Literature DB >> 23660729

A new severity of illness scale using a subset of Acute Physiology And Chronic Health Evaluation data elements shows comparable predictive accuracy.

Alistair E W Johnson1, Andrew A Kramer, Gari D Clifford.   

Abstract

OBJECTIVES: Severity of illness scores have gained considerable interest for their use in predicting outcomes such as mortality and length of stay. The most sophisticated scoring systems require the collection of numerous physiologic measurements, making their use in real-time difficult. A severity of illness score based on a few parameters that can be captured electronically would be of great benefit. Using a machine-learning technique known as particle swarm optimization, we attempted to reduce the number of physiologic parameters collected in the Acute Physiology, Age, and Chronic Health Evaluation IV system without losing predictive accuracy.
DESIGN: Retrospective cohort study of ICU admissions from 2007 to 2011.
SETTING: Eighty-six ICUs at 49 U.S. hospitals where an Acute Physiology, Age, and Chronic Health Evaluation IV system had been installed. PATIENTS: 81,087 admissions, of which 72,474 did not have any missing values.
INTERVENTIONS: None.
MEASUREMENTS AND MAIN RESULTS: Machine-learning algorithms were used to come up with the minimal set of variables that were capable of yielding an accurate severity of illness score: the Oxford Acute Severity of Illness Score. Predictive models of ICU mortality using Oxford Acute Severity of Illness Score were developed on admissions during 2007-2009 and validated on admissions during 2010-2011. The most parsimonious Oxford Acute Severity of Illness Score consisted of seven physiologic measurements, elective surgery, age, and prior length of stay. Predictive models of ICU mortality using Oxford Acute Severity of Illness Score achieved an area under the receiver operating characteristic curve of 0.88 and calibrated well.
CONCLUSIONS: A reduced severity of illness score had discrimination and calibration equivalent to more complex existing models. This was accomplished in large part using machine-learning algorithms, which can effectively account for the nonlinear associations between physiologic parameters and outcome.

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Mesh:

Year:  2013        PMID: 23660729     DOI: 10.1097/CCM.0b013e31828a24fe

Source DB:  PubMed          Journal:  Crit Care Med        ISSN: 0090-3493            Impact factor:   7.598


  59 in total

1.  An Evaluation of the Influence of Body Mass Index on Severity Scoring.

Authors:  Rodrigo Octavio Deliberato; Ary Serpa Neto; Matthieu Komorowski; David J Stone; Stephanie Q Ko; Lucas Bulgarelli; Carolina Rodrigues Ponzoni; Renato Carneiro de Freitas Chaves; Leo Anthony Celi; Alistair E W Johnson
Journal:  Crit Care Med       Date:  2019-02       Impact factor: 7.598

2.  Development of a Malawi Intensive care Mortality risk Evaluation (MIME) model, a prospective cohort study.

Authors:  Meghan Prin; Stephanie Pan; Clement Kadyaudzu; Guohua Li; Anthony Charles
Journal:  Int J Surg       Date:  2018-11-03       Impact factor: 6.071

3.  Real-time mortality prediction in the Intensive Care Unit.

Authors:  Alistair E W Johnson; Roger G Mark
Journal:  AMIA Annu Symp Proc       Date:  2018-04-16

4.  Reusable Filtering Functions for Application in ICU data: a case study.

Authors:  Vincent Major; Monique S Tanna; Simon Jones; Yin Aphinyanaphongs
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

Review 5.  Health Informatics via Machine Learning for the Clinical Management of Patients.

Authors:  D A Clifton; K E Niehaus; P Charlton; G W Colopy
Journal:  Yearb Med Inform       Date:  2015-08-13

6.  Development of scoring system for risk stratification in clinical medicine: a step-by-step tutorial.

Authors:  Zhongheng Zhang; Haoyang Zhang; Mahesh Kumar Khanal
Journal:  Ann Transl Med       Date:  2017-11

7.  Effect of Boarding on Mortality in ICUs.

Authors:  Robert Stretch; Nicolás Della Penna; Leo Anthony Celi; Bruce E Landon
Journal:  Crit Care Med       Date:  2018-04       Impact factor: 7.598

8.  Severity of illness assessment with application of the APACHE IV predicted mortality and outcome trends analysis in an academic cardiac intensive care unit.

Authors:  Courtney E Bennett; R Scott Wright; Jacob Jentzer; Ognjen Gajic; Dennis H Murphree; Joseph G Murphy; Sunil V Mankad; Brandon M Wiley; Malcolm R Bell; Gregory W Barsness
Journal:  J Crit Care       Date:  2018-12-24       Impact factor: 3.425

9.  A customizable deep learning model for nosocomial risk prediction from critical care notes with indirect supervision.

Authors:  Travis R Goodwin; Dina Demner-Fushman
Journal:  J Am Med Inform Assoc       Date:  2020-04-01       Impact factor: 4.497

10.  Unfolding Physiological State: Mortality Modelling in Intensive Care Units.

Authors:  Marzyeh Ghassemi; Tristan Naumann; Finale Doshi-Velez; Nicole Brimmer; Rohit Joshi; Anna Rumshisky; Peter Szolovits
Journal:  KDD       Date:  2014-08-24
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