Designing Artificial Intelligence (AI) solutions that can operate in real-world situations is a highly complex task. Deploying such solutions in the medical domain is even more challenging. The promise of using AI to improve patient care and reduce cost has encouraged many companies to undertake such endeavours. For our team, the goal has been to improve early identification of deteriorating patients in the hospital. Identifying patient deterioration in lower acuity wards relies, to a large degree on the attention and intuition of clinicians, rather than on the presence of physiological monitoring devices. In these care areas, an automated tool which could continuously observe patients and notify the clinical staff of suspected deterioration, would be extremely valuable. In order to develop such an AI-enabled tool, a large collection of patient images and audio correlated with corresponding vital signs, past medical history and clinical outcome would be indispensable. To the best of our knowledge, no such public or for-pay data set currently exists. This lack of audio-visual data led to the decision to conduct exactly such study. The main contributions of this paper are, the description of a protocol for audio-visual data collection study, a cloud-architecture for efficiently processing and consuming such data, and the design of a specific data collection device.
翻译:设计在现实世界情况下可以使用的人工智能(AI)解决方案是一项非常复杂的任务。在医疗领域部署这种解决方案甚至更具挑战性。使用人工智能改善病人护理和降低成本的许诺鼓励了许多公司进行这种努力。对于我们的团队来说,目标是改进医院恶化病人的早期诊断。在较低敏锐病房中发现病人的恶化在很大程度上取决于临床医生的注意力和直觉,而不是生理监测装置的存在。在这些护理地区,一个可以持续观察病人并通知临床工作人员疑似恶化的自动化工具将是极有价值的。为了开发这种依靠人工智能的工具,必须收集大量病人的图像和与相应的重要迹象、以往医疗史和临床结果相关的音频。根据我们的知识,目前没有这样的公共或付费数据集。这种缺乏视听数据导致决定进行准确的这种研究。这份文件的主要贡献是,描述视听数据收集研究的程序、高效处理和消耗这类数据的具体装置的云层结构以及设计。