High-Dimensional Neurology, Queen Square Institute of Neurology, University College London, London, UK.
Victor Horsley Department of Neurosurgery, National Hospital for Neurology and Neurosurgery, London, UK.
Sci Rep. 2022 May 9;12(1):7603. doi: 10.1038/s41598-022-11607-9.
Characterizing acute service demand is critical for neurosurgery and other emergency-dominant specialties in order to dynamically distribute resources and ensure timely access to treatment. This is especially important in the post-Covid 19 pandemic period, when healthcare centers are grappling with a record backlog of pending surgical procedures and rising acute referral numbers. Healthcare dashboards are well-placed to analyze this data, making key information about service and clinical outcomes available to staff in an easy-to-understand format. However, they typically provide insights based on inference rather than prediction, limiting their operational utility. We retrospectively analyzed and prospectively forecasted acute neurosurgical referrals, based on 10,033 referrals made to a large volume tertiary neurosciences center in London, U.K., from the start of the Covid-19 pandemic lockdown period until October 2021 through the use of a novel AI-enabled predictive dashboard. As anticipated, weekly referral volumes significantly increased during this period, largely owing to an increase in spinal referrals (p < 0.05). Applying validated time-series forecasting methods, we found that referrals were projected to increase beyond this time-point, with Prophet demonstrating the best test and computational performance. Using a mixed-methods approach, we determined that a dashboard approach was usable, feasible, and acceptable among key stakeholders.
这是一段关于医学研究的英文文本,需要翻译成中文。
文本涉及到医学领域的专业术语,需要准确翻译。
译文要流畅自然,符合中文表达习惯。
刻画急性服务需求对于神经外科和其他以急诊为主的专科至关重要,以便能够动态分配资源并确保及时获得治疗。在后新冠疫情时期,这一点尤为重要,当时医疗中心正在应对创纪录的积压手术和急性转介数量上升的问题。医疗保健仪表板非常适合分析这些数据,以易于理解的格式向工作人员提供有关服务和临床结果的关键信息。但是,它们通常基于推断而不是预测提供见解,从而限制了其操作实用性。我们使用一种新颖的 AI 支持的预测仪表板,回顾性地分析和前瞻性地预测了急性神经外科转介,该仪表板基于从新冠疫情封锁开始到 2021 年 10 月期间向英国伦敦的一个大型三级神经科学中心进行的 10033 次转介。正如预期的那样,在此期间,每周的转介量显着增加,主要是由于脊柱转介的增加(p <0.05)。应用经过验证的时间序列预测方法,我们发现转介量预计将在此时间点之后增加,而 Prophet 表现出最佳的测试和计算性能。通过混合方法,我们确定仪表板方法在主要利益相关者中是可用,可行且可接受的。