Are you bleeding? Validation of a machine-learning algorithm for determination of blood volume status: Application to remote triage

Caroline A. Rickards, Nisarg Vyas, Kathy L. Ryan, Kevin R. Ward, David Andre, Gennifer M. Hurst, Chelsea R. Barrera, Victor A. Convertino

Research output: Contribution to journalArticle

9 Scopus citations

Abstract

Due to limited remote triage monitoring capabilities, combat medics cannot currently distinguish bleeding soldiers from those engaged in combat unless they have physical access to them. The purpose of this study was to test the hypothesis that low-level physiological signals can be used to develop a machine-learning algorithm for tracking changes in central blood volume that will subsequently distinguish central hypovolemia from physical activity. Twenty-four subjects underwent central hypovolemia via lower body negative pressure (LBNP), and a supine-cycle exercise protocol. Exercise workloads were determined by matching heart rate responses from each LBNP level. Heart rate and stroke volume (SV) were measured via Finometer. ECG, heat flux, skin temperature, galvanic skin response, and two-axis acceleration were obtained from an armband (SenseWear Pro2) and used to develop a machine-learning algorithm to predict changes in SV as an index of central blood volume under both conditions. The algorithm SV was retrospectively compared against Finometer SV. A model was developed to determine whether unknown data points could be correctly classified into these two conditions using leave-one-out cross-validation. Algorithm vs. Finometer SV values were strongly correlated for LBNP in individual subjects (mean r = 0.92; range 0.75- 0.98), but only moderately correlated for exercise (mean r = 0.50; range -0.23- 0.87). From the first level of LBNP/exercise, the machine-learning algorithm was able to distinguish between LBNP and exercise with high accuracy, sensitivity, and specificity (all ≥90%). In conclusion, a machine-learning algorithm developed from low-level physiological signals could reliably distinguish central hypovolemia from exercise, indicating that this device could provide battlefield remote triage capabilities.

Original languageEnglish
Pages (from-to)486-494
Number of pages9
JournalJournal of Applied Physiology
Volume116
Issue number5
DOIs
Publication statusPublished - 1 Mar 2014

    Fingerprint

Keywords

  • Central hypovolemia
  • Exercise
  • Lower body negative pressure
  • Triage algorithm

Cite this