Events Calendar

Mon
Tue
Wed
Thu
Fri
Sat
Sun
M
T
W
T
F
S
S
30
31
1
12:00 AM - TEDMED 2017
2
3
5
6
7
8
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
30
1
2
3
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

Dec 10: Study Identifies & Tracks Multiple Sclerosis With EHR Data, Algorithms

regenstrief institute and indiana university

Using natural language processing technology in electronic health record systems has helped identify patients with multiple sclerosis and collect information on disease traits, according to a study by researchers at Vanderbilt University Medical Center, Health Data Management reports.

Details of the Study

The study — published in the Journal of the American Medical Informatics Association — identified 5,789 patients with MS by using information from their EHRs to create an algorithm. The algorithm included data from:

  • ICD-9 codes;
  • Medications; and
  • Text keywords.

Researchers also collected data on the clinical course of disease progression.

According to the study’s authors, “This is one of the first studies to focus on specific traits of a disease by text mining of the [EHR].”

The study found that for all clinical traits examined:

  • Precision was 87%; and
  • Specificity was greater than 80% (Goedert, Health Data Management, 12/7).

Reaction

The researchers wrote , “This dataset provides a rich resource for better understanding MS and also shows that extraction of detailed disease states and markers of prognosis in patients with chronic disease is possible and may yield a powerful tool in chronic disease research.”

They added, “This information is extractable from clinic notes by simple algorithms, with high specificity, precision, and recall”

source