2019
DOI: 10.1186/s12883-019-1545-6
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Autoregressive modeling to assess stride time pattern stability in individuals with Huntington’s disease

Abstract: BackgroundHuntington’s disease (HD) is a progressive, neurological disorder that results in both cognitive and physical impairments. These impairments affect an individual’s gait and, as the disease progresses, it significantly alters one’s stability. Previous research found that changes in stride time patterns can help delineate between healthy and pathological gait. Autoregressive (AR) modeling is a statistical technique that models the underlying temporal patterns in data. Here the AR models assessed differ… Show more

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Cited by 8 publications
(4 citation statements)
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“…Various approaches to disease progression modeling have been proposed in the literature. These approaches range from deterministic approaches based on differential equations, 11 statistical approaches such as autoregressive models, 12 hidden Markov models, 13 and Gaussian processes, 14 , 15 deep learning methods such as recurrent neural networks, 16 and computational simulation methods such as discrete event simulations (DESs). 17 , 18 The choice of modeling approach depends on the degree of knowledge of the underlying disease mechanism, the stochasticity and heterogeneity of disease symptoms, the number of samples available for parameter estimation, and the need for model interpretability.…”
Section: Introductionmentioning
confidence: 99%
“…Various approaches to disease progression modeling have been proposed in the literature. These approaches range from deterministic approaches based on differential equations, 11 statistical approaches such as autoregressive models, 12 hidden Markov models, 13 and Gaussian processes, 14 , 15 deep learning methods such as recurrent neural networks, 16 and computational simulation methods such as discrete event simulations (DESs). 17 , 18 The choice of modeling approach depends on the degree of knowledge of the underlying disease mechanism, the stochasticity and heterogeneity of disease symptoms, the number of samples available for parameter estimation, and the need for model interpretability.…”
Section: Introductionmentioning
confidence: 99%
“…For example, Alzakerin et al 8 used second order autoregressive models (AR(2)) to model Huntington's disease. This is a model that explicitly models time, but separate models are used for each patient.…”
Section: Introductionmentioning
confidence: 99%
“…Various approaches to disease progression modeling have been proposed in the literature. These approaches range from deterministic approaches based on differential equations 9 , statistical approaches such as autoregressive models 10 , hidden Markov models 11 and Gaussian processes 12,13 , as well as deep learning tools such as recurrent neural networks 14 . The particular choice of a modeling approach depends on the amount and quality of knowledge about the underlying disease mechanism, the stochasticity and heterogeneity of the disease symptoms, sample size available for model parameter estimation as well as the need for model interpretability.…”
Section: Introductionmentioning
confidence: 99%