Uncontrolled diabetes and health care utilisation : a bivariate Latent Markov model approach

Gil, Joan and Li Donni, Paolo and Zucchelli, Eugenio (2018) Uncontrolled diabetes and health care utilisation : a bivariate Latent Markov model approach. Working Paper. Health, Econometrics and Data Group (HEDG), University of York.

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While uncontrolled diabetes (UD) or poor glycaemic control is a widespread condition with potentially life-threatening consequences, there is sparse evidence of its effects on health care utilisation. We model the propensities to consume health care and UD by employing an innovative bivariate Latent Markov model which allows for dynamic unobserved heterogeneity, movements between latent states and the endogeneity of UD. We estimate the effects of UD on primary and secondary health care consumption using a panel dataset of rich administrative records from Spain and measure UD using a biomarker. We find that UD does not have a statistically significant effect on health care use. Furthermore, individuals appear to move across latent classes and increase their propensities to poor glycaemic control and health care use over time. Our results suggest that by ignoring time-varying unobserved heterogeneity and the endogeneity of UD, the effects of UD on health care utilisation might be overestimated and this could lead to biased findings. Our approach reveals heterogeneity in behaviour beyond standard groupings of frequent versus infrequent users of health care services. We argue that this dynamic latent Markov approach could be used more widely to model the determinants of health care use.

Item Type:
Monograph (Working Paper)
?? diabeteshealth care utilisationunobserved heterogeneitylatent markov model c35; i10; i12 ??
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Deposited On:
24 Sep 2018 12:40
Last Modified:
28 Nov 2023 10:54