Lecture 6: Integration of results and goodness of decision Flashcards

1
Q

Clinical (1) vs. statistical (2) prediction

A

1) human judgement, available information can be combined freely (no clear rules)
2) application of an a pirori set rule, which ideally has been empirically validated

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2
Q

Reasons for errorenuos clinical judgements (What are the different errors?)

A
  1. Strategy-based errors
  2. Association-based errors
  3. Psychophysical-based errors
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3
Q

Strategy-based errors

A

exponses for well-designes strategy are thought to be too high - hence, people only use suboptimal strategies

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4
Q

Association-based errors

A
  • Info is connected with wrong or irrelevant associations
  • cognitive distortions
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5
Q

Psychophysical-based errors

A

erroneous assessment of costs and utility of individual information.

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6
Q

Potential counter measures
(against erroneous judgements)

A

Highlight the importance of the diagnosis and the professional responsibility (of the assessor)

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7
Q

What kind of prediction is better - clinical or statistical?

A
  • statistical prediction is better in general
  • but often only small differences
  • when using interview data, statistical prediction is significantly superior (moderator)
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8
Q

What are potential reasons for superiority of the statistical prediction?

A
  • humans often ignore the base rate
  • they tend to weigh information incorrectly
  • they often ignore statistical phenomena such as regression to the mean.
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9
Q

Criticism of statistical prediction despite its advantages

A
  • often (unrealistic) restriction to one test only
  • restriction to info that is availabe for ALL individuals
  • only applicable if empirically validated computaion rules are available
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10
Q

What can be done? - In order to enhance statistical predictions?

A
  • development and usage of systematic scoring keys
  • Time- and Event Sampling for behavior observation
  • take measurement error into account
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11
Q

What is time sampling?

A

An observation section is divided into equal time intervals - then it is counted whether the target behavior is shown in the sections.

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12
Q

What is event sampling?

A

Here we count how often the behavior is performed in total during the observation period.

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13
Q

Why is the interpretation of norm scores problematic?

A
  • we need to know and acknowledge the specifics of the chosen comparison group
  • measurement error is inherent in all test scores.
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14
Q

Why do we compute a confidence interval?

A

because there is always (to some degree) error in test scores.

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15
Q

What leads to smaller Confidence intervals?

A

a higher reliability

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16
Q

What are the different choices of the reliability type?

A

For prognosis: Retest reliability
For current state: Internal consitency

17
Q

What is the difference for a directed and an undirected hypothesis?

A
  • for directed hypothesis, we test against the treshold.
  • for undirected hypothesis - both sides of the treshol are relevant.
18
Q

What are problems associated with the use of confidence intervals?

A
  • difficult to understand for lay people
  • methodological: (assumptions of symmetry, assumption that measurement error in of the same size throughout the latent variable continuum)
19
Q

What are two important factors of the test profile?

A
  1. All test /scales should be reliable
  2. High intercorrelations between test/scales lower profile reliability.
20
Q

What are potential reasons of discrepancies? (when integrating results)

A
  • within the testee
  • between assessed constructs
  • level of abstraction inherent in the measure
  • specific demans/ requirements posed by different methods.
  • failure to ensure objectivity
  • different ways of test norming.
21
Q

Sensitivity

A
  • proportion of true positive tests out of all test takers within the condition (hit rate)
  • ability of a test to correctly diagnose a test taker who does have the condition
22
Q

Specificity

A
  • proportion of true negative tests out of all test takers without the condition
  • ability of test to correctly diagnose a test taker who does NOT have the condition.
23
Q

Positive predictive value

A

probability of a test, when returning a positive result, of correctly identifying the true positives, and at the same time avoiding the all false positives.
(JUST LOOKING AT POSITIVES)

24
Q

Negative preditive value

A

probability of a test, when returning a negative result, of correctly identifying the true negatives, and at the same time avoiding all false negatives.
(JUST LOOKING AT NEGATIVES)

25
Q

Hoes does the Goldberg Index work?

A

Lie scale + Paranoai + Schizophrenia - Hysteria - Psychasthenia (T-values)
- is index is > 45, then the patient is judged to be psychotic.

26
Q

What does the measurement error tell us?

A

gives us an idea of the precision we have achieved with our measurement.