A critical step in the fight against COVID-19, which continues to have a catastrophic impact on peoples lives, is the effective screening of patients presented in the clinics with severe COVID-19 symptoms. Chest radiography is one of the promising screening approaches. Many studies reported detecting COVID-19 in chest X-rays accurately using deep learning. A serious limitation of many published approaches is insufficient attention paid to explaining decisions made by deep learning models. Using explainable artificial intelligence methods, we demonstrate that model decisions may rely on confounding factors rather than medical pathology. After an analysis of potential confounding factors found on chest X-ray images, we propose a novel method to minimise their negative impact. We show that our proposed method is more robust than previous attempts to counter confounding factors such as ECG leads in chest X-rays that often influence model classification decisions. In addition to being robust, our method achieves results comparable to the state-of-the-art. The source code and pre-trained weights are publicly available at (https://github.com/tomek1911/POTHER).
翻译:COVID-19继续给人们的生活带来灾难性影响,在防治COVID-19的斗争中,一个关键步骤是有效筛查诊所中出现严重COVID-19症状的病人;胸前放射是很有希望的筛查方法之一;许多研究报告都报告说,使用深层的学习方法准确地在胸前X光片中检测COVID-19;许多已公布的方法对于解释深层学习模式做出的决定不够重视;使用可解释的人工智能方法,我们证明示范决定可能依赖混杂因素,而不是医疗病理;在分析胸部X射线图像中发现的潜在混杂因素后,我们提出了尽量减少其负面影响的新方法;我们表明,我们拟议的方法比以前试图消除诸如ECG导致胸部X光的混杂因素,这些因素往往影响模型分类决定的力度要强。我们的方法除了强劲之外,还取得了与州级技术相近的结果。在(https://github.com/tomek1911/POPATHERHI)上公开提供源代码和预先训练重量。