数字情绪识别显示设计在精神分裂症早期干预中的有效性分析

IF 5.7 1区 医学 Q1 PSYCHIATRY Schizophrenia Bulletin Pub Date : 2025-02-18 DOI:10.1093/schbul/sbaf007.014
Jia Liu, Xianjie Zhou*, Yue Sun
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Study aims to explore how to through the perspective of knowledge management, combined with clinical symptoms, drug response, cognitive health and mental related factors, optimize the early diagnosis of schizophrenia and treatment path, and explore the special group of schizophrenia patients’ health care utilization and cost benefit, in order to provide more accurate and more effective mental health services for college students. Methods Using the case-control study method, 300 college students who met the diagnostic criteria for schizophrenia and 150 healthy college students were selected as the control group. By using neuroimaging techniques such as Functional Magnetic Resonance Imaging (fMRI) and Wisconsin Card Sorting Test (WCST), the cognitive and social functions of two groups of students were evaluated. Meanwhile, the visual scanning path pattern analysis technique was used to examine the patient’s ability to process facial emotion perception. After data collection, multiple linear regression analysis was used to explore the relationship between cognitive function, social function, and facial emotion perception and the severity of schizophrenia symptoms. Results The results showed that the schizophrenia patient group performed significantly less in cognitive function tests and social function assessment than the control group (P<0.01). Multiple linear regression analysis showed that cognitive function (β=0.65, P<0.001) and social function (β=0.52, P<0.001) were significant predictors of symptom severity in schizophrenia. In addition, there was a significant correlation between facial emotion perceptual processing ability and symptom severity (β=0.48, P<0.01). In terms of treatment pathway optimization, patient treatment adherence and quality of life can be significantly improved through knowledge management strategies such as patient education, family support and integration of community resources (P<0.05). Discussion The results reveal the key role of cognitive function, social function and facial emotional perception in the early recognition and intervention of schizophrenia. These dimensions not only serve as important indicators for early diagnosis of schizophrenia but also show their importance in assessing patient symptom severity. Impairments of cognitive and social functioning, and a decline in facial emotion perceptual processing, together constitute the biological and behavioral markers of early recognition in schizophrenia. Through the application of knowledge management strategies, such as patient education, family support, and integration of community resources, one can optimize treatment paths for patients with schizophrenia and improve treatment outcomes. 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引用次数: 0

