将AI平台集成到临床IT:临床AI模型开发的BPMN流程。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Kfeel Arshad, Saman Ardalan, Björn Schreiweis, Björn Bergh
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引用次数: 0

摘要

背景:近年来,人工智能(AI)在全球范围内复苏,导致医院内尖端AI解决方案的发展。然而,这也导致了孤立的人工智能解决方案的产生,这些解决方案没有集成到临床IT中。为了解决这一问题,需要一个处理临床人工智能模型整个开发周期并与临床IT相结合的临床人工智能(AI)平台。本研究探讨了临床人工智能平台与临床IT基础设施的集成。通过概述临床IT基础设施内AI模型开发周期的各个阶段,以及使用BPMN图说明医院内不同IT系统景观之间的交互,可以证明这一点。方法:首先深入分析需求,结合临床IT的个体层面,提炼临床AI平台的必要方面。随后,确定了代表AI模型整个开发周期的流程。为了方便AI平台的体系结构,创建了所有已识别流程的BPMN图。临床用例用于使用FEDS框架评估流程。结果:我们的BPMN流程图涵盖了临床IT中临床AI模型的整个开发周期。所涉及的过程包括数据选择、数据注释、现场培训和测试以及推理,并区分(半自动)批推理和实时推理。对三个临床用例进行了评估,以评估流程,并证明该方法涵盖了广泛的临床人工智能用例。结论:评价执行成功,这表明我们的方法的综合性。结果表明,BPMN图涵盖了不同的临床人工智能用例。我们的临床人工智能平台非常适合临床IT领域人工智能模型的本地开发。这种方法为进一步的发展提供了基础,例如,能够跨多个站点培训和部署人工智能模型,或者集成安全和隐私相关方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating an AI platform into clinical IT: BPMN processes for clinical AI model development.

Background: There has been a resurgence of Artificial Intelligence (AI) on a global scale in recent times, resulting in the development of cutting-edge AI solutions within hospitals. However, this has also led to the creation of isolated AI solutions that are not integrated into clinical IT. To tackle this issue, a clinical Artificial Intelligence (AI) platform that handles the entire development cycle of clinical AI models and is integrated into clinical IT is required. This research investigates the integration of a clinical AI platform into the clinical IT infrastructure. This is demonstrated by outlining the stages of the AI model development cycle within the clinical IT infrastructure, illustrating the interaction between different IT system landscapes within the hospital with BPMN diagrams.

Methods: Initially, a thorough analysis of the requirements is conducted to refine the necessary aspects of the clinical AI platform with consideration of the individual aspects of clinical IT. Subsequently, processes representing the entire development cycle of an AI model are identified. To facilitate the architecture of the AI platform, BPMN diagrams of all the identified processes are created. Clinical use cases are used to evaluate the processes using the FEDS framework.

Results: Our BPMN process diagrams cover the entire development cycle of a clinical AI model within the clinical IT. The processes involved are Data Selection, Data Annotation, On-site Training and Testing, and Inference, with distinctions between (Semi-Automated) Batch Inference and Real-Time Inference. Three clinical use cases were assessed to evaluate the processes and demonstrate that this approach covers a wide range of clinical AI use cases.

Conclusions: The evaluations were executed successfully, which indicate the comprehensive nature of our approach. The results have shown that different clinical AI use cases are covered by the BPMN diagrams. Our clinical AI platform is ideally suited for the local development of AI models within clinical IT. This approach provides a basis for further developments, e.g., enabling the training and deployment of an AI model across multiple sites or the integration of security- and privacy-related aspects.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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