Frontiers in Medicine (Dec 2022)

Analysis of the impact of social determinants and primary care morbidity on population health outcomes by combining big data: A research protocol

  • Sabela Couso-Viana,
  • Carmen Bentué-Martínez,
  • María Victoria Delgado-Martín,
  • María Victoria Delgado-Martín,
  • Elena Cabeza-Irigoyen,
  • Montserrat León-Latre,
  • Ana Concheiro-Guisán,
  • Ana Concheiro-Guisán,
  • María Xosé Rodríguez-Álvarez,
  • María Xosé Rodríguez-Álvarez,
  • Miguel Román-Rodríguez,
  • Javier Roca-Pardiñas,
  • Javier Roca-Pardiñas,
  • Javier Roca-Pardiñas,
  • María Zúñiga-Antón,
  • Ana García-Flaquer,
  • Pau Pericàs-Pulido,
  • Raquel Sánchez-Recio,
  • Raquel Sánchez-Recio,
  • Beatriz González-Álvarez,
  • Sara Rodríguez-Pastoriza,
  • Irene Gómez-Gómez,
  • Irene Gómez-Gómez,
  • Emma Motrico,
  • Emma Motrico,
  • José Luís Jiménez-Murillo,
  • Isabel Rabanaque,
  • Ana Clavería,
  • Ana Clavería

DOI
https://doi.org/10.3389/fmed.2022.1012437
Journal volume & issue
Vol. 9

Abstract

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BackgroundIn recent years, different tools have been developed to facilitate analysis of social determinants of health (SDH) and apply this to health policy. The possibility of generating predictive models of health outcomes which combine a wide range of socioeconomic indicators with health problems is an approach that is receiving increasing attention. Our objectives are twofold: (1) to predict population health outcomes measured as hospital morbidity, taking primary care (PC) morbidity adjusted for SDH as predictors; and (2) to analyze the geographic variability of the impact of SDH-adjusted PC morbidity on hospital morbidity, by combining data sourced from electronic health records and selected operations of the National Statistics Institute (Instituto Nacional de Estadística/INE).MethodsThe following will be conducted: a qualitative study to select socio-health indicators using RAND methodology in accordance with SDH frameworks, based on indicators published by the INE in selected operations; and a quantitative study combining two large databases drawn from different Spain’s Autonomous Regions (ARs) to enable hospital morbidity to be ascertained, i.e., PC electronic health records and the minimum basic data set (MBDS) for hospital discharges. These will be linked to socioeconomic indicators, previously selected by geographic unit. The outcome variable will be hospital morbidity, and the independent variables will be age, sex, PC morbidity, geographic unit, and socioeconomic indicators.AnalysisTo achieve the first objective, predictive models will be used, with a test-and-training technique, fitting multiple logistic regression models. In the analysis of geographic variability, penalized mixed models will be used, with geographic units considered as random effects and independent predictors as fixed effects.DiscussionThis study seeks to show the relationship between SDH and population health, and the geographic differences determined by such determinants. The main limitations are posed by the collection of data for healthcare as opposed to research purposes, and the time lag between collection and publication of data, sampling errors and missing data in registries and surveys. The main strength lies in the project’s multidisciplinary nature (family medicine, pediatrics, public health, nursing, psychology, engineering, geography).

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