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DVH Analytics: A DVH database for clinicians and researchers

机译:DVH Analytics:面向临床医生和研究人员的DVH数据库

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摘要

In this study, we build a vendor‐agnostic software application capable of importing and analyzing non‐image‐based DICOM files for various radiation treatment modalities (i.e., DICOM RT Dose, RT Structure, and RT Plan files). Dose‐volume histogram (DVH) and planning data are imported into a SQL database, and methods are provided to manage, edit, view, and download data. Furthermore, the software provides various analytical tools for plan evaluations, plan comparisons, benchmarking, and plan outcome predictions. DVH Analytics is developed using Python, including libraries such as pydicom, dicompyler, psycopg2, SciPy, Statsmodels, and Bokeh for parsing DICOM files, computing DVHs, communicating with a PostgreSQL database, performing statistical analyses, and creating a web‐based user interface. This software is open‐source and compatible with Windows, Mac OS, and Linux. For proof‐of‐concept, a database with over 3,000 DVHs from a single physician's head & neck practice was built. From these data, differences in means, correlations, and temporal trends in dose to multiple organs‐at‐risk (OARs) were observed. Furthermore, an example of the predictive regression tool is reported, where a model was constructed to predict maximum dose to brainstem based on minimum distance from planning target volume (PTV) and treatment beam source‐to‐skin distance (SSD). With DVH Analytics, we have developed a free, open‐source software program to parse, organize, and analyze non‐image‐based style="fixed-case">DICOM data for use in a radiation oncology setting. Furthermore, this software can be used to generate statistical models for the purposes of quality control or outcome predictions and correlations.
机译:在本研究中,我们构建了一个与供应商无关的软件应用程序,该应用程序能够针对各种放射治疗模式(即DICOM RT剂量,RT结构和RT计划文件)导入和分析非基于图像的DICOM文件。剂量体积直方图(DVH)和计划数据被导入到SQL数据库中,并提供了管理,编辑,查看和下载数据的方法。此外,该软件提供了各种用于计划评估,计划比较,基准测试和计划结果预测的分析工具。 DVH Analytics是使用Python开发的,包括pydicom,dicompyler,psycopg2,SciPy,Statsmodels和Bokeh之类的库,用于解析DICOM文件,计算DVH,与PostgreSQL数据库通信,执行统计分析以及创建基于Web的用户界面。该软件是开源的,并且与Windows,Mac OS和Linux兼容。为了进行概念验证,建立了一个数据库,该数据库包含来自单个医师的头颈部实践的3,000多个DVH。从这些数据中,可以观察到对多个处于危险中的器官(OAR)的均值,相关性和时间趋势的差异。此外,还报告了一个预测回归工具的示例,该模型构建了一个模型,用于根据距计划目标体积(PTV)和治疗束源到皮肤的距离(SSD)的最小距离来预测脑干的最大剂量。借助DVH Analytics,我们开发了免费的开源软件程序来解析,组织和分析非基于图像的 style =“ fixed-case”> DICOM 数据,以用于放射肿瘤学环境。此外,此软件可用于生成统计模型,以用于质量控制或结果预测和相关性。

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