Nemati Elnaz, Grayden David B, Burkitt Anthony N, Zarei Eskikand Parvin
Department of Biomedical Engineering, The University of Melbourne, Melbourne, Victoria, Australia.
Graeme Clark Institute for Biomedical Engineering, The University of Melbourne, Melbourne, Victoria, Australia.
PLoS Comput Biol. 2025 May 21;21(5):e1013116. doi: 10.1371/journal.pcbi.1013116. eCollection 2025 May.
This study introduces a neurobiologically inspired computational model based on the predictive coding algorithm, providing insights into coherent motion detection processes. The model is designed to reflect key principles observed in the visual system, particularly MT neurons and their surround suppression mechanisms, which play a critical role in detecting global motion. By integrating these principles, the model simulates how motion structures are decomposed into individual and shared sources, mirroring the brain's strategy for extracting coherent motion patterns. The results obtained from random dot stimuli underscore the delicate balance between sensory data and prior knowledge in motion detection. Model testing across varying noise levels reveals that, as noise increases, the model takes longer to stabilize its motion estimates, consistent with psychophysical experiments showing that response duration (e.g., reaction time or decision-making time) also increases under higher noise conditions. The model suggests that an excessive emphasis on prior knowledge prolongs the stabilization time for motion detection, whereas an optimal integration of prior expectations enhances detection accuracy and efficiency by preventing excessive disturbances due to noise. These findings contribute to potential explanations for motion detection deficiencies observed in schizophrenia.
本研究引入了一种基于预测编码算法的受神经生物学启发的计算模型,为连贯运动检测过程提供了见解。该模型旨在反映视觉系统中观察到的关键原理,特别是MT神经元及其周围抑制机制,它们在检测全局运动中起着关键作用。通过整合这些原理,该模型模拟了运动结构如何分解为个体和共享源,反映了大脑提取连贯运动模式的策略。从随机点刺激获得的结果强调了运动检测中感官数据和先验知识之间的微妙平衡。在不同噪声水平下进行的模型测试表明,随着噪声增加,模型稳定其运动估计所需的时间更长,这与心理物理学实验一致,即在较高噪声条件下反应持续时间(例如反应时间或决策时间)也会增加。该模型表明,过度强调先验知识会延长运动检测的稳定时间,而先验期望的最佳整合通过防止噪声引起的过度干扰来提高检测准确性和效率。这些发现为精神分裂症中观察到的运动检测缺陷提供了潜在解释。