Using machine learning methods to determine a typology of patients with HIV-HCV infection to be treated with antivirals.

Journal: PloS one
PMID:

Abstract

Several European countries have established criteria for prioritising initiation of treatment in patients infected with the hepatitis C virus (HCV) by grouping patients according to clinical characteristics. Based on neural network techniques, our objective was to identify those factors for HIV/HCV co-infected patients (to which clinicians have given careful consideration before treatment uptake) that have not being included among the prioritisation criteria. This study was based on the Spanish HERACLES cohort (NCT02511496) (April-September 2015, 2940 patients) and involved application of different neural network models with different basis functions (product-unit, sigmoid unit and radial basis function neural networks) for automatic classification of patients for treatment. An evolutionary algorithm was used to determine the architecture and estimate the coefficients of the model. This machine learning methodology found that radial basis neural networks provided a very simple model in terms of the number of patient characteristics to be considered by the classifier (in this case, six), returning a good overall classification accuracy of 0.767 and a minimum sensitivity (for the classification of the minority class, untreated patients) of 0.550. Finally, the area under the ROC curve was 0.802, which proved to be exceptional. The parsimony of the model makes it especially attractive, using just eight connections. The independent variable "recent PWID" is compulsory due to its importance. The simplicity of the model means that it is possible to analyse the relationship between patient characteristics and the probability of belonging to the treated group.

Authors

  • Antonio Rivero-Juárez
    Infectious Diseases Department, Maimonides Institute of Biomedical Research of Córdoba (IMIBIC), Reina Sofía University Hospital of Córdoba, University of Córdoba, Córdoba, Spain.
  • David Guijo-Rubio
    Departamento de Informática y Análisis Numérico, Universidad de Córdoba, Córdoba, España.
  • Francisco Tellez
    Unidad de Enfermedades Infecciosas, Hospital Universitario de Puerto Real, Cádiz, España.
  • Rosario Palacios
    Unidad de Enfermedades Infecciosas, Hospital Juan Ramón Jiménez e Infanta Elena de Huelva, Huelva, España.
  • Dolores Merino
    Unidad de Enfermedades Infecciosas, Hospital Universitario Virgen de la Victoria, Complejo Hospitalario Provincial de Málaga, Málaga, España.
  • Juan Macías
    Unidad de Enfermedades Infecciosas, Hospital Universitario de Valme, Instituto de Biomedicina de Sevilla, Sevilla, España.
  • Juan Carlos Fernández
    Departamento de Informática y Análisis Numérico, Universidad de Córdoba, Córdoba, España.
  • Pedro Antonio Gutiérrez
    Departamento de Informática y Análisis Numérico, Universidad de Córdoba, Córdoba, España.
  • Antonio Rivero
    Infectious Diseases Department, Maimonides Institute of Biomedical Research of Córdoba (IMIBIC), Reina Sofía University Hospital of Córdoba, University of Córdoba, Córdoba, Spain.
  • César Hervás-Martínez
    Department of Computer Science and Numerical Analysis, University of Córdoba, Campus Universitario de Rabanales, "Albert Einstein Building", Third Floor, 14071 Córdoba, Spain.