Towards an Effective Solution for Medical Treatment Process based on Product Lifecycle Management

T. Ngo, P. V. Dang, Thanh Vo Nhu, Le Hoai Nam, Le Hung Toan Do, L. A. Doan
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Abstract

Medical sector is one of the important domains in current society. This paper focuses on the patient treatment processes, in case of requiring prosthesis implantation. The specificity of such a process is that it makes connections between two lifecycles belonging to medical and engineering domains respectively. This implies several collaborative actions between stakeholders from heterogeneous disciplines. However, several problems of communication and knowledge sharing may occur because of the variety of semantic used and the specific business practices in each domain. In this context, this paper is interested in the potential of knowledge engineering and product lifecycle management approaches to cope with the above problems. To do so, a conceptual framework is proposed for the analysis of links between the disease (medical domain) and the prosthesis (engineering domain) lifecycles. Based on this analysis, a combined KM-PLM based approach is proposed. The application of the proposition is demonstrated through an implementation of useful function in the AUDROS PLM software.
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基于产品生命周期管理的医疗过程有效解决方案
医疗部门是当今社会的重要领域之一。本文重点介绍患者在需要植入假体的情况下的治疗过程。这种过程的特殊性在于,它在分别属于医学和工程领域的两个生命周期之间建立了联系。这意味着来自不同学科的利益相关者之间的一些协作行为。然而,由于每个领域所使用的语义的多样性和特定的业务实践,可能会出现一些交流和知识共享问题。在此背景下,本文对知识工程和产品生命周期管理方法的潜力感兴趣,以应对上述问题。为此,提出了一个概念框架,用于分析疾病(医学领域)和假肢(工程领域)生命周期之间的联系。在此基础上,提出了一种基于KM-PLM的组合方法。通过在AUDROS PLM软件中实现一个有用的功能来演示该命题的应用。
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