Litcius/Paper detail

Integrated radiomics, dose-volume histogram criteria and clinical features for early prediction of saliva amount reduction after radiotherapy in nasopharyngeal cancer patients

Lang Zhou, Wanjia Zheng, Sijuan Huang, Xin Yang

2022Discover Oncology12 citationsDOIOpen Access PDF

Abstract

PURPOSE: Previously, the evaluation of xerostomia depended on subjective grading systems, rather than the accurate saliva amount reduction. Our aim was to quantify acute xerostomia with reduced saliva amount, and apply radiomics, dose-volume histogram (DVH) criteria and clinical features to predict saliva amount reduction by machine learning techniques. MATERIAL AND METHODS: Computed tomography (CT) of parotid glands, DVH, and clinical data of 52 patients were collected to extract radiomics, DVH criteria and clinical features, respectively. Firstly, radiomics, DVH criteria and clinical features were divided into 3 groups for feature selection, in order to alleviate the masking effect of the number of features in different groups. Secondly, the top features in the 3 groups composed integrated features, and features selection was performed again for integrated features. In this study, feature selection was used as a combination of eXtreme Gradient Boosting (XGBoost) and SHapley Additive exPlanations (SHAP) to alleviate multicollinearity. Finally, 6 machine learning techniques were used for predicting saliva amount reduction. Meanwhile, top radiomics features were modeled using the same machine learning techniques for comparison. RESULT: score of 0.9805, 0.9801, respectively. CONCLUSION: With the same number of features, integrated features (radiomics + DVH criteria + clinical) performed better than radiomics features alone. The important DVH criteria and clinical features mainly included, white blood cells (WBC), parotid_glands_Dmax, Age, parotid_glands_V15, hemoglobin (Hb), BMI and parotid_glands_V45.

Topics & Concepts

Radiation therapyMedicineNasopharyngeal cancerRadiomicsCancerDose-volume histogramSalivaHistogramReduction (mathematics)RadiologyNuclear medicineInternal medicineRadiation treatment planningArtificial intelligenceNasopharyngeal carcinomaMathematicsComputer scienceGeometryImage (mathematics)Salivary Gland Disorders and FunctionsRadiomics and Machine Learning in Medical ImagingHead and Neck Cancer Studies