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Investigating the Congruence of Crowdsourced Information With Official Government Data: The Case of Pediatric Clinics

机译:用政府官方数据调查众包信息的一致性:儿科诊所案例

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Background: Health 2.0 is a benefit to society by helping patients acquire knowledge about health care by harnessing collective intelligence. However, any misleading information can directly affect patients’ choices of hospitals and drugs, and potentially exacerbate their health condition.Objective: This study investigates the congruence between crowdsourced information and official government data in the health care domain and identifies the determinants of low congruence where it exists. In-line with infodemiology, we suggest measures to help the patients in the regions vulnerable to inaccurate health information.Methods: We text-mined multiple online health communities in South Korea to construct the data for crowdsourced information on public health services (173,748 messages). Kendall tau and Spearman rank order correlation coefficients were used to compute the differences in 2 ranking systems of health care quality: actual government evaluations of 779 hospitals and mining results of geospecific online health communities. Then we estimated the effect of sociodemographic characteristics on the level of congruence by using an ordinary least squares regression.Results: The regression results indicated that the standard deviation of married women’s education (P=.046), population density (P=.01), number of doctors per pediatric clinic (P=.048), and birthrate (P=.002) have a significant effect on the congruence of crowdsourced data (adjusted R2=.33). Specifically, (1) the higher the birthrate in a given region, (2) the larger the variance in educational attainment, (3) the higher the population density, and (4) the greater the number of doctors per clinic, the more likely that crowdsourced information from online communities is congruent with official government data.Conclusions: To investigate the cause of the spread of misleading health information in the online world, we adopted a unique approach by associating mining results on hospitals from geospecific online health communities with the sociodemographic characteristics of corresponding regions. We found that the congruence of crowdsourced information on health care services varied across regions and that these variations could be explained by geospecific demographic factors. This finding can be helpful to governments in reducing the potential risk of misleading online information and the accompanying safety issues.
机译:背景:Health 2.0通过利用集体智慧帮助患者获得有关医疗保健的知识,对社会有益。然而,任何误导性信息都可能直接影响患者对医院和药物的选择,并有可能加重他们的健康状况。目的:本研究调查了卫生保健领域中众包信息与政府官方数据之间的一致性,并确定了低一致性的决定因素它存在。与信息流行病学一致,我们建议采取措施来帮助那些容易受到不准确健康信息影响的地区的患者。方法:我们在韩国的多个在线健康社区进行文本挖掘,以构建用于公共卫生服务的众包信息的数据(173,748条消息) 。使用Kendall tau和Spearman等级顺序相关系数来计算两种医疗质量等级系统之间的差异:政府对779家医院的实际评估以及特定地理在线健康社区的开采结果。然后,我们使用普通最小二乘回归估计了社会人口统计学特征对同等水平的影响。结果:回归结果表明,已婚妇女的教育水平的标准偏差(P = .046),人口密度(P = .01) ,每个儿科诊所的医生人数(P = .048)和出生率(P = .002)对众包数据的一致性具有重大影响(调整后的R2 = .33)。具体来说,(1)给定地区的出生率越高;(2)受教育程度的差异越大;(3)人口密度越高;(4)每个诊所的医生人数越多,则可能性越大结论:为了调查在线世界中误导性健康信息传播的原因,我们采用了独特的方法,将特定地理在线健康社区中医院的挖掘结果与社会人口统计学相关联相应区域的特征。我们发现,众包信息在医疗保健服务上的一致性在不同地区之间存在差异,并且这些差异可以通过地理人口统计学因素来解释。这一发现可以帮助政府减少误导在线信息和随之而来的安全问题的潜在风险。

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