| Literature DB >> 31261952 |
Hai-Yan Yu1,2, Jing-Jing Chen3, Jying-Nan Wang4, Ya-Ling Chiu5, Hang Qiu6,7, Li-Ya Wang7.
Abstract
Inequality of health services for different specialty categories not only occurs in different areas in the world, but also happens in the online service platform. In the online health community (OHC), health services often display inequality for different specialty categories, including both online views and medical consultations for offline registered services. Moreover, how the city-level factors impact the inequality of health services in OHC is still unknown. We designed a causal inference study with data on distributions of serviced patients and online views in over 100 distinct specialty categories on one of the largest OHCs in China. To derive the causal effect of the city-levels (two levels inducing 1 and 0) on the Gini coefficient, we matched the focus cases in cities with rich healthcare resources with the potential control cities. For each of the specialty categories, we first estimated the average treatment effect of the specialty category's Gini coefficient (SCGini) with the balanced covariates. For the Gini coefficient of online views, the average treatment effect of level-1 cities is 0.573, which is 0.016 higher than that of the matched group. Similarly, for the Gini coefficient of serviced patients, the average treatment effect of level-1 cities is 0.470, which is 0.029 higher than that of the matched group. The results support the argument that the total Gini coefficient of the doctors in OHCs shows that the inequality in health services is still very serious. This study contributes to the development of a theoretically grounded understanding of the causal effect of city-level factors on the inequality of health services in an online to offline health service setting. In the future, heterogeneous results should be considered for distinct groups of doctors who provide different combinations of online contributions and online attendance.Entities:
Keywords: causality; consultation; health service; inequality; medical specialty
Mesh:
Year: 2019 PMID: 31261952 PMCID: PMC6651774 DOI: 10.3390/ijerph16132314
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Unequal geograpghical distribution of medical resources in the investigated online health community. Beijing and Shanghai are the cites (city level = 1) with richer healthcare resources (including a larger population of doctors) and patients than those of the other cities (city level = 0). The size of circles indicates the number of patients, and the darkness of the color in the circles indicates the number of doctors. Data were collected from the online health service platform www.haodf.com on 26 June 2017.
Variable Definitions and Measurements.
| Variables | Definitions | Measurements |
|---|---|---|
| Dependent Variables | ||
| Specialty category’s Gini coefficient of serviced patients | Gini coefficient of doctors’ service delivery (serviced patients) for the doctors clustered in specialty category | |
| Specialty category’s Gini coefficient of online views | Gini coefficient of doctors’ online views for the doctors clustered in specialty category | |
| Covariates | ||
|
| Average number of articles | Average number of articles of the doctors clustered in specialty category |
|
| Average breadth of service diversity | Average breadth of the voted specialties (from patient votes) of all the doctors clustered in specialty category |
|
| Average doctor review rating | Mean of the overall ratings in user reviews of the doctors clustered in the specialty category |
|
| Average doctor online contribution | Mean of doctors’ online contribution across the category’s doctors clustered in specialty category |
| Treatment variables: Divide the Samples Separately | ||
|
| City level | A dummy variable |
Figure 2Data Acquired and Filtering Process (Accessed From Good Doctor Website).
Figure 3Distribution of Propensity Scores with the Experimental Data. (a) Diagnostics Graphical Plot, (b) Absolute Standard Difference Means.
Statistics of the Selected Matched Patient Characteristics.
| Variables | Focus Cases | Matched Controls | 95% CI * in Difference | |
|---|---|---|---|---|
|
| 31.235 | 31.581 | (−6.521; 7.215) | 0.921 |
|
| 9.244 | 9.376 | (−0.067; 0.330) | 0.194 |
|
| 2.818 | 2.809 | (−0.048; 0.029) | 0.628 |
|
| 34065.2 | 32516.6 | (−4903.7; 1806.7) | 0.366 |
*CI: confidence interval. Number of articles of each doctor; Breadth of the voted specialties; Number of the overall ratings in user reviews of each doctor; Number of doctors’ online contribution.
Statistics of the Empirical Experimental Data (n = 2603).
| Mean of Focus Cases | Mean of Matched Controls | 95% CI * in Difference | ||
|---|---|---|---|---|
| Patients before matching | 1698 | 2680 | (−1158; −805) | <0.001 |
| Patients after matching | 2465 | 2680 | (−436; 6) | 0.056 |
| Views before matching | 1,065,312 | 2,191,087 | (−1340802; −910749) | <0.001 |
| Views after matching | 1,771,188 | 2,191,087 | (−695284; −144514) | 0.003 |
*CI: confidence interval.
Statistics (Gini Coefficients) of the Empirical Experimental Data.
| Gini of Focus Cases | Gini of Controls After Matching | Gini of Controls Before Matching | Gini of All the Cases after Matching | Gini of All the Cases Before Matching | |
|---|---|---|---|---|---|
| SP | 0.635 | 0.629 | 0.604 | 0.632 | 0.622 |
| OR | 0.758 | 0.789 | 0.780 | 0.774 | 0.783 |
| Difference | 0.123 | 0.16 | 0.176 | 0.142 | 0.161 |
|
| 2603 | 2603 | 7041 | 5206 | 9644 |
Note: SP—serviced patients; OR—online reviews.
Figure 4Lorenz Curve of the Empirical Experimental Data on Patient and Views Before Matching and After Matching. The Horizontal Axis Represents the Rank Percentile of Severed Patients.