Multi-modality cardiac image computing: a survey

<p>Multi-modality cardiac imaging plays a key role in the management of patients with cardiovascular diseases. It allows a combination of complementary anatomical, morphological and functional information, increases diagnosis accuracy, and improves the efficacy of cardiovascular interventions...

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Main Authors: Li, L, Ding, W, Huang, L, Zhuang, X, Grau, V
Format: Journal article
Language:English
Published: Elsevier 2023
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author Li, L
Ding, W
Huang, L
Zhuang, X
Grau, V
author_facet Li, L
Ding, W
Huang, L
Zhuang, X
Grau, V
author_sort Li, L
collection OXFORD
description <p>Multi-modality cardiac imaging plays a key role in the management of patients with cardiovascular diseases. It allows a combination of complementary anatomical, morphological and functional information, increases diagnosis accuracy, and improves the efficacy of cardiovascular interventions and clinical outcomes. Fully-automated processing and quantitative analysis of multi-modality cardiac images could have a direct impact on clinical research and evidence-based patient management. However, these require overcoming significant challenges including inter-modality misalignment and finding optimal methods to integrate information from different modalities.</p> <p>This paper aims to provide a comprehensive review of multi-modality imaging in cardiology, the computing methods, the validation strategies, the related clinical workflows and future perspectives. For the computing methodologies, we have a favored focus on the three tasks, i.e., registration, fusion and segmentation, which generally involve multi-modality imaging data, <em>either combining information from different modalities or transferring information across modalities</em>. The review highlights that multi-modality cardiac imaging data has the potential of wide applicability in the clinic, such as trans-aortic valve implantation guidance, myocardial viability assessment, and catheter ablation therapy and its patient selection. Nevertheless, many challenges remain unsolved, such as missing modality, modality selection, combination of imaging and non-imaging data, and uniform analysis and representation of different modalities. There is also work to do in defining how the well-developed techniques fit in clinical workflows and how much additional and relevant information they introduce. These problems are likely to continue to be an active field of research and the questions to be answered in the future.</p>
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spelling oxford-uuid:0363579a-e181-49ea-90df-ed82579dc2a52023-09-15T06:14:24ZMulti-modality cardiac image computing: a surveyJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:0363579a-e181-49ea-90df-ed82579dc2a5EnglishSymplectic ElementsElsevier2023Li, LDing, WHuang, LZhuang, XGrau, V<p>Multi-modality cardiac imaging plays a key role in the management of patients with cardiovascular diseases. It allows a combination of complementary anatomical, morphological and functional information, increases diagnosis accuracy, and improves the efficacy of cardiovascular interventions and clinical outcomes. Fully-automated processing and quantitative analysis of multi-modality cardiac images could have a direct impact on clinical research and evidence-based patient management. However, these require overcoming significant challenges including inter-modality misalignment and finding optimal methods to integrate information from different modalities.</p> <p>This paper aims to provide a comprehensive review of multi-modality imaging in cardiology, the computing methods, the validation strategies, the related clinical workflows and future perspectives. For the computing methodologies, we have a favored focus on the three tasks, i.e., registration, fusion and segmentation, which generally involve multi-modality imaging data, <em>either combining information from different modalities or transferring information across modalities</em>. The review highlights that multi-modality cardiac imaging data has the potential of wide applicability in the clinic, such as trans-aortic valve implantation guidance, myocardial viability assessment, and catheter ablation therapy and its patient selection. Nevertheless, many challenges remain unsolved, such as missing modality, modality selection, combination of imaging and non-imaging data, and uniform analysis and representation of different modalities. There is also work to do in defining how the well-developed techniques fit in clinical workflows and how much additional and relevant information they introduce. These problems are likely to continue to be an active field of research and the questions to be answered in the future.</p>
spellingShingle Li, L
Ding, W
Huang, L
Zhuang, X
Grau, V
Multi-modality cardiac image computing: a survey
title Multi-modality cardiac image computing: a survey
title_full Multi-modality cardiac image computing: a survey
title_fullStr Multi-modality cardiac image computing: a survey
title_full_unstemmed Multi-modality cardiac image computing: a survey
title_short Multi-modality cardiac image computing: a survey
title_sort multi modality cardiac image computing a survey
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AT dingw multimodalitycardiacimagecomputingasurvey
AT huangl multimodalitycardiacimagecomputingasurvey
AT zhuangx multimodalitycardiacimagecomputingasurvey
AT grauv multimodalitycardiacimagecomputingasurvey