基于数字图像处理的新型肝脏肿瘤诊断机制

Meenu Sharma, R. Parveen
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引用次数: 1

摘要

肝脏是人体腹部最重要的内脏器官。一个人没有健康的肝脏是无法生存的。肝癌是一种危及生命的疾病,生物医学工程技术人员很难发现。肝细胞癌(HCC)是最常见的肝癌类型,占病例的75%。许多肝脏肿瘤患者因为检测不及时而失去了生命。因此,早期发现肿瘤是非常必要的。因此,主要目的是利用图像处理技术在早期发现肝癌。磁共振成像图像显示肿瘤。对图像进行预处理,采用边缘和掩模混合分割的方法进行分割,该方法简单易用。根据统计特征将检测到的肿瘤进一步分为囊肿、腺瘤、血管瘤和恶性肿瘤。这项建议的技术的范围是突出和分类肿瘤区域存在于磁共振成像图像。
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A Novel Digital Image Processing based Mechanism for Liver Tumor Diagnosis
The liver is the most significant internal organ in the human body's abdomen. A person cannot survive without a healthy liver. Liver cancer is a life-threatening illness, difficult to detect by biomedical engineering technicians. Hepatocellular carcinoma (HCC) is the most common type of liver cancer which makes up 75% of cases. Plenty of people with liver tumors have lost their lives because of poor and late detection. Hence it is far essential to discover the tumor at an early stage. So, the principal intention is to detect liver cancer at an earlier stage using the image processing technique. Here the tumors are detected from Magnetic Resonance Imaging images. The image undergoes image pre-processing and is segmented by a hybrid method consisting of the edge and mask method, which is simple and easy to use. Detected tumors are further categorized into the cyst, adenoma, hemangioma, and malignant tumor based on statistical features. The scope of this propounded technique is to highlight and categorized the tumor region present in the Magnetic Resonance Imaging images.
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