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Artificial neural networks: a potential role in osteoporosis.

机译:人工神经网络:在骨质疏松症中的潜在作用。

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摘要

Artificial neural networks are computer software systems that recognize patterns in complex data sets. A recent development in neural computing, multiversion systems (MVS), has led to enhanced analytical power, and this was harnessed to demonstrate the value of risk factors in predicting the result of osteoporosis investigations by quantitative ultrasound. 274 women were screened in an open-access osteoporosis service. A conventional risk factor questionnaire was completed for each patient by the osteoporosis specialist nurse. An MVS was trained on 180 randomly selected data sets and tested on the remaining 94. The results were compared with those from logistic regression analysis in predictive power, both from the selected 20-item questionnaire and for a limited 5-item questionnaire comprising age, height, height loss, weight and years since the menopause. The MVS approach predicted the T-score categorization of the patients from the 20-item questionnaire with 83.0% accuracy, whereas logistic regression yielded an accuracy of only 72.8% (P = 0.04). From the 5-item database the MVS yielded a best prediction accuracy of 73.1%, whereas the logistic regression prediction accuracy was 60% (P = 0.04). These results suggest that 20 risk factors can be used by an MVS to predict the outcome of osteoporosis investigations with a power that outperforms conventional statistical methods. Use of this system may improve the selection of patients for osteoporosis investigations, since even with only 5 risk factors the system performs nearly as well as that based on the full 20 factors.
机译:人工神经网络是识别复杂数据集中模式的计算机软件系统。神经计算,多版本系统(MVS)的最新发展已增强了分析能力,并被利用来证明风险因素在定量超声预测骨质疏松症调查结果中的价值。在开放式骨质疏松症服务中筛查了274名妇女。骨质疏松症专科护士为每位患者填写了一份常规的危险因素问卷。在180个随机选择的数据集上对MVS进行了训练,并在其余94个数据上进行了测试。将结果与逻辑回归分析的预测能力进行了比较,既包括所选的20个项目的问卷,也包括有限的5个项目的年龄问卷,绝经后的身高,身高下降,体重和年限。 MVS方法从20个项目的问卷中预测患者的T评分分类,准确度为83.0%,而逻辑回归分析的准确度仅为72.8%(P = 0.04)。从5个项目的数据库中,MVS的最佳预测精度为73.1%,而逻辑回归预测精度为60%(P = 0.04)。这些结果表明,MVS可以使用20种危险因素来预测骨质疏松症调查的结果,其性能优于传统的统计方法。使用该系统可以改善对骨质疏松症研究的患者选择,因为即使只有5个风险因素,该系统的表现也几乎与基于全部20个因素的表现一样好。

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