Hryniewska Weronika, Bombiński Przemysław, Szatkowski Patryk, Tomaszewska Paulina, Przelaskowski Artur, Biecek Przemysław
Faculty of Mathematics and Information Science, Warsaw University of Technology, Poland.
Department of Pediatric Radiology, Medical University of Warsaw, Poland.
Pattern Recognit. 2021 Oct;118:108035. doi: 10.1016/j.patcog.2021.108035. Epub 2021 May 21.
The sudden outbreak and uncontrolled spread of COVID-19 disease is one of the most important global problems today. In a short period of time, it has led to the development of many deep neural network models for COVID-19 detection with modules for explainability. In this work, we carry out a systematic analysis of various aspects of proposed models. Our analysis revealed numerous mistakes made at different stages of data acquisition, model development, and explanation construction. In this work, we overview the approaches proposed in the surveyed Machine Learning articles and indicate typical errors emerging from the lack of deep understanding of the radiography domain. We present the perspective of both: experts in the field - radiologists and deep learning engineers dealing with model explanations. The final result is a proposed checklist with the minimum conditions to be met by a reliable COVID-19 diagnostic model.
新型冠状病毒肺炎(COVID-19)疾病的突然爆发和不受控制的传播是当今最重要的全球问题之一。在短时间内,已经开发出了许多带有可解释性模块的用于COVID-19检测的深度神经网络模型。在这项工作中,我们对所提出模型的各个方面进行了系统分析。我们的分析揭示了在数据采集、模型开发和解释构建的不同阶段所犯的众多错误。在这项工作中,我们概述了所调查的机器学习文章中提出的方法,并指出了由于对放射成像领域缺乏深入理解而出现的典型错误。我们展示了该领域的两类专家的观点:放射科医生和处理模型解释的深度学习工程师。最终结果是一份建议清单,列出了可靠的COVID-19诊断模型应满足的最低条件。