在医疗保健观察数据上利用集合学习改进机器学习。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Behzad Naderalvojoud, Tina Hernandez-Boussard
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引用次数: 0

摘要

集合学习是提高预测模型准确性和可靠性的一项强大技术,尤其是在单个模型可能表现不佳的情况下。然而,将不同准确度的模型组合在一起并不总能改善最终预测结果,因为准确度较低的模型可能会掩盖准确度较高模型的结果。本文探讨了这一问题,并回答了何时集合方法的预测效果优于单个模型的问题。因此,我们提出了一种集合模型,用于预测有术后长期阿片类药物风险的患者。该模型包含了两个机器学习模型,这两个模型使用不同的协变量进行训练,因此具有较高的精确度和召回率。我们的研究采用了五种不同的机器学习算法,结果表明所提出的方法在 AUROC 和 AUPRC 方面显著改善了最终预测结果。
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Improving machine learning with ensemble learning on observational healthcare data.

Ensemble learning is a powerful technique for improving the accuracy and reliability of prediction models, especially in scenarios where individual models may not perform well. However, combining models with varying accuracies may not always improve the final prediction results, as models with lower accuracies may obscure the results of models with higher accuracies. This paper addresses this issue and answers the question of when an ensemble approach outperforms individual models for prediction. As a result, we propose an ensemble model for predicting patients at risk of postoperative prolonged opioid. The model incorporates two machine learning models that are trained using different covariates, resulting in high precision and recall. Our study, which employs five different machine learning algorithms, shows that the proposed approach significantly improves the final prediction results in terms of AUROC and AUPRC.

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