| Literature DB >> 28269876 |
Xiang Li1, Haifeng Liu1, Xin Du2, Ping Zhang3, Gang Hu1, Guotong Xie1, Shijing Guo1, Meilin Xu4, Xiaoping Xie4.
Abstract
Atrial fibrillation (AF) is a common cardiac rhythm disorder, which increases the risk of ischemic stroke and other thromboembolism (TE). Accurate prediction of TE is highly valuable for early intervention to AF patients. However, the prediction performance of previous TE risk models for AF is not satisfactory. In this study, we used integrated machine learning and data mining approaches to build 2-year TE prediction models for AF from Chinese Atrial Fibrillation Registry data. We first performed data cleansing and imputation on the raw data to generate available dataset. Then a series of feature construction and selection methods were used to identify predictive risk factors, based on which supervised learning methods were applied to build the prediction models. The experimental results show that our approach can achieve higher prediction performance (AUC: 0.71~0.74) than previous TE prediction models for AF (AUC: 0.66~0.69), and identify new potential risk factors as well.Entities:
Mesh:
Year: 2017 PMID: 28269876 PMCID: PMC5333223
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076