CPAISD: Core-penumbra acute ischemic stroke dataset
- URL: http://arxiv.org/abs/2404.02518v1
- Date: Wed, 3 Apr 2024 07:11:19 GMT
- Title: CPAISD: Core-penumbra acute ischemic stroke dataset
- Authors: D. Umerenkov, S. Kudin, M. Peksheva, D. Pavlov,
- Abstract summary: CPAISD: Core-Penumbra Acute Ischemic Stroke dataset is aimed at enhancing the early detection and segmentation of ischemic stroke.
The dataset provides a collection of segmented NCCT images.
These include annotations of ischemic core and penumbra regions, critical for developing machine learning models for rapid stroke identification and assessment.
Our dataset's uniqueness lies in its focus on the acute phase of ischemic stroke, with non-informative native CT scans, and includes a baseline model to demonstrate the dataset's application.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We introduce the CPAISD: Core-Penumbra Acute Ischemic Stroke Dataset, aimed at enhancing the early detection and segmentation of ischemic stroke using Non-Contrast Computed Tomography (NCCT) scans. Addressing the challenges in diagnosing acute ischemic stroke during its early stages due to often non-revealing native CT findings, the dataset provides a collection of segmented NCCT images. These include annotations of ischemic core and penumbra regions, critical for developing machine learning models for rapid stroke identification and assessment. By offering a carefully collected and annotated dataset, we aim to facilitate the development of advanced diagnostic tools, contributing to improved patient care and outcomes in stroke management. Our dataset's uniqueness lies in its focus on the acute phase of ischemic stroke, with non-informative native CT scans, and includes a baseline model to demonstrate the dataset's application, encouraging further research and innovation in the field of medical imaging and stroke diagnosis.
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