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Application of MultiScale Hidden Markov Modeling Wavelet Coefficients to fMRI Activation Detection | Science Publications

机译:多尺度隐马尔可夫模型小波系数在fMRI激活检测中的应用科学出版物

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> Problem Statement: The problem of detection of functional magnetic resonance images (fMRIs), that is, to decide active and nonactive regions of human brain from fMRIs is studied in this paper. fMRI research is finding and will find more and more applications in diagnosing and treating brain diseases like depression and schizophrenia. At its initial stage fMRI detection are pixel-wise methods, which do not take advantage of mutual information among neighboring pixels. Ignoring such spatial information can reduce detection accuracy. During past decade, many efforts have been focusing on taking advantage of spatial correlation inherent in fMRI data. Most well known is smoothing using a fixed Gaussian filter and the compensation for multiple testing using Gaussian random field theory as used by Statistical Parametric Mapping (SPM). Other methods including wavelets had also been proposed by the community. Approach: In this study a novel two-step approach was put forward that incorporates spatial correlation information and is amenable to analysis and optimization. First, a new multi scale image segmentation algorithm was proposed to decompose the correlation image into several different regions, each of which is of homogeneous statistical behavior. Second, each region will be classified independently as active or inactive using existing pixel-wise test methods. The image segmentation consists of two procedures: Edge detection followed by label estimation. To deduce the presence or absence of an edge from continuous data, two fundamental assumption of our algorithm are 1) each wavelet coefficient was described by a 2-state Gaussian Mixture Model (GMM); 2) across scale, each state is caused by its parent state, hence the Multiscale Hidden Markov Model (MHMM). The states of Markov chain are unknown ("hidden") and represent the presence (state 1) or absence (state 0) of edges. Using this interpretation, the edge detection problem boils down to the posterior state estimation given observation. Results: Data processing results demonstrate much improved efficiency of our algorithm compared with pixel-wise detection methods. Conclusions: Our methods and results stress the importance of spatial-temporal modeling in fMRI research.
机译: > 问题陈述:本文研究了功能磁共振图像(fMRI)的检测问题,即根据功能磁共振成像来确定人脑的活动区域和非活动区域。功能磁共振成像研究正在发现并将在诊断和治疗脑部疾病(例如抑郁症和精神分裂症)中得到越来越多的应用。在功能磁共振成像检测的初始阶段,它是逐像素方法,该方法不利用相邻像素之间的相互信息。忽略这种空间信息会降低检测精度。在过去的十年中,许多努力一直集中在利用fMRI数据固有的空间相关性上。最著名的是使用固定高斯滤波器进行平滑,以及使用统计参数映射(SPM)所用的高斯随机场理论进行多次测试的补偿。社区还提出了包括小波在内的其他方法。 方法:在这项研究中,提出了一种新颖的两步方法,该方法包含空间相关信息,并且可以进行分析和优化。首先,提出了一种新的多尺度图像分割算法,将相关图像分解为几个不同的区域,每个区域具有均匀的统计行为。其次,将使用现有的逐像素测试方法将每个区域分别分类为活动区域或非活动区域。图像分割包括两个过程:边缘检测,然后进行标签估计。为了从连续数据中推断出边缘的存在与否,我们算法的两个基本假设是:1)每个小波系数由2状态高斯混合模型(GMM)描述; 2)在整个尺度上,每个状态都是由其父状态引起的,因此是多尺度隐马尔可夫模型(MHMM)。马尔可夫链的状态未知(“隐藏”),表示边的存在(状态1)或不存在(状态0)。使用这种解释,边缘检测问题可以归结为观察到的后状态估计。 结果:数据处理结果表明,与逐像素检测方法相比,我们的算法效率大大提高。 结论:我们的方法和结果强调了功能磁共振成像研究中时空建模的重要性。

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