posted on 2024-07-02, 09:13authored byMohammad
Javad Haji Najafi Chemerkouh, Xinyu Zhou, Yunze Yang, Shaopeng Wang
Measuring
neuronal electrical activity, such as action potential
propagation in cells, requires the sensitive detection of the weak
electrical signal with high spatial and temporal resolution. None
of the existing tools can fulfill this need. Recently, plasmonic-based
electrochemical impedance microscopy (P-EIM) was demonstrated for
the label-free mapping of the ignition and propagation of action potentials
in neuron cells with subcellular resolution. However, limited by the
signal-to-noise ratio in the high-speed P-EIM video, action potential
mapping was achieved by averaging 90 cycles of signals. Such extensive
averaging is not desired and may not always be feasible due to factors
such as neuronal desensitization. In this study, we utilized advanced
signal processing techniques to detect action potentials in P-EIM
extracted signals with fewer averaged cycles. Matched filtering successfully
detected action potential signals with as few as averaging five cycles
of signals. Long short-term memory (LSTM) recurrent neural network
achieved the best performance and was able to detect single-cycle
stimulated action potential successfully [satisfactory area under
the receiver operating characteristic curve (AUC) equal to 0.855].
Therefore, we show that deep learning-based signal processing can
dramatically improve the usability of P-EIM mapping of neuronal electrical
signals.