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Comparison of multiple prediction models for ambulation following spinal cord injury.

机译:脊髓损伤后移动的多种预测模型的比较。

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摘要

Few studies have properly compared predictive performance of different models using the same medical data set. We developed and compared 3 models (logistic regression, neural networks, and rough sets) in the in prediction of ambulation at hospital discharge following spinal cord injury. We used the multi-center Spinal Cord Injury Model System database. All models performed well and had areas under the receiver operating characteristic curve in the 0.88-0.91 range. All models had sensitivity, specificity, and accuracy greater than 80% at ideal thresholds. The performance of neural network and logistic regression methods was not statistically different (p = 0.48). The rough sets classifier performed statistically worse than either the neural network or logistic regression models (p-values 0.002 and 0.015 respectively).
机译:很少有研究能够正确比较使用相同医学数据集的不同模型的预测性能。我们开发并比较了3种模型(逻辑回归,神经网络和粗糙集),以预测脊髓损伤后出院时的下床活动。我们使用了多中心脊髓损伤模型系统数据库。所有模型均表现良好,并且接收器工作特性曲线下的面积在0.88-0.91范围内。在理想阈值下,所有模型的灵敏度,特异性和准确性均大于80%。神经网络和逻辑回归方法的性能没有统计学差异(p = 0.48)。粗糙集分类器在统计上比神经网络或逻辑回归模型差(p值分别为0.002和0.015)。

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