Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.

INTRODUCTION: Stroke is a major cause of death and disability. Accurately predicting stroke outcome from a set of predictive variables may identify high-risk patients and guide treatment approaches, leading to decreased morbidity. Logistic regression models allow for the identification and validatio...

Full description

Bibliographic Details
Main Authors: Hamed Asadi, Richard Dowling, Bernard Yan, Peter Mitchell
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3919736?pdf=render
id doaj-aec87dd09ac744f6b606f319e62c01ac
record_format Article
spelling doaj-aec87dd09ac744f6b606f319e62c01ac2020-11-25T01:11:59ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0192e8822510.1371/journal.pone.0088225Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.Hamed AsadiRichard DowlingBernard YanPeter MitchellINTRODUCTION: Stroke is a major cause of death and disability. Accurately predicting stroke outcome from a set of predictive variables may identify high-risk patients and guide treatment approaches, leading to decreased morbidity. Logistic regression models allow for the identification and validation of predictive variables. However, advanced machine learning algorithms offer an alternative, in particular, for large-scale multi-institutional data, with the advantage of easily incorporating newly available data to improve prediction performance. Our aim was to design and compare different machine learning methods, capable of predicting the outcome of endovascular intervention in acute anterior circulation ischaemic stroke. METHOD: We conducted a retrospective study of a prospectively collected database of acute ischaemic stroke treated by endovascular intervention. Using SPSS®, MATLAB®, and Rapidminer®, classical statistics as well as artificial neural network and support vector algorithms were applied to design a supervised machine capable of classifying these predictors into potential good and poor outcomes. These algorithms were trained, validated and tested using randomly divided data. RESULTS: We included 107 consecutive acute anterior circulation ischaemic stroke patients treated by endovascular technique. Sixty-six were male and the mean age of 65.3. All the available demographic, procedural and clinical factors were included into the models. The final confusion matrix of the neural network, demonstrated an overall congruency of ∼ 80% between the target and output classes, with favourable receiving operative characteristics. However, after optimisation, the support vector machine had a relatively better performance, with a root mean squared error of 2.064 (SD: ± 0.408). DISCUSSION: We showed promising accuracy of outcome prediction, using supervised machine learning algorithms, with potential for incorporation of larger multicenter datasets, likely further improving prediction. Finally, we propose that a robust machine learning system can potentially optimise the selection process for endovascular versus medical treatment in the management of acute stroke.http://europepmc.org/articles/PMC3919736?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Hamed Asadi
Richard Dowling
Bernard Yan
Peter Mitchell
spellingShingle Hamed Asadi
Richard Dowling
Bernard Yan
Peter Mitchell
Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
PLoS ONE
author_facet Hamed Asadi
Richard Dowling
Bernard Yan
Peter Mitchell
author_sort Hamed Asadi
title Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
title_short Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
title_full Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
title_fullStr Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
title_full_unstemmed Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
title_sort machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description INTRODUCTION: Stroke is a major cause of death and disability. Accurately predicting stroke outcome from a set of predictive variables may identify high-risk patients and guide treatment approaches, leading to decreased morbidity. Logistic regression models allow for the identification and validation of predictive variables. However, advanced machine learning algorithms offer an alternative, in particular, for large-scale multi-institutional data, with the advantage of easily incorporating newly available data to improve prediction performance. Our aim was to design and compare different machine learning methods, capable of predicting the outcome of endovascular intervention in acute anterior circulation ischaemic stroke. METHOD: We conducted a retrospective study of a prospectively collected database of acute ischaemic stroke treated by endovascular intervention. Using SPSS®, MATLAB®, and Rapidminer®, classical statistics as well as artificial neural network and support vector algorithms were applied to design a supervised machine capable of classifying these predictors into potential good and poor outcomes. These algorithms were trained, validated and tested using randomly divided data. RESULTS: We included 107 consecutive acute anterior circulation ischaemic stroke patients treated by endovascular technique. Sixty-six were male and the mean age of 65.3. All the available demographic, procedural and clinical factors were included into the models. The final confusion matrix of the neural network, demonstrated an overall congruency of ∼ 80% between the target and output classes, with favourable receiving operative characteristics. However, after optimisation, the support vector machine had a relatively better performance, with a root mean squared error of 2.064 (SD: ± 0.408). DISCUSSION: We showed promising accuracy of outcome prediction, using supervised machine learning algorithms, with potential for incorporation of larger multicenter datasets, likely further improving prediction. Finally, we propose that a robust machine learning system can potentially optimise the selection process for endovascular versus medical treatment in the management of acute stroke.
url http://europepmc.org/articles/PMC3919736?pdf=render
work_keys_str_mv AT hamedasadi machinelearningforoutcomepredictionofacuteischemicstrokepostintraarterialtherapy
AT richarddowling machinelearningforoutcomepredictionofacuteischemicstrokepostintraarterialtherapy
AT bernardyan machinelearningforoutcomepredictionofacuteischemicstrokepostintraarterialtherapy
AT petermitchell machinelearningforoutcomepredictionofacuteischemicstrokepostintraarterialtherapy
_version_ 1725168364006932480