Prediction of Nursing Workload in Hospital.

Journal: Studies in health technology and informatics
Published Date:

Abstract

A dissertation project at the Witten/Herdecke University [1] is investigating which (nursing sensitive) patient characteristics are suitable for predicting a higher or lower degree of nursing workload. For this research project four predictive modelling methods were selected. In a first step, SUPPORT VECTOR MACHINE, RANDOM FOREST, and GRADIENT BOOSTING were used to identify potential predictors from the nursing sensitive patient characteristics. The results were compared via FEATURE IMPORTANCE. To predict nursing workload the predictors identified in step 1 were modelled using MULTINOMIAL LOGISTIC REGRESSION. First results from the data mining process will be presented. A prognostic determination of nursing workload can be used not only as a basis for human resource planning in hospital, but also to respond to health policy issues.

Authors

  • Madlen Fiebig
    Witten/Herdecke University; School of Nursing Science.
  • Dirk Hunstein
    ePA-CC GmbH, Wiesbaden.
  • Sabine Bartholomeyczik
    Witten/Herdecke University; School of Nursing Science.