Examine relationship between illness severity and quantity of data in EMR |
Data sufficiency |
Setting minimal data requirements for inclusion in a study cohort created bias toward selection of sicker patients |
EMR records from 10,000 patients who received anesthetic services |
Rusanov et al. (2014) |
Investigate patterns in lab tests for potential impact on use in modeling EMR data |
Context for interpreting lab tests results |
Frequency of lab tests confounded by scheduled visits, such as every 3 months |
EMR records from 14,141 patients |
Pivovarov et al. (2014) |
Repeat prior study of pneumonia severity index to demonstrate bias in EMR retrospective research |
(a) Diagnostic consistency |
Adding constraints to improve consistency of diagnostic cohort significantly changed the sample (decreased the size) |
EMR records from 46,642 patients with indication of pneumonia |
Hripcsak et al. (2011) |
(b) Small number of cases can have large impact on outcome |
Very sick patients who die quickly in ER will not have symptoms entered into EMR, impacting mortality rates |
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Investigate concordance of diagnosis of PTSD in EMR with diagnosis determined by SCID interview |
Diagnostic accuracy |
Over 25 % of EMR diagnoses in veterans were incorrect for PTSD. Those with least and most severe symptoms most likely to be accurate |
Sample of 1649 veterans |
Holowka et al. (2014) |
Evaluate diagnosis of schizophrenia in EMR compared with chart review by psychiatrist |
Diagnostic accuracy |
Prevalence of schizophrenia was 14 % by coding, dropping to 1.8 % with manual review. Coding most accurate (74 %) for those with four or more coding labels |
819 veterans in a pain clinic |
Jasser et al. (2007) |
Review whether written informed consent introduces selection bias in prospective observational studies using data from EMR |
Written informed consent |
Significant differences between participants and non-participants with inconsistent direction of effect |
Review of 1650 citations. 17 studies included with 69 % of 161,604 eligible patients giving consent |
Kho et al. (2009) |
Analyze if underlying health of seniors impacts risk reduction for death and hospitalization associated with influenza vaccine |
Selective prescribing of preventative measures |
Greatest reduction in risk occurs before influenza season, indicating preferential receipt of vaccine by healthy seniors |
72,527 people ≥65 years not residing in nursing homes, using plan administrative data |
Jackson et al. (2006) |
Investigate surprising protective effects attributed to preventative medications by examining association between statin use and motor vehicle and workplace accidents |
Healthy-adherer bias (adherent patients more health seeking) |
Statin users significantly less likely to be involved in motor vehicle and workplace accidents. Example of unmeasurable confounding in dataset |
141,086 patients taking statins for prevention |
Dormuth et al. (2009) |
Passive case-finding for Alzheimer’s disease and dementia using medical records |
Research center population not generalizable |
Research center population younger, more severe disease, more educated than general population |
5233 patients over age 70 |
Knopman et al. (2011) |
Explore selection bias when comparing outcomes from cancer therapy using observational data in SEER database |
Severity of illness, self-rated health, comorbidities |
Improbable results. Adjustment techniques such as propensity scores insufficient. Some outcome measures caused by treatments |
53,952 patients with prostate cancer in three therapy groups |
Giordano et al. (2008) |