基于医院RIS-PACS场景的人工智能骨龄检测系统集成技术与实现

      Technical Realization of Integrating Bone Age Artificial Intelligence Assessment System with Hospital RIS-PACS Network

      • 摘要: 目的 探讨基于医院RIS-PACS网络和工作流的人工智能骨龄检测系统的集成方法与技术实现。方法 基于Python flask web框架的http协议,通过调用、对接医院PACS、RIS接口,设计一种架构以实现自主研发的2套人工智能骨龄检测系统(CHBoneAI 1.0/2.0)与PACS、RIS系统的集成。结果 2套CHBoneAI均成功嵌入式集成于医院网络及RIS-PACS平台,且稳步临床“并行运行”已近3年;在目前医院千兆网络条件下,临床每个病例骨龄AI检测整个流程不超过3 s。结论 人工智能骨龄检测系统在医院RIS-PACS平台上集成与“并行运行”完成了I期构建,为系统自我进化及“替代运行”的Ⅱ期建设夯实了基础。

         

        Abstract: Objective To explore the integration method and technical realization of artificial intelligence bone age assessment system with the hospital RIS-PACS network and workflow. Methods Two sets of artificial intelligence based on bone age assessment systems (CHBoneAI 1.0/2.0) were developed. The intelligent system was further integrated with RIS-PACS based on the http protocol in Python flask web framework. Results The two sets of systems were successfully integrated into the local network and RIS-PACS in hospital. The deployment has been smoothly running for nearly 3 years. Within the current network setting, it takes less than 3 s to complete bone age assessment for a single patient. Conclusion The artificial intelligence based bone age assessment system has been deployed in clinical RIS-PACS platform and the "running in parallel", which is marking a success of Stage-I and paving the way to Stage-II where the intelligent systems can evolve to become more powerful in particular of the system self-evolution and the "running alternatively".

         

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