个人信息Personal Information
教授
教师英文名称:DOU Weibei
教师拼音名称:douweibei
办公地点:清华大学罗姆楼4-102
联系方式:Email: douwb@tsinghua.edu.cn; Tel: 010-62781703
学位:博士学位
毕业院校:电子科技大学学士、法国雷恩大学硕士、法国卡昂大学博士
Convex-Envelope Based Automated Quantitative Approach to Multi-Voxel H-1-MRS Applied to Brain Tumor Analysis
点击次数:
影响因子:3.24
DOI码:10.1371/journal.pone.0137850
发表刊物:PLOS ONE
刊物所在地:UNITED STATES
关键字:MAGNETIC-RESONANCE-SPECTROSCOPYPROTON MR SPECTROSCOPYCEREBRAL GLIOMA GRADENONINVASIVE EVALUATIONPREDICTIVE VALUESDIFFUSIONTIMEQUANTIFICATIONSPECIFICITYSENSITIVITY
摘要:Background Magnetic Resonance Spectroscopy (MRS) can measure in vivo brain tissue metabolism that exhibits unique biochemical characteristics in brain tumors. For clinical application, an efficient and versatile quantification method of MRS would be an important tool for medical research, particularly for exploring the scientific problem of tumor monitoring. The objective of our study is to propose an automated MRS quantitative approach and assess the feasibility of this approach for glioma grading, prognosis and boundary detection. Methods An automated quantitative approach based on a convex envelope (AQoCE) is proposed in this paper, including preprocessing, convex-envelope based baseline fitting, bias correction, sectional baseline removal, and peak detection, in a total of 5 steps. Some metabolic ratios acquired by this quantification are selected for statistical analysis. An independent sample t-test and the Kruskal-Wallis test are used for distinguishing low-grade gliomas (LGG) and high-grade gliomas (HGG) and for detecting the tumor, peritumoral and contralateral areas, respectively. Seventy-eight cases of pre-operative brain gliomas with pathological reports are included in this study. Results Cho/NAA, Cho/Cr and Lip-Lac/Cr (LL/Cr) calculated by AQoCE in the tumor area differ significantly between LGG and HGG, with p <= 0.005. Using logistic regression combining Cho/NAA, Cho/Cr and LL/Cr to generate a ROC curve, AQoCE achieves a sensitivity of 92.9%, a specificity of 72.2%, and an area under ROC curve (AUC) of 0.860. Moreover, both Cho/NAA and Cho/Cr in the AQoCE approach show a significant difference (p <= 0.019) between tumoral, peritumoral, and contralateral areas. The comparison between the results of AQoCE and Siemens MRS processing software are also discussed in this paper. Conclusions The AQoCE approach is an automated method of residual water removal and metabolite quantification. It can be applied to multi-voxel H-1-MRS for evaluating brain glioma grading and demonstrating characteristics of brain glioma metabolism. It can also detect infiltration in the peritumoral area. Under the limited clinical data used, AQoCE is significantly more versatile and efficient compared to the reference approach of Siemens.
合写作者:Mingyu Zhang, Xiaojie Zhang, Yuan Li, Hongyan chen, Shaowu Li, Min Lu, Jianping Dai, Jean-Marc Constans,冯雪,Boxun Li,汪玉,崔开宇,刘仿, Weibei Dou,黄翊东
第一作者:Weibei Dou,Hong Zhang
论文类型:期刊论文
通讯作者:Weibei Dou,冯雪
卷号:10
期号:9
ISSN号:1932-6203
是否译文:否
发表时间:2015-09-14