论文标题
嗨,西格玛,我有冠状病毒吗?
Hi Sigma, do I have the Coronavirus?: Call for a New Artificial Intelligence Approach to Support Health Care Professionals Dealing With The COVID-19 Pandemic
论文作者
论文摘要
就像您的手机可以检测到在拥挤的空间中播放的歌曲一样,我们表明在咳嗽电话录音中训练的人工智能转移学习算法会导致COVID-19的诊断测试。为了获得卫生保健社区的采用,我们计划在临床试验和墨西哥,西班牙和美国的其他三个场所中验证我们的结果。但是,如果我们有来自其他正在进行的临床试验和志愿者的数据,我们可能会做更多的事情。例如,对于确认的全职COVID-19患者,可以开发纵向音频测试来确定接触疗程的建议,以及对于最关键的Covid-19患者,成功率预测测试(包括患者临床数据)以优先考虑ICU分配。作为对工程社区的挑战,在我们的临床试验中,作者建议每天分发咳嗽记录,希望其他试验和众包用户能够贡献更多数据。以前的复杂AI任务方法已经使用了静态数据集,或者是大型公司领导的私人努力。所有现有的COVID-19试验也遵循此范式。取而代之的是,我们建议采用一种新颖的开放集体方法,用于大规模的实时医疗保健AI。我们将在https://opensigme.mit.edu上发布更新。我们个人的看法是,我们的方法是大规模大流行的正确方法,因此在这里留下来 - 您会加入吗?
Just like your phone can detect what song is playing in crowded spaces, we show that Artificial Intelligence transfer learning algorithms trained on cough phone recordings results in diagnostic tests for COVID-19. To gain adoption by the health care community, we plan to validate our results in a clinical trial and three other venues in Mexico, Spain and the USA . However, if we had data from other on-going clinical trials and volunteers, we may do much more. For example, for confirmed stay-at-home COVID-19 patients, a longitudinal audio test could be developed to determine contact-with-hospital recommendations, and for the most critical COVID-19 patients a success ratio forecast test, including patient clinical data, to prioritize ICU allocation. As a challenge to the engineering community and in the context of our clinical trial, the authors suggest distributing cough recordings daily, hoping other trials and crowdsourcing users will contribute more data. Previous approaches to complex AI tasks have either used a static dataset or were private efforts led by large corporations. All existing COVID-19 trials published also follow this paradigm. Instead, we suggest a novel open collective approach to large-scale real-time health care AI. We will be posting updates at https://opensigma.mit.edu. Our personal view is that our approach is the right one for large scale pandemics, and therefore is here to stay - will you join?