PerSleep: A Visual Analytics Approach for Performance Assessment of Sleep Staging Models

H. S. G. Caballero, A. Corvó, F. B. Meulen, P. Fonseca, S. Overeem, J. V. Wijk, M. A. Westenberg
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引用次数: 1

Abstract

Machine learning is becoming increasingly popular in the medical domain. In the near future, clinicians expect predictive models to support daily tasks such as diagnosis and prognostic analysis. For this reason, it is utterly important to evaluate and compare the performance of such models so that clinicians can safely rely on them. In this paper, we focus on sleep staging wherein machine learning models can be used to automate or support sleep scoring. Evaluation of these models is complex because sleep is a natural process, which varies among patients. For adoption in clinical routine, it is important to understand how the models perform for different groups of patients. Moreover, models can be trained to recognize different characteristics in the data, and model developers need to understand why and how performance of the different models varies. To address these challenges, we present a visual analytics approach to evaluate the performance of predictive models on sleep staging and to help experts better understand these models with respect to patient data (e.g., conditions, medication, etc.). We illustrate the effectiveness of our approach by comparing multiple models trained on real-world sleep staging data with experts.
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perssleep:一种用于睡眠分期模型性能评估的可视化分析方法
机器学习在医疗领域越来越受欢迎。在不久的将来,临床医生希望预测模型能够支持诊断和预后分析等日常任务。因此,评估和比较这些模型的性能是非常重要的,以便临床医生可以安全地依赖它们。在本文中,我们专注于睡眠分期,其中机器学习模型可用于自动化或支持睡眠评分。对这些模型的评估是复杂的,因为睡眠是一个自然过程,因人而异。为了在临床常规中采用,了解模型在不同患者群体中的表现是很重要的。此外,可以训练模型来识别数据中的不同特征,模型开发人员需要了解不同模型的性能变化的原因和方式。为了应对这些挑战,我们提出了一种可视化分析方法来评估睡眠分期预测模型的性能,并帮助专家更好地理解这些模型与患者数据(例如,条件,药物等)的关系。我们通过与专家比较在真实世界睡眠阶段数据上训练的多个模型来说明我们方法的有效性。
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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