The outcome in patients with brain stroke: A deep learning neural network modeling

Background: The artificial intelligence field is obtaining ever-increasing interests for enhancing the accuracy of diagnosis and the quality of patient care. Deep learning neural network (DLNN) approach was considered in patients with brain stroke (BS) to predict and classify the outcome by the risk...

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Main Authors: Nasrin Someeh, Mohammad Asghari Jafarabadi, Seyed Morteza Shamshirgaran, Farshid Farzipoor
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2020-01-01
Series:Journal of Research in Medical Sciences
Subjects:
Online Access:http://www.jmsjournal.net/article.asp?issn=1735-1995;year=2020;volume=25;issue=1;spage=78;epage=78;aulast=Someeh
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spelling doaj-b6e5d536ef874c30b4bb2b7cd6c7988b2020-11-25T04:08:25ZengWolters Kluwer Medknow PublicationsJournal of Research in Medical Sciences1735-19951735-71362020-01-01251787810.4103/jrms.JRMS_268_20The outcome in patients with brain stroke: A deep learning neural network modelingNasrin SomeehMohammad Asghari JafarabadiSeyed Morteza ShamshirgaranFarshid FarzipoorBackground: The artificial intelligence field is obtaining ever-increasing interests for enhancing the accuracy of diagnosis and the quality of patient care. Deep learning neural network (DLNN) approach was considered in patients with brain stroke (BS) to predict and classify the outcome by the risk factors. Materials and Methods: A total of 332 patients with BS (mean age: 77.4 [standard deviation: 10.4] years, 50.6% – male) from Imam Khomeini Hospital, Ardabil, Iran, during 2008–2018 participated in this prospective study. Data were gathered from the available documents of the BS registry. Furthermore, the diagnosis of BS was considered based on computerized tomography scans and magnetic resonance imaging. The DLNN strategy was applied to predict the effects of the main risk factors on mortality. The quality of the model was measured by diagnostic indices. Results: The finding of this study for 81 selected models demonstrated that ranges of accuracy, sensitivity, and specificity are 90.5%–99.7%, 83.8%–100%, and 89.8%–99.5%, respectively. Based on the optimal model (tangent hyperbolic activation function with the minimum–maximum hidden units of 10–20, max epochs of 400, momentum of 0.5, and learning rate of 0.1), the most important predictors for BS mortality were time interval after 10 years (accuracy = 92.2%), age category (75.6%), the history of hyperlipoproteinemia (66.9%), and education level (66.9%). The other independent variables are at moderate importance (66.6%) which include sex, employment status, residential place, smoking habits, history of heart disease, cerebrovascular accident type, blood pressure, diabetes, oral contraceptive pill use, and physical activity. Conclusion: The best means for dropping the BS load is effective BS prevention. DLNN strategy showed a surprising presentation in the prediction of BS mortality based on the main risk factors with an excellent diagnostic accuracy. Moreover, the time interval after 10 years, age, the history of hyperlipoproteinemia, and education level are the most important predictors for BS.http://www.jmsjournal.net/article.asp?issn=1735-1995;year=2020;volume=25;issue=1;spage=78;epage=78;aulast=Someehbrain strokedata miningdeep learningpredictingrisk factors
collection DOAJ
language English
format Article
sources DOAJ
author Nasrin Someeh
Mohammad Asghari Jafarabadi
Seyed Morteza Shamshirgaran
Farshid Farzipoor
spellingShingle Nasrin Someeh
Mohammad Asghari Jafarabadi
Seyed Morteza Shamshirgaran
Farshid Farzipoor
The outcome in patients with brain stroke: A deep learning neural network modeling
Journal of Research in Medical Sciences
brain stroke
data mining
deep learning
predicting
risk factors
author_facet Nasrin Someeh
Mohammad Asghari Jafarabadi
Seyed Morteza Shamshirgaran
Farshid Farzipoor
author_sort Nasrin Someeh
title The outcome in patients with brain stroke: A deep learning neural network modeling
title_short The outcome in patients with brain stroke: A deep learning neural network modeling
title_full The outcome in patients with brain stroke: A deep learning neural network modeling
title_fullStr The outcome in patients with brain stroke: A deep learning neural network modeling
title_full_unstemmed The outcome in patients with brain stroke: A deep learning neural network modeling
title_sort outcome in patients with brain stroke: a deep learning neural network modeling
publisher Wolters Kluwer Medknow Publications
series Journal of Research in Medical Sciences
issn 1735-1995
1735-7136
publishDate 2020-01-01
description Background: The artificial intelligence field is obtaining ever-increasing interests for enhancing the accuracy of diagnosis and the quality of patient care. Deep learning neural network (DLNN) approach was considered in patients with brain stroke (BS) to predict and classify the outcome by the risk factors. Materials and Methods: A total of 332 patients with BS (mean age: 77.4 [standard deviation: 10.4] years, 50.6% – male) from Imam Khomeini Hospital, Ardabil, Iran, during 2008–2018 participated in this prospective study. Data were gathered from the available documents of the BS registry. Furthermore, the diagnosis of BS was considered based on computerized tomography scans and magnetic resonance imaging. The DLNN strategy was applied to predict the effects of the main risk factors on mortality. The quality of the model was measured by diagnostic indices. Results: The finding of this study for 81 selected models demonstrated that ranges of accuracy, sensitivity, and specificity are 90.5%–99.7%, 83.8%–100%, and 89.8%–99.5%, respectively. Based on the optimal model (tangent hyperbolic activation function with the minimum–maximum hidden units of 10–20, max epochs of 400, momentum of 0.5, and learning rate of 0.1), the most important predictors for BS mortality were time interval after 10 years (accuracy = 92.2%), age category (75.6%), the history of hyperlipoproteinemia (66.9%), and education level (66.9%). The other independent variables are at moderate importance (66.6%) which include sex, employment status, residential place, smoking habits, history of heart disease, cerebrovascular accident type, blood pressure, diabetes, oral contraceptive pill use, and physical activity. Conclusion: The best means for dropping the BS load is effective BS prevention. DLNN strategy showed a surprising presentation in the prediction of BS mortality based on the main risk factors with an excellent diagnostic accuracy. Moreover, the time interval after 10 years, age, the history of hyperlipoproteinemia, and education level are the most important predictors for BS.
topic brain stroke
data mining
deep learning
predicting
risk factors
url http://www.jmsjournal.net/article.asp?issn=1735-1995;year=2020;volume=25;issue=1;spage=78;epage=78;aulast=Someeh
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