Title of article :
Comparison of Survival Forests in Analyzing First Birth Interval
Author/Authors :
Saadati, Mahsa Graduate , Bagheri, Arezoo Graduate
Abstract :
Background and objectives: Application of statistical machine learning methods such
as ensemble based approaches in survival analysis has been received considerable
interest over the past decades in time-to-event data sets. One of these practical methods
is survival forests which have been developed in a variety of contexts due to their high
precision, non-parametric and non-linear nature. This article aims to evaluate the
performance of survival forests by comparing them with Cox-proportional hazards
(CPH) model in studying first birth interval (FBI).
Methods: A cross sectional study in 2017 was conducted by the stratified random
sampling and a structured questionnaire to gather the information of 610, 15-49-year-old
married women in Tehran. Considering some influential covariates on FBI, random
survival forest (RSF) and conditional inference forest (CIF) were constructed by
bootstrap sampling method (1000 trees) using R-language packages. Then, the best
model is used to identify important predictors of FBI by variable importance (VIMP) and
minimal depth measures.
Results: According to prediction accuracy results by out-of-bag (OOB) C-index and
integrated Brier score (IBS), RSF outperforms CPH and CIF in analyzing FBI (C-index
of 0.754 for RSF vs 0.688 for CIF and 0.524 for CPH and IBS of 0.076 for RSF vs 0.086
for CIF and 0.107 for CPH). Woman’s age was the most important predictor on FBI.
Conclusion: Applying suitable method in analyzing FBI assures the results which be
used for making policies to overcome decrement in total fertility rate.
Keywords :
Survival Analysis , Machine Learning , Cox-proportional hazards model , First Birth Intervals
Journal title :
Jorjani Biomedicine Journal