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Artificial intelligence (AI) has completely changed the diagnostics of medical conditions, especially when it comes to finding uncommon genetic abnormalities. In order to improve the precision and speed of diagnosing uncommon genetic disorders, this case study investigates the effectiveness and promise of AI-assisted diagnostic tools. We examine patient genomic data to find patterns and abnormalities suggestive of particular genetic illnesses by utilising cutting-edge machine learning methods, especially deep learning and neural networks. To develop and validate our AI models, our research combines information from various sources, such as clinical observations, patient medical histories, and genomic sequences. Researchers highlight the intricacy and rarity of these illnesses provides significant hurdles that AI can help us overcome. The possibility for early diagnosis, which is critical for patient outcomes, and notable gains in diagnostic accuracy are among the key results. In order to fully utilise AI, our research emphasises how crucial it is for geneticists, data scientists, and doctors to collaborate across academic boundaries. Our findings have implications for a paradigm change in genetic diagnostics, opening the door to more individualised and successful therapies.
Dr.Vinod Vegesna (Wed,) studied this question.
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