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Artificial Intelligence Cerebral Gray-white Matter Ratio Module Usage in Hsinchu District Hsinchu District Using an Artificial Intelligence Cerebral Gray-white Matter Ratio Module
This study aims to establish an electronic medical record and imaging database for out-of-hospital cardiac arrest (OHCA) patients at NTUH Hsinchu Branch. Leveraging an AI deep learning model and an automated brain gray-white matter analysis system developed at NTUH, the research seeks to validate these tools externally. By integrating electronic medical records and brain imaging data, the project strives to enhance the accuracy of prognostic assessments, supporting physicians and families in decision-making for post-cardiac arrest care. Validation at Hsinchu Branch will assess the model's reliability across diverse medical settings and patient populations, optimizing its applicability and accuracy.
Details
| Lead sponsor | National Taiwan University Hospital |
|---|---|
| Status | ACTIVE_NOT_RECRUITING |
| Enrolment | 350 |
| Start date | Sun Dec 01 2024 00:00:00 GMT+0000 (Coordinated Universal Time) |
| Completion | Thu Dec 31 2026 00:00:00 GMT+0000 (Coordinated Universal Time) |
Conditions
- Out of Hospital Cardiac Arrest
Countries
Taiwan