...
首页> 外文期刊>Investigative ophthalmology & visual science >Unsupervised machine learning with independent component analysis to identify areas of progression in glaucomatous visual fields.
【24h】

Unsupervised machine learning with independent component analysis to identify areas of progression in glaucomatous visual fields.

机译:具有独立成分分析的无监督机器学习,可识别青光眼视野中的进展区域。

获取原文
获取原文并翻译 | 示例
           

摘要

PURPOSE: To determine whether a variational Bayesian independent component analysis mixture model (vB-ICA-mm), a form of unsupervised machine learning, can be used to identify and quantify areas of progression in standard automated perimetry fields. METHODS: In an earlier study, it was shown that a model using vB-ICA-mm can separate normal fields from fields with six different patterns of visual field loss related to glaucomatous optic neuropathy (GON) along maximally independent axes. In the present study, an independent group of 191 patient eyes (66 with ocular hypertension (OHT), 12 with suspected glaucoma by field, 61 with suspected glaucoma by disc, and 52 with glaucoma) with five or more standard visual fields under observation for a mean of 6.24 +/- 2.65 years and 8.11 +/- 2.42 visual fields were evaluated with the vB-ICA-mm. In addition, eyes with progressive GON (PGON) were identified (n = 39). Each participant had a series of fields tested, with each field entered independently and placed along the axes of the previously developed model. This allowed change in one pattern of visual field defect (along one axis) to be assessed relative to results other areas of that same field (no change along other axes). Progression was based on a slope falling outside the 5th and the 95th percentile limits of all slopes, with at least two axes not showing such a deviation in a given individual's series of fields. Fields were also scored using Advanced Glaucoma Intervention Study (AGIS) and the Early Manifest Glaucoma Treatment Trial (EMGT) criteria. RESULTS: Thirty-two of 191 eyes progressed on vB-ICA-mm by this definition. Of the 32, 22 had field loss at baseline, 7 had only GON, 3 were OHTs and 12 were from the 39 eyes (31%) with PGON. The vB-ICA-mm identified a higher percentage of progressing eyes in each diagnostic category than did AGIS or and the EMGT. CONCLUSIONS: The vB-ICA-mm can quantitatively identify progression in eyes with glaucoma by evaluating change in one or more patterns of the visual field loss while other areas or patterns remain stable. This may enable each eye to contribute to the determination of whether change is caused by true progression or by variability.
机译:目的:确定是否可以使用无监督机器学习形式的变分贝叶斯独立分量分析混合模型(vB-ICA-mm)来识别和量化标准自动视野检查领域中的进展区域。方法:在较早的研究中,表明使用vB-ICA-mm的模型可以沿最大独立轴将正常视野与与青光眼视神经病变(GON)相关的六种不同视野丧失模式的视野分开。在本研究中,独立观察的191眼患者(其中66眼患有高眼压(OHT),12眼视野怀疑有青光眼,61眼视野怀疑有青光眼,52眼患有青光眼)具有五个或更多标准视野使用vB-ICA-mm评估了平均6.24 +/- 2.65年和8.11 +/- 2.42视野。此外,鉴定出进行性GON(PGON)的眼睛(n = 39)。每个参与者都有一系列测试过的领域,每个领域都是独立输入的,并沿着先前开发的模型的轴放置。这允许相对于同一视野的其他区域的结果来评估视野缺损的一种模式(沿一个轴)的变化(沿其他轴不变)。进度基于落在所有坡度的第5个和第95个百分位数限制之外的坡度,至少两个轴在给定的个人系列视野中未显示出这种偏离。还使用高级青光眼干预研究(AGIS)和早期清单性青光眼治疗试验(EMGT)标准对视野进行评分。结果:根据这个定义,在191只眼中有32只在vB-ICA-mm上进展。在32例中,有22例在基线时丧失视场,7例仅具有GON,3例是OHT,而12例来自PGON的39眼(31%)。与AGIS或EMGT相比,vB-ICA-mm在每个诊断类别中识别出更高的进展眼睛百分比。结论:vB-ICA-mm可通过评估一种或多种视野丧失模式的变化而其他区域或模式保持稳定来定量鉴定青光眼的进展。这可以使每只眼睛有助于确定变化是由真实进程还是由变异性引起的。

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