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Abstract #3780

Radiomics Features on Magnetic Resonance Images Can Predict C5aR1 Expression Levels and Prognosis in High-Grade Glioma.

Zijun Wu1, Yuan Yang1, and Yunfei Zha1
1Department of Radiology, Renmin Hospital of Wuhan University, Wuhan, China

Synopsis

Keywords: Diagnosis/Prediction, Radiomics, C5aR1; high-grade glioma; MRI; prognosis; biomarker

Motivation: High-grade glioma is a complex disease characterized by genome instability caused by the accumulation of genetic alterations. Identifying and evaluating the oncogenes involved is crucial for determining treatment strategies and evaluating prognosis.

Goal(s): We sought to explore whether radiomics models based on MRI features can noninvasively predict C5aR1 expression and the prognosis of patients with high-grade glioma.

Approach: This study uses machine learning approaches based on paired MRI and RNA sequencing data.

Results: The radiomics models yield satisfactory performances in predicting C5aR1 expression. Our findings also reveal associations between MRI radiomics and immune-related features.

Impact: As an effective and reproducible tool, our radiomics model may support clinical decision making and individualized treatment.

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Keywords