Gunvant Pinakin, Zheng Yufeng, Essock Edward A, Parikh Rajul S, Prabakaran Selvaraj, Babu Jonnadula Ganesh, Shekar Garudadri Chandra, Thomas Ravi
Southern College of Optometry, Memphis, TN 38104-2222, USA.
J Glaucoma. 2007 Sep;16(6):543-8. doi: 10.1097/IJG.0b013e318050ab65.
(1) To evaluate the performance of shape-based analysis [wavelet-Fourier analysis (WFA) and fast Fourier analysis (FFA)] applied to retinal nerve fiber layer (RNFL) thickness values obtained from the optical coherence tomograph (OCT) to discriminate healthy and glaucomatous eyes. (2) To compare the performance of the shape-based metrics to that of the standard OCT output measures (Inferior Average and Average Thickness).
RNFL values were obtained from 152 eyes of 152 individuals (83 healthy and 69 "mild"-stage perimetric glaucoma). WFA and FFA were performed on the RNFL values and linear discriminant functions for both were obtained using Fisher linear discriminant analysis. Performance was evaluated by calculating sensitivity, specificity, and area under the receiver operating characteristic (ROC) curve (ROC area).
The ROC area of the shape-based methods [0.94 (WFA) and 0.88 (FFA)] was greater than that of OCT metrics [0.81 (Inferior Average) and 0.74 (Average Thickness)]. Specifically, WFAs performance was significantly better than both the FFA (P=0.009) and the Inferior Average (P=0.001). Inferior average performed significantly better than Average Thickness (P=0.006).
The ability to differentiate glaucomatous from healthy eyes using stratus OCT measurements is improved by using these analysis methods that emphasize the shape of the RNFL thickness pattern.
(1)评估基于形状的分析方法[小波-傅里叶分析(WFA)和快速傅里叶分析(FFA)]应用于从光学相干断层扫描(OCT)获得的视网膜神经纤维层(RNFL)厚度值以区分健康眼和青光眼眼的性能。(2)比较基于形状的指标与标准OCT输出测量值(下方平均值和平均厚度)的性能。
从152名个体的152只眼中获取RNFL值(83只健康眼和69只“轻度”视野性青光眼眼)。对RNFL值进行WFA和FFA,并使用Fisher线性判别分析获得两者线性判别函数。通过计算敏感性、特异性和受试者操作特征(ROC)曲线下面积(ROC面积)来评估性能。
基于形状的方法的ROC面积[0.94(WFA)和0.88(FFA)]大于OCT指标的ROC面积[0.81(下方平均值)和0.74(平均厚度)]。具体而言,WFA的性能显著优于FFA(P = 0.009)和下方平均值(P = 0.001)。下方平均值的性能显著优于平均厚度(P = 0.006)。
使用这些强调RNFL厚度模式形状的分析方法可提高利用Stratus OCT测量区分青光眼眼和健康眼的能力。