Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.

Cerebral white matter lesions are ischemic symptoms caused mainly by microangiopathy; they are diagnosed by MRI because they show up as abnormalities in MRI images. Because patients with white matter lesions do not have any symptoms, MRI often detects the lesions for the first time. Generally, head...

Full description

Bibliographic Details
Main Authors: Yuya Shinkawa, Takashi Yoshida, Yohei Onaka, Makoto Ichinose, Kazuo Ishii
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0215142
id doaj-00dce57d20df4c319001bbe40b2dadaf
record_format Article
spelling doaj-00dce57d20df4c319001bbe40b2dadaf2021-03-03T20:44:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01144e021514210.1371/journal.pone.0215142Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.Yuya ShinkawaTakashi YoshidaYohei OnakaMakoto IchinoseKazuo IshiiCerebral white matter lesions are ischemic symptoms caused mainly by microangiopathy; they are diagnosed by MRI because they show up as abnormalities in MRI images. Because patients with white matter lesions do not have any symptoms, MRI often detects the lesions for the first time. Generally, head MRI for the diagnosis and grading of cerebral white matter lesions is performed as an option during medical checkups in Japan. In this study, we develop a mathematical model for the prediction of white matter lesions using data from routine medical evaluations that do not include a head MRI. Linear discriminant analysis, logistic discrimination, Naive Bayes classifier, support vector machine, and random forest were investigated and evaluated by ten-fold cross-validation, using clinical data for 1,904 examinees (988 males and 916 females) from medical checkups that did include the head MRI. The logistic regression model was selected based on a comparison of accuracy and interpretability. The model variables consisted of age, gender, plaque score (PS), LDL, systolic blood pressure (SBP), and administration of antihypertensive medication (odds ratios: 2.99, 1.57, 1.18, 1.06, 1.12, and 1.52, respectively) and showed Areas Under the ROC Curve (AUC) 0.805, the model displayed sensitivity of 72.0%, and specificity 75.1% when the most appropriate cutoff value was used, 0.579 as given by the Youden Index. This model has shown to be useful to identify patients with a high-risk of cerebral white matter lesions, who can then be diagnosed with a head MRI examination in order to prevent dementia, cerebral infarction, and stroke.https://doi.org/10.1371/journal.pone.0215142
collection DOAJ
language English
format Article
sources DOAJ
author Yuya Shinkawa
Takashi Yoshida
Yohei Onaka
Makoto Ichinose
Kazuo Ishii
spellingShingle Yuya Shinkawa
Takashi Yoshida
Yohei Onaka
Makoto Ichinose
Kazuo Ishii
Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
PLoS ONE
author_facet Yuya Shinkawa
Takashi Yoshida
Yohei Onaka
Makoto Ichinose
Kazuo Ishii
author_sort Yuya Shinkawa
title Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
title_short Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
title_full Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
title_fullStr Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
title_full_unstemmed Mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
title_sort mathematical modeling for the prediction of cerebral white matter lesions based on clinical examination data.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Cerebral white matter lesions are ischemic symptoms caused mainly by microangiopathy; they are diagnosed by MRI because they show up as abnormalities in MRI images. Because patients with white matter lesions do not have any symptoms, MRI often detects the lesions for the first time. Generally, head MRI for the diagnosis and grading of cerebral white matter lesions is performed as an option during medical checkups in Japan. In this study, we develop a mathematical model for the prediction of white matter lesions using data from routine medical evaluations that do not include a head MRI. Linear discriminant analysis, logistic discrimination, Naive Bayes classifier, support vector machine, and random forest were investigated and evaluated by ten-fold cross-validation, using clinical data for 1,904 examinees (988 males and 916 females) from medical checkups that did include the head MRI. The logistic regression model was selected based on a comparison of accuracy and interpretability. The model variables consisted of age, gender, plaque score (PS), LDL, systolic blood pressure (SBP), and administration of antihypertensive medication (odds ratios: 2.99, 1.57, 1.18, 1.06, 1.12, and 1.52, respectively) and showed Areas Under the ROC Curve (AUC) 0.805, the model displayed sensitivity of 72.0%, and specificity 75.1% when the most appropriate cutoff value was used, 0.579 as given by the Youden Index. This model has shown to be useful to identify patients with a high-risk of cerebral white matter lesions, who can then be diagnosed with a head MRI examination in order to prevent dementia, cerebral infarction, and stroke.
url https://doi.org/10.1371/journal.pone.0215142
work_keys_str_mv AT yuyashinkawa mathematicalmodelingforthepredictionofcerebralwhitematterlesionsbasedonclinicalexaminationdata
AT takashiyoshida mathematicalmodelingforthepredictionofcerebralwhitematterlesionsbasedonclinicalexaminationdata
AT yoheionaka mathematicalmodelingforthepredictionofcerebralwhitematterlesionsbasedonclinicalexaminationdata
AT makotoichinose mathematicalmodelingforthepredictionofcerebralwhitematterlesionsbasedonclinicalexaminationdata
AT kazuoishii mathematicalmodelingforthepredictionofcerebralwhitematterlesionsbasedonclinicalexaminationdata
_version_ 1714820846978072576