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Machine Learning in Computer-Aided Diagnosis of the Thorax and Colon in CT: A Survey

机译:机器学习在CT的胸部和结肠计算机辅助诊断中的应用:一项调查

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Computer-aided detection (CADe) and diagnosis (CAD) has been a rapidly growing, active area of research in medical imaging. Machine leaning (ML) plays an essential role in CAD, because objects such as lesions and organs may not be represented accurately by a simple equation; thus, medical pattern recognition essentially require “learning from examples.” One of the most popular uses of ML is the classification of objects such as lesion candidates into certain classes (e.g., abnormal or normal, and lesions or non-lesions) based on input features (e.g., contrast and area) obtained from segmented lesion candidates. The task of ML is to determine “optimal” boundaries for separating classes in the multi-dimensional feature space which is formed by the input features. ML algorithms for classification include linear discriminant analysis (LDA), quadratic discriminant analysis (QDA), multilayer perceptrons, and support vector machines (SVM). Recently, pixel/voxel-based ML (PML) emerged in medical imageprocessing/analysis, which uses pixel/voxel values in images directly, instead of features calculated from segmented lesions, as input information; thus, feature calculation or segmentation is not required. In this paper, ML techniques used in CAD schemes for detection and diagnosis of lung nodules in thoracic CT and for detection of polyps in CT colonography (CTC) are surveyed and reviewed.
机译:计算机辅助检测(CADe)和诊断(CAD)一直是医学成像研究中迅速发展的活跃领域。机器学习(ML)在CAD中起着至关重要的作用,因为诸如病变和器官之类的对象可能无法通过简单的方程式准确表示。因此,医学模式识别本质上需要“从示例中学习”。 ML最流行的用途之一是根据从分段病变候选者获得的输入特征(例如对比度和面积)将诸如病变候选者之类的对象分类为某些类别(例如异常或正常,以及病变或非病变) 。 ML的任务是确定“最佳”边界,以在由输入要素形成的多维要素空间中分离类。用于分类的ML算法包括线性判别分析(LDA),二次判别分析(QDA),多层感知器和支持向量机(SVM)。最近,在医学图像处理/分析中出现了基于像素/体素的ML(PML),它直接使用图像中的像素/体素值,而不是根据分段病变计算出的特征作为输入信息。因此,不需要特征计算或分割。在本文中,对在CAD方案中用于胸部CT的肺结节的检测和诊断以及CT结肠造影(CTC)的息肉的检测中使用的ML技术进行了调查和审查。

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