Post on 29-Mar-2015
Medical Errors:Causes and Prevention
Roger L. Bertholf, Ph.D.Associate Professor of Pathology
University of Florida Health Science Center/Jacksonville
IOM: To Err Is Human: Building a Safer Health System (2000)
• Frequency
• Cost
• Outcomes
• Types
• Causes
• Recommendations
Adverse Event vs. Error
• An adverse event is an injury caused by medical management rather than the underlying condition of the patient. An adverse event attributable to error is a "preventable adverse event." Negligent adverse events represent a subset of preventable adverse events that satisfy legal criteria used in determining negligence (i.e., whether the care provided failed to meet the standard of care reasonably expected of an average physician qualified to take care of the patient in question).*
• An error is defined as the failure of a planned action to be completed as intended (i.e., error of execution) or the use of a wrong plan to achieve an aim (i.e., error of planning).
*About half of preventable AEs are considered negligent
Examples of Medical Errors
• Diagnostic error (inappropriate therapy)
• Equipment failure
• Infection (nosocomial, post-operative)
• Transfusion-related injury
• Misinterpretation of medical orders
• System failures that compromise diagnostic or treatment processes.
Frequency of Medical Errors
Study AEs Errors Fatal Est. Deaths
NY (1984) 2.9% 58% 13.6% 98,000
CO/UT (1992) 3.7% 53% 6.6% 44,000†
†MVA = 43,000; Breast CA = 42,000; AIDS = 16,000. 8th most frequent cause overall.
How reliable is this estimate?
• Includes only AEs producing a specified level or harm
• Two reviewers had to agree on whether an AE was preventable or negligent
• Included only AEs documented in the patient record*
*Some studies, using other sources of information about adverse events, produced higher estimates.
Cost
• Adverse events: $37.6 – 50 billion*• Preventable adverse events: $17 – 29
billion• Half of cost is for health care• Represent 4% (AE)† and 2% (errors) of
all health care costs
*lost income, lost household production, disability, health care costs
†Exceeds total cost of treating HIV and AIDS
Causes*
Medication error 19%†
Wound infection 14%
Technical complications 13%
*Leape et al. (1991) The nature of adverse events in hospitalized patients(1,133 AEs studied in 30,195 admissions)
†Overall frequency (inpatients) is 3 per 1,000 medication orders; 2 per 1,000 considered “significant” errors
AHA List of Medication Errors
• Incomplete patient information• Unavailable drug information (warnings)• Miscommunication of medication order• Confusion between drugs with similar
names• Lack of appropriate drug labeling• Environmental conditions that distract
health care providers
Most Common Medication Errors
Failure to adjust dosage in response to a change in hepatic/renal function
13.9%
History of allergy to the same or related medication
12.1%
Wrong drug name, dosage form, or abbreviation on order
11.4%
Incorrect dosage calculation 11.1%
Atypical or unusual critical dosage consideration
10.8%
A Comparison of Risks
Risk (per flight) of dying in a commercial airline accident
1 in 8 million*
Risk (per hospital admission) of dying from a medical error
>1 in 1,000
*1 in 2 million from 1967-1976
Six Sigma Quality Control
• Quality Management program designed by Mikel Harry and Richard Schroeder in 2000
• Strives to make QM a quantitative science
• Sets performance standards and goals for a production process
Six Sigma Paradigm: DMAIC
Six Sigma Process PerformanceP
rob
abil
ity
0 1 2 3-1-2-3
SD ()
.67
4 5 6-4-5-6
.95
+ Tolerance- Tolerance Target
.999997
Six Sigma Performance
• Goal is to achieve < 1 DPM
• Not all processes can achieve the 6 level of performance
• “Deming’s Principle” is that fewer defects leads to increased productivity, efficiency, and lower cost
Healthcare’s Six Sigma Performance
Process % Errors Sigma
Preventable adverse events 3.0 2.5
Lab order accuracy 1.8 3.6
Reporting errors 0.048 4.8
False negative PAP 2.4 3.45
Unacceptable specimen 0.3 4.25
Duplicate test orders 1.52 3.65
What Causes Accidents?
Technical failure20%
Human error80%
Sidney Dekker
“What is striking about many accidents is that people were doing exactly the sorts of things they would usually be doing—the things that usually lead to success and safety. . .Accidents are seldom preceded by bizarre behavior.”
