论文标题
使用听觉神经的机器学习模型来优化对耳蜗植入物的刺激能量
Optimizing Stimulus Energy for Cochlear Implants with a Machine Learning Model of the Auditory Nerve
论文作者
论文摘要
由于所涉及的计算的复杂性质,使用现实的生物物理听觉神经纤维模型进行逼真的模拟可能非常耗时。在这里,使用机器学习方法开发了这种听觉神经纤维模型的替代模型,以更有效地执行模拟。比较了几种机器学习模型,其中卷积神经网络表现出最佳性能。实际上,卷积神经网络能够以极高的相似性($ r^2> 0.99 $)模仿听觉神经纤维模型的行为,并在广泛的实验条件下进行了测试,同时将模拟时间降低了五个范围。此外,我们引入了一种使用超平面投影随机生成电荷平衡波形的方法。在本文的第二部分中,进化算法使用了卷积神经网络替代模型,用来以能效的方式优化刺激波形的形状。所得的波形类似于高斯样峰,然后是拉长的负相。当比较由进化算法与常用方波产生的波形的能量时,在不同的脉冲持续时间内观察到能量降低8%-45%。这些结果通过原始的听觉神经纤维模型验证,该模型表明我们提出的替代模型可以用作其准确有效的替代品。
Performing simulations with a realistic biophysical auditory nerve fiber model can be very time consuming, due to the complex nature of the calculations involved. Here, a surrogate (approximate) model of such an auditory nerve fiber model was developed using machine learning methods, to perform simulations more efficiently. Several machine learning models were compared, of which a Convolutional Neural Network showed the best performance. In fact, the Convolutional Neural Network was able to emulate the behavior of the auditory nerve fiber model with extremely high similarity ($R^2 > 0.99$), tested under a wide range of experimental conditions, whilst reducing the simulation time by five orders of magnitude. In addition, we introduce a method for randomly generating charge-balanced waveforms using hyperplane projection. In the second part of this paper, the Convolutional Neural Network surrogate model was used by an Evolutionary Algorithm to optimize the shape of the stimulus waveform in terms energy efficiency. The resulting waveforms resemble a positive Gaussian-like peak, preceded by an elongated negative phase. When comparing the energy of the waveforms generated by the Evolutionary Algorithm with the commonly used square wave, energy decreases of 8% - 45% were observed for different pulse durations. These results were validated with the original auditory nerve fiber model, which demonstrates that our proposed surrogate model can be used as its accurate and efficient replacement.