利用MRI放射学特征对脑肿瘤进行分类

Gokalp Cinarer, Bulent Gursel Emiroglu
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引用次数: 3

摘要

胶质瘤是现有脑肿瘤诊断中最常见的脑肿瘤之一。胶质瘤分级是脑肿瘤治疗中需要了解的重要因素。本研究分析了胶质瘤的放射学特征,并采用高斯朴素贝叶斯算法对胶质瘤分级进行了分类。本文对121例II级和III级胶质瘤患者进行了检查。使用Grow Cut算法对胶质瘤进行分割,使用3D Slicer程序获得肿瘤磁共振成像图像的三维特征。用Spearman检验和Mann-Whitney U检验对得到的定量值进行统计分析,从107个特征中选出21个具有统计显著性的特征。结果表明,在所有算法中,高斯朴素贝叶斯算法的准确率最高,达到80%。机器学习和特征选择技术可以用于胶质瘤的分析以及胶质瘤分级过程中的病理评估。关键词:放射组学,胶质瘤,朴素贝叶斯。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of brain tumours using radiomic features on MRI
Glioma is one of the most common brain tumours among the diagnoses of existing brain tumours. Glioma grades are important factors that should be known in the treatment of brain tumours. In this study, the radiomic features of gliomas were analysed and glioma grades were classified by Gaussian Naive Bayes algorithm. Glioma tumours of 121 patients of Grade II and Grade III were examined. The glioma tumours were segmented with the Grow Cut Algorithm and the 3D feature of tumour magnetic resonance imaging images were obtained with the 3D Slicer programme. The obtained quantitative values were statistically analysed with Spearman and Mann–Whitney U tests and 21 features with statistically significant properties were selected from 107 features. The results showed that the best performing among the algorithms was Gaussian Naive Bayes algorithm with 80% accuracy. Machine learning and feature selection techniques can be used in the analysis of gliomas as well as pathological evaluations in glioma grading processes.   Keywords: Radiomics, glioma, naive bayes.
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