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morse  

Modelling Reproduction and Survival Data in Ecotoxicology
View on CRAN: Click here


Download and install morse package within the R console
Install from CRAN:
install.packages("morse")

Install from Github:
library("remotes")
install_github("cran/morse")

Install by package version:
library("remotes")
install_version("morse", "3.3.5")



Attach the package and use:
library("morse")
Maintained by
Virgile Baudrot
[Scholar Profile | Author Map]
All associated links for this package
First Published: 2014-06-19
Latest Update: 2024-09-18
Description:
Advanced methods for a valuable quantitative environmental risk assessment using Bayesian inference of survival and reproduction Data. Among others, it facilitates Bayesian inference of the general unified threshold model of survival (GUTS). See our companion paper Baudrot and Charles (2021) , as well as complementary details in Baudrot et al. (2018) and Delignette-Muller et al. (2017) .
How to cite:
Virgile Baudrot (2014). morse: Modelling Reproduction and Survival Data in Ecotoxicology. R package version 3.3.5, https://cran.r-project.org/web/packages/morse. Accessed 07 Mar. 2026.
Previous versions and publish date:
1.0.1 (2014-06-19 12:43), 1.0.2 (2014-07-03 15:51), 2.0.0 (2015-09-01 17:32), 2.1.0 (2015-12-14 17:19), 2.1.1 (2015-12-21 15:29), 2.2.0 (2016-06-08 15:40), 3.0.0 (2018-01-30 15:15), 3.1.0 (2018-06-05 19:31), 3.1.1 (2018-06-12 22:27), 3.2.0 (2018-11-12 17:40), 3.2.2 (2019-02-22 00:30), 3.2.4 (2019-06-21 17:00), 3.2.5 (2019-09-27 10:50), 3.2.7 (2020-11-09 12:40), 3.3.0 (2021-01-27 16:50), 3.3.1 (2021-02-04 19:00), 3.3.2 (2022-10-28 13:45), 3.3.4 (2024-09-18 15:30)
Other packages that cited morse R package
View morse citation profile
Other R packages that morse depends, imports, suggests or enhances
Complete documentation for morse
Functions, R codes and Examples using the morse R package
Some associated functions: FOCUSprofile . LCX . MFx . PPC . cadmium1 . cadmium2 . chlordan . copper . dichromate . is_exposure_constant . modelData . modelData.survDataCstExp . modelData.survDataVarExp . morse-package . plot.LCx . plot.MFx . plot.reproData . plot.reproFitTT . plot.survDataCstExp . plot.survDataVarExp . plot.survFitCstExp . plot.survFitPredict . plot.survFitPredict_Nsurv . plot.survFitTKTD . plot.survFitTT . plot.survFitVarExp . plotDoseResponse . plotDoseResponse.reproData . plotDoseResponse.survDataCstExp . plot_prior_post . plot_prior_post.survFit . predict . predict_check . predict_ode . predict_ode.survFit . print.msgTable . print.reproFitTT . print.survFitCstExp . print.survFitTKTD . print.survFitTT . print.survFitVarExp . priors_distribution . priors_distribution.survFit . priors_survData . propiconazole . propiconazole_pulse_exposure . propiconazole_split . reproData . reproDataCheck . reproFitTT . summary.reproData . summary.reproFitTT . summary.survDataCstExp . summary.survDataVarExp . summary.survFit . summary.survFitTKTD . summary.survFitTT . survData . survData_join . survFit . survFitTKTD . survFitTT . survFitTT.survDataCstExp . zinc . 
Some associated R codes: JAGS_models.R . LCx.R . LCx.survFit.R . MFx.R . MFx.survFit.R . MFx_ode.survFit.R . modelData.R . modelData.survDataCstExp.R . modelData.survDataVarExp.R . morse-internal.R . morse.R . msgTable.R . plot.LCx.R . plot.MFx.R . plot.reproData.R . plot.reproFitTT.R . plot.survDataCstExp.R . plot.survDataVarExp.R . plot.survFitCstExp.R . plot.survFitPredict.R . plot.survFitPredict_Nsurv.R . plot.survFitTKTD.R . plot.survFitTT.R . plot.survFitVarExp.R . plotDoseResponse.R . plotDoseResponse.reproData.R . plotDoseResponse.survDataCstExp.R . plot_prior_post.R . ppc.R . ppc.reproFitTT.R . ppc.survFitCstExp.R . ppc.survFitPredict_Nsurv.R . ppc.survFitTKTD.R . ppc.survFitTT.R . ppc.survFitVarExp.R . predict.survFit.R . predict_Nsurv.R . predict_Nsurv_check.R . predict_Nsurv_ode.R . predict_ode.survFit.R . print.reproFitTT.R . print.survFitCstExp.R . print.survFitTKTD.R . print.survFitTT.R . print.survFitVarExp.R . priors_distribution.R . reproData.R . reproDataCheck.R . reproFitTT.R . summary.reproData.R . summary.reproFitTT.R . summary.survDataCstExp.R . summary.survDataVarExp.R . summary.survFit.R . summary.survFitTKTD.R . summary.survFitTT.R . survData.R . survDataCheck.R . survFit.R . survFit.survDataCstExp.R . survFit.survDataVarExp.R . survFitTKTD.R . survFitTT.R . survFitTT.survDataCstExp.R . survFit_utils.R .  Full morse package functions and examples
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