| Literature DB >> 33973362 |
Najla Al Turkestani1,2, Jonas Bianchi1,3, Romain Deleat-Besson1, Celia Le1, Li Tengfei4, Juan Carlos Prieto5, Marcela Gurgel1, Antonio C O Ruellas1,6, Camila Massaro1,7, Aron Aliaga Del Castillo1,7, Karine Evangelista1,8, Marilia Yatabe1, Erika Benavides9, Fabiana Soki9, Winston Zhang10, Kayvan Najarian10, Jonathan Gryak10, Martin Styner11, Jean-Christophe Fillion-Robin12, Beatriz Paniagua12, Reza Soroushmehr10, Lucia H S Cevidanes1.
Abstract
Advancements in technology and data collection generated immense amounts of information from various sources such as health records, clinical examination, imaging, medical devices, as well as experimental and biological data. Proper management and analysis of these data via high-end computing solutions, artificial intelligence and machine learning approaches can assist in extracting meaningful information that enhances population health and well-being. Furthermore, the extracted knowledge can provide new avenues for modern healthcare delivery via clinical decision support systems. This manuscript presents a narrative review of data science approaches for clinical decision support systems in orthodontics. We describe the fundamental components of data science approaches including (a) Data collection, storage and management; (b) Data processing; (c) In-depth data analysis; and (d) Data communication. Then, we introduce a web-based data management platform, the Data Storage for Computation and Integration, for temporomandibular joint and dental clinical decision support systems.Entities:
Keywords: artificial intelligence; decision support systems; machine learning; orthodontics
Mesh:
Year: 2021 PMID: 33973362 PMCID: PMC8988880 DOI: 10.1111/ocr.12492
Source DB: PubMed Journal: Orthod Craniofac Res ISSN: 1601-6335 Impact factor: 1.826