超声引导前列腺活检中标记噪声不确定性的表征

Golara Javadi, S. Samadi, Sharareh Bayat, Samira Sojoudi, Antonio Hurtado, Silvia D. Chang, Peter C. Black, P. Mousavi, P. Abolmaesumi
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引用次数: 3

摘要

超声成像是前列腺活检中常用的工具。使用系统和非针对性方法的挑战是假阴性率高,并且不针对患者。在活检过程中,个体的前列腺内病理信息是不可用的。即使在对活检芯进行组织病理学分析后,该报告也仅代表了芯内癌症的统计分布。基于这些噪声标签对数据进行标记会给网络训练带来挑战,网络不可避免地会过度拟合噪声数据。为了克服这个问题,我们认为建立一个干净的数据集是至关重要的。在本文中,我们解决了与使用统计标签相关的挑战,并通过利用自信学习来估计数据标签中的不确定性来缓解这一问题。接下来,我们找到标签错误,清理标签,并通过使用基于核心癌症参与的度量来比较干净的数据。
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Characterizing The Uncertainty Of Label Noise In Systematic Ultrasound-Guided Prostate Biopsy
Ultrasound imaging is a common tool used in prostate biopsy. The challenges associated with using a systematic and nontargeted approach are the high rate of false negatives and not being patient specific. Intraprostatic pathology information of individuals is not available during the biopsy procedure. Even after histopathology analysis of the biopsy cores, the report only represents a statistical distribution of cancer within the core. Labeling the data based on these noisy labels results in challenges for network training, where networks inevitably overfit to noisy data. To overcome this problem, we argue that it is critical to build a clean dataset. In this paper, we address the challenges associated with using statistical labels and alleviate this issue by taking advantage of confident learning to estimate uncertainty in the data label. Next, we find the label error, clean the labels, and evaluate the clean data by comparing it using a metric based on the involvement of cancer in core.
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