Automated Prediction Of TNM Stage For Clear Cell Renal Cell Carcinoma Disease By Analyzing CT Images of Primary Tumors

Harika Beste Ökmen, H. Uysal, A. Guvenis
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引用次数: 2

Abstract

TNM Staging is important for prognosis, treatment planning and research of Clear Cell Renal Cell Carcinoma (CCRCC). The goal of this study was to investigate if CT images alone can be used to predict stages. Overall 191 patient data (TCGA-KIRC) were used and the number of images for stages one to four was 92, 19, 50 and 30 respectively. Tumors were manually defined by an expert radiologist on single slices. Open-source software was used to extract 136 features from ROI. Normalization and data balancing were performed. The feature number was reduced to 10 after the feature selection process. Classification accuracy was found 85.4% (KNN with random space model). Accuracies were distributed among stages 1-4 as 79%, 92%, 84%, 91%. CT images can be potentially used to automatically predict the TNM stage of CCRCC patients. A higher number of CT images with standard acquisition protocols may further increase accuracy.
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通过分析原发肿瘤CT图像自动预测透明细胞肾细胞癌TNM分期
TNM分期对透明细胞肾细胞癌(CCRCC)的预后、治疗计划和研究具有重要意义。本研究的目的是探讨CT图像是否可以单独用于预测分期。总共使用了191例患者数据(TCGA-KIRC), 1至4期的图像数量分别为92、19、50和30。肿瘤由放射科专家在单张切片上手动定义。利用开源软件提取ROI中的136个特征。进行归一化和数据平衡。经过特征选择后,特征数量减少到10个。分类准确率85.4%(随机空间KNN模型)。1 ~ 4期的准确率分别为79%、92%、84%、91%。CT图像有可能用于自动预测CCRCC患者的TNM分期。采用标准采集方案的更多CT图像可以进一步提高准确性。
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