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Use of Artificial Intelligence in Microbiology

Year 2022, Volume: 2 Issue: 2, 1 - 12, 26.08.2022

Abstract

Artificial intelligence which be heard in 1950s has been developed gre-atly in the last 15 years. That technology is programmed by imitating human brain and may be used in sectors like tourism, real estate, building and production sector. One of the sectors that artificial intelligence affe-cts highly is Health sector. Microbiology is being defined as discipline that works on microorganisms. Definition of microorganisms, infections and infectious diseases are the topics of Microbiology. Nowadays, ar-tificial intelligence applications that being used currently; has being a great support to decisions of scientist and helping them to maintain pub-lic health. With progression of technology, artificial intelligence which will be improving, will be heard a lot because of time, cost and quality improvements on microbiology researches. The aim of this study is to contribute to the literature by compiling examples of artifici-al intelligence applications used in the field of microbiology and to show the contributions that artificial intelligence can make to this field.

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Yapay Zeka’nın Mikrobiyolojide Kullanımı

Year 2022, Volume: 2 Issue: 2, 1 - 12, 26.08.2022

Abstract

1950’li yıllarda ismini duymaya başladığımız yapay zeka kavramı özel-likle son 15 yılda çok büyük gelişmeler göstermiştir. İnsan beynine ait işleyişin taklit edilmesi ile oluşturulan bu teknoloji, turizm, emlak, in-şaat, üretim gibi pek çok sektörde kullanılmaktadır. Yapay zekanın etki-lediği en önemli alanlardan bir tanesi de sağlık sektörüdür. Mikrobiyo-loji, mikroorganizmaları inceleyen bilim dalı olarak tanımlanmaktadır. Mikroorganizmaların tanımlanması, enfeksiyon hastalıkları ve bulaşıcı hastalıklar, bu hastalıkların tedavisi ve kontrolü gibi konular bu bilim da-lının ilgilendiği konular arasındadır. Günümüzde mikrobiyoloji alanında kullanılan yapay zeka uygulamaları bilim insanlarına iyi bir karar destek mekanizması rolünde yer alarak halk sağlığının korunmasında yardımcı olmaktadır. Teknolojinin daha da ilerlemesiyle etkisini arttırmaya de-vam edecek olan yapay zeka teknolojisi, sağlık ekosisteminin bir üyesi olan mikrobiyoloji alanında zaman, maliyet ve kaliteye katkısı açısından adından daha sık söz ettirmeye devam edecektir. Bu çalışmanın amacı mikrobiyoloji alanında kullanılan yapay zeka uygulama örneklerini der-leyerek literatüre katkı sağlamak ve yapay zekanın bu alana sunabileceği katkıları göstermektir.

References

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Details

Primary Language Turkish
Subjects Artificial Intelligence (Other)
Journal Section Reviews
Authors

Ömrüm Ergüven

Suzan Ökten

Publication Date August 26, 2022
Published in Issue Year 2022 Volume: 2 Issue: 2

Cite

Vancouver Ergüven Ö, Ökten S. Yapay Zeka’nın Mikrobiyolojide Kullanımı. JAIHS. 2022;2(2):1-12.