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Transcript of Using Clinical Decision Support Systems to Measure and Improve Quality of Care for Special...
Using Clinical Decision Support Systems to Measure and Improve Quality of Care for
Special Populations:The Elderly in the Long-term Care Setting
Jerry H. Gurwitz, M.D.Executive Director
Meyers Primary Care InstituteChief, Division of Geriatric Medicine
University of Massachusetts Medical SchoolWorcester, Massachusetts
It is much easier to write upon a disease than upon a remedy. The former is in the hands of nature and a faithful observer
with an eye of tolerable judgement cannot fail to delineate a likeness. The latter will ever be subject to the whim,
the inaccuracies and the blunder of mankind.
William Withering (1741-1799)
Case Study
E.G. is an 85 year-old female nursing home resident with a history of atrial fibrillation, stroke, dementia, and hypertension, who is receiving chronic therapy with warfarin. Her primary care provider has been dosing her warfarin to maintain her at an INR of 2.0.
Case Study
One evening, a covering physician is called with a report that the patient has developed a fever. The patient is initiated on empiric antibiotic therapy with cephalexin (500 mg po TID for 7 days) to treat a presumed urinary tract infection.
Case Study
The next morning the primary care physician is called with the previous day’s INR, 1.75. He increases the daily warfarin dose from 4 mg to 5 mg per day. He is not notified of the cephalexin ordered the previous evening by the covering physician.
Case Study
One week later, the INR comes back at 13.8 and a covering physician is notified. That evening’s warfarin dose is held. The INR the following day is 16.1. The warfarin continues to be held. No vitamin K is administered.
Case Study
The very next day the patient develops congestion and shortness of breath. A chest x-ray reveals an infiltrate and the covering physician orders Augmentin 875 mg po q12 hours for 10 days. The next day the patient passes tarry stool and omeprazole is initiated.
Case Study The following morning the patient’s
hematocrit is 25 and her INR is 11.3. The primary care physician is notified, and vitamin K 10 mg sc is administered for 3 days with a decrease in the INR to 0.9. The physician writes that warfarin will not be reinitiated because anticoagulation has been difficult to control for unclear reasons.
The Prescribing Casade
B.F. is an 80 year-old female nursing home resident with a history of Parkinson’s Disease treated with long-term Sinemet therapy (25-100 TID). She has suffered occasional hallucinations attributed to the Sinemet therapy, which have recently increased in frequency. The hallucinations sometimes involve large animals and can be quite terrifying.
The Prescribing Cascade
The resident is initiated on olanzapine 2.5 mg at bedtime. Due to agitation and continued hallucinations, the olanzapine dose is increased to 5 mg and lorazepam 0.5 mg po q4 hours prn is added to the medication regimen. The hallucinations continue and the evening dose of olanzapine is increased to 7.5 mg.
The Prescribing Cascade
The resident is noted by the nursing staff to be shaky and stiff, but no change is made in the olanzapine dose. She becomes increasingly lethargic. She is described as rigid and stooped over with ambulation and begins to have more difficulty with activities of daily living including bathing, dressing, toileting, and tranferring. She begins to require a wheelchair.
Measuring the quality of prescribing to the elderly?
