Activity ID
14553Expires
January 7, 2029Format Type
Journal-basedCME Credit
1Fee
$30CME Provider: JAMA Dermatology
Description of CME Course
Importance Accurate classification of dermatologic conditions using International Classification of Diseases (ICD) codes is essential for research that uses large administrative datasets. Misclassification can be associated with biased epidemiologic estimates and misleading conclusions in population-based studies.
Objective To systematically identify and evaluate validated classification approaches for dermatologic conditions using ICD codes in US-based administrative, claims, or electronic health record data.
Evidence Review A systematic review was conducted that was registered with PROSPERO (CRD420250654233) and reported according to Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines. A comprehensive search of Ovid MEDLINE, Embase, Web of Science, and CINAHL was conducted for studies published from January 1, 2000, to October 21, 2025. The data were analyzed in October 2025. Eligible studies evaluated International Classification of Diseases, Ninth Revision (ICD-9) or International Statistical Classification of Diseases and Related Health Problems, Tenth Revision (ICD-10) codes used to identify dermatologic conditions in US-based datasets and reported at least 1 classification metric (eg, positive predictive value). To minimize selection and extraction bias, all screening and data extraction were performed independently by 2 reviewers, with discrepancies resolved by consensus.
Findings A total of 59 studies met inclusion criteria. Most reported positive predictive value, with few reporting negative predictive value, sensitivity, or specificity. Classification accuracy varied widely by condition and coding strategy. Studies included inflammatory and autoimmune conditions (eg, acne vulgaris, atopic dermatitis, chronic spontaneous urticaria, cutaneous lupus erythematosus, cutaneous sarcoidosis, dermatomyositis, granuloma annulare, hidradenitis suppurativa, lichen planus, palmoplantar pustulosis, pemphigus, pemphigoid, perioral dermatitis, prurigo nodularis, psoriasis, pyoderma gangrenosum, and vitiligo), actinic keratosis and skin cancer, pigmentary and hair disorders (eg, alopecia areata, cicatricial alopecia, lichen planopilaris, and melasma), drug reactions (eg, Stevens-Johnson syndrome, toxic epidermal necrolysis), surgical complications, and infections (eg, herpes zoster, herpes simplex virus, and cellulitis or abscess). Classification algorithms that incorporated 2 or more codes, dermatologist attribution, or treatment/procedural data often achieved the highest accuracy. Conditions lacking validated algorithms included seborrheic dermatitis, rosacea, fungal infections, and specific alopecia subtypes.
Conclusions and Relevance This systematic review provides a summary of the most accurate classification approaches to identify various dermatologic conditions in large administrative datasets. These results may inform study designs when using these datasets. In addition, some common conditions lack validated classification approaches, highlighting important areas for future research. As administrative and electronic health record data increasingly support dermatology research, use of rigorously validated algorithms will be essential for generating trustworthy findings.
Disclaimers
1. This activity is accredited by the American Medical Association.
2. This activity is free to AMA members.
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NoNOTE: If a Member Board has not deemed this activity for MOC approval as an accredited CME activity, this activity may count toward an ABMS Member Board’s general CME requirement. Please refer directly to your Member Board’s MOC Part II Lifelong Learning and Self-Assessment Program Requirements.
Educational Objectives
To identify the key insights or developments described in this article
Keywords
Dermatology
Competencies
Medical Knowledge
CME Credit Type
AMA PRA Category 1 Credit
DOI
10.1001/jamadermatol.2025.5268