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基于规则的算法开发与验证,用于通过结构化电子健康记录数据识别牙周病诊断。

Development and validation of a rule-based algorithm to identify periodontal diagnosis using structured electronic health record data.

机构信息

Department of Diagnostic and Biomedical Sciences, University of Texas at Houston, Health Science Center, Houston, Texas, USA.

Willamette Dental Group and Skourtes Institute, Hillsboro, Oregon, USA.

出版信息

J Clin Periodontol. 2024 May;51(5):547-557. doi: 10.1111/jcpe.13938. Epub 2024 Jan 11.

Abstract

AIM

To develop and validate an automated electronic health record (EHR)-based algorithm to suggest a periodontal diagnosis based on the 2017 World Workshop on the Classification of Periodontal Diseases and Conditions.

MATERIALS AND METHODS

Using material published from the 2017 World Workshop, a tool was iteratively developed to suggest a periodontal diagnosis based on clinical data within the EHR. Pertinent clinical data included clinical attachment level (CAL), gingival margin to cemento-enamel junction distance, probing depth, furcation involvement (if present) and mobility. Chart reviews were conducted to confirm the algorithm's ability to accurately extract clinical data from the EHR, and then to test its ability to suggest an accurate diagnosis. Subsequently, refinements were made to address limitations of the data and specific clinical situations. Each refinement was evaluated through chart reviews by expert periodontists at the study sites.

RESULTS

Three-hundred and twenty-three charts were manually reviewed, and a periodontal diagnosis (healthy, gingivitis or periodontitis including stage and grade) was made by expert periodontists for each case. After developing the initial version of the algorithm using the unmodified 2017 World Workshop criteria, accuracy was 71.8% for stage alone and 64.7% for stage and grade. Subsequently, 16 modifications to the algorithm were proposed and 14 were accepted. This refined version of the algorithm had 79.6% accuracy for stage alone and 68.8% for stage and grade together.

CONCLUSIONS

Our findings suggest that a rule-based algorithm for suggesting a periodontal diagnosis using EHR data can be implemented with moderate accuracy in support of chairside clinical diagnostic decision making, especially for inexperienced clinicians. Grey-zone cases still exist, where clinical judgement will be required. Future applications of similar algorithms with improved performance will depend upon the quality (completeness/accuracy) of EHR data.

摘要

目的

开发和验证一种基于电子健康记录(EHR)的自动化算法,根据 2017 年牙周病分类世界工作会议制定的标准,提出牙周病诊断建议。

材料和方法

使用 2017 年牙周病分类世界工作会议发布的资料,迭代开发一种工具,根据 EHR 中的临床数据提出牙周病诊断建议。相关临床数据包括临床附着水平(CAL)、牙龈边缘到牙骨质-釉质界的距离、探诊深度、牙周袋深度、分叉病变(如有)和动度。进行图表回顾,以确认算法从 EHR 中准确提取临床数据的能力,然后测试其提出准确诊断的能力。随后,针对数据和特定临床情况的局限性进行了改进。在研究地点,由专家牙周病医生通过图表回顾评估每个改进。

结果

共手动审查了 323 份图表,并由专家牙周病医生为每个病例做出了牙周病诊断(健康、牙龈炎或牙周炎,包括分期和分级)。在使用未经修改的 2017 年牙周病分类世界工作会议标准开发初始版本的算法后,分期的准确率为 71.8%,分期和分级的准确率为 64.7%。随后,提出了 16 项算法修改建议,并接受了 14 项。经改进后的算法分期的准确率为 79.6%,分期和分级的准确率为 68.8%。

结论

我们的研究结果表明,使用 EHR 数据提出牙周病诊断建议的基于规则的算法可以实现中等准确性,支持椅旁临床诊断决策,特别是对经验不足的临床医生。仍存在灰色地带病例,需要临床判断。未来具有改进性能的类似算法的应用将取决于 EHR 数据的质量(完整性/准确性)。

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