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Bayesian Nonparametric Collaborative Topic Poisson Factorization for Electronic Health Records-Based Phenotyping
categorize
Machine Learning
Author
Wonsung Lee, Youngmin Lee, Heeyoung Kim, and Il-Chul Moon
Year
2016
Conference Name
International Joint Conference on Artificial Intelligence (IJCAI 2016)
Presentation Date
Jul 9-16
City
New York
Country
USA
File
362.pdf (1.2M) 42회 다운로드 DATE : 2023-11-09 23:59:11

Wonsung Lee, Youngmin Lee, Heeyoung Kim, and Il-Chul Moon, Bayesian Nonparametric Collaborative Topic Poisson Factorization for Electronic Health Records-Based Phenotyping, International Joint Conference on Artificial Intelligence (IJCAI 2016), New York, USA, Jul 9-16, 2016


Abstract

Phenotyping with electronic health records (EHR) has received much attention in recent years because the phenotyping opens a new way to discover clinically meaningful insights, such as disease progression and disease subtypes without human supervisions. In spite of its potential benefits, the complex nature of EHR often requires more sophisticated methodologies compared with traditional methods. Previous works on EHR-based phenotyping utilized unsupervised and supervised learning methods separately by independently detecting phenotypes and predicting medical risk scores. To improve EHR-based phenotyping by bridging the separated methods, we present Bayesian nonparametric collaborative topic Poisson factorization (BN-CTPF) that is the first nonparametric contentbased Poisson factorization and first application of jointly analyzing the phenotye topics and estimating the individual risk scores. BN-CTPF shows better performances in predicting the risk scores when we compared the model with previous matrix factorization and topic modeling methods including a Poisson factorization and its collaborative extensions. Also, BN-CTPF provides faceted views on the phenotype topics by patients’ demographics. Finally, we demonstrate a scalable stochastic variational inference algorithm by applying BN-CTPF to a national-scale EHR dataset. 


@INPROCEEDINGS{6973889, 
author={Wonsung Lee, Youngmin Lee, Heeyoung Kim, and Il-Chul Moon}, 
booktitle={International Joint Conference on Artificial Intelligence (IJCAI 2016)}, 
title={Bayesian Nonparametric Collaborative Topic Poisson Factorization for Electronic Health Records-Based Phenotyping}, 
year={2016} 

} 


Source Website:

https://www.ijcai.org/Proceedings/16/Papers/362.pdf