Not all phenotypes are created equal: covariates of success in e-phenotype specification

Author:

Hamidi Bashir1ORCID,Flume Patrick A2,Simpson Kit N3,Alekseyenko Alexander V1345ORCID

Affiliation:

1. Biomedical Informatics Center, Medical University of South Carolina , Charleston, South Carolina 29425, USA

2. Department of Medicine, Medical University of South Carolina , Charleston, South Carolina 29425, USA

3. Department of Healthcare Leadership and Management, Medical University of South Carolina , Charleston, South Carolina 29425, USA

4. Department of Public Health Sciences, Medical University of South Carolina , Charleston, South Carolina, 29425, USA

5. Department of Oral Health Sciences, Medical University of South Carolina , Charleston, South Carolina 29425, USA

Abstract

Abstract Background Electronic (e)-phenotype specification by noninformaticist investigators remains a challenge. Although validation of each patient returned by e-phenotype could ensure accuracy of cohort representation, this approach is not practical. Understanding the factors leading to successful e-phenotype specification may reveal generalizable strategies leading to better results. Materials and Methods Noninformaticist experts (n = 21) were recruited to produce expert-mediated e-phenotypes using i2b2 assisted by a honest data-broker and a project coordinator. Patient- and visit-sets were reidentified and a random sample of 20 charts matching each e-phenotype was returned to experts for chart-validation. Attributes of the queries and expert characteristics were captured and related to chart-validation rates using generalized linear regression models. Results E-phenotype validation rates varied according to experts’ domains and query characteristics (mean = 61%, range 20–100%). Clinical domains that performed better included infectious, rheumatic, neonatal, and cancers, whereas other domains performed worse (psychiatric, GI, skin, and pulmonary). Match-rate was negatively impacted when specification of temporal constraints was required. In general, the increase in e-phenotype specificity contributed positively to match-rate. Discussions and Conclusions Clinical experts and informaticists experience a variety of challenges when building e-phenotypes, including the inability to differentiate clinical events from patient characteristics or appropriately configure temporal constraints; a lack of access to available and quality data; and difficulty in specifying routes of medication administration. Biomedical query mediation by informaticists and honest data-brokers in designing e-phenotypes cannot be overstated. Although tools such as i2b2 may be widely available to noninformaticists, successful utilization depends not on users’ confidence, but rather on creating highly specific e-phenotypes.

Funder

NIH

NCATS

NLM

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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