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Big data, machine learning and artificial intelligence: a neurologist’s guide

Stephen D. Auger, Benjamin M. Jacobs, Ruth Dobson, Charles R. Marshall, Alastair J. Noyce

2020Practical Neurology55 citationsDOIOpen Access PDF

Abstract

Modern clinical practice requires the integration and interpretation of ever-expanding volumes of clinical data. There is, therefore, an imperative to develop efficient ways to process and understand these large amounts of data. Neurologists work to understand the function of biological neural networks, but artificial neural networks and other forms of machine learning algorithm are likely to be increasingly encountered in clinical practice. As their use increases, clinicians will need to understand the basic principles and common types of algorithm. We aim to provide a coherent introduction to this jargon-heavy subject and equip neurologists with the tools to understand, critically appraise and apply insights from this burgeoning field.

Topics & Concepts

JargonArtificial intelligenceComputer scienceClinical PracticeProcess (computing)Artificial neural networkField (mathematics)Subject (documents)Big dataData scienceFunction (biology)Cognitive scienceMachine learningPsychologyMedicineData miningOperating systemPhilosophyBiologyPure mathematicsFamily medicineMathematicsLibrary scienceLinguisticsEvolutionary biologyMachine Learning in HealthcareArtificial Intelligence in Healthcare and EducationExplainable Artificial Intelligence (XAI)
Big data, machine learning and artificial intelligence: a neurologist’s guide | Litcius