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首页> 外文期刊>Korean journal of radiology: official journal of the Korean Radiological Society >How to Develop, Validate, and Compare Clinical Prediction Models Involving Radiological Parameters: Study Design and Statistical Methods
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How to Develop, Validate, and Compare Clinical Prediction Models Involving Radiological Parameters: Study Design and Statistical Methods

机译:如何开发,验证和比较涉及放射学参数的临床预测模型:研究设计和统计方法

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摘要

Clinical prediction models are developed to calculate estimates of the probability of the presence/occurrence or future course of a particular prognostic or diagnostic outcome from multiple clinical or non-clinical parameters. Radiologic imaging techniques are being developed for accurate detection and early diagnosis of disease, which will eventually affect patient outcomes. Hence, results obtained by radiological means, especially diagnostic imaging, are frequently incorporated into a clinical prediction model as important predictive parameters, and the performance of the prediction model may improve in both diagnostic and prognostic settings. This article explains in a conceptual manner the overall process of developing and validating a clinical prediction model involving radiological parameters in relation to the study design and statistical methods. Collection of a raw dataset; selection of an appropriate statistical model; predictor selection; evaluation of model performance using a calibration plot, Hosmer-Lemeshow test and c-index; internal and external validation; comparison of different models using c-index, net reclassification improvement, and integrated discrimination improvement; and a method to create an easy-to-use prediction score system will be addressed. This article may serve as a practical methodological reference for clinical researchers.
机译:开发了临床预测模型,以根据多个临床或非临床参数来计算特定预后或诊断结果的存在/发生或未来进程的概率估计。放射成像技术正在开发中,用于疾病的准确检测和早期诊断,最终将影响患者的预后。因此,通过放射学手段,尤其是诊断成像获得的结果经常作为重要的预测参数并入临床预测模型中,并且该预测模型的性能可以在诊断和预后方面均得到改善。本文以概念性的方式解释了开发和验证涉及放射参数的临床预测模型的总体过程,这些模型涉及研究设计和统计方法。收集原始数据集;选择适当的统计模型;预测变量选择;使用校准图,Hosmer-Lemeshow测试和c指数评估模型性能;内部和外部验证;使用c-index,净重分类改进和综合辨别改进比较不同模型;并且将解决创建易于使用的预测得分系统的方法。本文可以为临床研究人员提供实用的方法学参考。

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