Ignjatović Aleksandra, Stojanović Miodrag, Milošević Zoran, Anđelković Apostolović Marija
Department of Medical Statistics and Informatics, School of Medicine, University of Niš, Bulvd Zorana Đinđića 81, Niš, 18000, Serbia.
Ir J Med Sci. 2018 Aug;187(3):639-645. doi: 10.1007/s11845-017-1718-5. Epub 2017 Dec 2.
The interest in developing risk models in medicine not only is appealing, but also associated with many obstacles in different aspects of predictive model development. Initially, the association of biomarkers or the association of more markers with the specific outcome was proven by statistical significance, but novel and demanding questions required the development of new and more complex statistical techniques.
Progress of statistical analysis in biomedical research can be observed the best through the history of the Framingham study and development of the Framingham score.
Evaluation of predictive models comes from a combination of the facts which are results of several metrics. Using logistic regression and Cox proportional hazards regression analysis, the calibration test, and the ROC curve analysis should be mandatory and eliminatory, and the central place should be taken by some new statistical techniques. In order to obtain complete information related to the new marker in the model, recently, there is a recommendation to use the reclassification tables by calculating the net reclassification index and the integrated discrimination improvement. Decision curve analysis is a novel method for evaluating the clinical usefulness of a predictive model. It may be noted that customizing and fine-tuning of the Framingham risk score initiated the development of statistical analysis.
Clinically applicable predictive model should be a trade-off between all abovementioned statistical metrics, a trade-off between calibration and discrimination, accuracy and decision-making, costs and benefits, and quality and quantity of patient's life.
医学领域开发风险模型不仅具有吸引力,而且在预测模型开发的不同方面存在许多障碍。最初,生物标志物之间的关联或更多标志物与特定结局之间的关联通过统计学显著性得到证实,但新的且具有挑战性的问题需要开发新的、更复杂的统计技术。
通过弗雷明汉姆研究的历史和弗雷明汉姆评分的发展,可以最好地观察生物医学研究中统计分析的进展。
预测模型的评估来自几个指标结果的事实组合。使用逻辑回归和Cox比例风险回归分析、校准测试和ROC曲线分析应该是强制性的和排除性的,并且一些新的统计技术应占据核心地位。为了在模型中获得与新标志物相关的完整信息,最近有人建议通过计算净重新分类指数和综合鉴别改善来使用重新分类表。决策曲线分析是评估预测模型临床实用性的一种新方法。可以注意到,弗雷明汉姆风险评分的定制和微调引发了统计分析的发展。
临床适用的预测模型应该是上述所有统计指标之间的权衡,校准与鉴别、准确性与决策、成本与效益以及患者生活质量与数量之间的权衡。