A Review of Artificial Intelligence and Machine Learning in Product Life Cycle Management.

Maria Ana Martins da Cruz Borges Batalha, Daniel Alexandre Marques Pais, Rui Alexandre Estrela de Almeida, Ângela Sofia Gomes Martinho
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Abstract

The pursuit of harnessing data for knowledge creation has been an enduring quest, with the advent of machine learning (ML) and artificial intelligence (AI) marking significant milestones in this journey. ML, a subset of AI, emerged as the practice of employing mathematical models to enable computers to learn and improve autonomously based on their experiences. In the pharmaceutical and biopharmaceutical sectors, a significant portion of manufacturing data remains untapped or insufficient for practical use. Recognizing the potential advantages of leveraging the available data for process design and optimization, manufacturers face the daunting challenge of data utilization. Diverse proprietary data formats and parallel data generation systems compound the complexity. The transition to Pharma 4.0 necessitates a paradigm shift in data capture, storage, and accessibility for manufacturing and process operations. This paper highlights the pivotal role of AI in converting process data into actionable knowledge to support critical functions throughout the whole product life cycle. Furthermore, it underscores the importance of maintaining compliance with data integrity guidelines, as mandated by regulatory bodies globally. Embracing AI-driven transformations is a crucial step toward shaping the future of the pharmaceutical industry, ensuring its competitiveness and resilience in an evolving landscape.

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人工智能和机器学习在产品生命周期管理中的应用综述。
利用数据创造知识一直是人们的不懈追求,而机器学习和人工智能(AI)的出现则是这一历程中的重要里程碑。机器学习(ML)是人工智能的一个子集,是一种利用数学模型使计算机根据自身经验自主学习和改进的实践。在制药和生物制药领域,有很大一部分生产数据尚未开发或不足以实际使用。认识到利用现有数据进行工艺设计和优化的潜在优势,制造商面临着数据利用方面的严峻挑战。多种专有数据格式和并行数据生成系统使问题更加复杂。要向制药 4.0 过渡,就必须转变生产和工艺操作的数据采集模式。本文强调了人工智能在将工艺数据转化为可操作知识方面的关键作用,以支持整个工艺生命周期的关键功能。此外,本文还强调了遵守全球监管机构规定的数据完整性准则的重要性。拥抱人工智能驱动的转型是塑造制药业未来、确保其在不断变化的环境中的竞争力和适应力的关键一步。
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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
34
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