Rapid processing and quantitative evaluation of structural brain scans for adaptive multimodal imaging

HUMAN BRAIN MAPPING(2022)

引用 1|浏览34
暂无评分
摘要
Current neuroimaging acquisition and processing approaches tend to be optimised for quality rather than speed. However, rapid acquisition and processing of neuroimaging data can lead to novel neuroimaging paradigms, such as adaptive acquisition, where rapidly processed data is used to inform subsequent image acquisition steps. Here we first evaluate the impact of several processing steps on the processing time and quality of registration of manually labelled T-1 -weighted MRI scans. Subsequently, we apply the selected rapid processing pipeline both to rapidly acquired multicontrast EPImix scans of 95 participants (which include T-1 -FLAIR, T-2, T-2*, T-2-FLAIR, DWI and ADC contrasts, acquired in similar to 1 min), as well as to slower, more standard single-contrast T-1 -weighted scans of a subset of 66 participants. We quantify the correspondence between EPImix T-1-FLAIR and single-contrast T-1-weighted scans, using correlations between voxels an regions of interest across participants, measures of within- and between-participant identifiability as well as regional structural covariance networks. Furthermore, we explore the use of EPImix for the rapid construction of morphometric similarity networks. Finally, we quantify the reliability of EPImix-derived data using test-retest scans of 10 participants. Our results demonstrate that quantitative information can be derived from a neuroimaging scan acquired and processed within minutes, which could further be used to implement adaptive multimodal imaging and tailor neuroimaging examinations to individual patients.
更多
查看译文
关键词
EPImix, fingerprinting, identifiability, morphometric similarity, MRI, reliability, structural covariance
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要