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Understanding the Research Landscape of Deep Learning in Biomedical Science: Scientometric Analysis
16
Zitationen
4
Autoren
2022
Jahr
Abstract
This study investigated the landscape of deep learning research in biomedicine and confirmed its interdisciplinary nature. Although it has been successful, we believe that there is a need for diverse applications in certain areas to further boost the contributions of deep learning in addressing biomedical research problems. We expect the results of this study to help researchers and communities better align their present and future work.
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