| Literature DB >> 34983387 |
Ashenafi A Yirga1, Sileshi F Melesse2, Henry G Mwambi2, Dawit G Ayele3.
Abstract
BACKGROUND: The CD4 cell count signifies the health of an individual's immune system. The use of data-driven models enables clinicians to accurately interpret potential information, examine the progression of CD4 count, and deal with patient heterogeneity due to patient-specific effects. Quantile-based regression models can be used to illustrate the entire conditional distribution of an outcome and identify various covariates effects at the respective location.Entities:
Keywords: Asymmetric Laplace distribution; CAPRISA; CD4 count; Quantile mixed model; Quantile regression; Stochastic approximation of the expectation maximization
Mesh:
Year: 2022 PMID: 34983387 PMCID: PMC8724661 DOI: 10.1186/s12879-021-06942-7
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Summary of patients’ baseline characteristics
| Variable | Analysis | ||||||
|---|---|---|---|---|---|---|---|
| Mean | Median | Minimum | Maximum | Q0.05 | Q0.95 | IQR | |
| SQRT_CD4 count | 23.44 | 22.89 | 13.49 | 39.49 | 16.40 | 31.40 | 5.78 |
| Baseline BMI | 28.93 | 27.24 | 17.89 | 54.89 | 20 | 43.70 | 9.66 |
| Log_Baseline VL | 10.09 | 10.26 | 0 (undetected) | 15.52 | 6.19 | 13.13 | 2.91 |
| Age at baseline | 27.15 | 25 | 18 | 59 | 20 | 41 | 8 |
Comparison of random effects models for QR-LMM at the 0.5th quantile
| Random effects | AIC | BIC | HQC | LL |
|---|---|---|---|---|
| Model 1 | 39,670.99 | 39,725.84 | 39,689.89 | − 19,827.50 |
| Model 2 | 35,072.84 | 35,141.41 | 35,096.47 | − 17,526.42 |
| Model 3 | 35,726.22 | 35,794.79 | 35,749.85 | − 17,853.11 |
| Model 4 | 33,685.92 | 33,781.91 | 33,718.99 | − 16,828.96 |
Parameter estimates for CAPRISA 002 AI study data across several quantiles
| Parameter | ||||||
|---|---|---|---|---|---|---|
| Intercept | 19.996 (1.161)* | 22.171 (1.403)* | 24.628 (1.464)* | 26.595(1.419)* | 27.972 (1.420)* | 31.381 (1.397)* |
| Time | 0.063 (0.015)* | 0.069 (0.013)* | 0.056 (0.013)* | 0.046 (0.013)* | 0.041 (0.013)* | 0.034 (0.015)* |
| SQRT of time | − 0.866 (0.142)* | − 0.871 (0.129)* | − 0.695 (0.117)* | − 0.593 (0.119)* | − 0.581 (0.124)* | − 0.385 (0.162)* |
| Baseline BMI | 0.056 (0.021)* | 0.078 (0.024)* | 0.082 (0.026)* | 0.112 (0.032)* | 0.131 (0.033)* | 0.145 (0.030)* |
| Log of baseline VL | − 0.564 (0.078)* | − 0.568 (0.103)* | − 0.641 (0.096)* | − 0.713 (0.093)* | − 0.714 (0.089)* | − 0.739 (0.084)* |
| Post HAART initiation | 1.683 (0.054)* | 2.125 (0.073)* | 2.560 (0.088)* | 3.021 (0.096)* | 3.114(0.097)* | 2.287 (0.089)* |
| Age | 0.021 (0.025) | 0.029 (0.029) | 0.029 (0.031) | 0.029 (0.032) | 0.026 (0.032) | 0.013 (0.030) |
| Log-lik | − 18,454.68 | − 17,169.85 | − 16,828.96 | − 17,344.63 | − 17,952.50 | − 19,088.77 |
| AIC | 36,937.36 | 34,367.69 | 33,685.92 | 34,717.25 | 35,933 | 38,205.55 |
*Significance at 5% level. See, Additional file 1, for more significant test results and confidence intervals
Fig. 1Point estimates and 95% confidence bands for model parameters following the QR-LMM to the CAPRISA 002 AI Study data across various quantiles