Quantitative Evaluation of KIRETT Wearable Demonstrator for Rescue Operations
- URL: http://arxiv.org/abs/2509.25928v1
- Date: Tue, 30 Sep 2025 08:21:09 GMT
- Title: Quantitative Evaluation of KIRETT Wearable Demonstrator for Rescue Operations
- Authors: Mubaris Nadeem, Johannes Zenkert, Lisa Bender, Christian Weber, Madjid Fathi,
- Abstract summary: Rescue services need to provide fast, reliable treatments for the patient in need.<n>With the help of modern technologies, like treatment recommendations, real-time vitals-monitoring, and situation detection through artificial intelligence (AI) a situation can be analyzed and supported.<n>In KIRETT, a wearable device is developed to support in such scenarios and presents a way to provide treatment recommendation in rescue services.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Healthcare and Medicine are under constant pressure to provide patient-driven medical expertise to ensure a fast and accurate treatment of the patient. In such scenarios, the diagnosis contains, the family history, long term medical data and a detailed consultation with the patient. In time-critical emergencies, such conversation and time-consuming elaboration are not possible. Rescue services need to provide fast, reliable treatments for the patient in need. With the help of modern technologies, like treatment recommendations, real-time vitals-monitoring, and situation detection through artificial intelligence (AI) a situation can be analyzed and supported in providing fast, accurate patient-data-driven medical treatments. In KIRETT, a wearable device is developed to support in such scenarios and presents a way to provide treatment recommendation in rescue services. The objective of this paper is to present the quantitative results of a two-day KIRETT evaluation (14 participants) to analyze the needs of rescue operators in healthcare.
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