Dental Artificial Intelligence Systems: A Review of Various Data Types

计算机科学 数据收集 人工智能 数据质量 数据类型 可穿戴计算机 机器学习 数据挖掘 嵌入式系统 工程类 公制(单位) 统计 运营管理 数学 程序设计语言
作者
Ruoyan Zhang,Haiwen Chen,Yanning Ma,Zuolin Jin
出处
期刊:Discovery Medicine [Discovery Medicine]
卷期号:36 (182): 482-482 被引量:1
标识
DOI:10.24976/discov.med.202436182.45
摘要

With the rapid development of dental artificial intelligence systems (DAIS), a new field known as "Data Dentistry", proposed by Schwendicke in 2021, has successfully bridged the gap between medicine and engineering. This literature review introduces advanced techniques in data collection, outlines the current state of DAIS in data processing, and anticipates the future of DAIS by emphasizing the importance of more extensive and enhanced datasets. The key findings include: Versatility of imaging data: Various types of imaging data, such as X-ray, cone beam computed tomography (CBCT), facial photos, and face and oral scans, can be transformed into datasets used by artificial intelligence systems. Uniform rules in electronic dental record (EDR) systems: EDR systems require standardized rules for general use in DAIS, ensuring compatibility and seamless integration. Potential of wearable device data: Data from wearable devices, including bioelectric signals (such as electromyography), stress sensors, AR glasses, etc., show great potential for enhancing DAIS capabilities. Current DAIS performance focus: Presently, DAIS demonstrate superior performance in object location and disease diagnosis compared to information integration and clinical decision-making. Need for data quality and quantity improvement: Further improvements are needed in both the quality and quantity of data for DAIS.
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