Ability of Radiomics Versus Humans in Predicting First-Pass Effect After Endovascular Treatment in the ESCAPE-NA1 Trial
| Authors | |
|---|---|
| Year of publication | 2023 |
| Type | Article in Periodical |
| Magazine / Source | Stroke: Vascular and Interventional Neurology |
| MU Faculty or unit | |
| Citation | |
| web | https://www.ahajournals.org/doi/10.1161/SVIN.122.000525 |
| Doi | https://doi.org/10.1161/SVIN.122.000525 |
| Keywords | deep learning; endovascular therapy; ischemia; machine learning; stroke; thrombus |
| Description | BACKGROUND: First-pass effect (FPE), that is, achieving reperfusion with a single thrombectomy device pass, is associated with better clinical outcomes in patients with acute stroke. FPE is therefore increasingly used as a marker of device and procedural efficacy. We aimed to evaluate the ability of thrombus-based radiomics models to predict FPE in patients undergoing endovascular thrombectomy and compare performance with experts and nonradiomics thrombus characteristics. |