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首页> 外文期刊>BMC Musculoskeletal Disorders >Hip fracture risk assessment: artificial neural network outperforms conditional logistic regression in an age- and sex-matched case control study
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Hip fracture risk assessment: artificial neural network outperforms conditional logistic regression in an age- and sex-matched case control study

机译:髋部骨折风险评估:在年龄和性别匹配的病例对照研究中,人工神经网络的性能优于条件逻辑回归

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Background Osteoporotic hip fractures with a significant morbidity and excess mortality among the elderly have imposed huge health and economic burdens on societies worldwide. In this age- and sex-matched case control study, we examined the risk factors of hip fractures and assessed the fracture risk by conditional logistic regression (CLR) and ensemble artificial neural network (ANN). The performances of these two classifiers were compared. Methods The study population consisted of 217 pairs (149 women and 68 men) of fractures and controls with an age older than 60 years. All the participants were interviewed with the same standardized questionnaire including questions on 66 risk factors in 12 categories. Univariate CLR analysis was initially conducted to examine the unadjusted odds ratio of all potential risk factors. The significant risk factors were then tested by multivariate analyses. For fracture risk assessment, the participants were randomly divided into modeling and testing datasets for 10-fold cross validation analyses. The predicting models built by CLR and ANN in modeling datasets were applied to testing datasets for generalization study. The performances, including discrimination and calibration, were compared with non-parametric Wilcoxon tests. Results In univariate CLR analyses, 16 variables achieved significant level, and six of them remained significant in multivariate analyses, including low T score, low BMI, low MMSE score, milk intake, walking difficulty, and significant fall at home. For discrimination, ANN outperformed CLR in both 16- and 6-variable analyses in modeling and testing datasets (p? Conclusions The risk factors of hip fracture are more personal than environmental. With adequate model construction, ANN may outperform CLR in both discrimination and calibration. ANN seems to have not been developed to its full potential and efforts should be made to improve its performance.
机译:背景技术老年人中发病率高且死亡率高的骨质疏松性髋部骨折给全世界的社会带来了巨大的健康和经济负担。在这项年龄和性别匹配的病例对照研究中,我们检查了髋部骨折的危险因素,并通过条件逻辑回归(CLR)和整体人工神经网络(ANN)评估了骨折风险。比较了这两个分类器的性能。方法研究人群包括217对年龄在60岁以上的骨折和对照组,其中149例女性和68例男性。所有参与者都接受了相同的标准化问卷,包括关于12类66个危险因素的问题。最初进行了单变量CLR分析,以检查所有潜在风险因素的未调整优势比。然后,通过多因素分析测试显着的危险因素。对于骨折风险评估,将参与者随机分为建模和测试数据集,以进行10倍交叉验证分析。将CLR和ANN在建模数据集中建立的预测模型应用于测试数据集以进行泛化研究。将包括判别和校准在内的性能与非参数Wilcoxon检验进行了比较。结果在单变量CLR分析中,有16个变量达到了显着水平,其中6个在多变量分析中仍保持显着水平,包括低T评分,低BMI,低MMSE评分,牛奶摄入,行走困难和明显跌倒。对于歧视,在建模和测试数据集的16变量和6变量分析中,ANN的表现均优于CLR(p?结论)髋部骨折的危险因素比环境因素更为人性化。通过适当的模型构建,ANN在辨别和校准方面均可能胜过CLR。 ANN似乎尚未得到充分发挥,应努力改善其性能。

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