The hospital emigration to another region in the light of the environmental, social and governance model in Italy during the period 2004-2021

被引:1
|
作者
Resta, Emanuela [1 ]
Resta, Onofrio [2 ]
Costantiello, Alberto [3 ]
Leogrande, Angelo [3 ,4 ]
机构
[1] Univ Foggia, Foggia, Puglia, Italy
[2] Univ Bari Aldo Moro, Bari, Puglia, Italy
[3] LUM Univ Giuseppe Degennaro, Str Statale 100 Km 18, Bari, Puglia, Italy
[4] LUM Enterprise Srl, Str Statale 100 Km 18, Bari, Puglia, Italy
关键词
Hospital emigration; Regional inequalities; Panel data; Instrumental variable estimation; Machine-learning; I11; I12; I13; I14; I15; I18; HEALTH-CARE SERVICES; PANEL-DATA ANALYSIS; PATIENT MOBILITY; CLUSTER-ANALYSIS; BIAS; HETEROGENEITY; ADVANTAGES; ALGORITHM; RIGHTS; EU;
D O I
10.1186/s12889-024-19369-x
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
The following article presents an analysis of the impact of the Environmental, Social and Governance-ESG determinants on Hospital Emigration to Another Region-HEAR in the Italian regions in the period 2004-2021. The data are analysed using Panel Data with Random Effects, Panel Data with Fixed Effects, Pooled Ordinary Least Squares-OLS, Weighted Least Squares-WLS, and Dynamic Panel at 1 Stage. Furthermore, to control endogeneity we also created instrumental variable models for each component of the ESG model. Results show that HEAR is negatively associated to the E, S and G component within the ESG model. The data were subjected to clustering with a k-Means algorithm optimized with the Silhouette coefficient. The optimal clustering with k=2 is compared to the sub-optimal cluster with k=3. The results suggest a negative relationship between the resident population and hospital emigration at regional level. Finally, a prediction is proposed with machine learning algorithms classified based on statistical performance. The results show that the Artificial Neural Network-ANN algorithm is the best predictor. The ANN predictions are critically analyzed in light of health economic policy directions.
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页数:34
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