School of Psychological and Cognitive Sciences, Peking University, Beijing 100871, China.
Comput Intell Neurosci. 2022 Apr 13;2022:8418589. doi: 10.1155/2022/8418589. eCollection 2022.
It was to explore the application value of health cloud service platform based on data mining algorithm and wireless network in the analysis of psychosocial factors and psychological characteristics of personality of patients with chronic diseases. Based on the demand analysis of cloud service platform for chronic diseases, a health cloud service platform including three modules was established: support layer, application layer, and interaction layer; and K-means algorithm and Apriori algorithm were used to mine and process data. The changes of pulse wave and EEG signal of epileptic seizures before and after processing by wireless network health cloud service platform were analyzed. 42 patients with idiopathic generalized epilepsy were selected as the research subjects, and 40 volunteers with normal physical examination during the same period were selected as the control group. The differences in the basic clinical characteristics data, Hamilton Anxiety Scale (HAMA), Hamilton Depression Scale (HAMD), Symptom Checklist 90 (SCL-90), and Eysenck Personality Questionnaire-Revision Short Scale for Chinese (EPQ-RSC) were compared between the two groups. It was found that the initial EEG signals of epileptic patients had noise pollution before and after the seizure, and the noise in the EEG signals was filtered out after digital technology processing in the cloud service platform. The maximum number of epileptic patients aged 18∼30 years was 17 (40.48%), and the mean scores of HAMD and HAMA scales in the epileptic group were significantly higher than those in the control group ( < 0.001). The total score of SCL-90, somatization, obsessive-compulsive symptoms, interpersonal sensitivity, depression, anxiety, hostility, phobic anxiety, paranoid ideation, and psychosis in the epilepsy group were obviously higher than those in the control group ( < 0.01). The mean value of EPQ-RSC and neuroticism () was clearly higher ( < 0.05), the mean value of extroversion () was significantly lower ( < 0.01), and the mean value of Lie Scale was significantly higher ( < 0.05) in the epileptic group in contrast with those in the control group. It indicates that the cloud service platform for chronic diseases based on artificial intelligence data mining technology and wireless network has potential application value. Epilepsy patients with chronic diseases should be paid more attention to their psychosocial factors and psychological characteristics of personality in the treatment process.
本文旨在探讨基于数据挖掘算法和无线网络的健康云服务平台在慢性病患者社会心理因素和人格心理特征分析中的应用价值。基于慢性病云服务平台的需求分析,建立了包括支持层、应用层和交互层的健康云服务平台;并采用 K-means 算法和 Apriori 算法对数据进行挖掘和处理。分析了无线健康云服务平台处理前后癫痫发作患者脉搏波和 EEG 信号的变化。选取 42 例特发性全面性癫痫患者为研究对象,同期选取 40 例体检正常的志愿者作为对照组。比较两组患者的基本临床特征资料、汉密尔顿焦虑量表(HAMA)、汉密尔顿抑郁量表(HAMD)、症状自评量表 90(SCL-90)、艾森克人格问卷修订简式量表中国版(EPQ-RSC)的差异。结果发现,癫痫患者初始 EEG 信号在发作前和发作后均存在噪声污染,经云服务平台数字技术处理后可滤除 EEG 信号中的噪声。癫痫患者中年龄 18~30 岁者最多,为 17 例(40.48%);癫痫组 HAMD 量表和 HAMA 量表评分均明显高于对照组( < 0.001)。SCL-90 总分、躯体化、强迫症状、人际关系敏感、抑郁、焦虑、敌对、恐怖、偏执、精神病性在癫痫组中明显高于对照组( < 0.01)。EPQ-RSC 及神经质( < 0.05)均值明显增高,外向性( < 0.01)均值明显降低,掩饰量表( < 0.05)均值明显增高,与对照组比较差异有统计学意义。提示基于人工智能数据挖掘技术和无线网络的慢性病云服务平台具有潜在的应用价值,慢性病癫痫患者在治疗过程中应更加关注其社会心理因素和人格心理特征。