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Investigating the Effects of Majority Voting on CAD Systems: A LIDC Case Study

机译:调查多数投票对CAD系统的影响:LIDC案例研究

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Computer-Aided Diagnosis (CAD) systems can provide a second opinion for either identifying suspicious regions on a medical image or predicting the degree of malignancy for a detected suspicious region. To develop a predictive model, CAD systems are trained on low-level image features extracted from image data and the class labels acquired through radiologists' interpretations or a gold standard (e.g., a biopsy). While the opinion of an expert radiologist is still an estimate of the answer, the ground truth may be extremely expensive to acquire. In such cases, CAD systems are trained on input data that contains multiple expert opinions per case with the expectation that the aggregate of labels will closely approximate the ground truth. Using multiple labels to solve this problem has its own challenges because of the inherent label uncertainty introduced by the variability in the radiologists' interpretations. Most CAD systems use majority voting (e.g., average, mode) to handle label uncertainty. This paper investigates the effects that majority voting can have on a CAD system by classifying and analyzing different semantic characteristics supplied with the Lung Image Database Consortium (LIDC) dataset. Using a decision tree based iterative predictive model, we show that majority voting with labels that exhibit certain types of skewed distribution can have a significant negative impact on the performance of a CAD system, therefore, alternative strategies for label integration are required when handling multiple interpretations.
机译:计算机辅助诊断(CAD)系统可以为识别医学图像上的可疑区域或预测检测到的可疑区域的恶性程度提供第二种意见。为了建立预测模型,对CAD系统进行了从图像数据中提取的低级图像特征以及通过放射科医生的解释或黄金标准(例如活检)获得的类别标签的培训。虽然放射线专家的意见仍是答案的估计,但获取地面事实可能非常昂贵。在这种情况下,将在输入数据上训练CAD系统,该输入数据每个案例均包含多个专家意见,并期望标签的总和将非常接近基本事实。由于放射线医生的解释存在差异,因此使用多个标签解决该问题面临着自身的挑战,这是由于固有的标签不确定性所致。大多数CAD系统使用多数投票(例如,平均,模式)处理标签不确定性。本文通过对肺图像数据库协会(LIDC)数据集提供的不同语义特征进行分类和分析,研究了多数投票对CAD系统的影响。使用基于决策树的迭代预测模型,我们显示,对带有某些偏斜分布类型标签的多数投票可能会对CAD系统的性能产生重大负面影响,因此,在处理多种解释时,需要标签集成的替代策略。

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