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Machine Learning-Based Mortality Prediction of Patients at Risk During Hospital Admission.
Trentino, Kevin M; Schwarzbauer, Karin; Mitterecker, Andreas; Hofmann, Axel; Lloyd, Adam; Leahy, Michael F; Tschoellitsch, Thomas; Böck, Carl; Hochreiter, Sepp; Meier, Jens.
Afiliação
  • Trentino KM; From the Data and Digital Innovation, East Metropolitan Health Service and Medical School, The University of Western Australia, Perth, Australia.
  • Schwarzbauer K; Institute for Machine Learning, Johannes Kepler University, Linz, Austria.
  • Mitterecker A; Institute for Machine Learning, Johannes Kepler University, Linz, Austria.
  • Lloyd A; Data and Digital Innovation, East Metropolitan Health Service.
  • Tschoellitsch T; Kepler University Hospital, Department of Anesthesiology and Intensive Care Medicine and Johannes Kepler University.
  • Böck C; Kepler University Hospital, Department of Anesthesiology and Intensive Care Medicine and Johannes Kepler University.
  • Meier J; Clinic of Anesthesiology and Critical Care Medicine, Kepler University Clinic, Kepler University, Linz, Austria.
J Patient Saf ; 18(5): 494-498, 2022 08 01.
Article em En | MEDLINE | ID: mdl-35026794
ABSTRACT

OBJECTIVES:

The ability to predict in-hospital mortality from data available at hospital admission would identify patients at risk and thereby assist hospital-wide patient safety initiatives. Our aim was to use modern machine learning tools to predict in-hospital mortality from standardized data sets available at hospital admission.

METHODS:

This was a retrospective, observational study in 3 adult tertiary care hospitals in Western Australia between January 2008 and June 2017. Primary outcome measures were the area under the curve for the receiver operating characteristics curve, the F1 score, and the average precision of the 4 machine learning algorithms used logistic regression, neural networks, random forests, and gradient boosting trees.

RESULTS:

Using our 4 predictive models, in-hospital mortality could be predicted satisfactorily (areas under the curve for neural networks, logistic regression, random forests, and gradient boosting trees 0.932, 0.936, 0.935, and 0.935, respectively), with moderate F1 scores 0.378, 0.367, 0.380, and 0.380, respectively. Average precision values were 0.312, 0.321, 0.334, and 0.323, respectively. It remains unknown whether additional features might improve our models; however, this would result in additional efforts for data acquisition in daily clinical practice.

CONCLUSIONS:

This study demonstrates that using only a limited, standardized data set in-hospital mortality can be predicted satisfactorily at the time point of hospital admission. More parameters describing patient's health are likely needed to improve our model.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Hospitalização Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Hospitalização Idioma: En Ano de publicação: 2022 Tipo de documento: Article