• The Beers list
• List of 33 drugs– Drugs that should always be avoided
– Drugs that are rarely appropriate
– Drugs with some indications, but that are often misused
11 drugs that should always be avoided in the elderly:
• Barbiturates
• Chlorpropamide
• Flurazepam
• Meperidine
• Meprobamate
• Pentazocine
• Belladonna alkaloids
• Dicyclomine
• Hyoscyamine
• Propantheline
• Trimethobenzamide
Zhan et al. JAMA 2001
Use of “Always Avoid” Drugs
2.6% 2.9%5.1%
0
2
4
6
8
10
1996 U.S. 1996Ontario
2000-2001US HMOs
Per
cen
t
The Incidence and Preventability of Adverse Drug Events in Two
Large Academic Long-term Care Facilities
Funded by AHRQ
Methods
• Study conducted in two large academic long-term care facilities
• Total of 1229 beds
• Time period: 2000-2001
Methods
Drug-related incidents were detected using multiple methods:
• Review of nursing home records in monthly segments
• Computer-generated signals
Computer Generated Signals
• Abnormal laboratory results• Elevated INRs, high potassium levels
• Medications (antidotes)• Vitamin K, sodium polystyrene sulfonate
• Abnormal drug levels• Phenytoin• Digoxin
Methods
• Chart reviews were performed by trained clinical pharmacist investigators
• Incidents were classified by two independent physician reviewers:
– adverse drug event
– severity
– preventability
Results - Event Rates
• Adverse drug events
– Events: 815
– Rate: 9.8 per 100 resident-months
• Preventable adverse drug events
– Events: 338– Rate: 4.1 per 100 resident-months
Adverse Drug Events by Severity(n=815)
Category Number Percentage
Fatal 4 <1%
Life-threatening
33 4%
Serious 188 23%
Less serious 590 72%
Preventability of Adverse Drug Events
Of fatal, life-threatening & serious events
Of less serious events
Preventable61% Preventable
34%
Error Stage for Preventable ADEs(n=338 preventable ADEs)
Category Number Percentage
Ordering 198 59%
Dispensing 16 5%
Administration 43 13%
Monitoring 271 80%
Drug Categories
Warfarin 12%
Atypical antipsych 12%
Loop diuretics 10%
Benzos (intermediate) 9%
Opioids 8%
ACE inhibitors 8%
Other antidepressants 7%
Antiplatelets 7%
Insulin 5%
Laxatives 5%
Preventable events
Event Categories - Preventable
Neuropsychiatric 29%
Hemorrhagic 16%
Gastrointestinal 16%
Renal/electrolytes 12%
Fall with injury 5%
Cardiovascular 4%
Fall without injury 3%
EPS 2%
Syncope/dizziness 2%
Guiding Principles for Quality Measures
• Compelling importance
• Clear relevance to improving care
• Parsimony
• Reasonable administrative burden
Guiding Principles for Development of Quality Measures
Is it possible to arrive at a set of measures that are of compelling importance and which have clear relevance to care, and that are also scientifically valid, usable, and feasible?
Translating Quality Measures into Clinical Decision Support
Co
mp
lexi
ty
Validity
DrugData
Drugs & Dx’s
Drugs, Dx’s& Labs
Drugs, Dx’s, Labs& Clinical Info
The Big Question
Can the types of errors and events that I shared with you be captured with a set of quality measures that can guide the development of computerized clinical decision support systems in the long-term care setting?
Quality Indicators for Appropriate Medication Use in Older Adults
Assessing Care of Vulnerable Elders (ACOVE)
• Warfarin: INR should be monitored using standardized protocols
• Loop diuretics: Check electrolytes within 1 week and at least annually
• Avoid chlorpropamide• Avoid drugs with strong anticholinergic
properties• Avoid barbiturates• Avoid meperidine• ACE inhibitors: Monitor renal function and
potassium in patients on ACE inhibitors
Quality Indicators for Appropriate Medication Use in Older Adults
Assessing Care of Vulnerable Elders (ACOVE)
• Document the indication for a new drug therapy
• Educate patients on the benefits and risks
• Maintain a current medication list• Document response to therapy• Periodically review ongoing need for
therapy
Case-Control Study Design
Drug Exposure:Yes or No?
Drug Exposure:Yes or No?
BEGIN
Cases(ADE)
Controls
CLASSIFY/COMPARE
Case-Control Study Design
Metoclopramide:Yes or No?
Metoclopramide:Yes or No?
BEGIN
L-dopaRx
Controls
CLASSIFY/COMPARE
Results
Metoclopramide users were over three times more likely to begin
use of L-dopa therapy compared with non-users
(OR=3.09; 95% CI 2.25 to 4.26).
Likelihood of L-dopa Treatment by Metoclopramide Dose
1.2
3.3
5.3
0
1
2
3
4
5
6
>0-10 >10-20 >20
DAILY DOSE (mg/day)
OD
DS
RA
TIO
Conclusion
Metoclopramide confers an increased risk for the initiation of treatment generally reserved
for the managment of idiopathic Parkinson’s disease.