A New Regression Method for Diagnosis of Lung Cancer Disease

Nurul Najiha Jafery, S. N. Sulaiman, M. K. Osman, N. Karim, M. F. Abdullah, I. Isa
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Abstract

A radiologist typically diagnoses lung cancer by visually inspecting Computed Tomography (CT) scan images. The procedure is time-consuming, tedious, and prone to errors. Aside from that, variations in intensity in CT scan images, as well as anatomical structure misjudgment by doctors and radiologists, may make identifying cancerous cells difficult. Internationally, doctors and radiologists use the TNM (Tumor, Nodule, Metastases) method to describe the stage of lung cancer. The purpose of this study is to propose an image processing method for detecting Primary Tumour (T) stages of lung cancer by introducing new regression features extraction method for lung cancer in CT scan images. This will aid medical professionals in diagnosing and treating patients. To accomplish this, lung CT scans are processed to isolate. First, lung region with its background then the lesion region and later extract relevant features from the segmented lesion region. The study begins by proposing a new segmentation procedure for lung CT images that can segment lesion and non-lesion. Then a new regression feature of lesion and non-lesion will be extracted. This study's expected outcome is that a new regression feature can help in classifying lung cancer T staging.
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一种新的肺癌诊断回归方法
放射科医生通常通过视觉检查计算机断层扫描(CT)扫描图像来诊断肺癌。这个过程耗时、乏味,而且容易出错。除此之外,CT扫描图像强度的变化,以及医生和放射科医生对解剖结构的错误判断,都可能使识别癌细胞变得困难。在国际上,医生和放射科医生使用TNM(肿瘤、结节、转移)方法来描述肺癌的分期。本研究的目的是通过引入新的肺癌CT扫描图像回归特征提取方法,提出一种检测肺癌原发肿瘤(T)分期的图像处理方法。这将有助于医疗专业人员诊断和治疗患者。为了做到这一点,肺部CT扫描被处理以分离。首先提取肺区域及其背景,然后提取病灶区域,再从分割的病灶区域提取相关特征。本研究首先提出了一种新的肺CT图像分割程序,可以分割病变和非病变。然后提取病变和非病变的新的回归特征。本研究的预期结果是一种新的回归特征可以帮助分类肺癌T分期。
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