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Predicting the demand of physician workforce: an international model based on

机译:预测医师劳动力的需求:基于

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Background Appropriateness of physician workforce greatly influences the quality of healthcare. When facing the crisis of physician shortages, the correction of manpower always takes an extended time period, and both the public and health personnel suffer. To calculate an appropriate number of Physician Density (PD) for a specific country, this study was designed to create a PD prediction model, based on health-related data from many countries. Methods Twelve factors that could possibly impact physicians' demand were chosen, and data of these factors from 130 countries (by reviewing 195) were extracted. Multiple stepwise-linear regression was used to derive the PD prediction model, and a split-sample cross-validation procedure was performed to evaluate the generalizability of the results. Results Using data from 130 countries, with the consideration of the correlation between variables, and preventing multi-collinearity, seven out of the 12 predictor variables were selected for entry into the stepwise regression procedure. The final model was: PD = (5.014 - 0.128 × proportion under age 15 years + 0.034 × life expectancy)2, with R2 of 80.4%. Using the prediction equation, 70 countries had PDs with "negative discrepancy", while 58 had PDs with "positive discrepancy". Conclusion This study provided a regression-based PD model to calculate a "norm" number of PD for a specific country. A large PD discrepancy in a country indicates the needs to examine physician's workloads and their well-being, the effectiveness/efficiency of medical care, the promotion of population health and the team resource management.
机译:背景技术医师队伍的适当性极大地影响了医疗保健的质量。当面对医生短缺的危机时,人力的校正总是需要较长的时间,公共和卫生人员都会遭受痛苦。为了计算特定国家/地区的适当医师密度(PD),本研究旨在基于来自许多国家/地区的与健康相关的数据,创建一个PD预测模型。方法选择可能影响医生需求的十二个因素,并从130个国家(通过回顾195个)中提取这些因素的数据。使用多元逐步线性回归推导PD预测模型,并执行分割样本交叉验证程序来评估结果的可推广性。结果使用来自130个国家的数据,考虑变量之间的相关性并防止多重共线性,从12个预测变量中选择了7个变量输入逐步回归程序。最终模型为:PD =(5.014-0.128×15岁以下比例+ 0.034×预期寿命) 2 ,R 2 为80.4%。使用预测方程式,有70个国家的PD呈“负差异”,而有58个国家的PD呈“正差异”。结论本研究提供了基于回归的PD模型,以计算特定国家/地区的PD“正常”数量。一个国家的PD差异很大,表明需要检查医师的工作量及其健康状况,医疗保健的有效性/效率,促进人口健康和团队资源管理。

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