Sherif Mohamed A, Khalil Mostafa Z, Shukla Rammohan, Brown Joshua C, Carpenter Linda L
Lifespan Physician Group, Department of Psychiatry and Human Behavior, The Warren Alpert Medical School of Brown University, Carney Institute for Brain Science, Norman Prince Neurosciences Institute, Providence, RI, United States.
Department of Psychiatry and Behavioral Health, Penn State Milton S. Hershey Medical Center, Penn State College of Medicine, Hershey, PA, United States.
Front Psychiatry. 2023 Feb 23;14:976921. doi: 10.3389/fpsyt.2023.976921. eCollection 2023.
Synapses and spines play a significant role in major depressive disorder (MDD) pathophysiology, recently highlighted by the rapid antidepressant effect of ketamine and psilocybin. According to the Bayesian brain and interoception perspectives, MDD is formalized as being stuck in affective states constantly predicting negative energy balance. To understand how spines and synapses relate to the predictive function of the neocortex and thus to symptoms, we used the temporal memory (TM), an unsupervised machine-learning algorithm. TM models a single neocortical layer, learns in real-time, and extracts and predicts temporal sequences. TM exhibits neocortical biological features such as sparse firing and continuous online learning using local Hebbian-learning rules.
We trained a TM model on random sequences of upper-case alphabetical letters, representing sequences of affective states. To model depression, we progressively destroyed synapses in the TM model and examined how that affected the predictive capacity of the network. We found that the number of predictions decreased non-linearly.
Destroying 50% of the synapses slightly reduced the number of predictions, followed by a marked drop with further destruction. However, reducing the synapses by 25% distinctly dropped the confidence in the predictions. Therefore, even though the network was making accurate predictions, the network was no longer confident about these predictions.
These findings explain how interoceptive cortices could be stuck in limited affective states with high prediction error. Connecting ketamine and psilocybin's proposed mechanism of action to depression pathophysiology, the growth of new synapses would allow representing more futuristic predictions with higher confidence. To our knowledge, this is the first study to use the TM model to connect changes happening at synaptic levels to the Bayesian formulation of psychiatric symptomatology. Linking neurobiological abnormalities to symptoms will allow us to understand the mechanisms of treatments and possibly, develop new ones.
突触和树突棘在重度抑郁症(MDD)的病理生理学中起着重要作用,最近氯胺酮和裸盖菇素的快速抗抑郁作用凸显了这一点。根据贝叶斯大脑和内感受观点,MDD被形式化为陷入不断预测负能量平衡的情感状态。为了理解树突棘和突触如何与新皮层的预测功能相关联,进而与症状相关联,我们使用了时间记忆(TM),一种无监督机器学习算法。TM对单个新皮层层进行建模,实时学习,并提取和预测时间序列。TM展现出新皮层的生物学特征,如稀疏放电和使用局部赫布学习规则的连续在线学习。
我们在由大写字母组成的随机序列上训练TM模型,这些序列代表情感状态序列。为了模拟抑郁症,我们逐步破坏TM模型中的突触,并研究这如何影响网络的预测能力。我们发现预测数量呈非线性下降。
破坏50%的突触会使预测数量略有减少,进一步破坏则会导致显著下降。然而,将突触减少25%会明显降低对预测的信心。因此,即使网络做出了准确的预测,它对这些预测也不再有信心。
这些发现解释了内感受皮层如何可能陷入具有高预测误差的有限情感状态。将氯胺酮和裸盖菇素的作用机制与抑郁症病理生理学联系起来,新突触的生长将允许以更高的信心表示更多未来的预测。据我们所知,这是第一项使用TM模型将突触水平发生的变化与精神症状学的贝叶斯公式联系起来的研究。将神经生物学异常与症状联系起来将使我们能够理解治疗机制,并有可能开发新的治疗方法。