Optimal cutoff points for classification in diagnostic studiesnew contributions and software development

  1. López Ratón, Mónica
Supervised by:
  1. Carmen María Cadarso Suárez Director
  2. Elisa M. Molanes Co-director

Defence university: Universidade de Santiago de Compostela

Fecha de defensa: 28 January 2016

Committee:
  1. Antonio Martín Andrés Chair
  2. Pablo García Tahoces Secretary
  3. Pablo Martínez Camblor Committee member
  4. Francisco Gude Sampedro Committee member
  5. María José Rodríguez Álvarez Committee member
Department:
  1. Department of Statistics, Mathematical Analysis and Optimisation

Type: Thesis

Abstract

Diagnostic tests are often used for discriminating between healthy and diseased populations. In continuous diagnostic tests (take values in a continuous range), it is useful to select a cutpoint or discrimination value c that defines the positive (patient is classified as diseased) and negative (patient is classified as healthy) tests results, such in general, individuals with a diagnostic test value of c or higher are classified as diseased. The objective consists in to select the better optimal cutpoint c, the “optimal” cutpoint. Several strategies have been proposed in the literature for selecting optimal cutpoints in diagnostic tests, depending on the underlying reason for this choice. The main objective of this doctoral thesis is to study and review the different criteria for selecting optimal cutpoints, mainly based on their application in clinical field, development of new estimation and inference techniques of the optimal cutpoint and implement user-friendly software in R that includes all these techniques.