Impact of random oversampling and random undersampling on the performance of prediction models developed using observational health data

IF 8.6 2区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Journal of Big Data Pub Date : 2024-01-03 DOI:10.1186/s40537-023-00857-7
Cynthia Yang, Egill A. Fridgeirsson, Jan A. Kors, Jenna M. Reps, Peter R. Rijnbeek
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Abstract

Background

There is currently no consensus on the impact of class imbalance methods on the performance of clinical prediction models. We aimed to empirically investigate the impact of random oversampling and random undersampling, two commonly used class imbalance methods, on the internal and external validation performance of prediction models developed using observational health data.

Methods

We developed and externally validated prediction models for various outcomes of interest within a target population of people with pharmaceutically treated depression across four large observational health databases. We used three different classifiers (lasso logistic regression, random forest, XGBoost) and varied the target imbalance ratio. We evaluated the impact on model performance in terms of discrimination and calibration. Discrimination was assessed using the area under the receiver operating characteristic curve (AUROC) and calibration was assessed using calibration plots.

Results

We developed and externally validated a total of 1,566 prediction models. On internal and external validation, random oversampling and random undersampling generally did not result in higher AUROCs. Moreover, we found overestimated risks, although this miscalibration could largely be corrected by recalibrating the models towards the imbalance ratios in the original dataset.

Conclusions

Overall, we found that random oversampling or random undersampling generally does not improve the internal and external validation performance of prediction models developed in large observational health databases. Based on our findings, we do not recommend applying random oversampling or random undersampling when developing prediction models in large observational health databases.

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随机过采样和随机欠采样对利用健康观察数据开发的预测模型性能的影响
背景目前关于类不平衡方法对临床预测模型性能的影响还没有达成共识。我们的目的是通过实证研究随机超采样和随机欠采样这两种常用的类不平衡方法对使用观察性健康数据开发的预测模型的内部和外部验证性能的影响。方法我们在四个大型观察性健康数据库中,针对药物治疗抑郁症患者目标人群的各种相关结果开发了预测模型,并进行了外部验证。我们使用了三种不同的分类器(套索逻辑回归、随机森林、XGBoost),并改变了目标失衡率。我们从区分度和校准方面评估了对模型性能的影响。我们使用接收者工作特征曲线下的面积(AUROC)来评估识别率,使用校准图来评估校准率。在内部和外部验证中,随机过度采样和随机采样不足一般不会导致更高的AUROC。此外,我们还发现了高估的风险,尽管这种误判在很大程度上可以通过根据原始数据集中的不平衡比率重新校准模型来纠正。结论总的来说,我们发现随机过度采样或随机采样不足一般不会提高在大型观察性健康数据库中开发的预测模型的内部和外部验证性能。根据我们的研究结果,我们不建议在大型健康观察数据库中开发预测模型时使用随机过采样或随机欠采样。
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来源期刊
Journal of Big Data
Journal of Big Data Computer Science-Information Systems
CiteScore
17.80
自引率
3.70%
发文量
105
审稿时长
13 weeks
期刊介绍: The Journal of Big Data publishes high-quality, scholarly research papers, methodologies, and case studies covering a broad spectrum of topics, from big data analytics to data-intensive computing and all applications of big data research. It addresses challenges facing big data today and in the future, including data capture and storage, search, sharing, analytics, technologies, visualization, architectures, data mining, machine learning, cloud computing, distributed systems, and scalable storage. The journal serves as a seminal source of innovative material for academic researchers and practitioners alike.
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