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Prediction Models in Medicine

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Prediction Models in Medicine Clinical Decision Support The Road Ahead Chapter 10 Overview Prediction models currently in use in Clinical Decision Support What models ... – PowerPoint PPT presentation

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Title: Prediction Models in Medicine


1
Prediction Models in Medicine
  • Clinical Decision Support
  • The Road Ahead
  • Chapter 10

2
Overview
  • Prediction models currently in use in Clinical
    Decision Support
  • What models are used (or not used) in the
    community
  • How are the models evaluated
  • Examples of currently used prediction models

3
Limited adaptation of learning algorithms in
practice
  • Most clinical decision support systems do not use
    machine-learning/data mining techniques
  • Data is not available or is not structured enough
  • Learning techniques are not well disseminated or
    well evaluated enough
  • Rules defined by experts are more understandable
    to clinicians

4
Model Preference
  • Simple, understandable models are preferred
  • Linear and Logistic Regression is by far the most
    popular
  • SVMs, Neural Networks, and other sophisticated
    models are not very popular
  • Unsupervised Learning is not used at all

5
Model Evaluation
  • Discrimination
  • How well the model discriminates positive and
    negative cases
  • How large is
  • P(1Positive Case)
  • P(0Negative Case)
  • Based on the ROC(Receiver operating
    characteristic) curve

6
Model Evaluation
  • Calibration
  • How close is the models estimated probability to
    the true underlying probability
  • For logistic regression, calibration is assessed
    by Hosmer-Lemeshow goodness-of-fit test

7
Case Study 1 Prognosis of ICU Mortality
  • APACHE (Acute Physiology and Chronic Health
    Evaluation) series of models
  • Predict the individual patient's risk of hospital
    death, based on a variety of physiological
    variables
  • History
  • APACHE (1981) Expert-based scoring system
  • APACHE II (1985) Logistic Regression on 5,815
    cases from 13 hospitals
  • APACHE III (1991) Logistic Regression on 17,440
    cases based on 40 hospitals. Commercial product

8
Case Study 1 Prognosis of ICU Mortality
  • Large number of reviews and external evaluations
    show good discrimination, but variable
    calibration
  • Other systems (more popular in Europe)
  • SAPS-II
  • MPM-II
  • Multiple studies compare LR to ANN
  • Some studies suggest that the models are
    equivalent
  • Some suggest that ANN achieves superior
    discrimination

9
Case Study 2 Cardiovascular Disease Risk
  • Estimates the risk of developing future heart
    disease
  • Based on most recent 10-year heart disease data
    from Framingham cohort (in US)
  • Uses Logistic Regression
  • External validation shows good discrimination and
    moderate calibration (but limited to similar
    demographic)
  • The model is used to determine the risk factors
    for heart disease (used to generate guidelines
    for care)

10
Case Study 3 Pneumonia Severity of Illness Index
  • Predicts the risk of death within 30 days for
    adult patients with pneumonia
  • Developed by Pneumonia Patient Outcome Research
    Team (PORT) 1997
  • Logistic Regression!
  • The model was validated over 50,000 patients in
    275 US and Canadian hospitals
  • Using this model, 26 to 31 percent of patients
    can be treated safely as outpatients
  • Savings of more than 1.2 Billion dollars per year
    in US
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