DSpace Repository

ICU staffing feature phenotypes and their relationship with patients' outcomes: an unsupervised machine learning analysis

Show simple item record

dc.contributor.author Zampieri, Fernando G.
dc.contributor.author Salluh, Jorge I. F.
dc.contributor.author Azevedo, Luciano C. P.
dc.contributor.author Kahn, Jeremy M.
dc.contributor.author Damiani, Lucas P.
dc.contributor.author Borges, Lunna P.
dc.contributor.author Viana, William N.
dc.contributor.author Costa, Roberto
dc.contributor.author Corrêa, Thiago D.
dc.contributor.author Araya, Dieter E. S.
dc.contributor.author Maia, Marcelo O.
dc.contributor.author Ferez, Marcus A.
dc.contributor.author Carvalho, Alexandre G. R.
dc.contributor.author Knibel, Marcos F.
dc.contributor.author Melo, Ulisses O.
dc.contributor.author Santino, Marcelo S.
dc.contributor.author Lisboa, Thiago
dc.contributor.author Caser, Eliana B.
dc.contributor.author Besen, Bruno A. M. P.
dc.contributor.author Bozza, Fernando A.
dc.contributor.author Angus, Derek C.
dc.contributor.author Soares, Marcio
dc.date.accessioned 2021-07-30T17:40:05Z
dc.date.available 2021-07-30T17:40:05Z
dc.date.issued 2019
dc.identifier.citation ZAMPIERI, Fernando G. et al. ICU staffing feature phenotypes and their relationship with patients' outcomes: an unsupervised machine learning analysis. Intensive Care Medicine, v. 45, p. 1599-1607, 2019. Disponível em: https://link.springer.com/article/10.1007/s00134-019-05790-z. Acesso em: 30 jul. 2021. pt_BR
dc.identifier.uri http://hdl.handle.net/11690/1900
dc.description.abstract Purpose: To study whether ICU stafng features are associated with improved hospital mortality, ICU length of stay (LOS) and duration of mechanical ventilation (MV) using cluster analysis directed by machine learning. Methods: The following variables were included in the analysis: average bed to nurse, physiotherapist and physician ratios, presence of 24/7 board-certifed intensivists and dedicated pharmacists in the ICU, and nurse and physiotherapist autonomy scores. Clusters were defned using the partition around medoids method. We assessed the association between clusters and hospital mortality using logistic regression and with ICU LOS and MV duration using competing risk regression. Results: Analysis included data from 129,680 patients admitted to 93 ICUs (2014–2015). Three clusters were identifed. The features distinguishing between the clusters were: the presence of board-certifed intensivists in the ICU 24/7 (present in Cluster 3), dedicated pharmacists (present in Clusters 2 and 3) and the extent of nurse autonomy (which increased from Clusters 1 to 3). The patients in Cluster 3 exhibited the best outcomes, with lower adjusted hospital mortality [odds ratio 0.92 (95% confdence interval (CI), 0.87–0.98)], shorter ICU LOS [subhazard ratio (SHR) for patients surviving to ICU discharge 1.24 (95% CI 1.22–1.26)] and shorter durations of MV [SHR for undergoing extubation 1.61(95% CI 1.54–1.69)]. Cluster 1 had the worst outcomes. Conclusion: Patients treated in ICUs combining 24/7 expert intensivist coverage, a dedicated pharmacist and nurses with greater autonomy had the best outcomes. All of these features represent achievable targets that should be considered by policy makers with an interest in promoting equal and optimal ICU care. pt_BR
dc.language.iso en_US pt_BR
dc.publisher Springer Open Choice pt_BR
dc.rights Open Access en
dc.subject Intensive care unit pt_BR
dc.subject Outcomes pt_BR
dc.subject Cluster analysis pt_BR
dc.subject Nurse autonomy pt_BR
dc.subject Stafng features pt_BR
dc.subject ICU organization pt_BR
dc.title ICU staffing feature phenotypes and their relationship with patients' outcomes: an unsupervised machine learning analysis pt_BR
dc.type Artigo pt_BR


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Advanced Search

Browse

My Account