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Application of artificial neural networks on mosquito Olfactory Receptor Neurons for an olfactory biosensor

机译:人工神经网络在嗅觉生物传感器的蚊香嗅觉神经元中的应用

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) and 1-octen-3-ol, underlie the host-seeking behaviors of the major malaria vector Anopheles Gambiae. Highlighted by the olfactory processing strength of the mosquito, such a powerful olfactory sense could serve as the sensors of an artificial olfactory biosensor. In this work, we use the firing rates of the A. Gambiae mosquito Olfactory Receptor Neurons (ORNs), to train an Artificial Neural Network (ANN) for the classification of volatile odorants into their known chemical classes and assess their suitability for an olfactory biosensor. With the implementation of bootstrapping, a more representative result was obtained wherein we demonstrate the training of a hybrid ANN consisting of an array of Multi-Layer Perceptrons (MLPs) with optimal number of hidden neurons. The ANN system was able to correctly class 90.1% of the previously unseen odorants, thus demonstrating very strong evidence for the use of A. Gambiae olfactory receptors coupled with an ANN as an olfactory biosensor.
机译:)和1-octen-3-ol是主要疟疾媒介冈比亚按蚊的寄主寻求行为的基础。蚊子的嗅觉处理强度突显了这种强大的嗅觉,可以作为人工嗅觉生物传感器的传感器。在这项工作中,我们使用冈比亚按蚊蚊嗅觉神经元(ORN)的发射速率,训练人工神经网络(ANN)将挥发性加味剂分类为已知化学类别,并评估其对嗅觉生物传感器的适用性。通过自举的实现,获得了更具代表性的结果,其中我们证明了混合ANN的训练,该混合ANN由具有最佳隐藏神经元数量的多层感知器(MLP)阵列组成。 ANN系统能够正确地分类90.1%的先前未见过的气味剂,因此证明了将A. Gambiae嗅觉受体与ANN结合用作嗅觉生物传感器的确凿证据。

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