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首页> 外文期刊>Annals of epidemiology >Comparison of logistic regression and neural network analysis applied to predicting living setting after hip fracture.
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Comparison of logistic regression and neural network analysis applied to predicting living setting after hip fracture.

机译:逻辑回归与神经网络分析在预测髋部骨折后生活环境方面的比较。

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摘要

PURPOSE: Describe and compare the characteristics of artificial neural networks and logistic regression to develop prediction models in epidemiological research. METHODS: The sample included 3708 persons with hip fracture from 46 different states included in the Uniform Data System for Medical Rehabilitation. Mean age was 75.5 years (sd=14.2), 73.7% of patients were female, and 82% were non-Hispanic white. Average length of stay was 17.0 days (sd=10.6). The primary outcome measure was living setting (at home vs. not at home) at 80 to 180 days after discharge. RESULTS: Statistically significant variables (p <.05) in the logistic model included follow-up therapy, sphincter control, self-care ability, marital status, age, and length of stay. Areas under the receiver operating characteristic curves were 0.67 for logistic regression and 0.73 for neural network analysis. Calibration curves indicated a slightly better fit for the neural network model. CONCLUSIONS: Follow-up therapy and independent bowel and/or bladder function were strong predictors of living at home up to 6 months after hospitalization for hip fracture. No practical differences were found between the predictive ability of logistic regression and neural network analysis in this sample.
机译:目的:描述和比较人工神经网络和逻辑回归的特征,以开发流行病学研究的预测模型。方法:样本包括3708名来自46个不同州的髋部骨折患者,该数据包括在医疗康复统一数据系统中。平均年龄为75.5岁(sd = 14.2),女性患者为73.7%,非西班牙裔白人为82%。平均住院时间为17.0天(标准差= 10.6)。主要结局指标是出院后80到180天的居住环境(在家还是不在家里)。结果:在逻辑模型中,统计学上显着的变量(p <.05)包括随访治疗,括约肌控制,自我护理能力,婚姻状况,年龄和住院时间。逻辑回归分析的接收器工作特性曲线下的面积为0.67,而神经网络分析的面积为0.73。校准曲线表明该神经网络模型略好。结论:随访治疗以及独立的肠和​​/或膀胱功能是住院髋部骨折术后长达6个月的家庭生活的重要预测指标。在该样本中,逻辑回归的预测能力和神经网络分析之间没有发现实际差异。

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