TIPTA SINIFLANDIRMA YÖNTEMLERİNİN UYGULAMA ALANLARI

ÖzetSağlık endüstrisi çok büyük miktarda veri üretmekte ve bu veriler karmaşık hasta ve sağlık bilgileri içermektedir.Veri madenciliği, veriden bilgi çıkarma uygulaması olduğundan pek çok alanda çok popülerdir. Veri madenciliğiyöntemleri gerekli bilgi ve nesneleri medikal-tıbbi veriden çıkarılmak için de kullanılmaktadır. Bugünedek tıp alanında kullanılan veri madenciliği algoritmaları derin öğrenme, SVM, Bayes ve bulanık mantıktır.Bunların kullanılmasındaki ana neden, farklı türdeki tıp verilerine çok doğru sonuçlar verebilme yetenekleridir.Veri madenciliği tıp alanında insanlara yardım etmeye ve çeşitli klinik sorunları çözmeye devam edecektir.

APPLICATION AREA OF CLASSIFICATION TECHNIQUES IN MEDICINE

Abstract

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AURUM Mühendislik Sistemleri ve Mimarlık Dergisi-Cover
  • ISSN: 2564-6397
  • Yayın Aralığı: Yılda 2 Sayı
  • Başlangıç: 2017
  • Yayıncı: Altınbaş Üniversitesi