TY - JOUR
T1 - Identification of important risk factors for all-cause mortality of acquired long QT syndrome patients using random survival forests and non-negative matrix factorization
AU - Chen, Cheng
AU - Zhou, Jiandong
AU - Yu, Haixu
AU - Zhang, Qingpeng
AU - Gao, Lianjun
AU - Yin, Xiaomeng
AU - Dong, Yingxue
AU - Lin, Yajuan
AU - Li, Daobo
AU - Yang, Yiheng
AU - Wang, Yunsong
AU - Tse, Gary
AU - Xia, Yunlong
N1 - Publisher Copyright:
© 2020 Heart Rhythm Society
PY - 2021/3
Y1 - 2021/3
N2 - Background: Acquired long QT syndrome (aLQTS) is often associated with poor clinical outcomes. Objective: The purpose of this study was to examine the important predictors of all-cause mortality of aLQTS patients by applying both random survival forest (RSF) and non-negative matrix factorization (NMF) analyses. Methods: Clinical characteristics and manually measured electrocardiographic (ECG) parameters were initially entered into the RSF model. Subsequently, latent variables identified using NMF were entered into the RSF as additional variables. The primary outcome was all-cause mortality. Results: A total of 327 aLQTS patients were included. The RSF model identified 16 predictive factors with positive variable importance values: cancer, potassium, RR interval, calcium, age, JT interval, diabetes mellitus, QRS duration, QTp interval, chronic kidney disease, QTc interval, hypertension, QT interval, female, JTc interval, and cerebral hemorrhage. Increasing the number of latent features between ECG indices, which incorporated from n = 0 to n = 4 by NMF, maximally improved the prediction ability of the RSF-NMF model (C-statistic 0.77 vs 0.89). Conclusion: Cancer and serum potassium and calcium levels can predict all-cause mortality of aLQTS patients, as can ECG indicators including JTc and QRS. The present RSF-NMF model significantly improved mortality prediction.
AB - Background: Acquired long QT syndrome (aLQTS) is often associated with poor clinical outcomes. Objective: The purpose of this study was to examine the important predictors of all-cause mortality of aLQTS patients by applying both random survival forest (RSF) and non-negative matrix factorization (NMF) analyses. Methods: Clinical characteristics and manually measured electrocardiographic (ECG) parameters were initially entered into the RSF model. Subsequently, latent variables identified using NMF were entered into the RSF as additional variables. The primary outcome was all-cause mortality. Results: A total of 327 aLQTS patients were included. The RSF model identified 16 predictive factors with positive variable importance values: cancer, potassium, RR interval, calcium, age, JT interval, diabetes mellitus, QRS duration, QTp interval, chronic kidney disease, QTc interval, hypertension, QT interval, female, JTc interval, and cerebral hemorrhage. Increasing the number of latent features between ECG indices, which incorporated from n = 0 to n = 4 by NMF, maximally improved the prediction ability of the RSF-NMF model (C-statistic 0.77 vs 0.89). Conclusion: Cancer and serum potassium and calcium levels can predict all-cause mortality of aLQTS patients, as can ECG indicators including JTc and QRS. The present RSF-NMF model significantly improved mortality prediction.
KW - Acquired long QT syndrome
KW - All-cause mortality
KW - Myocardial repolarization
KW - Non-negative matrix factorization
KW - Random survival forests
UR - http://www.scopus.com/inward/record.url?scp=85101135770&partnerID=8YFLogxK
U2 - 10.1016/j.hrthm.2020.10.022
DO - 10.1016/j.hrthm.2020.10.022
M3 - Article
C2 - 33127541
AN - SCOPUS:85101135770
SN - 1547-5271
VL - 18
SP - 426
EP - 433
JO - Heart Rhythm
JF - Heart Rhythm
IS - 3
ER -