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An ensemble learning method for asthma control level detection with leveraging medical knowledge-based classifier and supervised learning

机译:基于医学知识的分类和监督学习的哮喘控制水平检测的集合学习方法

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摘要

Approximately 300 million people are afflicted with asthma around the world, with the estimated death rate of 250,000 cases, indicating the significance of this disease. If not treated, it can turn into a serious public health problem. The best method to treat asthma is to control it. Physicians recommend continuous monitoring on asthma symptoms and offering treatment preventive plans based on the patient’s control level. Therefore, successful detection of the disease control level plays a critical role in presenting treatment plans. In view of this objective, we collected the data of 96 asthma patients within a 9-month period from a specialized hospital for pulmonary diseases in Tehran. A new ensemble learning algorithm with combining physicians’ knowledge in the form of a rule-based classifier and supervised learning algorithms is proposed to detect asthma control level in a multivariate dataset with multiclass response variable. The model outcome resulting from the balancing operations and feature selection on data yielded the accuracy of 91.66%. Our proposed model combines medical knowledge with machine learning algorithms to classify asthma control level more accurately. This model can be applied in electronic self-care systems to support the real-time decision and personalized warnings on possible deterioration of asthma control level. Such tools can centralize asthma treatment from the current reactive care models into a preventive approach in which the physician’s therapeutic actions would be based on control level.
机译:世界各地约有3亿人受到哮喘的折磨,估计死亡率为250,000例,表明这种疾病的意义。如果没有治疗,它可以变成严重的公共卫生问题。治疗哮喘的最佳方法是控制它。医生建议持续监测哮喘症状,并根据患者的控制水平提供治疗预防计划。因此,成功检测疾病控制水平在呈现治疗计划方面发挥着关键作用。鉴于此目标,我们在德黑兰肺病专业医院的9个月内收集了96名哮喘患者的数据。提出了一种新的集合学习算法,以规则的分类器和监督学习算法的形式组合了医师知识,以检测具有多字母响应变量的多元数据集中的哮喘控制级别。由平衡操作和数据的特征选择产生的模型结果产生了91.66%的准确性。我们所提出的模型将医学知识与机器学习算法结合起来更准确地对哮喘控制水平进行分类。该模型可应用于电子自我护理系统,以支持哮喘控制水平可能劣化的实时决策和个性化警报。这些工具可以将目前的反应性模型的哮喘治疗集中成预防方法,其中医生的治疗行为将基于控制水平。

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