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Applications of Machine Learning in Medicine: Current Trends and Prospects

Muhammad Aamir, Sibghatullah Bazai, Uzair Aslam Bhatti, Zaheer Ahmed Dayo, Jing Liu, Kun Zhang

202326 citationsDOI

Abstract

With the continuous development of information technology and medical data information, more and more clinicians recognize artificial intelligence or will completely change medical practice by using advanced machine learning methods. The potential of using machine learning and predictive analysis to customize specific treatments for individuals is currently under research. Machine learning can learn a large number of medical data and explore the dependencies in data concentration, forming a corresponding medical model that can quickly and accurately predict new data, which is conducive to the early diagnosis of diseases and assisted clinical decisions. Clinical medicine faces the status quo of the relative shortage of medical resources and the identification and rapid diagnosis and treatment of critically ill emergency patients. In the era of big data, clinical demand is driven by clinical needs, and intelligent medical care provided by machines is the key to tackling the aforementioned issues.

Topics & Concepts

Status quoEconomic shortageArtificial intelligenceComputer scienceMachine learningBig dataIdentification (biology)Key (lock)Data scienceClinical decision support systemMedical knowledgeDecision support systemData miningMedicineComputer securityMedical educationMarket economyPhilosophyEconomicsBotanyGovernment (linguistics)BiologyLinguisticsCOVID-19 diagnosis using AIMachine Learning in HealthcareArtificial Intelligence in Healthcare
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