首页> 美国卫生研究院文献>Journal of Digital Imaging >Quantitative Image Feature Engine (QIFE): an Open-Source Modular Engine for 3D Quantitative Feature Extraction from Volumetric Medical Images
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Quantitative Image Feature Engine (QIFE): an Open-Source Modular Engine for 3D Quantitative Feature Extraction from Volumetric Medical Images

机译:定量图像特征引擎(QIFE):一个开源的模块化引擎用于从体积医学图像中提取3D定量特征

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摘要

The aim of this study was to develop an open-source, modular, locally run or server-based system for 3D radiomics feature computation that can be used on any computer system and included in existing workflows for understanding associations and building predictive models between image features and clinical data, such as survival. The QIFE exploits various levels of parallelization for use on multiprocessor systems. It consists of a managing framework and four stages: input, pre-processing, feature computation, and output. Each stage contains one or more swappable components, allowing run-time customization. We benchmarked the engine using various levels of parallelization on a cohort of CT scans presenting 108 lung tumors. Two versions of the QIFE have been released: (1) the open-source MATLAB code posted to Github, (2) a compiled version loaded in a Docker container, posted to DockerHub, which can be easily deployed on any computer. The QIFE processed 108 objects (tumors) in 2:12 (h/mm) using 1 core, and 1:04 (h/mm) hours using four cores with object-level parallelization. We developed the Quantitative Image Feature Engine (QIFE), an open-source feature-extraction framework that focuses on modularity, standards, parallelism, provenance, and integration. Researchers can easily integrate it with their existing segmentation and imaging workflows by creating input and output components that implement their existing interfaces. Computational efficiency can be improved by parallelizing execution at the cost of memory usage. Different parallelization levels provide different trade-offs, and the optimal setting will depend on the size and composition of the dataset to be processed.
机译:这项研究的目的是开发一种用于3D放射学特征计算的开源,模块化,本地运行或基于服务器的系统,该系统可在任何计算机系统上使用,并包含在现有的工作流程中,以了解图像特征之间的关联并建立预测模型和临床数据,例如生存率。 QIFE利用各种级别的并行化来在多处理器系统上使用。它由一个管理框架和四个阶段组成:输入,预处理,特征计算和输出。每个阶段都包含一个或多个可交换组件,从而允许运行时自定义。我们在显示108个肺部肿瘤的一系列CT扫描中使用了各种并行度来对引擎进行基准测试。 QIFE的两个版本已经发布:(1)发布到Github的开源MATLAB代码,(2)加载到Docker容器中的编译版本,发布到DockerHub,可以轻松地在任何计算机上部署。 QIFE使用1个内核以2:12(h / mm)的速度处理2:108(h / mm)的108个对象(肿瘤),并使用四个具有对象级并行化的内核以1:04(h / mm)的时间处理。我们开发了定量图像特征引擎(QIFE),这是一个开放源代码特征提取框架,专注于模块化,标准,并行性,出处和集成。研究人员可以通过创建实现其现有接口的输入和输出组件,轻松地将其与现有的细分和成像工作流程集成。通过并行执行以内存使用为代价可以提高计算效率。不同的并行化级别提供了不同的权衡,并且最佳设置将取决于要处理的数据集的大小和组成。

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