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Published in: BMC Medical Informatics and Decision Making 1/2021

Open Access 01-12-2021 | Insulins | Research article

Performance evaluation of case definitions of type 1 diabetes for health insurance claims data in Japan

Authors: Tasuku Okui, Chinatsu Nojiri, Shinichiro Kimura, Kentaro Abe, Sayaka Maeno, Masae Minami, Yasutaka Maeda, Naoko Tajima, Tomoyuki Kawamura, Naoki Nakashima

Published in: BMC Medical Informatics and Decision Making | Issue 1/2021

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Abstract

Background

No case definition of Type 1 diabetes (T1D) for the claims data has been proposed in Japan yet. This study aimed to evaluate the performance of candidate case definitions for T1D using Electronic health care records (EHR) and claims data in a University Hospital in Japan.

Methods

The EHR and claims data for all the visiting patients in a University Hospital were used. As the candidate case definitions for claims data, we constructed 11 definitions by combinations of International Statistical Classification of Diseases and Related Health Problems, Tenth Revision. (ICD 10) code of T1D, the claims code of insulin needles for T1D patients, basal insulin, and syringe pump for continuous subcutaneous insulin infusion (CSII). We constructed a predictive model for T1D patients using disease names, medical practices, and medications as explanatory variables. The predictive model was applied to patients of test group (validation data), and performances of candidate case definitions were evaluated.

Results

As a result of performance evaluation, the sensitivity of the confirmed disease name of T1D was 32.9 (95% CI: 28.4, 37.2), and positive predictive value (PPV) was 33.3 (95% CI: 38.0, 38.4). By using the case definition of both the confirmed diagnosis of T1D and either of the claims code of the two insulin treatment methods (i.e., syringe pump for CSII and insulin needles), PPV improved to 90.2 (95% CI: 85.2, 94.4).

Conclusions

We have established a case definition with high PPV, and the case definition can be used for precisely detecting T1D patients from claims data in Japan.
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Metadata
Title
Performance evaluation of case definitions of type 1 diabetes for health insurance claims data in Japan
Authors
Tasuku Okui
Chinatsu Nojiri
Shinichiro Kimura
Kentaro Abe
Sayaka Maeno
Masae Minami
Yasutaka Maeda
Naoko Tajima
Tomoyuki Kawamura
Naoki Nakashima
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2021
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-021-01422-z

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