Artificial intelligence (AI) in healthcare is a potentially revolutionary tool to achieve improved healthcare outcomes while reducing overall health costs. While many exploratory results hit the headlines in recent years there are only few certified and even fewer clinically validated products available in the clinical setting. This is a clear indication of failing translation due to shortcomings of the current approach to AI in healthcare. In this work, we highlight the major areas, where we observe current challenges for translation in AI in healthcare, namely precision medicine, reproducible science, data issues and algorithms, causality, and product development. For each field, we outline possible solutions for these challenges. Our work will lead to improved translation of AI in healthcare products into the clinical setting
翻译:医疗领域人工智能(AI)是一个潜在的革命性工具,可以改善医疗成果,同时降低总体医疗成本。尽管近年来许多探索性结果都成为头条新闻,但临床环境中现有的经认证的临床验证产品数量很少,甚至更少。这清楚地表明,由于目前医疗领域对人工智能的处理方法存在缺陷,翻译工作失败。在这项工作中,我们强调了主要领域,即精确医学、可复制科学、数据问题和算法、因果关系和产品开发等,我们看到目前人工智能在医疗领域翻译方面的挑战。我们为每个领域概述了应对这些挑战的可能解决方案。我们的工作将导致将保健产品中的人工智能更好地转化为临床环境。