4.1 Article

Predicting deseasonalised serum 25 hydroxy vitamin D concentrations in the D-Health Trial: An analysis using boosted regression trees

Journal

CONTEMPORARY CLINICAL TRIALS
Volume 104, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.cct.2021.106347

Keywords

Vitamin D; Randomised clinical trial; Boosted regression trees; Prediction model

Funding

  1. National Health and Medical Research Council (NHMRC) [GNT1046681, GNT1120682, GNT1173346, GNT1155413]
  2. Metro North Clinician Research Fellowship
  3. Queensland Advancing Clinical Research Fellowship
  4. University of Queensland PhD Scholarship
  5. Western Australian State Government
  6. Australian Federal Government, through Bioplatforms Australia
  7. National Collaborative Research Infrastructure Strategy (NCRIS)

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The D-Health Trial investigates the impact of high-dose vitamin D supplementation on mortality rate and cancer prevention. Predictive models were developed to estimate baseline serum 25(OH)D levels, with UV radiation and vitamin D intake identified as key predictors of low serum 25(OH)D concentrations.
Background: The D-Health Trial aims to determine whether monthly high-dose vitamin D supplementation can reduce the mortality rate and prevent cancer. We did not have adequate statistical power for subgroup analyses, so could not justify the high cost of collecting blood samples at baseline. To enable future exploratory analyses stratified by baseline vitamin D status, we developed models to predict baseline serum 25 hydroxy vitamin D [25 (OH)D] concentration. Methods: We used data and serum 25(OH)D concentrations from participants who gave a blood sample during the trial for compliance monitoring and were randomised to placebo. Data were partitioned into training (80%) and validation (20%) datasets. Deseasonalised serum 25(OH)D concentrations were dichotomised using cut-points of 50, 60 and 75 nmol/L. We fitted boosted regression tree models, based on 13 predictors, and evaluated model performance using the validation data. Results: The training and validation datasets had 1788 (10.5% <50 nmol/L, 23.1% <60 nmol, 48.8 <75 nmol/L) and 447 (11.9% <50 nmol/L, 25.7% <60 nmol/L, and 49.2% <75 nmol/L) samples, respectively. Ambient UV radiation and total intake of vitamin D were the strongest predictors of `low' serum 25(OH)D concentration. The area under the receiver operating characteristic curves were 0.71, 0.70, and 0.66 for cut-points of <50, <60 and <75 nmol/L respectively. Conclusions: We exploited compliance monitoring data to develop models to predict serum 25(OH)D concentration for D-Health participants at baseline. This approach may prove useful in other trial settings where there is an obstacle to exhaustive data collection.

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