Enhancing diagnostic accuracy in neuroimaging through machine learningAdvancements in statistical classification and mapping

  1. Jiménez Mesa, Carmen
Dirigida por:
  1. Juan Manuel Górriz Sáez Codirector
  2. Javier Ramírez Pérez de Inestrosa Codirector
  3. John Suckling Codirector/a

Universidad de defensa: Universidad de Granada

Fecha de defensa: 27 de octubre de 2023

Tipo: Tesis

Resumen

In recent years, the application of arti cial intelligence (AI) techniques in health and medicine, including neuroimaging, has grown exponentially. Neuroimaging plays a crucial role in studying the central nervous system and supporting clinical diagnosis through non-invasive examination of the human brain. Computer-aided diagnosis (CAD) systems have been developed to assist clinicians in this process by using pattern recognition and prediction capabilities. These systems, created through multidisciplinary collaboration, incorporate AI algorithms to improve diagnostic accuracy and reduce clinician workload. However, these systems face certain challenges, such as the lack of interpretability of AI models and the small sample sizes inherent in neuroimaging studies, which complicate system learning and performance. Addressing these challenges is crucial for establishing CAD systems as a standard for clinical diagnostic support. This thesis focuses on exploring various machine learning (ML) approaches to enhance the accuracy and utility of CAD systems while ensuring optimal interpretability for clinical analysis. To enhance reliability, one approach involves tackling the curse of dimensionality by reducing the number of features. The signi cance of feature selection and extraction stages is emphasised in the development of an optimised multiclass classi cation system. Additionally, validation methods implemented so far in neuroimaging studies are questioned. The viability of an upper-bounded resubstitution as a validation method is demonstrated through a non-parametric statistical inference framework, particularly suitable in studies with small sample sizes. Moreover, the use of classical statistics in neuroimaging, which usually rely on assumptions that are frequently violated, is also questioned. To address this, a proposed data-driven approach for generating statistical inference maps is tested in brain disorders such as Alzheimer’s Disease and Parkinson’s Disease, and compared with a parametric approach. Regarding interpretability, two systems are designed to provide easily interpretable results for clinical experts. These systems place emphasis on the use of explainable AI techniques. One system focuses on analysing sulcal morphology in individuals with schizophrenia, while the other system proposes a method for detecting patterns in the Clock-Drawing Test to assess cognitive impairment. In summary, this thesis demonstrates the utility of ML techniques in neuroimaging for brain mapping, feature detection, and classi cation. It explores the reliability and interpretability of CAD systems, identi es potential improvements, and emphasises the need for further research to develop techniques tailored to neuroimaging’s unique conditions. This advancements will enable CAD systems to become a standard for clinical diagnostic support, ultimately improving the quality of life for patients through earlier and more accurate diagnoses.