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Application of a Fuzzy Neural Network Model in Predicting Polycyclic Aromatic Hydrocarbon- Mediated Perturbations of the Cyp1b1 Transcriptional Regulatory Network in Mouse Skin

机译:模糊神经网络模型在小鼠皮肤中预测多环芳烃介导的CYP1B1转录调节网络的多环芳烃介导扰动

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摘要

Polycyclic aromatic hydrocarbons (PAHs) are present in the environment as complex mixtures with components that have diverse carcinogenic potencies and mostly unknown interactive effects. Non-additive PAH interactions have been observed in regulation of cytochrome P450 (CYP) gene expression in the CYP1 family. To better understand and predict biological effects of complex mixtures, such as environmental PAHs, an 11 gene input-1 gene output fuzzy neural network (FNN) was developed for predicting PAH-mediated perturbations of dermal Cyp1b1 transcription in mice. Input values were generalized using fuzzy logic into low, medium, and high fuzzy subsets, and sorted using k-means clustering to create Mamdani logic functions for predicting Cyp1b1 mRNA expression. Model testing was performed with data from microarray analysis of skin samples from FVB/N mice treated with toluene (vehicle control), dibenzo[def,p]chrysene (DBC), benzo[a]pyrene (BaP), or 1 of 3 combinations of diesel particulate extract (DPE), coal tar extract (CTE) and cigarette smoke condensate (CSC) using leave one out cross-validation. Predictions were within 1 log2 fold change unit of microarray data, with the exception of the DBC treatment group, where the unexpected down-regulation of Cyp1b1 expression was predicted but did not reach statistical significance on the microarrays. Adding CTE to DPE was predicted to increase Cyp1b1 expression, whereas adding CSC to CTE and DPE was predicted to have no effect, in agreement with microarray results. The aryl hydrocarbon receptor repressor (Ahrr) was determined to be the most significant input variable for model predictions using back-propagation and normalization of FNN weights.
机译:多环芳烃(PAHs)以复杂的混合物形式存在于环境中,其成分具有不同的致癌性,且相互作用的影响大多未知。在调节CYP1家族中细胞色素P450(CYP)基因表达中已观察到非加性PAH相互作用。为了更好地理解和预测复杂混合物(例如环境PAHs)的生物学效应,开发了一种11基因输入1基因输出模糊神经网络(FNN),用于预测PAH介导的小鼠皮肤Cyp1b1转录扰动。使用模糊逻辑将输入值概括为低,中和高模糊子集,并使用k-均值聚类对输入值进行排序,以创建Mamdani逻辑函数来预测Cyp1b1 mRNA表达。模型测试使用来自FVB / N小鼠皮肤样品的微阵列分析数据进行分析,所述小鼠用甲苯(媒介物对照),二苯并[def,p]((DBC),苯并[a] py(BaP)或3种组合之一处理柴油颗粒提取物(DPE),煤焦油提取物(CTE)和香烟烟雾冷凝物(CSC)的分离验证。预测在微阵列数据的1个log2倍变化单位内,除DBC治疗组外,在该组中可预测Cyp1b1表达的意外下调,但在微阵列上未达到统计学意义。预测在DPE中加入CTE会增加Cyp1b1表达,而在CTE和DPE中加入CSC则预计不会产生作用,与微阵列结果一致。使用FNN权重的反向传播和归一化,将芳烃受体阻遏物(Ahrr)确定为模型预测的最重要输入变量。

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