This paper proposes a weakly-supervised machine learning-based approach aiming at a tool to alert patients about possible respiratory diseases. Various types of pathologies may affect the respiratory system, potentially leading to severe diseases and, in certain cases, death. In general, effective prevention practices are considered as major actors towards the improvement of the patient's health condition. The proposed method strives to realize an easily accessible tool for the automatic diagnosis of respiratory diseases. Specifically, the method leverages Variational Autoencoder architectures permitting the usage of training pipelines of limited complexity and relatively small-sized datasets. Importantly, it offers an accuracy of 57 %, which is in line with the existing strongly-supervised approaches.
翻译:本文提出了一种以薄弱的、监督不力的机器学习为基础的方法,旨在提醒病人注意可能的呼吸道疾病。各种类型的病理可能会影响呼吸系统,可能导致严重疾病,在某些情况下甚至导致死亡。一般而言,有效的预防做法被视为改善病人健康状况的主要行为者。拟议方法力求实现一种容易获得的呼吸道疾病自动诊断工具。具体地说,该方法利用了可允许使用复杂程度有限和规模较小的培训管道的变式自动编码结构。重要的是,它提供了57%的准确率,这与现有的严格监督的方法是一致的。