Tumor grade-titude: XGBoost radiomics paves the way for RCC classification

IF 3.2 3区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Stephan Ellmann , Felicitas von Rohr , Selim Komina , Nadine Bayerl , Kerstin Amann , Iris Polifka , Arndt Hartmann , Danijel Sikic , Bernd Wullich , Michael Uder , Tobias Bäuerle
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引用次数: 0

Abstract

This study aimed to develop and evaluate a non-invasive XGBoost-based machine learning model using radiomic features extracted from pre-treatment CT images to differentiate grade 4 renal cell carcinoma (RCC) from lower-grade tumours. A total of 102 RCC patients who underwent contrast-enhanced CT scans were included in the analysis. Radiomic features were extracted, and a two-step feature selection methodology was applied to identify the most relevant features for classification. The XGBoost model demonstrated high performance in both training (AUC = 0.87) and testing (AUC = 0.92) sets, with no significant difference between the two (p = 0.521). The model also exhibited high sensitivity, specificity, positive predictive value, and negative predictive value. The selected radiomic features captured both the distribution of intensity values and spatial relationships, which may provide valuable insights for personalized treatment decision-making. Our findings suggest that the XGBoost model has the potential to be integrated into clinical workflows to facilitate personalized adjuvant immunotherapy decision-making, ultimately improving patient outcomes. Further research is needed to validate the model in larger, multicentre cohorts and explore the potential of combining radiomic features with other clinical and molecular data.
肿瘤分级:XGBoost放射组学为RCC分类铺平了道路
本研究旨在开发和评估基于xgboost的非侵入性机器学习模型,该模型使用从预处理CT图像中提取的放射学特征来区分4级肾细胞癌(RCC)和低级别肿瘤。共有102名接受CT增强扫描的RCC患者被纳入分析。提取放射学特征,采用两步特征选择方法识别最相关的特征进行分类。XGBoost模型在训练集(AUC = 0.87)和测试集(AUC = 0.92)上均表现出较高的性能,两者之间无显著差异(p = 0.521)。该模型具有较高的敏感性、特异性、阳性预测值和阴性预测值。所选择的放射学特征捕获了强度值的分布和空间关系,这可能为个性化治疗决策提供有价值的见解。我们的研究结果表明,XGBoost模型有潜力整合到临床工作流程中,以促进个性化辅助免疫治疗决策,最终改善患者的预后。进一步的研究需要在更大的、多中心的队列中验证该模型,并探索将放射学特征与其他临床和分子数据相结合的潜力。
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来源期刊
CiteScore
6.70
自引率
3.00%
发文量
398
审稿时长
42 days
期刊介绍: European Journal of Radiology is an international journal which aims to communicate to its readers, state-of-the-art information on imaging developments in the form of high quality original research articles and timely reviews on current developments in the field. Its audience includes clinicians at all levels of training including radiology trainees, newly qualified imaging specialists and the experienced radiologist. Its aim is to inform efficient, appropriate and evidence-based imaging practice to the benefit of patients worldwide.
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