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Improving odorant chemical class prediction with multi-layer perceptrons using temporal odorant spike responses from drosophila melanogaster olfactory receptor neurons

机译:利用旱萝卜素黑色素转酯嗅受体神经元的时间气味刺响应改善与多层摄影的气味化学类预测

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In this work, we examine the possibility of improving the prediction performance of an olfactory biosensor through the use of temporal spiking data. We present an Artificial Neural Network (ANN), in the form of an optimal hybrid Multi-Layer Perceptron (MLP) system for the classification of chemical odorants from olfactory receptor neuron spike responses of the Drosophila melanogaster fruit fly (DmOrs). The data used in this study contains the responses to 34 odorants from 6 individual DmOrs, of which we exploit the temporal spiking responses of a 500ms odorant stimulus window. We report, for the first time, the difference between the classification performance of the temporal spiking data to an equivalent spontaneous scalar dataset that we have reported previously. We demonstrate that a higher prediction (%) was obtained when using the temporal data, in which a greater number of validation odorants are identified to their correct chemical class. This work presents a novel technique to improve the classification performance of an olfactory biosensor, whilst maintaining a limited sensory array of 6 DmOr receptors.
机译:在这项工作中,我们研究通过使用时间尖峰数据来改善嗅觉生物传感器的预测性能的可能性。我们介绍了一种人工神经网络(ANN),以优化的混合多层Perceptron(MLP)系统的形式,用于从果蝇Melanogaster果蝇(DMORS)的嗅觉受体神经元峰值反应的化学臭臭的形式。本研究中使用的数据包含来自6个单独DMORS的34个气味剂的反应,其中我们利用了500ms气味刺激窗口的时间尖峰响应。我们首次报告时间尖峰数据的分类性能与我们之前报告的等同自发标量数据集之间的差异。我们证明使用时间数据获得更高的预测(%),其中鉴定了更多数量的验证气味剂以正确的化学类别。该工作提出了一种新颖的技术来改善嗅觉生物传感器的分类性能,同时保持6个DMOR受体的有限的感觉阵列。

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