INTRODUCTION. In recent years the evaluation of the ability of a diagnostic (prognostic) variable to distinguish a diseased (at risk) from a non-diseased patient (not at risk) has been widely discussed. In the presence of a continuous variable, the clinical decision-making process often uses for classification a cut-point value. From the statistical perspective the critical point arises as to how determine this threshold value. Two analytical methods are often used in order to categorize continuous variables: the minimum P-value [1] - based on the maximization of a chi-square statistic - and the Youden index [2] method. The performance of these approaches has so far not been extensively compared.OBJECTIVES. Aim of our work is to compare the performance of the minimum P-value and the Youden index methods through a simulation study. Indeed these approaches are mathematically related. The chi-square statistic of the minimum P-value approach is a transformation of the Youden index function, accounting for variance in parameter estimation. CONCLUSIONS. We have presented a simulation study aimed to compare two common methods used to define cut-points of new biomarkers: the minimum P-value and the Youden index approach. We have shown that under the biomarker normality distribution assumption the Youden index approach performs better than the minimum P-value approach. The difference in performance between the minimum P-value and the Youden approach is due to the variance component included in the chi-square statistic. This aspect, that could be intuitively thought as an advantage of the minimum P-value approach, refers to the null hypothesis of absence of association between the true disease status and the classification variable. However, the identification of cut-points for dichotomization has a start point the possible presence of some discrimination potential of the variable needing categorization.

Rota, M., Antolini, L. (2011). A simulation study comparing performance of minimum P-value and Youden index as methods to find optimal cut-points of continuous variables. In Misurare per Migliorare. SISMEC 2011. (pp.195-196). Ancona : La Goliardica Pavese.

A simulation study comparing performance of minimum P-value and Youden index as methods to find optimal cut-points of continuous variables

ROTA, MATTEO;ANTOLINI, LAURA
2011

Abstract

INTRODUCTION. In recent years the evaluation of the ability of a diagnostic (prognostic) variable to distinguish a diseased (at risk) from a non-diseased patient (not at risk) has been widely discussed. In the presence of a continuous variable, the clinical decision-making process often uses for classification a cut-point value. From the statistical perspective the critical point arises as to how determine this threshold value. Two analytical methods are often used in order to categorize continuous variables: the minimum P-value [1] - based on the maximization of a chi-square statistic - and the Youden index [2] method. The performance of these approaches has so far not been extensively compared.OBJECTIVES. Aim of our work is to compare the performance of the minimum P-value and the Youden index methods through a simulation study. Indeed these approaches are mathematically related. The chi-square statistic of the minimum P-value approach is a transformation of the Youden index function, accounting for variance in parameter estimation. CONCLUSIONS. We have presented a simulation study aimed to compare two common methods used to define cut-points of new biomarkers: the minimum P-value and the Youden index approach. We have shown that under the biomarker normality distribution assumption the Youden index approach performs better than the minimum P-value approach. The difference in performance between the minimum P-value and the Youden approach is due to the variance component included in the chi-square statistic. This aspect, that could be intuitively thought as an advantage of the minimum P-value approach, refers to the null hypothesis of absence of association between the true disease status and the classification variable. However, the identification of cut-points for dichotomization has a start point the possible presence of some discrimination potential of the variable needing categorization.
abstract + poster
cut-point finding; minimum P-value approach; Youden index; simulation study
English
Congresso Nazionale della SISMEC, Società Italiana di Statistica Medica ed Epidemiologia Clinica
2011
Gesuita, R; Skrami, E; Rosati, F; Ferrante, L; Carle, F
Misurare per Migliorare. SISMEC 2011.
ott-2011
195
196
none
Rota, M., Antolini, L. (2011). A simulation study comparing performance of minimum P-value and Youden index as methods to find optimal cut-points of continuous variables. In Misurare per Migliorare. SISMEC 2011. (pp.195-196). Ancona : La Goliardica Pavese.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/39084
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