Machine learning approach for prediction of outcomes in anticoagulated patients with atrial fibrillation

被引:4
作者
Bernardini, Andrea [1 ,4 ]
Bindini, Luca [2 ]
Antonucci, Emilia [3 ]
Berteotti, Martina [4 ]
Giusti, Betti [4 ]
Testa, Sophie [5 ]
Palareti, Gualtiero [3 ]
Poli, Daniela [4 ]
Frasconi, Paolo [2 ]
Marcucci, Rossella [4 ]
机构
[1] Santa Maria Nuova Hosp, Cardiol & Electrophysiol Unit, Piazza Santa Maria Nuova 1, I-50122 Florence, Italy
[2] Univ Florence, Dept Informat Engn, I-50139 Florence, Italy
[3] Arianna Anticoagulaz Fdn, Bologna, Italy
[4] Univ Florence, Dept Expt & Clin Med, Florence, Italy
[5] Azienda Socio Sanit Territoriale, Hemostasis & Thrombosis Ctr, Lab Med Dept, Cremona, Italy
关键词
Atrial fibrillation; Machine learning; Anticoagulation; Bleeding; STROKE; RISK; THROMBOEMBOLISM; METAANALYSIS; DEATH; SCORE;
D O I
10.1016/j.ijcard.2024.132088
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: The accuracy of available prediction tools for clinical outcomes in patients with atrial fibrillation (AF) remains modest. Machine Learning (ML) has been used to predict outcomes in the AF population, but not in a population entirely on anticoagulant therapy. Methods and aims: Different supervised ML models were applied to predict all -cause death, cardiovascular (CV) death, major bleeding and stroke in anticoagulated patients with AF, processing data from the multicenter START -2 Register. Results: 11078 AF patients (male n = 6029, 54.3%) were enrolled with a median follow-up period of 1.5 years [IQR 1.0 -2.6]. Patients on Vitamin K Antagonists (VKA) were 5135 (46.4%) and 5943 (53.6%) were on Direct Oral Anticoagulants (DOAC). Using Multi -Gate Mixture of Experts, a cross-validated AUC of 0.779 +/- 0.016 and 0.745 +/- 0.022 were obtained, respectively, for the prediction of all -cause death and CV-death in the overall population. The best ML model outperformed CHA 2 DSVA 2 SC and HAS-BLED for all -cause death prediction ( p < 0.001 for both). When compared to HAS-BLED, Gradient Boosting improved major bleeding prediction in DOACs patients (0.711 vs. 0.586, p < 0.001). A very low number of events during follow-up (52) resulted in a suboptimal ischemic stroke prediction (best AUC of 0.606 +/- 0.117 in overall population). Body mass index, age, renal function, platelet count and hemoglobin levels resulted the most important variables for ML prediction. Conclusions: In AF patients, ML models showed good discriminative ability to predict all -cause death, regardless of the type of anticoagulation strategy, and major bleeding on DOAC therapy, outperforming CHA 2 DS 2 VASC and the HAS-BLED scores for risk prediction in these populations.
引用
收藏
页数:8
相关论文
共 50 条
  • [21] Bleeding Risk in Atrial Fibrillation and Thrombocytopenia: A Propensity Matched Cohort Study
    Iyengar, Varun
    Patell, Rushad
    Ren, Siyang
    Ma, Sirui
    Pinson, Amanda
    Barnett, Amelia
    Elavalakanar, Pavania
    Neuberg, Donna S.
    Zwicker, Jeffrey I.
    [J]. BLOOD, 2022, 140
  • [22] Definition of clinically relevant non-major bleeding in studies of anticoagulants in atrial fibrillation and venous thromboembolic disease in non-surgical patients: communication from the SSC of the ISTH
    Kaatz, S.
    Ahmad, D.
    Spyropoulos, A. C.
    Schulman, S.
    [J]. JOURNAL OF THROMBOSIS AND HAEMOSTASIS, 2015, 13 (11) : 2119 - 2126
  • [23] Ke GL, 2017, ADV NEUR IN, V30
  • [24] Clinical relationship between anemia and atrial fibrillation recurrence after catheter ablation without genetic background
    Kim, Min
    Hong, Myunghee
    Kim, Jong-Youn
    Kim, In-Soo
    Yu, Hee Tae
    Kim, Tae-Hoon
    Uhm, Jae-Sun
    Joung, Boyoung
    Lee, Moon-Hyoung
    Pak, Hui-Nam
    [J]. IJC HEART & VASCULATURE, 2020, 27
  • [25] Kingma D. P., 2014, Adam: A method for stochastic optimization, DOI 10.48550/arXiv.1412.6980
  • [26] Li Xiang, 2016, AMIA Annu Symp Proc, V2016, P799
  • [27] Improving dynamic stroke risk prediction in non-anticoagulated patients with and without atrial fibrillation: comparing common clinical risk scores and machine learning algorithms
    Lip, Gregory Y. H.
    Tran, George
    Genaidy, Ash
    Marroquin, Patricia
    Estes, Cara
    Landsheft, Jeremy
    [J]. EUROPEAN HEART JOURNAL-QUALITY OF CARE AND CLINICAL OUTCOMES, 2022, 8 (05) : 548 - 556
  • [28] Refining Clinical Risk Stratification for Predicting Stroke and Thromboembolism in Atrial Fibrillation Using a Novel Risk Factor-Based Approach The Euro Heart Survey on Atrial Fibrillation
    Lip, Gregory Y. H.
    Nieuwlaat, Robby
    Pisters, Ron
    Lane, Deirdre A.
    Crijns, Harry J. G. M.
    [J]. CHEST, 2010, 137 (02) : 263 - 272
  • [29] Machine learning does not improve upon traditional regression in predicting outcomes in atrial fibrillation: an analysis of the ORBIT-AF and GARFIELD-AF registries
    Loring, Zak
    Mehrotra, Suchit
    Piccini, Jonathan P.
    Camm, John
    Carlson, David
    Fonarow, Gregg C.
    Fox, Keith A. A.
    Peterson, Eric D.
    Pieper, Karen
    Kakkar, Ajay K.
    [J]. EUROPACE, 2020, 22 (11): : 1635 - 1644
  • [30] Performance of multilabel machine learning models and risk stratification schemas for predicting stroke and bleeding risk in patients with non-valvular atrial fibrillation
    Lu, Juan
    Hutchens, Rebecca
    Hung, Joseph
    Bennamoun, Mohammed
    McQuillan, Brendan
    Briffa, Tom
    Sohel, Ferdous
    Murray, Kevin
    Stewart, Jonathon
    Chow, Benjamin
    Sanfilippo, Frank
    Dwivedi, Girish
    [J]. COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 150