机器阅读理解和专家系统技术在药物辅料选择过程中的社会创新

E. Markopoulos, Chrystalla Protopapa
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This gap, between the availability of a drug and its accessibility, created the social need for a generic drug market and the inspiration for advanced innovations to serve it. Research indicates that the price of brand-name drugs can drop up to 80% after the commercialization of a new generic which has the same action and can potentially replace them. The global generic drug market worth is expected to increase from $311.8 billion in 2021 to $442.3 billion in 2026. Excipients represent a market value of $4 billion, accounting for 0.5% of the total pharmaceutical market. The global market of AI was estimated at 43.1 billion in 2020 and is predicted to reach $228.3 billion by 2026 with a 32.7 % CAGR. On the other hand, the revenues of the AI Health market are projected to grow from $6.9 billion in 2021 to $67.4 billion in 2027 reaching $120.2 billion by 2028 with a CAGR of 45.3%.The choice of excipients in drug development is a critical and time-consuming process. 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引用次数: 0

摘要

全球人口的增长,加上政治、卫生和金融等几次不可预测的危机,创造了一个不确定的环境,在这种环境中,可以发展社会创新,为人们的生活提供稳定,并为经济和社会的利益创造新的商业发展机会。每个人毋庸置疑的权利之一是获得负担得起的医疗。然而,研究和开发新药物或专门药物所需的费用和时间往往无法由政府预算和举措支付,而这些预算和举措可以使所有需要的人都能获得这些药物。私营企业投入了大量资金,并期望获得投资回报。一种药物的可获得性和可获得性之间的差距产生了对仿制药市场的社会需求,并激发了为之服务的先进创新。研究表明,在具有相同作用并有可能取代品牌药的新非专利药商业化之后,品牌药的价格可能会下降80%。全球仿制药市场价值预计将从2021年的3118亿美元增加到2026年的4423亿美元。辅料的市场价值为40亿美元,占整个医药市场的0.5%。2020年,全球人工智能市场估计为431亿美元,预计到2026年将达到2283亿美元,复合年增长率为32.7%。另一方面,人工智能健康市场的收入预计将从2021年的69亿美元增长到2027年的674亿美元,到2028年达到1202亿美元,复合年增长率为45.3%。在药物开发中,辅料的选择是一个关键而耗时的过程。目前,辅料的选择是基于给药途径、理化特性、作用部位和活性成分的释放类型。该过程包括对药物的许多质量控制试验,如易碎性、溶出度、崩解度、剂量均匀性和稳定性,这些试验在辅料改变时重复进行。这个费力而耗时的过程考虑了大量现有的赋形剂,这些赋形剂被分类为不同的功能群,用于不同的目的。本文解决了这一挑战,并介绍了一种利用人工智能在配方开发行业进行社会创新的方法。具体而言,本文提出了一个基于专家系统(ES)的软件架构,以方便评估和利用分散在各种形式的文档和/或科学文献中的药物-赋形剂关系数据。ES的推理引擎使用由机器阅读理解(MRC)和自然语言处理(NLP)技术提供支持的规则库和基于案例的推理操作,这些技术填充并丰富了知识库。MRC和NLP技术解释现有的药物配方,并根据其物理化学特性提出潜在的新药物配方。根据研究结果,如果有一个指示性配方来启动这一过程,引入仿制药的时间可以减少30%。这八个月的时间可以用来推销产品。这节省了大量的时间,减少了研发成本,缩短了上市时间,提高了生产率和运营效率。所进行的研究是基于广泛的文献回顾,调查和访谈的主要研究,以及对几个案例研究的分析,以表明所提议的技术和支持系统架构设计的需求。此外,本文还提出了采用该技术的前提和条件,强调了研究的局限性,并确定了进一步研究的领域,以优化该技术及其对全球经济和社会的贡献。
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Machine Reading Comprehension and Expert System technologies for social innovation in the drug excipient selection process
The growth of the global population together with several unpredicted crises such as political, health, and financial, create an environment of uncertainty in which social innovations can be developed to offer stability in people’s lives and create new business development opportunities for the benefit of the economy and the society. One of the undoubted rights of every human being is access to affordable medical treatment. However, the costs and time needed for research and development on new or specialized drugs are not often covered by governmental budgets and initiatives that could make such medicines accessible to all who needed them. Private companies invest tremendous amounts and expect returns on their investments. This gap, between the availability of a drug and its accessibility, created the social need for a generic drug market and the inspiration for advanced innovations to serve it. Research indicates that the price of brand-name drugs can drop up to 80% after the commercialization of a new generic which has the same action and can potentially replace them. The global generic drug market worth is expected to increase from $311.8 billion in 2021 to $442.3 billion in 2026. Excipients represent a market value of $4 billion, accounting for 0.5% of the total pharmaceutical market. The global market of AI was estimated at 43.1 billion in 2020 and is predicted to reach $228.3 billion by 2026 with a 32.7 % CAGR. On the other hand, the revenues of the AI Health market are projected to grow from $6.9 billion in 2021 to $67.4 billion in 2027 reaching $120.2 billion by 2028 with a CAGR of 45.3%.The choice of excipients in drug development is a critical and time-consuming process. Currently, excipients are chosen based on the route of administration, physicochemical characteristics, place of action, and the type of release of the active ingredient. The process involves many quality control tests on the drug such as fragility, dissolution, disintegration, dosage uniformity, and stability, which are repeated when the excipient changes. This laborious and time-consuming process considers a massive number of existing excipients categorized into different functional groups used for different purposes.This paper addresses this challenge and introduces an approach to resolve it using Artificial Intelligence for social innovation in the formulation development industry. Specifically, the paper presents an Expert system (ES) based software architecture to facilitate assess and utilize drug-excipient relationship data scattered in various forms of documentation and/or scientific literature. The inference engine of the ES operates with rule base and case-based reasoning powered by Machine Reading Comprehension (MRC) and Natural Language Processing (NLP) technologies that populate and enrich the knowledge base. The MRC and NLP technologies interpret existing drug formulations and propose potential new drug formulations, based on its physicochemical characteristics.According to research results, the time to introduce a generic drug can be reduced by 30% if there is an indicative formulation to start the process. The eight months gained can be used to market the product. This is a significant amount of time that reduces research and development costs, reduces the time to market, and increases productivity and operations efficiency. The research conducted is based on an extensive literature review, primary research with surveys and interviews but also with the analysis of several case studies to indicate the need for the proposed technology and support the system architecture design. Furthermore, the paper presents the pre and post-condition for adopting such technology, highlights research limitations, and identifies areas of further research to be conducted for the optimization of the technology and its contribution to the global economy and society.
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