Population Modelling in Affective Disorders.

IF 2.1 Q3 NEUROSCIENCES Current Behavioral Neuroscience Reports Pub Date : 2021-01-01 Epub Date: 2021-04-15 DOI:10.1007/s40473-021-00229-6
Erdem Pulcu
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Abstract

Purpose of review: The prevalence of affective disorders is on the rise. This upward trajectory leads to a substantial personal and societal cost. There is growing body of literature demonstrating decision-making impairments associated with affective disorders, and more studies are using computational modelling methods to infer underlying mechanisms of these impairments from participant choice behaviour. However, lack of population modelling suggests that data resources may still be underutilised.

Recent findings: A number of recent studies associated major depression with abnormal risky decision-making as well as impairments in temporal discounting and social decision-making. These domains capture relevant aspects of real-life decision-making. Consequently, data from these studies can be used to define behavioural phenotypes for major depression.

Summary: The manuscript describes a detailed proposal for population modelling to capture changes in the prevalence rate of major depression. The population modelling approach can also identify which decision-making domains can account for a larger part of impairments in psychosocial functioning and how behavioural interventions built on computational principles can target these to improve real-life psychosocial functioning in patient groups.

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情感性障碍中的人口模型。
综述目的:情感性障碍的患病率呈上升趋势。这种上升趋势导致了巨大的个人和社会成本。越来越多的文献表明决策障碍与情感障碍有关,更多的研究正在使用计算建模方法从参与者的选择行为中推断这些障碍的潜在机制。然而,缺乏人口模型表明数据资源可能仍未得到充分利用。最近的研究发现:许多最近的研究将重度抑郁症与异常的风险决策以及时间贴现和社会决策障碍联系起来。这些领域捕捉了现实生活中决策的相关方面。因此,这些研究的数据可用于定义重度抑郁症的行为表型。摘要:该手稿描述了一个详细的人口模型的建议,以捕捉在严重抑郁症患病率的变化。人口建模方法还可以确定哪些决策领域可以解释社会心理功能障碍的大部分,以及基于计算原理的行为干预如何针对这些领域来改善患者群体的现实社会心理功能。
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来源期刊
Current Behavioral Neuroscience Reports
Current Behavioral Neuroscience Reports Medicine-Public Health, Environmental and Occupational Health
CiteScore
3.60
自引率
0.00%
发文量
11
期刊介绍: Under the leadership of Emil Coccaro, Current Behavioral Neuroscience Reports will provide an in-depth review of topics covering personality and impulse control disorders, psychosis, mood and anxiety disorders, genetics and neuroscience, geropsychiatry and cognitive disorders of late life, child and developmental psychiatry, addictions, and neuromodulation.We accomplish this aim by inviting international authorities to contribute review articles that emphasize new developments and recently published papers of major importance, highlighted by annotated reference lists.  By providing clear, insightful balanced contributions, the journal intends to serve those involved in the field of behavioral neuroscience.
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