Journal
HEALTHCARE
Volume 11, Issue 19, Pages -Publisher
MDPI
DOI: 10.3390/healthcare11192687
Keywords
artificial intelligence; central nervous system; rehabilitation; prediction; prognosis
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Applications of machine learning in the healthcare field have become increasingly diverse. This review investigated the integration of artificial intelligence (AI) in predicting the prognosis of patients with central nervous system disorders. While AI algorithms have shown promise in prognostic assessment, challenges remain in achieving higher prediction accuracy for practical clinical use. Accruing diverse data, including medical imaging and collaborative efforts among hospitals, can enhance the predictive capabilities of AI. As healthcare professionals become more familiar with AI, its role in central nervous system rehabilitation is expected to advance significantly, revolutionizing patient care.
Applications of machine learning in the healthcare field have become increasingly diverse. In this review, we investigated the integration of artificial intelligence (AI) in predicting the prognosis of patients with central nervous system disorders such as stroke, traumatic brain injury, and spinal cord injury. AI algorithms have shown promise in prognostic assessment, but challenges remain in achieving a higher prediction accuracy for practical clinical use. We suggest that accumulating more diverse data, including medical imaging and collaborative efforts among hospitals, can enhance the predictive capabilities of AI. As healthcare professionals become more familiar with AI, its role in central nervous system rehabilitation is expected to advance significantly, revolutionizing patient care.
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