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Decision Support Systems I

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Title: Decision Support Systems I


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Decision Support SystemsProbabilistic Principles
Edward H. Shortliffe, MD, PhD Department of
Biomedical Informatics Columbia University
  • Biomedical Informatics A Course for Health
    Professionals
  • Woods Hole Marine Biological Laboratory
  • September 25, 2006

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Biomedical Informatics Textbook (3rd edition)
Bio
Springer Verlag - 2006
4
Biomedical Informatics
  • The scientific field that deals with the storage,
    retrieval, sharing, and optimal use of biomedical
    information, data, and knowledge for problem
    solving and decision making.

Biomedical informatics touches on all basic and
applied fields in biomedical science and is
closely tied to modern information technologies,
notably in the areas of computing and
communication.
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Computer-Assisted Decision Support
  • Examples of functionalities
  • Generic information access tools (e.g., Medline,
    results reporting systems)
  • Patient-specific consultation systems
  • Advice regarding diagnosis
  • Advice regarding optimal workup
  • Advice regarding therapy or patient management
  • Critiques reactions to users hypotheses
    regarding patients and their proper management
  • Browsing tools that mix generic and
    patient-specific elements (e.g., electronic
    textbooks of medicine)
  • Monitoring tools that generate warnings or advice
    as needed (advice as a byproduct of patient care)

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Computer-Assisted Decision Support
  • Examples of available methodologies
  • Protocols and algorithms (clinical guidelines)
  • Clinical databanks
  • Mathematical models (often physiologic)
  • Statistical pattern recognition and neural
    networks
  • Bayesian statistics and Bayesian networks
  • Decision analysis
  • Artificial intelligence (expert systems)
  • Syntheses of various techniques

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Screening Test for Occult Cancer
  • 100 patients with occult cancer 95 have "x" in
    their blood
  • 100 patients without occult cancer 95 do not
    have "x" in their blood
  • 5 out of every 1000 randomly selected individuals
    will have occult cancer

SENSITIVITY
SPECIFICITY
PREVALENCE
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2 X 2 Table
100,000
If a patient has x in his blood, chance of
occult canceris 475 / 5475 8.7
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Standard Terminology
True Positives (TPs)
False Negatives (FNs)
False Positives (FPs)
True Negatives (TNs)
Entire Population
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Definitions
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Positive Predictive Value Formula
(Sens)(Prev)
PV
(Sens)(Prev) (1-Spec)(1-Prev)
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Detection of Prostatic Cancer by Solid-Phase
Radioimmunoassay of Serum Prostatic Acid
Phosphatase
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Editorial
  • The clear implication of the accompanying report
    is that mass screening on the basis of a blood
    test alone can reverse this gloomy experience of
    fatal delays in diagnosis of prostate cancer.

New England Journal of Medicine December 22, 1977
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Medical Journal Advertisement to Physicians
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Medical Journal Advertisement to Physicians
Posed by a Professional Model
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Medical Journal Advertisement to Physicians
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Advertisement
  • (You should be aware of) a new blood test called
    the Male-P.A.P. test ... a new, more sensitive
    method that your physician can use to detect
    chemical signals of a cancerous growth in the
    prostate. ... And even though all lab tests
    must be ordered by a physician, we believe that
    you should know the facts.

New York Times, January 21, 1979
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Sensitivity
of patients
of positive tests
sensitivity
Patients with prostate 113 79 70cancer
Stage I 24 8 33 Stage II 33 26 79 Stage
III 31 22 71 Stage IV 25 23 92
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Specificity
of patients
of positive tests
specificity
Patients without prostate 217 13 94cancer
Normal controls 50 0 BPH 36 2 After total
prosta- 28 1 tectomy Other cancers 83 9 Misc.
GI disorders 20 1
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Use As Screening Test
  • Without rectal examination
  • Sensitivity 70 Specificity 94
  • Prevalence 33/100,000
  • PV 0.41 (i.e., 1 in 244 subjects)
  • With rectal examination
  • Sensitivity 33 Specificity 94
  • Prevalence 33/100,000
  • PV 0.19 (i.e., 1 in 526 subjects)

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When is the test useful for screening?
  • Suppose patient has a nodule on rectal
    examination
  • Sensitivity 79
  • Specificity 94
  • Prevalence 50 !!
  • PV 93 (chance of cancer if acid phosphatase
    is positive)
  • PV- 82 (chance that there is no cancer if
    acid phosphatase is negative)

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Predictive Values in Patients with a Nodule
PAP
93
50
PAP-
18
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Combining Tests For Screening
  • If a prostate biopsy is now performed, it needs
    to be considered as another test.
  • Specificity 100
  • Sensitivity depends on talent and statistics of
    surgeon doing the procedure
  • Prevalence is 50 if acid phosphatase has not
    been measured, but is 93 if acid phosphatase is
    positive and 18 if acid phosphatase is negative.

