Streamlining Considerations for Safety Measures: A Predictive Model for Addition of Clinically Significant Adverse Reactions to Japanese Drug Package Inserts.

IF 1.7 4区 医学 Q3 PHARMACOLOGY & PHARMACY
Takashi Watanabe, Kaori Ambe, Masahiro Tohkin
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引用次数: 0

Abstract

The addition of clinically significant adverse reactions (CSARs) to Japanese package inserts (PIs) is an important safety measure that can be used to inform medical personnel of potential health risks; however, determining the necessity of their addition can be lengthy and complex. Therefore, we aimed to construct a machine learning-based model that can predict the addition of CSARs at an early stage due to the accumulation of both Japanese and overseas adverse drug reaction (ADR) cases. The target comprised CSARs added to PIs from August 2011 to March 2022. The control group consisted of drugs without the same CSARs in their PIs by March 2022. Features were generated using ADR case accumulation data obtained from the Japanese Adverse Drug Event Report and the U.S. Food and Drug Administration Adverse Event Reporting System databases. The model was constructed using DataRobot, and its performance evaluated using the Matthews correlation coefficient. The target for the addition of CSARs included 414 cases, comprising 302 due to domestic case accumulation, 22 due to both domestic and overseas case accumulation, 12 due to overseas case accumulation, and 78 due to revisions of the company core data sheet. The best model was a generalized linear model with informative features, achieving a cross-validation of 0.8754 and a holdout of 0.8995. In conclusion, the proposed model effectively predicted CSAR additions to PIs resulting from the accumulation of ADR cases using data from both Japan and the United States.

简化安全措施的考虑因素:日本药品包装说明书中增加临床重大不良反应的预测模型。
在日本的包装说明书(PIs)中添加具有临床意义的不良反应(CSARs)是一项重要的安全措施,可用于向医务人员告知潜在的健康风险;然而,确定是否有必要添加 CSARs 可能既漫长又复杂。因此,我们的目标是构建一个基于机器学习的模型,该模型可以根据日本和海外药物不良反应(ADR)病例的积累情况,及早预测是否需要添加 CSAR。研究对象包括 2011 年 8 月至 2022 年 3 月期间添加到 PI 中的 CSAR。对照组包括在 2022 年 3 月之前其 PI 中没有相同 CSAR 的药物。利用从日本药品不良事件报告和美国食品药品管理局不良事件报告系统数据库中获得的 ADR 病例累积数据生成特征。使用 DataRobot 构建了模型,并使用马修斯相关系数对其性能进行了评估。新增 CSAR 的目标包括 414 个病例,其中 302 个是由于国内病例积累,22 个是由于国内和海外病例积累,12 个是由于海外病例积累,78 个是由于公司核心数据表的修订。最佳模型是带有信息特征的广义线性模型,交叉验证结果为 0.8754,保持率为 0.8995。总之,利用日本和美国的数据,所提出的模型可以有效地预测因 ADR 病例积累而导致 PI 增加的 CSAR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.50
自引率
5.00%
发文量
247
审稿时长
2 months
期刊介绍: Biological and Pharmaceutical Bulletin (Biol. Pharm. Bull.) began publication in 1978 as the Journal of Pharmacobio-Dynamics. It covers various biological topics in the pharmaceutical and health sciences. A fourth Society journal, the Journal of Health Science, was merged with Biol. Pharm. Bull. in 2012. The main aim of the Society’s journals is to advance the pharmaceutical sciences with research reports, information exchange, and high-quality discussion. The average review time for articles submitted to the journals is around one month for first decision. The complete texts of all of the Society’s journals can be freely accessed through J-STAGE. The Society’s editorial committee hopes that the content of its journals will be useful to your research, and also invites you to submit your own work to the journals.
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