From The Field Guide to Human Error Investigations (2002)
A Primer on Accident Investigation
• Human error as a cause
• Human error as a symptom
Human Error
• Bad Apple Theory– Complex systems are inherently safe– Human intervention subverts the inherent
safety of complex systems
• Reaction to failure– Bad outcome = bad decision– Retrospective, proximal, counterfactual,
and judgmental
The Bad Apple Theory
• The illusion of success– Bad procedures often produce good results– Success breeds confidence
• Failure is an aberration– “The system must be safe”
• The economical answer– It is easier to change human behavior than
it is to change systems
Assigning Blame
• Retrospective
Retrospective Analysis
Assigning Blame
• Retrospective
• Proximal
Proximity
• It is intuitive to focus on the location where the failure occurred
• “Sharp end” vs. “Blunt end”– The “sharp end” is the point at which the
failure occurs– The “blunt end” is the set of systems and
organizational structure that supports the activities at the “sharp end”
Retrospective Analysis
Sharp End
Blunt End
InstitutionSystemsProceduresOrganization
Assigning Blame
• Retrospective
• Proximal
• Counterfactual
What Might Have Been. . .
• In retrospect, it is always easy to see where different actions would have averted a bad outcome
• In retrospect, the outcome of any potential action is already known
• “Counterfactuals” pose alternate scenarios, which are rarely useful in determining the true cause
Assigning Blame
• Retrospective
• Proximal
• Counterfactual
• Judgmental
The Omniscient Perspective
• As an investigator, you always know more than the participants did
• It is very difficult, if not impossible to judge fairly the reactions of those who had less information than you
• Investigators define “failure” based on outcome
Lessons for Investigators
• There is no “primary” cause– Every action affects another
• There is no single cause– Errors in complex systems are nearly
always multi-focal
• A definition of “human error” is elusive– Definition of “error”– Humans operate within complex systems
Failure Mode and Effects Analysis
• Everything will eventually fail
• Humans frequently make errors
• The cause of a failure is often beyond the control of an operator
10 Steps for FMEA
1. Review the process2. Brainstorm potential failure modes3. List potential effects of each failure mode4. Assign a severity rating5. Assign an occurrence rating6. Assign a detection rating7. Calculate the risk priority number for each effect8. Prioritize these failure modes based on the RPN and severity9. Take action to reduce or eliminate the high-risk failure modes10.Recalculate the RPN
Ranking the Failure Modes
• Calculate the RPN– Rate Severity, Occurrence, and Detection
on a scale of 1 – 10– RPN = S x O x D (maximum 1000)
• Prioritize Failure modes– Not strictly based on RPN– Severity of 9 or 10 should get priority
• Goal is to reduce RPN
Case Exercise #1
A 91-year-old female was transferred to a hospital-based skilled nursing unit from the acute care hospital for continued wound care and intravenous (IV) antibiotics for methicillin-resistant Staphylococcus aureus (MRSA) osteomyelitis of the heel. She was on IV vancomycin and began to have frequent, large stools.
Case Exercise #1
The attending physician ordered a test for Clostridium difficile on Friday, and was then off for the weekend. That night, the test result came back positive. The lab called infection control, who in turn notified the float nurse caring for the patient. The nurse did not notify the physician on call or the regular nursing staff. Isolation signs were posted on the patient's door and chart, and the result was noted in the patient's nursing record. Each nurse who subsequently cared for this patient assumed that the physician had been notified, in large part because the patient was receiving vancomycin. However, it was IV vancomycin (for the MRSA osteomyelitis), not oral vancomycin, which is required to treat C. difficile.
Case Exercise #1
On Monday, the physician who originally ordered the C. difficile test returned to assess the patient and found the isolation signs on her door. He asked why he was never notified and why the patient was not being treated. The nurse on duty at that time told him that the patient was on IV vancomycin. The float nurse, who had received the original notification from infection control, stated that she had assumed the physician would check the results of the test he had ordered. Due to the lack of follow-up, the patient went three days without treatment for C. difficile, and continued to have more than 10 loose stools daily. Given her advanced age, this degree of gastrointestinal loss undoubtedly played a role in her decline in functional status and extended hospital stay.
Case Exercise #1
• What are the systems/processes involved in this incident?
• What were the failure points?
Analysis
• MD failed to check the result of an ordered test
• Float RN wrongly assumed that MD had been notified of the result
• RN incorrectly assumed that IV vancomycin was adequate therapy
Failure Points
• Laboratory system for reporting critical results– Is a positive C. difficile culture considered a
panic result?– To whom are panic values reported?
• RN/MD communication– Does the institution foster an environment
where RNs can comfortably question MD orders?
Lisa Belkin
“. . . it is virtually impossible for one mistake to kill a patient in the highly mechanized and backstopped world of a modern hospital. A cascade of unthinkable things must happen, meaning catastrophic errors are rarely a failure of a single person, and almost always a failure of a system.”
