Literature DB >> 27770718

A framework for combining a motion atlas with non-motion information to learn clinically useful biomarkers: Application to cardiac resynchronisation therapy response prediction.

Devis Peressutti1, Matthew Sinclair2, Wenjia Bai3, Thomas Jackson2, Jacobus Ruijsink2, David Nordsletten2, Liya Asner2, Myrianthi Hadjicharalambous2, Christopher A Rinaldi2, Daniel Rueckert3, Andrew P King4.   

Abstract

We present a framework for combining a cardiac motion atlas with non-motion data. The atlas represents cardiac cycle motion across a number of subjects in a common space based on rich motion descriptors capturing 3D displacement, velocity, strain and strain rate. The non-motion data are derived from a variety of sources such as imaging, electrocardiogram (ECG) and clinical reports. Once in the atlas space, we apply a novel supervised learning approach based on random projections and ensemble learning to learn the relationship between the atlas data and some desired clinical output. We apply our framework to the problem of predicting response to Cardiac Resynchronisation Therapy (CRT). Using a cohort of 34 patients selected for CRT using conventional criteria, results show that the combination of motion and non-motion data enables CRT response to be predicted with 91.2% accuracy (100% sensitivity and 62.5% specificity), which compares favourably with the current state-of-the-art in CRT response prediction.
Copyright © 2016 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Cardiac resynchronisation therapy; Multiple kernel learning; Random projections; Spatio-temporal atlas

Mesh:

Substances:

Year:  2016        PMID: 27770718     DOI: 10.1016/j.media.2016.10.002

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  6 in total

Review 1.  The Applications of Artificial Intelligence in Cardiovascular Magnetic Resonance-A Comprehensive Review.

Authors:  Adriana Argentiero; Giuseppe Muscogiuri; Mark G Rabbat; Chiara Martini; Nicolò Soldato; Paolo Basile; Andrea Baggiano; Saima Mushtaq; Laura Fusini; Maria Elisabetta Mancini; Nicola Gaibazzi; Vincenzo Ezio Santobuono; Sandro Sironi; Gianluca Pontone; Andrea Igoren Guaricci
Journal:  J Clin Med       Date:  2022-05-19       Impact factor: 4.964

Review 2.  Cardiac MRI-Update 2020.

Authors:  Anke Busse; Rengarajan Rajagopal; Seyrani Yücel; Ebba Beller; Alper Öner; Felix Streckenbach; Daniel Cantré; Hüseyin Ince; Marc-André Weber; Felix G Meinel
Journal:  Radiologe       Date:  2020-11       Impact factor: 0.635

3.  A deep-learning semantic segmentation approach to fully automated MRI-based left-ventricular deformation analysis in cardiotoxicity.

Authors:  By Julia Kar; Michael V Cohen; Samuel P McQuiston; Christopher M Malozzi
Journal:  Magn Reson Imaging       Date:  2021-02-08       Impact factor: 2.546

4.  Interpretable Deep Models for Cardiac Resynchronisation Therapy Response Prediction.

Authors:  Esther Puyol-Antón; Chen Chen; James R Clough; Bram Ruijsink; Baldeep S Sidhu; Justin Gould; Bradley Porter; Marc Elliott; Vishal Mehta; Daniel Rueckert; Christopher A Rinaldi; Andrew P King
Journal:  Med Image Comput Comput Assist Interv       Date:  2020-09-29

Review 5.  Machine learning in cardiovascular magnetic resonance: basic concepts and applications.

Authors:  Tim Leiner; Daniel Rueckert; Avan Suinesiaputra; Bettina Baeßler; Reza Nezafat; Ivana Išgum; Alistair A Young
Journal:  J Cardiovasc Magn Reson       Date:  2019-10-07       Impact factor: 5.364

Review 6.  The Role of AI in Characterizing the DCM Phenotype.

Authors:  Clint Asher; Esther Puyol-Antón; Maleeha Rizvi; Bram Ruijsink; Amedeo Chiribiri; Reza Razavi; Gerry Carr-White
Journal:  Front Cardiovasc Med       Date:  2021-12-21
  6 in total

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