| Literature DB >> 28049626 |
Colin Olito1, Craig R White2, Dustin J Marshall2, Diego R Barneche2.
Abstract
Accessing many fundamental questions in biology begins with empirical estimation of simple monotonic rates of underlying biological processes. Across a variety of disciplines, ranging from physiology to biogeochemistry, these rates are routinely estimated from non-linear and noisy time series data using linear regression and ad hoc manual truncation of non-linearities. Here, we introduce the R package LoLinR, a flexible toolkit to implement local linear regression techniques to objectively and reproducibly estimate monotonic biological rates from non-linear time series data, and demonstrate possible applications using metabolic rate data. LoLinR provides methods to easily and reliably estimate monotonic rates from time series data in a way that is statistically robust, facilitates reproducible research and is applicable to a wide variety of research disciplines in the biological sciences.Entities:
Keywords: Autocorrelation; Biological rates; Linearity; Local linear regression; Reproducible research; Time series
Mesh:
Year: 2017 PMID: 28049626 DOI: 10.1242/jeb.148775
Source DB: PubMed Journal: J Exp Biol ISSN: 0022-0949 Impact factor: 3.312