Improving Interpretable Prediction Models for Antimicrobial Resistance

B. Cánovas-Segura, Antonio Morales Nicolás, Antonio López Martínez-Carrasco, M. Campos, J. Juarez, L. López-Rodríguez, Francisco Palacios Ortega
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引用次数: 4

Abstract

One of the major problems of healthcare institutions is the treatment of infections caused by bacteria that are resistant to antimicrobials. The early prediction of such infections can improve the patient's evolution as well as minimise the spread of antimicrobial resistance. The creation of effective prediction models is particularly limited due to the high dimensionality of data, the imbalanced datasets and the concept drift problem. In this paper, we face these challenges from a machine learning perspective, considering the interpretability of the resulting models as essential. In particular, we present a study of multiple techniques focused on the mitigation of these problems, that are used in combination with interpretable models. Our results indicate that the use of oversampling along with sliding windows can improve the resulting AUC of models (up to reaching a mean AUC of 0.80 in our dataset), and FCBF can be used to drastically reduce the number of predictors, obtaining simpler models with a slight AUC reduction (from a mean number of predictors of 69.78 to 16.28, achieving a mean AUC of 0.76). According to our results, we show that the combination of multiple techniques for dealing with the aforementioned data-mining problems can clearly improve the performance of prediction models for antimicrobial resistance.
改进抗菌素耐药性可解释预测模型
卫生保健机构的主要问题之一是治疗对抗菌素具有耐药性的细菌引起的感染。这种感染的早期预测可以改善患者的进化,并尽量减少抗菌素耐药性的传播。由于数据的高维、数据集的不平衡和概念漂移问题,有效预测模型的创建尤其受到限制。在本文中,我们从机器学习的角度来面对这些挑战,考虑到结果模型的可解释性是必不可少的。特别地,我们提出了一项针对缓解这些问题的多种技术的研究,这些技术与可解释模型结合使用。我们的研究结果表明,使用过采样和滑动窗口可以提高模型的AUC(在我们的数据集中达到0.80的平均AUC), FCBF可以大大减少预测器的数量,获得更简单的模型,AUC略有减少(从平均预测器数量69.78到16.28,实现平均AUC为0.76)。根据我们的研究结果,我们表明,结合多种技术来处理上述数据挖掘问题可以明显提高抗菌素耐药性预测模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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