Routine Usage of AI-based Chest X-ray Reading Support in a Multi-site
Medical Supply Center
- URL: http://arxiv.org/abs/2210.10779v1
- Date: Mon, 17 Oct 2022 08:06:16 GMT
- Title: Routine Usage of AI-based Chest X-ray Reading Support in a Multi-site
Medical Supply Center
- Authors: Karsten Ridder, Alexander Preuhs, Axel Mertins, Clemens Joerger
- Abstract summary: A commercially available AI solution for the evaluation of Chest X-ray images is able to help radiologists and clinical colleagues 24/7 in a complex environment.
The system performs in a robust manner, supporting radiologists and clinical colleagues in their important decisions, in practises and hospitals regardless of the user and X-ray system type producing the image-data.
- Score: 64.91941409801494
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Research question: How can we establish an AI support for reading of chest
X-rays in clinical routine and which benefits emerge for the clinicians and
radiologists. Can it perform 24/7 support for practicing clinicians? 2.
Findings: We installed an AI solution for Chest X-ray in a given structure (MVZ
Uhlenbrock & Partner, Germany). We could demonstrate the practicability,
performance, and benefits in 10 connected clinical sites. 3. Meaning: A
commercially available AI solution for the evaluation of Chest X-ray images is
able to help radiologists and clinical colleagues 24/7 in a complex
environment. The system performs in a robust manner, supporting radiologists
and clinical colleagues in their important decisions, in practises and
hospitals regardless of the user and X-ray system type producing the
image-data.
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