oku 9 chapter 15: orthopaedic research brian e. walczak

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OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

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Page 1: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

OKU 9Chapter 15: ORTHOPAEDIC RESEARCH

Brian E. Walczak

Page 2: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 3: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 4: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 5: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 6: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 7: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

KEY COMPONENTS FOR THE DEVELOPMENT OF THE CLINICIAN-SCIENTIST

• Significant scientific training – 1-2 years or more….

• Protected Time– Minimum of 30% of the time

• Adequate funding – Sustained for a minimum of 5 years

Page 8: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

INFERENCE

• …. The act of deriving logical conclusions from the existing knowledge regarding a condition

• Well designed study is to – Provide insight into the “TRUTH”

Page 9: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

BIAS

• Nonrandom, systematic error in the design or conduct of a study that may result in mistaken inference about association or causation

• Types– Recall– Publication– Measurement– Selection

Page 10: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CONFOUNDING

• Occurs when a variable has an association with both the independent and dependent variable

• E.g.– Age– Gender– Socioeconomic status– Medial comorbidities

Page 11: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CHANCE

• The probability that two unrelated events will appear associated by random occurrence rather than through a causal assoication

• “Good” study need to control for chance• Type I (alpha) error

– Truth is no association (but you think there is)• Type II (beta) error

– Is an association (but you fail to prove it)• Alpha = 0.05 (commonly accepted level) – could be anything

– There is less than a 5% risk of chalking the association up to “chance”

Page 12: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 13: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 14: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

Power

• Probability equal to 1-beta – Generally accepted as 0.8– The more stringent the beta error, the narrower

the confidence interval will be and the more certain one may be of the results in representing the truth

Page 15: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

STUDY DESIGN AND LEVEL OF EVIDENCE

• Study– Observational

• No allocation of treatment groups • Prospective or retrospective• Descriptive• Analytic• Case reports, case series, cross-sectional study

– Experimental (not suited for determining risk factors)• Examines the efficacy of distinct treatment options• GOLD STANDARD:

– DOUBLE-BLIND PROSPECTIVE RANDOMIZED CLINICAL TRIAL

Page 16: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CASE SERIES

• Descriptive observational study• Potential complications or successes of a

cohort (group)• LEVEL IV evidence

Page 17: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CROSS-SECTIONAL SURVEY

• Observational• Descriptive • “Snapshot”

Page 18: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CASE CONTROL

• Observational • Patients with a given outcome are compared

with patient without the outcome of interest• RARE or UNCOMMON DZS• Reported as “ODDS RATIO”• Retrospective• LEVEL III

Page 19: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

COHORT

• Observational • Relative Risk• Prospective or retro• LEVEL II or III (prospective or retrospective)

Page 20: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

CLINICAL TRIALS

• Experimental• Able to minimize “chance”• LEVEL I or II

Page 21: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

LITERATURE REVIEW

• SUMMARY OF EXPERT OPINION– LEVEL V EVIDENCE

• Meta-analysis– Well-organized systematic quantitative analysis of

randomized clinical trials from which one may draw valid statistical inferences

– LEVEL I EVIDENCE

Page 22: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

META-ANALYSIS

• Quantitative analysis• Similar study designs• Must test for homogeneity • Publication bias may be assessed using a funnel plot

– Parametric (Egger’s linear regression model)– Non-parametric (Begg’s test) methods

• Should try to control for publication bias by including both PUBLISHED AND NONPUBLISHED STUDIES

• Summary estimate = Forest plot

Page 23: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 24: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

DATA• Continuous

– Numerical info• Any given value within a range of values• Age• BMI

– Non-continuous variable is called “discrete”• Ordinal

– Ordered variable (this is why it is difference than a categorical)• Fracture Classifications• Socio-economic status

• Categorical (nominal)– Qualitative variables without ordering

• Gender• Hair color

Page 25: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

DATA DISTRIBUTION

• Continuous data– Parametric

• Explain the distribution by a SINGLE math equation• Gaussian distribution

– 69% of the values will fall within 1 SD of the mean– 95% of values with fall within 2 SD of the mean– 99% of the values will fall within 3 SD of the mean

• Mean, median, mode are all equal]– Mean = average– Median = “middle” value (50th %)– Mode = the “most”

– Nonparametric

Page 26: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

NONPARAMETRIC

• Median, mode, mean are not the same• Right skew (positive )= Mean > median >

Mode• Left skew (negative) = mean < median < mode• Kurtosis = “FAT TAIL” RISK

Page 27: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak
Page 28: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

“P” VALUE• Probability of observation (compare this value to the alpha = level of

significance (often < 0.05)• Not practically significant

– BUT, measures the strength of evidence in favor of the alternative hypothesis (vs. the “null” [Ho])

• Type I error– Concluding an association exists when in fact it occurs by chance alone– E.g. falsely rejecting the null

• Concluding that a difference exists (potentially type I error)

• Type II error– Concluding an associating does not exist when it really does– E.g. falsely accepting the null

• Concluding that a difference does NOT exists (potentially type II error)

• IF no association reported, then power should be reported because this indicates the study’s ability to actually detect a difference

Page 29: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

DIAGNOSTIC TESTING

• Sensitivity = TP/total (TP+FN)– 100% means that a test will ID ALL SICK PEOPLE

• A NEGATIVE RESULTS then would R/O the DZ

• Specificity = TN/total (TN+FP)– Probability that a person without the dz will be correctly ID

• PPV = Probability that a person who’s test is + actually has the dz– TP/TP+FP (all positives)

• NPV = Probability that person who’s test is – actually has no dz– TN/FN+TN

Page 30: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak

DIAGNOSTIC TESTS

• ODDS RATIO (retrospective)– CASE-CONTROL STUDY– ESTIMATES RELATIVE RISK– TP X TN/FP X FN

• RELATIVE RISK (prospective)– COHORT STUDY– Used to compare incidence rate in exposed and

unexposed goups

Page 31: OKU 9 Chapter 15: ORTHOPAEDIC RESEARCH Brian E. Walczak