论文标题
从多供应商胸部X光片自动识别肺部疾病的增量学习方法
An Incremental Learning Approach to Automatically Recognize Pulmonary Diseases from the Multi-vendor Chest Radiographs
论文作者
论文摘要
肺部疾病会引起严重的呼吸道问题,如果未及时治疗,会导致猝死。许多研究人员利用深度学习系统使用胸部X射线(CXR)诊断肺部疾病。但是,这样的系统需要在大规模数据上进行详尽的培训,以有效诊断胸部异常。此外,采购如此大规模的数据通常是不可行的且不切实际的,尤其是对于稀有疾病。随着渐进学习的最新进展,研究人员定期调整了深层神经网络,以学习不同的分类任务,但很少有培训示例。尽管这种系统可以抵抗灾难性的遗忘,但它们彼此独立对待知识表示,这限制了他们的分类表现。同样,据我们所知,没有增量学习驱动的图像诊断框架,该框架是专门设计用于从CXR中筛选肺部疾病的。为了解决这个问题,我们提出了一个新颖的框架,可以学会逐步筛查不同的胸部异常。除此之外,提出的框架是通过渐进的学习损失函数受到惩罚的,该框架侵入贝叶斯理论,以识别逐步学习的知识表示之间的结构和语义相互依赖性,以有效地诊断肺部疾病,无论扫描仪的规格如何。我们在包含不同胸部异常的五个公共CXR数据集上测试了提议的框架,在该数据集中,它通过各种指标优于各种最新系统。
Pulmonary diseases can cause severe respiratory problems, leading to sudden death if not treated timely. Many researchers have utilized deep learning systems to diagnose pulmonary disorders using chest X-rays (CXRs). However, such systems require exhaustive training efforts on large-scale data to effectively diagnose chest abnormalities. Furthermore, procuring such large-scale data is often infeasible and impractical, especially for rare diseases. With the recent advances in incremental learning, researchers have periodically tuned deep neural networks to learn different classification tasks with few training examples. Although, such systems can resist catastrophic forgetting, they treat the knowledge representations independently of each other, and this limits their classification performance. Also, to the best of our knowledge, there is no incremental learning-driven image diagnostic framework that is specifically designed to screen pulmonary disorders from the CXRs. To address this, we present a novel framework that can learn to screen different chest abnormalities incrementally. In addition to this, the proposed framework is penalized through an incremental learning loss function that infers Bayesian theory to recognize structural and semantic inter-dependencies between incrementally learned knowledge representations to diagnose the pulmonary diseases effectively, regardless of the scanner specifications. We tested the proposed framework on five public CXR datasets containing different chest abnormalities, where it outperformed various state-of-the-art system through various metrics.