Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity.
To evaluate the validity of multi-institutional electronic health record (EHR) data sharing for surveillance and study of childhood obesity.We conducted a non-concurrent cohort study of 528,340 children with outpatient visits to six pediatric academic medical centers during 2007-08, with sufficient...
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doaj-176cbaf8234649e48412be4574b5d78a2020-11-25T00:48:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0186e6619210.1371/journal.pone.0066192Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity.L Charles BaileyDavid E MilovKelly KelleherMichael G KahnMark Del BeccaroFeliciano YuThomas RichardsChristopher B ForrestTo evaluate the validity of multi-institutional electronic health record (EHR) data sharing for surveillance and study of childhood obesity.We conducted a non-concurrent cohort study of 528,340 children with outpatient visits to six pediatric academic medical centers during 2007-08, with sufficient data in the EHR for body mass index (BMI) assessment. EHR data were compared with data from the 2007-08 National Health and Nutrition Examination Survey (NHANES).Among children 2-17 years, BMI was evaluable for 1,398,655 visits (56%). The EHR dataset contained over 6,000 BMI measurements per month of age up to 16 years, yielding precise estimates of BMI. In the EHR dataset, 18% of children were obese versus 18% in NHANES, while 35% were obese or overweight versus 34% in NHANES. BMI for an individual was highly reliable over time (intraclass correlation coefficient 0.90 for obese children and 0.97 for all children). Only 14% of visits with measured obesity (BMI ≥95%) had a diagnosis of obesity recorded, and only 20% of children with measured obesity had the diagnosis documented during the study period. Obese children had higher primary care (4.8 versus 4.0 visits, p<0.001) and specialty care (3.7 versus 2.7 visits, p<0.001) utilization than non-obese counterparts, and higher prevalence of diverse co-morbidities. The cohort size in the EHR dataset permitted detection of associations with rare diagnoses. Data sharing did not require investment of extensive institutional resources, yet yielded high data quality.Multi-institutional EHR data sharing is a promising, feasible, and valid approach for population health surveillance. It provides a valuable complement to more resource-intensive national surveys, particularly for iterative surveillance and quality improvement. Low rates of obesity diagnosis present a significant obstacle to surveillance and quality improvement for care of children with obesity.http://europepmc.org/articles/PMC3688837?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
L Charles Bailey David E Milov Kelly Kelleher Michael G Kahn Mark Del Beccaro Feliciano Yu Thomas Richards Christopher B Forrest |
spellingShingle |
L Charles Bailey David E Milov Kelly Kelleher Michael G Kahn Mark Del Beccaro Feliciano Yu Thomas Richards Christopher B Forrest Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. PLoS ONE |
author_facet |
L Charles Bailey David E Milov Kelly Kelleher Michael G Kahn Mark Del Beccaro Feliciano Yu Thomas Richards Christopher B Forrest |
author_sort |
L Charles Bailey |
title |
Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. |
title_short |
Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. |
title_full |
Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. |
title_fullStr |
Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. |
title_full_unstemmed |
Multi-Institutional Sharing of Electronic Health Record Data to Assess Childhood Obesity. |
title_sort |
multi-institutional sharing of electronic health record data to assess childhood obesity. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2013-01-01 |
description |
To evaluate the validity of multi-institutional electronic health record (EHR) data sharing for surveillance and study of childhood obesity.We conducted a non-concurrent cohort study of 528,340 children with outpatient visits to six pediatric academic medical centers during 2007-08, with sufficient data in the EHR for body mass index (BMI) assessment. EHR data were compared with data from the 2007-08 National Health and Nutrition Examination Survey (NHANES).Among children 2-17 years, BMI was evaluable for 1,398,655 visits (56%). The EHR dataset contained over 6,000 BMI measurements per month of age up to 16 years, yielding precise estimates of BMI. In the EHR dataset, 18% of children were obese versus 18% in NHANES, while 35% were obese or overweight versus 34% in NHANES. BMI for an individual was highly reliable over time (intraclass correlation coefficient 0.90 for obese children and 0.97 for all children). Only 14% of visits with measured obesity (BMI ≥95%) had a diagnosis of obesity recorded, and only 20% of children with measured obesity had the diagnosis documented during the study period. Obese children had higher primary care (4.8 versus 4.0 visits, p<0.001) and specialty care (3.7 versus 2.7 visits, p<0.001) utilization than non-obese counterparts, and higher prevalence of diverse co-morbidities. The cohort size in the EHR dataset permitted detection of associations with rare diagnoses. Data sharing did not require investment of extensive institutional resources, yet yielded high data quality.Multi-institutional EHR data sharing is a promising, feasible, and valid approach for population health surveillance. It provides a valuable complement to more resource-intensive national surveys, particularly for iterative surveillance and quality improvement. Low rates of obesity diagnosis present a significant obstacle to surveillance and quality improvement for care of children with obesity. |
url |
http://europepmc.org/articles/PMC3688837?pdf=render |
work_keys_str_mv |
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