心血管临床研究数据仓库与现实世界研究的发展。

IF 2.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Dan-Dan Li, Ya-Ni Yu, Zhi-Jun Sun, Chang-Fu Liu, Tao Chen, Dong-Kai Shan, Xiao-Dan Tuo, Jun Guo, Yun-Dai Chen
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引用次数: 0

摘要

背景:医学信息学为临床诊断和治疗积累了大量数据。然而,对随访数据的有限获取以及跨不同平台整合数据的困难继续对临床研究进展构成重大障碍。为此,我们的研究团队着手开发一个专门的心脏病学临床研究数据库,从而建立一个全面的数字平台,促进临床决策和研究工作。方法:数据库纳入2012 - 2021年在中国人民解放军总医院心血管内科接受治疗的患者的实际临床资料。它包括从医院信息系统中提取的患者基本信息、病史、非侵入性影像学检查、实验室检查结果以及与介入手术相关的围手术期信息的综合数据。此外,还开发了一种创新的人工智能(AI)交互式随访系统,确保几乎所有心肌梗死患者在出院后至少接受一次随访,从而实现了对高危患者整个护理连续体的全面数据管理。结果:该数据库整合了广泛的横断面和纵向患者数据,重点关注高风险急性冠状动脉综合征患者。它实现了结构化和非结构化临床数据的整合,同时创新地结合人工智能和自动语音识别技术,提高数据集成和工作流程效率。它创建了一个全面的患者视图,从而提高诊断和随访质量,并提供高质量的数据,以支持临床研究。尽管在非结构化数据标准化和生物样本完整性方面存在局限性,但数据库的发展伴随着持续的优化努力。结论:心血管专科临床数据库是集临床诊疗与科研为一体的综合性数字化档案,有利于临床诊疗流程的数字化、智能化转型。为临床决策提供支持,为心血管疾病专科管理提供数据支持和潜在的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of cardiovascular clinical research data warehouse and real-world research.

Background: Medical informatics accumulated vast amounts of data for clinical diagnosis and treatment. However, limited access to follow-up data and the difficulty in integrating data across diverse platforms continue to pose significant barriers to clinical research progress. In response, our research team has embarked on the development of a specialized clinical research database for cardiology, thereby establishing a comprehensive digital platform that facilitates both clinical decision-making and research endeavors.

Methods: The database incorporated actual clinical data from patients who received treatment at the Cardiovascular Medicine Department of Chinese PLA General Hospital from 2012 to 2021. It included comprehensive data on patients' basic information, medical history, non-invasive imaging studies, laboratory test results, as well as peri-procedural information related to interventional surgeries, extracted from the Hospital Information System. Additionally, an innovative artificial intelligence (AI)-powered interactive follow-up system had been developed, ensuring that nearly all myocardial infarction patients received at least one post-discharge follow-up, thereby achieving comprehensive data management throughout the entire care continuum for high-risk patients.

Results: This database integrates extensive cross-sectional and longitudinal patient data, with a focus on higher-risk acute coronary syndrome patients. It achieves the integration of structured and unstructured clinical data, while innovatively incorporating AI and automatic speech recognition technologies to enhance data integration and workflow efficiency. It creates a comprehensive patient view, thereby improving diagnostic and follow-up quality, and provides high-quality data to support clinical research. Despite limitations in unstructured data standardization and biological sample integrity, the database's development is accompanied by ongoing optimization efforts.

Conclusion: The cardiovascular specialty clinical database is a comprehensive digital archive integrating clinical treatment and research, which facilitates the digital and intelligent transformation of clinical diagnosis and treatment processes. It supports clinical decision-making and offers data support and potential research directions for the specialized management of cardiovascular diseases.

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来源期刊
Journal of Geriatric Cardiology
Journal of Geriatric Cardiology CARDIAC & CARDIOVASCULAR SYSTEMS-GERIATRICS & GERONTOLOGY
CiteScore
3.30
自引率
4.00%
发文量
1161
期刊介绍: JGC focuses on both basic research and clinical practice to the diagnosis and treatment of cardiovascular disease in the aged people, especially those with concomitant disease of other major organ-systems, such as the lungs, the kidneys, liver, central nervous system, gastrointestinal tract or endocrinology, etc.
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