Norhasmira Mohammad, - and Rohana Ahmad, - and Arofi Kurniawan, - and Mohd Yusmiaidil Putera Mohd Yusof, - (2022) Applications of contemporary artificial intelligence technology in forensic odontology as primary forensic identifier: A scoping review. Frontiers in Artificial Intelligence, 5. pp. 1-23.
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Abstract
Background: Forensic odontology may require a visual or clinical methodduring identification. Sometimes it may require forensic experts to refer to the existing technique to identify individuals, for example, by using the atlas to estimate the dental age. However, the existing technology can be a complicated procedure for a large-scale incident requiring a more significant number of forensic identifications, particularly during mass disasters. This has driven many experts to perform automation in their current practice to improve e�ciency. Objective: This article aims to evaluate current artificial intelligence applications and discuss their performance concerning the algorithm architecture used in forensic odontology. Methods: This study summarizes the findings of 28 research papers published between 2010 and June 2022 using the Arksey and O’Malley framework, updated by the Joanna Briggs Institute Framework for Scoping Reviews methodology, highlighting the research trend of artificial intelligence technology in forensic odontology. In addition, a literature search was conducted on Web of Science (WoS), Scopus, Google Scholar, and PubMed, and the results were evaluated based on their content and significance. Results: The potential application of artificial intelligence technology in forensic odontology can be categorized into four: (1) human bite marks, (2) sex determination, (3) age estimation, and (4) dental comparison. This powerful tool can solve humanity’s problems by giving an adequate number of datasets, the appropriate implementation of algorithm architecture, and the proper assignment of hyperparameters that enable the model to perform the prediction at a very high level of performance. Conclusion: The reviewed articles demonstrate that machine learning techniques are reliable for studies involving continuous features such as morphometric parameters. However, machine learning models do not strictly require large training datasets to produce promising results. In contrast, deep learning enables the processing of unstructured data, such as medical images, which require large volumes of data. Occasionally, transfer learning was used to overcome the limitation of data. In the meantime, this method’s capacity to automatically learn task-specific feature representations has made it a significant success in forensic odontology.
Item Type: | Article | ||||||||||
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Subjects: | R Medicine R Medicine > RK Dentistry |
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Divisions: | 02. Fakultas Kedokteran Gigi > S1 Kedokteran Gigi | ||||||||||
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Depositing User: | Rudy Febiyanto | ||||||||||
Date Deposited: | 15 Apr 2023 02:58 | ||||||||||
Last Modified: | 15 Apr 2023 02:58 | ||||||||||
URI: | http://repository.unair.ac.id/id/eprint/123472 | ||||||||||
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