Acil Tıp Ve Yapay Zeka

Yapay zeka, bilgi ve teknoloji çağında günlük hayatımızda önemli ölçüde yer edinmiştir. Son yıllarda yapay zeka ve makine öğrenimi teknikleri kullanılması öğrenimi özellikle acil tıp başta olmak üzere tıbbın birçok alanında hızlıca gelişmektedir. Yapay zeka, acil tıp içindeki tanısal görüntülemenin yorumlanması, hasta sonlanımının tahmin edilmesi ve hastanın yaşamsal bulgularının izlenmesi dahil sayısız uygulamada umut vaat etmektedir. Bu derlemede yapay zekanın acil tıpta kullanımına yönelik son yıllarda yapılan çalışmalar toplanmıştır.

Emergency Medicine and Artificial Intelligence

Artificial Intelligence has taken a significant place in our daily lives in the age of information and technology. In recent years, learning to use artificial intelligence and machine learning techniques has been developing rapidly in many fields of medicine, especially in emergency medicine. Artificial intelligence holds promise in numerous applications in emergency medicine, including interpreting diagnostic imaging, predicting patient outcome, and monitoring patient vital signs. In this review, recent studies on the use of artificial intelligence in emergency medicine were discussed.

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Anatolian Journal of Emergency Medicine-Cover
  • Yayın Aralığı: Yılda 4 Sayı
  • Başlangıç: 2018
  • Yayıncı: Türkiye Acil Tıp Derneği
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