通过降低对先前精确度的高估,恢复抑郁症患者的双稳态感知。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Wenbo Wang, Changbo Zhu, Ting Jia, Meidan Zu, Yandong Tang, Liqin Zhou, Yanghua Tian, Bailu Si, Ke Zhou
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引用次数: 0

摘要

知觉交替变慢是精神疾病中观察到的一种明显的知觉效应,可以通过影响大脑中血清素水平的抗抑郁疗法来缓解。虽然这些现象已被充分记录,但其背后的神经认知机制仍有待阐明。我们的研究在贝叶斯预测编码框架内采用计算认知方法来探索抑郁症的这些机制,从而弥补了这一空白。我们将预测误差(PE)模型拟合到双目对抗任务的行为数据中,发现抑郁症患者的初始先验精确度显著较高,PE较低,从而导致其转换速度较慢。此外,以血清素为靶点的抗抑郁药物治疗能显著降低先验精确度并提高PE,这两点都能预测抑郁症患者知觉交替率的改善。这些研究结果表明,抑郁症患者的知觉转换速度之所以大大降低,是因为他们更依赖于自上而下的先验,而血清素治疗的疗效在于重新校准了这些先验并提高了PE。我们的研究不仅阐明了抑郁症的认知基础,还表明计算建模是将认知科学与临床心理学相结合的有效工具,能促进我们对抑郁症认知障碍的理解和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reviving Bistable Perception in Patients With Depression by Decreasing the Overestimation of Prior Precision

Slower perceptual alternations, a notable perceptual effect observed in psychiatric disorders, can be alleviated by antidepressant therapies that affect serotonin levels in the brain. While these phenomena have been well documented, the underlying neurocognitive mechanisms remain to be elucidated. Our study bridges this gap by employing a computational cognitive approach within a Bayesian predictive coding framework to explore these mechanisms in depression. We fitted a prediction error (PE) model to behavioral data from a binocular rivalry task, uncovering that significantly higher initial prior precision and lower PE led to a slower switch rate in patients with depression. Furthermore, serotonin-targeting antidepressant treatments significantly decreased the prior precision and increased PE, both of which were predictive of improvements in the perceptual alternation rate of depression patients. These findings indicated that the substantially slower perception switch rate in patients with depression was caused by the greater reliance on top-down priors and that serotonin treatment's efficacy was in its recalibration of these priors and enhancement of PE. Our study not only elucidates the cognitive underpinnings of depression, but also suggests computational modeling as a potent tool for integrating cognitive science with clinical psychology, advancing our understanding and treatment of cognitive impairments in depression.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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