| Literature DB >> 36273022 |
Jalil Taghia1, Valentin Kulyk2, Selim Ickin2, Mats Folkesson2, Cecilia Nyström3, Kristofer Ȧgren4, Thomas Brezicka5, Tore Vingare6, Julia Karlsson6, Ingrid Fritzell6, Ralph Harlid7, Bo Palaszewski8, Magnus Kjellberg9, Jörgen Gustafsson10.
Abstract
Reliable forecast of COVID-19 hospital admissions in near-term horizons can help enable effective resource management which is vital in reducing pressure from healthcare services. The use of mobile network data has come to attention in response to COVID-19 pandemic leveraged on their ability in capturing people social behavior. Crucially, we show that there are latent features in irreversibly anonymized and aggregated mobile network data that carry useful information in relation to the spread of SARS-CoV-2 virus. We describe development of the forecast models using such features for prediction of COVID-19 hospital admissions in near-term horizons (21 days). In a case study, we verified the approach for two hospitals in Sweden, Sahlgrenska University Hospital and Södra Älvsborgs Hospital, working closely with the experts engaged in the hospital resource planning. Importantly, the results of the forecast models were used in year 2021 by logisticians at the hospitals as one of the main inputs for their decisions regarding resource management.Entities:
Year: 2022 PMID: 36273022 DOI: 10.1038/s41598-022-22350-6
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.996