中国物理B ›› 2015, Vol. 24 ›› Issue (12): 128711-128711.doi: 10.1088/1674-1056/24/12/128711
• INTERDISCIPLINARY PHYSICS AND RELATED AREAS OF SCIENCE AND TECHNOLOGY • 上一篇 下一篇
余绍德a b, 伍世宾a b, 王浩宇c, 魏新华d, 陈鑫d, 潘万龙e, Hu Jianif, 谢耀钦a
Yu Shao-De (余绍德)a b, Wu Shi-Bin (伍世宾)a b, Wang Hao-Yu (王浩宇)c, Wei Xin-Hua (魏新华)d, Chen Xin (陈鑫)d, Pan Wan-Long (潘万龙)e, Hu Jianif, Xie Yao-Qin (谢耀钦)a
摘要: Similarity coefficient mapping (SCM) aims to improve the morphological evaluation of T2* weighted magnetic resonance imaging (T2*-w MRI). However, how to interpret the generated SCM map is still pending. Moreover, is it probable to extract tissue dissimilarity messages based on the theory behind SCM? The primary purpose of this paper is to address these two questions. First, the theory of SCM was interpreted from the perspective of linear fitting. Then, a term was embedded for tissue dissimilarity information. Finally, our method was validated with sixteen human brain image series from multi-echo T2*-w MRI. Generated maps were investigated from signal-to-noise ratio (SNR) and perceived visual quality, and then interpreted from intra- and inter-tissue intensity. Experimental results show that both perceptibility of anatomical structures and tissue contrast are improved. More importantly, tissue similarity or dissimilarity can be quantified and cross-validated from pixel intensity analysis. This method benefits image enhancement, tissue classification, malformation detection and morphological evaluation.
中图分类号: (Magnetic resonance imaging)