Suppr超能文献

预测小分子药物的专利挑战:一项横断面研究。

Predicting patent challenges for small-molecule drugs: A cross-sectional study.

作者信息

Memedovich Ally, Steele Brian, Orr Taylor, Chaudhry Shanzeh, Tadrous Mina, Kesselheim Aaron S, Hollis Aidan, Beall Reed F

机构信息

Department of Community Health Sciences, Cumming School of Medicine, University of Calgary, Calgary, Alberta, Canada.

Leslie Dan Faculty of Pharmacy, University of Toronto, Toronto, Ontario, Canada.

出版信息

PLoS Med. 2025 Feb 12;22(2):e1004540. doi: 10.1371/journal.pmed.1004540. eCollection 2025 Feb.

Abstract

BACKGROUND

The high cost of prescription drugs in the United States is maintained by brand-name manufacturers' competition-free period made possible in part through patent protection, which generic competitors must challenge to enter the market early. Understanding the predictors of these challenges can inform policy development to encourage timely generic competition. Identifying categories of drugs systematically overlooked by challengers, such as those with low market size, highlights gaps where unchecked patent quality and high prices persist, and can help design policy interventions to help promote timely patient access to generic drugs including enhanced patent scrutiny or incentives for challenges. Our objective was to characterize and assess the extent to which market size and other drug characteristics can predict patent challenges for brand-name drugs.

METHODS AND FINDINGS

This cross-sectional study included new patented small-molecule drugs approved by the FDA from 2007 to 2018. Market size, patent, and patent challenge data came from IQVIA MIDAS pharmaceutical quarterly sales data, the FDA's Orange Book database, and the FDA's Paragraph IV list. Predictive models were constructed using random forest and elastic net classification. The primary outcome was the occurrence of a patent challenge within the first year of eligibility. Of the 210 new small-molecule drugs included in the sample, 55% experienced initiation of patent challenge within the first year of eligibility. Market value was the most important predictor variable, with larger markets being more likely to be associated with patent challenges. Drugs in the anti-infective therapeutic class or those with fast-track approval were less likely to be challenged. The limitations of this work arise from the exclusion of variables that were not readily available publicly, will be the target of future research, or were deemed beyond the scope of this project.

CONCLUSIONS

Generic competition does not occur with the same timeliness across all drug markets, which can leave granted patents of questionable merit in place and sustain high brand-name drug prices. Predictive models may help direct limited resources for post-grant patent validity review and adjust policy when generic competition is lacking.

摘要

背景

美国处方药的高昂成本是由品牌药制造商的无竞争期维持的,这在一定程度上得益于专利保护,仿制药竞争对手必须对其发起挑战才能提前进入市场。了解这些挑战的预测因素有助于制定政策,以鼓励及时的仿制药竞争。识别被挑战者系统性忽视的药品类别,如市场规模较小的药品,凸显了专利质量未经审查和高价持续存在的差距,并有助于设计政策干预措施,以促进患者及时获得仿制药,包括加强专利审查或对发起挑战的激励措施。我们的目标是描述和评估市场规模及其他药品特征在多大程度上能够预测品牌药的专利挑战。

方法与结果

这项横断面研究纳入了2007年至2018年期间美国食品药品监督管理局(FDA)批准的新的专利小分子药物。市场规模、专利和专利挑战数据分别来自艾昆纬(IQVIA)的MIDAS药品季度销售数据、FDA的橙皮书数据库以及FDA的IV段声明列表。使用随机森林和弹性网络分类法构建预测模型。主要结局是在符合条件的第一年发生专利挑战。在纳入样本的210种新小分子药物中,55%在符合条件的第一年就经历了专利挑战的发起。市场价值是最重要的预测变量,市场规模越大,越有可能与专利挑战相关。抗感染治疗类药物或那些获得快速通道批准的药物受到挑战的可能性较小。这项研究的局限性在于排除了那些不易公开获取、将成为未来研究目标或被认为超出本项目范围的变量。

结论

并非所有药品市场的仿制药竞争都能及时发生,这可能会使授予的有问题的专利继续存在,并维持品牌药的高价。预测模型可能有助于将有限的资源用于授权后专利有效性审查,并在缺乏仿制药竞争时调整政策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7f35/11867330/6cc9d9d0dce9/pmed.1004540.g001.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