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Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study

PURPOSE: To determine if patient survival and mechanisms of right ventricular failure in pulmonary hypertension could be predicted by using supervised machine learning of three-dimensional patterns of systolic cardiac motion. MATERIALS AND METHODS: The study was approved by a research ethics committ...

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Autores principales: Dawes, Timothy J. W., de Marvao, Antonio, Shi, Wenzhe, Fletcher, Tristan, Watson, Geoffrey M. J., Wharton, John, Rhodes, Christopher J., Howard, Luke S. G. E., Gibbs, J. Simon R., Rueckert, Daniel, Cook, Stuart A., Wilkins, Martin R., O’Regan, Declan P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Radiological Society of North America 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5398374/
https://www.ncbi.nlm.nih.gov/pubmed/28092203
http://dx.doi.org/10.1148/radiol.2016161315
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author Dawes, Timothy J. W.
de Marvao, Antonio
Shi, Wenzhe
Fletcher, Tristan
Watson, Geoffrey M. J.
Wharton, John
Rhodes, Christopher J.
Howard, Luke S. G. E.
Gibbs, J. Simon R.
Rueckert, Daniel
Cook, Stuart A.
Wilkins, Martin R.
O’Regan, Declan P.
author_facet Dawes, Timothy J. W.
de Marvao, Antonio
Shi, Wenzhe
Fletcher, Tristan
Watson, Geoffrey M. J.
Wharton, John
Rhodes, Christopher J.
Howard, Luke S. G. E.
Gibbs, J. Simon R.
Rueckert, Daniel
Cook, Stuart A.
Wilkins, Martin R.
O’Regan, Declan P.
author_sort Dawes, Timothy J. W.
collection PubMed
description PURPOSE: To determine if patient survival and mechanisms of right ventricular failure in pulmonary hypertension could be predicted by using supervised machine learning of three-dimensional patterns of systolic cardiac motion. MATERIALS AND METHODS: The study was approved by a research ethics committee, and participants gave written informed consent. Two hundred fifty-six patients (143 women; mean age ± standard deviation, 63 years ± 17) with newly diagnosed pulmonary hypertension underwent cardiac magnetic resonance (MR) imaging, right-sided heart catheterization, and 6-minute walk testing with a median follow-up of 4.0 years. Semiautomated segmentation of short-axis cine images was used to create a three-dimensional model of right ventricular motion. Supervised principal components analysis was used to identify patterns of systolic motion that were most strongly predictive of survival. Survival prediction was assessed by using difference in median survival time and area under the curve with time-dependent receiver operating characteristic analysis for 1-year survival. RESULTS: At the end of follow-up, 36% of patients (93 of 256) died, and one underwent lung transplantation. Poor outcome was predicted by a loss of effective contraction in the septum and free wall, coupled with reduced basal longitudinal motion. When added to conventional imaging and hemodynamic, functional, and clinical markers, three-dimensional cardiac motion improved survival prediction (area under the receiver operating characteristic curve, 0.73 vs 0.60, respectively; P < .001) and provided greater differentiation according to difference in median survival time between high- and low-risk groups (13.8 vs 10.7 years, respectively; P < .001). CONCLUSION: A machine-learning survival model that uses three-dimensional cardiac motion predicts outcome independent of conventional risk factors in patients with newly diagnosed pulmonary hypertension. Online supplemental material is available for this article.
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spelling pubmed-53983742017-05-02 Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study Dawes, Timothy J. W. de Marvao, Antonio Shi, Wenzhe Fletcher, Tristan Watson, Geoffrey M. J. Wharton, John Rhodes, Christopher J. Howard, Luke S. G. E. Gibbs, J. Simon R. Rueckert, Daniel Cook, Stuart A. Wilkins, Martin R. O’Regan, Declan P. Radiology Original Research PURPOSE: To determine if patient survival and mechanisms of right ventricular failure in pulmonary hypertension could be predicted by using supervised machine learning of three-dimensional patterns of systolic cardiac motion. MATERIALS AND METHODS: The study was approved by a research ethics committee, and participants gave written informed consent. Two hundred fifty-six patients (143 women; mean age ± standard deviation, 63 years ± 17) with newly diagnosed pulmonary hypertension underwent cardiac magnetic resonance (MR) imaging, right-sided heart catheterization, and 6-minute walk testing with a median follow-up of 4.0 years. Semiautomated segmentation of short-axis cine images was used to create a three-dimensional model of right ventricular motion. Supervised principal components analysis was used to identify patterns of systolic motion that were most strongly predictive of survival. Survival prediction was assessed by using difference in median survival time and area under the curve with time-dependent receiver operating characteristic analysis for 1-year survival. RESULTS: At the end of follow-up, 36% of patients (93 of 256) died, and one underwent lung transplantation. Poor outcome was predicted by a loss of effective contraction in the septum and free wall, coupled with reduced basal longitudinal motion. When added to conventional imaging and hemodynamic, functional, and clinical markers, three-dimensional cardiac motion improved survival prediction (area under the receiver operating characteristic curve, 0.73 vs 0.60, respectively; P < .001) and provided greater differentiation according to difference in median survival time between high- and low-risk groups (13.8 vs 10.7 years, respectively; P < .001). CONCLUSION: A machine-learning survival model that uses three-dimensional cardiac motion predicts outcome independent of conventional risk factors in patients with newly diagnosed pulmonary hypertension. Online supplemental material is available for this article. Radiological Society of North America 2017-05 2017-01-16 /pmc/articles/PMC5398374/ /pubmed/28092203 http://dx.doi.org/10.1148/radiol.2016161315 Text en http://creativecommons.org/licenses/by-nc-nd/4.0/ Published under a (http://creativecommons.org/licenses/by-nc-nd/4.0/) CC BY-NC-ND 4.0 license.
spellingShingle Original Research
Dawes, Timothy J. W.
de Marvao, Antonio
Shi, Wenzhe
Fletcher, Tristan
Watson, Geoffrey M. J.
Wharton, John
Rhodes, Christopher J.
Howard, Luke S. G. E.
Gibbs, J. Simon R.
Rueckert, Daniel
Cook, Stuart A.
Wilkins, Martin R.
O’Regan, Declan P.
Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title_full Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title_fullStr Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title_full_unstemmed Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title_short Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
title_sort machine learning of three-dimensional right ventricular motion enables outcome prediction in pulmonary hypertension: a cardiac mr imaging study
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5398374/
https://www.ncbi.nlm.nih.gov/pubmed/28092203
http://dx.doi.org/10.1148/radiol.2016161315
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