Yapay zeka teknikleri ve radyolojiye uygulanması

İnsanın düşünme yapısının benzerini bilgisayar işlemlerini geliştirerek yapmaya çalışmak olarak tanımlanmakta olan yapay zekâ günümüzde birçok alanda yaygın bir şekilde kullanılmaya başlanmıştır. Bu makalede yapay zekâ teknikleri tanıtılarak bu tekniklerin radyolojide kullanımlarına ilişkin görüşler ortaya konulması amaçlanmıştır.

Techniques of artificial intelligence network (Ann) and applıed to radiology

Artifical Neural Network (ANN) have been begin by using in various field and worked to build by developing of computer process to smilar thing of human. In this cases, Introducing of Neural network techniques were aimed to composed of estimation on relationship ideas by using radiology.

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Fırat Tıp Dergisi-Cover
  • ISSN: 1300-9818
  • Başlangıç: 2015
  • Yayıncı: Fırat Üniversitesi Tıp Fakültesi
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