Evaluation of Diagnostic test
In which circumstances do we want to MINIMIZE false negatives ?
If the disease is -often asymptomatic -is serious (high mortality) -Progresses quickly -can be treated more effectively at an EARLY age -spreads one person to another e.g. Squamous cell carcinoma, TB
(Sensitivity/ Specificity/ PPV/NPV) are highly affected by prevalence of the disease in population
PPV + NPV
"The sensitivity is 87%" → Out of 100 people with OLP, ______ will test positive and _________ will test negative.
87 13
_________________ : Probability of a positive test result when condition is present
sensitivity
_______________ bias occurs when non-blinded testing leads to overestimation of the accuracy of the diagnostic test.
Review bias
Any given PPV and NPV are only accurate for YOUR patients if :
your patients have the same pre-test probability as the population being studied (e.g. general population = low risk for OLP & your patients = also low risk for OLP)
If you DECREASE the prevalence of a disease, there is a RELATIVE (increase/ decrease) in false positives. This occurs because the (PPV/NPV) (decreases/ increases).
INCREASE PPV decreases
SpPIn & SnNOut
SpPIn = for a highly specific (95%) test, a positive result rules in the disease SnNOut = for a highly sensitive (95%) test, a negative result rules out the disease
_______________ : Probability that a subject who is disease free will test negative. _______________ : Probability that a subject who has disease will test positive.
Specificity Sensitivity
_____________ bias occurs when the patients recruited to a study are NOT representative of those on which the test will be used in practice.
Spectrum bias
You want to minimize false (negative/ positive) for patients with CARIES. You want to minimize false (negative/ positive) for patients with SCC.
positive negative
Predictive values is also termed ________________
post-term probability
Name all biases commonly found in diagnostic test papers:
-Spectrum bias -Review bias -Verification bias
Likelihood ratios can be calculated from __________________ Likelihood ratios (do/ don't) depend on the prevalence of disease.
Sensitivity+ specificity of a test do NOT
If you decrease the prevalence of a disease, -false positives go (up/down) -PPV goes (up/ down) -NPV goes (Up/ down)
Up Down Slightly up
_______________ bias is when people in a study of a diagnostic test don't have an equal chance of getting the reference standard.
Verification bias
________________ : Probability of a negative test result when condition is absent
specificity
"The NPV is 96%" → Out of 100 people who test negative, ___________ will not have OLP
96 (+ 4 false negatives)
If we adjust the cut-off line to minimize the false positives, there's a side effect of _________________.
Increase in false negatives.
"The PPV is 49%" → Out of 100 people who test positive, ___________ will have OLP.
49 (+ 51 false positives)
The denominator for sensitivity is ________________
All patients who have the disease or condition
The denominator for Positive predictive value is __________________
All patients who test positive
(T/F) Sensitivity / Specificity tell you how well the test itself works (T/F) Sensitivity/ Specificity tells you how the results apply to your patient.
True false (doesn't tell you much about how the results apply to your patient just about accuracy of diagnostic test- so it may not be clinically useful)
As the prevalence of a disease decreases, PPV of diagnostic test gets (worse/ better), due to (increase/ decrease) in false positives. This leads to risk of (under/ over)-treatment.
Worse ; Increase Over-treatment
"The specificity is 73%" → Out of 100 people without OLP, ______ will test positive and _________ will test negative.
27 73
PICO in Papers dealing with Diagnostic tests :
Intervention - diagnostic test being STUDIED Comparison - Reference standard or the GOLD standard
_______________ measures help you SHIFT your suspicion of a particular diagnosis from "pre-test probability" to the "post-test probability"?
Likelihood ratio
_____________ for positive result tells you How much the ODDS of the disease increase when a test is positive. _____________ for negative result tells you How much the ODDS of the disease decrease when a test is negative.
Likelihood ratios
________________ : Probability, given a positive test result, that the patient has the condition. ________________ : Probability, given a negative test result, that the patient does not have the condition.
Positive predictive value negative predictive value
_____________ : Probability of those testing/ screening positive truly having the disease _____________ : Probability of those testing/ screening negative NOT actually having the disease
Positive predictive value (PPV) Negative predictive value (NPV)
Define a positive predictive value (PPV) :
Probability of those testing/ screening positive truly having the disease
Define Specificity:
-Probability that a subject who is DISEASE-FREE will test negative -A highly specific test will NOT falsely identify many people as having the condition, when in fact they do not
Define Sensitivity:
-Probability that a subject with DISEASE will test positive -A highly sensitive test will not miss many people with the condition
Likelihood ratios:
-Provide direct estimate of how much a test result will change the ODDS of having a disease -Tells us the ability of a diagnostic test to move us from a pre-test probability to a post-test probability
3 types of statistics for RESULT of diagnostic test:
-Sensitivity & specificity -Predictive values (PPV, NPV) -Likelihood ratio
_______________ measures remain CONSTANT, no matter what setting a test is used in.
sensitivity + specificity
Purpose of diagnostic tests:
-To Rule in disease -To Rule out disease
(T/F) Sensitivity and specificity are usually clinically useful.
false
Who should be the representative participants of study regarding diagnostic tests?
-Those that have conditions that are different from each other but are commonly CONFUSED - in "grey areas" of diagnosis
What are predictive values?
-"If I test positive, what is the chance that I HAVE the condition?" -"If I test negative, what is the chance that I DON'T have the condition?" -represented by positive (PPV) and negative predictive (NPV) values
What is the requirement of choosing a "gold standard" reference diagnostic test?
-Must be INDEPENDENT, stand-alone of the diagnostic (index) test -Must have no overlap with the diagnostic test of interest
Define a negative predictive value (PPV) :
Probability of those testing/screening negative NOT actually having the disease
In which circumstances do we want to MINIMIZE false positives ?
-When costs/ risks of treatment are high -When treatment is non-reversible -When disease itself is not life-threatening -e.g. caries in patients at low risk -e.g. prostate cancer in very elderly men, unlikely to develop clinically significant disease (minimization of cancer treatment, since it can be aggressive)
<Rule of thumb> A test with (+)Likelihood ratio bigger than ________ is good to Rule IN a disease. A test with (-)Likelihood ratio smaller than ________ is good to Rule OUT a disease.
10 0.1
Spectrum bias leads to diagnostic tests appearing (more / less) accurate than it would in appropriate select of patients.
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