Rau Alexander, Reisert Marco, Frank Benedikt, Deuschl Cornelius, Russe Maximilian F, Elsheikh Samer, Köhrmann Martin, Urbach Horst, Kellner Elias
Department of Neuroradiology, Medical Center - University of Freiburg, Faculty of Medicine, University of Freiburg, 79106, Freiburg, Germany.
Medical Physics, Department of Diagnostic and Interventional Radiology, Medical Center - University of Freiburg, Faculty of Medicine, University of Freiburg, 79106, Freiburg, Germany.
Sci Rep. 2025 Jan 7;15(1):1239. doi: 10.1038/s41598-025-85315-5.
Acute stroke management is time-sensitive, making time data crucial for both research and quality management. However, these time data are often not reliably captured in routine clinical practice. In this proof-of-concept study we analysed image-based time data automatically captured in the DICOM format. We enrolled data from two separate stroke centers (n = 3136 and n = 2089). Data from the first center was additionally separated into groups with large-vessel-occlusion (LVO, n = 1.092), medium-vessel-occlusions (MVO, n = 416), and no occlusion (NVO, n = 1630). The DICOM-tag StudyTime was used to analyze the distribution of scan times throughout the day. Additionally, manually documented onset- and admission were extracted from the patients' records in a subset of cases (n = 347). Timestamps were compared across centers and occlusion groups, and a probabilistic model was developed to illustrate and compare stroke occurrence patterns throughout the day. The temporal distribution of the scan times at both centers was exceptionally consistent with a peak around noon and a nighttime low. The groups with vessel occlusions showed an earlier peak compared to those without (p < 0.04). The median interval between admission and scan time was 23 min, while the median onset-to-imaging time was 1 h:54 min. This proof-of-concept study indicates that DICOM-timestamps can reveal insights into the temporal patterns of stroke imaging and may be a promising tool for quality control and stroke research in general since they are always automatically captured by imaging devices as opposed to manual data collection in routine clinical practice.
急性中风的治疗对时间要求严格,这使得时间数据对于研究和质量管理都至关重要。然而,这些时间数据在常规临床实践中往往无法可靠获取。在这项概念验证研究中,我们分析了以DICOM格式自动捕获的基于图像的时间数据。我们纳入了来自两个独立中风中心的数据(分别为n = 3136和n = 2089)。来自第一个中心的数据又进一步分为大血管闭塞组(LVO,n = 1092)、中血管闭塞组(MVO,n = 416)和无闭塞组(NVO,n = 1630)。利用DICOM标签“StudyTime”分析了全天扫描时间的分布情况。此外,在一部分病例(n = 347)中,从患者记录中提取了手动记录的发病时间和入院时间。对各中心和闭塞组的时间戳进行了比较,并建立了一个概率模型来阐述和比较全天的中风发生模式。两个中心扫描时间的时间分布都异常一致,中午左右出现高峰,夜间较低。与无血管闭塞的组相比,有血管闭塞的组出现高峰的时间更早(p < 0.04)。入院至扫描时间的中位数间隔为23分钟,而发病至成像时间的中位数为1小时54分钟。这项概念验证研究表明,DICOM时间戳可以揭示中风成像的时间模式,并且由于其由成像设备自动捕获,与常规临床实践中的手动数据收集不同,因此可能是质量控制和中风研究的一个有前景的工具。