Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims

Abstract Background Muscular dystrophies (MDs) are a group of inherited conditions characterized by progressive muscle degeneration and weakness. The rarity and heterogeneity of the population with MD have hindered therapeutic developments as well as epidemiological and health outcomes research. The...

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Main Authors: Xiaoxue Chen, Abiy Agiro, Ann S. Martin, Ann M. Lucas, Kevin Haynes
Format: Article
Language:English
Published: BMC 2019-08-01
Series:BMC Medical Research Methodology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12874-019-0816-7
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spelling doaj-0935b1f19881411d8fdb9f4d1e9e82fd2020-11-25T03:07:23ZengBMCBMC Medical Research Methodology1471-22882019-08-011911610.1186/s12874-019-0816-7Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claimsXiaoxue Chen0Abiy Agiro1Ann S. Martin2Ann M. Lucas3Kevin Haynes4HealthCore, IncHealthCore, IncParent Project Muscular DystrophySanofi GenzymeHealthCore, IncAbstract Background Muscular dystrophies (MDs) are a group of inherited conditions characterized by progressive muscle degeneration and weakness. The rarity and heterogeneity of the population with MD have hindered therapeutic developments as well as epidemiological and health outcomes research. The objective of the study was to develop and validate a case-finding algorithm utilizing administrative claims data to identify and characterize patients with MD. Methods This retrospective cohort study used medical chart validation to evaluate an ICD-9/10 coding algorithm in a large commercial claims database. Patients were identified who had ≥2 office visits with a diagnosis of hereditary progressive MDs from January 1, 2013 through December 31, 2016, were male, and younger than 18 years at the time of first MD diagnosis. Cases who met the algorithm were then validated against medical charts. Diagnoses of MD and specific type (Duchenne, Becker, or other MD) were confirmed by medical chart review by trained reviewers. Positive predictive value (PPV) and 95% confidence intervals (CI) were calculated using a 2 × 2 contingence table. Patient demographic, clinical, and health utilization characteristics were summarized using basic descriptive statistics. Results Charts were obtained and reviewed for 109 patients who met the algorithm. The PPV of the case-identifying algorithm for MD was 95% (95% CI 88–98%). Of the 103 confirmed MD cases, 87 patients (85%, 95% CI 76–91%) had Duchenne or Becker MD; 76 patients (74%, 95% CI 64–82%) had Duchenne MD, and 11 patients (11%, 95% CI 5–18%) had Becker MD. A total of 74 (67.9%) patients had ≥1 pediatric complex chronic condition (other than neurologic/neuromuscular disease); 54 (49.5%) had cardiovascular conditions; 14 (12.8%) had respiratory conditions; 50 (45.9%) had bone-related issues; 11 (10.1%) had impaired growth; and 6 (5.5%) had puberty delay. Conclusions The results of this study demonstrate that the case-finding algorithm accurately identified patients with MD, primarily Duchenne MD, within a large administrative database. The algorithm, which was constructed using a few items easily accessible from claims, can be used to facilitate epidemiological and health outcomes research in the Duchenne patient population.http://link.springer.com/article/10.1186/s12874-019-0816-7DuchenneMuscular dystrophyValidationClaims analysis
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoxue Chen
Abiy Agiro
Ann S. Martin
Ann M. Lucas
Kevin Haynes
spellingShingle Xiaoxue Chen
Abiy Agiro
Ann S. Martin
Ann M. Lucas
Kevin Haynes
Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
BMC Medical Research Methodology
Duchenne
Muscular dystrophy
Validation
Claims analysis
author_facet Xiaoxue Chen
Abiy Agiro
Ann S. Martin
Ann M. Lucas
Kevin Haynes
author_sort Xiaoxue Chen
title Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
title_short Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
title_full Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
title_fullStr Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
title_full_unstemmed Chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
title_sort chart validation of an algorithm for identifying hereditary progressive muscular dystrophy in healthcare claims
publisher BMC
series BMC Medical Research Methodology
issn 1471-2288
publishDate 2019-08-01
description Abstract Background Muscular dystrophies (MDs) are a group of inherited conditions characterized by progressive muscle degeneration and weakness. The rarity and heterogeneity of the population with MD have hindered therapeutic developments as well as epidemiological and health outcomes research. The objective of the study was to develop and validate a case-finding algorithm utilizing administrative claims data to identify and characterize patients with MD. Methods This retrospective cohort study used medical chart validation to evaluate an ICD-9/10 coding algorithm in a large commercial claims database. Patients were identified who had ≥2 office visits with a diagnosis of hereditary progressive MDs from January 1, 2013 through December 31, 2016, were male, and younger than 18 years at the time of first MD diagnosis. Cases who met the algorithm were then validated against medical charts. Diagnoses of MD and specific type (Duchenne, Becker, or other MD) were confirmed by medical chart review by trained reviewers. Positive predictive value (PPV) and 95% confidence intervals (CI) were calculated using a 2 × 2 contingence table. Patient demographic, clinical, and health utilization characteristics were summarized using basic descriptive statistics. Results Charts were obtained and reviewed for 109 patients who met the algorithm. The PPV of the case-identifying algorithm for MD was 95% (95% CI 88–98%). Of the 103 confirmed MD cases, 87 patients (85%, 95% CI 76–91%) had Duchenne or Becker MD; 76 patients (74%, 95% CI 64–82%) had Duchenne MD, and 11 patients (11%, 95% CI 5–18%) had Becker MD. A total of 74 (67.9%) patients had ≥1 pediatric complex chronic condition (other than neurologic/neuromuscular disease); 54 (49.5%) had cardiovascular conditions; 14 (12.8%) had respiratory conditions; 50 (45.9%) had bone-related issues; 11 (10.1%) had impaired growth; and 6 (5.5%) had puberty delay. Conclusions The results of this study demonstrate that the case-finding algorithm accurately identified patients with MD, primarily Duchenne MD, within a large administrative database. The algorithm, which was constructed using a few items easily accessible from claims, can be used to facilitate epidemiological and health outcomes research in the Duchenne patient population.
topic Duchenne
Muscular dystrophy
Validation
Claims analysis
url http://link.springer.com/article/10.1186/s12874-019-0816-7
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