Güler Inan, Ubeyli Elif Derya
Department of Electronics and Computer Education, Faculty of Technical Education, Teknik Egitim Fakultesi, Gazi University, Teknikokullar, Ankara 06500, Turkey.
Comput Biol Med. 2005 Feb;35(2):121-32. doi: 10.1016/j.compbiomed.2003.12.007.
Doppler ultrasound is known as a reliable technique, which demonstrates the flow characteristics and resistance of ophthalmic arteries. In this study, ophthalmic arterial Doppler signals were obtained from 106 subjects, 54 of whom suffered from ocular Behcet disease while the rest were healthy subjects. Multilayer perceptron neural network (MLPNN) employing delta-bar-delta training algorithm was used to detect the presence of ocular Behcet disease. Spectral analysis of the ophthalmic arterial Doppler signals was performed by least squares (LS) autoregressive (AR) method for determining the MLPNN inputs. The MLPNN was trained with training set, cross validated with cross validation set and tested with testing set. All these data sets were obtained from ophthalmic arteries of healthy subjects and subjects suffering from ocular Behcet disease. Performance indicators and statistical measures were used for evaluating the MLPNN. The correct classification rate was 96.43% for healthy subjects and 93.75% for unhealthy subjects suffering from ocular Behcet disease. The classification results showed that the MLPNN employing delta-bar-delta training algorithm was effective to detect the ophthalmic arterial Doppler signals with Behcet disease.
多普勒超声是一种可靠的技术,可显示眼动脉的血流特征和阻力。在本研究中,从106名受试者获取了眼动脉多普勒信号,其中54名患有眼部白塞病,其余为健康受试者。采用δ-巴-δ训练算法的多层感知器神经网络(MLPNN)用于检测眼部白塞病的存在。通过最小二乘(LS)自回归(AR)方法对眼动脉多普勒信号进行频谱分析,以确定MLPNN的输入。MLPNN用训练集进行训练,用交叉验证集进行交叉验证,并用测试集进行测试。所有这些数据集均取自健康受试者和患有眼部白塞病的受试者的眼动脉。性能指标和统计量用于评估MLPNN。健康受试者的正确分类率为96.43%,患有眼部白塞病的非健康受试者的正确分类率为93.75%。分类结果表明,采用δ-巴-δ训练算法的MLPNN能有效地检测出患有白塞病的眼动脉多普勒信号。