Additional file 4 of Investigating the drivers of the spatio-temporal heterogeneity in COVID-19 hospital incidence—Belgium as a study case

Additional file 4: Table S1. Analyses of the potential predictors of spatial heterogeneity in hospitalisation incidence of nursing home (NH) residents. This table is equivalent to Table 1 and summarises the results of univariate linear regression (ULR), multivariate linear regression (MLR), and boosted regression trees (BRT) analyses performed to investigate the association between measures of hospitalisation incidence (HI) of NH residents and various spatial covariates associated with hospital catchment areas (HCAs). We report the following metrics: the coefficient of determination (R2) for t... Mehr ...

Verfasser: Simon Dellicour (10970274)
Catherine Linard (40355)
Nina Van Goethem (7235117)
Daniele Da Re (8362914)
Jean Artois (5337326)
Jérémie Bihin (10970277)
Pierre Schaus (6895370)
François Massonnet (10970280)
Herman Van Oyen (151907)
Sophie O. Vanwambeke (8362926)
Niko Speybroeck (40990)
Marius Gilbert (118241)
Dokumenttyp: Text
Erscheinungsdatum: 2021
Schlagwörter: Medicine / Biotechnology / Cancer / Inorganic Chemistry / Plant Biology / Computational Biology / Environmental Sciences not elsewhere classified / Biological Sciences not elsewhere classified / Mathematical Sciences not elsewhere classified / Information Systems not elsewhere classified / COVID-19 / Hospitalisation incidence / Spatial covariates / Temporal covariates / Boosted regression trees / Belgium
Sprache: unknown
Permalink: https://search.fid-benelux.de/Record/base-27374974
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : https://doi.org/10.6084/m9.figshare.14782545.v1

Additional file 4: Table S1. Analyses of the potential predictors of spatial heterogeneity in hospitalisation incidence of nursing home (NH) residents. This table is equivalent to Table 1 and summarises the results of univariate linear regression (ULR), multivariate linear regression (MLR), and boosted regression trees (BRT) analyses performed to investigate the association between measures of hospitalisation incidence (HI) of NH residents and various spatial covariates associated with hospital catchment areas (HCAs). We report the following metrics: the coefficient of determination (R2) for the ULR analyses, the regression coefficient (β) for the MLR analyses, and the relative influence (RI) associated with each spatial covariate for the BRT analyses. In addition, we also report the overall R2 and Spearman correlation (“cor.”) for each distinct MLR and BRT analysis, respectively. (*) indicates if a given R2 or β is significant (p-value < 0.05). Table S2. Analyses of the potential predictors of spatial heterogeneity in hospitalisation incidence, when excluding Brussels-Capital Region and a potential outlier area. This table is equivalent to Table 1 and summarises the results of univariate linear regression (ULR), multivariate linear regression (MLR), and boosted regression trees (BRT) analyses performed to investigate the association between measures of hospitalisation incidence (HI) and various spatial covariates associated with hospital catchment areas (HCAs). For these alternative analyses, we discarded the six HCAs of the Brussels-Capital Region, as well as a potential outlier HCA (marked with an asterisk in Fig. 4). We report the following metrics: the coefficient of determination (R2) for the ULR analyses, the regression coefficient (β) for the MLR analyses, and the relative influence (RI) associated with each spatial covariate for the BRT analyses. In addition, we also report the overall R2 and Spearman correlation (“cor.”) for each distinct MLR and BRT analysis, respectively. (*) indicates if a given ...