2021
DOI: 10.21203/rs.3.rs-658127/v1
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A 15-Year Trend of Catastrophic Health Payment and its Inequality in China: Evidence from Longitudinal Data

Abstract: Background:The Chinese health care system has gone through two major cycles of reform since the 1980s. This study aims to comprehensively track the trends in the occurrence of catastrophic health payment and its inequality in the past 15 years, which may help better understand the influence of health system reforms on catastrophic health payment and its inequality. Methods:The study employed the subset of data from China Health and Nutrition Survey conducted from 1991 to 2015. Concentration index and decomposi… Show more

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“…The dependent variables in this study were the incidence and intensity of CHE. Build on previous research (31,(43)(44)(45), we measured CHE as out-of-pocket (OOP) medical expenses equal to or exceeding 40% of the family's ability to pay (CTP). We included annual non-food household consumption expenditure as a measure of household ability to pay (CTP) to avoid measurement biases that may be missed by poor households (31,46).…”
Section: Data Sourcementioning
confidence: 99%
“…The dependent variables in this study were the incidence and intensity of CHE. Build on previous research (31,(43)(44)(45), we measured CHE as out-of-pocket (OOP) medical expenses equal to or exceeding 40% of the family's ability to pay (CTP). We included annual non-food household consumption expenditure as a measure of household ability to pay (CTP) to avoid measurement biases that may be missed by poor households (31,46).…”
Section: Data Sourcementioning
confidence: 99%