首页> 美国卫生研究院文献>Asian Pacific Journal of Cancer Prevention : APJCP >Lung Lesion Detection in CT Scan Images Using the Fuzzy Local Information Cluster Means (FLICM) Automatic Segmentation Algorithm and Back Propagation Network Classification
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Lung Lesion Detection in CT Scan Images Using the Fuzzy Local Information Cluster Means (FLICM) Automatic Segmentation Algorithm and Back Propagation Network Classification

机译:使用模糊局部信息聚类均值(FLICM)自动分割算法和反向传播网络分类的CT扫描图像中的肺部病变检测

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摘要

Lung cancer is a frequently lethal disease often causing death of human beings at an early age because of uncontrolled cell growth in the lung tissues. The diagnostic methods available are less than effective for detection of cancer. Therefore an automatic lesion segmentation method with computed tomography (CT) scans has been developed. However it is very difficult to perform automatic identification and segmentation of lung tumours with good accuracy because of the existence of variation in lesions. This paper describes the application of a robust lesion detection and segmentation technique to segment every individual cell from pathological images to extract the essential features. The proposed technique based on the FLICM (Fuzzy Local Information Cluster Means) algorithm used for segmentation, with reduced false positives in detecting lung cancers. The back propagation network used to classify cancer cells is based on computer aided diagnosis (CAD).
机译:肺癌是一种常见的致死性疾病,由于肺组织中细胞的不受控制的生长,常常导致人在早期死亡。可用的诊断方法不足以检测癌症。因此,已经开发了具有计算机断层摄影(CT)扫描的自动病变分割方法。然而,由于病变的存在,很难以很高的准确性进行肺肿瘤的自动识别和分割。本文介绍了一种强大的病变检测和分割技术的应用,该技术可以从病理图像中分割出每个单个细胞,以提取基本特征。所提出的技术基于用于分割的FLICM(模糊局部信息聚类均值)算法,可减少检测肺癌时的假阳性。用于对癌细胞进行分类的反向传播网络基于计算机辅助诊断(CAD)。

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