基于集成知识蒸馏的可解释呼吸声音分析

Cheng Wang, Jianqiang Li, Jie Chen, Heng Zhang, Li Wang, Zun Liu
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引用次数: 2

摘要

慢性呼吸系统疾病是世界上主要的死亡原因之一。呼吸音是诊断大多数呼吸系统疾病的重要指标。最近的许多研究都集中在分析外来音上。不幸的是,这些方法不能在听诊过程中实时分析呼吸音,也缺乏一个容易被医生信任的模型。本文提出了一种基于可解释集成知识蒸馏的呼吸声分析框架。在我们的工作中,我们将训练多个教师模型来学习不同来源的肺音,然后他们将学习到的知识通过知识提炼来指导学生模型的训练,使我们的模型在预测准确性和效率上更加强大。同时,该模型具有可解释性和可靠性,其预测过程近似于决策树正则化。实验证明了该方法在呼吸声数据库上的有效性。
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Interpretable Respiratory Sound Analysis with Ensemble Knowledge Distillation
Chronic respiratory diseases are one of the leading causes of death in the world. Respiratory sounds are an important indicator to diagnose the most diseases related to respiratory system. Many recent works have focused on the analysis of adventitious sounds. Unfortunately, these approaches cannot analyze respiratory sounds in real time during auscultation and lack an easily trusted model by doctors. In this paper, we propose a novel respiratory sound analysis framework with interpretable ensemble knowledge distillation. In our work, multiple teacher models will be trained to learn lung sounds from different sources, and then they will apply the learned knowledge to guide the student model training through knowledge distillation to make our model more powerful in predicting accuracy and efficiency. Meanwhile, our model is interpretable and reliable, and its process of prediction will be approximated by the decision tree regularization. Experiments demonstrate the effectiveness of our method on the respiratory sound database.
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