Three‐phase generalized raking and multiple imputation estimators to address error‐prone data

Author:

Amorim Gustavo1ORCID,Tao Ran12ORCID,Lotspeich Sarah13ORCID,Shaw Pamela A.4ORCID,Lumley Thomas5,Patel Rena C.6ORCID,Shepherd Bryan E.1

Affiliation:

1. Department of Biostatistics Vanderbilt University Medical Center Nashville Tennessee USA

2. Vanderbilt Genetics Institute Vanderbilt University Medical Center Nashville Tennessee USA

3. Department of Statistical Sciences Wake Forest University Winston‐Salem North Carolina USA

4. Biostatistcs Division Kaiser Permanente Washington Health Research Institute Seattle Washington USA

5. Department of Statistics University of Auckland Auckland New Zealand

6. Department of Medicine University of Washington Seattle Washington USA

Abstract

Validation studies are often used to obtain more reliable information in settings with error‐prone data. Validated data on a subsample of subjects can be used together with error‐prone data on all subjects to improve estimation. In practice, more than one round of data validation may be required, and direct application of standard approaches for combining validation data into analyses may lead to inefficient estimators since the information available from intermediate validation steps is only partially considered or even completely ignored. In this paper, we present two novel extensions of multiple imputation and generalized raking estimators that make full use of all available data. We show through simulations that incorporating information from intermediate steps can lead to substantial gains in efficiency. This work is motivated by and illustrated in a study of contraceptive effectiveness among 83 671 women living with HIV, whose data were originally extracted from electronic medical records, of whom 4732 had their charts reviewed, and a subsequent 1210 also had a telephone interview to validate key study variables.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

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