From How Can We Save the Next Victim? (NY Times Magazine, June 15, 1997)
Case Exercise #2
An 81-year-old female maintained on warfarin for a history of chronic atrial fibrillation and mitral valve replacement developed asymptomatic runs of ventricular tachycardia while hospitalized. The unit nurse contacted the physician, who was engaged in a sterile procedure in the cardiac catheterization laboratory (cath lab) and gave a verbal order, which was relayed to the unit nurse via the procedure area nurse. Someone in the verbal order process said "40 of K." The unit nurse (whose past clinical experience was in neonatal intensive care) wrote the order as "Give 40 mg Vit K IV now."
Case Exercise #2The hospital pharmacist contacted the physician concerning the high dose and the route and discovered that the intended order was "40 mEq of KCl po." The pharmacist wrote the clarification order. However, the unit nurse had already obtained vitamin K on override from the Pyxis MedStation® (an automated medication dispensing system) and administered the dose intravenoustly (IV). The nurse attempted to contact the physician but was told he was busy with procedures. A routine order to increase warfarin from 2.5 mg to 5 mg (based on an earlier INR) was written later in the day and interpreted by the evening shift nurse as the physician’s response to the medication event. The physician was not actually informed that the vitamin K had been administered until the next day. Heparin was initiated and warfarin was re-titrated to a therapeutic level. The patient’s INR was sub-herapeutic for 3 days, but no untoward clinical consequences occurred.
Case Exercise #2
• What are the systems/processes involved in this incident?
• What were the failure points?
Analysis
• Verbal orders– Third party “messengers”– Use of abbreviations
• Failure to question unusual orders
• Lack of control over medication availability
Failure Points
• Hospital policy for medication orders– “Read Back” requirement
• Ability to circumvent pharmacist review
J.C.R. Licklider (1915-1990)
“It seems likely that the contributions of human operators and [computers] will blend together so completely in many operations that it will be difficult to separate them neatly in analysis.”
From Man-Computer Symbiosis (1960)
Anatomy of a Laboratory Error
Phase I: A failed calibration
• Recalibration of the acetaminophen assay was prompted by a QC failure
• Recalibration was followed by acceptable QC results
Phase II: QC failures
• Subsequent QC measurements produced an error code indicating the result was above the linear limit of the method
• QC failures went unnoticed, since the LIS did not display the error code
• Several patient specimens were reported incorrectly, resulting in inappropriate treatment
Phase III: Discovery
• The ED staff contacted the laboratory to question the high acetaminophen result on a patient who denied recent ingestion of the drug
• Investigation revealed the QC failures, and the assay was successfully recalibrated
Phase IV: InvestigationPrincipal Questions
• Why was an acceptable QC result obtained immediately after a failed calibration?
• Why didn’t the technologists notice subsequent QC failures?
• Should the clinicians have been more suspicious of unusually high results?
The Process
Failure Points in The Process
Unrecognized calibration failure
• Roche modular
• Throughput/timing algorithm
Unnoticed QC failures
• Interface through Digital Innovations box
• Error codes are rare in QC results
• Supervisory review does not occur regularly on weekends
Lack of clinical suspicion
• History is often unreliable in overdose cases
• An antidote for acetaminophen exists
• Symptoms of acetaminophen toxicity may not appear until after the window of therapeutic opportunity has passed
Conclusions
• An unexpected error occurred in the calibration algorithm encoded in the instrument software
• The failure of information to cross the instrument/LIS interface masked the erroneous control results
• Suspect results were not immediately apparent to clinicians
Lessons
• Complex technologies always have unexpected failure modes
• Interfaces between systems and operators are opportunities for distortion or loss of important information
• The fallacy of the “un-rocked boat”
Richard I. Cook
“Recognizing hazard and successfully manipulating system operations to remain inside the tolerable performance boundaries requires intimate contact with failure.”
From How Complex Systems Fail (2002)
How Complex Systems Fail
• Complex systems are intrinsically hazardous systems
• Complex systems are heavily and successfully defended against failure
• Catastrophe requires multiple failures—single point failures are not enough
• Complex systems contain changing mixtures of failures latent within them
How Complex Systems Fail
• Catastrophe is always just around the corner
• Post-accident attribution to a “root cause” is fundamentally wrong
• Human operators have dual roles: as producers and as defenders against failure
• Human practitioners are the adaptable element of complex systems
How Complex Systems Fail
• Change introduces new forms of failure
• Safety is a characteristic of systems and not of their components
• Failure-free operations require experience with failure
IOM Recommendations
• Establish national focus
• Identify and learn from medical errors through mandatory reporting
• Raise standards and expectations
• Implement safe practices
AHRQ Safety Recommendations for Patients
• Ask questions if you have doubts or concerns • Keep and bring a list of ALL the medicines
you take • Get the results of any test of procedure • Talk to your doctor about which hospital is
best for your health needs • Make sure you understand what will happen if
you need surgery