机构:[a]IBM Research - China, Beijing, China[b]IBM T.J. Watson Research Center, NY, United States[c]Department of Cardiology, Beijing Anzhen Hospital, Beijing, China临床科室心脏内科中心首都医科大学附属安贞医院
出处:
ISSN:
摘要:
Atrial fibrillation (AF) is a common cardiac arrhythmias, which increases the risk and severity of ischemic stroke. For predicting ischemic stroke in AF patients, a risk prediction model that can achieve both good model discrimination (e.g., A UC) and statistical significance ofpredictors is required in real clinical practices. In this paper, we propose a new bootstrap-based wrapper (Boots-wrapper) method of feature selection, and apply this method on Chinese Atrial Fibrillation Registry data to develop 1-year stroke prediction models in AF. The proposed method can heuristically search a subset of features to maximize the discrimination of the prediction model and minimize the penalty for the non-significant features. To achieve robust feature selection, we perform bootstrap sampling to get a more reliable estimate of the variation and significance statistics. The experimental results show that Boots-wrapper can balance model discrimination and statistical significance offeatures for developing AF stroke prediction models.
语种:
外文
第一作者:
推荐引用方式(GB/T 7714):
Li X,Sun Z,Du X,et al.Bootstrap-based Feature Selection to Balance Model Discrimination and Predictor Significance: A Study of Stroke Prediction in Atrial Fibrillation[J].2017,2017:
APA:
Li, X,Sun, Z,Du, X,Liu, H,Hu, G&Xie, G.(2017).Bootstrap-based Feature Selection to Balance Model Discrimination and Predictor Significance: A Study of Stroke Prediction in Atrial Fibrillation.,2017,
MLA:
Li, X,et al."Bootstrap-based Feature Selection to Balance Model Discrimination and Predictor Significance: A Study of Stroke Prediction in Atrial Fibrillation". 2017.(2017)