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仅用 OCT 对青光眼进行分类:三种源于机器学习的聚类算法的比较。

Classifying glaucoma exclusively with OCT: comparison of three clustering algorithms derived from machine learning.

机构信息

Oftalmologia Mèdica i Quirúrgica (OMIQ) Research, Sant Cugat del Vallès, Spain.

Institut de la Màcula (Hospital Quirón-Teknon), Barcelona, Spain.

出版信息

Eye (Lond). 2024 Apr;38(5):841-846. doi: 10.1038/s41433-023-02785-5. Epub 2023 Oct 19.

Abstract

BACKGROUND/AIMS: To objectively classify eyes as either healthy or glaucoma based exclusively on data provided by peripapillary retinal nerve fiber layer (pRNFL) and ganglion cell-inner plexiform (GCIPL) measurements derived from spectral-domain optical coherence tomography (SD-OCT) using machine learning algorithms.

METHODS

Three clustering methods (k-means, hierarchical cluster analysis -HCA- and model-based clustering-MBC-) were used separately to classify a training sample of 109 eyes as either healthy or glaucomatous using solely 13 SD-OCT parameters: pRNFL average and sector thicknesses and GCIPL average and minimum values together with the six macular wedge-shaped regions. Then, the best-performing algorithm was applied to an independent test sample of 102 eyes to derive close estimates of its actual performance (external validation).

RESULTS

In the training sample, accuracy was 91.7% for MBC, 81.7% for k-means and 78.9% for HCA (p value = 0.02). The best MBC model was that in which subgroups were allowed to have variable volume and shape and equal orientation. The MBC algorithm in the independent test sample correctly classified 98 out of 102 cases for an overall accuracy of 96.1% (95% CI, 92.3-99.8%), with a sensitivity of 94.3 and 100% specificity. The accuracy for pRNFL was 92.2% (95% CI, 86.9-97.4%) and for GCIPL 98.0% (95% CI, 95.3-100%).

CONCLUSIONS

Clustering algorithms in general (and MBC in particular) seem promising methods to help discriminate between healthy and glaucomatous eyes using exclusively SD-OCT-derived parameters. Understanding the relative merits of one method over others may also provide insights into the nature of the disease.

摘要

背景/目的:使用机器学习算法,仅基于从光谱域光相干断层扫描(SD-OCT)获得的视盘周围视网膜神经纤维层(pRNFL)和神经节细胞内丛状层(GCIPL)测量值,客观地将眼睛分类为健康或青光眼。

方法

使用三种聚类方法(k-均值、层次聚类分析-HCA-和基于模型的聚类-MBC-)分别对 109 只眼的训练样本进行分类,将其分为健康或青光眼,仅使用 13 个 SD-OCT 参数:pRNFL 平均值和扇形厚度以及 GCIPL 平均值和最小值以及六个黄斑楔形区域。然后,将表现最佳的算法应用于 102 只眼的独立测试样本,以得出其实际性能的准确估计值(外部验证)。

结果

在训练样本中,MBC 的准确率为 91.7%,k-均值为 81.7%,HCA 为 78.9%(p 值=0.02)。最佳的 MBC 模型是允许子组具有可变体积和形状且具有相同方向的模型。在独立测试样本中,MBC 算法正确分类了 102 例中的 98 例,总体准确率为 96.1%(95%置信区间,92.3-99.8%),敏感性为 94.3%,特异性为 100%。pRNFL 的准确率为 92.2%(95%置信区间,86.9-97.4%),GCIPL 为 98.0%(95%置信区间,95.3-100%)。

结论

聚类算法(特别是 MBC)似乎是一种很有前途的方法,可以仅使用从 SD-OCT 获得的参数来帮助区分健康和青光眼的眼睛。了解一种方法相对于其他方法的优势,也可能深入了解疾病的性质。

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