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Sequential Testing
BX
100
PAP
93
50
BX
100
PAP-
18
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Chance of Cancer after Negative Biopsy
Sensitivity of Biopsy
50 87 10
70 80 6
90 56 2
Acid Phosphatase positive (93 chance before
biopsy) Acid Phosphatase negative (18 chance
before biopsy)
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Sequential Testing
BX
100
PAP
93
BX-
56
50
BX
100
PAP-
18
BX-
lt 2
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BAYES THEOREM
OR
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Typical Assumptions with theUse of Bayes' Theorem
  • Completeness (for example, all men either have or
    do not have prostate cancer there are no other
    possibilities)
  • Mutual exclusivity (for example, if a man has
    prostate cancer, he cannot simultaneously NOT
    have prostate cancer)
  • Conditional independence (for example, acid
    phosphatase and a biopsy result ARE conditionally
    independent tests rectal exams and acid
    phosphatase may NOT be conditionally independent)

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References
  • Foti et al. Detection of prostate cancer by
    solid-phase radioimmunoassay of serum prostatic
    acid phosphatase. New England Journal of
    Medicine 2971357-1361 (1977)
  • Watson, R.A. and Tang, D.B. The predictive
    value of prostatic acid phosphatase as a
    screening test for prostatic cancer. New
    England Journal of Medicine 303497-499 (1980)
  • Berwick, D.M., Fineberg, H.V., and Weinstein,
    M.C. When doctors meet numbers. American
    Journal of Medicine 71991 (1981)

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What is a Positive Test?
  • All the analysis has assumed that it is clear
    whether a test is positive or negative
  • In reality, many tests involve continuous values
    so that one result may be more positive than
    another
  • How should one define the cut-off at which a test
    is judged to be abnormal?

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Continuously Valued Variables
Result
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Continuously Valued Variables
  • Fewer false positives (more conservative)
  • More false negatives
  • Higher specificity
  • Lower sensitivity

Normal cutoff
Result
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Continuously Valued Variables
Result
  • Fewer false negatives (more aggressive)
  • More false positives
  • Higher sensitivity
  • Lower specificity

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Receiver Operating Characteristic(ROC) Curves
Test B
Test A
True Positive Rate Sensitivity
False Positive Rate 1 - Specificity
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The Importance of the Gold Standard
  • Evaluating the value of a new test requires
    having some other method for determining truth
  • Methods for determining truth are called gold
    standards
  • Gold standards are often expensive, time
    consuming, uncomfortable, or risky
  • Biopsies
  • Major invasive procedures or surgery
  • Autopsies
  • Integrated opinions of super experts
  • We often seek simple, inexpensive, rapid, and
    safe tests that can perform almost as well as the
    gold standard

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Classification versus Planning
  • Both are probabilistic reasoning activities
  • Classification interpret data that may not
    deterministically characterize an object of
    interest
  • Planning decision today makes assumptions about
    likely outcomes of actions and the desirability
    of those potential outcomes
  • Issues recur frequently in biomedicine
  • Classification under uncertainty characterizes
    much of the work in biology and in clinical care
  • Classification diagnosis in clinical care
  • Planning therapy or management in clinical
    care

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Diagnosis vs Management
  • Diagnosis What does this patient have?
  • What is true about the world?
  • Inherently a problem of probabilistic
    inferenceindirect observations from which
    unobservable causative explanations may be
    inferred
  • The question does not involve resource commitments

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Diagnosis vs Management
  • Management What should I do for this patient?
  • What test should I do next?
  • How should I manage the patients condition?
  • Combines probabilistic issues with value
    judgments (cost-benefit tradeoffs, using some
    metric of value)
  • Such questions generally involve some commitment
    of resources (money, time, risk, discomfort,
    etc.)
  • Of course, diagnosis and management are linked
    concepts

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Decision Analysis
  • 95 y/o male with a new lung nodule on chest xray
  • High likelihood of cancer based on appearance
  • Mayo Clinic (Minnesota) no surgery or other
    therapy given patients age
  • Sloan-Kettering (New York) surgery to remove the
    portion of lung containing the tumor
  • Patient wanted a third opinion from experts on
    complex decision making
  • Went to Boston for evaluation by Decision
    Analysis service at Tufts-New England Medical
    Center

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Possible Outcomes if Nothing is Done
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Possible Outcomes ifSurgery is Performed
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But Wait...! Are we ignoring another possible
approach?
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Another option became clear...
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Reference
  • Moroff SV Pauker SG . What to do when the
    patient outlives the literature, or DEALE-ing
    with a full deck. Medical Decision Making, 1983
    3(3)313-38.
  • DEALE Declining exponential approximation of
    life expectancy

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Summary Comments Regarding Decision Support
  • In informatics, what fundamentally guides us is
    the creation of systems that implement the
    approaches presented today, plus other methods
    for simulating and/or supporting clinical
    decision making
  • Systems need to be viewed as implementations of
    fundamental theories and methods that is the
    source of their power

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