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Profiling delirium progression in elderly patients via continuous-time markov multi-state transition models

  • Honoria Ocagli
  • , Danila Azzolina
  • , Rozita Soltanmohammadi
  • , Roqaye Aliyari
  • , Daniele Bottigliengo
  • , Aslihan Senturk Acar
  • , Lucia Stivanello
  • , Mario Degan
  • , Ileana Baldi
  • , Giulia Lorenzoni
  • , Dario Gregori

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

Poor recognition of delirium among hospitalized elderlies is a typical challenge for health care professionals. Considering methodological insufficiency for assessing time-varying diseases, a continuous-time Markov multi-state transition model (CTMMTM) was used to investigate delirium evolution in elderly patients. This is a longitudinal observational study performed in September 2016 in an Italian hospital. Change of delirium states was modeled according to the 4AT score. A Cox model (CM) and a CTMMTM were used for identifying factors affecting delirium onset both with a two-state and three-state model. In this study, 78 patients were enrolled and evaluated for 5 days. Both the CM and the CTMMTM show that urine catheter (UC), aging, drugs, and invasive devices (ID) are risk factors for delirium onset. The CTMMTM model shows that transition from nodelirium/cognitive impairment to delirium was associated with aging (HR = 1.14; 95%CI, 1.05, 1.23) and neuroleptics (HR = 4.3; 1.57, 11.77), dopaminergic drugs (HR = 3.89; 1.2, 12.6), UC (HR = 2.92; 1.09, 7.79) and ID (HR = 1.67; 103, 2.71). These results are confirmed by the multivariable model. Aging, ID, antibiotics, drugs affecting the central nervous system, and absence of moving ability are identified as the significant predictors of delirium. Additionally, it seems that modeling with CTMMTM may show associations that are not directly detectable with the traditional CM.

Original languageEnglish
Article number445
Number of pages12
JournalJournal of Personalized Medicine
Volume11
Issue number6
DOIs
Publication statusPublished - 2021

Keywords

  • 4AT scale
  • Continuous-time Markov multi-state transition model
  • Cox model
  • Delirium

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