stpm: an R package for stochastic process model.

Pubmed ID: 28231764

Pubmed Central ID: PMC5324240

Journal: BMC bioinformatics

Publication Date: Feb. 23, 2017

Affiliation: Duke Population Research Institute, Duke University, Durham, Box 90989, 27708-0989, NC, USA.

MeSH Terms: Humans, Models, Theoretical, Age Factors, Kaplan-Meier Estimate, Heart Diseases, Blood Glucose, Stochastic Processes, Internet, User-Computer Interface

Grants: P30 AG034424, P01 AG043352, R01 AG046860, RF1 AG046860

Authors: Yashin AI, Akushevich I, Stallard E, Zhbannikov IY, Arbeev K

Cite As: Zhbannikov IY, Arbeev K, Akushevich I, Stallard E, Yashin AI. stpm: an R package for stochastic process model. BMC Bioinformatics 2017 Feb 23;18(1):125.

Studies:

Abstract

BACKGROUND: The Stochastic Process Model (SPM) represents a general framework for modeling the joint evolution of repeatedly measured variables and time-to-event outcomes observed in longitudinal studies, i.e., SPM relates the stochastic dynamics of variables (e.g., physiological or biological measures) with the probabilities of end points (e.g., death or system failure). SPM is applicable for analyses of longitudinal data in many research areas; however, there are no publicly available software tools that implement this methodology. RESULTS: We developed an R package stpm for the SPM-methodology. The package estimates several versions of SPM currently available in the literature including discrete- and continuous-time multidimensional models and a one-dimensional model with time-dependent parameters. Also, the package provides tools for simulation and projection of individual trajectories and hazard functions. CONCLUSION: In this paper, we present the first software implementation of the SPM-methodology by providing an R package stpm, which was verified through extensive simulation and validation studies. Future work includes further improvements of the model. Clinical and academic researchers will benefit from using the presented model and software. The R package stpm is available as open source software from the following links: https://cran.r-project.org/package=stpm (stable version) or https://github.com/izhbannikov/spm (developer version).