首页> 外文期刊>Archives of Gerontology and Geriatrics: An International Journal Integrating Experimental, Clinical and Social Studies on Ageing >Neural network analysis in predicting 2-year survival in elderly people: a new statistical-mathematical approach.
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Neural network analysis in predicting 2-year survival in elderly people: a new statistical-mathematical approach.

机译:神经网络分析预测老年人2年生存:一种新的统计数学方法。

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We designed this study to test the usefulness of artificial neural networks (ANN) in assessing 2-year survival in elderly persons, and to understand the net's logical functioning, thus determining the relative importance of the single biological and clinical variables which influence survival. ANN are statistical-mathematical tools able to determine the existence of a correlation between series of data and, once 'trained', to predict output data given input data. Although ANN have been applied in various areas of medical research, they have only very recently been applied in geriatrics (Cacciafesta et al., 2000. Arch. Gerontol. Geriatr. 31 (in press)). We built up an ANN to investigate how 17 clinical variables relating to a sample of 159 elderly people affect survival, and the possibility of predicting 2-year survival or non-survival for each single subject. When tested on a sample of 20 elderly people, the trained network gave the correct answer in 85% of the cases. We then extracted the mathematical function that the net used for calculating the output (survival) for each set of input data (clinical variables). Using this formula, we investigated how some clinical variables influence 2-year survival: we found that a low serum cholesterol level is an unfavourable characteristic in relation to survival. We conclude-despite the fact that the sample studied was relatively small-that ANN are useful in predicting 2-year survival in elderly people. The mathematical function we obtained from the net seems useful in determining the relative importance of single variables related to survival.
机译:我们设计了这项研究,以测试人工神经网络(ANN)在评估老年人2年生存中的有用性,并了解该网络的逻辑功能,从而确定影响生存的单个生物学和临床变量的相对重要性。 ANN是统计数学工具,能够确定一系列数据之间的相关性,并且一旦“经过训练”就可以预测给定输入数据的输出数据。尽管人工神经网络已被应用于医学研究的各个领域,但它们直到最近才被应用于老年医学(Cacciafesta等人,2000年。Arch。Gerontol。Geriatr。31(印刷中))。我们建立了一个人工神经网络,以调查与159名老年人样本有关的17个临床变量如何影响生存,以及预测每位受试者2年生存或非生存的可能性。在对20名老年人的样本进​​行测试时,受过训练的网络在85%的案例中给出了正确答案。然后,我们提取了数学函数,该函数用于为每组输入数据(临床变量)计算输出(生存)。使用该公式,我们调查了一些临床变量如何影响2年生存期:我们发现低血清胆固醇水平是与生存期无关的特征。尽管所研究的样本相对较小,但我们得出结论,即人工神经网络可用于预测老年人的2年生存率。我们从网上获得的数学函数似乎对确定与生存有关的单个变量的相对重要性很有用。

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