Literature DB >> 34023263

Deep-Learning Models for the Echocardiographic Assessment of Diastolic Dysfunction.

Ambarish Pandey1, Nobuyuki Kagiyama2, Naveena Yanamala3, Matthew W Segar1, Jung S Cho4, Márton Tokodi5, Partho P Sengupta6.   

Abstract

OBJECTIVES: The authors explored a deep neural network (DeepNN) model that integrates multidimensional echocardiographic data to identify distinct patient subgroups with heart failure with preserved ejection fraction (HFpEF).
BACKGROUND: The clinical algorithms for phenotyping the severity of diastolic dysfunction in HFpEF remain imprecise.
METHODS: The authors developed a DeepNN model to predict high- and low-risk phenogroups in a derivation cohort (n = 1,242). Model performance was first validated in 2 external cohorts to identify elevated left ventricular filling pressure (n = 84) and assess its prognostic value (n = 219) in patients with varying degrees of systolic and diastolic dysfunction. In 3 National Heart, Lung, and Blood Institute-funded HFpEF trials, the clinical significance of the model was further validated by assessing the relationships of the phenogroups with adverse clinical outcomes (TOPCAT [Aldosterone Antagonist Therapy for Adults With Heart Failure and Preserved Systolic Function] trial, n = 518), cardiac biomarkers, and exercise parameters (NEAT-HFpEF [Nitrate's Effect on Activity Tolerance in Heart Failure With Preserved Ejection Fraction] and RELAX-HF [Evaluating the Effectiveness of Sildenafil at Improving Health Outcomes and Exercise Ability in People With Diastolic Heart Failure] pooled cohort, n = 346).
RESULTS: The DeepNN model showed higher area under the receiver-operating characteristic curve than 2016 American Society of Echocardiography guideline grades for predicting elevated left ventricular filling pressure (0.88 vs. 0.67; p = 0.01). The high-risk (vs. low-risk) phenogroup showed higher rates of heart failure hospitalization and/or death, even after adjusting for global left ventricular and atrial longitudinal strain (hazard ratio [HR]: 3.96; 95% confidence interval [CI]: 1.24 to 12.67; p = 0.021). Similarly, in the TOPCAT cohort, the high-risk (vs. low-risk) phenogroup showed higher rates of heart failure hospitalization or cardiac death (HR: 1.92; 95% CI: 1.16 to 3.22; p = 0.01) and higher event-free survival with spironolactone therapy (HR: 0.65; 95% CI: 0.46 to 0.90; p = 0.01). In the pooled RELAX-HF/NEAT-HFpEF cohort, the high-risk (vs. low-risk) phenogroup had a higher burden of chronic myocardial injury (p < 0.001), neurohormonal activation (p < 0.001), and lower exercise capacity (p = 0.001).
CONCLUSIONS: This publicly available DeepNN classifier can characterize the severity of diastolic dysfunction and identify a specific subgroup of patients with HFpEF who have elevated left ventricular filling pressures, biomarkers of myocardial injury and stress, and adverse events and those who are more likely to respond to spironolactone.
Copyright © 2021 American College of Cardiology Foundation. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  deep learning; diastolic dysfunction; echocardiography; heart failure with preserved ejection fraction

Year:  2021        PMID: 34023263     DOI: 10.1016/j.jcmg.2021.04.010

Source DB:  PubMed          Journal:  JACC Cardiovasc Imaging        ISSN: 1876-7591


  9 in total

1.  Automated algorithms in diastology: how to move forward?

Authors:  Mihai Strachinaru; Johan G Bosch
Journal:  Int J Cardiovasc Imaging       Date:  2022-02-08       Impact factor: 2.357

Review 2.  Advances in Machine Learning Approaches to Heart Failure with Preserved Ejection Fraction.

Authors:  Faraz S Ahmad; Yuan Luo; Ramsey M Wehbe; James D Thomas; Sanjiv J Shah
Journal:  Heart Fail Clin       Date:  2022-03-04       Impact factor: 3.179

3.  Electrocardiogram-Based Machine Learning Emulator Model for Predicting Novel Echocardiography-Derived Phenogroups for Cardiac Risk-Stratification: A Prospective Multicenter Cohort Study.

Authors:  Heenaben B Patel; Naveena Yanamala; Brijesh Patel; Sameer Raina; Peter D Farjo; Srinidhi Sunkara; Márton Tokodi; Nobuyuki Kagiyama; Grace Casaclang-Verzosa; Partho P Sengupta
Journal:  J Patient Cent Res Rev       Date:  2022-04-18

Review 4.  The future of heart failure with preserved ejection fraction : Deep phenotyping for targeted therapeutics.

Authors:  Frank R Heinzel; Sanjiv J Shah
Journal:  Herz       Date:  2022-06-29       Impact factor: 1.740

Review 5.  The Cardiomyocyte in Heart Failure with Preserved Ejection Fraction-Victim of Its Environment?

Authors:  Angela Rocca; Ruud B van Heeswijk; Jonas Richiardi; Philippe Meyer; Roger Hullin
Journal:  Cells       Date:  2022-03-02       Impact factor: 6.600

Review 6.  Decision Support Systems in HF based on Deep Learning Technologies.

Authors:  Marco Penso; Sarah Solbiati; Sara Moccia; Enrico G Caiani
Journal:  Curr Heart Fail Rep       Date:  2022-02-10

Review 7.  Applications of Machine Learning in Cardiology.

Authors:  Karthik Seetharam; Sudarshan Balla; Christopher Bianco; Jim Cheung; Roman Pachulski; Deepak Asti; Nikil Nalluri; Astha Tejpal; Parvez Mir; Jilan Shah; Premila Bhat; Tanveer Mir; Yasmin Hamirani
Journal:  Cardiol Ther       Date:  2022-07-12

8.  Identifying novel subgroups in heart failure patients with unsupervised machine learning: A scoping review.

Authors:  Jin Sun; Hua Guo; Wenjun Wang; Xiao Wang; Junyu Ding; Kunlun He; Xizhou Guan
Journal:  Front Cardiovasc Med       Date:  2022-07-22

Review 9.  Korotkoff sounds dynamically reflect changes in cardiac function based on deep learning methods.

Authors:  Wenting Lin; Sixiang Jia; Yiwen Chen; Hanning Shi; Jianqiang Zhao; Zhe Li; Yiteng Wu; Hangpan Jiang; Qi Zhang; Wei Wang; Yayu Chen; Chao Feng; Shudong Xia
Journal:  Front Cardiovasc Med       Date:  2022-08-26
  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.