functions. Genomic data and enhanced Magnetic Resonance Imaging data related to LGG patients were downloaded from The Cancer Genome Atlas and Cancer Imaging Archive, and the constructed model was externally validated using hospital MRI enhanced images and clinical pathological features. Radiomic feature extraction was performed using "PyRadiomics", feature selection was conducted using Maximum Relevance Minimum Redundancy and Recursive Feature Elimination methods, and a model was built using the Gradient Boosting Machine algorithm to predict the expression status of IL18. The constructed radiomics model achieved areas under the receiver operating characteristic curve of 0.861, 0.788, and 0.762 in the TCIA training dataset (n = 98), TCIA validation dataset (n = 41), and external validation dataset (n = 50). Calibration curves and decision curve analysis demonstrated the calibration and high clinical utility of the model. The radiomics model based on enhanced MRI can effectively predict the expression status of IL18 and the prognosis of LGG.

Topics & Concepts

RadiomicsArtificial intelligenceFeature selectionRadiogenomicsComputer scienceMagnetic resonance imagingReceiver operating characteristicPattern recognition (psychology)GliomaFeature extractionSupport vector machineMinimum redundancy feature selectionMachine learningData miningBiologyRadiologyMedicineCancer researchRadiomics and Machine Learning in Medical ImagingCancer Immunotherapy and BiomarkersFerroptosis and cancer prognosis