How well can electronic health records from primary care identify Alzheimer’s disease cases?
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Background: Electronic health records (EHR) from primary care are emerging in
Alzheimer’s disease (AD) research, but their accuracy is a concern. We aimed to
validate AD diagnoses from primary care using additional information provided by general
practitioners (GPs), and a register of dementias.
Patients and methods: This retrospective observational study obtained data from the
System for the Development of Research in Primary Care (SIDIAP). Three algorithms
combined International Statistical Classification of Diseases (ICD-10) and Anatomical
Therapeutic Chemical codes to identify AD cases in SIDIAP. GPs evaluated dementia
diagnoses by means of an online survey. We linked data from the Register of Dementias
of Girona and from SIDIAP. We estimated the positive predictive value (PPV) and sensitivity
and provided results stratified by age, sex and severity.
Results: Using survey data from the GPs, PPV of AD diagnosis was 89.8% (95% CI:
84.7–94.9). Using the dataset linkage, PPV was 74.8 (95% CI: 73.1–76.4) for algorithm A1
(AD diagnoses), and 72.3 (95% CI: 70.7–73.9) for algorithm A3 (diagnosed or treated
patients without previous conditions); sensitivity was 71.4 (95% CI: 69.6–73.0) and 83.3
(95% CI: 81.8–84.6) for algorithms A1 (AD diagnoses) and A3, respectively. Stratified
results did not differ by age, but PPV and sensitivity estimates decreased amongst men and
severe patients, respectively.
Conclusions: PPV estimates differed depending on the gold standard. The development of
algorithms integrating diagnoses and treatment of dementia improved the AD case ascertainment. PPV and sensitivity estimates were high and indicated that AD codes recorded in
a large primary care database were sufficiently accurate for research purposes