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A deep learning AI model for determining the relationship between X-Ray detectors and patient positioning in chest radiography
0
Zitationen
8
Autoren
2025
Jahr
Abstract
The AI model utilizing a customized CNN architecture has demonstrated its potential to automatically detect the positional relationship between the patient and the X-ray detector during chest radiography procedures. This model can potentially alleviate the workload of radiologic technologists in producing chest radiographs and enhance the accuracy of the imaging process.
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