Cinco de Bio:用于生物医学成像研究特定领域工作流程的低代码平台

Colm Brandon, S. Boßelmann, Amandeep Singh, Stephen Ryan, Alexander Schieweck, É. Fennell, Bernhard Steffen, Tiziana Margaria
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引用次数: 0

摘要

背景:在生物医学成像研究中,实验生物学家会产生大量数据,需要进行高级计算分析。实验技术的突破(如多重免疫荧光组织成像)使详细的蛋白质组分析成为可能,但大多数生物医学研究人员缺乏编程和人工智能(AI)专业知识,无法有效利用这些创新技术。研究方法Cinco de Bio(CdB)是一个基于网络的协作式低代码/无代码建模和执行平台,旨在应对这一挑战。它按照模型驱动开发(MDD)和服务导向架构(SOA)设计,以实现模块化和可扩展性,并以正规方法为基础,确保正确性。免疫荧光图像的预处理说明,与目前大多采用手工操作的方法相比,CdB 使用方便,易于建模。结果CdB 简化了可能使用异构技术的数据处理服务的部署。用户设计的模型既支持生物学家的协作设计,也支持以用户为中心的设计。应用领域的特定领域语言(A-DSL)通过数据和流程本体论/分类法得到支持。它们允许生物学家以其领域的术语对工作流程进行有效建模。结论对文献中类似平台的比较分析表明,CdB 在多个比较维度上都具有优势。我们正在扩展该平台的功能,并将其应用于生物医学研究的其他领域。
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Cinco de Bio: A Low-Code Platform for Domain-Specific Workflows for Biomedical Imaging Research
Background: In biomedical imaging research, experimental biologists generate vast amounts of data that require advanced computational analysis. Breakthroughs in experimental techniques, such as multiplex immunofluorescence tissue imaging, enable detailed proteomic analysis, but most biomedical researchers lack the programming and Artificial Intelligence (AI) expertise to leverage these innovations effectively. Methods: Cinco de Bio (CdB) is a web-based, collaborative low-code/no-code modelling and execution platform designed to address this challenge. It is designed along Model-Driven Development (MDD) and Service-Orientated Architecture (SOA) to enable modularity and scalability, and it is underpinned by formal methods to ensure correctness. The pre-processing of immunofluorescence images illustrates the ease of use and ease of modelling with CdB in comparison with the current, mostly manual, approaches. Results: CdB simplifies the deployment of data processing services that may use heterogeneous technologies. User-designed models support both a collaborative and user-centred design for biologists. Domain-Specific Languages for the Application domain (A-DSLs) are supported through data and process ontologies/taxonomies. They allow biologists to effectively model workflows in the terminology of their field. Conclusions: Comparative analysis of similar platforms in the literature illustrates the superiority of CdB along a number of comparison dimensions. We are expanding the platform’s capabilities and applying it to other domains of biomedical research.
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