TY - JOUR T1 - Farmakovijilansın Dijitalleşmesi: Yapay Zeka ve Veri Analitiğinin Rolü TT - Digitalisation of Pharmacovigilance: The Role of Artificial Intelligence and Data AU - Dokumacı, Algül Dilara AU - Karataş, Yusuf PY - 2023 DA - December Y2 - 2023 DO - 10.17827/aktd.1333721 JF - Arşiv Kaynak Tarama Dergisi JO - aktd PB - Çukurova Üniversitesi WT - DergiPark SN - 1300-3755 SP - 200 EP - 205 VL - 32 IS - 4 LA - tr AB - Sağlık hizmetlerinin ve ilaç endüstrisinin dijital dönüşümü, farmakovijilans alanında önemli bir adım olarak kabul edilmektedir. Standart farmakovijilans yaklaşımları daha fazla zaman ve iş gücü gerektirmektedir ve büyük veri ve yapay zeka kullanımının farmakovijilans faaliyetlerinin etkinliğini artırabileceği iddia edilmektedir. Bu nedenle, bu makalede farmakovijilansın dijitalleşmesini ve yapay zeka ile veri analitiğinin rolünü ele alıyoruz. İlaç keşfinin zorlukları ve maliyetleri tartışılmakta, ilaç programlarının yüksek başarısızlık oranı ve yeni ilaçların piyasaya sürülme maliyetinin önemi vurgulanmaktadır. Ayrıca bu makale, ilaç güvenliği için gelecekteki olasılıkları vurgulamakta ve sağlık ve ilaç endüstrilerinin dijitalleşmeye odaklanarak ilerlemesi gerektiğini önermektedir. KW - Yapay Zeka KW - Farmakovijilans KW - Makine Öğrenimi KW - İlaç Güvenliği KW - Klinik Hata KW - Rapor Analizi N2 - The digital transformation of healthcare and the pharmaceutical industry is considered as an important step in the field of pharmacovigilance. Standard pharmacovigilance approaches have more time and labour requirements, and it is claimed that the use of big data and artificial intelligence can improves the effectiveness of pharmacovigilance activities. Therefore, in this article we address the digitalisation of pharmacovigilance and the role of artificial intelligence and data analytics. 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Role of artificial intelligence in patient safety outcomes: systematic literature review. JMIR Med Inform. 2020;8(7):e18599. UR - https://doi.org/10.17827/aktd.1333721 L1 - https://dergipark.org.tr/tr/download/article-file/3291111 ER -