Ozdemir Hüseyin, Berilgen M Said, Serhatlioglu Selami, Polat Hüseyin, Ergüin Uçman, Barişçi Necaattin, Hardalaç Firat
Department of Radiology, Faculty of Medicine, Firat University, Elazig, Turkey.
J Med Syst. 2005 Apr;29(2):91-101. doi: 10.1007/s10916-005-2998-2.
The scope of this study is to diagnose vertebral arterial inefficiency by using Doppler measurements from both right and left vertebral arterials. Total of 96 patients' Doppler measurements, consisting of 42 of healthy, 30 of spondylosis, and 24 of clinically proven vertebrobasillary insufficiency (VBI), were examined. Patients' age and sex information as well as RPSN, RPSVN, LPSN, LPSVN, and TOTALVOL medical parameters obtained from vertebral arterials were classified by neural networks, and the performance of said classification reached up to 93.75% in healthy, 83.33% in spondylosis, and 97.22% in VBI cases. The area under ROC curve, which is a direct indication of repeating success ratio, is calculated as 92.3%, and the correlation coefficient of the classification groups is 0.9234. It is also demonstrated that those medical parameters of age and systolic velocity, which were applied into the neural networks, were more effective in developing vertebral deficiency.
本研究的范围是通过对左右椎动脉进行多普勒测量来诊断椎动脉功能不全。共检查了96例患者的多普勒测量结果,其中包括42例健康者、30例脊柱病患者和24例经临床证实的椎基底动脉供血不足(VBI)患者。通过神经网络对患者的年龄、性别信息以及从椎动脉获得的RPSN、RPSVN、LPSN、LPSVN和TOTALVOL医学参数进行分类,该分类在健康组中的准确率达到93.75%,在脊柱病组中为83.33%,在VBI组中为97.22%。作为重复成功率直接指标的ROC曲线下面积计算为92.3%,分类组的相关系数为0.9234。研究还表明,应用于神经网络的年龄和收缩期速度等医学参数在发展椎动脉缺陷方面更有效。