预测纠正自动分区所需的人力。

Da He, Jayaram K Udupa, Yubing Tong, Drew A Torigian
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引用次数: 0

摘要

医学图像自动分割技术是众多图像分析应用的基础和关键,在发展先进的个性化医疗方面发挥着重要作用。与人工分割相比,自动分割减少了人工干预或对自动分割的修改,有望提高临床常规和工作流程的效率。然而,目前的自动分割方法通常是借助一些流行的分割指标来开发的,这些指标并不直接考虑人类的修正行为。骰子系数(Dice Coefficient,DC)侧重于真正的分割区域,而豪斯多夫距离(Hausdorff Distance,HD)则只测量自动分割边界与地面实况边界之间的最大距离。基于边界长度的指标,如表面 DC(surDC)和附加路径长度(APL),试图区分真正预测的边界像素和错误的边界像素。目前还不确定这些指标是否能可靠地显示分割研究中所需的人工修补工作量。因此,本文利用线性回归模型和支持向量回归模型,研究了上述四个指标以及一种名为 "可补性指数"(MI)的新指标在预测人工修正工作量方面的潜在用途。利用来自 3 家机构的 3 个感兴趣对象的 265 个三维计算机断层扫描(CT)样本以及相应的自动分割和地面实况分割来训练和测试预测模型。五倍交叉验证实验表明,使用针对不同物体的不同预测误差的分割指标,可以实现有意义的人力预测。MI 的改进变体(称为 MIhd)通常显示出最佳的预测性能,这表明它具有可靠地显示自动分割临床价值的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting human effort needed to correct auto-segmentations.

Medical image auto-segmentation techniques are basic and critical for numerous image-based analysis applications that play an important role in developing advanced and personalized medicine. Compared with manual segmentations, auto-segmentations are expected to contribute to a more efficient clinical routine and workflow by requiring fewer human interventions or revisions to auto-segmentations. However, current auto-segmentation methods are usually developed with the help of some popular segmentation metrics that do not directly consider human correction behavior. Dice Coefficient (DC) focuses on the truly-segmented areas, while Hausdorff Distance (HD) only measures the maximal distance between the auto-segmentation boundary with the ground truth boundary. Boundary length-based metrics such as surface DC (surDC) and Added Path Length (APL) try to distinguish truly-predicted boundary pixels and wrong ones. It is uncertain if these metrics can reliably indicate the required manual mending effort for application in segmentation research. Therefore, in this paper, the potential use of the above four metrics, as well as a novel metric called Mendability Index (MI), to predict the human correction effort is studied with linear and support vector regression models. 265 3D computed tomography (CT) samples for 3 objects of interest from 3 institutions with corresponding auto-segmentations and ground truth segmentations are utilized to train and test the prediction models. The five-fold cross-validation experiments demonstrate that meaningful human effort prediction can be achieved using segmentation metrics with varying prediction errors for different objects. The improved variant of MI, called MIhd, generally shows the best prediction performance, suggesting its potential to indicate reliably the clinical value of auto-segmentations.

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