用于电子健康记录和医疗笔记预测建模的集成患者图框架。

IF 3 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
S Daphne, V Mary Anita Rajam, P Hemanth, Sundarrajan Dinesh
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引用次数: 0

摘要

目的:电子健康记录(EHRs)在学术研究和商业应用中越来越重要。最近的研究表明,当考虑到电子病历数据的几何结构(包括诊断和治疗之间的关系)时,预测任务(如心力衰竭检测)的效果会更好。然而,许多电子病历缺乏必要的结构信息。本研究旨在通过构建患者知识图谱集成框架(PKGNN)来分析ICU患者队列并预测死亡率和再入院结果,从而提高医疗保健预测的准确性。方法:本研究利用来自MIMIC-IV数据集的42,671例患者构建PKGNN框架,该框架由三个主要部分组成:(1)医疗记录提取,(2)患者图构建和(3)预测任务。高级自然语言处理(NLP)模型,包括临床BERT、生物BERT和BlueBERT,从出院摘要中提取并整合语义表示到患者知识图中。然后使用这种结构化表示来增强预测任务。结果:对MIMIC-IV数据集的性能评估表明,PKGNN框架在预测死亡率和30天再入院率方面优于最先进的基线模型。全面的框架分析表明,结合患者图结构可以提高预测精度。此外,集成模型提高了风险预测性能并确定了关键的临床指标。结论:本研究强调了在电子病历分析中利用结构化知识图来改进关键医疗保健结果预测模型的重要性。PKGNN框架通过将先进的NLP技术与患者图结构相结合,提高了死亡率和再入院预测的准确性。这项工作通过推进基于知识图的电子病历分析策略,最终支持更好的临床决策和风险评估,为文献做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ensemble Patient Graph Framework for Predictive Modelling from Electronic Health Records and Medical Notes.

Objective: Electronic health records (EHRs) are becoming increasingly important in both academic research and business applications. Recent studies indicate that predictive tasks, such as heart failure detection, perform better when the geometric structure of EHR data, including the relationships between diagnoses and treatments, is considered. However, many EHRs lack essential structural information. This study aims to improve predictive accuracy in healthcare by constructing a Patient Knowledge Graph Ensemble Framework (PKGNN) to analyse ICU patient cohorts and predict mortality and hospital readmission outcomes. Methods: This study utilises a cohort of 42,671 patients from the MIMIC-IV dataset to build the PKGNN framework, which consists of three main components: (1) medical note extraction, (2) patient graph construction, and (3) prediction tasks. Advanced Natural Language Processing (NLP) models, including Clinical BERT, BioBERT, and BlueBERT, extract and integrate semantic representations from discharge summaries into a patient knowledge graph. This structured representation is then used to enhance predictive tasks. Results: Performance evaluations on the MIMIC-IV dataset indicate that the PKGNN framework outperforms state-of-the-art baseline models in predicting mortality and 30-day hospital readmission. A thorough framework analysis reveals that incorporating patient graph structures improves prediction accuracy. Furthermore, an ensemble model enhances risk prediction performance and identifies crucial clinical indicators. Conclusions: This study highlights the importance of leveraging structured knowledge graphs in EHR analysis to improve predictive modelling for critical healthcare outcomes. The PKGNN framework enhances the accuracy of mortality and readmission predictions by integrating advanced NLP techniques with patient graph structures. This work contributes to the literature by advancing knowledge graph-based EHR analysis strategies, ultimately supporting better clinical decision-making and risk assessment.

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来源期刊
Diagnostics
Diagnostics Biochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
4.70
自引率
8.30%
发文量
2699
审稿时长
19.64 days
期刊介绍: Diagnostics (ISSN 2075-4418) is an international scholarly open access journal on medical diagnostics. It publishes original research articles, reviews, communications and short notes on the research and development of medical diagnostics. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodological details must be provided for research articles.
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