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Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization.

Publication ,  Journal Article
Peacock, J; Stanelle, EJ; Johnson, LC; Hylek, EM; Kanwar, R; Lakkireddy, DR; Mittal, S; Passman, RS; Russo, AM; Soderlund, D; Hills, MT; Piccini, JP
Published in: Circ Arrhythm Electrophysiol
November 2024

BACKGROUND: Atrial fibrillation is associated with an increased risk of cardiovascular hospitalization (CVH), which may be triggered by changes in daily burden. Machine learning of dynamic trends in atrial fibrillation burden, as measured by insertable cardiac monitors (ICMs), may be useful in predicting near-term CVH. METHODS: Using Optum's deidentified Clinformatics Data Mart Database (2007-2019), linked with the Medtronic CareLink ICM database, we identified patients with >1 days of ICM-detected atrial fibrillation. ICM-detected diagnostic parameters were transformed into simple moving averages over different periods for daily follow-up. A diagnostic trend was defined as the comparison of 2 simple moving averages of different periods for each diagnostic parameter. CVH was defined as any hospital, emergency department, or ambulatory surgical center encounter with a cardiovascular diagnosis-related group or diagnosis code. Machine learning was used to determine which diagnostic trends could best predict patient risk 5 days before CVH. RESULTS: A total of 2616 patients with ICMs met the inclusion criteria (71±11 years; 55% male). Among them, 1998 (76%) had a planned or unplanned CVH over 605 363 days. Machine learning revealed distinct groups: (A) sinus rhythm (reference), (B) below-average burden, (C) above-average burden, and (D) above-average burden with decreasing patient activity. The relative risk was increased in all groups versus the reference (B, 4.49 [95% CI, 3.74-5.40]; C, 8.41 [95% CI, 7.00-10.11]; D, 11.15 [95% CI, 9.10-13.65]), including a 21% increase in CVH detection over prespecified burden thresholds of duration (≥1 hour) and quantity (≥5%). The area under the receiver operating characteristic curve increased from 0.55 when using hourly burden amounts to 0.66 when using burden trends and decreasing patient activity (P<0.001), a 20% increase in predictive power. CONCLUSIONS: Trends in atrial fibrillation were strongly associated with near-term CVH, especially above-average burden coupled with low patient activity. This approach could provide actionable information to guide treatment and reduce CVH.

Duke Scholars

Published In

Circ Arrhythm Electrophysiol

DOI

EISSN

1941-3084

Publication Date

November 2024

Volume

17

Issue

11

Start / End Page

e012991

Location

United States

Related Subject Headings

  • Time Factors
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Prognosis
  • Predictive Value of Tests
  • Middle Aged
  • Male
  • Machine Learning
  • Humans
 

Citation

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MLA
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Peacock, J., Stanelle, E. J., Johnson, L. C., Hylek, E. M., Kanwar, R., Lakkireddy, D. R., … Piccini, J. P. (2024). Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization. Circ Arrhythm Electrophysiol, 17(11), e012991. https://doi.org/10.1161/CIRCEP.124.012991
Peacock, James, Evan J. Stanelle, Lawrence C. Johnson, Elaine M. Hylek, Rahul Kanwar, Dhanunjaya R. Lakkireddy, Suneet Mittal, et al. “Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization.Circ Arrhythm Electrophysiol 17, no. 11 (November 2024): e012991. https://doi.org/10.1161/CIRCEP.124.012991.
Peacock J, Stanelle EJ, Johnson LC, Hylek EM, Kanwar R, Lakkireddy DR, et al. Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization. Circ Arrhythm Electrophysiol. 2024 Nov;17(11):e012991.
Peacock, James, et al. “Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization.Circ Arrhythm Electrophysiol, vol. 17, no. 11, Nov. 2024, p. e012991. Pubmed, doi:10.1161/CIRCEP.124.012991.
Peacock J, Stanelle EJ, Johnson LC, Hylek EM, Kanwar R, Lakkireddy DR, Mittal S, Passman RS, Russo AM, Soderlund D, Hills MT, Piccini JP. Using Atrial Fibrillation Burden Trends and Machine Learning to Predict Near-Term Risk of Cardiovascular Hospitalization. Circ Arrhythm Electrophysiol. 2024 Nov;17(11):e012991.

Published In

Circ Arrhythm Electrophysiol

DOI

EISSN

1941-3084

Publication Date

November 2024

Volume

17

Issue

11

Start / End Page

e012991

Location

United States

Related Subject Headings

  • Time Factors
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Prognosis
  • Predictive Value of Tests
  • Middle Aged
  • Male
  • Machine Learning
  • Humans