Cargando…

Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis

Aim: The prediction of functional outcome is essential in the management of acute ischemic stroke patients. We aimed to explore the various prognostic factors with multivariate linear discriminant analysis or neural network analysis and evaluate the associations between candidate factors, baseline c...

Descripción completa

Detalles Bibliográficos
Autores principales: Nezu, Tomohisa, Hosomi, Naohisa, Yoshimura, Kazumasa, Kuzume, Daisuke, Naito, Hiroyuki, Aoki, Shiro, Morimoto, Yuko, Kinboshi, Masato, Yoshida, Takeshi, Shiga, Yuji, Kinoshita, Naoto, Furui, Akira, Tabuchi, Genta, Ueno, Hiroki, Tsuji, Toshio, Maruyama, Hirofumi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Japan Atherosclerosis Society 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8737069/
https://www.ncbi.nlm.nih.gov/pubmed/33298664
http://dx.doi.org/10.5551/jat.59642
_version_ 1784628604247736320
author Nezu, Tomohisa
Hosomi, Naohisa
Yoshimura, Kazumasa
Kuzume, Daisuke
Naito, Hiroyuki
Aoki, Shiro
Morimoto, Yuko
Kinboshi, Masato
Yoshida, Takeshi
Shiga, Yuji
Kinoshita, Naoto
Furui, Akira
Tabuchi, Genta
Ueno, Hiroki
Tsuji, Toshio
Maruyama, Hirofumi
author_facet Nezu, Tomohisa
Hosomi, Naohisa
Yoshimura, Kazumasa
Kuzume, Daisuke
Naito, Hiroyuki
Aoki, Shiro
Morimoto, Yuko
Kinboshi, Masato
Yoshida, Takeshi
Shiga, Yuji
Kinoshita, Naoto
Furui, Akira
Tabuchi, Genta
Ueno, Hiroki
Tsuji, Toshio
Maruyama, Hirofumi
author_sort Nezu, Tomohisa
collection PubMed
description Aim: The prediction of functional outcome is essential in the management of acute ischemic stroke patients. We aimed to explore the various prognostic factors with multivariate linear discriminant analysis or neural network analysis and evaluate the associations between candidate factors, baseline characteristics, and outcome. Methods: Acute ischemic stroke patients ( n =1,916) with premorbid modified Rankin Scale (mRS) scores of 0–2 were analyzed. The prediction models with multivariate linear discriminant analysis (quantification theory type II) and neural network analysis (log-linearized Gaussian mixture network) were used to predict poor functional outcome (mRS 3–6 at 3 months) with various prognostic factors added to age, sex, and initial neurological severity at admission. Results: Both models revealed that several nutritional statuses and serum alkaline phosphatase (ALP) levels at admission improved the predictive ability. Of the 1,484 patients without missing data, 560 patients (37.7%) had poor outcomes. The patients with poor outcomes had higher ALP levels than those without (294.3±259.5 vs. 246.3±92.5 U/l, P <0.001). Multivariable logistic analyses revealed that higher ALP levels (1-SD increase) were independently associated with poor stroke outcomes after adjusting for several confounding factors, including the neurological severity, malnutrition status, and inflammation (odds ratio 1.21, 95% confidence interval 1.02–1.49). Several nutritional indicators extracted from prediction models were also associated with poor outcome. Conclusion: Both the multivariate linear discriminant and neural network analyses identified the same indicators, such as nutritional status and serum ALP levels. These indicators were independently associated with functional stroke outcome.
format Online
Article
Text
id pubmed-8737069
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Japan Atherosclerosis Society
record_format MEDLINE/PubMed
spelling pubmed-87370692022-01-25 Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis Nezu, Tomohisa Hosomi, Naohisa Yoshimura, Kazumasa Kuzume, Daisuke Naito, Hiroyuki Aoki, Shiro Morimoto, Yuko Kinboshi, Masato Yoshida, Takeshi Shiga, Yuji Kinoshita, Naoto Furui, Akira Tabuchi, Genta Ueno, Hiroki Tsuji, Toshio Maruyama, Hirofumi J Atheroscler Thromb Original Article Aim: The prediction of functional outcome is essential in the management of acute ischemic stroke patients. We aimed to explore the various prognostic factors with multivariate linear discriminant analysis or neural network analysis and evaluate the associations between candidate factors, baseline characteristics, and outcome. Methods: Acute ischemic stroke patients ( n =1,916) with premorbid modified Rankin Scale (mRS) scores of 0–2 were analyzed. The prediction models with multivariate linear discriminant analysis (quantification theory type II) and neural network analysis (log-linearized Gaussian mixture network) were used to predict poor functional outcome (mRS 3–6 at 3 months) with various prognostic factors added to age, sex, and initial neurological severity at admission. Results: Both models revealed that several nutritional statuses and serum alkaline phosphatase (ALP) levels at admission improved the predictive ability. Of the 1,484 patients without missing data, 560 patients (37.7%) had poor outcomes. The patients with poor outcomes had higher ALP levels than those without (294.3±259.5 vs. 246.3±92.5 U/l, P <0.001). Multivariable logistic analyses revealed that higher ALP levels (1-SD increase) were independently associated with poor stroke outcomes after adjusting for several confounding factors, including the neurological severity, malnutrition status, and inflammation (odds ratio 1.21, 95% confidence interval 1.02–1.49). Several nutritional indicators extracted from prediction models were also associated with poor outcome. Conclusion: Both the multivariate linear discriminant and neural network analyses identified the same indicators, such as nutritional status and serum ALP levels. These indicators were independently associated with functional stroke outcome. Japan Atherosclerosis Society 2022-01-01 2020-12-09 /pmc/articles/PMC8737069/ /pubmed/33298664 http://dx.doi.org/10.5551/jat.59642 Text en 2022 Japan Atherosclerosis Society https://creativecommons.org/licenses/by-nc-sa/4.0/This article is distributed under the terms of the latest version of CC BY-NC-SA defined by the Creative Commons Attribution License.http://creativecommons.org/licenses/by-nc-sa/4.0/ (https://creativecommons.org/licenses/by-nc-sa/4.0/)
spellingShingle Original Article
Nezu, Tomohisa
Hosomi, Naohisa
Yoshimura, Kazumasa
Kuzume, Daisuke
Naito, Hiroyuki
Aoki, Shiro
Morimoto, Yuko
Kinboshi, Masato
Yoshida, Takeshi
Shiga, Yuji
Kinoshita, Naoto
Furui, Akira
Tabuchi, Genta
Ueno, Hiroki
Tsuji, Toshio
Maruyama, Hirofumi
Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title_full Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title_fullStr Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title_full_unstemmed Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title_short Predictors of Stroke Outcome Extracted from Multivariate Linear Discriminant Analysis or Neural Network Analysis
title_sort predictors of stroke outcome extracted from multivariate linear discriminant analysis or neural network analysis
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8737069/
https://www.ncbi.nlm.nih.gov/pubmed/33298664
http://dx.doi.org/10.5551/jat.59642
work_keys_str_mv AT nezutomohisa predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT hosominaohisa predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT yoshimurakazumasa predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT kuzumedaisuke predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT naitohiroyuki predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT aokishiro predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT morimotoyuko predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT kinboshimasato predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT yoshidatakeshi predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT shigayuji predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT kinoshitanaoto predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT furuiakira predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT tabuchigenta predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT uenohiroki predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT tsujitoshio predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis
AT maruyamahirofumi predictorsofstrokeoutcomeextractedfrommultivariatelineardiscriminantanalysisorneuralnetworkanalysis