Cerebral Glioma Grading Using Bayesian Network with Features Extracted from Multiple Modalities of Magnetic Resonance Imaging

Jisu Hu(Southeast University), Wenbo Wu(Nanjing Drum Tower Hospital), Bin Zhu(Nanjing Drum Tower Hospital), Hui-Ting Wang(Nanjing Drum Tower Hospital), Renyuan Liu(Nanjing Drum Tower Hospital), Xin Zhang(Nanjing Drum Tower Hospital), Ming Li(Nanjing Drum Tower Hospital), Yongbo Yang(Nanjing Drum Tower Hospital), Jing Yan(Nanjing Drum Tower Hospital), Fengnan Niu(Nanjing Drum Tower Hospital), Chuanshuai Tian(Nanjing Drum Tower Hospital), Kun Wang(Nanjing Drum Tower Hospital), Haiping Yu(Nanjing Drum Tower Hospital), Weibo Chen(Philips (China)), Suiren Wan(Southeast University), Yu Sun(Southeast University), Bing Zhang(Nanjing Drum Tower Hospital)
PLoS ONE
April 14, 2016
Cited by 125Open Access
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Abstract

Many modalities of magnetic resonance imaging (MRI) have been confirmed to be of great diagnostic value in glioma grading. Contrast enhanced T1-weighted imaging allows the recognition of blood-brain barrier breakdown. Perfusion weighted imaging and MR spectroscopic imaging enable the quantitative measurement of perfusion parameters and metabolic alterations respectively. These modalities can potentially improve the grading process in glioma if combined properly. In this study, Bayesian Network, which is a powerful and flexible method for probabilistic analysis under uncertainty, is used to combine features extracted from contrast enhanced T1-weighted imaging, perfusion weighted imaging and MR spectroscopic imaging. The networks were constructed using K2 algorithm along with manual determination and distribution parameters learned using maximum likelihood estimation. The grading performance was evaluated in a leave-one-out analysis, achieving an overall grading accuracy of 92.86% and an area under the curve of 0.9577 in the receiver operating characteristic analysis given all available features observed in the total 56 patients. Results and discussions show that Bayesian Network is promising in combining features from multiple modalities of MRI for improved grading performance.


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