Department of Psychiatry, Yale University, New Haven, CT, USA.
Neuropsychopharmacology. 2022 Jun;47(7):1339-1349. doi: 10.1038/s41386-021-01264-3. Epub 2022 Jan 11.
Prediction errors (PEs) are a keystone for computational neuroscience. Their association with midbrain neural firing has been confirmed across species and has inspired the construction of artificial intelligence that can outperform humans. However, there is still much to learn. Here, we leverage the wealth of human PE data acquired in the functional neuroimaging setting in service of a deeper understanding, using an MKDA (multi-level kernel-based density) meta-analysis. Studies were identified with Google Scholar, and we included studies with healthy adult participants that reported activation coordinates corresponding to PEs published between 1999-2018. Across 264 PE studies that have focused on reward, punishment, action, cognition, and perception, consistent with domain-general theoretical models of prediction error we found midbrain PE signals during cognitive and reward learning tasks, and an insula PE signal for perceptual, social, cognitive, and reward prediction errors. There was evidence for domain-specific error signals--in the visual hierarchy during visual perception, and the dorsomedial prefrontal cortex during social inference. We assessed bias following prior neuroimaging meta-analyses and used family-wise error correction for multiple comparisons. This organization of computation by region will be invaluable in building and testing mechanistic models of cognitive function and dysfunction in machines, humans, and other animals. Limitations include small sample sizes and ROI masking in some included studies, which we addressed by weighting each study by sample size, and directly comparing whole brain vs. ROI-based results.
预测误差 (PE) 是计算神经科学的关键。它们与中脑神经放电的关联已在不同物种中得到证实,并激发了人工智能的构建,使其能够超越人类。然而,仍有许多需要学习的地方。在这里,我们利用在功能神经影像学环境中获得的丰富的人类 PE 数据,使用基于多级核的密度 (MKDA) 元分析来进行更深入的理解。通过 Google Scholar 进行了研究,我们纳入了报告与 1999-2018 年期间发表的 PE 相关的激活坐标的健康成年参与者的研究。在关注奖励、惩罚、行动、认知和感知的 264 项 PE 研究中,与预测误差的领域一般性理论模型一致,我们发现中脑 PE 信号在认知和奖励学习任务期间,以及岛叶 PE 信号在感知、社会、认知和奖励预测误差期间。有证据表明存在特定于领域的误差信号——在视觉感知期间的视觉层次结构中,以及在社会推理期间的背内侧前额叶皮层中。我们根据先前的神经影像学元分析评估了偏差,并对多重比较进行了基于家族的错误校正。这种通过区域进行计算的组织对于构建和测试机器、人类和其他动物的认知功能和功能障碍的机制模型将是非常宝贵的。限制包括一些纳入研究中的小样本量和 ROI 掩蔽,我们通过对每个研究进行样本量加权,并直接比较基于全脑和 ROI 的结果来解决这些问题。