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Guided undersampling classification for automated radiation therapy quality assurance of prostate cancer treatment

机译:引导欠采样分类,用于预防前列腺癌治疗的自动放射治疗质量保证

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摘要

Purpose To test the use of well‐studied and widely used classification methods alongside newly developed data‐filtering techniques specifically designed for imbalanced‐data classification in order to demonstrate proof of principle for an automated radiation therapy (RT) quality assurance process on prostate cancer treatment. Methods A series of acceptable (majority class, n = 61) and erroneous (minority class, n = 12) RT plans as well as a disjoint set of acceptable plans used to develop features ( n = 273) were used to develop a dataset for testing. A series of five widely used imbalanced‐data classification algorithms were tested with a modularized guided undersampling procedure that includes ensemble‐outlier filtering and normalized‐cut sampling. Results Hybrid methods including either ensemble‐outlier filtering or both filtering and normalized‐cut sampling yielded the strongest performance in identifying unacceptable treatment plans. Specifically, five methods demonstrated superior performance in both area under the receiver operating characteristics curve and false positive rate when the true positive rate is equal to one. Furthermore, ensemble‐outlier filtering significantly improved results in all but one hybrid method ( p 0.01). Finally, ensemble‐outlier filtering methods identified four minority instances that were considered outliers in over 96% of cross‐validation iterations. Such instances may be considered distinct planning errors and merit additional inspection, providing potential areas of improvement for the planning process. Conclusions Traditional imbalanced‐data classification methods combined with ensemble‐outlier filtering and normalized‐cut sampling provide a powerful framework for identifying erroneous RT treatment plans. The proposed methodology yielded strong classification performance and identified problematic instances with high accuracy.
机译:目的是测试使用良好的和广泛使用的分类方法的使用,以及新开发的数据过滤技术专门用于实施不平衡数据分类,以证明用于自动放射治疗(RT)质量保证过程的原则原理证明(RT)质量保证过程。方法使用一系列可接受的(多数类,n = 61)和错误(少数群体类,n = 12)RT计划以及用于开发功能的可接受计划(n = 273)的脱节集用于开发数据集测试。使用模块化引导的欠采样程序测试了一系列五种广泛使用的不平衡数据分类算法,包括集成的异常滤波和归一化切割采样。结果混合方法包括整体异常滤波或滤波和归一化切割采样,在识别不可接受的治疗计划方面产生了最强的性能。具体地,五种方法在接收器操作特性曲线下的两个区域中表现出优异的性能,并且当真正的阳性率等于一个时,两个区域在两个区域下的性能。此外,Ensemble-Hastier滤波在所有除一个混合方法(P <0.01)中显着提高了结果。最后,Ensemble-Hastier过滤方法确定了四个少数群体实例,该实例被视为超过96%的交叉验证迭代的异常值。这种情况可能被认为是不同的规划错误和优异的额外检查,为规划过程提供潜在的改进领域。结论传统的不平衡数据分类方法与集合 - 异常滤波和归一化切割采样相结合,提供了一个强大的框架,用于识别错误的RT处理计划。所提出的方法产生了强大的分类性能,并以高精度确定了有问题的情况。

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