Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models

Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Thus, predictive models under different treatment options are key factors for making good decisions. While many criteria exist for judging the statistical quality of a prediction model, few are ava...

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Main Authors: Dean Billheimer, Eugene W. Gerner, Christine E. McLaren, Bonnie LaFleur
Format: Article
Language:English
Published: SAGE Publishing 2014-01-01
Series:Cancer Informatics
Online Access:https://doi.org/10.4137/CIN.S13780
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spelling doaj-ddd13bfcdcd04d279889396218c332642020-11-25T03:03:15ZengSAGE PublishingCancer Informatics1176-93512014-01-0113s210.4137/CIN.S13780Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction ModelsDean Billheimer0Eugene W. Gerner1Christine E. McLaren2Bonnie LaFleur3The BIO5 Institute, The University of Arizona, Tucson, AZ.Cancer Prevention Pharmaceuticals, Tucson, AZ.Department of Epidemiology and Genetic Epidemiology Research Institute, University of California Irvine, Irvine, CA.Ventana Medical Systems, Tucson, AZ.Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Thus, predictive models under different treatment options are key factors for making good decisions. While many criteria exist for judging the statistical quality of a prediction model, few are available to measure its clinical utility. As a consequence, we may find that the addition of a clinical covariate or biomarker improves the statistical quality of the model, but has little effect on its clinical usefulness. We focus on the setting where a treatment decision may reduce a patient's risk of a poor outcome, but also comes at a cost; this may be monetary, inconvenience, or the potential side effects. This setting is exemplified by cancer chemoprevention, or the use of statins to reduce the risk of cardiovascular disease. We propose a novel approach to assessing a prediction model using a formal decision analytic framework. We combine the predictive model's ability to discriminate good from poor outcome with the net benefit afforded by treatment. In this framework, reduced risk is balanced against the cost of treatment. The relative cost–benefit of treatment provides a useful index to assist patient decisions. This index also identifies the relevant clinical risk regions where predictive improvement is needed. Our approach is illustrated using data from a colorectal adenoma chemoprevention trial.https://doi.org/10.4137/CIN.S13780
collection DOAJ
language English
format Article
sources DOAJ
author Dean Billheimer
Eugene W. Gerner
Christine E. McLaren
Bonnie LaFleur
spellingShingle Dean Billheimer
Eugene W. Gerner
Christine E. McLaren
Bonnie LaFleur
Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
Cancer Informatics
author_facet Dean Billheimer
Eugene W. Gerner
Christine E. McLaren
Bonnie LaFleur
author_sort Dean Billheimer
title Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
title_short Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
title_full Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
title_fullStr Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
title_full_unstemmed Combined Benefit of Prediction and Treatment: A Criterion for Evaluating Clinical Prediction Models
title_sort combined benefit of prediction and treatment: a criterion for evaluating clinical prediction models
publisher SAGE Publishing
series Cancer Informatics
issn 1176-9351
publishDate 2014-01-01
description Clinical treatment decisions rely on prognostic evaluation of a patient's future health outcomes. Thus, predictive models under different treatment options are key factors for making good decisions. While many criteria exist for judging the statistical quality of a prediction model, few are available to measure its clinical utility. As a consequence, we may find that the addition of a clinical covariate or biomarker improves the statistical quality of the model, but has little effect on its clinical usefulness. We focus on the setting where a treatment decision may reduce a patient's risk of a poor outcome, but also comes at a cost; this may be monetary, inconvenience, or the potential side effects. This setting is exemplified by cancer chemoprevention, or the use of statins to reduce the risk of cardiovascular disease. We propose a novel approach to assessing a prediction model using a formal decision analytic framework. We combine the predictive model's ability to discriminate good from poor outcome with the net benefit afforded by treatment. In this framework, reduced risk is balanced against the cost of treatment. The relative cost–benefit of treatment provides a useful index to assist patient decisions. This index also identifies the relevant clinical risk regions where predictive improvement is needed. Our approach is illustrated using data from a colorectal adenoma chemoprevention trial.
url https://doi.org/10.4137/CIN.S13780
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