Artificial intelligence in medical imaging practice in Africa: a qualitative content analysis study of radiographers’ perspectives

被引:0
作者
William Kwadwo Antwi
Theophilus N. Akudjedu
Benard Ohene Botwe
机构
[1] University of Ghana,Department of Radiography, School of Biomedical and Allied Health Sciences, College of Health Sciences
[2] Bournemouth University,Institute of Medical Imaging and Visualisation, Department of Medical Science and Public Health, Faculty of Health and Social Sciences
来源
Insights into Imaging | / 12卷
关键词
Artificial intelligence; Medical imaging; Radiography; Africa; Online surveys; Qualitative study;
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