Machine learning for outcome prediction in patients with non-valvular atrial fibrillation from the GLORIA-AF registry

被引:2
作者
Joddrell, Martha [1 ,2 ,3 ]
El-Bouri, Wahbi [1 ,2 ,3 ]
Harrison, Stephanie L. [1 ,2 ,3 ]
Huisman, Menno V. [4 ]
Lip, Gregory Y. H. [1 ,2 ,3 ,6 ]
Zheng, Yalin [1 ,2 ,5 ]
机构
[1] Liverpool John Moores Univ, Univ Liverpool, Liverpool Ctr Cardiovasc Sci, Liverpool, England
[2] Liverpool Heart & Chest Hosp, Liverpool, England
[3] Univ Liverpool, Inst Life Course & Med Sci, Dept Cardiovasc & Metab Med, William Henry Duncan Bldg,6 West Derby St, Liverpool L7 8TX, England
[4] Leiden Univ Med Ctr, Dept Med Thrombosis & Hemostasis, Leiden, Netherlands
[5] Univ Liverpool, Dept Eye & Vis Sci, Liverpool, England
[6] Aalborg Univ, Danish Ctr Clin Hlth Serv Res, Dept Clin Med, Aalborg, Denmark
来源
SCIENTIFIC REPORTS | 2024年 / 14卷 / 01期
关键词
RISK SCORES; STROKE;
D O I
10.1038/s41598-024-78120-z
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Clinical risk scores that predict outcomes in patients with atrial fibrillation (AF) have modest predictive value. Machine learning (ML) may achieve greater results when predicting adverse outcomes in patients with recently diagnosed AF. Several ML models were tested and compared with current clinical risk scores on a cohort of 26,183 patients (mean age 70.13 (standard deviation 10.13); 44.8% female) with non-valvular AF. Inputted into the ML models were 23 demographic variables alongside comorbidities and current treatments. For one-year stroke prediction, ML achieved an area under the curve (AUC) of 0.653 (95% confidence interval 0.576-0.730), compared to the CHADS2 and CHA2DS2-VASc scores performance of 0.587 (95% CI 0.559-0.615) and 0.535 (95% CI 0.521-0.550), respectively. Using ML for one-year major bleed prediction increased the AUC from 0.537 (95% CI 0.518-0.557) generated by the HAS-BLED score to 0.677 (95% CI 0.619-0.724). ML was able to predict one-year and three-year all-cause mortality with an AUC of 0.734 (95% CI 0.696-0.771) and 0.742 (95% CI 0.718-0.766). In this study a significant improvement in performance was observed when transitioning from clinical risk scores to machine learning-based approaches across all applications tested. Obtaining precise prediction tools is desirable for increased interventions to reduce event rates.Trial Registryhttps://www.clinicaltrials.gov; Unique identifier: NCT01468701, NCT01671007, NCT01937377.
引用
收藏
页数:11
相关论文
共 31 条
[1]  
Benjamin EJ, 2019, CIRCULATION, V139, pE56, DOI [10.1161/CIR.0000000000000659, 10.1161/CIR.0000000000000746]
[2]   Mobile health technology in atrial fibrillation [J].
Bonini, Niccolo ;
Vitolo, Marco ;
Imberti, Jacopo Francesco ;
Proietti, Marco ;
Romiti, Giulio Francesco ;
Boriani, Giuseppe ;
Paaske Johnsen, Soren ;
Guo, Yutao ;
Lip, Gregory Y. H. .
EXPERT REVIEW OF MEDICAL DEVICES, 2022, 19 (04) :327-340
[3]   Decoding stroke risk scores in atrial fibrillation: still more work to do [J].
Brieger, David ;
Freedman, Ben .
EUROPEAN HEART JOURNAL, 2021, 42 (15) :1486-1488
[4]   2021 Focused Update Consensus Guidelines of the Asia Pacific Heart Rhythm Society on Stroke Prevention in Atrial Fibrillation: Executive Summary * [J].
Chao, Tze-Fan ;
Joung, Boyoung ;
Takahashi, Yoshihide ;
Lim, Toon Wei ;
Choi, Eue-Keun ;
Chan, Yi-Hsin ;
Guo, Yutao ;
Sriratanasathavorn, Charn ;
Oh, Seil ;
Okumura, Ken ;
Lip, Gregory Y. H. .
THROMBOSIS AND HAEMOSTASIS, 2022, 122 (01) :20-47
[5]   XGBoost: A Scalable Tree Boosting System [J].
Chen, Tianqi ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :785-794
[6]  
COX DR, 1958, J R STAT SOC B, V20, P215
[7]   mHealth Apps for Self-Management of Cardiovascular Diseases: A Scoping Review [J].
Cruz-Ramos, Nancy Aracely ;
Alor-Hernandez, Giner ;
Colombo-Mendoza, Luis Omar ;
Sanchez-Cervantes, Jose Luis ;
Rodriguez-Mazahua, Lisbeth ;
Guarneros-Nolasco, Luis Rolando .
HEALTHCARE, 2022, 10 (02)
[8]   Guidelines and quality criteria for artificial intelligence-based prediction models in healthcare: a scoping review [J].
de Hond, Anne A. H. ;
Leeuwenberg, Artuur M. ;
Hooft, Lotty ;
Kant, Ilse M. J. ;
Nijman, Steven W. J. ;
van Os, Hendrikus J. A. ;
Aardoom, Jiska J. ;
Debray, Thomas P. A. ;
Schuit, Ewoud ;
van Smeden, Maarten ;
Reitsma, Johannes B. ;
Steyerberg, Ewout W. ;
Chavannes, Niels H. ;
Moons, Karel G. M. .
NPJ DIGITAL MEDICINE, 2022, 5 (01)
[9]   An Analysis of Calibration and Discrimination Among Multiple Cardiovascular Risk Scores in a Modern Multiethnic Cohort [J].
DeFilippis, Andrew P. ;
Young, Rebekah ;
Carrubba, Christopher J. ;
McEvoy, John W. ;
Budoff, Matthew J. ;
Blumenthal, Roger S. ;
Kronmal, Richard A. ;
McClelland, Robyn L. ;
Nasir, Khurram ;
Blaha, Michael J. .
ANNALS OF INTERNAL MEDICINE, 2015, 162 (04) :266-+
[10]   The use of multiple measurements in taxonomic problems [J].
Fisher, RA .
ANNALS OF EUGENICS, 1936, 7 :179-188