Building an Ensemble of Probabilistic Classifiers for Lung Nodule Interpretation

D. Zinovev, J. Furst, D. Raicu
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引用次数: 15

Abstract

When examining Computed Tomography (CT) scans of lungs for potential abnormalities, radiologists make use of lung nodule's semantic characteristics during the analysis. Computer-Aided Diagnostic Characterization (CADc) systems can act as an aid - predicting ratings of these semantic characteristics to aid radiologists in evaluating the nodule and potentially improve the quality and consistency of diagnosis. In our work, we propose a system for predicting the distribution of radiologists' opinions using a probabilistic multi-class classification approach based on combination of belief decision trees and ADABoost ensemble learning approach. To train and test our system we use the National Cancer Institute (NCI) Lung Image Database Consortium (LIDC) dataset, which includes semantic annotations by up to four radiologists for each one of the 914 nodules. Furthermore, we evaluate our probabilistic multi-class classifications using a novel distance-threshold curve technique intended for assessing the performance of uncertain classification systems. We conclude that for the majority of semantic characteristics there exists a set of parameters that significantly improves the performance of the ensemble over the single classifier.
构建肺结节解释的概率分类器集合
当检查计算机断层扫描(CT)肺部的潜在异常时,放射科医生在分析过程中使用肺结节的语义特征。计算机辅助诊断表征(CADc)系统可以作为辅助预测这些语义特征的评级,以帮助放射科医生评估结节,并有可能提高诊断的质量和一致性。在我们的工作中,我们提出了一个基于信念决策树和ADABoost集成学习方法相结合的概率多类分类方法来预测放射科医生意见分布的系统。为了训练和测试我们的系统,我们使用了国家癌症研究所(NCI)肺图像数据库联盟(LIDC)数据集,其中包括多达四名放射科医生对914个结节中的每个结节的语义注释。此外,我们使用一种新的距离阈值曲线技术来评估我们的概率多类分类,该技术旨在评估不确定分类系统的性能。我们得出的结论是,对于大多数语义特征,存在一组参数,这些参数可以显着提高集成在单个分类器上的性能。
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