Decoding multi-limb movements from two-photon calcium imaging of neuronal activity using deep learning.

Seungbin Park, Megan Lipton, Maria C Dadarlat
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Abstract

Objective.Brain-machine interfaces (BMIs) aim to restore sensorimotor function to individuals suffering from neural injury and disease. A critical step in implementing a BMI is to decode movement intention from recorded neural activity patterns in sensorimotor areas. Optical imaging, including two-photon (2p) calcium imaging, is an attractive approach for recording large-scale neural activity with high spatial resolution using a minimally-invasive technique. However, relating slow two-photon calcium imaging data to fast behaviors is challenging due to the relatively low optical imaging sampling rates. Nevertheless, neural activity recorded with 2p calcium imaging has been used to decode information about stereotyped single-limb movements and to control BMIs. Here, we expand upon prior work by applying deep learning to decode multi-limb movements of running mice from 2p calcium imaging data.Approach.We developed a recurrent encoder-decoder network (LSTM-encdec) in which the output is longer than the input.Main results.LSTM-encdec could accurately decode information about all four limbs (contralateral and ipsilateral front and hind limbs) from calcium imaging data recorded in a single cortical hemisphere.Significance.Our approach provides interpretability measures to validate decoding accuracy and expands the utility of BMIs by establishing the groundwork for control of multiple limbs. Our work contributes to the advancement of neural decoding techniques and the development of next-generation optical BMIs.

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利用深度学习从神经元活动的双光子钙成像解码多肢运动
脑机接口(BMI)旨在恢复神经损伤和疾病患者的感觉运动功能。实现脑机接口的关键步骤是根据感知运动区记录的神经活动模式解码运动意图。光学成像(包括双光子(2p)钙成像)是一种极具吸引力的方法,可利用微创技术以高空间分辨率记录大规模神经活动。然而,由于光学成像采样率相对较低,将慢速双光子钙成像数据与快速行为联系起来具有挑战性。不过,利用双光子钙成像技术记录的神经活动已被用于解码有关单肢定型运动的信息和控制 BMI。在此,我们扩展了之前的工作,应用深度学习从 2p 钙成像数据解码奔跑小鼠的多肢运动。方法:我们开发了一个递归编码器-解码器网络(LSTM-encdec),其中输出比输入长。我们的方法提供了验证解码准确性的可解释性措施,并通过建立多肢控制的基础,扩大了 BMI 的用途。我们的工作有助于神经解码技术的进步和下一代光学 BMI 的开发。
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