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12:00 AM - TEDMED 2017
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TEDMED 2017
2017-11-01 - 2017-11-03    
All Day
A healthy society is everyone’s business. That’s why TEDMED speakers are thought leaders and accomplished individuals from every sector of society, both inside and outside [...]
AMIA 2017 Annual Symposium
2017-11-04 - 2017-11-08    
All Day
Call for Participation We invite you to contribute your best work for presentation at the AMIA Annual Symposium – the foremost symposium for the science [...]
Beverly Hills Health IT Summit
2017-11-09 - 2017-11-10    
All Day
About Health IT Summits U.S. healthcare is at an inflection point right now, as policy mandates and internal healthcare system reform begin to take hold, [...]
Forbes Healthcare Summit
2017-11-29 - 2017-11-30    
All Day
ForbesLive leverages unique access to the world’s most influential leaders, policy-makers, entrepreneurs, and artists—uniting these global forces to harness their collective knowledge, address today’s critical [...]
Events on 2017-11-01
TEDMED 2017
1 Nov 17
La Quinta
Events on 2017-11-04
AMIA 2017 Annual Symposium
4 Nov 17
WASHINGTON
Events on 2017-11-09
Beverly Hills Health IT Summit
9 Nov 17
Los Angeles
Events on 2017-11-29
Forbes Healthcare Summit
29 Nov 17
New York
Articles

Jul 09 : EHRs enable researchers to predict patient depression

predict patient depression
Researchers from Stanford University have demonstrated the usefulness of EHR data in predicting the diagnosis of depression up to a year in advance, according to research published in the Journal of the American Medical Informatics Association (JAMIA).
“Our results suggest the use of EHR data can improve the timely diagnosis of depression, which is associated with better prognoses when combined with prompt initiation of treatment,” the authors maintain. “Ideally, we are searching not only for models that can diagnose depression early to improve prognosis, but also for moderators that predict outcomes and enable personalized treatment. The latter requires significant work.”
The research team of Huang et al. culled data from the Epic Systems of Palo Alto Medical Foundation (PAMF) and Group Health Research Institute (GHRI) — 35,000 from the former and 5,651 from the latter. The information pulled from the EHRs comprises:
• demographic data;
• ICD-9, RxNorm, and CPT codes;
• progress notes;
• pathology, radiology, and transcription reports.
Researchers used three criteria to identify patients with depression: an ICD-9 code, the presence of a depression disorder term in the clinical text, and the presence of an anti-depressive drug ingredient term in the clinical text. They then compared cohorts of depressed and non-depressed patients in regression models to predict a diagnosis of depression, predict a response to treatment, and assess the severity of depression.
Here is what Huang et al. found:
The model for predicting diagnosis uses ICD-9 codes, disease and drug ingredient terms extracted from clinical notes, and patient demographics as features to achieve an AUC [area under the receiver operating characteristic] of 0.70–0.80 for predicting a diagnosis of depression in patients, up to 12 months before the first diagnosis of depression. Even up to a year before their diagnosis of depression, patients show patterns in their medical history that our model can detect …  In addition, our model for identifying patients with severe baseline depression achieved an AUC of 0.718 when compared against patients with minimal and mild depression.
Based on their research, the authors argue that the adequate treatment of depression relies on three factors: accurately identifying patients both with and without depression, considering the severity of the depression, and using sufficiently large samples of patient data. “These results suggest the use of EHR data can improve the timely diagnosis of depression, a disorder that primary care physicians often miss,” they conclude.
With the economic cost of depression in the United States reaching $44 billion annually as a result of direct expenses and loss of productivity, the findings of Huang et al. could prove encouraging in leveraging EHR data to treat costly chronic diseases both of the body and mind.