bayesTPC: Bayesian inference for thermal performance curves in R

Abstract

Reliable predictions of ectotherm responses to climatic warming are important because many of these organisms perform important roles that can directly impact human society. Thermal performance curves (TPCs) provide useful information on the physiological constraints that limit the capacity of these temperature-sensitive organisms to exist and grow. NLS pipelines for fitting TPCs are widely available, but these approaches rely on assumptions that can yield unreliable parameter estimates. We present bayesTPC, an R package for fitting TPCs to trait responses using the nimble language and machinery as the underlying engine for Markov Chain Monte Carlo. bayesTPC aims to support the adoption of Bayesian approaches in thermal physiology, and promote TPC fitting that adequately quantifies uncertainty.

Description

Citation

Sorek, S., Smith, J. W. Jr., Huxley, P. J., & Johnson, L. R. (2025). bayesTPC: Bayesian inference for thermal performance curves in R. Methods in Ecology and Evolution, 16, 687–697. https://doi.org/10.1111/2041-210X.70004

Endorsement

Review

Supplemented By

Referenced By

Creative Commons license

Except where otherwise noted, this item's license is described as cc-by-nc-nd