Houillon Audrey, Bessière Pierre, Droulez Jacques
Laboratoire de Physiologie de la Perception et de l'Action, CNRS/Collège de France, Paris, France.
Acta Biotheor. 2010 Sep;58(2-3):103-20. doi: 10.1007/s10441-010-9104-y. Epub 2010 Jul 28.
When we perceive the external world, our brain has to deal with the incompleteness and uncertainty associated with sensory inputs, memory and prior knowledge. In theoretical neuroscience probabilistic approaches have received a growing interest recently, as they account for the ability to reason with incomplete knowledge and to efficiently describe perceptive and behavioral tasks. How can the probability distributions that need to be estimated in these models be represented and processed in the brain, in particular at the single cell level? We consider the basic function carried out by photoreceptor cells which consists in detecting the presence or absence of light. We give a system-level understanding of the process of phototransduction based on a bayesian formalism: we show that the process of phototransduction is equivalent to a temporal probabilistic inference in a Hidden Markov Model (HMM), for estimating the presence or absence of light. Thus, the biochemical mechanisms of phototransduction underlie the estimation of the current state probability distribution of the presence of light. A classical descriptive model describes the interactions between the different molecular messengers, ions, enzymes and channel proteins occurring within the photoreceptor by a set of nonlinear coupled differential equations. In contrast, the probabilistic HMM model is described by a discrete recurrence equation. It appears that the binary HMM has a general solution in the case of constant input. This allows a detailed analysis of the dynamics of the system. The biochemical system and the HMM behave similarly under steady-state conditions. Consequently a formal equivalence can be found between the biochemical system and the HMM. Numerical simulations further extend the results to the dynamic case and to noisy input. All in all, we have derived a probabilistic model equivalent to a classical descriptive model of phototransduction, which has the additional advantage of assigning a function to phototransduction. The example of phototransduction shows how simple biochemical interactions underlie simple probabilistic inferences.
当我们感知外部世界时,我们的大脑必须处理与感官输入、记忆和先验知识相关的不完整性和不确定性。在理论神经科学中,概率方法最近受到了越来越多的关注,因为它们能够解释利用不完整知识进行推理以及有效描述感知和行为任务的能力。在大脑中,尤其是在单细胞水平上,这些模型中需要估计的概率分布是如何被表示和处理的呢?我们考虑光感受器细胞执行的基本功能,即检测光的存在或不存在。我们基于贝叶斯形式主义对光转导过程进行系统层面的理解:我们表明光转导过程等同于隐马尔可夫模型(HMM)中的时间概率推理,用于估计光的存在或不存在。因此,光转导的生化机制是估计光存在的当前状态概率分布的基础。一个经典的描述模型通过一组非线性耦合微分方程来描述光感受器内不同分子信使、离子、酶和通道蛋白之间的相互作用。相比之下,概率HMM模型由一个离散递归方程描述。在恒定输入的情况下,二元HMM似乎有一个通解。这使得对系统动力学进行详细分析成为可能。在稳态条件下,生化系统和HMM的行为相似。因此,在生化系统和HMM之间可以找到形式上的等价性。数值模拟进一步将结果扩展到动态情况和有噪声输入的情况。总而言之,我们推导出了一个与光转导的经典描述模型等价的概率模型,该模型还具有为光转导赋予功能的额外优势。光转导的例子展示了简单的生化相互作用是如何构成简单的概率推理基础的。