Literature DB >> 34851764

Predicting cerebral infarction in patients with atrial fibrillation using machine learning: The Fushimi AF registry.

Hidehisa Nishi1,2, Naoya Oishi3, Hisashi Ogawa4, Kishida Natsue1, Kento Doi1, Osamu Kawakami1, Tomokazu Aoki1, Shunichi Fukuda1, Masaharu Akao4, Tetsuya Tsukahara1.   

Abstract

The CHADS2 and CHA2DS2-VASc scores are widely used to assess ischemic risk in the patients with atrial fibrillation (AF). However, the discrimination performance of these scores is limited. Using the data from a community-based prospective cohort study, we sought to construct a machine learning-based prediction model for cerebral infarction in patients with AF, and to compare its performance with the existing scores. All consecutive patients with AF treated at 81 study institutions from March 2011 to May 2017 were enrolled (n = 4396). The whole dataset was divided into a derivation cohort (n = 1005) and validation cohort (n = 752) after excluding the patients with valvular AF and anticoagulation therapy. Using the derivation cohort dataset, a machine learning model based on gradient boosting tree algorithm (ML) was built to predict cerebral infarction. In the validation cohort, the receiver operating characteristic area under the curve of the ML model was higher than those of the existing models according to the Hanley and McNeil method: ML, 0.72 (95%CI, 0.66-0.79); CHADS2, 0.61 (95%CI, 0.53-0.69); CHA2DS2-VASc, 0.62 (95%CI, 0.54-0.70). As a conclusion, machine learning algorithm have the potential to perform better than the CHADS2 and CHA2DS2-VASc scores for predicting cerebral infarction in patients with non-valvular AF.

Entities:  

Keywords:  Atrial fibrillation; cerebral infarction; long-term outcome; machine learning; stroke prediction

Mesh:

Year:  2021        PMID: 34851764      PMCID: PMC9254038          DOI: 10.1177/0271678X211063802

Source DB:  PubMed          Journal:  J Cereb Blood Flow Metab        ISSN: 0271-678X            Impact factor:   6.960


  33 in total

1.  Atrial Fibrillation Burden Signature and Near-Term Prediction of Stroke: A Machine Learning Analysis.

Authors:  Lichy Han; Mariam Askari; Russ B Altman; Susan K Schmitt; Jun Fan; Jason P Bentley; Sanjiv M Narayan; Mintu P Turakhia
Journal:  Circ Cardiovasc Qual Outcomes       Date:  2019-10-15

2.  Towards better clinical prediction models: seven steps for development and an ABCD for validation.

Authors:  Ewout W Steyerberg; Yvonne Vergouwe
Journal:  Eur Heart J       Date:  2014-06-04       Impact factor: 29.983

3.  Low Body Weight Is Associated With the Incidence of Stroke in Atrial Fibrillation Patients - Insight From the Fushimi AF Registry.

Authors:  Yasuhiro Hamatani; Hisashi Ogawa; Ryuji Uozumi; Moritake Iguchi; Yugo Yamashita; Masahiro Esato; Yeong-Hwa Chun; Hikari Tsuji; Hiromichi Wada; Koji Hasegawa; Mitsuru Abe; Satoshi Morita; Masaharu Akao
Journal:  Circ J       Date:  2015-02-13       Impact factor: 2.993

4.  Stroke and Thromboembolism in Patients With Atrial Fibrillation and Mitral Regurgitation.

Authors:  Arnaud Bisson; Anne Bernard; Alexandre Bodin; Nicolas Clementy; Dominique Babuty; Gregory Y H Lip; Laurent Fauchier
Journal:  Circ Arrhythm Electrophysiol       Date:  2019-03

5.  A method of comparing the areas under receiver operating characteristic curves derived from the same cases.

Authors:  J A Hanley; B J McNeil
Journal:  Radiology       Date:  1983-09       Impact factor: 11.105

6.  Relationships between sinus rhythm, treatment, and survival in the Atrial Fibrillation Follow-Up Investigation of Rhythm Management (AFFIRM) Study.

Authors:  Scott D Corley; Andrew E Epstein; John P DiMarco; Michael J Domanski; Nancy Geller; H Leon Greene; Richard A Josephson; Joyce C Kellen; Richard C Klein; Andrew D Krahn; Mary Mickel; L Brent Mitchell; Joy Dalquist Nelson; Yves Rosenberg; Eleanor Schron; Lynn Shemanski; Albert L Waldo; D George Wyse
Journal:  Circulation       Date:  2004-03-08       Impact factor: 29.690

7.  Current status of clinical background of patients with atrial fibrillation in a community-based survey: the Fushimi AF Registry.

Authors:  Masaharu Akao; Yeong-Hwa Chun; Hiromichi Wada; Masahiro Esato; Tetsuo Hashimoto; Mitsuru Abe; Koji Hasegawa; Hikari Tsuji; Keizo Furuke
Journal:  J Cardiol       Date:  2013-02-08       Impact factor: 3.159

Review 8.  Ischemic Stroke Risk in Patients With Nonvalvular Atrial Fibrillation: JACC Review Topic of the Week.

Authors:  Mohamad Alkhouli; Paul A Friedman
Journal:  J Am Coll Cardiol       Date:  2019-12-09       Impact factor: 24.094

9.  Left atrial enlargement is an independent predictor of stroke and systemic embolism in patients with non-valvular atrial fibrillation.

Authors:  Yasuhiro Hamatani; Hisashi Ogawa; Kensuke Takabayashi; Yugo Yamashita; Daisuke Takagi; Masahiro Esato; Yeong-Hwa Chun; Hikari Tsuji; Hiromichi Wada; Koji Hasegawa; Mitsuru Abe; Gregory Y H Lip; Masaharu Akao
Journal:  Sci Rep       Date:  2016-08-03       Impact factor: 4.379

10.  A machine learning approach to integrate big data for precision medicine in acute myeloid leukemia.

Authors:  Su-In Lee; Safiye Celik; Benjamin A Logsdon; Scott M Lundberg; Timothy J Martins; Vivian G Oehler; Elihu H Estey; Chris P Miller; Sylvia Chien; Jin Dai; Akanksha Saxena; C Anthony Blau; Pamela S Becker
Journal:  Nat Commun       Date:  2018-01-03       Impact factor: 14.919

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.