Literature DB >> 30888519

LSTM Model for Prediction of Heart Failure in Big Data.

G Maragatham1, Shobana Devi2.   

Abstract

The combination of big data and deep learning is a world-shattering technology that can make a great impact on any industry if used in a proper way. With the availability of large volume of health care datasets and progressions in deep learning techniques, systems are now well equipped in diagnosing many health problems. Utilizing the intensity of substantial historical information in electronic health record (EHR), we built up, a conventional predictive temporal model utilizing recurrent neural systems (RNN) like LSTM and connected to longitudinal time stepped EHR. Experience records were contribution to RNN to anticipate the analysis and prescription classes for a resulting visit during heart disappointment (e.g. diagnosis codes, drug codes or method codes). In this paper, we also investigated whether use of deep learning to model temporal relations among events in electronic health records (EHRs) would enhance the model performance in predicting initial diagnosis of heart failure (HF) compared to some of the traditional methods that disregard temporality. By examining these time stamped EHRs, we could recognize the associations between various diagnosis occasions and finally predicate when a patient is being analyzed for a disease. In any case, it is hard to access the current EHR data straightforwardly, since almost all data are sparse and not standardized. Along these lines, we proposed a robust model for prediction of heart failure. The fundamental commitment of this paper is to predict the failure of heart by means of a neural network model based on patient's electronic medicinal information. In order to, demonstrate the diagnosis events and prediction of heart failure, we used the medical concept vectors and the essential standards of a long short-term memory (LSTM) deep network model. The proposed LSTM model uses SiLU and tanh as activation function in the hidden layers and Softmax in output layer in the network. Bridgeout is used as a regularization technique for weight optimization throughout the network. Assessments subject to the real-time data exhibit the favorable effectiveness and feasibility of recommended model in the risk of heart failure prediction. The results showed improved accuracy in heart failure detection and the model performance is compared using the existing deep learning models. Enhanced prior detection could expose novel chances for deferring or anticipating movement to analysis of heart failure and diminish cost.

Entities:  

Keywords:  Electronic health record; LSTM Model; Long short-term memory; Recurrent neural systems

Mesh:

Year:  2019        PMID: 30888519     DOI: 10.1007/s10916-019-1243-3

Source DB:  PubMed          Journal:  J Med Syst        ISSN: 0148-5598            Impact factor:   4.460


  23 in total

1.  Prediction modeling using EHR data: challenges, strategies, and a comparison of machine learning approaches.

Authors:  Jionglin Wu; Jason Roy; Walter F Stewart
Journal:  Med Care       Date:  2010-06       Impact factor: 2.983

2.  Long short-term memory.

Authors:  S Hochreiter; J Schmidhuber
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3.  A predictive model for progression of chronic kidney disease to kidney failure.

Authors:  Navdeep Tangri; Lesley A Stevens; John Griffith; Hocine Tighiouart; Ognjenka Djurdjev; David Naimark; Adeera Levin; Andrew S Levey
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4.  Modeling disease progression via multi-task learning.

Authors:  Jiayu Zhou; Jun Liu; Vaibhav A Narayan; Jieping Ye
Journal:  Neuroimage       Date:  2013-04-12       Impact factor: 6.556

5.  Contemporary prevalence and correlates of incident heart failure with preserved ejection fraction.

Authors:  Jerry H Gurwitz; David J Magid; David H Smith; Robert J Goldberg; David D McManus; Larry A Allen; Jane S Saczynski; Micah L Thorp; Grace Hsu; Sue Hee Sung; Alan S Go
Journal:  Am J Med       Date:  2013-03-14       Impact factor: 4.965

6.  Longitudinal modeling of glaucoma progression using 2-dimensional continuous-time hidden Markov model.

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7.  Disease progression modeling using Hidden Markov Models.

Authors:  Rafid Sukkar; Elyse Katz; Yanwei Zhang; David Raunig; Bradley T Wyman
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2012

8.  Combining knowledge and data driven insights for identifying risk factors using electronic health records.

Authors:  Jimeng Sun; Jianying Hu; Dijun Luo; Marianthi Markatou; Fei Wang; Shahram Edabollahi; Steven E Steinhubl; Zahra Daar; Walter F Stewart
Journal:  AMIA Annu Symp Proc       Date:  2012-11-03

9.  Prevalence of heart failure signs and symptoms in a large primary care population identified through the use of text and data mining of the electronic health record.

