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Classification of phosphorus magnetic resonance spectroscopic imaging of brain tumors using support vector machine and logistic regression at 3T

机译:脑肿瘤磷磁共振光谱成像的分类在3T时用肺部肿瘤和物流回归分类

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摘要

This study aims classification of phosphorus magnetic resonance spectroscopic imaging (P-MRSI) data of human brain tumors using machine-learning algorithms. The metabolite peak intensities and ratios were estimated for brain tumor and healthy P MR spectra acquired at 3T. The spectra were classified based on metabolite characteristics using logistic regression and support vector machine. This study showed that machine learning could be successfully applied for classification of P-MR spectra of brain tumors. Future studies will measure the performance of classification algorithms for P-MRSI of brain tumors in a larger patient cohort.
机译:本研究旨在使用机器学习算法对人脑肿瘤的磷磁共振光谱成像(P-MRSI)数据进行分类。 估计在3T中获得的脑肿瘤和健康P MR光谱估计代谢物峰值强度和比率。 基于使用Logistic回归和支持向量机的代谢物特性进行分类。 本研究表明,可以成功地应用机器学习以施加脑肿瘤的P-MR光谱的分类。 未来的研究将衡量较大患者队列中脑肿瘤P-MRSI分类算法的性能。

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