National Database of Health Insurance Claims and Specific Health Checkups of Japan (NDB): Outline and Patient-Matching Technique

Author:

Shinichiro KuboORCID,Tatsuya NodaORCID,Tomoya MyojinORCID,Yuichi NishiokaORCID,Tsuneyuki Higashino,Hiroki MatsuiORCID,Genta KatoORCID,Tomoaki ImamuraORCID

Abstract

AbstractBackgroundThe National Database of Health Insurance Claims and Specific Health Checkups of Japan (NDB) is a comprehensive database of health insurance claims data under Japan’s National Health Insurance system. The NDB uses two types of personal identification variables (referred to in the database as “ID1” and “ID2”) to link the insurance claims of individual patients. However, the information entered against these ID variables is prone to change for several reasons, such as when claimants find or change employment, or due to variations in the spelling of their name. In the present study, we developed a new patient-matching technique that improves upon the existing system of using ID1 and ID2 variables. We also sought to validate a new personal ID variable (ID0) that we propose in order to enhance the efficiency of patient matching in the NDB database.MethodsOur study targeted data from health insurance claims filed between April 2013 and March 2016 for hospitalization, combined diagnostic procedures, outpatient treatment, and dispensing of prescription medication. We developed a new patient-matching algorithm based on the ID1 and ID2 variables, as well as variables for treatment date and clinical outcome. We then attempted to validate our algorithm by comparing the number of patients identified by patient matching with the current ID1 variable and our proposed ID0 variable against the estimated patient population as of 1 October 2015.ResultsThe numbers of patients in each sex and age group that were identified with the ID0 variable were lower than those identified using the ID1 variable. By using the ID0 variable, we were able to reduce the number of duplicate records for male and female patients by 5.8% and 6.4%, respectively. The numbers of children, adults older than 75 years, and women of reproductive age identified using the ID1 patient-matching variable were all higher than their corresponding estimates. Conversely, the numbers of these patients identified with the ID0 patient-matching variable were all within their corresponding estimates.ConclusionOur findings show that the proposed ID0 variable delivers more precise patient-matching results than the existing ID1 variable. The ID0 variable is currently the best available technique for patient matching in the NDB database. Future patient population estimates should therefore rely on the ID0 variable instead of the ID1 variable.

Publisher

Cold Spring Harbor Laboratory

Reference7 articles.

1. Secondary use of the national database of health insurance claims and specific health checkups of Japan: a historical overview;Statistics (Japan Statistical Association),2014

2. The 356 Central Social Insurance Medical Council Annual Meeting Agenda, Cross-regional issues (no. 2), outline of the national database of health insurance claims and specific health checkups of Japan (NDB). Japan Ministry of Health, Labour and Welfare, Health Insurance Bureau, Medical Economics Division, 2017. (in Japanese) [http://www.mhlw.go.jp/file/05-Shingikai-12404000-Hokenkyoku-Iryouka/0000170931.pdf (cited 2017-Sep-08)].

3. Necessity and considerations in use of the national database of health insurance claims and specific health checkups of Japan of Japan with linkage of data corresponding to a given individual;Japanese Journal of Health and Research,2017

4. Material 2 “Linking the dataset of health insurance claims and the dataset of specific health checkups of Japan (report)” at the 38th expert committee for provision of health insurance claims. Japan Ministry of Health, Labour and Welfare, Health, Insurance Bureau, Policy Division for Integration of Healthcare and Long-term Care, Health Insurance System Improvement Promotion Group. 2017. (in Japanese) [http://www.mhlw.go.jp/file/05-Shingikai-12401000-Hokenkyoku-Soumuka/0000174510.pdf (cited 2017-Sep-08)].

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