Genentech, Inc., South San Francisco, CA, USA.
Roger and Angie Karalis Johnson Retina Center, University of Washington, Seattle, WA, USA.
Transl Vis Sci Technol. 2024 Aug 1;13(8):6. doi: 10.1167/tvst.13.8.6.
To explore the contributions of fundus autofluorescence (FAF) topographic imaging features to the performance of convolutional neural network-based deep learning (DL) algorithms in predicting geographic atrophy (GA) growth rate.
Retrospective study with data from study eyes from three clinical trials (NCT02247479, NCT02247531, NCT02479386) in GA. The algorithm was initially trained with full FAF images, and its performance was considered benchmark. Ablation experiments investigated the contribution of imaging features to the performance of the algorithms. Three FAF image regions were defined relative to GA: Lesion, Rim, and Background. For No Lesion, No Rim, and No Background datasets, a single region of interest was removed at a time. For Lesion, Rim, and Background Shuffled datasets, individual region pixels were randomly shuffled. For Lesion, Rim, and Background Mask datasets, masks of the regions were used. A Convex Hull dataset was generated to evaluate the importance of lesion size. Squared Pearson correlation (r2) was used to compare the predictive performance of ablated datasets relative to the benchmark.
The Rim region influenced r2 more than the other two regions in all experiments, indicating the most relevant contribution of this region to the performance of the algorithms. In addition, similar performance was observed for all regions when pixels were shuffled or only a mask was used, indicating intensity information was not independently informative without textural context.
These ablation experiments enabled topographic clinical insights on FAF images from a DL-based GA progression prediction algorithm.
Results from this study may lead to new insights on GA progression prediction.
探索眼底自发荧光(FAF)地形图成像特征对基于卷积神经网络的深度学习(DL)算法在预测地图状萎缩(GA)增长率中的性能的贡献。
回顾性研究,纳入来自三个临床试验(NCT02247479、NCT02247531、NCT02479386)的研究眼数据。该算法最初使用全 FAF 图像进行训练,并将其性能视为基准。消融实验研究了成像特征对算法性能的贡献。相对于 GA,定义了三个 FAF 图像区域:病变、边缘和背景。对于无病变、无边缘和无背景数据集,每次删除一个感兴趣区域。对于病变、边缘和背景随机化数据集,逐个随机化区域像素。对于病变、边缘和背景掩模数据集,使用掩模。生成凸壳数据集以评估病变大小的重要性。使用平方皮尔逊相关系数(r2)比较消融数据集相对于基准的预测性能。
在所有实验中,边缘区域比其他两个区域对 r2 的影响更大,表明该区域对算法性能的贡献最大。此外,当像素被随机化或仅使用掩模时,所有区域的性能相似,这表明在没有纹理上下文的情况下,强度信息本身并不具有信息性。
这些消融实验为基于 DL 的 GA 进展预测算法提供了 FAF 图像的临床见解。
温晓慧