A change in the number of motor units that operate a particular muscle is an important indicator for the progress of a neuromuscular disease and the efficacy of a therapy. Inference for realistic statistical models of the typical data produced when testing muscle function is difficult, and estimating the number of motor units is an ongoing statistical challenge. We consider a set of models for the data, each with a different number of working motor units, and present a novel method for Bayesian inference based on sequential Monte Carlo. This provides estimates of the marginal likelihood and, hence, a posterior probability for each model. Implementing this approach in practice requires a sequential Monte Carlo method that has excellent compu...
We develop a sequential Monte Carlo approach for Bayesian analysis of the experimental design for bi...
The problem of estimating the numbers of motor units N in a muscle is embedded in a general stochast...
This thesis proposes three novel models which extend the statistical methodology for motor unit numb...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
All muscle contractions are dependent on the functioning of motor units. In diseases such as amyotro...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
All muscle contractions are dependent on the functioning of motor units. In diseases such as amyotro...
A new method termed MUESA - Motor Unit Estimation based on Stochastic Activation - was developed fo...
Summary. We present an application of reversible jump Markov chain Monte Carlo (RJMCMC) from the eld...
In this paper we present our Bayesian method for carrying out motor unit number estimation (MUNE) us...
The statistical method of motor unit number estimation (MUNE) uses the natural stochastic variation ...
Motor unit number estimation (MUNE) is a method which aims to provide a quantitative indicator of pr...
We have developed a new method of motor unit number estimation (MUNE) for assessing diseases such as...
A motor unit comprises an anterior horn cell, a motor axon and its terminal nerve branches, and the ...
We develop a sequential Monte Carlo approach for Bayesian analysis of the experimental design for bi...
The problem of estimating the numbers of motor units N in a muscle is embedded in a general stochast...
This thesis proposes three novel models which extend the statistical methodology for motor unit numb...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
All muscle contractions are dependent on the functioning of motor units. In diseases such as amyotro...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
We present an application of reversible jump Markov chain Monte Carlo sampling from the field of neu...
All muscle contractions are dependent on the functioning of motor units. In diseases such as amyotro...
A new method termed MUESA - Motor Unit Estimation based on Stochastic Activation - was developed fo...
Summary. We present an application of reversible jump Markov chain Monte Carlo (RJMCMC) from the eld...
In this paper we present our Bayesian method for carrying out motor unit number estimation (MUNE) us...
The statistical method of motor unit number estimation (MUNE) uses the natural stochastic variation ...
Motor unit number estimation (MUNE) is a method which aims to provide a quantitative indicator of pr...
We have developed a new method of motor unit number estimation (MUNE) for assessing diseases such as...
A motor unit comprises an anterior horn cell, a motor axon and its terminal nerve branches, and the ...
We develop a sequential Monte Carlo approach for Bayesian analysis of the experimental design for bi...
The problem of estimating the numbers of motor units N in a muscle is embedded in a general stochast...
This thesis proposes three novel models which extend the statistical methodology for motor unit numb...