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Neurology, as a medical specialty, faces numerous challenges in the accurate and timely diagnosis of neurological disorders. The advent of Artificial Intelligence (AI) has opened new horizons for improving the diagnostic capabilities of neurologists. This research paper explores the implementation of AI in neurology for the detection of various neurological disorders. Through an extensive review of recent advancements and applications, we highlight the transformative role that AI plays in revolutionizing the field. This paper discusses the key areas where AI has been successfully integrated into neurology, such as Speeding Up CT Scans for Stroke Treatment, AI for TBI detection,ML Assisting in Decision-making in case of Epilepsy. Other scenarios include such as image analysis of medical scans (MRI and X-rays), EEG interpretation, predictive analytics, Natural Language Processing (NLP) for data analysis, wearable devices for remote monitoring, decision support systems, telemedicine, and drug discovery. Each of these areas demonstrates the potential of AI to enhance the accuracy, speed, and accessibility of neurological diagnostics. While showcasing the benefits of AI in neurology, we also address the challenges associated with its implementation, including data privacy concerns, regulatory approval, and the necessity for continuous validation and refinement of AI algorithms. In conclusion, this research paper underscores the significant potential of AI in neurology and its promising role in revolutionizing the detection and management of neurological disorders. As AI continues to mature, it holds the promise of improving patient outcomes, reducing diagnostic errors, and enhancing the overall quality of care in the field of neurology.
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Mansi Srivastava
Profesor Jobin Varkey
Jothsna Kethar
Journal of Student Research
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Srivastava et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68e6775fb6db64358760186f — DOI: https://doi.org/10.47611/jsr.v13i2.2495