Revuelta Ignacio, Santos-Arteaga Francisco J, Montagud-Marrahi Enrique, Ventura-Aguiar Pedro, Di Caprio Debora, Cofan Frederic, Cucchiari David, Torregrosa Vicens, Piñeiro Gaston Julio, Esforzado Nuria, Bodro Marta, Ugalde-Altamirano Jessica, Moreno Asuncion, Campistol Josep M, Alcaraz Antonio, Bayès Beatriu, Poch Esteban, Oppenheimer Federico, Diekmann Fritz
Department of Nephrology and Renal Transplantation, Hospital Clínic, Villarroel 170 (Escala 10 - Planta 5), 08036 Barcelona, Spain.
Laboratori Experimental de Nefrologia i Trasplantament (LENIT), Institut d'Investigacions Biomèdiques August Pi i Sunyer (IDIBAPS), Barcelona, Spain.
Artif Intell Rev. 2021;54(6):4653-4684. doi: 10.1007/s10462-021-10008-0. Epub 2021 Apr 23.
In an overwhelming demand scenario, such as the SARS-CoV-2 pandemic, pressure over health systems may outburst their predicted capacity to deal with such extreme situations. Therefore, in order to successfully face a health emergency, scientific evidence and validated models are needed to provide real-time information that could be applied by any health center, especially for high-risk populations, such as transplant recipients. We have developed a hybrid prediction model whose accuracy relative to several alternative configurations has been validated through a battery of clustering techniques. Using hospital admission data from a cohort of hospitalized transplant patients, our hybrid Data Envelopment Analysis (DEA)-Artificial Neural Network (ANN) model extrapolates the progression towards severe COVID-19 disease with an accuracy of 96.3%, outperforming any competing model, such as logistic regression (65.5%) and random forest (44.8%). In this regard, DEA-ANN allows us to categorize the evolution of patients through the values of the analyses performed at hospital admission. Our prediction model may help guiding COVID-19 management through the identification of key predictors that permit a sustainable management of resources in a patient-centered model.
The online version contains supplementary material available at 10.1007/s10462-021-10008-0.