Abstract:
Background: The survival of pregnant women is one of great interest of the world and especially
to a developing country like Ethiopia which had the highest maternal mortality ratios in the
world due to low utilization of maternal health services including Antenatal care (ANC).Survival
analysis is a statistical method for data analysis where the outcome variable of interest is time to
occurrence of an event. AFT and frailty model is an extension of Cox's PH model in which the
hazard function depends upon time and an unobservable random quantity called frailty.
Regional states of the women were used as a clustering effect in all frailty models.
Methodology: The study aimed to model the determinants of time-to-first antenatal care visits to
Ethiopia. The data for the study were taken from the 2016 EDHS and data of 7161 women in the
age group of 15-49 years, who got pregnancy during five years survey whom survival
information available were included in the analysis. The AFT and gamma shared frailty models
with weibull, log-normal and log-logistic baseline distribution were employed to identify the best
model fit for the timing of first ANC visit using health-related risk factors, socio-economic and
demographic factors. All the fitted models were compared by AIC.
Results: The median of time of first ANC visit was 5 months. The log-logistic with Gamma
shared frailty model is an appropriate model when compared with other models for a time at
first ANC visit dataset based on AIC and graphical evidence. The clustering effect was
significant for modelling the determinants of time-to-first ANC visit dataset. The final model
showed that place of residence, perceived problem to get medical care due to distance, wanted
pregnancy; women and husband education level, religions, wealth index, and parity were found
to be significant determinants of time at first ANC visit at 5% level of significance. The estimated
acceleration factor for the group of women's who had secondary and higher educational level
was highly earlier time at first ANC visit by the factor of ϕ=0.89 and ϕ=0.86 respectively.
Conclusion: The log-logistic with gamma shared frailty model described time at first ANC visit
data set better than other models and there was heterogeneity between the regions on time-tofirst ANC initiation. Specific efforts are needed to target women of lower socioeconomic status,
access to informal education for woman and husband, accessing health facilities due to distance
and give awareness about having few numbers of children was an important avenue for rising
women's time at first ANC visit.Background: The survival of pregnant women is one of great interest of the world and especially
to a developing country like Ethiopia which had the highest maternal mortality ratios in the
world due to low utilization of maternal health services including Antenatal care (ANC).Survival
analysis is a statistical method for data analysis where the outcome variable of interest is time to
occurrence of an event. AFT and frailty model is an extension of Cox's PH model in which the
hazard function depends upon time and an unobservable random quantity called frailty.
Regional states of the women were used as a clustering effect in all frailty models.
Methodology: The study aimed to model the determinants of time-to-first antenatal care visits to
Ethiopia. The data for the study were taken from the 2016 EDHS and data of 7161 women in the
age group of 15-49 years, who got pregnancy during five years survey whom survival
information available were included in the analysis. The AFT and gamma shared frailty models
with weibull, log-normal and log-logistic baseline distribution were employed to identify the best
model fit for the timing of first ANC visit using health-related risk factors, socio-economic and
demographic factors. All the fitted models were compared by AIC.
Results: The median of time of first ANC visit was 5 months. The log-logistic with Gamma
shared frailty model is an appropriate model when compared with other models for a time at
first ANC visit dataset based on AIC and graphical evidence. The clustering effect was
significant for modelling the determinants of time-to-first ANC visit dataset. The final model
showed that place of residence, perceived problem to get medical care due to distance, wanted
pregnancy; women and husband education level, religions, wealth index, and parity were found
to be significant determinants of time at first ANC visit at 5% level of significance. The estimated
acceleration factor for the group of women's who had secondary and higher educational level
was highly earlier time at first ANC visit by the factor of ϕ=0.89 and ϕ=0.86 respectively.
Conclusion: The log-logistic with gamma shared frailty model described time at first ANC visit
data set better than other models and there was heterogeneity between the regions on time-tofirst ANC initiation. Specific efforts are needed to target women of lower socioeconomic status,
access to informal education for woman and husband, accessing health facilities due to distance
and give awareness about having few numbers of children was an important avenue for rising
women's time at first ANC visit.