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Application of Neural Computing Methods for Interpreting Phospholipid Fatty Acid Profiles of Natural Microbial Communities

机译:神经计算方法在解释天然微生物群落磷脂脂肪酸谱中的应用

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The microbial community compositions of surface and subsurface marine sediments and sediments lining burrows of marine polychaetes and hemichordates from the North Inlet estuary (near Georgetown, S.C.) were analyzed by comparing ester-linked phospholipid fatty acid (PLFA) profiles with a back-propagating neural network (NN). The NNs were trained to relate PLFA inputs to sediment type outputs (e.g., surface, subsurface, and burrow lining) and worm species (e.g., Notomastus lobatus, Balanoglossus aurantiacus, andBranchyoasychus americana). Sensitivity analysis was used to determine which of the 60 PLFAs significantly contributed to training the NN. The NN architecture was optimized by changing the number of hidden neurons and calculating the cross-validation error between predicted and actual outputs of training and test data. The optimal NN architecture was found to be four hidden neurons with 60-input neurons representing the 60 PLFAs, and four output neurons coding for both sediment types and worm species. Comparison of cross-validation results using NNs and linear discriminant analysis (LDA) revealed that NNs had significantly fewer incorrect classifications (2.7%) than LDA (8.4%). For the NN cross-validation, both sediment type and worm species had 3 incorrect classifications out of 112. For the LDA cross-validation, sediment type and worm species had 7 and 12 incorrect classifications out of 112, respectively. Sensitivity analysis of the trained NNs revealed that 17 fatty acids explained 50% of variability in the data set. These PLFAs were highly different among sediments and burrow types, indicating significant differences in the microbiota.
机译:通过将酯化磷脂脂肪酸(PLFA)分布图与反向传播神经元进行比较,分析了来自北入口河口(南卡罗来纳州乔治敦附近)的海表和亚海表藻的沉积物和衬里洞穴的微生物群落组成。网络(NN)。 NN被训练为将PLFA输入与沉积物类型输出(例如地表,地下和洞穴衬里)和蠕虫种类(例如Notomastus lobatus,Balanoglossus aurantiacus和AmericanBranchyoasychus american)相关联。敏感性分析用于确定60个PLFA中的哪些对神经网络的训练有显着贡献。通过更改隐藏神经元的数量并计算训练和测试数据的预测输出与实际输出之间的交叉验证误差,对NN体系结构进行了优化。发现最佳的NN结构是四个隐藏的神经元,其中60个输入神经元代表60个PLFA,四个输出神经元编码沉积物类型和蠕虫种类。使用NN和线性判别分析(LDA)进行交叉验证的结果比较表明,NNs的错误分类(2.7%)明显少于LDA(8.4%)。对于NN交叉验证,沉积物类型和蠕虫种类在112种中均具有3个错误分类。对于LDA交叉验证,沉积物类型和蠕虫种类在112种中分别具有7和12种错误分类。对经过训练的神经网络的敏感性分析表明,有17种脂肪酸解释了数据集中50%的变异性。这些PLFA在沉积物和洞穴类型之间有很大差异,表明微生物群存在显着差异。

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