首页> 外文期刊>Investigative ophthalmology & visual science >Prediction Accuracy of a Dynamic Structure-Function (DSF) model for Glaucoma Progression using Contrast Sensitivity Perimetry (CSP) and Confocal Scanning Laser Ophthalmoscop
【24h】

Prediction Accuracy of a Dynamic Structure-Function (DSF) model for Glaucoma Progression using Contrast Sensitivity Perimetry (CSP) and Confocal Scanning Laser Ophthalmoscop

机译:动态结构函数(DSF)模型对青光眼进展的预测准确性的使用对比敏感度视野测定法(CSP)和共聚焦扫描激光眼科镜

获取原文
           

摘要

Purpose: The DSF model was shown to have better prediction accuracy compared to linear regression in short follow-up series when the mean sensitivity (MS) of static automated perimetry (SAP) was paired with rim area (RA) (Hu et al, IOVS, 2014; In Press). CSP was shown to have lower test-retest variability than SAP in glaucomatous defects (Hot et al, IOVS, 2008; 49:3049a??57). The current study assessed whether the prediction accuracy of the DSF model could be improved using CSP instead of SAP. Methods: Longitudinal data from 36 eyes of 36 patients with open-angle glaucoma were analyzed. The first set of 18 patients had 6 pairs of structure-function data (each considered as a visit), and the second set of 28 patients had 4 pairs, with a maximum of one month between structural and functional measurements in each pair, and a minimum of 6 months between pairs. The structural parameter was RA (Heidelberg Retina Tomograph) and the functional parameter was MS obtained on CSP and SAP. RA and MS were expressed as percent of mean normal based on an independent dataset of 102 healthy eyes. The first 3 visits were used to predict the 4th visit, the first 4 visits to predict the 5th visit, and the first 5 visits to predict the 6th visit. The median prediction error (PE) was compared to that of ordinary least squares linear regression (OLSLR) using the Wilcoxon signed-rank test. Results: For CSP MS and RA in the first set of 18 patients, median PE with OLSLR for predicting visits 4, 5, and 6 was 5.2%, 5.2%, and 4.9% of mean normal, respectively. These values decreased by 2.0% of mean normal (p = .004), 1.5% (p = .006), and 1.0% (p = 0.85) with the DSF model. For SAP MS and RA, the median PE with OLSLR for predicting visits 4, 5, and 6 was 6.3%, 9.0%, 7.0%, respectively. These values decreased by 2.0% (p = .157) and 1.0% (p = .396) with the DSF model for visits 5 and 6, respectively. For visit 4, there was an increase of 1.4% (p = .184). This was confirmed on the second set of 28 patients: PE was 1.5 % lower for DSF with CSP (p = .002). Conclusions: These results are in agreement with previous work (Hu et al, IOVS, 2014; In Press). The DSF model had lower prediction error than OLSLR for CSP MS compared to SAP MS, which might be partly explained by the reduced test-retest variability of CSP.
机译:目的:当静态自动视野检查(SAP)的平均灵敏度(MS)与边缘区域(RA)配对时,与短期随访系列中的线性回归相比,DSF模型具有更好的预测准确性(Hu等人,IOVS ,2014年;印刷中)。在青光眼缺陷中,CSP具有比SAP低的重测变异性(Hot等人,IOVS,2008; 49:3049a→57)。当前的研究评估了使用CSP代替SAP是否可以提高DSF模型的预测准确性。方法:分析36例开角型青光眼患者的36只眼的纵向数据。第一组的18位患者具有6对结构-功能数据(每组都被视为一次就诊),第二组的28位患者具有4对,每对中的结构和功能测量之间最多相隔一个月,并且两双之间至少间隔6个月。结构参数是RA(海德堡视网膜断层扫描仪),功能参数是在CSP和SAP上获得的MS。根据102个健康眼睛的独立数据集,RA和MS表示为平均正常水平的百分比。前3次访问用于预测第4次访问,前4次访问用于预测第5次访问,前5次访问用于预测第6次访问。使用Wilcoxon符号秩检验,将中位预测误差(PE)与普通最小二乘线性回归(OLSLR)进行了比较。结果:对于首批18例患者中的CSP MS和RA,使用OLSLR预测访视4、5和6的PE的中位数分别为平均正常的5.2%,5.2%和4.9%。在DSF模型中,这些值分别降低了平均正常水平的2.0%(p = .004),1.5%(p = .006)和1.0%(p = 0.85)。对于SAP MS和RA,用于预测访视4、5和6的带有OLSLR的中位PE分别为6.3%,9.0%,7.0%。在访问5和访问6的DSF模型中,这些值分别降低了2.0%(p = .157)和1.0%(p = .396)。对于第4次访问,增长了1.4%(p = .184)。第二组28例患者证实了这一点:DSF伴CSP的PE降低1.5%(p = .002)。结论:这些结果与以前的工作相一致(Hu等人,IOVS,2014;印刷中)。与SAP MS相比,DSF模型的CSP MS预测误差比OLSLR低,这可能部分是由于CSP的重测变异性降低所致。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号