Massive training in artificial immune recognition algorithm for enhancement of lung CT scans

S. Hang, S. Shamsuddin, A. Ralescu
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引用次数: 3

Abstract

We proposed a pixel-based machine learning algorithm in the training of artificial immune recognition system (AIRS) to detect lung lesions in two-dimensional computed tomography (CT) scans. AIRS is an immune based algorithm which inspired by several biological mechanisms in mammalian immune system such as mutation, clonal expansion and immune memory generation. The proposed framework implements the concept of pixel machine learning (PML) where no segmentation and features calculation are required in the pre-processing of pixels. Hounsfield (HU) values in the selected region of interest (ROI) in CT scan are used directly to form a large number of learning sub-regions for massive training process. By using raw data in training, the loss of pixel information during detection of abnormality on medical images can be avoided. There are two versions of the AIRS (AIRS1 and AIRS2) algorithms are involved in the experiments of comparing their performance in the classification of medical images. The main advantage of these AIRS algorithms is to remove surplus training data while remain only relevant features in the processing of large amount of data training. The validation of results based on visualization validation and quantitative comparison using Kullback Leibler Divergence (KLD) are introduced. In this research, the massive training AIRS (MTAIRS) algorithms have generated promising results in visualization for lesions enhancement and detection in CT scans.
肺CT扫描增强人工免疫识别算法的大规模训练
我们提出了一种基于像素的机器学习算法,用于人工免疫识别系统(AIRS)的训练,以检测二维计算机断层扫描(CT)中的肺部病变。AIRS是一种基于免疫的算法,它的灵感来自于哺乳动物免疫系统中的几种生物机制,如突变、克隆扩增和免疫记忆的产生。该框架实现了像素机器学习(PML)的概念,在像素预处理过程中不需要进行分割和特征计算。直接利用CT扫描中选择的感兴趣区域(ROI)中的Hounsfield (HU)值,形成大量的学习子区域,进行大规模的训练过程。利用原始数据进行训练,可以避免医学图像异常检测过程中像素信息的丢失。实验采用了两个版本的AIRS算法(AIRS1和AIRS2),比较了它们在医学图像分类中的性能。这些AIRS算法的主要优点是在处理大量的数据训练时,可以去除多余的训练数据,而只保留相关的特征。介绍了基于Kullback Leibler散度(KLD)的可视化验证和定量比较的结果验证。在本研究中,大规模训练AIRS (MTAIRS)算法在CT扫描中病灶增强和检测的可视化方面取得了可喜的成果。
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