Hwang Yoo Na, Lee Ju Hwan, Kim Ga Young, Jiang Yuan Yuan, Kim Sung Min
Department of Medical Devices Industry, Dongguk University-Seoul, (100-715) 26, Pil-dong 3-ga, Jung-gu, Seoul, South Korea.
Department of Medical Biotechnology, Dongguk University-Bio Medi Campus, (410-820) 32, Dongguk-ro, Ilsan Dong-gu, Goyang-si, Gyeonggi-do, South Korea.
Biomed Mater Eng. 2015;26 Suppl 1:S1599-611. doi: 10.3233/BME-151459.
This paper focuses on the improvement of the diagnostic accuracy of focal liver lesions by quantifying the key features of cysts, hemangiomas, and malignant lesions on ultrasound images. The focal liver lesions were divided into 29 cysts, 37 hemangiomas, and 33 malignancies. A total of 42 hybrid textural features that composed of 5 first order statistics, 18 gray level co-occurrence matrices, 18 Law's, and echogenicity were extracted. A total of 29 key features that were selected by principal component analysis were used as a set of inputs for a feed-forward neural network. For each lesion, the performance of the diagnosis was evaluated by using the positive predictive value, negative predictive value, sensitivity, specificity, and accuracy. The results of the experiment indicate that the proposed method exhibits great performance, a high diagnosis accuracy of over 96% among all focal liver lesion groups (cyst vs. hemangioma, cyst vs. malignant, and hemangioma vs. malignant) on ultrasound images. The accuracy was slightly increased when echogenicity was included in the optimal feature set. These results indicate that it is possible for the proposed method to be applied clinically.
本文聚焦于通过量化超声图像上囊肿、血管瘤及恶性病变的关键特征来提高肝脏局灶性病变的诊断准确性。肝脏局灶性病变分为29个囊肿、37个血管瘤和33个恶性肿瘤。共提取了由5个一阶统计量、18个灰度共生矩阵、18个劳氏纹理特征及回声性组成的42个混合纹理特征。通过主成分分析选择的29个关键特征被用作前馈神经网络的一组输入。对于每个病变,使用阳性预测值、阴性预测值、敏感性、特异性和准确性来评估诊断性能。实验结果表明,所提出的方法表现出色,在超声图像上所有肝脏局灶性病变组(囊肿与血管瘤、囊肿与恶性肿瘤、血管瘤与恶性肿瘤)中诊断准确率超过96%。当最佳特征集中包含回声性时,准确率略有提高。这些结果表明所提出的方法有可能应用于临床。