Impact of Machine Learning and Prediction Models in the Diagnosis of Oral Health Conditions

N. Panda, Soumya subhashree Satapathy, S. Bhuyan, Ruchi Bhuyan
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Abstract

Introduction: Recent developments in data science and the employment of machine learning algorithms (ML) have revolutionized health sciences in the prediction of diseases using laboratory data. Oral diseases are observed in all age groups and are estimated to affect about a 3.5billion people as per WHO 2022 statistics. Using the existing diagnostic data and taking advantage of ML and prediction models would benefit developing a prediction model for diagnosing oral diseases. Hence, it is quite essential to understand the basic terminologies used in the prediction model. Methods: We retrieve various research papers using Scopus, PubMed, and google scholar databases, where prediction models were used in dentistry. The idea of this review is to explore current models, model validation, discrimination, calibration, and bootstrapping methods used in prediction models for oral diseases. Results: The current advancement of ML techniques plays a significant task in the diagnosis and prognosis of oral diseases. Conclusion: The use of prediction models using ML techniques can improve the accuracy of the treatment methods in oral health. This article aims to provide the required framework, data sets, and methodology to build ML and prediction models for oral diseases.
机器学习和预测模型在口腔健康状况诊断中的影响
导读:数据科学的最新发展和机器学习算法(ML)的应用在使用实验室数据预测疾病方面彻底改变了健康科学。口腔疾病存在于所有年龄组,根据世卫组织2022年的统计数据,估计影响约35亿人。利用已有的诊断数据,利用机器学习和预测模型,有利于建立口腔疾病诊断的预测模型。因此,理解预测模型中使用的基本术语是非常必要的。方法:我们使用Scopus、PubMed和谷歌学者数据库检索各种研究论文,其中预测模型用于牙科。本综述旨在探讨口腔疾病预测模型中使用的现有模型、模型验证、鉴别、校准和自举方法。结果:当前ML技术的发展对口腔疾病的诊断和预后具有重要意义。结论:利用ML技术建立预测模型,可提高口腔健康治疗方法的准确性。本文旨在提供建立口腔疾病机器学习和预测模型所需的框架、数据集和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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