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Sensitivity of Claims-Based Algorithms to Ascertain Smoking Status More Than Doubled with Meaningful Use

The “meaningful use of certified electronic health record” policy requires eligible professionals to record smoking status for more than 50% of all individuals aged 13 years or older in 2011 to 2012. To explore whether the coding to document smoking behavior has increased over time and to assess the...

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Published in:Value in health 2018-03, Vol.21 (3), p.334-340
Main Authors: Huo, Jinhai, Yang, Ming, Tina Shih, Ya-Chen
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Language:English
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description The “meaningful use of certified electronic health record” policy requires eligible professionals to record smoking status for more than 50% of all individuals aged 13 years or older in 2011 to 2012. To explore whether the coding to document smoking behavior has increased over time and to assess the accuracy of smoking-related diagnosis and procedure codes in identifying previous and current smokers. We conducted an observational study with 5,423,880 enrollees from the year 2009 to 2014 in the Truven Health Analytics database. Temporal trends of smoking coding, sensitivity, specificity, positive predictive value, and negative predictive value were measured. The rate of coding of smoking behavior improved significantly by the end of the study period. The proportion of patients in the claims data recorded as current smokers increased 2.3-fold and the proportion of patients recorded as previous smokers increased 4-fold during the 6-year period. The sensitivity of each International Classification of Diseases, Ninth Revision, Clinical Modification code was generally less than 10%. The diagnosis code of tobacco use disorder (305.1X) was the most sensitive code (9.3%) for identifying smokers. The specificities of these codes and the Current Procedural Terminology codes were all more than 98%. A large improvement in the coding of current and previous smoking behavior has occurred since the inception of the meaningful use policy. Nevertheless, the use of diagnosis and procedure codes to identify smoking behavior in administrative data is still unreliable. This suggests that quality improvements toward medical coding on smoking behavior are needed to enhance the capability of claims data for smoking-related outcomes research.
doi_str_mv 10.1016/j.jval.2017.09.002
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source Applied Social Sciences Index & Abstracts (ASSIA); ScienceDirect Freedom Collection 2022-2024
subjects administrative data
Adolescent
Adult
Aged
Algorithms
Behavior
Classification
Diagnosis
EHR
Electronic health records
Electronic Health Records - economics
Electronic Health Records - standards
Electronic medical records
Female
Humans
Insurance Claim Review - economics
Insurance Claim Review - standards
Insurance claims
International Classification of Diseases - economics
International Classification of Diseases - standards
Male
Meaningful Use - economics
Meaningful Use - standards
Medical diagnosis
Middle Aged
sensitivity
Smoking
Smoking - economics
Smoking - epidemiology
Terminology
Tobacco
Young Adult
title Sensitivity of Claims-Based Algorithms to Ascertain Smoking Status More Than Doubled with Meaningful Use
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