A simple, home-therapy algorithm to prevent hospitalisation for COVID-19 patients: A retrospective observational matched-cohort study

Autor: Fredy Suter, Elena Consolaro, Stefania Pedroni, Chiara Moroni, Elena Pastò, Maria Vittoria Paganini, Grazia Pravettoni, Umberto Cantarelli, Nadia Rubis, Norberto Perico, Annalisa Perna, Tobia Peracchi, Piero Ruggenenti, Giuseppe Remuzzi
Jazyk: angličtina
Rok vydání: 2021
Předmět:
Zdroj: EClinicalMedicine, Vol 37, Iss , Pp 100941- (2021)
Druh dokumentu: article
ISSN: 2589-5370
DOI: 10.1016/j.eclinm.2021.100941
Popis: Background: Effective home treatment algorithms implemented based on a pathophysiologic and pharmacologic rationale to accelerate recovery and prevent hospitalisation of patients with early coronavirus disease 2019 (COVID-19) would have major implications for patients and health system. Methods: This academic, matched-cohort study compared outcomes of 90 consecutive consenting patients with mild COVID-19 treated at home by their family physicians between October 2020 and January 2021 in Northern and Central Italy, according to the proposed recommendation algorithm, with outcomes for 90 age-, sex-, and comorbidities-matched patients who received other therapeutic regimens. Primary outcome was time to resolution of major symptoms. Secondary outcomes included prevention of hospitalisation. Analyses were by intention-to-treat. Findings: All patients achieved complete remission. The median [IQR] time to resolution of major symptoms was 18 [14–23] days in the ‘recommended schedule' cohort and 14 [7–30] days in the matched ‘control’ cohort (p = 0·033). Other symptoms persisted in a lower percentage of patients in the ‘recommended’ than in the ‘control’ cohort (23·3% versus 73·3%, respectively, p90%. Interpretation: Implementation of an early home treatment algorithm failed to accelerate recovery from major symptoms of COVID-19, but reduced the risk of hospitalisation and related treatment costs. Given the study design, additional research would be required to consolidate the proposed treatment recommendations. Funding: Fondazione Cav.Lav. Carlo Pesenti
Databáze: Directory of Open Access Journals