Lecture 26-28: Screenings In Medicine Flashcards

1
Q

What are the two general questions a patient has for a physician regarding medical screening?

A
  1. How ACCURATE is the screening test you are about to recommend for me?
  2. Based on the test results, how CONFIDENT will you be in your prediction of whether I do or don’t have the disease?
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2
Q

What are the 4 outcomes of a screening?

A

True Positive
False Positive
True Negative
False Negative

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3
Q

In the 2x2 table, what is represented with A + B

A + C?

A

A+ B = Total Number of Positive Screening results (True and False)

A + C = Total Number of those with disease presence (true Positive and false negative result)

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4
Q

Describe Sensitivity?

A
  • How well A Test can Detect Presence Of Disease when in fact disease is Present
  • POSITIVITY-OF-TEST IN THE DISEASED
  • Proportion of time that a TEST is Positive in a patient that Does have the disease
  • A HIGHLY SENSITIVE TEST HAS A LOW FALSE NEGATIVE RATE
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5
Q

Describe the Formula for sensitivity

A

Sensitivity = TP ÷ (TP + FN) x 100%. (Or A / (A + C))

Or TP / (All Diseased) * 100%

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6
Q

Describe Specificity

A
  • How well A Test can Detect Absence of Disease when in fact the disease is Absent
  • NEGATIVITY-OF-TEST IN THE HEALTHY
  • Proportion of time that a TEST is NEGATIVE in a patient that Does Not have the disease
  • A Highly Specific Test Has A LOW FALSE POSITIVE RATE
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7
Q

What is the formula for specificity

A
Specificity = TN ÷ (TN + FP) x 100% 
OR 
(D / (D + B)) * 100%
OR
Specificity = TN ÷ (All Not Diseased) x 100%
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8
Q

Describe Positive Predictive Values (PPV)

A
  • How accurately a POSITIVE test PREDICTS the PRESENCE of disease
  • Percentage of TP’s in patients with a positive test (correct prediction)
  • Also referred to as Predictive Value-Positive (PVP)
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9
Q

Give the formula for calculating PPV

A
PPV = TP ÷ (TP + FP) x 100% 
OR
PPV = TP ÷ (All Positive Tests) x 100%
OR
PPV = A / (A + B) x 100%
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10
Q

Describe Negative Predictive Value (NPV)

A
  • How accurately a NEGATIVE test PREDICTS the ABSENCE of DISEASE
  • Percentage of TN’s in patients with a negative test (correct prediction)
  • Also referred to as Predictive Value-Negative (PVN)
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11
Q

Give the Formula for NPV

A
NPV = TN ÷ (TN + FN) x 100% 
OR
NPV = TN ÷ (All Negative Tests) x 100%
OR
NPV = D / (C + D) x 100%
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12
Q

Describe Diagnostic Accuracy (DA) or Diagnostic Prediction (DP)

A

Proportion of time that a patient is CORRECTLY IDENTIFIED as either having a disease or not having a disease with a positive or negative test, respectively

DA/DP = (TP + TN) ÷ (TP+FP+FN+TN) x 100%
OR
DA/DP = (TP + TN) ÷ (All Patients) x 100%

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13
Q

Describe Likelihood Ratios (LR)

A

Definition:

  • Ratio of the probability of a given test result (positive or negative) for a person WITH THE DISEASE divided by the probability of the same test result (positive or negative) for a person WITHOUT THE DISEASE
  • Can be calculated for both POSITIVE AND NEGATIVE
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14
Q

Describe the Likelihood of Ratio Positive (LR+)

A
  • Probability of a POSITIVE test in the PRESENCE of disease divided by the Probability of a POSITIVE test in the ABSENCE of disease
  • Sensitivity divided by (1-Specificity),
    OR
    [(A/(A+C)) / (B/(B+D))]
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15
Q

Describe the Likelihood Ratio Negative (LRP-)

A
  • Probability of a NEGATIVE test in the PRESENCE of disease divided by the Probability of a NEGATIVE test in the ABSENCE of disease
    = (1-Sensitivity) / Specificity,
    or
    [(C/(A+C)) / (D/(B+D))]
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16
Q

How does one tell if LR is beneficial?

A
  • LR+ should be >10 to demonstrate the test is most beneficial
  • LR- should be <0.1 to demonstrate the test is most beneficial
17
Q

Describe Validity

A
  • Ability to accurately discern between those that do and those that do not have the disease – “TELLING THE TRUTH”
  • INTERNAL VALIDITY: Extent to which results accurately reflect what was being assessed (true situation of study population)
  • EXTERNAL VALIDITY: Extent to which results are applicable to other populations (not included in the original study; also known as “GENERALIZABILITY”)
18
Q

Describe Reliability

A

Side NOTE: It seems the table’s a lot more important this time. So may wanna practice drawing it or something.

Ability of a test to give the SAME RESULT on repeated uses
- Analogous to: REproducibility/Consistency

  • A VALID test is ALWAYS RELIABLE, yet a RELIABLE test is NOT ALWAYS VALID
19
Q

Describe Multiple Cutoff Values

A
  • Many diagnoses typically have two dichotomous outcomes (POSITIVE/NEGATIVE)
  • What if there are potentially multiple cut-off values that correspond with better sensitivity vs. specificity?
  • For screening tests with numerical values, we use ROCs (RECEIVER OPERATOR CURVES)
  • A more efficient way to show a relationship between sensitivity & specificity for tests with numerical (continuous) outcomes
  • Practice the problem on slide 24 - 31