The representativeness of eligible patients in type 2 diabetes trials: a case study using GIST 2.0

Author:

Sen Anando1,Goldstein Andrew1,Chakrabarti Shreya1,Shang Ning1,Kang Tian1,Yaman Anil2,Ryan Patrick B13,Weng Chunhua1

Affiliation:

1. Department of Biomedical Informatics, Columbia University, New York, NY, USA

2. Department of Mathematics and Computer Science, Eindhoven University of Technology, Eindhoven, Netherlands,

3. Janssen Research and Development, Titusville, NJ, USA

Abstract

Abstract Objective The population representativeness of a clinical study is influenced by how real-world patients qualify for the study. We analyze the representativeness of eligible patients for multiple type 2 diabetes trials and the relationship between representativeness and other trial characteristics. Methods Sixty-nine study traits available in the electronic health record data for 2034 patients with type 2 diabetes were used to profile the target patients for type 2 diabetes trials. A set of 1691 type 2 diabetes trials was identified from ClinicalTrials.gov, and their population representativeness was calculated using the published Generalizability Index of Study Traits 2.0 metric. The relationships between population representativeness and number of traits and between trial duration and trial metadata were statistically analyzed. A focused analysis with only phase 2 and 3 interventional trials was also conducted. Results A total of 869 of 1691 trials (51.4%) and 412 of 776 phase 2 and 3 interventional trials (53.1%) had a population representativeness of <5%. The overall representativeness was significantly correlated with the representativeness of the Hba1c criterion. The greater the number of criteria or the shorter the trial, the less the representativeness. Among the trial metadata, phase, recruitment status, and start year were found to have a statistically significant effect on population representativeness. For phase 2 and 3 interventional trials, only start year was significantly associated with representativeness. Conclusions Our study quantified the representativeness of multiple type 2 diabetes trials. The common low representativeness of type 2 diabetes trials could be attributed to specific study design requirements of trials or safety concerns. Rather than criticizing the low representativeness, we contribute a method for increasing the transparency of the representativeness of clinical trials.

Funder

NIH

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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