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Reliable Biomedical Applications Using AI Models
1
Zitationen
3
Autoren
2022
Jahr
Abstract
Artificial intelligence (AI) has become a prevalent and a popular technology in recent years, and has gained a lot of attention in every domain including biomedicine. An enormous amount of data is now being generated in the biomedical field, creating numerous opportunities for real-time decision making and learning. AI methods have also brought significant improvements in various biomedical applications such as medical imaging, drug discovery, protein, and genetic sequence analysis. AI-based methods have the potential to learn and solve several biomedical tasks. This paper provides an overview of AI-based methods and their importance in biomedical applications. Some of the major challenges are discussed and potential directions to address them are suggested.
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