Rethinking explainability: toward a postphenomenology of black-box artificial intelligence in medicine

被引:0
|
作者
Annie B. Friedrich
Jordan Mason
Jay R. Malone
机构
[1] Washington University in St. Louis,Bioethics Research Center
[2] Saint Louis University,Albert Gnaegi Center for Health Care Ethics
[3] Washington University in St. Louis,Department of Pediatrics and Critical Care Medicine
来源
Ethics and Information Technology | 2022年 / 24卷
关键词
Artificial intelligence; Machine learning; Black-box; Postphenomenology; Technological mediation; Ethics;
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学科分类号
摘要
In recent years, increasingly advanced artificial intelligence (AI), and in particular machine learning, has shown great promise as a tool in various healthcare contexts. Yet as machine learning in medicine has become more useful and more widely adopted, concerns have arisen about the “black-box” nature of some of these AI models, or the inability to understand—and explain—the inner workings of the technology. Some critics argue that AI algorithms must be explainable to be responsibly used in the clinical encounter, while supporters of AI dismiss the importance of explainability and instead highlight the many benefits the application of this technology could have for medicine. However, this dichotomy fails to consider the particular ways in which machine learning technologies mediate relations in the clinical encounter, and in doing so, makes explainability more of a problem than it actually is. We argue that postphenomenology is a highly useful theoretical lens through which to examine black-box AI, because it helps us better understand the particular mediating effects this type of technology brings to clinical encounters and moves beyond the explainability stalemate. Using a postphenomenological approach, we argue that explainability is more of a concern for physicians than it is for patients, and that a lack of explainability does not introduce a novel concern to the physician–patient encounter. Explainability is just one feature of technological mediation and need not be the central concern on which the use of black-box AI hinges.
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