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黄斑光学相干断层扫描(OCT)改变的三维定量分析提高了人工智能模型的诊断性能。

Three-Dimensional Quantification of Macular OCT Alterations Improves the Diagnostic Performance of Artificial Intelligence Models.

作者信息

Heine Lukas, Vahldiek Anna, Vahldiek Benja, Hörst Fabian, Seibold Constantin, Lever Mael, Pauleikhoff Laurenz, Bechrakis Nikolaos, Pauleikhoff Daniel, Kleesiek Jens

机构信息

Institute for AI in Medicine, University Medicine Essen, Essen, North-Rhine Westfalia, Germany.

Cancer Research Center Cologne Essen (CCCE), West German Cancer Center Essen, University Hospital Essen (AöR), Essen, Germany.

出版信息

Transl Vis Sci Technol. 2025 Jul 1;14(7):8. doi: 10.1167/tvst.14.7.8.

Abstract

PURPOSE

To evaluate the performance of state-of-the-art semantic segmentation methods on OCT data for age-related macular degeneration (AMD). We measured variability between annotators to quantify differences in ground truth arising from personal bias.

METHODS

From 94 patients suffering from exudative neovascular AMD (nAMD), 24 volume scans (49 slices each) were selected. Trained members of a reading center for AMD created pixel-wise masks for 12 retinal layers and two pathological labels (fluid, hyperreflective material) to benchmark two-dimensional (2D) and three-dimensional (3D) segmentation models on clinical data. Models were evaluated using fivefold cross-validation, and the best model was used to quantify errors between ground truth and predictions.

RESULTS

The nnU-Net (3D) achieves the best segmentation performance (mean Dice similarity coefficient [DSC] of 0.907), leaving a theoretical gap of 0.036 DSC to the mean interrater agreement, which is the upper bound of model performances. Comparing the volumes calculated for each structure using the model masks with the ground truth produced an average error of 0.065 mm3.

CONCLUSIONS

Models like nnU-Net can produce high-quality 3D masks, challenging the conventional reliance on 2D slices for optimal performance. Both DSC and low average errors indicate that such a model is fit for the large-scale analysis of cohorts.

TRANSLATIONAL RELEVANCE

The presented approach can streamline clinical workflows by reducing the time and effort required for manual annotations, ultimately supporting more efficient and accurate monitoring of AMD progression and treatment response. We provide open-source access to the model weights, annotation instructions and sample data.

摘要

目的

评估用于年龄相关性黄斑变性(AMD)的光学相干断层扫描(OCT)数据的最先进语义分割方法的性能。我们测量了注释者之间的变异性,以量化因个人偏见导致的地面真值差异。

方法

从94例渗出性新生血管性AMD(nAMD)患者中,选择了24次容积扫描(每次49层)。AMD阅读中心的训练有素的成员为12个视网膜层和两个病理标签(液体、高反射物质)创建了逐像素掩码,以在临床数据上对二维(2D)和三维(3D)分割模型进行基准测试。使用五重交叉验证对模型进行评估,并使用最佳模型量化地面真值与预测之间的误差。

结果

nnU-Net(3D)实现了最佳分割性能(平均骰子相似系数[DSC]为0.907),与平均评分者间一致性(这是模型性能的上限)相比,理论差距为0.036 DSC。将使用模型掩码为每个结构计算的体积与地面真值进行比较,平均误差为0.065立方毫米。

结论

像nnU-Net这样的模型可以生成高质量的3D掩码,挑战了传统上依赖2D切片来实现最佳性能的做法。DSC和低平均误差均表明,这样的模型适用于队列的大规模分析。

转化相关性

所提出的方法可以通过减少手动注释所需的时间和精力来简化临床工作流程,最终支持对AMD进展和治疗反应进行更高效、准确的监测。我们提供了模型权重、注释说明和样本数据的开源访问。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2bd1/12279069/964e8dd83204/tvst-14-7-8-f001.jpg

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