학술논문

Passive Digital Signature for Early Identification of Alzheimer's Disease and Related Dementia
Document Type
Report
Source
Journal of the American Geriatrics Society. March 2020, Vol. 68 Issue 3, p511, 8 p.
Subject
Analysis
Risk factors
Data security issue
Data security
Alzheimer's disease
Medical records
Medical records -- Analysis
Alzheimer's disease -- Risk factors
Data security -- Analysis
Language
English
ISSN
0002-8614
Abstract
Keywords: Alzheimer's disease; dementia; risk factors OBJECTIVES Developing scalable strategies for the early identification of Alzheimer's disease and related dementia (ADRD) is important. We aimed to develop a passive digital signature for early identification of ADRD using electronic medical record (EMR) data. DESIGN A case-control study. SETTING The Indiana Network for Patient Care (INPC), a regional health information exchange in Indiana. PARTICIPANTS Patients identified with ADRD and matched controls. MEASUREMENTS We used data from the INPC that includes structured and unstructured (visit notes, progress notes, medication notes) EMR data. Cases and controls were matched on age, race, and sex. The derivation sample consisted of 10 504 cases and 39 510 controls; the validation sample included 4500 cases and 16 952 controls. We constructed models to identify early 1- to 10-year, 3- to 10-year, and 5- to 10-year ADRD signatures. The analyses included 14 diagnostic risk variables and 10 drug classes in addition to new variables produced from unstructured data (eg, disorientation, confusion, wandering, apraxia, etc). The area under the receiver operating characteristics (AUROC) curve was used to determine the best models. RESULTS The AUROC curves for the validation samples for the 1- to 10-year, 3- to 10-year, and 5- to 10-year models that used only structured data were .689, .649, and .633, respectively. For the same samples and years, models that used both structured and unstructured data produced AUROC curves of .798, .748, and .704, respectively. Using a cutoff to maximize sensitivity and specificity, the 1- to 10-year, 3- to 10-year, and 5- to 10-year models had sensitivity that ranged from 51% to 62% and specificity that ranged from 80% to 89%. CONCLUSION EMR-based data provide a targeted and scalable process for early identification of risk of ADRD as an alternative to traditional population screening. J Am Geriatr Soc 68:511-518, 2020 CAPTION(S): Appendix S1: Supplementary material. Byline: Malaz Boustani, Anthony J. Perkins, Rezaul Karim Khandker, Stephen Duong, Paul R. Dexter, Richard Lipton, Christopher M. Black, Vasu Chandrasekaran, Craig A. Solid, Patrick Monahan