A deep learning approach for sepsis monitoring via severity score estimation.

Journal: Computer methods and programs in biomedicine
Published Date:

Abstract

BACKGROUND AND OBJECTIVE: Sepsis occurs in response to an infection in the body and can progress to a fatal stage. Detection and monitoring of sepsis require multi-step analysis, which is time-consuming, costly and requires medically trained personnel. A metric called Sequential Organ Failure Assessment (SOFA) score is used to determine the severity of sepsis. This score depends heavily on laboratory measurements. In this study, we offer a computational solution for quantitatively monitoring sepsis symptoms and organ systems state without laboratory test. To this end, we propose to employ a regression-based analysis by using only seven vital signs that can be acquired from bedside in Intensive Care Unit (ICU) to predict the exact value of SOFA score of patients before sepsis occurrence.

Authors

  • Tunç Aşuroğlu
    Dept. of Computer Engineering, Başkent University, Bağlıca Kampüsü, Fatih Sultan Mahallesi Eskişehir Yolu 18 Km, Ankara 06790, Turkey. Electronic address: tuncasuroglu@baskent.edu.tr.
  • Hasan Oğul
    Department of Computer Engineering, Başkent University, Fatih Sultan Mahallesi Eskişehir Yolu 18. km, 06790, Etimesgut, Ankara, Turkey.