Machine learning-based high-frequency neuronal spike reconstruction from low-frequency and low-sampling-rate recordings.
Nari HongBoil KimJaewon LeeHan Kyoung ChoeKyong Hwan JinHongki KangPublished in: Nature communications (2024)
Recording neuronal activity using multiple electrodes has been widely used to understand the functional mechanisms of the brain. Increasing the number of electrodes allows us to decode more variety of functionalities. However, handling massive amounts of multichannel electrophysiological data is still challenging due to the limited hardware resources and unavoidable thermal tissue damage. Here, we present machine learning (ML)-based reconstruction of high-frequency neuronal spikes from subsampled low-frequency band signals. Inspired by the equivalence between high-frequency restoration and super-resolution in image processing, we applied a transformer ML model to neuronal data recorded from both in vitro cultures and in vivo male mouse brains. Even with the x8 downsampled datasets, our trained model reasonably estimated high-frequency information of spiking activity, including spike timing, waveform, and network connectivity. With our ML-based data reduction applicable to existing multichannel recording hardware while achieving neuronal signals of broad bandwidths, we expect to enable more comprehensive analysis and control of brain functions.
Keyphrases
- high frequency
- transcranial magnetic stimulation
- cerebral ischemia
- machine learning
- big data
- resting state
- electronic health record
- white matter
- functional connectivity
- deep learning
- artificial intelligence
- blood brain barrier
- oxidative stress
- brain injury
- healthcare
- gold nanoparticles
- solid state
- health information
- single cell