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Automatic detection of calcium phosphate deposit plugs at the terminal ends of kidney tubules

机译:自动检测肾小管末端的磷酸钙沉积物

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摘要

Kidney stones are a common urologic condition with a high amount of recurrence. Recurrence depends on a multitude of factors the incidence of precursors to kidney stones, plugs, and plaques. One method of characterising the stone precursors is endoscopic assessment, though it is manual and time-consuming. Deep learning has become a popular technique for semantic segmentation because of the high accuracy that has been demonstrated. The present Letter examined the efficacy of deep learning to segment the renal papilla, plaque, and plugs. A U-Net model with ResNet-34 encoder was tested; the Letter examined dropout (to avoid overtraining) and two different loss functions (to address the class imbalance problem. The models were then trained in 1666 images and tested on 185 images. The Jaccard-cross-entropy loss function was more effective than the focal loss function. The model with the dropout rate 0.4 was found to be more effective due to its generalisability. The model was largely successful at delineating the papilla. The model was able to correctly detect the plaques and plugs; however, small plaques were challenging. Deep learning was found to be applicable for segmentation of an endoscopic image for the papilla, plaque, and plug, with room for improvement.
机译:肾结石是常见的泌尿科疾病,复发率很高。复发取决于多种因素,即肾结石,栓塞和斑块的前体发生率。表征石材前体的一种方法是内窥镜评估,尽管这是手动且耗时的。深度学习已被证明是一种高精度,因此已成为一种流行的语义分割技术。本信检查了深度学习分割肾乳头,斑块和栓塞的功效。测试了带有ResNet-34编码器的U-Net模型; Letter检验了辍学(以避免过度训练)和两个不同的损失函数(以解决类不平衡问题。然后,在1666张图像中对模型进行了训练,并在185张图像上进行了测试。Jaccard交叉熵损失函数比聚焦算法更有效失效率为0.4的模型因其通用性而被发现更有效,该模型在描绘乳头方面非常成功,该模型能够正确检测斑块和栓塞,但是小斑块具有挑战性。发现深度学习适用于乳头,斑块和栓塞的内窥镜图像分割,还有改进的空间。

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