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基于真实世界电子健康记录的高血压预后和诊断的功能数据分析与基于案例推理的整合。

Integrating functional data analysis with case-based reasoning for hypertension prognosis and diagnosis based on real-world electronic health records.

机构信息

Department of Mathematics and Computer Science, Tongling University, Tongling, 244061, China.

School of Public Health, Anhui Medical University, Hefei, 230032, China.

出版信息

BMC Med Inform Decis Mak. 2022 Jun 6;22(1):149. doi: 10.1186/s12911-022-01894-7.

Abstract

BACKGROUND

Hypertension is the fifth chronic disease causing death worldwide. The early prognosis and diagnosis are critical in the hypertension care process. Inspired by human philosophy, CBR is an empirical knowledge reasoning method for early detection and intervention of hypertension by only reusing electronic health records. However, the traditional similarity calculation method often ignores the internal characteristics and potential information of medical examination data.

METHODS

In this paper, we first calculate the weights of input attributes by a random forest algorithm. Then, the risk value of hypertension from each medical examination can be evaluated according to the input data and the attribute weights. By fitting the risk values into a risk curve of hypertension, we calculate the similarity between different community residents, and obtain the most similar case according to the similarity. Finally, the diagnosis and treatment protocol of the new case can be given.

RESULTS

The experiment data comes from the medical examination of Tianqiao Community (Tongling City, Anhui Province, China) from 2012 to 2021. It contains 4143 community residents and 43,676 medical examination records. We first discuss the effect of the influence factor and the decay factor on similarity calculation. Then we evaluate the performance of the proposed FDA-CBR algorithm against the GRA-CBR algorithm and the CS-CBR algorithm. The experimental results demonstrate that the proposed algorithm is highly efficient and accurate.

CONCLUSIONS

The experiment results show that the proposed FDA-CBR algorithm can effectively describe the variation tendency of the risk value and always find the most similar case. The accuracy of FDA-CBR algorithm is higher than GRA-CBR algorithm and CS-CBR algorithm, increasing by 9.94 and 16.41%, respectively.

摘要

背景

高血压是全球导致死亡的第五大慢性疾病。在高血压护理过程中,早期预后和诊断至关重要。受人类哲学启发,CBR 是一种通过仅重复使用电子健康记录来对高血压进行早期检测和干预的经验知识推理方法。然而,传统的相似性计算方法通常忽略了医学检查数据的内部特征和潜在信息。

方法

在本文中,我们首先通过随机森林算法计算输入属性的权重。然后,可以根据输入数据和属性权重来评估来自每个医学检查的高血压风险值。通过将风险值拟合到高血压风险曲线上,我们可以计算不同社区居民之间的相似性,并根据相似性获得最相似的病例。最后,可以给出新病例的诊断和治疗方案。

结果

实验数据来自 2012 年至 2021 年中国安徽省铜陵市天桥社区的体检。它包含 4143 名社区居民和 43676 份体检记录。我们首先讨论了影响因素和衰减因素对相似性计算的影响。然后,我们评估了 FDA-CBR 算法对 GRA-CBR 算法和 CS-CBR 算法的性能。实验结果表明,所提出的算法效率高且准确。

结论

实验结果表明,所提出的 FDA-CBR 算法可以有效地描述风险值的变化趋势,并始终找到最相似的病例。FDA-CBR 算法的准确性高于 GRA-CBR 算法和 CS-CBR 算法,分别提高了 9.94%和 16.41%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7886/9169301/8ee6edb1a5af/12911_2022_1894_Fig1_HTML.jpg

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