Contribuciones en machine learning y modelado estocástico orientadas al análisis de señales biomédicas

  1. Martin Martinez, Diego
unter der Leitung von:
  1. Juan Pablo Casaseca de la Higuera Doktorvater
  2. Carlos Alberola López Doktorvater

Universität der Verteidigung: Universidad de Valladolid

Fecha de defensa: 16 von Dezember von 2015

Gericht:
  1. Pablo Laguna Lasaosa Präsident/in
  2. Rodrigo de Luis García Sekretär
  3. Francesco Savino Vocal
  4. Sally McClean Vocal
  5. Marcos Martín Fernández Vocal
Fachbereiche:
  1. Teoría de la Señal y Comunicaciones e Ingeniería Telemática

Art: Dissertation

Teseo: 400273 DIALNET lock_openTESEO editor

Zusammenfassung

This dissertation brings together a number of contributions on the application of Signal Theory and Data Analysis to solve clinical problems related to biomedical and biomechanical signals. The complexity of the processed signals, which is shaped by the underlying mechanisms of the biological process, conditions the nature of the proposed methods. Specifically, the analysis of unpredictable signals such as activity patterns in certain conditions led to contributions in the machine learning field. These were applied to the identification of meaningful signal periods in activity registries and to support the diagnosis of the Attention Deficit and Hyperactivity Disorder (ADHD), among other pathologies. On the other hand, this thesis proposes modelling approaches to deal with signals with well defined evolution patterns (e.g., cardiac signals), so that higher applicability is achieved. With this regard, stochastic models and reconstruction methodologies based on them have been proposed enabling a wide range of applications in cardiology and other potential areas. The thesis is presented as a compendium of 12 peer-reviewed papers. Among them, 3 SCI JCR indexed journal papers comprise the core of the dissertation. The rest of them, have been published in the proceedings of top conferences in the biomedical engineering and/or signal processing fields, both at national (2 papers), and international level (7).