The COVID-19 pandemic has spurred a large amount of observational studies reporting linkages between the risk of developing severe COVID-19 or dying from it, and sex and gender. By reviewing a large body of related literature and conducting a fine grained analysis based on sex-disaggregated data of 61 countries spanning 5 continents, we discover several confounding factors that could possibly explain the supposed male vulnerability to COVID-19. We thus highlight the challenge of making causal claims based on available data, given the lack of statistical significance and potential existence of biases. Informed by our findings on potential variables acting as confounders, we contribute a broad overview on the issues bias, explainability and fairness entail in data-driven analyses. Thus, we outline a set of discriminatory policy consequences that could, based on such results, lead to unintended discrimination. To raise awareness on the dimensionality of such foreseen impacts, we have compiled an encyclopedia-like reference guide, the Bias Catalog for Pandemics (BCP), to provide definitions and emphasize realistic examples of bias in general, and within the COVID-19 pandemic context. These are categorized within a division of bias families and a 2-level priority scale, together with preventive steps. In addition, we facilitate the Bias Priority Recommendations on how to best use and apply this catalog, and provide guidelines in order to address real world research questions. The objective is to anticipate and avoid disparate impact and discrimination, by considering causality, explainability, bias and techniques to mitigate the latter. With these, we hope to 1) contribute to designing and conducting fair and equitable data-driven studies and research; and 2) interpret and draw meaningful and actionable conclusions from these.
翻译:COVID-19大流行引发了大量观测研究,报告发展严重COVID-19或从中死亡的风险与性与性别之间的联系。通过审查大量相关文献和根据五大洲61个国家按性别分列的数据进行精细分析,我们发现一些令人困惑的因素,有可能解释男性对COVID-19的脆弱性。因此,我们强调根据现有数据提出因果索赔的挑战,因为缺乏统计意义和潜在的偏见存在。我们从关于潜在变数的研究结果中了解到,我们在以数据为驱动的分析中,对问题偏见、可解释性和公平性作了广泛的概述。因此,我们根据这些结果,概述了一套歧视性政策后果,可导致意外歧视。为了提高对这种预期影响维度的认识,我们编制了一本类似百科全书的参考指南,即“百科全书”(BCP),以提供定义和强调一般和CVID-19大流行背景下的可偏向性结论的实际例子。我们将这些差别、可解释性和公平性、可解释性、可理解性、可理解性、可理解性、可理解性、可理解性、可理解性分类、可分级、可分级、可分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级、分级