Prior Adaptive Semi-supervised Learning with Application to EHR Phenotyping

03/26/2020
by   Yichi Zhang, et al.
0

Electronic Health Records (EHR) data, a rich source for biomedical research, have been successfully used to gain novel insight into a wide range of diseases. Despite its potential, EHR is currently underutilized for discovery research due to it's major limitation in the lack of precise phenotype information. To overcome such difficulties, recent efforts have been devoted to developing supervised algorithms to accurately predict phenotypes based on relatively small training datasets with gold standard labels extracted via chart review. However, supervised methods typically require a sizable training set to yield generalizable algorithms especially when the number of candidate features, p, is large. In this paper, we propose a semi-supervised (SS) EHR phenotyping method that borrows information from both a small labeled data where both the label Y and the feature set X are observed and a much larger unlabeled data with observations on X only as well as a surrogate variable S that is predictive of Y and available for all patients, under a high dimensional setting. Under a working prior assumption that S is related to X only through Y and allowing it to hold approximately, we propose a prior adaptive semi-supervised (PASS) estimator that adaptively incorporates the prior knowledge by shrinking the estimator towards a direction derived under the prior. We derive asymptotic theory for the proposed estimator and demonstrate its superiority over existing estimators via simulation studies. The proposed method is applied to an EHR phenotyping study of rheumatoid arthritis at Partner's Healthcare.

READ FULL TEXT

page 15

page 16

research
10/24/2021

Efficient and Robust Semi-supervised Estimation of ATE with Partially Annotated Treatment and Response

A notable challenge of leveraging Electronic Health Records (EHR) for tr...
research
02/09/2023

Surrogate-Assisted Federated Learning of high dimensional Electronic Health Record Data

Surrogate variables in electronic health records (EHR) play an important...
research
03/31/2018

Efficient and Robust Semi-Supervised Estimation of Average Treatment Effects in Electronic Medical Records Data

There is strong interest in conducting comparative effectiveness researc...
research
11/15/2017

Semi-Supervised Approaches to Efficient Evaluation of Model Prediction Performance

In many modern machine learning applications, the outcome is expensive o...
research
05/02/2023

ssROC: Semi-Supervised ROC Analysis for Reliable and Streamlined Evaluation of Phenotyping Algorithms

Objective: High-throughput phenotyping will accelerate the use of electr...
research
03/04/2022

Adaptive Semi-Supervised Inference for Optimal Treatment Decisions with Electronic Medical Record Data

A treatment regime is a rule that assigns a treatment to patients based ...
research
10/19/2020

Efficient Estimation and Evaluation of Prediction Rules in Semi-Supervised Settings under Stratified Sampling

In many contemporary applications, large amounts of unlabeled data are r...

Please sign up or login with your details

Forgot password? Click here to reset