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首页> 外文期刊>Chemical Senses >An Artificial Neural Network Approach for Glomerular Activity Pattern Prediction Using the Graph Kernel Method and the Gaussian Mixture Functions
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An Artificial Neural Network Approach for Glomerular Activity Pattern Prediction Using the Graph Kernel Method and the Gaussian Mixture Functions

机译:图核方法和高斯混合函数的人工神经网络方法预测肾小球活动模式

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摘要

This paper proposes a neural network model for prediction of olfactory glomerular activity aimed at future application to the evaluation of odor qualities. The model's input is the structure of an odorant molecule expressed as a labeled graph, and it employs the graph kernel method to quantify structural similarities between odorants and the function of olfactory receptor neurons. An artificial neural network then converts odorant molecules into glomerular activity expressed in Gaussian mixture functions. The authors also propose a learning algorithm that allows adjustment of the parameters included in the model using a learning data set composed of pairs of odorants and measured glomerular activity patterns. We observed that the defined similarity between odorant structure has correlation of 0.3-0.9 with that of glomerular activity. Glomerular activity prediction simulation showed a certain level of prediction ability where the predicted glomerular activity patterns also correlate the measured ones with middle to high correlation in average for data sets containing 363 odorants.
机译:本文提出了一种神经网络模型,用于预测嗅觉肾小球的活动,旨在将来用于评估气味质量。该模型的输入是表示为标记图的加味剂分子的结构,并且它采用图核方法来量化加味剂和嗅觉受体神经元功能之间的结构相似性。然后,人工神经网络将加味剂分子转换为以高斯混合函数表示的肾小球活性。作者还提出了一种学习算法,该算法允许使用由成对的加味剂和测得的肾小球活动模式组成的学习数据集来调整模型中包含的参数。我们观察到,加味剂结构之间定义的相似性与肾小球活性的相关性为0.3-0.9。肾小球活性预测模拟显示出一定水平的预测能力,其中对于包含363种气味的数据集,预测的肾小球活性模式还将测得的肾小球活性模式平均与中等至高相关性相关。

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