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A neural network approach to predicting outcomes in heart failure using cardiopulmonary exercise testing
Journal article   Peer reviewed

A neural network approach to predicting outcomes in heart failure using cardiopulmonary exercise testing

Jonathan Myers, Cesar Roberto de Souza, Audrey Borghi-Silva, Marco Guazzi, Paul Chase, Daniel Bensimhon, Mary Ann Peberdy, Euan Ashley, Erin West, Lawrence P Cahalin, …
International journal of cardiology, Vol.171(2), pp.265-269
2014-02-01
PMID: 24387896

Abstract

Predictive Value of Tests Risk Assessment - methods Prognosis Follow-Up Studies Humans Middle Aged Heart Failure - physiopathology Logistic Models Male Oxygen Consumption - physiology Exercise Test Adult Female ROC Curve Aged Heart Failure - diagnosis Retrospective Studies Heart Failure - mortality Neural Networks (Computer)

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InCites Highlights

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
1 Clinical & Life Sciences
1.37 Cardiology - General
1.37.328 Heart Failure
Web Of Science research areas
Cardiac & Cardiovascular Systems
ESI research areas
Clinical Medicine

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being

Source: InCites

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