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Aspartame Use in Parkinson's Disease
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Aspartame & Susceptibility to Headache
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Migraine Provoked by Aspartame
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Neurological Diagnosis, Artificial Intelligence Compared with Diagnostic Generator
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Hidden Metastatic Lung Tumour Diagnosed by AI
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Improving Neurology Clinical Care with Natural Language Processing Tools
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Large Language Models in Neurology Research and Future Practice
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Will Generative Artificial Intelligence Deliver on Its Promise in Health Care?
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Use of GPT-4 to Diagnose Complex Clinical Cases
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Study Finds ChatGPT Provides Inaccurate Responses to Drug Questions-Press Release
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Artificial Intelligence and Machine Learning in Clinical Medicine, 2023
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Benefits, Limits, and Risks of GPT-4 as an AI Chatbot for Medicine
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The New Era of Automated Electroencephalogram Interpretation
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Transformation of Undergraduate Medical Education in 2023
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Accuracy of a Generative Artificial Intelligence Model in a Complex Diagnostic Challenge
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Evaluation of Medical Decision Support Systems (DDX Generators) Using Real Medical Cases of Varying Complexity and Origin
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Digital Health in Primordial and Primary Stroke Prevention: A Systematic Review
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Ethical Considerations in Surgical Decompression for Stroke
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Does Capturing Debris During TAVR Prevent Strokes?
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Spontaneous Intracerebral Hemorrhage
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External Validation of e-ASPECTS Software for Interpreting Brain CT in Stroke
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Should Electronic Differential Diagnosis Support be Used Early or Late in the Diagnostic Process? A Multicentre Experimental Study of Isabel
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Reaching 95%: Decision Support Tools are the Surest Way to Improve Diagnosis Now
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Endovascular Therapy for Acute Stroke with a Large Ischemic Region
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The First Examination of Diagnostic Performance of Automated Measurement of the Callosal Angle in 1856 Elderly Patients and Volunteers Indicates that 12.4% of Exams Met the Criteria for Possible Normal Pressure Hydrocephalus
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Next-Generation Artificial Intelligence for Diagnosis
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Assessing the Utility of a Differential Diagnostic Generator in UK General Practice: A Feasibility Study
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Digital Health
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Development and Validation of a Deep Learning-Based Model to Distinguish Glioblastoma from Solitary Brain Metastasis Using Conventional MR Images
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Safety and Efficacy of Coma Induction Following First-Line Treatment in Status Epilepticus
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Artificial Intelligence Applications in Stroke
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Tapia Syndrome at the Time of the COVID-19 Pandemic
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Guillain-Barre Syndrome Associated with SARS-CoV-2
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Myasthenic Crisis Demanding Mechanical Ventilation
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Machine Learning Approach to Identify Stroke Within 4.5 Hours
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Accuracy of a Machine Learning Muscle MRI - Based Tool for the Diagnosis of Muscular Dystrophies
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Artificial Intelligence to Detect Papilledema from Ocular Fundus Photographs
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A Young Health Woman with Difficult-to-Wean Acute Ventilator Dependence
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Clinicopathologic Conference, LGI1 autoimmune encephalitis
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Neuropathy, Encephalopathy, Status Epilepticus, and Acute Intermittent Porphyria
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Application of Deep Learning to Predict Standardized Uptake Value Ratio and Amyloid Status on 18F-Florbetapir PET Using ADNI Data
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