Publication:
Estimating Dynamic Signals From Trial Data With Censored Values

Thumbnail Image

Open/View Files

Date

2017

Published Version

Journal Title

Journal ISSN

Volume Title

Publisher

MIT Press
The Harvard community has made this article openly available. Please share how this access benefits you.

Research Projects

Organizational Units

Journal Issue

Citation

Yousefi, Ali, Darin D. Dougherty, Emad N. Eskandar, Alik S. Widge, and Uri T. Eden. 2017. “Estimating Dynamic Signals From Trial Data With Censored Values.” Computational Psychiatry (Cambridge, Mass.) 1 (1): 58-81. doi:10.1162/CPSY_a_00003. http://dx.doi.org/10.1162/CPSY_a_00003.

Research Data

Abstract

Censored data occur commonly in trial-structured behavioral experiments and many other forms of longitudinal data. They can lead to severe bias and reduction of statistical power in subsequent analyses. Principled approaches for dealing with censored data, such as data imputation and methods based on the complete data’s likelihood, work well for estimating fixed features of statistical models but have not been extended to dynamic measures, such as serial estimates of an underlying latent variable over time. Here we propose an approach to the censored-data problem for dynamic behavioral signals. We developed a state-space modeling framework with a censored observation process at the trial timescale. We then developed a filter algorithm to compute the posterior distribution of the state process using the available data. We showed that special cases of this framework can incorporate the three most common approaches to censored observations: ignoring trials with censored data, imputing the censored data values, or using the full information available in the data likelihood. Finally, we derived a computationally efficient approximate Gaussian filter that is similar in structure to a Kalman filter, but that efficiently accounts for censored data. We compared the performances of these methods in a simulation study and provide recommendations of approaches to use, based on the expected amount of censored data in an experiment. These new techniques can broadly be applied in many research domains in which censored data interfere with estimation, including survival analysis and other clinical trial applications.

Description

Keywords

state-space model, missing data, Bayesian filtering Gaussian approximation, censored data, likelihood function, dynamic behavioral signal

Terms of Use

This article is made available under the terms and conditions applicable to Other Posted Material (LAA), as set forth at Terms of Service

Endorsement

Review

Supplemented By

Referenced By

Related Stories