Determination of treatment need of posterior capsular opacification (PCO)-- one of the most common complication of cataract surgery -- is a difficult process due to its local unavailability and the fact that treatment is provided only after PCO occurs in the central visual axis. In this paper we propose a deep learning (DL)-based method to first segment PCO images then classify the images into \textit{treatment required} and \textit{not yet required} cases in order to reduce frequent hospital visits. To train the model, we prepare a training image set with ground truths (GT) obtained from two strategies: (i) manual and (ii) automated. So, we have two models: (i) Model 1 (trained with image set containing manual GT) (ii) Model 2 (trained with image set containing automated GT). Both models when evaluated on validation image set gave Dice coefficient value greater than 0.8 and intersection-over-union (IoU) score greater than 0.67 in our experiments. Comparison between gold standard GT and segmented results from our models gave a Dice coefficient value greater than 0.7 and IoU score greater than 0.6 for both the models showing that automated ground truths can also result in generation of an efficient model. Comparison between our classification result and clinical classification shows 0.98 F2-score for outputs from both the models.
翻译:在本文中,我们建议对第一部分PCO图像采用深层次学习(DL)法,然后将图像分类为\textit{处理要求}和没有需要的病例,以减少频繁的住院检查。为了培训模型,我们准备了一套含有白内障外科手术最常见复杂情况的培训图象(GT),该图象来自两种战略:(一) 手动和(二) 自动化。因此,我们有两个模型:(一) 模型1(用包含人工GT的图像进行训练);(二) 模型2(用包含自动GT的图像进行训练) 模型2(用含有自动GT的图像组进行训练) 两种模型在对确认图像进行评价时,给Dice系数值高于0.8和交叉式联盟(IoU)的得分数大于0.67。我们模型的黄金标准GTT和分数(GT)之间的比较使Dice系数值高于0.7和0.8的模型的数值都高于0.6和0.6的IU的自动基数,从而显示我们的0.6和0.6的模型的计算结果。