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首页> 外文期刊>Advances in Radiation Oncology >Incorporating big data into treatment plan evaluation: Development of statistical DVH metrics and visualization dashboards
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Incorporating big data into treatment plan evaluation: Development of statistical DVH metrics and visualization dashboards

机译:将大数据纳入治疗计划评估:开发统计DVH指标和可视化仪表板

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Purpose To develop statistical dose-volume histogram (DVH)–based metrics and a visualization method to quantify the comparison of treatment plans with historical experience and among different institutions. Methods and materials The descriptive statistical summary (ie, median, first and third quartiles, and 95% confidence intervals) of volume-normalized DVH curve sets of past experiences was visualized through the creation of statistical DVH plots. Detailed distribution parameters were calculated and stored in JavaScript Object Notation files to facilitate management, including transfer and potential multi-institutional comparisons. In the treatment plan evaluation, structure DVH curves were scored against computed statistical DVHs and weighted experience scores (WESs). Individual, clinically used, DVH-based metrics were integrated into a generalized evaluation metric (GEM) as a priority-weighted sum of normalized incomplete gamma functions. Historical treatment plans for 351 patients with head and neck cancer, 104 with prostate cancer who were treated with conventional fractionation, and 94 with liver cancer who were treated with stereotactic body radiation therapy were analyzed to demonstrate the usage of statistical DVH, WES, and GEM in a plan evaluation. A shareable dashboard plugin was created to display statistical DVHs and integrate GEM and WES scores into a clinical plan evaluation within the treatment planning system. Benchmarking with normal tissue complication probability scores was carried out to compare the behavior of GEM and WES scores. Results DVH curves from historical treatment plans were characterized and presented, with difficult-to-spare structures (ie, frequently compromised organs at risk) identified. Quantitative evaluations by GEM and/or WES compared favorably with the normal tissue complication probability Lyman-Kutcher-Burman model, transforming a set of discrete threshold-priority limits into a continuous model reflecting physician objectives and historical experience. Conclusions Statistical DVH offers an easy-to-read, detailed, and comprehensive way to visualize the quantitative comparison with historical experiences and among institutions. WES and GEM metrics offer a flexible means of incorporating discrete threshold-prioritizations and historic context into a set of standardized scoring metrics. Together, they provide a practical approach for incorporating big data into clinical practice for treatment plan evaluations.
机译:目的建立基于剂量-体积直方图(DVH)的统计指标,以及一种可视化方法,以量化具有历史经验和不同机构之间的治疗计划比较。方法和材料通过创建统计DVH图,可以直观显示过去经验的体积标准化DVH曲线集的描述性统计摘要(即中位数,第一和第三四分位数和95%置信区间)。计算了详细的分发参数,并将其存储在JavaScript Object Notation文件中,以方便管理,包括传输和潜在的多机构比较。在治疗计划评估中,针对结构DVH曲线对计算出的统计DVH和加权经验得分(WES)进行了评分。个别的,临床使用的,基于DVH的指标已集成到广义评估指标(GEM)中,作为标准化不完整伽玛函数的优先级加权总和。分析了351例头颈癌患者,104例常规分割治疗的前列腺癌和94例采用立体定向放射治疗的肝癌的历史治疗计划,以证明统计DVH,WES和GEM的使用在计划评估中。创建了一个可共享的仪表板插件,以显示统计DVH,并将GEM和WES分数集成到治疗计划系统中的临床计划评估中。用正常组织并发症概率评分进行基准比较,以比较GEM和WES评分的行为。结果对历史治疗计划的DVH曲线进行了表征和呈现,并鉴定了难以保留的结构(即,经常受损的器官处于危险中)。通过GEM和/或WES进行的定量评估与正常组织并发症概率Lyman-Kutcher-Burman模型相比具有优势,将一组离散的阈值优先级限制转换为反映医师目标和历史经验的连续模型。结论统计DVH提供了一种易于阅读,详细而全面的方法,可以可视化与历史经验以及各个机构之间的定量比较。 WES和GEM指标提供了一种灵活的方法,可以将离散的阈值优先级和历史环境纳入一组标准化的评分指标中。它们一起提供了一种将大数据纳入临床实践以评估治疗计划的实用方法。

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