Faculty of Medicine, University of Novi Sad, 21000 Novi Sad, Serbia.
Faculty of Geology, Campus de Llamaquique, University of Oviedo, 33005 Oviedo, Spain.
Int J Environ Res Public Health. 2021 Feb 16;18(4):1890. doi: 10.3390/ijerph18041890.
(1) Background: Modern medicine generates a great deal of information that stored in medical databases. Simultaneously, extracting useful knowledge and making scientific decisions for diagnosis and treatment of diseases becomes increasingly necessary. Headache disorders are the most prevalent of all the neurological conditions. Headaches have not only medical but also great socioeconomic significance. The aim of this research is to develop an intelligent system for diagnosing primary headache disorders. (2) Methods: This research applied various mathematical, statistical and artificial intelligence techniques, among which the most important are: Calinski-Harabasz index, Analytical Hierarchy Process, and Weighted Fuzzy C-means Clustering Algorithm. These methods, techniques and methodologies are used to create a hybrid intelligent system for diagnosing primary headache disorders. The proposed intelligent diagnostic system is tested with original real-world data set with different metrics. (3) Results: First at all, nine of 20 attributes - features from International Headache Society (IHS) criteria are selected, and then only five most important attributes from IHS criteria are selected. The calculation result based on the Calinski-Harabasz index value (178) for the optimal number of clusters is three, and they present three classes of headaches: (i) migraine, (ii) tension-type headaches (TTHs), and (iii) other primary headaches (OPHs). The proposed hybrid intelligent system shows the following quality metrics: Accuracy 75%; Precision 67% for migraine, 74% for TTHs, 86% for OPHs, and Average Precision 77%; Recall 86% for migraine, 73% for TTHs, 67% for OPHs, Average Recall 75%; F score 75% for migraine, 74% for TTHs, 75% for OPHs, and Average F score 75%. (4) Conclusions: The hybrid intelligent system presents qualitative and respectable experimental results. The implementation of existing diagnostics systems and the development of new diagnostics systems in medicine is necessary in order to help physicians make quality diagnosis and decide the best treatments for the patients.
(1) 背景:现代医学产生了大量存储在医学数据库中的信息。同时,提取有用的知识并做出科学决策,以进行疾病的诊断和治疗变得越来越必要。头痛障碍是所有神经疾病中最常见的。头痛不仅具有医学意义,而且具有巨大的社会经济意义。本研究的目的是开发一种用于诊断原发性头痛障碍的智能系统。(2) 方法:本研究应用了各种数学、统计和人工智能技术,其中最重要的是:Calinski-Harabasz 指数、层次分析法和加权模糊 C-均值聚类算法。这些方法、技术和方法被用于创建用于诊断原发性头痛障碍的混合智能系统。所提出的智能诊断系统使用不同指标的原始真实数据集进行测试。(3) 结果:首先,从国际头痛协会(IHS)标准中选择了 20 个属性-特征中的 9 个,然后从 IHS 标准中仅选择了 5 个最重要的属性。基于 Calinski-Harabasz 指数值(178)的计算结果,最佳聚类数为 3,它们代表了三种头痛类型:(i)偏头痛,(ii)紧张型头痛(TTHs),和(iii)其他原发性头痛(OPHs)。所提出的混合智能系统显示了以下质量指标:准确率为 75%;偏头痛的精度为 67%,TTHs 的精度为 74%,OPHs 的精度为 86%,平均精度为 77%;偏头痛的召回率为 86%,TTHs 的召回率为 73%,OPHs 的召回率为 67%,平均召回率为 75%;偏头痛的 F 分数为 75%,TTHs 的 F 分数为 74%,OPHs 的 F 分数为 75%,平均 F 分数为 75%。(4) 结论:混合智能系统呈现出定性和可观的实验结果。为了帮助医生做出高质量的诊断并为患者选择最佳治疗方案,有必要实施现有的诊断系统并开发医学中的新诊断系统。