Decoding Continuous Tracking Eye Movements from Cortical Spiking Activity.

International journal of neural systems Pub Date : 2025-01-01 Epub Date: 2024-11-15 DOI:10.1142/S0129065724500709
Kendra K Noneman, J Patrick Mayo
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Abstract

Eye movements are the primary way primates interact with the world. Understanding how the brain controls the eyes is therefore crucial for improving human health and designing visual rehabilitation devices. However, brain activity is challenging to decipher. Here, we leveraged machine learning algorithms to reconstruct tracking eye movements from high-resolution neuronal recordings. We found that continuous eye position could be decoded with high accuracy using spiking data from only a few dozen cortical neurons. We tested eight decoders and found that neural network models yielded the highest decoding accuracy. Simpler models performed well above chance with a substantial reduction in training time. We measured the impact of data quantity (e.g. number of neurons) and data format (e.g. bin width) on training time, inference time, and generalizability. Training models with more input data improved performance, as expected, but the format of the behavioral output was critical for emphasizing or omitting specific oculomotor events. Our results provide the first demonstration, to our knowledge, of continuously decoded eye movements across a large field of view. Our comprehensive investigation of predictive power and computational efficiency for common decoder architectures provides a much-needed foundation for future work on real-time gaze-tracking devices.

从皮层尖峰活动解码连续跟踪眼球运动
眼球运动是灵长类动物与世界互动的主要方式。因此,了解大脑如何控制眼睛对于改善人类健康和设计视觉康复设备至关重要。然而,脑部活动的解密具有挑战性。在这里,我们利用机器学习算法从高分辨率神经元记录中重建跟踪眼球运动。我们发现,只需使用几十个皮层神经元的尖峰数据,就能高精度地解码连续的眼球位置。我们测试了八种解码器,发现神经网络模型的解码精度最高。更简单的模型在大幅减少训练时间的情况下,表现也远超偶然性。我们测量了数据数量(如神经元数量)和数据格式(如二进制宽度)对训练时间、推理时间和泛化能力的影响。正如预期的那样,使用更多输入数据训练模型可以提高性能,但行为输出的格式对于强调或忽略特定眼球运动事件至关重要。据我们所知,我们的研究结果首次展示了在大视野范围内对眼球运动的连续解码。我们对常见解码器架构的预测能力和计算效率进行了全面的研究,为未来实时凝视跟踪设备的研究工作提供了亟需的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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