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Enhancing Oral Health Assessment through Convolutional Neural Networks based Detection.

Authors :
Patel, Zoya
Lawate, Kajal
Pandit, Mitray
Pabitwar, Sandesh
Shaikh, N. F.
Source :
Grenze International Journal of Engineering & Technology (GIJET); Jan Part 3, Vol. 10, p2316-2323, 8p
Publication Year :
2024

Abstract

Oral diseases are highly prevalent globally. Oral health also affects the general health of people. Therefore, the prevention and early treatment of oral diseases is important and beneficial. Diagnosis of oral health and diseases is conventionally done by clinical examination and, at times, by various investigations. Clinical examination is subjective and, hence, susceptible to error. One of the emerging trends of late is the use of machine learning and deep learning in healthcare. The current available systems tend to focus on a single image type and also consider fewer diseases at a time. To overcome these shortcomings, we developed a system, which is presented in this paper titled "Enhancing Oral Health Assessment through Convolutional Neural Networks Based Detection." By using various machine learning and deep learning algorithms, training multiple models, and integrating them, our proposed system can overcome these limitations. With the input given to the system in the form of an image, it would be able to detect any disease present, classify it, and give it as an output to the dentist. This paper explores the system’s background, the work done on various systems developed so far, the proposed system, and the techniques involved in making it. The expected results, the methods to verify the accuracy of the output, and the future scope are also discussed. The proposed system would be a significant contribution to the field of oral healthcare as it can assist dentists in diagnosing diseases and treating patients swiftly and efficiently. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
23955287
Volume :
10
Database :
Complementary Index
Journal :
Grenze International Journal of Engineering & Technology (GIJET)
Publication Type :
Academic Journal
Accession number :
175658393