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首页> 外文期刊>Investigative ophthalmology & visual science >Identifying the Critical Success Factors in the Coverage of Low Vision Services Using the Classification Analysis and Regression Tree Methodology
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Identifying the Critical Success Factors in the Coverage of Low Vision Services Using the Classification Analysis and Regression Tree Methodology

机译:使用分类分析和回归树方法确定低视力服务覆盖范围内的关键成功因素

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Purpose.: To identify the critical success factors (CSF) associated with coverage of low vision services. Methods.: Data were collected from a survey distributed to Vision 2020 contacts, government, and non-government organizations (NGOs) in 195 countries. The Classification and Regression Tree Analysis (CART) was used to identify the critical success factors of low vision service coverage. Independent variables were sourced from the survey: policies, epidemiology, provision of services, equipment and infrastructure, barriers to services, human resources, and monitoring and evaluation. Socioeconomic and demographic independent variables: health expenditure, population statistics, development status, and human resources in general, were sourced from the World Health Organization (WHO), World Bank, and the United Nations (UN). Results.: The findings identified that having 50% of children obtaining devices when prescribed (??2 = 44; P 0.000), multidisciplinary care (??2 = 14.54; P = 0.002), 3 rehabilitation workers per 10 million of population (??2 = 4.50; P = 0.034), higher percentage of population urbanized (??2 = 14.54; P = 0.002), a level of private investment (??2 = 14.55; P = 0.015), and being fully funded by government (??2 = 6.02; P = 0.014), are critical success factors associated with coverage of low vision services. Conclusions.: This study identified the most important predictors for countries with better low vision coverage. The CART is a useful and suitable methodology in survey research and is a novel way to simplify a complex global public health issue in eye care.
机译:目的:识别与低视力服务覆盖范围相关的关键成功因素(CSF)。方法:数据收集自195个国家/地区的Vision 2020联系人,政府和非政府组织(NGO)。分类和回归树分析(CART)用于确定低视力服务覆盖率的关键成功因素。自变量来自调查:政策,流行病学,服务提供,设备和基础设施,服务障碍,人力资源以及监测和评估。社会经济和人口独立变量:卫生支出,人口统计,发展状况和总体人力资源来自世界卫生组织(WHO),世界银行和联合国(UN)。结果:调查结果表明,有超过50%的儿童在开处方时获得器械(?? 2 = 44; P <0.000),多学科护理(?? 2 = 14.54; P = 0.002),每千万万人中有> 3名康复工作者人口(?2 = 4.50; P = 0.034),更高的城市化人口比例(?2 = 14.54; P = 0.002),私人投资水平(?2 = 14.55; P = 0.015)由政府完全资助(?? 2 = 6.02; P = 0.014)是与低视力服务覆盖率相关的关键成功因素。结论:本研究确定了低视力覆盖率较高的国家最重要的预测因素。 CART是调查研究中一种有用且合适的方法,并且是一种简化眼保健中复杂的全球公共卫生问题的新颖方法。

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