摘要

精神分裂症是一种以思维障碍、幻觉、妄想、情感和社会功能障碍为特征的慢性严重精神障碍。大学生由于其独特的心理发展阶段和社会环境,对精神分裂症的早期识别和干预尤为重要。精神分裂症的早期诊断和治疗对于改善预后、减少残疾和提高生活质量至关重要。然而,由于精神分裂症的复杂性和异质性,早期诊断和治疗途径的选择面临许多挑战。知识管理作为一种系统的方法,能够整合和优化信息、知识和技能,为精神分裂症的早期诊断和治疗提供支持。研究旨在探讨如何通过知识管理的视角,结合临床症状、药物反应、认知健康和心理相关因素,优化精神分裂症的早期诊断和治疗路径,探索特殊群体精神分裂症患者的医疗保健利用和成本效益,以期为大学生提供更准确、更有效的心理健康服务。方法采用病例-对照研究方法,选取符合精神分裂症诊断标准的大学生300名,健康大学生150名作为对照组。采用功能磁共振成像(fMRI)和威斯康辛卡片分类测验(WCST)等神经影像学技术对两组学生的认知功能和社会功能进行评价。同时,采用视觉扫描路径模式分析技术检测患者的面部情绪感知处理能力。收集资料后,采用多元线性回归分析,探讨认知功能、社交功能、面部情绪知觉与精神分裂症症状严重程度的关系。结果精神分裂症患者组在认知功能测试和社会功能评估中的得分明显低于对照组(p < 0.01)。多元线性回归分析显示,认知功能(β=0.65, P<0.001)和社会功能(β=0.52, P<0.001)是精神分裂症症状严重程度的显著预测因子。面部情绪知觉加工能力与症状严重程度有显著相关(β=0.48, P<0.01)。在治疗路径优化方面,通过患者教育、家庭支持、整合社区资源等知识管理策略可显著提高患者的治疗依从性和生活质量(P<0.05)。结果揭示了认知功能、社会功能和面部情绪知觉在精神分裂症早期识别和干预中的关键作用。这些维度不仅是精神分裂症早期诊断的重要指标,而且在评估患者症状严重程度方面也显示出其重要性。认知和社会功能障碍,以及面部情绪知觉加工的下降,共同构成了精神分裂症早期识别的生物学和行为标志。通过知识管理策略的应用,如患者教育、家庭支持和整合社区资源,可以优化精神分裂症患者的治疗路径,改善治疗效果。同时,通过知识管理策略的应用,综合治疗后症状严重程度评分和生活质量量表评分显著提高,进一步证实了这些策略在改善治疗效果和患者生活质量方面的有效性。资金没有。YKSZ001。
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14 ANALYSIS OF THE EFFECTIVENESS OF DIGITAL EMOTION RECOGNITION DISPLAY DESIGN IN EARLY INTERVENTION FOR SCHIZOPHRENIA
Background Schizophrenia is a chronic and severe mental disorder characterized by disorders of thinking, hallucinations, delusions, and emotional and social dysfunction. Due to their unique psychological development stage and social environment, college students are of special importance for the early identification and intervention of schizophrenia. Early diagnosis and treatment of schizophrenia is essential to improve prognosis, reduce disability, and improve quality of life. However, due to the complexity and heterogeneity of schizophrenia, early diagnosis and treatment pathway selection face many challenges. Knowledge management, as a systematic approach, is able to integrate and optimize information, knowledge, and skills to provide support for the early diagnosis and treatment of schizophrenia. Study aims to explore how to through the perspective of knowledge management, combined with clinical symptoms, drug response, cognitive health and mental related factors, optimize the early diagnosis of schizophrenia and treatment path, and explore the special group of schizophrenia patients’ health care utilization and cost benefit, in order to provide more accurate and more effective mental health services for college students. Methods Using the case-control study method, 300 college students who met the diagnostic criteria for schizophrenia and 150 healthy college students were selected as the control group. By using neuroimaging techniques such as Functional Magnetic Resonance Imaging (fMRI) and Wisconsin Card Sorting Test (WCST), the cognitive and social functions of two groups of students were evaluated. Meanwhile, the visual scanning path pattern analysis technique was used to examine the patient’s ability to process facial emotion perception. After data collection, multiple linear regression analysis was used to explore the relationship between cognitive function, social function, and facial emotion perception and the severity of schizophrenia symptoms. Results The results showed that the schizophrenia patient group performed significantly less in cognitive function tests and social function assessment than the control group (P&lt;0.01). Multiple linear regression analysis showed that cognitive function (β=0.65, P&lt;0.001) and social function (β=0.52, P&lt;0.001) were significant predictors of symptom severity in schizophrenia. In addition, there was a significant correlation between facial emotion perceptual processing ability and symptom severity (β=0.48, P&lt;0.01). In terms of treatment pathway optimization, patient treatment adherence and quality of life can be significantly improved through knowledge management strategies such as patient education, family support and integration of community resources (P&lt;0.05). Discussion The results reveal the key role of cognitive function, social function and facial emotional perception in the early recognition and intervention of schizophrenia. These dimensions not only serve as important indicators for early diagnosis of schizophrenia but also show their importance in assessing patient symptom severity. Impairments of cognitive and social functioning, and a decline in facial emotion perceptual processing, together constitute the biological and behavioral markers of early recognition in schizophrenia. Through the application of knowledge management strategies, such as patient education, family support, and integration of community resources, one can optimize treatment paths for patients with schizophrenia and improve treatment outcomes. Meanwhile, through the application of knowledge management strategies, the significant improvement of symptom severity score and quality of life scale scores after receiving comprehensive treatment, further confirmed the effectiveness of these strategies in improving the treatment effect and patient quality of life. Funding No. YKSZ001.
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来源期刊
Schizophrenia Bulletin
Schizophrenia Bulletin 医学-精神病学
CiteScore
11.40
自引率
6.10%
发文量
163
审稿时长
4-8 weeks
期刊介绍: Schizophrenia Bulletin seeks to review recent developments and empirically based hypotheses regarding the etiology and treatment of schizophrenia. We view the field as broad and deep, and will publish new knowledge ranging from the molecular basis to social and cultural factors. We will give new emphasis to translational reports which simultaneously highlight basic neurobiological mechanisms and clinical manifestations. Some of the Bulletin content is invited as special features or manuscripts organized as a theme by special guest editors. Most pages of the Bulletin are devoted to unsolicited manuscripts of high quality that report original data or where we can provide a special venue for a major study or workshop report. Supplement issues are sometimes provided for manuscripts reporting from a recent conference.
期刊最新文献
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