Artificial Intelligence Clinical Trial
— PAN-EM-NEUROOfficial title:
Predictive and Advanced Analytics in Emergency Medicine - Neurological Deficits
Future predictive modeling in emergency medicine will likely combine the use of a wide range of data points such as continuous documentation, monitoring using wearables, imaging, biomarkers, and real-time administrative data from all health care providers involved. Subsequent extensive data sets could feed advanced deep learning and neural network algorithms to accurately predict the risk of specific health conditions. Moreover, predictive analytics steers towards the development of clinical pathways that are adaptive and continuously updated, and in which healthcare decision-making is supported by sophisticated algorithms to provide the best course of action effectively and safely. The potential for predictive analytics to revolutionize many aspects of healthcare seems clear in the horizon. Information on the use in emergency medicine is scarce. Aim of the study is to evaluate the performance of using routine-data to predict resource usage in emergency medicine using the commonly encountered symptom of acute neurologic deficit. As an outlook, this might serve as a prototype for other, similar projects using routine medical data for predictive analytics in emergency medicine.
Status | Recruiting |
Enrollment | 50000 |
Est. completion date | January 1, 2030 |
Est. primary completion date | January 1, 2025 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years to 120 Years |
Eligibility | Inclusion Criteria: - Female and Male subjects - Age = 18 years Exclusion Criteria: - none |
Country | Name | City | State |
---|---|---|---|
Austria | Emergency Department, Medical University Vienna | Vienna |
Lead Sponsor | Collaborator |
---|---|
Medical University of Vienna |
Austria,
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* Note: There are 14 references in all — Click here to view all references
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Primary | Prediction model | to be developed | 1.1.2025 |
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