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Applications of deep learning on cardiac mri: design approaches for a computer aided diagnosis

  • Autores: Manuel Pérez Pelegrí
  • Directores de la Tesis: P. López-Lereu (dir. tes.), David Moratal Pérez (dir. tes.), José V. Monmeneu (dir. tes.)
  • Lectura: En la Universitat Politècnica de València ( España ) en 2023
  • Idioma: español
  • Tribunal Calificador de la Tesis: José Miguel Carot Sierra (presid.), Jesús Pacheco Torres (secret.), Jesús Silva Rodríguez (voc.)
  • Programa de doctorado: Programa de Doctorado en Tecnologías para la Salud y el Bienestar por la Universitat Politècnica de València
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    • Tesis en acceso abierto en: RiuNet
  • Resumen
    • Cardiovascular diseases are one of the most predominant causes of death and comorbidity in developed countries, as such heavy investments have been done in recent decades in order to produce high quality diagnosis tools and treatment applications for cardiac diseases. One of the best proven tools to characterize the heart has been magnetic resonance imaging (MRI), thanks to its high-resolution capabilities in both spatial and temporal dimensions, allowing to generate dynamic imaging of the heart that enable accurate diagnosis. The dimensions of the left ventricle and the ejection fraction derived from them are the most powerful predictors of cardiac morbidity and mortality, and their quantification has important connotations for the management and treatment of patients. Thus, cardiac MRI is the most accurate imaging technique for left ventricular assessment. In order to get an accurate and fast diagnosis, reliable image-based biomarker computation through image processing software is needed. Nowadays most of the employed tools rely in semi-automatic Computer-Aided Diagnosis (CAD) systems that require the clinical expert to interact with it, consuming valuable time from the professionals whose aim should only be at interpreting results. A paradigm shift is starting to get into the medical sector where fully automatic CAD systems do not require any kind of user interaction. These systems are designed to compute any required biomarkers for a correct diagnosis without impacting the physician natural workflow and can start their computations the moment an image is saved within a hospital archive system.

      Automatic CAD systems, although being highly regarded as one of next big advances in the radiology world, are extremely difficult to develop and rely on Artificial Intelligence (AI) technologies in order to reach medical standards. In this context, Deep learning (DL) has emerged in the past decade as the most successful technology to address this problem. More specifically, convolutional neural networks (CNN) have been one of the most successful and studied techniques for image analysis, including medical imaging. In this work we describe the main applications of CNN for fully automatic CAD systems to help in the clinical diagnostics routine by means of cardiac MRI. The work covers the main points to take into account in order to develop such systems and presents different impactful results within the use of CNN to cardiac MRI, all separated in three different main projects covering the segmentation, automatic biomarker estimation with explainability and event detection problems.

      The full work presented describes novel and powerful approaches to apply CNN to cardiac MRI analysis. The work provides several key findings, enabling the integration in several ways of this novel but non-stop growing technology into fully automatic CAD systems that could produce highly accurate, fast and reliable results. The results described will greatly improve and impact the workflow of the clinical experts in the near future.


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