Post Andrew R, Harrison James H
Division of Clinical Informatics, Department of Public Health Sciences, University of Virginia, Charlottesville, VA 22908-0717, USA.
J Am Med Inform Assoc. 2007 Sep-Oct;14(5):674-83. doi: 10.1197/jamia.M2275. Epub 2007 Jun 28.
To specify and identify disease and patient care processes represented by temporal patterns in clinical events and observations, and retrieve patient populations containing those patterns from clinical data repositories, in support of clinical research, outcomes studies, and quality assurance.
A data processing method called PROTEMPA (Process-oriented Temporal Analysis) was developed for defining and detecting clinically relevant temporal and mathematical patterns in retrospective data. PROTEMPA provides for portability across data sources, "pluggable" data processing environments, and the creation of libraries of pattern definitions and data processing algorithms.
A proof-of-concept implementation of PROTEMPA in Java was evaluated against standard SQL queries for its ability to identify patients from a large clinical data repository who show the features of HELLP syndrome, and categorize those patients by disease severity and progression based on time sequence characteristics in their clinical laboratory test results. RESULTS were verified by manual case review.
The proof-of-concept implementation was more accurate than SQL in identifying patients with HELLP and correctly assigned severity and disease progression categories, which was not possible using SQL only.
PROTEMPA supports the identification and categorization of patients with complex disease based on the characteristics of and relationships between time sequences in multiple data types. Identifying patient populations who share these types of patterns may be useful when patient features of interest do not have standard codes, are poorly-expressed in coding schemes, may be inaccurately or incompletely coded, or are not represented explicitly as data values.
明确并识别临床事件和观察结果中时间模式所代表的疾病及患者护理过程,并从临床数据存储库中检索包含这些模式的患者群体,以支持临床研究、结果研究和质量保证。
开发了一种名为PROTEMPA(面向过程的时间分析)的数据处理方法,用于在回顾性数据中定义和检测临床相关的时间和数学模式。PROTEMPA具备跨数据源、“可插拔”数据处理环境的可移植性,以及创建模式定义库和数据处理算法的能力。
针对从大型临床数据存储库中识别出表现出HELLP综合征特征的患者的能力,对用Java实现的PROTEMPA概念验证进行了评估,并根据其临床实验室检测结果中的时间序列特征,对这些患者按疾病严重程度和进展进行分类。结果通过人工病例审查进行验证。
概念验证实现在识别HELLP患者以及正确分配严重程度和疾病进展类别方面比SQL更准确,仅使用SQL是无法做到这一点的。
PROTEMPA支持根据多种数据类型中时间序列的特征和关系,对患有复杂疾病的患者进行识别和分类。当感兴趣的患者特征没有标准代码、在编码方案中表达不佳、可能编码不准确或不完整,或者没有明确表示为数据值时,识别具有这些类型模式的患者群体可能会很有用。