ManyDG: Many-domain Generalization for Healthcare Applications

01/21/2023
by   Chaoqi Yang, et al.
0

The vast amount of health data has been continuously collected for each patient, providing opportunities to support diverse healthcare predictive tasks such as seizure detection and hospitalization prediction. Existing models are mostly trained on other patients data and evaluated on new patients. Many of them might suffer from poor generalizability. One key reason can be overfitting due to the unique information related to patient identities and their data collection environments, referred to as patient covariates in the paper. These patient covariates usually do not contribute to predicting the targets but are often difficult to remove. As a result, they can bias the model training process and impede generalization. In healthcare applications, most existing domain generalization methods assume a small number of domains. In this paper, considering the diversity of patient covariates, we propose a new setting by treating each patient as a separate domain (leading to many domains). We develop a new domain generalization method ManyDG, that can scale to such many-domain problems. Our method identifies the patient domain covariates by mutual reconstruction and removes them via an orthogonal projection step. Extensive experiments show that ManyDG can boost the generalization performance on multiple real-world healthcare tasks (e.g., 3.7 MIMIC drug recommendation) and support realistic but challenging settings such as insufficient data and continuous learning.

READ FULL TEXT
research
06/21/2021

Patient Embeddings in Healthcare and Insurance Applications

The paper researches the problem of concept and patient representations ...
research
10/15/2021

Communicating Patient Health Data: A Wicked Problem

Designing patient-collected health data visualizations to support discus...
research
05/13/2017

ShortFuse: Biomedical Time Series Representations in the Presence of Structured Information

In healthcare applications, temporal variables that encode movement, hea...
research
01/13/2021

Adversarial Sample Enhanced Domain Adaptation: A Case Study on Predictive Modeling with Electronic Health Records

With the successful adoption of machine learning on electronic health re...
research
08/22/2023

Patient Clustering via Integrated Profiling of Clinical and Digital Data

We introduce a novel profile-based patient clustering model designed for...
research
05/05/2021

Change Matters: Medication Change Prediction with Recurrent Residual Networks

Deep learning is revolutionizing predictive healthcare, including recomm...
research
01/19/2018

Fostering Bilateral Patient-Clinician Engagement in Active Self-Tracking of Subjective Experience

In this position paper we describe select aspects of our experience with...

Please sign up or login with your details

Forgot password? Click here to reset