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Artificial intelligence in precision medicine for lung cancer: A bibliometric analysis
4
Zitationen
9
Autoren
2025
Jahr
Abstract
This bibliometric study reveals deep learning frameworks and AI-based radiomics are receiving attention. High-quality and standardized data have the potential to revolutionize lung cancer screening and diagnosis in the era of precision medicine. However, the importance of high-quality clinical datasets, the development of new and combined AI models, and their consistent assessment for advancing research on AI applications in lung cancer are highlighted before current research can be effectively applied in clinical practice.
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