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基于 3T 多参数磁共振成像的脑胶质瘤分级中的机器学习。

Machine-learning in grading of gliomas based on multi-parametric magnetic resonance imaging at 3T.

机构信息

Department of Computer Programming, Pîrî Reis University, Istanbul, Turkey; Department of Biotechnology, Yeditepe University, Istanbul, Turkey.

Department of Radiology, Yeditepe University Hospital, Istanbul, Turkey.

出版信息

Comput Biol Med. 2018 Aug 1;99:154-160. doi: 10.1016/j.compbiomed.2018.06.009. Epub 2018 Jun 15.

Abstract

OBJECTIVE

The objective of this study was to assess the contribution of multi-parametric (mp) magnetic resonance imaging (MRI) quantitative features in the machine learning-based grading of gliomas with a multi-region-of-interests approach.

MATERIALS AND METHODS

Forty-three patients who were newly diagnosed as having a glioma were included in this study. The patients were scanned prior to any therapy using a standard brain tumor magnetic resonance (MR) imaging protocol that included T1 and T2-weighted, diffusion-weighted, diffusion tensor, MR perfusion and MR spectroscopic imaging. Three different regions-of-interest were drawn for each subject to encompass tumor, immediate tumor periphery, and distant peritumoral edema/normal. The normalized mp-MRI features were used to build machine-learning models for differentiating low-grade gliomas (WHO grades I and II) from high grades (WHO grades III and IV). In order to assess the contribution of regional mp-MRI quantitative features to the classification models, a support vector machine-based recursive feature elimination method was applied prior to classification.

RESULTS

A machine-learning model based on support vector machine algorithm with linear kernel achieved an accuracy of 93.0%, a specificity of 86.7%, and a sensitivity of 96.4% for the grading of gliomas using ten-fold cross validation based on the proposed subset of the mp-MRI features.

CONCLUSION

In this study, machine-learning based on multiregional and multi-parametric MRI data has proven to be an important tool in grading glial tumors accurately even in this limited patient population. Future studies are needed to investigate the use of machine learning algorithms for brain tumor classification in a larger patient cohort.

摘要

目的

本研究旨在评估多参数(mp)磁共振成像(MRI)定量特征在基于机器学习的多感兴趣区方法对胶质瘤分级中的作用。

材料与方法

本研究纳入了 43 名新诊断为脑胶质瘤的患者。所有患者在接受任何治疗前,均采用标准脑肿瘤磁共振成像(MR)扫描方案进行扫描,包括 T1 和 T2 加权、弥散加权、弥散张量、MR 灌注和 MR 波谱成像。每位患者的三个不同感兴趣区(ROI)分别涵盖肿瘤、肿瘤紧邻区和远离肿瘤的水肿/正常区。使用归一化的 mp-MRI 特征构建机器学习模型,以区分低级别胶质瘤(WHO 分级 I 和 II)和高级别胶质瘤(WHO 分级 III 和 IV)。为了评估区域 mp-MRI 定量特征对分类模型的贡献,在分类之前应用基于支持向量机的递归特征消除方法。

结果

基于支持向量机算法和线性核的机器学习模型,通过十折交叉验证,对基于所提出的 mp-MRI 特征子集的胶质瘤分级,其准确率为 93.0%,特异性为 86.7%,敏感性为 96.4%。

结论

在本研究中,基于多区域和多参数 MRI 数据的机器学习已被证明是一种准确分级胶质肿瘤的重要工具,即使在这个有限的患者人群中也是如此。未来的研究需要探讨机器学习算法在更大的患者队列中用于脑肿瘤分类的应用。

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