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Improving CT prediction of treatment response in patients with metastatic colorectal carcinoma using statistical learning theory

机译:运用统计学习理论改善转移性大肠癌患者治疗反应的CT预测

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BackgroundSignificant interest exists in establishing radiologic imaging as a valid biomarker for assessing the response of cancer to a variety of treatments. To address this problem, we have chosen to study patients with metastatic colorectal carcinoma to learn whether statistical learning theory can improve the performance of radiologists using CT in predicting patient treatment response to therapy compared with the more traditional RECIST (Response Evaluation Criteria in Solid Tumors) standard.ResultsPredictions of survival after 8 months in 38 patients with metastatic colorectal carcinoma using the Support Vector Machine (SVM) technique improved 30% when using additional information compared to WHO (World Health Organization) or RECIST measurements alone. With both Logistic Regression (LR) and SVM, there was no significant difference in performance between WHO and RECIST. The SVM and LR techniques also demonstrated that one radiologist consistently outperformed another.ConclusionsThis preliminary research study has demonstrated that SLT algorithms, properly used in a clinical setting, have the potential to address questions and criticisms associated with both RECIST and WHO scoring methods. We also propose that tumor heterogeneity, shape, etc. obtained from CT and/or MRI scans be added to the SLT feature vector for processing.
机译:背景技术建立放射成像作为评估癌症对多种治疗反应的有效生物标记物存在着极大的兴趣。为了解决这个问题,我们选择研究转移性结直肠癌患者,以了解统计学学习理论是否可以比更传统的RECIST(实体肿瘤反应评估标准)提高使用CT预测放射治疗的放射科医生的表现结果:与单独的WHO(世界卫生组织)或RECIST测量相比,使用支持向量机(SVM)技术对38例转移性结直肠癌患者8个月后的存活率预测提高了30%。使用Logistic回归(LR)和SVM时,WHO和RECIST之间的表现没有显着差异。 SVM和LR技术还证明了一位放射线医师始终胜过另一位放射线医师。我们还建议将从CT和/或MRI扫描获得的肿瘤异质性,形状等添加到SLT特征向量中进行处理。

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