Authors:  Rajakrishnan Vijayakrishnan; Steven R Steinhubl; Kenney Ng; Jimeng Sun; Roy J Byrd; Zahra Daar; Brent A Williams; Christopher deFilippi; Shahram Ebadollahi; Walter F Stewart
Journal:  J Card Fail       Date:  2014-04-04       Impact factor: 5.712

10.  Learning Low-Dimensional Representations of Medical Concepts.

Authors:  Youngduck Choi; Chill Yi-I Chiu; David Sontag
Journal:  AMIA Jt Summits Transl Sci Proc       Date:  2016-07-20
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  26 in total

1.  Representation of EHR data for predictive modeling: a comparison between UMLS and other terminologies.

Authors:  Laila Rasmy; Firat Tiryaki; Yujia Zhou; Yang Xiang; Cui Tao; Hua Xu; Degui Zhi
Journal:  J Am Med Inform Assoc       Date:  2020-10-01       Impact factor: 4.497

Review 2.  Utilizing Artificial Intelligence to Enhance Health Equity Among Patients with Heart Failure.

Authors:  Amber E Johnson; LaPrincess C Brewer; Melvin R Echols; Sula Mazimba; Rashmee U Shah; Khadijah Breathett
Journal:  Heart Fail Clin       Date:  2022-03-04       Impact factor: 3.179

3.  Concurrent Imputation and Prediction on EHR data using Bi-Directional GANs: Bi-GANs for EHR imputation and prediction.

Authors:  Mehak Gupta; H Timothy Bunnell; Thao-Ly T Phan; Rahmatollah Beheshti
Journal:  ACM BCB       Date:  2021-08

4.  Obesity Prediction with EHR Data: A deep learning approach with interpretable elements.

Authors:  Mehak Gupta; Thao-Ly T Phan; H Timothy Bunnell; Rahmatollah Beheshti
Journal:  ACM Trans Comput Healthc       Date:  2022-04-07

5.  Management and Analysis of Sports Health Level of the Elderly Based on Deep Learning.

Authors:  Liping Xiao; Limin Huang; Hongxia Chang; Li Ji; Ji Li
Journal:  Comput Intell Neurosci       Date:  2022-06-30

6.  The Prediction of Preterm Birth Using Time-Series Technology-Based Machine Learning: Retrospective Cohort Study.

Authors:  Yichao Zhang; Sha Lu; Yina Wu; Wensheng Hu; Zhenming Yuan
Journal:  JMIR Med Inform       Date:  2022-06-13

7.  A hybrid of long short-term memory neural network and autoregressive integrated moving average model in forecasting HIV incidence and morality of post-neonatal population in East Asia: global burden of diseases 2000-2019.

Authors:  Ying Chen; Jiawen He; Meihua Wang
Journal:  BMC Public Health       Date:  2022-10-19       Impact factor: 4.135

8.  Predicting late symptoms of head and neck cancer treatment using LSTM and patient reported outcomes.

Authors:  Yaohua Wang; Lisanne Van Dijk; Abdallah S R Mohamed; Clifton David Fuller; Xinhua Zhang; G Elisabeta Marai; Guadalupe Canahuate
Journal:  Proc Int Database Eng Appl Symp       Date:  2021-09-07

Review 9.  Short-Term Therapies for Treatment of Acute and Advanced Heart Failure-Why so Few Drugs Available in Clinical Use, Why Even Fewer in the Pipeline?

Authors:  Piero Pollesello; Tuvia Ben Gal; Dominique Bettex; Vladimir Cerny; Josep Comin-Colet; Alexandr A Eremenko; Dimitrios Farmakis; Francesco Fedele; Cândida Fonseca; Veli-Pekka Harjola; Antoine Herpain; Matthias Heringlake; Leo Heunks; Trygve Husebye; Visnja Ivancan; Kristian Karason; Sundeep Kaul; Jacek Kubica; Alexandre Mebazaa; Henning Mølgaard; John Parissis; Alexander Parkhomenko; Pentti Põder; Gerhard Pölzl; Bojan Vrtovec; Mehmet B Yilmaz; Zoltan Papp
Journal:  J Clin Med       Date:  2019-11-01       Impact factor: 4.241

Review 10.  Applied machine learning and artificial intelligence in rheumatology.

Authors:  Maria Hügle; Patrick Omoumi; Jacob M van Laar; Joschka Boedecker; Thomas Hügle
Journal:  Rheumatol Adv Pract       Date:  2020-02-19
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