基于随机森林的肝脏b超纹理识别算法

Hongbin Li, Lihua Yang, T. He, Yingcong Xiao, Zhonghua Liang, Xiaoming Wu
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引用次数: 0

摘要

b超具有非电离辐射、实时成像、多向断层扫描和血流动态观察等优点,已成为肝、胆、胰、脾等器官影像学检查的首选方法。B超诊断医生一方面眼睛盯着B超监护仪的屏幕,另一方面操作探头在患者待检查位置上移动。由于每天要检查几十个病人,所以b超医生经常每天都是满负荷工作,导致眼睛疲劳。眼疲劳容易引起误诊或漏诊。随着人工智能技术和计算机技术的发展,越来越多由人类完成的工作可以由计算机代替。计算机不会因长时间工作而感到疲劳,其分析具有客观性和一致性。因此,计算机辅助诊断是b超领域的迫切需要。随机森林算法是一种基于决策树的机器学习算法,可以用于分类。本研究建立了一种基于随机森林的肝脏b超纹理识别算法。与样本充足的CART决策树算法进行比较,发现随机森林在纹理识别的准确率上优于CART决策树,因此随机森林在b超纹理分析和疾病的计算机辅助诊断方面具有良好的应用前景。
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B-mode Ultrasound Texture Recognition Algorithm of Liver Based on Random Forests
With the advantages of non ionizing radiation, real-time imaging, multi-directional tomography and dynamic observation of blood flow, B-mode ultrasound has become the preferred method for imaging examination of some organs such as liver, gallbladder, pancreas and spleen. On the one hand, the B-ultrasound diagnostic doctor fixed his eyes on the screen of B- ultrasound monitor, on the other hand, he operated the probe to move on the patient's position to be examined. With dozens of patients are examined every day, so B-mode ultrasound doctors often work at full-load every day and lead to eye fatigue. Eye fatigue easily causes erroneous diagnosis or missed diagnosis. With the development of artificial intelligence technology and computer technology, more and more work done by human can be completed by computer instead. The computer will not feel fatigue for long working hours, and its analysis has objectivity and consistency. Therefore, computer-aided diagnosis is an urgent need in the field of B-mode ultrasound. Random forests algorithm is a machine learning algorithm based on decision tree, which can be used for classification. In this study, a B-mode ultrasound texture recognition algorithm for liver based on random forests is established. Compared with CART decision tree algorithm with sufficient samples, it is found that random forests is superior to CART decision tree in the accuracy of texture recognition, so random forests has a good application prospect in the analysis of B-mode ultrasound texture and computer aided diagnosis of diseases.
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