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Development and validation of clinical prediction models: Marginal differences between logistic regression, penalized maximum likelihood estimation, and genetic programming

机译:临床预测模型的开发和验证:逻辑回归,惩罚最大似然估计和遗传规划之间的边际差异

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Objective: Many prediction models are developed by multivariable logistic regression. However, there are several alternative methods to develop prediction models. We compared the accuracy of a model that predicts the presence of deep venous thrombosis (DVT) when developed by four different methods. Study Design and Setting: We used the data of 2,086 primary care patients suspected of DVT, which included 21 candidate predictors. The cohort was split into a derivation set (1,668 patients, 329 with DVT) and a validation set (418 patients, 86 with DVT). Also, 100 cross-validations were conducted in the full cohort. The models were developed by logistic regression, logistic regression with shrinkage by bootstrapping techniques, logistic regression with shrinkage by penalized maximum likelihood estimation, and genetic programming. The accuracy of the models was tested by assessing discrimination and calibration. Results: There were only marginal differences in the discrimination and calibration of the models in the validation set and cross-validations. Conclusion: The accuracy measures of the models developed by the four different methods were only slightly different, and the 95% confidence intervals were mostly overlapped. We have shown that models with good predictive accuracy are most likely developed by sensible modeling strategies rather than by complex development methods.
机译:目的:通过多变量逻辑回归开发了许多预测模型。但是,有几种替代方法可以开发预测模型。我们比较了通过四种不同方法开发的预测深静脉血栓形成(DVT)的模型的准确性。研究设计和设置:我们使用了2086名DVT疑似初级保健患者的数据,其中包括21个候选预测变量。该队列被分为衍生组(1,668例患者,DVT 329例)和验证组(418例患者,DVT 86例)。同样,在整个队列中进行了100次交叉验证。这些模型是通过逻辑回归,通过自举技术收缩的逻辑回归,通过惩罚最大似然估计进行收缩的逻辑回归以及遗传编程开发的。通过评估区分度和校准度来测试模型的准确性。结果:在验证集和交叉验证中,模型的辨别和校准仅存在少量差异。结论:通过四种不同方法开发的模型的准确性度量仅稍有不同,并且95%的置信区间大部分重叠。我们已经表明,具有良好预测准确性的模型很可能是通过明智的建模策略而非复杂的开发方法开发的。

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