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开发和评估一种文本分析算法,以自动应用国家 COVID-19 保护标准于风湿科患者。

Development and evaluation of a text analytics algorithm for automated application of national COVID-19 shielding criteria in rheumatology patients.

机构信息

Centre for Epidemiology Versus Arthritis, Centre for Musculoskeletal Research, The University of Manchester, Manchester, UK

Department of Rheumatology, Northern Care Alliance NHS Foundation Trust Salford Care Organisation, Salford, UK.

出版信息

Ann Rheum Dis. 2024 Jul 15;83(8):1082-1091. doi: 10.1136/ard-2024-225544.

Abstract

INTRODUCTION

At the beginning of the COVID-19 pandemic, the UK's Scientific Committee issued extreme social distancing measures, termed 'shielding', aimed at a subpopulation deemed extremely clinically vulnerable to infection. National guidance for risk stratification was based on patients' age, comorbidities and immunosuppressive therapies, including biologics that are not captured in primary care records. This process required considerable clinician time to manually review outpatient letters. Our aim was to develop and evaluate an automated shielding algorithm by text-mining outpatient letter diagnoses and medications, reducing the need for future manual review.

METHODS

Rheumatology outpatient letters from a large UK foundation trust were retrieved. Free-text diagnoses were processed using Intelligent Medical Objects software (Concept Tagger), which used interface terminology for each condition mapped to Systematized Medical Nomenclature for Medicine-Clinical Terminology (SNOMED-CT) codes. We developed the Medication Concept Recognition tool (Named Entity Recognition) to retrieve medications' type, dose, duration and status (active/past) at the time of the letter. Age, diagnosis and medication variables were then combined to calculate a shielding score based on the most recent letter. The algorithm's performance was evaluated using clinical review as the gold standard. The time taken to deploy the developed algorithm on a larger patient subset was measured.

RESULTS

In total, 5942 free-text diagnoses were extracted and mapped to SNOMED-CT, with 13 665 free-text medications (n=803 patients). The automated algorithm demonstrated a sensitivity of 80% (95% CI: 75%, 85%) and specificity of 92% (95% CI: 90%, 94%). Positive likelihood ratio was 10 (95% CI: 8, 14), negative likelihood ratio was 0.21 (95% CI: 0.16, 0.28) and F1 score was 0.81. Evaluation of mismatches revealed that the algorithm performed correctly against the gold standard in most cases. The developed algorithm was then deployed on records from an additional 15 865 patients, which took 18 hours for data extraction and 1 hour to deploy.

DISCUSSION

An automated algorithm for risk stratification has several advantages including reducing clinician time for manual review to allow more time for direct care, improving efficiency and increasing transparency in individual patient communication. It has the potential to be adapted for future public health initiatives that require prompt automated review of hospital outpatient letters.

摘要

简介

在 COVID-19 大流行开始时,英国科学委员会发布了极端的社会隔离措施,称为“屏蔽”,旨在针对被认为极易受到感染的亚人群。风险分层的国家指南基于患者的年龄、合并症和免疫抑制治疗,包括初级保健记录中未捕获的生物制剂。这一过程需要临床医生花费大量时间手动审查门诊信件。我们的目标是通过文本挖掘门诊信件的诊断和药物来开发和评估自动屏蔽算法,从而减少未来对人工审查的需求。

方法

从英国一家大型基金会信托机构检索了风湿病门诊信件。使用 Intelligent Medical Objects 软件(Concept Tagger)处理自由文本诊断,该软件使用每个条件的接口术语,映射到系统医学命名法-临床术语(SNOMED-CT)代码。我们开发了药物概念识别工具(命名实体识别),以检索信件时药物的类型、剂量、持续时间和状态(活动/过去)。然后,根据最近的信件将年龄、诊断和药物变量组合起来计算屏蔽分数。使用临床审查作为金标准来评估算法的性能。还测量了在更大的患者子集上部署开发算法所花费的时间。

结果

总共提取了 5942 个自由文本诊断并映射到 SNOMED-CT,有 13665 个自由文本药物(n=803 名患者)。自动算法的敏感性为 80%(95%CI:75%,85%),特异性为 92%(95%CI:90%,94%)。阳性似然比为 10(95%CI:8,14),阴性似然比为 0.21(95%CI:0.16,0.28),F1 评分为 0.81。对不匹配的评估表明,在大多数情况下,该算法与金标准的结果一致。然后在另外 15865 名患者的记录上部署了开发的算法,数据提取耗时 18 小时,部署耗时 1 小时。

讨论

用于风险分层的自动算法具有几个优点,包括减少临床医生手动审查的时间,以便为直接护理留出更多时间,提高效率,并增加患者沟通的透明度。它有可能适应未来需要快速自动审查医院门诊信件的公共卫生计划。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/af8d/11287580/0612d4d33380/ard-2024-225544f01.jpg

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