Deep learning to identify stroke within 4.5 h using DWI and FLAIR in a prospective multicenter study
  • Namgung, Eun
  • Kim, Young Sun
  • Lee, Eun-Jae
  • Chang, Dae-Il
  • Cho, Han Jin
  • ... Kim, Dong-Eog
  • 외 17명
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초록

To enhance thrombolysis eligibility in acute ischemic stroke, we developed a deep learning model to estimate stroke onset within 4.5 h using diffusion-weighted imaging (DWI) and fluid-attenuated inversion recovery (FLAIR) images. Given the variability in human interpretation, our multimodal Res-U-Net (mRUNet) model integrates a modified U-Net and ResNet-34 to classify stroke onset as < 4.5 or ≥ 4.5 h. Using DWI and FLAIR images from patients scanned within 24 h of symptom onset, the modified U-Net generated a DWI–FLAIR mismatch image, while ResNet-34 performed the final classification. mRUNet was evaluated against ResNet-34 and DenseNet-121 on an internal test set (n = 123) and two external test sets: a single-center (n = 468) and a multi-center (n = 1151). mRUNet achieved an area under the receiver operating characteristic curve (AUC-ROC) of 0.903 on the internal set and 0.910 and 0.868 on external sets, significantly outperforming ResNet-34 and DenseNet-121. Our mRUNet model demonstrated robust and consistent classification of the 4.5-h onset-time window across datasets. By leveraging DWI and FLAIR images as a tissue clock, this model may support timely and individualized thrombolysis in patients with unclear stroke onset, such as those with wake-up stroke, in clinical settings. © The Author(s) 2025.

키워드

Acute ischemic strokeDeep learningDiffusion-weighted imagingFluid-attenuated inversion recoveryStroke onsetACUTE ISCHEMIC-STROKEHEALTH-CARE PROFESSIONALSUNCLEAR-ONSET STROKEWAKE-UPEARLY MANAGEMENTIDENTIFICATIONTHROMBOLYSISSEGMENTATIONREPERFUSIONGUIDELINES
제목
Deep learning to identify stroke within 4.5 h using DWI and FLAIR in a prospective multicenter study
저자
Namgung, EunKim, Young SunLee, Eun-JaeChang, Dae-IlCho, Han JinLee, JunCha, Jae-KwanPark, Man-SeokYu, Kyung HoJung, Jin-ManAhn, Seong HwanKim, Dong-EogLee, Ju HunHong, Keun-SikSohn, Sung-IlPark, Kyung-PilChang, Jun YoungKim, Bum JoonKwon, Sun U.Park, GayoungJung, Hye-SooHong, JihounKang, Dong-Wha
DOI
10.1038/s41598-025-10804-6
발행일
2025-07
유형
Article
저널명
Scientific Reports
15
1