4.6 Article

MUSIC: Cardiac Imaging, Modelling and Visualisation Software for Diagnosis and Therapy

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/app12126145

Keywords

cardiac imaging; multimodal; electrophysiology; deep learning; biophysical modelling; inverse problems

Funding

  1. ANR (French National Research Agency) [10-IAHU-0004]
  2. ANR: EQUIPEX MUSIC, Plateforme multi-modale d'exploration en cardiologie [11-EQPX-0030]
  3. ERC: Starting Grant ECSTATIC, Electrostructural Tomography-Towards Multiparametric Imaging of Cardiac Electrical Disorders [715093]

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The advancement of cardiac imaging methods and predictive modeling poses challenges to current technologies in cardiology. To address this, researchers have developed a novel multimodality software platform called MUSIC for cardiovascular diagnosis and therapy guidance.
The tremendous advancement of cardiac imaging methods, the substantial progress in predictive modelling, along with the amount of new investigative multimodalities, challenge the current technologies in the cardiology field. Innovative, robust and multimodal tools need to be created in order to fuse imaging data (e.g., MR, CT) with mapped electrical activity and to integrate those into 3D biophysical models. In the past years, several cross-platform toolkits have been developed to provide image analysis tools to help build such software. The aim of this study is to introduce a novel multimodality software platform dedicated to cardiovascular diagnosis and therapy guidance: MUSIC. This platform was created to improve the image-guided cardiovascular interventional procedures and is a robust platform for AI/Deep Learning, image analysis and modelling in a newly created consortium with international hospitals. It also helps our researchers develop new techniques and have a better understanding of the cardiac tissue properties and physiological signals. Thus, this extraction of quantitative information from medical data leads to more repeatable and reliable medical diagnoses.

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