Suppr超能文献

利用社区药房的药学服务记录识别前列腺癌门诊患者的不良事件:命名实体识别的应用

Identifying Adverse Events in Outpatients With Prostate Cancer Using Pharmaceutical Care Records in Community Pharmacies: Application of Named Entity Recognition.

作者信息

Yanagisawa Yuki, Watabe Satoshi, Yokoyama Sakura, Sayama Kyoko, Kizaki Hayato, Tsuchiya Masami, Imai Shungo, Someya Mitsuhiro, Taniguchi Ryoo, Yada Shuntaro, Aramaki Eiji, Hori Satoko

机构信息

Division of Drug Informatics, Keio University Faculty of Pharmacy, Tokyo, Japan.

Nakajima Pharmacy, Hokkaido, Japan.

出版信息

JMIR Cancer. 2025 Mar 11;11:e69663. doi: 10.2196/69663.

Abstract

BACKGROUND

Androgen receptor axis-targeting reagents (ARATs) have become key drugs for patients with castration-resistant prostate cancer (CRPC). ARATs are taken long term in outpatient settings, and effective adverse event (AE) monitoring can help prolong treatment duration for patients with CRPC. Despite the importance of monitoring, few studies have identified which AEs can be captured and assessed in community pharmacies, where pharmacists in Japan dispense medications, provide counseling, and monitor potential AEs for outpatients prescribed ARATs. Therefore, we anticipated that a named entity recognition (NER) system might be used to extract AEs recorded in pharmaceutical care records generated by community pharmacists.

OBJECTIVE

This study aimed to evaluate whether an NER system can effectively and systematically identify AEs in outpatients undergoing ARAT therapy by reviewing pharmaceutical care records generated by community pharmacists, focusing on assessment notes, which often contain detailed records of AEs. Additionally, the study sought to determine whether outpatient pharmacotherapy monitoring can be enhanced by using NER to systematically collect AEs from pharmaceutical care records.

METHODS

We used an NER system based on the widely used Japanese medical term extraction system MedNER-CR-JA, which uses Bidirectional Encoder Representations from Transformers (BERT). To evaluate its performance for pharmaceutical care records by community pharmacists, the NER system was first applied to 1008 assessment notes in records related to anticancer drug prescriptions. Three pharmaceutically proficient researchers compared the results with the annotated notes assigned symptom tags according to annotation guidelines and evaluated the performance of the NER system on the assessment notes in the pharmaceutical care records. The system was then applied to 2193 assessment notes for patients prescribed ARATs.

RESULTS

The F-score for exact matches of all symptom tags between the NER system and annotators was 0.72, confirming the NER system has sufficient performance for application to pharmaceutical care records. The NER system automatically assigned 1900 symptom tags for the 2193 assessment notes from patients prescribed ARATs; 623 tags (32.8%) were positive symptom tags (symptoms present), while 1067 tags (56.2%) were negative symptom tags (symptoms absent). Positive symptom tags included ARAT-related AEs such as "pain," "skin disorders," "fatigue," and "gastrointestinal symptoms." Many other symptoms were classified as serious AEs. Furthermore, differences in symptom tag profiles reflecting pharmacists' AE monitoring were observed between androgen synthesis inhibition and androgen receptor signaling inhibition.

CONCLUSIONS

The NER system successfully extracted AEs from pharmaceutical care records of patients prescribed ARATs, demonstrating its potential to systematically track the presence and absence of AEs in outpatients. Based on the analysis of a large volume of pharmaceutical medical records using the NER system, community pharmacists not only detect potential AEs but also actively monitor the absence of severe AEs, offering valuable insights for the continuous improvement of patient safety management.

摘要

背景

雄激素受体轴靶向药物(ARATs)已成为去势抵抗性前列腺癌(CRPC)患者的关键药物。ARATs需在门诊长期服用,有效的不良事件(AE)监测有助于延长CRPC患者的治疗时间。尽管监测很重要,但很少有研究确定在日本社区药房中哪些AE可以被捕捉和评估,在这些药房中,药剂师负责配药、提供咨询并监测门诊患者使用ARATs时的潜在AE。因此,我们预计可以使用命名实体识别(NER)系统来提取社区药剂师生成的药学服务记录中记录的AE。

目的

本研究旨在通过审查社区药剂师生成的药学服务记录,重点关注通常包含AE详细记录的评估记录,评估NER系统能否有效、系统地识别接受ARAT治疗的门诊患者中的AE。此外,该研究还试图确定使用NER从药学服务记录中系统收集AE是否可以加强门诊药物治疗监测。

方法

我们使用了一个基于广泛使用的日本医学术语提取系统MedNER-CR-JA的NER系统,该系统使用了来自变换器的双向编码器表示(BERT)。为了评估其在社区药剂师药学服务记录中的性能,首先将NER系统应用于抗癌药物处方记录中的1008份评估记录。三名药学专业研究人员将结果与根据注释指南分配了症状标签的注释记录进行比较,并评估NER系统在药学服务记录评估记录中的性能。然后将该系统应用于2193份接受ARATs治疗患者的评估记录。

结果

NER系统与注释者之间所有症状标签精确匹配的F值为0.72,证实NER系统有足够的性能应用于药学服务记录。NER系统自动为2193份接受ARATs治疗患者的评估记录分配了1900个症状标签;623个标签(32.8%)为阳性症状标签(存在症状),而1067个标签(56.2%)为阴性症状标签(不存在症状)。阳性症状标签包括与ARAT相关的AE,如“疼痛”、“皮肤疾病”、“疲劳”和“胃肠道症状”。许多其他症状被归类为严重AE。此外,在雄激素合成抑制和雄激素受体信号抑制之间观察到反映药剂师AE监测的症状标签概况差异。

结论

NER系统成功地从接受ARATs治疗患者的药学服务记录中提取了AE,证明了其系统跟踪门诊患者AE存在与否的潜力。基于使用NER系统对大量药学医疗记录的分析,社区药剂师不仅可以检测潜在AE,还可以积极监测严重AE的不存在,为持续改进患者安全管理提供有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/25c8/11937706/cb3dfe12c375/cancer_v11i1e69663_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验