Autoregressive hidden Markov model with missing data for modelling functional MR imaging data

Shilpa Dang, S. Chaudhury, Brejesh Lall, P. Roy
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引用次数: 5

Abstract

Functional Magnetic Resonance Imaging (fMRI) has opened ways to look inside active human brain. However, fMRI signal is an indirect indicator of underlying neuronal activity and has low-temporal resolution due to acquisition process. This paper proposes autoregressive hidden Markov model with missing data (AR-HMM-md) framework which aims at addressing aforementioned issues while allowing accurate capturing of fMRI time series characteristics. The proposed work models unobserved neuronal activity over time as sequence of discrete hidden states, and shows how exact inference can be obtained with missing fMRI data under the "Missing not at Random" (MNAR) mechanism. This mechanism requires explicit modelling of the missing data along with the observed data. The performance is evaluated by observing convergence characteristic of log-likelihoods and classification capability of the proposed model over existing models for two fMRI datasets. The classification is performed between real fMRI time series from a task-based experiment and randomly-generated time series. Another classification experiment is performed between children and elder subjects using fMRI time series from resting-state data. The proposed model captured the fMRI characteristics efficiently and thus converged to better posterior probability resulting into higher classification accuracy over existing models for both the datasets.
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具有缺失数据的自回归隐马尔可夫模型用于功能性磁共振成像数据的建模
功能磁共振成像(fMRI)为观察活跃的人类大脑内部开辟了途径。然而,fMRI信号是潜在神经元活动的间接指标,由于获取过程,其时间分辨率较低。本文提出了一种具有缺失数据的自回归隐马尔可夫模型(AR-HMM-md)框架,该框架旨在解决上述问题,同时允许准确捕获fMRI时间序列特征。所提出的工作模型将未观察到的神经元活动随时间的变化作为离散隐藏状态的序列,并展示了如何在“非随机缺失”(MNAR)机制下从缺失的fMRI数据中获得精确推断。这种机制需要对缺失的数据以及观测到的数据进行显式建模。通过观察两个fMRI数据集上所提出模型的对数似然收敛特性和分类能力来评估性能。在基于任务的实验的真实fMRI时间序列和随机生成的时间序列之间进行分类。利用静息状态数据的fMRI时间序列对儿童和老年受试者进行分类实验。所提出的模型有效地捕获了fMRI特征,从而收敛到更好的后验概率,从而在两个数据集上获得比现有模型更高的分类精度。
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