Imputation of Clinical Covariates in Time Series

12/02/2018
by   Dimitris Bertsimas, et al.
0

Missing data is a common problem in real-world settings and particularly relevant in healthcare applications where researchers use Electronic Health Records (EHR) and results of observational studies to apply analytics methods. This issue becomes even more prominent for longitudinal data sets, where multiple instances of the same individual correspond to different observations in time. Standard imputation methods do not take into account patient specific information incorporated in multivariate panel data. We introduce the novel imputation algorithm MedImpute that addresses this problem, extending the flexible framework of OptImpute suggested by Bertsimas et al. (2018). Our algorithm provides imputations for data sets with missing continuous and categorical features, and we present the formulation and implement scalable first-order methods for a K-NN model. We test the performance of our algorithm on longitudinal data from the Framingham Heart Study when data are missing completely at random (MCAR). We demonstrate that MedImpute leads to significant improvements in both imputation accuracy and downstream model AUC compared to state-of-the-art methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/18/2019

Bayesian Recurrent Framework for Missing Data Imputation and Prediction with Clinical Time Series

Real-world clinical time series data sets exhibit a high prevalence of m...
research
04/16/2023

Time-dependent Iterative Imputation for Multivariate Longitudinal Clinical Data

Missing data is a major challenge in clinical research. In electronic me...
research
03/15/2022

Reconstructing Missing EHRs Using Time-Aware Within- and Cross-Visit Information for Septic Shock Early Prediction

Real-world Electronic Health Records (EHRs) are often plagued by a high ...
research
08/13/2022

GEDI: A Graph-based End-to-end Data Imputation Framework

Data imputation is an effective way to handle missing data, which is com...
research
11/25/2020

Modern Multiple Imputation with Functional Data

This work considers the problem of fitting functional models with sparse...

Please sign up or login with your details

Forgot password? Click here to reset