Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.

OBJECTIVES: To determine if a prediction rule for hospital mortality using dynamic variables in response to treatment of hypotension in patients with sepsis performs better than current models. DESIGN: Retrospective cohort study. SETTING: All ICUs at a tertiary care hospital. PATIENTS: Adult patient...

Disgrifiad llawn

Manylion Llyfryddiaeth
Prif Awduron: Mayaud, L, Lai, P, Clifford, G, Tarassenko, L, Celi, L, Annane, D
Fformat: Journal article
Iaith:English
Cyhoeddwyd: 2013
_version_ 1826284095434391552
author Mayaud, L
Lai, P
Clifford, G
Tarassenko, L
Celi, L
Annane, D
author_facet Mayaud, L
Lai, P
Clifford, G
Tarassenko, L
Celi, L
Annane, D
author_sort Mayaud, L
collection OXFORD
description OBJECTIVES: To determine if a prediction rule for hospital mortality using dynamic variables in response to treatment of hypotension in patients with sepsis performs better than current models. DESIGN: Retrospective cohort study. SETTING: All ICUs at a tertiary care hospital. PATIENTS: Adult patients admitted to ICUs between 2001 and 2007 of whom 2,113 met inclusion criteria and had sufficient data. INTERVENTIONS: None. MEASUREMENTS AND MAIN RESULTS: We developed a prediction algorithm for hospital mortality in patients with sepsis and hypotension requiring medical intervention using data from the Multiparameter Intelligent Monitoring in Intensive Care II. We extracted 189 candidate variables, including treatments, physiologic variables and laboratory values collected before, during, and after a hypotensive episode. Thirty predictors were identified using a genetic algorithm on a training set (n=1500) and validated with a logistic regression model on an independent validation set (n=613). The final prediction algorithm used included dynamic information and had good discrimination (area under the receiver operating curve=82.0%) and calibration (Hosmer-Lemeshow C statistic=10.43, p=0.06). This model was compared with Acute Physiology and Chronic Health Evaluation IV using reclassification indices and was found to be superior with an Net Reclassification Improvement of 0.19 (p<0.001) and an Integrated Discrimination Improvement of 0.09 (p<0.001). CONCLUSIONS: Hospital mortality predictions based on dynamic variables surrounding a hypotensive event is a new approach to predicting prognosis. A model using these variables has good discrimination and calibration and offers additional predictive prognostic information beyond established ones.
first_indexed 2024-03-07T01:08:43Z
format Journal article
id oxford-uuid:8c3b4f17-ae6d-4d0e-8e9f-b4a10c30b873
institution University of Oxford
language English
last_indexed 2024-03-07T01:08:43Z
publishDate 2013
record_format dspace
spelling oxford-uuid:8c3b4f17-ae6d-4d0e-8e9f-b4a10c30b8732022-03-26T22:43:21ZDynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:8c3b4f17-ae6d-4d0e-8e9f-b4a10c30b873EnglishSymplectic Elements at Oxford2013Mayaud, LLai, PClifford, GTarassenko, LCeli, LAnnane, DOBJECTIVES: To determine if a prediction rule for hospital mortality using dynamic variables in response to treatment of hypotension in patients with sepsis performs better than current models. DESIGN: Retrospective cohort study. SETTING: All ICUs at a tertiary care hospital. PATIENTS: Adult patients admitted to ICUs between 2001 and 2007 of whom 2,113 met inclusion criteria and had sufficient data. INTERVENTIONS: None. MEASUREMENTS AND MAIN RESULTS: We developed a prediction algorithm for hospital mortality in patients with sepsis and hypotension requiring medical intervention using data from the Multiparameter Intelligent Monitoring in Intensive Care II. We extracted 189 candidate variables, including treatments, physiologic variables and laboratory values collected before, during, and after a hypotensive episode. Thirty predictors were identified using a genetic algorithm on a training set (n=1500) and validated with a logistic regression model on an independent validation set (n=613). The final prediction algorithm used included dynamic information and had good discrimination (area under the receiver operating curve=82.0%) and calibration (Hosmer-Lemeshow C statistic=10.43, p=0.06). This model was compared with Acute Physiology and Chronic Health Evaluation IV using reclassification indices and was found to be superior with an Net Reclassification Improvement of 0.19 (p<0.001) and an Integrated Discrimination Improvement of 0.09 (p<0.001). CONCLUSIONS: Hospital mortality predictions based on dynamic variables surrounding a hypotensive event is a new approach to predicting prognosis. A model using these variables has good discrimination and calibration and offers additional predictive prognostic information beyond established ones.
spellingShingle Mayaud, L
Lai, P
Clifford, G
Tarassenko, L
Celi, L
Annane, D
Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title_full Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title_fullStr Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title_full_unstemmed Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title_short Dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension.
title_sort dynamic data during hypotensive episode improves mortality predictions among patients with sepsis and hypotension
work_keys_str_mv AT mayaudl dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension
AT laip dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension
AT cliffordg dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension
AT tarassenkol dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension
AT celil dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension
AT annaned dynamicdataduringhypotensiveepisodeimprovesmortalitypredictionsamongpatientswithsepsisandhypotension