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利用自然语言处理和患者就诊路径聚类对猫咬伤脓肿的抗菌治疗进行时间表型分析。

Using natural language processing and patient journey clustering for temporal phenotyping of antimicrobial therapies for cat bite abscesses.

机构信息

Asia-Pacific Centre for Animal Health, Melbourne Veterinary School, University of Melbourne, Parkville, Victoria, Australia; School of Computing and Information Systems, University of Melbourne, Parkville, Victoria, Australia; Biomedical Informatics and Medical Education, University of Washington School of Medicine, Seattle, WA, USA.

School of Computing and Information Systems, University of Melbourne, Parkville, Victoria, Australia; School of Computing Technologies, RMIT University, Melbourne, Victoria, Australia.

出版信息

Prev Vet Med. 2024 Feb;223:106112. doi: 10.1016/j.prevetmed.2023.106112. Epub 2023 Dec 23.

Abstract

BACKGROUND

Temporal phenotyping of patient journeys, which capture the common sequence patterns of interventions in the treatment of a specific condition, is useful to support understanding of antimicrobial usage in veterinary patients. Identifying and describing these phenotypes can inform antimicrobial stewardship programs designed to fight antimicrobial resistance, a major health crisis affecting both humans and animals, in which veterinarians have an important role to play.

OBJECTIVE

This research proposes a framework for extracting temporal phenotypes of patient journeys from clinical practice data through the application of natural language processing (NLP) and unsupervised machine learning (ML) techniques, using cat bite abscesses as a model condition. By constructing temporal phenotypes from key events, the relationship between antimicrobial administration and surgical interventions can be described, and similar treatment patterns can be grouped together to describe outcomes associated with specific antimicrobial selection.

METHODS

Cases identified as having a cat bite abscess as a diagnosis were extracted from VetCompass Australia, a database of veterinary clinical records. A classifier was trained and used to label the most clinically relevant event features in each record as chosen by a group of veterinarians. The labeled records were processed into coded character strings, where each letter represents a summary of specific types of treatments performed at a given visit. The sequences of letters representing the cases were clustered based on weighted Levenshtein edit distances with KMeans+ + to identify the main variations of the patient treatment journeys, including the antimicrobials used and their duration of administration.

RESULTS

A total of 13,744 records that met the selection criteria was extracted and grouped into 8436 cases. There were 9 clinically distinct event sequence patterns (temporal phenotypes) of patient journeys identified, representing the main sequences in which surgery and antimicrobial interventions are performed. Patients receiving amoxicillin and surgery had the shortest duration of antimicrobial administration (median of 3.4 days) and patients receiving cefovecin with no surgical intervention had the longest antimicrobial treatment duration (median of 27 days).

CONCLUSION

Our study demonstrates methods to extract and provide an overview of temporal phenotypes of patient journeys, which can be applied to text-based clinical records for multiple species or clinical conditions. We demonstrate the effectiveness of this approach to derive real-world evidence of treatment impacts using cat bite abscesses as a model condition to describe patterns of antimicrobial therapy prescriptions and their outcomes.

摘要

背景

患者就诊过程的时间表型分析可以捕获特定疾病治疗中干预措施的常见序列模式,有助于理解兽医患者中抗菌药物的使用情况。确定和描述这些表型可以为旨在对抗影响人类和动物的主要健康危机——抗菌药物耐药性的抗菌药物管理计划提供信息,兽医在其中发挥着重要作用。

目的

本研究提出了一种通过应用自然语言处理 (NLP) 和无监督机器学习 (ML) 技术从临床实践数据中提取患者就诊过程时间表型的框架,以猫咬伤脓肿为例。通过从关键事件构建时间表型,可以描述抗菌药物管理和手术干预之间的关系,并将类似的治疗模式分组在一起,以描述与特定抗菌药物选择相关的结果。

方法

从兽医临床记录数据库 VetCompass Australia 中提取被诊断为猫咬伤脓肿的病例。训练分类器并用于标记由一组兽医选择的每个记录中最具临床相关性的事件特征。对标记后的记录进行处理,将其转换为编码字符序列,其中每个字母代表在给定就诊时进行的特定类型治疗的总结。基于带权的 Levenshtein 编辑距离使用 KMeans++对代表病例的字母序列进行聚类,以识别患者治疗过程的主要变化,包括使用的抗菌药物及其管理时间。

结果

共提取了 13744 条符合选择标准的记录,并将其分为 8436 例。确定了 8436 例患者就诊过程中 9 种具有临床意义的事件序列模式(时间表型),代表了手术和抗菌干预的主要序列。接受阿莫西林和手术治疗的患者抗菌药物管理时间最短(中位数为 3.4 天),接受头孢噻肟且无手术干预的患者抗菌药物治疗时间最长(中位数为 27 天)。

结论

我们的研究证明了提取和提供患者就诊过程时间表型概述的方法,可应用于多种物种或临床条件的基于文本的临床记录。我们以猫咬伤脓肿为例,展示了该方法提取和描述抗菌药物治疗方案及其结果的实际影响的有效性,从而为现实世界的证据提供了证据。

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