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Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries.

Publication ,  Conference
Loring, Z; Mehrotra, S; Piccini, JP; Camm, J; Carlson, D; Fonarow, GC; Fox, KAA; Peterson, ED; Pieper, K; Kakkar, AK
Published in: Europace
November 1, 2020

AIMS: Prediction models for outcomes in atrial fibrillation (AF) are used to guide treatment. While regression models have been the analytic standard for prediction modelling, machine learning (ML) has been promoted as a potentially superior methodology. We compared the performance of ML and regression models in predicting outcomes in AF patients. METHODS AND RESULTS: The Outcomes Registry for Better Informed Treatment of Atrial Fibrillation (ORBIT-AF) and Global Anticoagulant Registry in the FIELD (GARFIELD-AF) are population-based registries that include 74 792 AF patients. Models were generated from potential predictors using stepwise logistic regression (STEP), random forests (RF), gradient boosting (GB), and two neural networks (NNs). Discriminatory power was highest for death [STEP area under the curve (AUC) = 0.80 in ORBIT-AF, 0.75 in GARFIELD-AF] and lowest for stroke in all models (STEP AUC = 0.67 in ORBIT-AF, 0.66 in GARFIELD-AF). The discriminatory power of the ML models was similar or lower than the STEP models for most outcomes. The GB model had a higher AUC than STEP for death in GARFIELD-AF (0.76 vs. 0.75), but only nominally, and both performed similarly in ORBIT-AF. The multilayer NN had the lowest discriminatory power for all outcomes. The calibration of the STEP modelswere more aligned with the observed events for all outcomes. In the cross-registry models, the discriminatory power of the ML models was similar or lower than the STEP for most cases. CONCLUSION: When developed from two large, community-based AF registries, ML techniques did not improve prediction modelling of death, major bleeding, or stroke.

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Published In

Europace

DOI

EISSN

1532-2092

Publication Date

November 1, 2020

Volume

22

Issue

11

Start / End Page

1635 / 1644

Location

England

Related Subject Headings

  • Stroke
  • Risk Factors
  • Risk Assessment
  • Registries
  • Prospective Studies
  • Machine Learning
  • Humans
  • Cardiovascular System & Hematology
  • Atrial Fibrillation
  • Anticoagulants
 

Citation

APA
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ICMJE
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Loring, Z., Mehrotra, S., Piccini, J. P., Camm, J., Carlson, D., Fonarow, G. C., … Kakkar, A. K. (2020). Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries. In Europace (Vol. 22, pp. 1635–1644). England. https://doi.org/10.1093/europace/euaa172
Loring, Zak, Suchit Mehrotra, Jonathan P. Piccini, John Camm, David Carlson, Gregg C. Fonarow, Keith A. A. Fox, Eric D. Peterson, Karen Pieper, and Ajay K. Kakkar. “Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries.” In Europace, 22:1635–44, 2020. https://doi.org/10.1093/europace/euaa172.
Loring, Zak, et al. “Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries.Europace, vol. 22, no. 11, 2020, pp. 1635–44. Pubmed, doi:10.1093/europace/euaa172.
Loring Z, Mehrotra S, Piccini JP, Camm J, Carlson D, Fonarow GC, Fox KAA, Peterson ED, Pieper K, Kakkar AK. Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries. Europace. 2020. p. 1635–1644.
Journal cover image

Published In

Europace

DOI

EISSN

1532-2092

Publication Date

November 1, 2020

Volume

22

Issue

11

Start / End Page

1635 / 1644

Location

England

Related Subject Headings

  • Stroke
  • Risk Factors
  • Risk Assessment
  • Registries
  • Prospective Studies
  • Machine Learning
  • Humans
  • Cardiovascular System & Hematology
  • Atrial Fibrillation
  • Anticoagulants