SimplyAgree R Package

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SimplyAgree is an R package, and jamovi module, created to make agreement and reliability analyses easier for the average researcher. The functions within this package include simple tests of agreement (agree_test), agreement analysis for nested (agree_nest) and replicate data (agree_reps), and provide robust analyses of reliability (reli_stats). In addition, this package contains a set of functions to help when planning studies looking to assess measurement agreement (blandPowerCurve).

Installing SimplyAgree

You can install the most up-to-date version of SimplyAgree from GitHub with:



The functions in this package are largely based on the following works:

Lin L (1989). A concordance correlation coefficient to evaluate reproducibility. Biometrics 45: 255 - 268.

Shieh, G. (2019). Assessing agreement between two methods of quantitative measurements: Exact test procedure and sample size calculation. Statistics in Biopharmaceutical Research, 1-8.

Parker, R. A., et al (2016). Application of mixed effects limits of agreement in the presence of multiple sources of variability: exemplar from the comparison of several devices to measure respiratory rate in COPD patients. Plos one, 11(12), e0168321.

Zou, G. Y. (2013). Confidence interval estimation for the Bland–Altman limits of agreement with multiple observations per individual. Statistical methods in medical research, 22(6), 630-642.

Weir, J. P. (2005). Quantifying test-retest reliability using the intraclass correlation coefficient and the SEM. The Journal of Strength & Conditioning Research, 19(1), 231-240.

Lu, Meng-Jie, et al (2016). “Sample Size for Assessing Agreement between Two Methods of Measurement by Bland−Altman Method” The International Journal of Biostatistics, 12(2),

King, TS and Chinchilli, VM. (2001). A generalized concordance correlation coefficient for continuous and categorical data. Statistics in Medicine, 20, 2131:2147.

King, TS, Chinchilli, VM, and Carrasco, JL. (2007). A repeated measures concordance correlation coefficient. Statistics in Medicine, 26, 3095:3113.

Carrasco, JL, et al. (2013). Estimation of the concordance correlation coefficient for repeated measures using SAS and R. Computer Methods and Programs in Biomedicine, 109, 293-304.