一种使用图像处理和数据挖掘技术检测肝癌的实用方法

P. Anisha, C. K. K. Reddy, L V Narasimha Prasad
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引用次数: 29

摘要

肿瘤发病率高、死亡率高、治疗后复发率高,对肿瘤的诊断和治疗具有重要意义。在世界范围内,癌症排在导致死亡的第五位。在各种癌症中,肝癌排名第三。肝癌的诊断通常通过三种不同的检查,如血液检查、图像检查和活检。为了使肝癌的检测工作更简单,更省时,采用了一种有效的方法。本研究提出了一种肝癌计算机辅助诊断系统。提出的检测方法利用MRI, CT和USG扫描图像。采用K-means聚类技术对图像进行分割,以捕获感兴趣的区域。然后利用Haar小波变换计算感兴趣区域的阈值。该实验在降低测试时间复杂度和计算复杂度的基础上,平均准确率达到82%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A pragmatic approach for detecting liver cancer using image processing and data mining techniques
Cancer diagnosis and treatment has a great significance due to the prevalent episodes of the diseases, high death rate and reappearance after treatment. On the world scale, cancer stands in the fifth position which causes death. Among the various cancers, liver cancer stands in the third position. Liver cancer is generally diagnosed by three different test like blood test, image test and biopsy. To make the task of detecting the liver cancer simpler, less time consuming, an effective and efficient approach is adopted for the same. In this research a computer aided diagnostic system for detecting liver cancer is put forward. The proposed detection methodology makes use of MRI, CT and USG scan imagery. K-means clustering technique is adopted so as to segment the images in order to capture the region of interest. Later, Haar wavelet transform is considered to compute the threshold values for the region of interest. The experiment put forth gave an average accuracy of 82% besides reducing the time complexity and computational complexity of the test.
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