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Coarse-to-Fine Classification via Parametric and Nonparametric Models for Computer-Aided Diagnosis

机译:通过参数和非参数模型进行粗致细的分类,用于计算机辅助诊断

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Classification is one of the core problems in Computer-Aided Diagnosis (CAD), targeting for early cancer detection using 3D medical imaging interpretation. High detection sensitivity with desirably low false positive (FP) rate is critical for a CAD system to be accepted as a valuable or even indispensable tool in radiologists' workflow. Given various spurious imagery noises which cause observation uncertainties, this remains a very challenging task. In this paper, we propose a novel, two-tiered coarse-to-fine (CTF) classification cascade framework to tackle this problem. We first obtain classification-critical data samples (e.g., samples on the decision boundary) extracted from the holistic data distributions using a robust parametric model (e.g., [8]); then we build a graph-embedding based nonparametric classifier on sampled data, which can more accurately preserve or formulate the complex classification boundary. These two steps can also be considered as effective "sample pruning" and "feature pursuing + ANN/template matching", respectively. Our approach is validated comprehensively in colorectal polyp detection and lung nodule detection CAD systems, as the top two deadly cancers, using hospital scale, multi-site clinical datasets. The results show that our method achieves overall better classification/detection performance than existing state-of-the-art algorithms using single-layer classifiers, such as the support vector machine variants, boosting, logistic regression, relevance vector machine [8], fc-nearest neighbor or spectral projections on graph [2].
机译:分类是在计算机辅助诊断(CAD)的核心问题之一,用于使用三维医学成像解释早期癌症检测定位。具有所需的低假阳性(FP)率高的检测灵敏度是至关重要的CAD系统被接受为在放射科医师的工作流程中的有价值的或甚至不可缺少的工具。鉴于各种杂散噪声的图像造成的不确定性的观察,这仍然是一个非常具有挑战性的任务。在本文中,我们提出了一个新颖的,两层粗到细(CTF)的分类级联架构,以解决这个问题。我们首先获得分类关键数据样本(例如,决策边界上的样品)使用鲁棒参数模型从整体数据分布中提取(例如,[8]);然后我们对采样数据,其可以更精确地保持或配制复杂的分类边界建立的曲线图嵌入基于非参数分类器。这两个步骤也可以被分别认为是有效的“样品修剪”和“特征追求+ ANN /模板匹配”。我们的做法是在大肠息肉检测和肺结节检测CAD系统全面验证,前两名致命的癌症,使用医院的规模,多中心临床数据集。结果表明,我们的方法实现了比使用单层分类器,诸如支持向量机的变体,升压,逻辑回归,相关向量机[8],FC现有状态的最先进的算法总体较好的分类/检测性能-nearest邻居或图表[2]的光谱预测。

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