Nomograms are superior to staging and risk grouping systems for identifying high-risk patients: Preoperative application in prostate cancer Journal Article


Author: Kattan, M. W.
Article Title: Nomograms are superior to staging and risk grouping systems for identifying high-risk patients: Preoperative application in prostate cancer
Abstract: Purpose of review: We outline a generic approach to using a nomogram to predict a continuous probability of failure in high-risk patients (rather than putting patients into groups), in order to identify patients whose risk exceeds a cutoff point. We discuss the goals of any staging system, what markers should be included, and models of markers. Recent findings: Selection of high-risk patients for any cancer has traditionally been accomplished by the creation of risk groups, or perhaps clinical stages. Ideally, high-risk patients should be identified as accurately as possible, because of the treatment and psychological implications for the patient. We argue that a continuous multivariable prediction model, such as a nomogram, is the most appropriate and accurate way to select high-risk patients. This type of model predicts outcome more accurately than risk grouping or staging systems. As an example, we use our preoperative prostatic specific antigen recurrence nomogram to identify patients at high risk of biochemical failure, who are in need of an effective neoadjuvant therapy. Summary: It will follow from our discussion that identification of high-risk patients should follow four simple steps. First, select the endpoint of interest for the trial or the patient. Second, select the method that predicts the endpoint as accurately as possible. Third, determine the cutoff of predicted probability beyond which it makes sense to give the patient experimental therapy. Fourth, offer the novel therapy to the patient whose prediction of the endpoint, using the most accurate prediction method, exceeds the threshold.
Keywords: review; cancer risk; cancer staging; neoplasm staging; logistic models; risk factors; tumor marker; prediction; prostate cancer; prostatic neoplasms; models, statistical; high risk population; nomogram; humans; prognosis; human; male; priority journal; clinical design trial
Journal Title: Current Opinion in Urology
Volume: 13
Issue: 2
ISSN: 0963-0643
Publisher: Lippincott Williams & Wilkins  
Date Published: 2003-03-01
Start Page: 111
End Page: 116
Language: English
DOI: 10.1097/00042307-200303000-00005
PUBMED: 12584470
PROVIDER: scopus
DOI/URL:
Notes: Export Date: 25 September 2014 -- Source: Scopus
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  1. Michael W Kattan
    218 Kattan