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Designing an Algorithm for Cancerous Tissue Segmentation Using Adaptive K-means Cluttering and Discrete Wavelet Transform

机译:使用自适应K均值杂波和离散小波变换设计癌组织分割算法

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摘要

>Background: Breast cancer is currently one of the leading causes of death among women worldwide. The diagnosis and separation of cancerous tumors in mammographic images require accuracy, experience and time, and it has always posed itself as a major challenge to the radiologists and physicians. >Objective: This paper proposes a new algorithm which draws on discrete wavelet transform and adaptive K-means techniques to transmute the medical images implement the tumor estimation and detect breast cancer tumors in mammograms in early stages. It also allows the rapid processing of the input data. >Method: In the first step, after designing a filter, the discrete wavelet transform is applied to the input images and the approximate coefficients of scaling components are constructed. Then, the different parts of image are classified in continuous spectrum. In the next step, by using adaptive K-means algorithm for initializing and smart choice of clusters’ number, the appropriate threshold is selected. Finally, the suspicious cancerous mass is separated by implementing the image processing techniques. >Results: We Received 120 mammographic images in LJPEG format, which had been scanned in Gray-Scale with 50 microns size, 3% noise and 20% INU from clinical data taken from two medical databases (mini-MIAS and DDSM). The proposed algorithm detected tumors at an acceptable level with an average accuracy of 92.32% and sensitivity of 90.24%. Also, the Kappa coefficient was approximately 0.85, which proved the suitable reliability of the system performance. >Conclusion: The exact positioning of the cancerous tumors allows the radiologist to determine the stage of disease progression and suggest an appropriate treatment in accordance with the tumor growth. The low PPV and high NPV of the system is a warranty of the system and both clinical specialists and patients can trust its output.
机译:>背景:乳腺癌是目前全球女性死亡的主要原因之一。在乳房X线照片中诊断和分离癌性肿瘤需要准确性,经验和时间,这一直是放射科医生和医师的主要挑战。 >目的:本文提出了一种新算法,该算法利用离散小波变换和自适应K均值技术对医学图像进行变换,以实现肿瘤估计并在早期乳腺X线照片中检测出乳腺癌肿瘤。它还允许快速处理输入数据。 >方法:第一步,在设计滤波器之后,将离散小波变换应用于输入图像,并构建缩放分量的近似系数。然后,将图像的不同部分分类为连续光谱。在下一步中,通过使用自适应K均值算法进行初始化和智能选择簇数,可以选择适当的阈值。最后,通过实施图像处理技术将可疑癌块分离。 >结果:我们从两个医学数据库(mini-MIAS)获得的临床数据中,收到了120张LJPEG格式的乳房X射线照片图像,这些图像以50微米大小,3%噪声和20%INU的灰度进行了扫描。和DDSM)。所提出的算法以可接受的水平检测到肿瘤,其平均准确度为92.32%,灵敏度为90.24%。此外,卡伯系数约为0.85,证明了系统性能的适当可靠性。 >结论:癌瘤的确切位置使放射科医生能够确定疾病进展的阶段,并根据肿瘤的生长情况提出适当的治疗方案。系统的低PPV和高NPV是系统的保证,临床专家和患者都可以信赖其输出。

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