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Recurrent disease progression networks for modelling risk trajectory of heart failure

MOTIVATION: Recurrent neural networks (RNN) are powerful frameworks to model medical time series records. Recent studies showed improved accuracy of predicting future medical events (e.g., readmission, mortality) by leveraging large amount of high-dimensional data. However, very few studies have exp...

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Autores principales: Lu, Xing Han, Liu, Aihua, Fuh, Shih-Chieh, Lian, Yi, Guo, Liming, Yang, Yi, Marelli, Ariane, Li, Yue
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787457/
https://www.ncbi.nlm.nih.gov/pubmed/33406155
http://dx.doi.org/10.1371/journal.pone.0245177
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author Lu, Xing Han
Liu, Aihua
Fuh, Shih-Chieh
Lian, Yi
Guo, Liming
Yang, Yi
Marelli, Ariane
Li, Yue
author_facet Lu, Xing Han
Liu, Aihua
Fuh, Shih-Chieh
Lian, Yi
Guo, Liming
Yang, Yi
Marelli, Ariane
Li, Yue
author_sort Lu, Xing Han
collection PubMed
description MOTIVATION: Recurrent neural networks (RNN) are powerful frameworks to model medical time series records. Recent studies showed improved accuracy of predicting future medical events (e.g., readmission, mortality) by leveraging large amount of high-dimensional data. However, very few studies have explored the ability of RNN in predicting long-term trajectories of recurrent events, which is more informative than predicting one single event in directing medical intervention. METHODS: In this study, we focus on heart failure (HF) which is the leading cause of death among cardiovascular diseases. We present a novel RNN framework named Deep Heart-failure Trajectory Model (DHTM) for modelling the long-term trajectories of recurrent HF. DHTM auto-regressively predicts the future HF onsets of each patient and uses the predicted HF as input to predict the HF event at the next time point. Furthermore, we propose an augmented DHTM named DHTM+C (where “C” stands for co-morbidities), which jointly predicts both the HF and a set of acute co-morbidities diagnoses. To efficiently train the DHTM+C model, we devised a novel RNN architecture to model disease progression implicated in the co-morbidities. RESULTS: Our deep learning models confers higher prediction accuracy for both the next-step HF prediction and the HF trajectory prediction compared to the baseline non-neural network models and the baseline RNN model. Compared to DHTM, DHTM+C is able to output higher probability of HF for high-risk patients, even in cases where it is only given less than 2 years of data to predict over 5 years of trajectory. We illustrated multiple non-trivial real patient examples of complex HF trajectories, indicating a promising path for creating highly accurate and scalable longitudinal deep learning models for modeling the chronic disease.
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spelling pubmed-77874572021-01-14 Recurrent disease progression networks for modelling risk trajectory of heart failure Lu, Xing Han Liu, Aihua Fuh, Shih-Chieh Lian, Yi Guo, Liming Yang, Yi Marelli, Ariane Li, Yue PLoS One Research Article MOTIVATION: Recurrent neural networks (RNN) are powerful frameworks to model medical time series records. Recent studies showed improved accuracy of predicting future medical events (e.g., readmission, mortality) by leveraging large amount of high-dimensional data. However, very few studies have explored the ability of RNN in predicting long-term trajectories of recurrent events, which is more informative than predicting one single event in directing medical intervention. METHODS: In this study, we focus on heart failure (HF) which is the leading cause of death among cardiovascular diseases. We present a novel RNN framework named Deep Heart-failure Trajectory Model (DHTM) for modelling the long-term trajectories of recurrent HF. DHTM auto-regressively predicts the future HF onsets of each patient and uses the predicted HF as input to predict the HF event at the next time point. Furthermore, we propose an augmented DHTM named DHTM+C (where “C” stands for co-morbidities), which jointly predicts both the HF and a set of acute co-morbidities diagnoses. To efficiently train the DHTM+C model, we devised a novel RNN architecture to model disease progression implicated in the co-morbidities. RESULTS: Our deep learning models confers higher prediction accuracy for both the next-step HF prediction and the HF trajectory prediction compared to the baseline non-neural network models and the baseline RNN model. Compared to DHTM, DHTM+C is able to output higher probability of HF for high-risk patients, even in cases where it is only given less than 2 years of data to predict over 5 years of trajectory. We illustrated multiple non-trivial real patient examples of complex HF trajectories, indicating a promising path for creating highly accurate and scalable longitudinal deep learning models for modeling the chronic disease. Public Library of Science 2021-01-06 /pmc/articles/PMC7787457/ /pubmed/33406155 http://dx.doi.org/10.1371/journal.pone.0245177 Text en © 2021 Lu et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Lu, Xing Han
Liu, Aihua
Fuh, Shih-Chieh
Lian, Yi
Guo, Liming
Yang, Yi
Marelli, Ariane
Li, Yue
Recurrent disease progression networks for modelling risk trajectory of heart failure
title Recurrent disease progression networks for modelling risk trajectory of heart failure
title_full Recurrent disease progression networks for modelling risk trajectory of heart failure
title_fullStr Recurrent disease progression networks for modelling risk trajectory of heart failure
title_full_unstemmed Recurrent disease progression networks for modelling risk trajectory of heart failure
title_short Recurrent disease progression networks for modelling risk trajectory of heart failure
title_sort recurrent disease progression networks for modelling risk trajectory of heart failure
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787457/
https://www.ncbi.nlm.nih.gov/pubmed/33406155
http://dx.doi.org/10.1371/journal.pone.0245177
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