...
首页> 外文期刊>JDR clinical and translational research. >Developing Children's Oral Health Assessment Toolkits Using Machine Learning Algorithm
【24h】

Developing Children's Oral Health Assessment Toolkits Using Machine Learning Algorithm

机译:发展孩子的口腔健康评估工具箱使用机器学习算法

获取原文
获取原文并翻译 | 示例
           

摘要

Objectives: Evaluating children's oral health status and treatment needs is challenging. We aim to build oral health assessment toolkits to predict Children's Oral Health Status Index (COHSI) score and referral for treatment needs (RFTN) of oral health. Parent and Child toolkits consist of short-form survey items (12 for children and 8 for parents) with and without children's demographic information (7 questions) to predict the child's oral health status and need for treatment. Methods: Data were collected from 12 dental practices in Los Angeles County from 2015 to 2016. We predicted COHSI score and RFTN using random Bootstrap samples with manually introduced Gaussian noise together with machine learning algorithms, such as Extreme Gradient Boosting and Naive Bayesian algorithms (using R). The toolkits predicted the probability of treatment needs and the COHSI score with percentile (ranking). The performance of the toolkits was evaluated internally and externally by residual mean square error (RMSE), correlation, sensitivity and specificity. Results: The toolkits were developed based on survey responses from 545 families with children aged 2 to 17 y. The sensitivity and specificity for predicting RFTN were 93% and 49% respectively with the external data. The correlation(s) between predicted and clinically determined COHSI was 0.88 (and 0.91 for its percentile). The RMSEs of the COHSI toolkit were 4.2 for COHSI (and 1.3 for its percentile). Conclusions: Survey responses from children and their parents/guardians are predictive for clinical outcomes. The toolkits can be used by oral health programs at baseline among school populations. The toolkits can also be used to quantify differences between pre- and post-dental care program implementation. The toolkits' predicted oral health scores can be used to stratify samples in oral health research. Knowledge Transfer Statement: This study creates the oral health toolkits that combine self- and proxy- reported short forms with children's demographic characteristics to predict children's oral health and treatment needs using Machine Learning algorithms. The toolkits can be used by oral health programs at baseline among school populations to quantify differences between pre and post dental care program implementation. The toolkits can also be used to stratify samples according to the treatment needs and oral health status.
机译:目的:评估儿童的口腔健康状态和治疗需要的是具有挑战性的。建立口腔健康评估工具包预测儿童的口腔健康状况指数(COHSI)评分和转诊治疗的需要(RFTN)的口腔健康。由短式调查项目(12孩子和父母8)有或没有儿童人口统计信息(7问题)预测孩子的口腔健康状况和需要接受治疗。在洛杉矶县12个牙科实践从2015年到2016年。手动RFTN使用随机引导和样品介绍了高斯噪声和机器梯度学习算法,如极端提高和朴素贝叶斯算法(使用R)。工具包预测的概率治疗需要和COHSI得分百分位(排名)。工具包是评估内部和外部剩余均方误差(RMSE),相关性,敏感性和特异性。结果:工具包开发基于调查结果从545有孩子的家庭2岁至17岁的y。敏感性和特异性预测RFTN分别为93%和49%外部数据。预测和临床之间COHSI决定为0.88(0.91,其百分比)。COHSI COHSI工具箱4.2的(和1.3的百分比)。从儿童和他们的反应父母/监护人为临床预测结果。项目基线学校人群。工具包也可以用来量化之间的差异和post-dental护理程序的实现。口腔健康分数可用于分层样品在口腔健康研究。转让声明:本研究创建了口腔卫生工具包,结合自我-和代理报道与儿童人口简写形式特征来预测儿童的口腔健康和治疗需要使用机器学习算法。在基线在学校健康项目人口量化前之间的区别和牙科保健计划后实施。工具箱还可以用于分层样品根据治疗的需要和口腔健康的地位。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号