Literature DB >> 32161041

Prediction of prognosis in patients with tetralogy of Fallot based on deep learning imaging analysis.

Gerhard Paul Diller1, Stefan Orwat2, Julius Vahle2, Ulrike M M Bauer3,4, Aleksandra Urban4, Samir Sarikouch5, Felix Berger6,7, Philipp Beerbaum8, Helmut Baumgartner2.   

Abstract

OBJECTIVE: To assess the utility of machine learning algorithms for automatically estimating prognosis in patients with repaired tetralogy of Fallot (ToF) using cardiac magnetic resonance (CMR).
METHODS: We included 372 patients with ToF who had undergone CMR imaging as part of a nationwide prospective study. Cine loops were retrieved and subjected to automatic deep learning (DL)-based image analysis, trained on independent, local CMR data, to derive measures of cardiac dimensions and function. This information was combined with established clinical parameters and ECG markers of prognosis.
RESULTS: Over a median follow-up period of 10 years, 23 patients experienced an endpoint of death/aborted cardiac arrest or documented ventricular tachycardia (defined as >3 documented consecutive ventricular beats). On univariate Cox analysis, various DL parameters, including right atrial median area (HR 1.11/cm², p=0.003) and right ventricular long-axis strain (HR 0.80/%, p=0.009) emerged as significant predictors of outcome. DL parameters were related to adverse outcome independently of left and right ventricular ejection fraction and peak oxygen uptake (p<0.05 for all). A composite score of enlarged right atrial area and depressed right ventricular longitudinal function identified a ToF subgroup at significantly increased risk of adverse outcome (HR 2.1/unit, p=0.007).
CONCLUSIONS: We present data on the utility of machine learning algorithms trained on external imaging datasets to automatically estimate prognosis in patients with ToF. Due to the automated analysis process these two-dimensional-based algorithms may serve as surrogates for labour-intensive manually attained imaging parameters in patients with ToF. © Author(s) (or their employer(s)) 2020. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  advanced cardiac imaging; cardiac magnetic resonance (CMR) imaging; congenital heart disease; tetralogy of Fallot

Mesh:

Year:  2020        PMID: 32161041     DOI: 10.1136/heartjnl-2019-315962

Source DB:  PubMed          Journal:  Heart        ISSN: 1355-6037            Impact factor:   5.994


  12 in total

1.  Predicting adverse cardiac events in sarcoidosis: deep learning from automated characterization of regional myocardial remodeling.

Authors:  Chenying Lu; Yi Grace Wang; Fahim Zaman; Xiaodong Wu; Mehul Adhaduk; Amanda Chang; Jiansong Ji; Tiemin Wei; Promporn Suksaranjit; Georgios Christodoulidis; Ernest Scalzetti; Yuchi Han; David Feiglin; Kan Liu
Journal:  Int J Cardiovasc Imaging       Date:  2022-02-22       Impact factor: 2.357

Review 2.  Changing epidemiology of congenital heart disease: effect on outcomes and quality of care in adults.

Authors:  Aihua Liu; Gerhard-Paul Diller; Philip Moons; Curt J Daniels; Kathy J Jenkins; Ariane Marelli
Journal:  Nat Rev Cardiol       Date:  2022-08-31       Impact factor: 49.421

3.  GENESIS: Gene-Specific Machine Learning Models for Variants of Uncertain Significance Found in Catecholaminergic Polymorphic Ventricular Tachycardia and Long QT Syndrome-Associated Genes.

Authors:  Rachel L Draelos; Jordan E Ezekian; Farica Zhuang; Mary E Moya-Mendez; Zhushan Zhang; Michael B Rosamilia; Perathu K R Manivannan; Ricardo Henao; Andrew P Landstrom
Journal:  Circ Arrhythm Electrophysiol       Date:  2022-03-31

Review 4.  The role of machine learning applications in diagnosing and assessing critical and non-critical CHD: a scoping review.

Authors:  Stephanie M Helman; Elizabeth A Herrup; Adam B Christopher; Salah S Al-Zaiti
Journal:  Cardiol Young       Date:  2021-11-02       Impact factor: 1.093

Review 5.  Artificial Intelligence in Cardiac MRI: Is Clinical Adoption Forthcoming?

Authors:  Anastasia Fotaki; Esther Puyol-Antón; Amedeo Chiribiri; René Botnar; Kuberan Pushparajah; Claudia Prieto
Journal:  Front Cardiovasc Med       Date:  2022-01-10

6.  Medicine-Based Evidence in Congenital Heart Disease: How Artificial Intelligence Can Guide Treatment Decisions for Individual Patients.

Authors:  Jef Van den Eynde; Cedric Manlhiot; Alexander Van De Bruaene; Gerhard-Paul Diller; Alejandro F Frangi; Werner Budts; Shelby Kutty
Journal:  Front Cardiovasc Med       Date:  2021-12-02

7.  Machine learning techniques for arrhythmic risk stratification: a review of the literature.

Authors:  Cheuk To Chung; George Bazoukis; Sharen Lee; Ying Liu; Tong Liu; Konstantinos P Letsas; Antonis A Armoundas; Gary Tse
Journal:  Int J Arrhythmia       Date:  2022-04-01

8.  Le Cœur en Sabot: shape associations with adverse events in repaired tetralogy of Fallot.

Authors:  Anna Mîra; Pablo Lamata; Kuberan Pushparajah; Georgina Abraham; Charlène A Mauger; Andrew D McCulloch; Jeffrey H Omens; Malenka M Bissell; Zach Blair; Tyler Huffaker; Animesh Tandon; Sandy Engelhardt; Sven Koehler; Thomas Pickardt; Philipp Beerbaum; Samir Sarikouch; Heiner Latus; Gerald Greil; Alistair A Young; Tarique Hussain
Journal:  J Cardiovasc Magn Reson       Date:  2022-08-04       Impact factor: 6.903

Review 9.  The Role of Artificial Intelligence in Predicting Outcomes by Cardiovascular Magnetic Resonance: A Comprehensive Systematic Review.

Authors:  Hosamadin Assadi; Samer Alabed; Ahmed Maiter; Mahan Salehi; Rui Li; David P Ripley; Rob J Van der Geest; Yumin Zhong; Liang Zhong; Andrew J Swift; Pankaj Garg
Journal:  Medicina (Kaunas)       Date:  2022-08-12       Impact factor: 2.948

10.  Regulation of Quality of Life and Immune Function in Patients with Thyroid Cancer Treated by Deep Learning Technology.

Authors:  Xiandong Fu; Xinxin Yang; Yibo Wang; Nannan Chi; Jianan Yu; Yao Feng
Journal:  Contrast Media Mol Imaging       Date:  2022-08-30       Impact factor: 3.009

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