| Literature DB >> 31897295 |
Manuchehr Aminian1, Helene Andrews-Polymenis2, Jyotsana Gupta2, Michael Kirby1, Henry Kvinge1, Xiaofeng Ma1, Patrick Rosse1, Kristin Scoggin3, David Threadgill3.
Abstract
Recent developments in both biological data acquisition and analysis provide new opportunities for data-driven modelling of the health state of an organism. In this paper, we explore the evolution of temperature patterns generated by telemetry data collected from healthy and infected mice. We investigate several techniques to visualize and identify anomalies in temperature time series as temperature relates to the onset of infectious disease. Visualization tools such as Laplacian Eigenmaps and Multidimensional Scaling allow one to gain an understanding of a dataset as a whole. Anomaly detection tools for nonlinear time series modelling, such as Radial Basis Functions and Multivariate State Estimation Technique, allow one to build models representing a healthy state in individuals. We illustrate these methods on an experimental dataset of 306 Collaborative Cross mice challenged with Salmonella typhimurium and show how interruption in circadian patterns and severity of infection can be revealed directly from these time series within 3 days of the infection event.Entities:
Keywords: MSET; Multivariate State Estimation Technique; Radial Basis Functions; high-dimension time series; temperature telemetry data
Year: 2019 PMID: 31897295 PMCID: PMC6936008 DOI: 10.1098/rsfs.2019.0086
Source DB: PubMed Journal: Interface Focus ISSN: 2042-8898 Impact factor: 3.906