Literature DB >> 33796171

Prediction of out-of-pocket health expenditures in Rwanda using machine learning techniques.

Roger Muremyi1, Dominique Haughton2, Ignace Kabano1, François Niragire3.   

Abstract

INTRODUCTION: in Rwanda, the estimated out-of-pocket health expenditure has been increased from 24.46% in 2000 to 26% in 2015. Despite the existence of guideline in estimation of out-of-pocket health expenditures provided by WHO (2018), the estimation of out-of-pocket health expenditure still have difficulties in many countries including Rwanda.
METHODS: the purpose of this paper was to figure out the best model which predicts the out-of-pocket health expenditures in Rwanda during the process of considering various techniques of machine learning by using the Rwanda Integrated Living Conditions Surveys (EICV5) of 14580 households (2018).
RESULTS: our findings presented the model which predict the out-of-pocket health expenditures with higher accuracy and was found as treenet model. Furthermore, machine learning techniques were used to judge which predictor variable was important in our prediction process and comparison of the performance of the algorithms through train accuracy and test accuracy metric measures. Finally, the findings show that the tests of accuracy of the models were 50.16% for multivariate adaptive regression splines (MARS) model, 74% decision tree model, 87% for treenet model, 83% for random forest model, gradient boosting 81%, predictor total consumption played a significant role in the model for all tested models.
CONCLUSION: finally, we conclude that the total consumption of the household came out to be the most important variable which is consistently true to all the algorithms tested. The findings from our study have policy implications for policy makers in Rwanda and in the world generally. We recommend the government to significantly increase public spending on health. Domestic financial resources are key to moving closer to universal health coverage (UHC) and should be increased on a long-term basis. In addition, these results will be useful for the future to assess the out-of-pocket health expenditures dataset. Copyright: Roger Muremyi et al.

Entities:  

Keywords:  MARS; Rwanda; accuracy; out-of-pocket; testing; training; validation

Mesh:

Year:  2020        PMID: 33796171      PMCID: PMC7992429          DOI: 10.11604/pamj.2020.37.357.27287

Source DB:  PubMed          Journal:  Pan Afr Med J


  9 in total

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9.  Catastrophic health spending in Europe: equity and policy implications of different calculation methods.

Authors:  Jonathan Cylus; Sarah Thomson; Tamás Evetovits
Journal:  Bull World Health Organ       Date:  2018-06-04       Impact factor: 9.408

  9 in total

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