预测疼痛缓解的发展

Anderson F. B. F. da Costa, Larissa Moreira, D. Andrade, Adriano Veloso, N. Ziviani
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引用次数: 1

摘要

根据数据建模通常有两个不同的方面:建立合理的解释模型或为系统或现象创建强大的预测模型。最近的大多数文献在从数据中学习模型时都没有利用解释和预测之间的关系。最近的算法没有利用这样一个事实,即许多现象实际上是由不同的亚种群和局部结构定义的,因此有许多可能的预测模型为同一现象提供对比的解释或竞争的解释。在这篇文章中,我们建议探索解释和预测之间的互补联系。我们的主要直觉是,由相同因素解释决策的模型可能会对相同局部结构内的数据点进行更好的预测。我们评估了我们的方法,以模拟在常规指南治疗下慢性疼痛患者疼痛缓解的演变。使用我们的框架生成的集合与高维数据的鲁棒算法的一体化方法进行了比较,如随机森林和XGBoost。慢性疼痛可以是原发性的,也可以是继发性的。其症状学可分为伤害性、伤害性或神经性,通常与许多不同的因果结构有关,这对典型的建模方法提出了挑战。我们的数据包括631名接受疼痛治疗的患者。我们考虑了338个提供疼痛感、社会经济地位和处方治疗信息的特征。我们的目标是仅使用第一次会诊的数据来预测患者是否能成功治疗慢性疼痛。由于这项工作,与使用所有可用功能训练的模型相比,我们能够构建能够持续提高33%性能的集成。我们还获得了可解释性方面的相关增益,由此产生的集合仅使用了特征总数的15%。我们表明,我们可以从相互竞争的解释中有效地生成集合,促进集合学习的多样性,并通过实施一种稳定的场景来显著提高准确性,在这种场景中,在预测方面不同的模型在解释因素方面也不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Evolution of Pain Relief
Modeling from data usually has two distinct facets: building sound explanatory models or creating powerful predictive models for a system or phenomenon. Most of recent literature does not exploit the relationship between explanation and prediction while learning models from data. Recent algorithms are not taking advantage of the fact that many phenomena are actually defined by diverse sub-populations and local structures, and thus there are many possible predictive models providing contrasting interpretations or competing explanations for the same phenomenon. In this article, we propose to explore a complementary link between explanation and prediction. Our main intuition is that models having their decisions explained by the same factors are likely to perform better predictions for data points within the same local structures. We evaluate our methodology to model the evolution of pain relief in patients suffering from chronic pain under usual guideline-based treatment. The ensembles generated using our framework are compared with all-in-one approaches of robust algorithms to high-dimensional data, such as Random Forests and XGBoost. Chronic pain can be primary or secondary to diseases. Its symptomatology can be classified as nociceptive, nociplastic, or neuropathic, and is generally associated with many different causal structures, challenging typical modeling methodologies. Our data includes 631 patients receiving pain treatment. We considered 338 features providing information about pain sensation, socioeconomic status, and prescribed treatments. Our goal is to predict, using data from the first consultation only, if the patient will be successful in treatment for chronic pain relief. As a result of this work, we were able to build ensembles that are able to consistently improve performance by up to 33% when compared to models trained using all the available features. We also obtained relevant gains in interpretability, with resulting ensembles using only 15% of the total number of features. We show we can effectively generate ensembles from competing explanations, promoting diversity in ensemble learning and leading to significant gains in accuracy by enforcing a stable scenario in which models that are dissimilar in terms of their predictions are also dissimilar in terms of their explanation factors.
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