Ming Hsieh Department of Electrical Engineering, Viterbi School of Engineering, University of Southern California, Los Angeles, California, USA.
Department of Neurological Surgery, University of California, San Francisco, California, USA.
Nat Biotechnol. 2018 Nov;36(10):954-961. doi: 10.1038/nbt.4200. Epub 2018 Sep 10.
The ability to decode mood state over time from neural activity could enable closed-loop systems to treat neuropsychiatric disorders. However, this decoding has not been demonstrated, partly owing to the difficulty of modeling distributed mood-relevant neural dynamics while dealing with the sparsity of mood state measurements. Here we develop a modeling framework to decode mood state variations from multi-site intracranial recordings in seven human subjects with epilepsy who self-reported their mood state intermittently over multiple days. We built dynamic neural encoding models of mood state and corresponding decoders for each individual and demonstrated that mood state variations over time can be decoded from neural activity. Across subjects, the decoders largely recruited neural signals from limbic regions, whose spectro-spatial features were tuned to mood variations. The dynamic models also provided an analytical tool to compute the timescales of the decoded mood state. These results provide an initial line of evidence indicating the feasibility of mood state decoding.
从神经活动中随时间解码情绪状态的能力可以使闭环系统能够治疗神经精神疾病。然而,这种解码尚未得到证明,部分原因是难以在处理情绪状态测量稀疏性的同时对分布式情绪相关神经动力学进行建模。在这里,我们开发了一个建模框架,以便从 7 名患有癫痫症的人类受试者的多部位颅内记录中解码情绪状态变化,这些受试者在多天内间歇性地报告自己的情绪状态。我们为每个人建立了情绪状态的动态神经编码模型和相应的解码器,并证明可以从神经活动中解码随时间变化的情绪状态。在所有受试者中,解码器主要从边缘区域招募神经信号,其频谱 - 空间特征与情绪变化相适应。动态模型还提供了一种分析工具,用于计算解码情绪状态的时间尺度。这些结果提供了初步的证据,表明情绪状态解码是可行的。