Representation Learning with Autoencoders for Electronic Health Records: A Comparative Study
Najibesadat Sadati, Milad Zafar Nezhad, Ratna Babu Chinnam, Dongxiao, Zhu

TL;DR
This paper compares various deep autoencoder architectures for feature learning from electronic health records, demonstrating their effectiveness in predictive modeling especially under different data size conditions.
Contribution
It provides a comparative analysis of deep autoencoder models for EHR feature extraction, highlighting their strengths in small versus large datasets.
Findings
Stacked sparse autoencoders perform best on small datasets.
Variational autoencoders excel with large datasets.
Deep autoencoder-based features improve predictive accuracy.
Abstract
Increasing volume of Electronic Health Records (EHR) in recent years provides great opportunities for data scientists to collaborate on different aspects of healthcare research by applying advanced analytics to these EHR clinical data. A key requirement however is obtaining meaningful insights from high dimensional, sparse and complex clinical data. Data science approaches typically address this challenge by performing feature learning in order to build more reliable and informative feature representations from clinical data followed by supervised learning. In this paper, we propose a predictive modeling approach based on deep learning based feature representations and word embedding techniques. Our method uses different deep architectures (stacked sparse autoencoders, deep belief network, adversarial autoencoders and variational autoencoders) for feature representation in higher-level…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsMachine Learning in Healthcare
MethodsSparse Autoencoder · Solana Customer Service Number +1-833-534-1729
