TY - JOUR T1 - Sağlık İletişimi ve Yapay Zekâ Kesişimindeki Yayınların Bibliyometrik İncelemesi TT - Bibliometric Analysis of Publications at the Intersection of Health Communication and Artificial Intelligence AU - Sönmez, Mesut Ersin PY - 2024 DA - April Y2 - 2024 DO - 10.31123/akil.1428134 JF - Akdeniz Üniversitesi İletişim Fakültesi Dergisi JO - Akdeniz İletişim PB - Akdeniz Üniversitesi WT - DergiPark SN - 2619-9718 SP - 66 EP - 90 IS - 44 LA - tr AB - Pandemi küresel anlamda her alanı etkilemiş ve insanlık için acı tecrübeler yaşatmıştır. Pandemi dönemi ve sonrasını kapsayan 2019-2023 yılları arasında, yapay zekâ (AI) teknolojilerinin sağlık iletişimine olan etkilerinin belirlenmesi doğru bilgilendirme ve sağlık hizmetlerinin iyileştirilmesi açısından kritik önem taşımaktadır. AI teknolojilerinin sağlık iletişiminde nasıl kullanıldığı ve bu kullanımın sağlık hizmetleri, hastalık gözetimi, salgın izleme ve hasta eğitim materyalleri gibi alanlarda yarattığı dönüşümler incelenmiştir. Bu çalışmada, AI tekniklerinin sağlık verilerinin analizi, tıbbi görüntüleme ve sağlık bilgisinin yayılmasında nasıl etkili olduğunu tartışılmıştır. Yapılan bibliyometrik analiz, sağlık iletişimi ve yapay zekâ konularında yapılan çalışmaları derinlemesine incelenerek, bu alanların karakteristiklerini ve gelişim süreçlerini aydınlatılmaya çalışılmıştır. Literatürdeki yayınların niceliksel dağılımı ve etki düzeyleri değerlendirilerek, araştırma alanının tarihsel ve güncel eğilimleri ortaya konulmuştur. Sonuç bölümünde, Yapay zekânın sağlık iletişimi alanında önemli bir evrim geçirdiği ve bu teknolojilerin devam eden gelişiminin sağlık alanında yenilik ve ilerlemeye yol açacağı belirtilmiştir. Bu teknolojik ilerlemelerin sağlık hizmetlerinin kalitesini artırma, halka sağlık bilgisi sunma ve sağlıklı karar alma süreçlerini destekleme potansiyeline sahip olduğu vurgulanmıştır. KW - Sağlık İletişimi KW - Yapay Zekâ KW - Makine Öğrenmesi KW - Web of Science KW - Bibliyometrik Analiz N2 - The pandemic has globally affected every aspect and has brought painful experiences to humanity. During and after the pandemic period, covering the years 2019-2023, determining the impacts of artificial intelligence (AI) technologies on health communication is of critical importance for accurate information dissemination and improvement of health services. This study has examined how AI technologies are utilized in health communication and the transformations they have brought in areas such as health services, disease surveillance, epidemic monitoring, and patient education materials. 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