Machine learning methods offer great promise for fast and accurate detection and prognostication of COVID-19 from standard-of-care chest radiographs (CXR) and computed tomography (CT) images. Many articles have been published in 2020 describing new machine learning-based models for both of these tasks, but it is unclear which are of potential clinical utility. In this systematic review, we search EMBASE via OVID, MEDLINE via PubMed, bioRxiv, medRxiv and arXiv for published papers and preprints uploaded from January 1, 2020 to October 3, 2020 which describe new machine learning models for the diagnosis or prognosis of COVID-19 from CXR or CT images. Our search identified 2,212 studies, of which 415 were included after initial screening and, after quality screening, 61 studies were included in this systematic review. Our review finds that none of the models identified are of potential clinical use due to methodological flaws and/or underlying biases. This is a major weakness, given the urgency with which validated COVID-19 models are needed. To address this, we give many recommendations which, if followed, will solve these issues and lead to higher quality model development and well documented manuscripts.
翻译:在2020年发表了许多文章,描述了这两项任务的新机器学习模式,但尚不清楚哪些是潜在的临床用途。在这次系统审查中,我们通过OVID、MEDLINE通过PubMed、BioRxiv、MedRxiv和ArXiv等搜索EMBASASE、MEDLINE通过PubMed、BioRxiv、MedRxiv和ArXiv搜寻从2020年1月1日至2020年10月3日上传的论文和预印,这些论文和预印描述了诊断或预测CXR或CT图像COVID-19的新机器学习模式。我们的搜索查明了2 212项研究,其中415项是初步筛选后列入的,61项研究被纳入了系统审查。我们的审查发现,所查明的模型中无一因方法缺陷和/或潜在偏见而有可能临床使用。这是一个重大缺陷,因为迫切需要验证COVID-19模型。为了解决这个问题,我们将提出许多质量建议,如果能够解决,我们所遵循这些质量。