胶质瘤分级分化放射学特征的统计分析

Gokalp Cinarer, Bulent Gursel Emiroglu
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引用次数: 1

摘要

放射组学是一种重要的定量特征提取工具,广泛应用于图像处理和计算机辅助诊断等领域。本研究以放射学特征对脑癌分级(ⅱ级和ⅲ级)的可辨别性进行统计学分析。数据集包括121例患者,77例II级肿瘤患者和44例III级肿瘤患者。共提取了107个放射组特征,包括形态、一阶和纹理三组放射组特征。采用Spearman相关分析检验各组特征之间的关系。用Mann-Whitney U检验分析II级和III级肿瘤分类的差异。结果表明,放射组学特征可用于区分同一类别中评估的肿瘤水平的特征。这些结果表明,利用放射学特征进行脑癌分级检测可以帮助机器学习技术和放射学分析。关键词:放射组学,胶质瘤,图像处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical analysis of radiomic features in differentiation of glioma grades
Radiomics is an important quantitative feature extraction tool used in many areas such as image processing and computer-aided diagnosis. In this study, the discriminability of brain cancer tumour grades (Grade II and Grade III) with radiomic features were analysed statistically. The data set consists of 121 patients, 77 patients with Grade II tumours and 44 patients with Grade III tumours. A total of 107 radiomic features were extracted, including three groups of radiomic features such as morphological, first-order and texture. Relationships between the characteristics of each group were tested by Spearman’s correlation analysis. Differences between Grade II and Grade III tumour categories were analysed with Mann–Whitney U test. According to the results, it was seen that radiomic features can be used to differentiate the features of tumour levels evaluated in the same category. These results show that by employing radiomic features brain cancer grade detection can help machine learning technologies and radiological analysis.   Keywords: Radiomics, glioma, image processing.
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