Advancing ischemic stroke diagnosis and clinical outcome prediction using improved ensemble techniques in DSC-PWI radiomics

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Titel: Advancing ischemic stroke diagnosis and clinical outcome prediction using improved ensemble techniques in DSC-PWI radiomics
Autoren: Mazen M. Yassin, Jiaxi Lu, Asim Zaman, Huihui Yang, Anbo Cao, Xueqiang Zeng, Haseeb Hassan, Taiyu Han, Xiaoqiang Miao, Yongkang Shi, Yingwei Guo, Yu Luo, Yan Kang
Quelle: Scientific Reports, Vol 14, Iss 1, Pp 1-17 (2024)
Verlagsinformationen: Nature Portfolio, 2024.
Publikationsjahr: 2024
Bestand: LCC:Medicine
LCC:Science
Schlagwörter: Stroke classification, NIHSS prediction, Dynamic radiomics features, DSC-PWI., Medicine, Science
Beschreibung: Abstract Ischemic stroke is a leading global cause of death and disability and is expected to rise in the future. The present diagnostic techniques, like CT and MRI, have some limitations in distinguishing acute from chronic ischemia and in early ischemia detection. This study investigates the function of ensemble models based on the dynamic radiomics features (DRF) from the dynamic susceptibility contrast perfusion-weighted imaging (DSC-PWI) ischemic stroke diagnosis, neurological impairment assessment, and modified Rankin Scale (mRS) outcome prediction). DRF is extracted from the 3D images, features are selected, and dimensionality is reduced. After that, ensemble models are applied. Two model structures were developed: a voting classifier with 6 bagging classifiers and a stacking classifier based on 4 bagging classifiers. The ensemble models were evaluated on three core tasks. The Stacking_ens_LR model performed best for ischemic stroke detection, the LR Bagging model for NIH Stroke Scale (NIHSS) prediction, and the NB Bagging model for outcome prediction. These outcomes illustrate the strength of ensemble models. The work showcases the role of ensemble models and DRF in the stroke management process.
Publikationsart: article
Dateibeschreibung: electronic resource
Sprache: English
ISSN: 2045-2322
Relation: https://doaj.org/toc/2045-2322
DOI: 10.1038/s41598-024-78353-y
Zugangs-URL: https://doaj.org/article/f05cad84c4ff4cc896b1cf8bac7a2700
Dokumentencode: edsdoj.f05cad84c4ff4cc896b1cf8bac7a2700
Datenbank: Directory of Open Access Journals
Beschreibung
Abstract:Abstract Ischemic stroke is a leading global cause of death and disability and is expected to rise in the future. The present diagnostic techniques, like CT and MRI, have some limitations in distinguishing acute from chronic ischemia and in early ischemia detection. This study investigates the function of ensemble models based on the dynamic radiomics features (DRF) from the dynamic susceptibility contrast perfusion-weighted imaging (DSC-PWI) ischemic stroke diagnosis, neurological impairment assessment, and modified Rankin Scale (mRS) outcome prediction). DRF is extracted from the 3D images, features are selected, and dimensionality is reduced. After that, ensemble models are applied. Two model structures were developed: a voting classifier with 6 bagging classifiers and a stacking classifier based on 4 bagging classifiers. The ensemble models were evaluated on three core tasks. The Stacking_ens_LR model performed best for ischemic stroke detection, the LR Bagging model for NIH Stroke Scale (NIHSS) prediction, and the NB Bagging model for outcome prediction. These outcomes illustrate the strength of ensemble models. The work showcases the role of ensemble models and DRF in the stroke management process.
ISSN:20452322
DOI:10.1038/s41598-024-78353-y