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功能磁共振成像不确定性的视觉分析综述与展望

A review and outlook on visual analytics for uncertainties in functional magnetic resonance imaging.

作者信息

de Ridder Michael, Klein Karsten, Kim Jinman

机构信息

Biomedical and Multimedia Information Technology Research Group, University of Sydney, Sydney, Australia.

Department of Computer and Information Science, Universität Konstanz, Konstanz, Germany.

出版信息

Brain Inform. 2018 Jul 3;5(2):5. doi: 10.1186/s40708-018-0083-0.

Abstract

Analysis of functional magnetic resonance imaging (fMRI) plays a pivotal role in uncovering an understanding of the brain. fMRI data contain both spatial volume and temporal signal information, which provide a depiction of brain activity. The analysis pipeline, however, is hampered by numerous uncertainties in many of the steps; often seen as one of the last hurdles for the domain. In this review, we categorise fMRI research into three pipeline phases: (i) image acquisition and processing; (ii) image analysis; and (iii) visualisation and human interpretation, to explore the uncertainties that arise in each phase, including the compound effects due to the inter-dependence of steps. Attempts at mitigating uncertainties rely on providing interactive visual analytics that aid users in understanding the effects of the uncertainties and adjusting their analyses. This impetus for visual analytics comes in light of considerable research investigating uncertainty throughout the pipeline. However, to the best of our knowledge, there is yet to be a comprehensive review on the importance and utility of uncertainty visual analytics (UVA) in addressing fMRI concerns, which we term fMRI-UVA. Such techniques have been broadly implemented in related biomedical fields, and its potential for fMRI has recently been explored; however, these attempts are limited in their scope and utility, primarily focussing on addressing small parts of single pipeline phases. Our comprehensive review of the fMRI uncertainties from the perspective of visual analytics addresses the three identified phases in the pipeline. We also discuss the two interrelated approaches for future research opportunities for fMRI-UVA.

摘要

功能磁共振成像(fMRI)分析在揭示对大脑的理解方面起着关键作用。fMRI数据包含空间体积和时间信号信息,这些信息描绘了大脑活动。然而,分析流程在许多步骤中受到众多不确定性的阻碍;这通常被视为该领域的最后障碍之一。在本综述中,我们将fMRI研究分为三个流程阶段:(i)图像采集与处理;(ii)图像分析;以及(iii)可视化与人工解读,以探讨每个阶段出现的不确定性,包括由于步骤相互依赖而产生的复合效应。减轻不确定性的尝试依赖于提供交互式视觉分析,以帮助用户理解不确定性的影响并调整他们的分析。鉴于在整个流程中对不确定性进行的大量研究,视觉分析的这种推动力应运而生。然而,据我们所知,尚未有关于不确定性视觉分析(UVA)在解决fMRI问题方面的重要性和实用性的全面综述,我们将其称为fMRI-UVA。此类技术已在相关生物医学领域广泛应用,并且最近已探索了其在fMRI方面的潜力;然而,这些尝试在范围和实用性方面有限,主要集中在解决单个流程阶段的小部分问题。我们从视觉分析的角度对fMRI不确定性进行的全面综述涉及流程中确定的三个阶段。我们还讨论了fMRI-UVA未来研究机会的两种相互关联的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1fdb/6170942/40a83bc578db/40708_2018_83_Fig3_HTML.jpg

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