Using Causal Inference to Investigate Contraceptive Discontinuation in Sub-Saharan Africa

causal inference
healthcare

An observational study in sub-Saharan Africa suggesting injectable contraceptives have higher discontinuation rates due to side effects compared to other non-injectable methods.

Authors
Affiliations

Victor Akinwande

Carnegie Mellon University

Megan MacGregor

Simon Fraser University

Celia Cintas

IBM Research

Ehud Karavani

IBM Research

Dennis Wei

IBM Research

Kush Varshney

IBM Research

Pablo Nepomnaschy

Simon Fraser University

Published

August 3, 2024

Doi
Abstract

Discontinuation rates vary by family planning method and across socio-economic contexts. Understanding these variations and their causes is paramount for developing and implementing policies aimed at curbing discontinuation rates. Randomized controlled trials (RCTs) are ideal for obtaining this information, but this design can be extremely expensive and logistically complex. The ongoing collection of comprehensive data sets, such as Demographic and Health Surveys (DHS data), when combined with machine learning methods, present an alternative and relatively cost-effective means of evidence gathering for policy development. Here, we use causal inference to estimate the effect of injectable contraceptive use on discontinuation over the 12-month period that follows its adoption. To that aim, we use retrospective observational data from seven sub-Saharan African countries captured by the DHS’ Contraceptive Calendar. We use machine learning methods to characterize data regions that share common covariate support. We find that the use of injectables increased the risk of discontinuation in four of the seven countries analyzed. Consistent with existing literature, we find that concerns with the side-effects of injectables appear to be the most frequent reason for discontinuation. However, these risks decreased after adjusting for socio-economic factors. As risk estimates may not apply uniformly within populations, we characterized the sub-populations for robust estimations by their geographical region, level of unmet needs, marital status, level of education, and age of first sex.

IJCAI 2024: Special Track on AI for Good

Citation

@inproceedings{akinwande2024using,
  title={Using Causal Inference to Investigate Contraceptive Discontinuation in Sub-Saharan Africa},
  author={Akinwande, Victor and MacGregor, Megan and Cintas, Celia and Karavani, Ehud and Wei, Dennis and Varshney, Kush and Nepomnaschy, Pablo},
  booktitle={International Joint Conference on Artificial Intelligence},
  year={2024}
}