医疗保健中数据的不合理有效性和难度

Peter Lee
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引用次数: 2

摘要

数据和数据分析被广泛认为是解决医疗保健系统问题的关键部分。事实上,有无数种方法可以将数据转化为更好的医疗诊断工具、更有效的治疗方法,并提高临床医生的工作效率。但是,尽管有明显的巨大潜力,但要使这一切成为现实,仍然存在一些重大挑战,包括使获取健康数据更容易,解决隐私和伦理问题,以及确保“学习”系统的临床安全。本次演讲阐述了医疗保健技术的可能性,并详细介绍了目前阻碍其成为现实的关键挑战。
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The Unreasonable Effectiveness, and Difficulty, of Data in Healthcare
Data and data analysis are widely assumed to be the key part of the solution to healthcare systems' problems. Indeed, there are countless ways in which data can be converted into better medical diagnostic tools, more effective therapeutics, and improved productivity for clinicians. But while there is clearly great potential, some big challenges remain to make this all a reality, including making access to health data easier, addressing privacy and ethics concerns, and ensuring the clinical safety of "learning" systems. This talk illustrates what is possible in healthcare technology, and details key challenges that currently prevent this from becoming a reality.
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