Assessment of the Accuracy of Using ICD-10 Codes to Identify Systemic Sclerosis

Clin Epidemiol. 2020 Dec 8:12:1355-1359. doi: 10.2147/CLEP.S260733. eCollection 2020.

Abstract

Importance: With the increased use of data from electronic medical records for research, it is important to validate in-patient electronic health records/hospital electronic health records for specific diseases identification using International Classification of Diseases, Tenth Revision (ICD-10) codes.

Objective: To assess the accuracy of using ICD-10 codes to identify systemic sclerosis (SSc) in the French hospital database.

Design setting and participants: Electronic health record database analysis. The setting of the study's in-patient database was the Toulouse University Hospital, a tertiary referral center (2880 beds) that serves approximately 2.9 million inhabitants. Participants were patients with ICD-10 discharge diagnosis codes of SSc seen at Toulouse University Hospital between January 1, 2010, and December 31, 2017.

Main outcomes and measures: The main outcome was the positive predictive value (PPV) of discharge diagnosis codes for identifying SSc. The PPVs were calculated by determining the ratio of the confirmed cases found by medical record review to the total number of cases identified by ICD-10 code.

Results: Of the 2766 hospital stays, 216 patients were identified by an SSc discharge diagnosis code. Two hundred were confirmed as SSc after medical record review. The overall PPV was 93% (95% CI, 88-95%). The PPV for limited cutaneous SSc was 95% (95% CI, 85-98%).

Conclusions and relevance: Our results suggest that using ICD-10 codes alone to capture SSc is reliable in The French hospital database.

Keywords: International Classification of Diseases; hospital database; positive predictive value; sensitivity; systemic sclerosis.

Grants and funding

There is no funding to report.