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Next Generation of the Java Image Science Toolkit (JIST): Visualization and Validation

机译:下一代Java Image Science Toolkit(JIST):可视化和验证

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摘要

Modern medical imaging analyses often involve the concatenation of multiple steps, and neuroimaging analysis is no exception. The Java Image Science Toolkit (JIST) has provided a framework for both end users and engineers to synthesize processing modules into tailored, automatic multi-step processing pipelines (“layouts”) and rapid prototyping of module development. Since its release, JIST has facilitated substantial neuroimaging research and fulfilled much of its intended goal. However, key weaknesses must be addressed for JIST to more fully realize its potential and become accessible to an even broader community base. Herein, we identify three core challenges facing traditional JIST (JIST-I) and present the solutions in the next generation JIST (JIST-II). First, in response to community demand, we have introduced seamless data visualization; users can now click ‘show this data’ through the program interfaces and avoid the need to locating files on the disk. Second, as JIST is an open-source community effort by-design; any developer may add modules to the distribution and extend existing functionality for release. However, the large number of developers and different use cases introduced instability into the overal JIST-I framework, causing users to freeze on different, incompatible versions of JIST-I, and the JIST community began to fracture. JIST-II addresses the problem of compilation instability by performing continuous integration checks nightly to ensure community implemented changes do not negatively impact overall JIST-II functionality. Third, JIST-II allows developers and users to ensure that functionality is preserved by running functionality checks nightly using the continuous integration framework. With JIST-II, users can submit layout test cases and quality control criteria through a new GUI. These test cases capture all runtime parameters and help to ensure that the module produces results within tolerance, despite changes in the underlying architecture. These three “next generation” improvements increase the fidelity of the JIST framework and enhance utility by allowing researchers to more seamlessly and robustly build, manage, and understand medical image analysis processing pipelines.
机译:现代医学影像分析通常涉及多个步骤的串联,神经影像分析也不例外。 Java Image Science Toolkit(JIST)为最终用户和工程师提供了一个框架,可以将处理模块综合到定制的自动多步处理管道(“布局”)中,并快速进行模块开发的原型制作。自发布以来,JIST促进了实质性的神经影像学研究,并实现了许多预期目标。但是,必须解决关键的弱点,才能使JIST更充分地发挥其潜力,并为更广泛的社区群体所用。在此,我们确定了传统JIST(JIST-I)面临的三个核心挑战,并提出了下一代JIST(JIST-II)的解决方案。首先,为了响应社区的需求,我们引入了无缝数据可视化;用户现在可以通过程序界面单击“显示此数据”,而无需在磁盘上查找文件。第二,因为JIST是开放源代码社区设计的工作;任何开发人员都可以向发行版添加模块,并扩展现有功能以进行发布。但是,大量的开发人员和不同的用例在总体的JIST-I框架中引入了不稳定,从而导致用户冻结在不同的,不兼容的JIST-I版本上,并且JIST社区开始崩溃。 JIST-II通过每晚执行连续的集成检查以确保社区实施的更改不会对整个JIST-II功能产生负面影响,从而解决了编译不稳定的问题。第三,JIST-II允许开发人员和用户通过使用连续集成框架每晚运行功能检查来确保功能得以保留。使用JIST-II,用户可以通过新的GUI提交布局测试用例和质量控制标准。这些测试用例捕获了所有运行时参数,并帮助确保即使基础架构发生了变化,该模块也能在容限内产生结果。这三项“下一代”改进通过允许研究人员更无缝,更强大地构建,管理和理解医学图像分析处理管道,提高了JIST框架的保真度并增强了实用性。

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