Yao Xincheng, Dadzie Albert, Iddir Sabrina, Abtahi Mansour, Ebrahimi Behrouz, Le David, Ganesh Sanjay, Son Taeyoon, Heiferman Michael
University of Illinois Chicago.
Res Sq. 2023 Nov 8:rs.3.rs-3399214. doi: 10.21203/rs.3.rs-3399214/v1.
Reliable differentiation of uveal melanoma and choroidal nevi is crucial to guide appropriate treatment, preventing unnecessary procedures for benign lesions and ensuring timely treatment for potentially malignant cases. The purpose of this study is to validate deep learning classification of uveal melanoma and choroidal nevi, and to evaluate the effect of color fusion options on the classification performance.
A total of 798 ultra-widefield retinal images of 438 patients were included in this retrospective study, comprising 157 patients diagnosed with UM and 281 patients diagnosed with choroidal nevus. Color fusion options, including early fusion, intermediate fusion and late fusion, were tested for deep learning image classification with a convolutional neural network (CNN). Specificity, sensitivity, F1-score, accuracy, and the area under the curve (AUC) of a receiver operating characteristic (ROC) were used to evaluate the classification performance. The saliency map visualization technique was used to understand the areas in the image that had the most influence on classification decisions of the CNN.
Color fusion options were observed to affect the deep learning performance significantly. For single-color learning, the red color image was observed to have superior performance compared to green and blue channels. For multi-color learning, the intermediate fusion is better than early and late fusion options.
Deep learning is a promising approach for automated classification of uveal melanoma and choroidal nevi, and color fusion options can significantly affect the classification performance.
葡萄膜黑色素瘤和脉络膜痣的可靠鉴别对于指导恰当治疗至关重要,可避免对良性病变进行不必要的手术,并确保对潜在恶性病例进行及时治疗。本研究的目的是验证葡萄膜黑色素瘤和脉络膜痣的深度学习分类,并评估颜色融合选项对分类性能的影响。
本回顾性研究纳入了438例患者的798张超广角视网膜图像,其中包括157例诊断为葡萄膜黑色素瘤的患者和281例诊断为脉络膜痣的患者。使用卷积神经网络(CNN)对包括早期融合、中期融合和晚期融合在内的颜色融合选项进行深度学习图像分类测试。采用特异性、敏感性、F1分数、准确性以及受试者操作特征曲线(ROC)下的面积(AUC)来评估分类性能。使用显著性图可视化技术来了解图像中对CNN分类决策影响最大的区域。
观察到颜色融合选项对深度学习性能有显著影响。对于单颜色学习,观察到红色图像相比绿色通道和蓝色通道具有更优的性能。对于多颜色学习,中期融合优于早期融合和晚期融合选项。
深度学习是葡萄膜黑色素瘤和脉络膜痣自动分类的一种有前景的方法,并且颜色融合选项可显著影响分类性能。