Personalized ECG monitoring and adaptive machine learning.

Vladimir Shusterman, Barry London
Author Information
  1. Vladimir Shusterman: The University of Iowa, United States of America; PinMed, Inc., United States of America. Electronic address: vladimir-shusterman@uiowa.edu.
  2. Barry London: The University of Iowa, United States of America.

Abstract

This non-technical review introduces key concepts in personalized ECG monitoring (pECG), which aims to optimize the detection of clinical events and their warning signs as well as the selection of alarm thresholds. We review several pECG methods, including anomaly detection and adaptive machine learning (ML), in which learning is performed sequentially as new data are collected. We describe a distributed-network multiscale pECG system to show how the computational load and time associated with adaptive ML could be optimized. In this architecture, the limited analysis of ECG waveforms is performed locally (e.g., on a smart phone) to determine a small number of clinically important ECG elements, and an adaptive ML engine is located on a remote server (Internet cloud) to determine an individual's "fingerprint" basis patterns and to detect anomalies in those patterns.

Keywords

References

  1. J Electrocardiol. 2010 Nov-Dec;43(6):595-600 [PMID: 20863512]
  2. Circulation. 2000 Jun 13;101(23):E215-20 [PMID: 10851218]
  3. N Engl J Med. 2019 Nov 14;381(20):1909-1917 [PMID: 31722151]
  4. Circulation. 1972 May;45(5):1057-64 [PMID: 5020797]
  5. Ann Emerg Med. 2023 Jan;81(1):57-69 [PMID: 36253296]
  6. J Am Coll Cardiol. 1998 Dec;32(7):1891-9 [PMID: 9857869]
  7. Circ Res. 1981 Jul;49(1):186-96 [PMID: 6453669]
  8. Circulation. 2006 Jun 27;113(25):2880-7 [PMID: 16785339]
  9. J Electrocardiol. 2007 Nov-Dec;40(6 Suppl):S179-86 [PMID: 17993319]
  10. IEEE Trans Biomed Circuits Syst. 2016 Apr;10(2):280-8 [PMID: 25974943]
  11. J Electrocardiol. 2003;36 Suppl:219-26 [PMID: 14716638]
  12. Circ Res. 2001 Apr 13;88(7):705-12 [PMID: 11304493]
  13. Science. 2006 Jul 28;313(5786):504-7 [PMID: 16873662]
  14. Front Big Data. 2018 Nov 19;1:6 [PMID: 33693322]
  15. IEEE Trans Biomed Eng. 2005 May;52(5):878-89 [PMID: 15887537]

Grants

  1. R43 HL114277/NHLBI NIH HHS
  2. R44 HL077116/NHLBI NIH HHS
  3. R44 HL114277/NHLBI NIH HHS

MeSH Term

Humans
Electrocardiography
Machine Learning
Smartphone

Word Cloud

Created with Highcharts 10.0.0ECGadaptivelearningmonitoringpECGmachineMLreviewdetectionperformedmultiscaledeterminepatternsPersonalizednon-technicalintroduceskeyconceptspersonalizedaimsoptimizeclinicaleventswarningsignswellselectionalarmthresholdsseveralmethodsincludinganomalysequentiallynewdatacollecteddescribedistributed-networksystemshowcomputationalloadtimeassociatedoptimizedarchitecturelimitedanalysiswaveformslocallyegsmartphonesmallnumberclinicallyimportantelementsenginelocatedremoteserverInternetcloudindividual's"fingerprint"basisdetectanomaliesAdaptiveDistributed-networksystemsPhysiologicalWearablecardiovasculardevices

Similar Articles

Cited By