Scope and Implications of Artificial intelligence in dentistry. A Review. For (2022)

Authors

  • Rohma Yusuf Rama Dental College Hospital & Research Centre, Rama University, Mandhana, Kanpur, Uttar Pradesh- India 209217 Author
  • Nidhi Shukla Rama Dental College Hospital & Research Centre, Rama University, Mandhana, Kanpur, Uttar Pradesh- India 209217 Author
  • Charu Chitra Indra Gandhi Institute of Dental Sciences, Puducherry Author
  • Vaibhav Bansal Sri Aurobindo college of dentistry, Indore Author
  • Surbhit Singh Rama Dental College Hospital & Research Centre, Rama University, Mandhana, Kanpur, Uttar Pradesh- India 209217 Author

Keywords:

Dentistry, Artificial Intelligence, Neural Networks, Electronic Health Records, Clinical Decision Support, Hybrid Intelligence System, Healthcare, Robotics.

Abstract

Humans have recreated intelligence for effective human decision making and to unburden themselves of stupendous workload. The neural networks are a part of Artificial Intelligence and are similar to the human brain in their work. The field of Artificial Intelligence has shown a marked development and growth in the past few decades. Its application is expanding in the areas that were previously thought to be reserved for human experts. When applied to medicine and dentistry, Artificial Intelligence has shown tremendous potential to improve patient care and revolutionize the healthcare field. Artificial Intelligence has been investigated for variety of purposes, specifically identification of normal and abnormal structures, diagnosis of diseases and prediction of treatment outcomes. The advantages of this process is better efficiency, accuracy and time saving during diagnosis and treatment planning. Being an upcoming field, artificial intelligence has a long way in the field of medicine and dentistry. Hence, there is need for the dentists to be aware of its potential implications for a lucrative clinical practice in the future. Substantial data for this article was collected from different databases and original and systematic review articles previously published. This review will focus on application, advantages, disadvantages and limitations and future application of artificial intelligence in dentistry. 

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Published

2022-02-28

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How to Cite

Yusuf, R., Shukla, N., Chitra, C., Bansal, V., & Singh, S. (2022). Scope and Implications of Artificial intelligence in dentistry. A Review. For (2022). History of Medicine, 8(1). http://13.200.237.241/HOM/index.php/medicine/article/view/330