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Measuring the Response Performance of U.S. States against COVID-19 Using an Integrated DEA CART and Logistic Regression Approach

机译:使用综合的DEA购物车和Logistic回归方法测量美国各国对Covid-19的响应性能

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摘要

Measuring the U.S.’s COVID-19 response performance is an extremely important challenge for health care policymakers. This study integrates Data Envelopment Analysis (DEA) with four different machine learning (ML) techniques to assess the efficiency and evaluate the U.S.’s COVID-19 response performance. First, DEA is applied to measure the efficiency of fifty U.S. states considering four inputs: number of tested, public funding, number of health care employees, number of hospital beds. Then, number of recovered from COVID-19 as a desirable output and number of confirmed COVID-19 cases as a undesirable output are considered. In the second stage, Classification and Regression Tree (CART), Boosted Tree (BT), Random Forest (RF), and Logistic Regression (LR) were applied to predict the COVID-19 response performance based on fifteen environmental factors, which were classified into social distancing, health policy, and socioeconomic measures. The results showed that 23 states were efficient with an average efficiency score of 0.97. Furthermore, BT and RF models produced the best prediction results and CART performed better than LR. Lastly, urban, physical inactivity, number of tested per population, population density, and total hospital beds per population were the most influential factors on efficiency.
机译:测量美国的Covid-19响应性能是医疗保健政策制定者的极其重要的挑战。本研究将数据包络分析(DEA)与四种不同的机器学习(ML)技术集成,以评估效率并评估美国的Covid-19响应性能。首先,申请DEA以衡量考虑四次投入的五十五百的效率:经过测试,公共资金,医疗保健员工人数,医院床位数。然后,考虑了从Covid-19中回收的数量作为理想的输出和确认的Covid-19例的数量作为不希望的输出。在第二阶段,分类和回归树(推车),升压树(BT),随机森林(RF)和逻辑回归(LR)以预测基于十五个环境因素的Covid-19响应性能,分类为分类进入社会疏远,健康政策和社会经济措施。结果表明,23个州的平均效率得分为0.97。此外,BT和RF模型产生了比LR更好的预测结果和推车。最后,城市,身体不活动,每人经过的经过测试数量,人口密度和每群体的总医院床是最具影响力的效率因素。

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