A predictive framework in healthcare: Case study on cardiac arrest prediction.

Journal: Artificial intelligence in medicine
Published Date:

Abstract

Data-driven healthcare uses predictive analytics to enhance decision-making and personalized healthcare. Developing prognostic models is one of the applications of predictive analytics in medical environments. Various studies have used machine learning techniques for this purpose. However, there is no specific standard for choosing prediction models for different medical purposes. In this paper, the ISAF framework was proposed for choosing appropriate prediction models with regard to the properties of the classification methods. As one of the case study applications, a prognostic model for predicting cardiac arrests in sepsis patients was developed step by step through the ISAF framework. Finally, a new modified stacking model produced the best results. We predict 85 % of heart arrest cases one hour before the incidence (sensitivity> = 0.85) and 73 % of arrest cases 25 h before the occurrence (sensitivity> = 0.73). The results indicated that the proposed prognostic model has significantly improved the prediction results compared to the two standard systems of APACHE II and MEWS. Furthermore, compared to previous research, the proposed model has extended the prediction interval and improved the performance criteria.

Authors

  • Samaneh Layeghian Javan
    Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran 1411713114, Iran.
  • Mohammad Mehdi Sepehri
    Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran 1411713114, Iran. Electronic address: mehdi.sepehri@modares.ac.ir.