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首页> 外文期刊>Clinical chemistry and laboratory medicine: CCLM >Neural networks for the biochemical prediction of bone mass loss.
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Neural networks for the biochemical prediction of bone mass loss.

机译:神经网络用于骨质流失的生化预测。

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摘要

Neural networks are specialized artificial intelligence techniques that have shown high efficiency in dealing with complex problems. Paradigms such as backpropagation have been successfully applied in a number of biomedical applications, but not in attempts to identify women at risk of postmenopausal osteoporotic complications. In this paper, several neural networks were trained using different combinations of biochemical variables as inputs. Bone densitometric measurements in Ward's triangle and in the spinal column were used as separate classification criteria (outputs) between slow and fast bone mass losers. The most parsimonious model with the best performance included plasma concentrations of estrone, estradiol, osteocalcin, parathyrin and urine concentrations of calcium and hydroxyproline (expressed as ratio to creatinine excretion) as input neurons; ten neurons in a single hidden layer; and one neuron in the output layer. Diagnostic efficiency was 76% in Ward's triangle and 74% in the spinal column; sensitivity was 70 and 81%, and specificity was 77 and 65%, respectively. Linear discriminant analysis showed a diagnostic efficiency of 66% in Ward's triangle and 64% in the spinal column, sensitivity was 55 and 86%, and specificity was 75 and 13%, respectively. We conclude that performance of the stepwise discriminant analysis was not superior to the neural networks.
机译:神经网络是专门的人工智能技术,在处理复杂问题方面表现出很高的效率。反向传播等范例已成功地应用于许多生物医学应用中,但并未尝试识别出处于绝经后骨质疏松并发症风险中的女性。在本文中,使用不同的生化变量组合作为输入来训练几个神经网络。沃德三角形和脊柱中的骨密度测量值被用作慢和快骨量减少者之间的单独分类标准(输出)。表现最佳的最简约模型包括血浆雌酮,雌二醇,骨钙素,副甲状腺素和尿液中钙和羟脯氨酸的浓度(以肌酐排泄率表示)作为输入神经元。单个隐藏层中有10个神经元;在输出层中有一个神经元。沃德三角形的诊断效率为76%,脊柱的诊断效率为74%;敏感性分别为70%和81%,特异性分别为77%和65%。线性判别分析显示,沃德三角形的诊断效率为66%,脊柱的诊断效率为64%,灵敏度分别为55%和86%,特异性为75%和13%。我们得出结论,逐步判别分析的性能并不优于神经网络。

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