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Neural networks as a tool for utilizing laboratory information: comparison with linear discriminant analysis and with classification and regression trees.

机译:神经网络作为利用实验室信息的工具:与线性判别分析以及分类树和回归树进行比较。

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摘要

Successful applications of neural network architecture have been described in various fields of science and technology. We have applied one such technique, error back-propagation, to a medical classification problem stemming from clinical chemistry, and we have compared the performance of two different neural networks with results obtained by conventional linear discriminant analysis or by the technique of classification and regression trees. The results obtained by the various models were tested for robustness by jackknife validation ("leave n out" method). Compared with the two other techniques, neural networks show a unique ability to detect features hidden in the input data which are not explicitly formulated as input. Thus, neural network techniques appear promising in the field of clinical chemistry, and their application, particularly in situations with complex data structures, should be investigated with more emphasis.
机译:神经网络架构的成功应用已在科学和技术的各个领域中得到了描述。我们已将一种这样的技术(错误反向传播)应用于源自临床化学的医学分类问题,并且已将两种不同神经网络的性能与常规线性判别分析或通过分类和回归树技术获得的结果进行了比较。通过折刀验证(“留出”方法)测试了由各种模型获得的结果的鲁棒性。与其他两种技术相比,神经网络具有检测隐藏在输入数据中的,未被明确表示为输入的特征的独特能力。因此,神经网络技术在临床化学领域似乎很有前途,因此,尤其是在具有复杂数据结构的情况下,应进一步研究其应用。

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