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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Consensus versus disagreement in imaging research: A case study using the LIDC database
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Consensus versus disagreement in imaging research: A case study using the LIDC database

机译:影像研究中的共识与分歧:使用LIDC数据库的案例研究

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摘要

Traditionally, image studies evaluating the effectiveness of computer-aided diagnosis (CAD) use a single label from a medical expert compared with a single label produced by CAD . The purpose of this research is to present a CAD system based on Belief Decision Tree classification algorithm, capable of learning from probabilistic input (based on intrareader varia bility) and providing probabi listic output . We compared our approach against a traditional decision tree approach with respect to a traditional performance metric (accuracy) and a probabilistic one (area under the distance-threshold curve-AuCdt). The probabilistic classification technique showed notable performance improvement in comparison with the traditional one with respect to both evaluation metrics. Specifically, when applying cross-validation technique on the training subset of instances, boosts of 28.26% and 30.28% were noted for the probabilistic approach with respect to accuracy and Au Cdt, respectively. Furthermore, on the validation subset of instances, boosts of 20.64% and 23.21% were noted again for the probabilistic approach with respect to the same two metrics. In addition, we compared our CAD system results with diagnostic data available for a small subset of the Lung Image Database Consortium database. We discovered that when our CAD system errs, it generally does so with low confidence. Predictions produced by the system also agree with diagnoses of truly benign nodules more often than radiologists, offering the possibility of reducing the false positives.
机译:传统上,评估计算机辅助诊断(CAD)有效性的图像研究使用医学专家提供的单个标签,而不使用CAD生产的单个标签。本研究的目的是提出一种基于置信决策树分类算法的CAD系统,该系统能够从概率输入(基于阅读器内变异性)中学习并提供概率列表输出。我们针对传统的性能指标(准确性)和概率指标(距离-阈值曲线-AuCdt下的面积)与传统的决策树方法进行了比较。相对于传统的概率评估技术,这两种评估指标均表现出显着的性能提升。具体来说,当在实例的训练子集上应用交叉验证技术时,概率方法在准确性和Au Cdt方面分别提高了28.26%和30.28%。此外,在实例的验证子集上,相对于相同的两个指标,概率方法再次提高了20.64%和23.21%。此外,我们将CAD系统结果与可用于肺图像数据库联盟数据库的一小部分的诊断数据进行了比较。我们发现,当我们的CAD系统出现错误时,它通常会以低置信度这样做。该系统产生的预测结果也比放射科医师更认同真正良性结节的诊断,提供了减少误报的可能性。

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