从计算机断层扫描 (CT) 图像中综合提取全局和局部特征并进行分类,用于肺癌分类。

IF 1.5 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL
Murugaiyan Suresh Kumar, Panneerselvam Deepak, Parthasarathy Vasanthan, Kandasamy Vijayakumar
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引用次数: 0

摘要

尽管肺癌是第二大常见癌症,但在普通人群中却很少发现。本研究建议采用一种从 CT 扫描图像中提取全局和局部特征的方法来识别肺癌。数据收集、全局和局部训练以及模型测试都是这一结构的组成部分。这项研究使用了 800 张 CT 扫描图像。在全局测试步骤之前,通过扭曲和裁剪对图像进行了预处理。每张图像都由一个特征向量表示,该特征向量采用了从图像中提取的八种不同类型的图像特征。创建特征向量后,采用三种机器学习方法创建检测模型。在整个本地训练和测试过程中,每幅医学图像都被划分为一系列简单的区块。为了描述每个区块,特征向量来自于在一般实验阶段有效的图像特征。然后,利用在总体阶段有效的学习策略,将提取的类似特征用于为所有图块建立检测系统。使用哈小波特征的 SVM 的准确率、灵敏度和特异性分别为 89%、90% 和 89%。使用 SVM 可以获得 90% 的准确率,使用 SVM 加上 HOG 特征可以获得 91% 的灵敏度和 91% 的特异性。最后,利用具有 Gabor 滤波特征的 SVM 取得了最高的正确率、特异性和灵敏度值,尤其是分别为 87%、86% 和 87%(表 3,图 7,参考文献 18)。关键词:特征提取、支持向量机、肺癌、分类、机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated global and local feature extraction and classification from computerized tomography (CT) images for lung cancer classification.

Despite being the second most often diagnosed form of cancer, lung cancers are rarely found in the general population. It is proposed in this study to employ a methodology of extracting both global and local features from CT scan images for the identification of lung cancer. Data gathering, globalised and localised training as well as testing the model are all part of this structure. This study makes use of 800 CT scan images. Images are pre-processed by warping and cropping in advance of the global testing step. Each image is represented by a feature vector employing eight distinct types of image characteristics, which are taken from the images. After creating feature vectors, three machine learning methods are employed to create detection models. Every medical image has been partitioned over a series of simple divisions throughout the training and testing process locally. To describe each block, feature vectors are derived from the image features that worked effectively in the general phase of the experiment. Similar extracted features are then used to build detection systems for all picture blocks using the learning strategies that were effective in the global stage. SVM using Haar Wavelet characteristics had an accuracy, sensitivity, and specificity of 89%, 90%, and 89%, respectively. One might get 90%‑accurate results with SVM and 91%‑sensitive and 91%‑specific results using SVM plus HOG features. Finally, the utilisation of SVM with Gabor Filter characteristics achieved the greatest correctness, specificity, and sensitivity values, particularly 87%, 86%, and 87%, respectively (Tab. 3, Fig. 7, Ref. 18). Keywords: feature extraction, support vector machine, lung cancer, classification, machine learning.

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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
185
审稿时长
3-8 weeks
期刊介绍: The international biomedical journal - Bratislava Medical Journal – Bratislavske lekarske listy (Bratisl Lek Listy/Bratisl Med J) publishes peer-reviewed articles on all aspects of biomedical sciences, including experimental investigations with clear clinical relevance, original clinical studies and review articles.
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