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R&D Productivity in the Pharmaceutical Industry: Scenario Simulations Using a Bayesian Belief Network

机译:制药行业的研发生产率:使用贝叶斯信念网络的情景模拟

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摘要

The pharmaceutical industry is in a R&D productivity crisis. Rapidly increasing development costs, decreasing profitability of new medical entities and missing breakthrough innovations are negatively affecting the future of the pharmaceutical industry. This complex problem requires a systems thinking approach to find effective solutions. In this study, a general pharmaceutical R&D productivity system has been modeled as a Bayesian Belief Network (BBN). This model is based on a literature review and the mental model of experts in the pharmaceutical field. The model does not only support users to understand the system but is also able to simulate different future scenarios. A blockbuster drug scenario, a generic drug scenario, and a personalized drug scenario has been modeled with three different corresponding outcomes. These simulations enables decision makers to identify the leverage points of the pharmaceutical R&D productivity system. These leverage points could be the foundation of any further strategy development. The R& D productivity system archetype is potentially applicable for other R&D intensive industries.
机译:制药行业处于研发生产力危机中。快速增加的开发成本,新的医疗实体的盈利能力下降以及缺少突破性的创新都对制药业的未来产生负面影响。这个复杂的问题需要系统思考的方法来找到有效的解决方案。在这项研究中,通用制药研发生产率系统已被建模为贝叶斯信念网络(BBN)。该模型基于文献综述和制药领域专家的心理模型。该模型不仅支持用户了解系统,而且还能够模拟未来的不同情况。用三种不同的相应结果对重磅炸弹药物场景,通用药物场景和个性化药物场景进行了建模。这些模拟使决策者能够确定药物研发生产力系统的杠杆点。这些杠杆点可以作为任何进一步战略制定的基础。研发生产力系统原型可能适用于其他研发密集型行业。

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