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Comparing two deep learning algorithms for acute infarct segmentation on diffusion-weighted imaging in routine clinical practice
| DC Field | Value | Language |
|---|---|---|
| dc.contributor.author | Kim, Hokyu | - |
| dc.contributor.author | Lee, Moses | - |
| dc.contributor.author | Lee, Hoyoun | - |
| dc.contributor.author | Chung, Jinyong | - |
| dc.contributor.author | Jeong, Sang-Wuk | - |
| dc.contributor.author | Gwak, Dong-Seok | - |
| dc.contributor.author | Kim, Beom Joon | - |
| dc.contributor.author | Kim, Joon-Tae | - |
| dc.contributor.author | Hong, Keun-Sik | - |
| dc.contributor.author | Lee, Kyung Bok | - |
| dc.contributor.author | Park, Tai Hwan | - |
| dc.contributor.author | Park, Sang-Soon | - |
| dc.contributor.author | Park, Jong-Moo | - |
| dc.contributor.author | Kang, Kyusik | - |
| dc.contributor.author | Cho, Yong-Jin | - |
| dc.contributor.author | Park, Hong-Kyun | - |
| dc.contributor.author | Lee, Byung-Chul | - |
| dc.contributor.author | Yu, Kyung-Ho | - |
| dc.contributor.author | Oh, Mi Sun | - |
| dc.contributor.author | Lee, Soo Joo | - |
| dc.contributor.author | Kim, Jae Guk | - |
| dc.contributor.author | Cha, Jae-Kwan | - |
| dc.contributor.author | Kim, Dae-Hyun | - |
| dc.contributor.author | Lee, Jun | - |
| dc.contributor.author | Park, Man Seok | - |
| dc.contributor.author | Kim, Hosung | - |
| dc.contributor.author | Bae, Hee-Joon | - |
| dc.contributor.author | Kim, Dong-Eog | - |
| dc.contributor.author | Kim, Chi Kyung | - |
| dc.contributor.author | Ryu, Wi-Sun | - |
| dc.date.accessioned | 2025-12-02T06:30:13Z | - |
| dc.date.available | 2025-12-02T06:30:13Z | - |
| dc.date.issued | 2025 | - |
| dc.identifier.issn | 2055-2076 | - |
| dc.identifier.uri | https://scholarworks.dongguk.edu/handle/sw.dongguk/62237 | - |
| dc.description.abstract | Objectives: Infarct volumes on diffusion-weighted imaging (DWI) are critical for predicting stroke outcomes and guiding late-window endovascular thrombectomy. Although 3D U-Net-based deep learning achieves high sensitivity, it often yields false positives due to infarct mimics. We developed a SegMamba-based model to enhance global volumetric feature extraction and compared both approaches on a dataset encompassing multiple DWI hyperintense pathologies. Methods: Two models were trained on a multicenter dataset of 10,820 DWI scans (2011-2014) and evaluated against manual segmentation on an external test set of 2731 fresh DWI scans. Diagnostic accuracy was assessed in a clinical cohort of 1194 patients from a different center (2017-2020) who underwent DWI for various indications. We compared the models using the Dice similarity coefficient (DSC), average Hausdorff distance (AHD), sensitivity, and specificity. Results: The training, external test, and clinical test datasets had mean (SD) ages of 67.9 (12.8), 68.2 (12.7), and 63.9 (15.4) years, with 58.9%, 60.4%, and 58.1% male, respectively. In the external test dataset, SegMamba and U-Net achieved similar DSC (0.786 vs 0.785; p = 0.141), but SegMamba outperformed U-Net in AHD (1.25 mm vs 1.76 mm; p < 0.001). In the clinical dataset, SegMamba showed slightly lower sensitivity (96.97% vs 98.79%) but substantially higher specificity (58.80% vs 29.54%), resulting in higher overall accuracy (64.07% vs 39.11%; p < 0.001). Conclusions: Changing the main architecture of the segmentation model alone maintained segmentation performance within ischemic-stroke cohorts, while achieving better classification in broader disease populations. This study highlights the need for deep-learning models to be validated not only for segmentation performance within target disease cohorts but also across diverse clinical environments to ensure practical utility. | - |
| dc.language | 영어 | - |
| dc.language.iso | ENG | - |
| dc.publisher | SAGE PUBLICATIONS LTD | - |
| dc.title | Comparing two deep learning algorithms for acute infarct segmentation on diffusion-weighted imaging in routine clinical practice | - |
| dc.type | Article | - |
| dc.publisher.location | 미국 | - |
| dc.identifier.doi | 10.1177/20552076251396985 | - |
| dc.identifier.scopusid | 2-s2.0-105022089056 | - |
| dc.identifier.wosid | 001615791200001 | - |
| dc.identifier.bibliographicCitation | Digital Health, v.11 | - |
| dc.citation.title | Digital Health | - |
| dc.citation.volume | 11 | - |
| dc.type.docType | Article | - |
| dc.description.isOpenAccess | Y | - |
| dc.description.journalRegisteredClass | scie | - |
| dc.description.journalRegisteredClass | ssci | - |
| dc.description.journalRegisteredClass | scopus | - |
| dc.relation.journalResearchArea | Health Care Sciences & Services | - |
| dc.relation.journalResearchArea | Public, Environmental & Occupational Health | - |
| dc.relation.journalResearchArea | Medical Informatics | - |
| dc.relation.journalWebOfScienceCategory | Health Care Sciences & Services | - |
| dc.relation.journalWebOfScienceCategory | Health Policy & Services | - |
| dc.relation.journalWebOfScienceCategory | Public, Environmental & Occupational Health | - |
| dc.relation.journalWebOfScienceCategory | Medical Informatics | - |
| dc.subject.keywordPlus | STROKE | - |
| dc.subject.keywordAuthor | Artificial intelligence | - |
| dc.subject.keywordAuthor | deep learning | - |
| dc.subject.keywordAuthor | algorithms | - |
| dc.subject.keywordAuthor | diffusion magnetic resonance imaging | - |
| dc.subject.keywordAuthor | ischemic stroke | - |
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