Blood Pressure Assessment with Differential Pulse Transit Time and Deep Learning: A Proof of Concept.

Journal: Kidney diseases (Basel, Switzerland)
Published Date:

Abstract

BACKGROUND: Modern clinical environments are laden with technology devices continuously gathering physiological data from patients. This is especially true in critical care environments, where life-saving decisions may have to be made on the basis of signals from monitoring devices. Hemodynamic monitoring is essential in dialysis, surgery, and in critically ill patients. For the most severe patients, blood pressure is normally assessed through a catheter, which is an invasive procedure that may result in adverse effects. Blood pressure can also be monitored noninvasively through different methods and these data can be used for the continuous assessment of pressure using machine learning methods. Previous studies have found pulse transit time to be related to blood pressure. In this short paper, we propose to study the feasibility of implementing a data-driven model based on restricted Boltzmann machine artificial neural networks, delivering a first proof of concept for the validity and viability of a method for blood pressure prediction based on these models.

Authors

  • Vicent Ribas Ripoll
    Eurecat, Centre Tecnològic de Catalunya, eHealth Unit, Barcelona, Spain.
  • Alfredo Vellido
    Intelligent Data Science and Artificial Intelligence (IDEAI) Research Center, Universitat Politècnica de Catalunya (UPC BarcelonaTech), Barcelona, Spain.

Keywords

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