A Multi-Relational Model for Depression Relapse in Patients with Bipolar Disorder.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Bipolar Disorder (BD) is a chronic and disabling disease that usually appears around 20 to 30 years old. Patients who suffer with BD may struggle for years to achieve a correct diagnosis, and only 50% of them generally receive adequate treatment. In this work we apply a machine learning technique called Inductive Logic Programming (ILP) in order to model relapse and no-relapse patients in a first attempt in this area to improve diagnosis and optimize psychiatrists' time spent with patients. We use ILP because it is well suited for our multi-relational dataset and because a human can easily interpret the logical rules produced. Our classifiers can predict relapse cases with 92% Recall and no-relapse cases with 73% Recall. The rules and variable theories generated by ILP reproduce some findings from the scientific literature. The generated multi-relational models can be directly interpreted by clinicians and researchers, and also open space to research biological mechanisms and interventions.

Authors

  • Rogerio Salvini
    Instituto de Informática, Universidade Federal de Goiás, Goiânia, GO, Brazil.
  • Rodrigo da Silva Dias
    Bipolar Research Program, Department and Institute of Psychiatry, University of São Paulo Medical School, São Paulo, Brazil.
  • Beny Lafer
    Bipolar Research Program, Department and Institute of Psychiatry, University of São Paulo Medical School, São Paulo, Brazil.
  • Inês Dutra
    CRACS & INESC TEC-Porto LA, University of Porto, Porto, Portugal.