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Multistate Markov models are a canonical parametric approach for data modeling of observed or latent stochastic processes supported on a finite state space. Continuous-time Markov processes describe data that are observed irregularly over time, as is often the case in longitudinal medical data, for example. Assuming that a continuous-time Markov process is time-homogeneous, a closed-form likelihood function can be derived from the Kolmogorov forward equations - a system of differential equations with a well-known matrix-exponential solution. Unfortunately, however, the forward equations do not admit an analytical solution for continuous-time, time- Markov processes, and so researchers and practitioners often make the simplifying assumption that the process is piecewise time-homogeneous. In this paper, we provide intuitions and illustrations of the potential biases for parameter estimation that may ensue in the more realistic scenario that the piecewise-homogeneous assumption is violated, and we advocate for a solution for likelihood computation in a truly time-inhomogeneous fashion. Particular focus is afforded to the context of multistate Markov models that allow for state label misclassifications, which applies more broadly to hidden Markov models (HMMs), and Bayesian computations bypass the necessity for computationally demanding numerical gradient approximations for obtaining maximum likelihood estimates (MLEs). Supplemental materials are available online.
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http://dx.doi.org/10.1080/10618600.2024.2388609 | DOI Listing |
Clin Gastroenterol Hepatol
September 2025
The Global NASH/MASH Council, Washington, DC, United States; Gastroenterology Section, Department of Medicine, King Faisal Specialist Hospital and Research Center, Riyadh, Saudi Arabia; Liver, Digestive, and Lifestyle Health Research Section, and Organ Transplant Center of Excellence, King Faisal Sp
Background And Aim: Although the clinical burden of MASH is well known, its economic burden is less well described. We estimated MASH's economic burden in several regions of the world including the US, Germany, Spain, France, Italy, and United Kingdom (UK), Japan, Saudi Arabia, and Brazil over the next two decades.
Methods: A one-year cycle Markov model projected MASH progression from 2021 to 2040, incorporating 2020 prevalent cases and annual incident cases (2021-2040).
Breast
August 2025
Graduate Institute of Biomedical Informatics, College of Medical Science and Technology, Taipei Medical University, Taipei, Taiwan; Clinical Big Data Research Center, Taipei Medical University Hospital, Taipei, Taiwan. Electronic address:
Background: Risk-stratified breast screening has gained international attention, as individualized risk assessments can inform screening initiation, frequency, and whether to screen. In this study, we evaluated the cost-effectiveness of risk-stratified screening based on genetic testing for breast cancer-associated single nucleotide polymorphisms (SNPs) compared to the current age-based screening program in Taiwan.
Methods: A Markov model was used to estimate lifetime health outcomes and costs for 35-year-old Taiwanese women without a family history of breast cancer.
Sci Total Environ
September 2025
Florida Medical Entomology Laboratory, IFAS, University of Florida, Vero Beach, Florida 32962, United States of America; Department of Entomology and Nematology, IFAS, University of Florida, Gainesville, Florida 32611, United States of America.
West Nile Virus (WNV) is the leading cause of mosquito-borne disease in the United States, yet transmission activity remains difficult to predict. The present study used 20 years of digitized WNV seroconversion data from 526 sentinel chicken coops across Florida to develop spatiotemporal models with landscape and climate variables to predict WNV seroconversion at monthly and seasonal timescales. We found several environmental predictors hypothesized to impact WNV transmission were important at both timescales.
View Article and Find Full Text PDFPhys Rev Lett
August 2025
California Institute of Technology, TAPIR, Division of Physics, Mathematics, and Astronomy, Pasadena, California 91125, USA.
In the gravitational-wave analysis of pulsar-timing-array datasets, parameter estimation is usually performed using Markov chain Monte Carlo methods to explore posterior probability densities. We introduce an alternative procedure that instead relies on stochastic gradient-descent Bayesian variational inference, whereby we obtain the weights of a neural-network-based approximation of the posterior by minimizing the Kullback-Leibler divergence of the approximation from the exact posterior. This technique is distinct from simulation-based inference with normalizing flows since we train the network for a single dataset, rather than the population of all possible datasets, and we require the computation of the data likelihood and its gradient.
View Article and Find Full Text PDFIEEE Trans Neural Syst Rehabil Eng
September 2025
Hand gesture recognition(HGR) is a key technology in human-computer interaction and human communication. This paper presents a lightweight, parameter-free attention convolutional neural network (LPA-CNN) approach leveraging Gramian Angular Field(GAF)transformation of A-mode ultrasound signals for HGR. First, this paper maps 1-dimensional (1D) A-mode ultrasound signals, collected from the forearm muscles of 10 healthy participants, into 2-dimensional (2D) images.
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