堆叠人工神经网络预测 COVID-19 大流行期间的精神疾病。

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY European Archives of Psychiatry and Clinical Neuroscience Pub Date : 2024-12-01 Epub Date: 2024-04-01 DOI:10.1007/s00406-024-01799-8
Usharani Bhimavarapu
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引用次数: 0

摘要

个人的心理健康危机和 COVID-19 大流行导致精神障碍。与其他因素类似,COVID-19 病毒的传播与个人的焦虑、压力和抑郁程度有关。大流行过后,精神疾病病例的增加和抑郁症的流行达到了顶峰。大流行期间,有限的社会干预、交流减少、同伴支持和社会隔离增加,导致抑郁、压力和焦虑水平升高,从而引发精神疾病。生理痛苦与精神障碍有关,其负面影响主要可以通过早期发现和治疗得到改善。早期发现精神疾病对于及时干预以减缓疾病的严重程度和减轻个人健康负担至关重要。诊断精神疾病的实验室检测依赖于个人对精神状态的自我报告,但这需要大量的人力和时间。线性或非线性回归等传统方法无法包含许多解释变量,因为它们容易出现过度拟合。最先进的模型面临的主要挑战是在早期检测精神疾病方面表现不佳。深度学习模型可以处理众多变量。目前的研究侧重于人口背景、凯斯勒心理压力、幸福感和大流行期间心理健康的健康决定因素,以预测心理健康。这项研究的预测有助于快速诊断和治疗,促进公众的整体心理健康。尽管存在潜在的反应偏差,但这些比例都异常高,而且某些人面临的风险可能更高。在 COVID-19 大流行的背景下,一项针对精神疾病患者的调查显示,在表达大量或严重忧虑的人群中,儿童和神经症患者的比例过高。
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Stacked artificial neural network to predict the mental illness during the COVID-19 pandemic.

The individual's mental health crisis and the COVID-19 pandemic lead to mental disorders. The transmission of the COVID-19 virus is associated with the levels of anxiety, stress, and depression in individuals, similar to other factors. Increases in mental illness cases and the prevalence of depression have peaked after the pandemic struck. The limited social intervention, reduced communication, peer support, and increased social isolation during the pandemic resulted in higher levels of depression, stress, and anxiety which leads to mental illness. Physiological distress is associated with the mental disorders, and its negative impact can be improved mainly by early detection and treatment. Early identification of mental illness is crucial for timely intervention to decelerate disorder severity and lessen individual health burdens. Laboratory tests for diagnosing mental illness depend on the self-reports of one's mental status, but it is labor intensive and time consuming. Traditional methods like linear or nonlinear regression cannot include many explanatory variables as they are prone to overfitting. The main challenge of the state-of-the-art models is the poor performance in detecting mental illnesses at early stages. Deep learning models can handle numerous variables. The current study focuses on demographic background, Kessler Psychological Distress, Happiness, and Health determinants of mental health during the pandemic to predict the mental health. This study's prediction can help rapid diagnosis and treatment and promote overall public mental health. Despite potential response bias, these proportions are exceptionally elevated, and it's plausible that certain individuals face an even higher level of risk. In the context of the COVID-19 pandemic, an investigation into mental health patients revealed a disproportionate representation of children and individuals with neurotic disorders among those articulating substantial or severe apprehensions.

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来源期刊
CiteScore
8.80
自引率
4.30%
发文量
154
审稿时长
6-12 weeks
期刊介绍: The original papers published in the European Archives of Psychiatry and Clinical Neuroscience deal with all aspects of psychiatry and related clinical neuroscience. Clinical psychiatry, psychopathology, epidemiology as well as brain imaging, neuropathological, neurophysiological, neurochemical and moleculargenetic studies of psychiatric disorders are among the topics covered. Thus both the clinician and the neuroscientist are provided with a handy source of information on important scientific developments.
期刊最新文献
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