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Exploring the Intersection between Social Determinants of Health and Unmet Dental Care Needs Using Deep Learning

机译:深入学习探索健康和未满足牙科护理需求的社会决定因素之间的交汇处

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摘要

The goals of this study were to develop a risk prediction model in unmet dental care needs and to explore the intersection between social determinants of health and unmet dental care needs in the United States. Data from the 2016 Medical Expenditure Panel Survey were used for this study. A chi-squared test was used to examine the difference in social determinants of health between those with and without unmet dental needs. Machine learning was used to determine top predictors of unmet dental care needs and to build a risk prediction model to identify those with unmet dental care needs. Age was the most important predictor of unmet dental care needs. Other important predictors included income, family size, educational level, unmet medical needs, and emergency room visit charges. The risk prediction model of unmet dental care needs attained an accuracy of 82.6%, sensitivity of 77.8%, specificity of 87.4%, precision of 82.9%, and area under the curve of 0.918. Social determinants of health have a strong relationship with unmet dental care needs. The application of deep learning in artificial intelligence represents a significant innovation in dentistry and enables a major advancement in our understanding of unmet dental care needs on an individual level that has never been done before. This study presents promising findings and the results are expected to be useful in risk assessment of unmet dental care needs and can guide targeted intervention in the general population of the United States.
机译:本研究的目标是在未满足的牙科护理需求中制定风险预测模型,并探讨美国健康和未满足牙科护理需求的社会决定因素之间的交叉。来自2016年医疗支出面板调查的数据用于本研究。用于检查有和没有未满足牙科需求的人之间健康的社会决定因素的差异。机器学习用于确定未满足牙科护理需求的顶级预测因子,并建立风险预测模型,以确定具有未满足牙科护理需求的风险预测模型。年龄是未满足牙科护理需求的最重要的预测因子。其他重要预测因子包括收入,家庭规模,教育水平,未满足的医疗需求和急诊室访问费用。未满足牙科护理需求的风险预测模型达到82.6%,灵敏度为77.8%,特异性为87.4%,精度为82.9%,曲线为0.918。健康的社会决定因素与未满足的牙科护理需求有很强的关系。深度学习在人工智能中的应用代表了牙科的重大创新,使我们对未完成的个人水平的未满足牙科护理需求的重大进步。本研究提出了有望的结果,预计结果将在未满足牙科护理需求的风险评估中有用,并可以指导美国普通人口的目标干预。

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