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Identificación de los determinantes de la estadía en unidades de cuidados intensivos usando redes neuronales artificiales / Prediction of the length of stay in intensive care units using artificial neural networks
Chacón P., Max; Rocco M., Víctor; Morgado Alcayaga, Enrique; Sáez H., Enzo; Pliscoff M., Sergio.
  • Chacón P., Max; Universidad de Santiago de Chile. Facultad de Ciencias Médicas. Departamento de Ingenieria Informática.
  • Rocco M., Víctor; Universidad de Santiago de Chile. Facultad de Ciencias Médicas. Departamento de Ingenieria Informática.
  • Morgado Alcayaga, Enrique; Universidad de Santiago de Chile. Facultad de Ciencias Médicas. Departamento de Ingenieria Informática.
  • Sáez H., Enzo; Universidad de Santiago de Chile. Facultad de Ciencias Médicas. Departamento de Ingenieria Informática.
  • Pliscoff M., Sergio; Universidad de Santiago de Chile. Facultad de Ciencias Médicas. Departamento de Ingenieria Informática.
Rev. méd. Chile ; 130(1): 71-78, ene. 2002. ilus, tab
Article in Spanish | LILACS | ID: lil-310255
ABSTRACT

Background:

The prediction of the length of stay at the moment of hospital admission is of outmost importance. Many studies have used lineal models to predict this variable, but there are inherent limitations to these models. The use of non lineal models has been scarce.

Aim:

To develop a non lineal model to predict length of stay in intensive care units. Material and

methods:

Retrospective analysis of 294 patients admitted to two intensive care units in Santiago, Chile. The severity of the disease motivating the admission was nominally quantified. This and other physiological variables were included in the model. The length of stay was modeled using Artificial Neural Networks.

Results:

The model yielded an error of 8.7 percent (3.6 ñ 0.4 days, CI 95 percent) and a correlation coefficient of 0.9 (p <0.001) for the prediction of length of stay. Using net sensitivity analysis, the model determined that gastrointestinal diseases, infections and respiratory problems were the main causes of prolongation of intensive care unit stay.

Conclusions:

Intensive care units should have, in the future, computer systems that gather vital information to predict length of stay
Subject(s)
Full text: Available Index: LILACS (Americas) Main subject: Neural Networks, Computer / Intensive Care Units Type of study: Diagnostic study / Prognostic study / Risk factors Limits: Female / Humans / Male Language: Spanish Journal: Rev. méd. Chile Journal subject: Medicine Year: 2002 Type: Article / Project document Affiliation country: Chile

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Full text: Available Index: LILACS (Americas) Main subject: Neural Networks, Computer / Intensive Care Units Type of study: Diagnostic study / Prognostic study / Risk factors Limits: Female / Humans / Male Language: Spanish Journal: Rev. méd. Chile Journal subject: Medicine Year: 2002 Type: Article / Project document Affiliation country: Chile