利用机器学习方法确定疾病恐惧、病毒评估和生活质量对慢性病患者社交恐惧症诊断的影响:使用机器学习方法。

IF 0.9 Q4 NURSING
Faruk Erencan Balaban, Nihan Potas
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引用次数: 0

摘要

目的:SARS-CoV-2 和其他流行病仍在继续,而慢性病患者和 60 岁以上的老年人受心理影响最大。本研究是首次对慢性病患者和健康人的生活质量、体育活动、对疾病的恐惧和病毒评价以及社交恐惧症进行比较,并利用机器学习方法对社交恐惧症进行分类建模的最重要研究:定量研究采用 STROBE 准则进行相关性和横断面设计。研究问卷分为四部分:个人信息表、利伯维茨社交恐惧症量表、疾病恐惧和病毒评估量表以及生活质量量表(EUROHIS-WHOQOL-8)。使用机器学习方法对不同的算法进行了研究,以对社交恐惧症进行分类。通过简单随机抽样,参与人数超过了计算出的样本量(n = 1068),最终样本量为 1235 人:结果:慢性病患者的体育锻炼水平和生活质量得分较低。与健康参与者(人数=507)相比,慢性病患者(人数=728)的疾病恐惧和病毒评估量表-35得分和利伯维茨社交恐惧症量表-24得分更高,体力活动水平(3.901 ± 3.035)和生活质量得分(29.016 ± 4.782)更低。两种算法(K-近邻算法和支持向量机算法)的性能最佳。在支持向量机算法中,疾病恐惧和病毒评估量表-35 是对社交恐惧症进行分类的最关键特征。体力活动水平和利伯维茨社交恐惧症量表在k-近邻中似乎呈正相关:该模型对于识别和理解慢性病患者的社交恐惧症因素至关重要。支持向量机算法是识别有恐惧风险的患者的首选算法,集成到智能手机应用中将有助于后续跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining the Effect of Fear of Illness and Virus Evaluation and Quality of Life on Diagnosis of Social Phobia in Patients With Chronic Disease: Using Machine Learning Approaches.

Aim: While the SARS-CoV-2 pandemic and other epidemics continue, individuals with chronic diseases and those over the age of 60 are most affected by the psychological effects. This research is the first and most crucial study comparing the quality of life, physical activities, fear of disease and virus evaluation, and social phobia in chronic patients and healthy individuals, and modeling the classification of social phobia using the machine learning approach.

Methods: The quantitative study used STROBE guidelines for the correlational and cross-sectional design. The research questionnaire was designed in four parts: a personal information form, the Liebowitz Social Phobia Scale, the Fear of Illness and Virus Evaluation Scale, and the Quality of Life Scale (EUROHIS-WHOQOL-8). Different algorithms were examined using the machine learning approach to classify social phobia. More participants were reached than the calculated sample size (n = 1068) using simple random sampling, and the final sample size was 1235.

Results: Patients with chronic diseases had lower physical activity levels and quality of life scores. Patients with chronic diseases (n=728) had higher Fear of Illness and Virus Evaluation Scale-35 scores and Liebowitz Social Phobia Scale-24 scores compared to healthy participants (n=507) and lower physical activity levels (3.901 ± 3.035) and quality of life scores (29.016 ± 4.782). Two algorithms (K-nearest neighbors and support vector machine algorithm) provided the best performance. In support vector machine algorithm, Fear of Illness and Virus Evaluation Scale-35 was the most critical feature in classifying social phobia. Physical activity level and Liebowitz Social Phobia Scale seem to be positively related in k-nearest neighbors.

Conclusion: The model is essential for identifying and understanding social phobia factors in patients with chronic diseases. Support vector machine algorithm is an algorithm that is preferred for identifying patients at risk of fear and will facilitate follow-up when integrated into smartphone applications.

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CiteScore
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