| Literature DB >> 32505178 |
Yilin Ning1,2, Nathalie C Støer3, Peh Joo Ho4,5, Shih Ling Kao6,7, Kee Yuan Ngiam2,4,8,9, Eric Yin Hao Khoo6,7, Soo Chin Lee10,11, E-Shyong Tai6,7, Mikael Hartman1,2,4, Marie Reilly12, Chuen Seng Tan13.
Abstract
BACKGROUND: The change in two measurements of a continuous outcome can be modelled directly with a linear regression model, or indirectly with a random effects model (REM) of the individual measurements. These methods are susceptible to model misspecifications, which are commonly addressed by applying monotonic transformations (e.g., Box-Cox transformation) to the outcomes. However, transforming the outcomes complicates the data analysis, especially when variable selection is involved. We propose a robust alternative through a novel application of the conditional probit (cprobit) model.Entities:
Keywords: Box-Cox transformation; Conditional probit model; Normal errors; Random effects model
Mesh:
Year: 2020 PMID: 32505178 PMCID: PMC7275496 DOI: 10.1186/s12874-020-01027-6
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Fig. 1Illustration of the three-step workflow of the cprobit model for the analysis of continuous outcomes
Fig. 2Performance of the REM and cprobit model in estimating the linear effect in simulation studies. Mean and standard error (panel a), coverage (panel b) and type I error and power (panel c) of the estimated linear effect under null and strong effects from the random effects model (REM) and the conditional probit (cprobit) model when applied to the scenarios where no transformation was required (“None”) and Box-Cox transformation was considered (), with normal and skewed intercept terms, small and large sample sizes (n = 300, 1200). Solid vertical grey lines indicate the true effect sizes in panel a, and the nominal value of the coverage and type I error in panel b and c. Dashed vertical grey lines indicate a 10% bias in the estimate under the strong effect in panel A, and ±1% deviation from the nominal values in panel B and C. (Note: Under strong effect, the coverage of the REM with skewed intercepts was 34.2% or lower for and beyond the plot range for panel b)
Fig. 3Performance of the REM and cprobit model in estimating the transformation parameter in simulation studies. Mean and standard error (panel a), coverage (panel b) and type I error (panel c) of the estimated transformation parameter () from the random effects model (REM) and the conditional probit (cprobit) model with the Box-Cox transformation for strong effect (β = − 0.06), with , normal and skewed intercept terms, n = 300, 1200. Solid vertical grey lines indicate the true λ values in panel a, and the nominal value of the coverage and type I error in panel b and c. Dashed vertical grey lines indicate ±1% deviation from the nominal values in panel b and c. (Note: Results for the REM with skewed intercepts are beyond the plot range: (a) when λ = 1, when λ = 1/3, and when λ = 0 for panel A; (b) coverage at 5.5% or below for panel b; and (c) type I error at 94.5% or above for panel c)
Results from the neutrophil study
| Linear regressiona,b | 10.20 | 8.44, 11.95 |
| REMc | 9.51 | 8.15, 10.88 |
| cprobitb | 11.29 | 8.66, 13.92 |
aLinear regression model on the change in outcomes
bImplicitly adjusted for all time-invariant confounders
cAdjusted for age, stage and ethnicity by including these variables into the linear predictor
Results from the blood glucose study
| REMa | –0.054 | −0.083, −0.025 | 0.33 | 0.28, 0.37 |
| cprobitb | −0.042 | −0.079, −0.005 | 0.34 | 0.28, 0.40 |
aAdjusted for age and gender by including these variables into the linear predictor
bImplicitly adjusted for all time-invariant confounders