Schmidt Johannes, Arjune Sita, Boehm Volker, Grundmann Franziska, Müller Roman-Ulrich, Antczak Philipp
Bonacci GmbH, Cologne, Germany.
Department II of Internal Medicine and Center for Molecular Medicine Cologne, University of Cologne, Faculty of Medicine and University Hospital Cologne, Cologne, Germany.
Front Med (Lausanne). 2024 Dec 18;11:1430676. doi: 10.3389/fmed.2024.1430676. eCollection 2024.
The number of clinical studies and associated research has increased significantly in the last few years. Particularly in rare diseases, an increased effort has been made to integrate, analyse, and develop new knowledge to improve patient stratification and wellbeing. Clinical databases, including digital medical records, hold significant amount of information that can help understand the impact and progression of diseases. Combining and integrating this data however, has provided a challenge for data scientists due to the complex structures of digital medical records and the lack of site wide standardization of data entry. To address these challenges we present a python backed tool, Meda, which aims to collect data from different sources and combines these in a unified database structure for near real-time monitoring of clinical data. Together with an R shiny interface we can provide a near complete platform for real-time analysis and visualization.
在过去几年中,临床研究及相关研究的数量显著增加。特别是在罕见病领域,人们加大了整合、分析和开发新知识的力度,以改善患者分层和健康状况。临床数据库,包括数字病历,包含了大量有助于了解疾病影响和进展的信息。然而,由于数字病历结构复杂且缺乏全站点数据录入标准化,对数据科学家来说,合并和整合这些数据是一项挑战。为应对这些挑战,我们推出了一个由Python支持的工具Meda,其目的是从不同来源收集数据,并将这些数据整合到一个统一的数据库结构中,以实现对临床数据的近实时监测。通过一个R shiny界面,我们可以提供一个近乎完整的实时分析和可视化平台。