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Automatic Glomerulus Detection in Renal Histological Images

机译:肾组织学图像中的自动肾小球检测

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Glomeruli are microscopic structures of the kidney affected in many renal diseases. The diagnosis of these diseases depends on the study by a pathologist of each glomerulus sampled by renal biopsy. To help pathologists with the image analysis, we propose a glomerulus detection method on renal histological images. For that, we evaluated two state-of-the-art deep-learning techniques: single shot multibox detector with Inception V2 (SI2) and faster region-based convolutional neural network with Inception V2 (FRO). As a result, we reached: 0.88 of mAP and 0.94 of F1-score, when using SI2, and 0.87 of mAP and 0.97 of F1-score, when using FRI2. On average, to process each image, FRI2 required 30.91s, while SI2 just 0.79s. In our experiments, we found that SI2 model is the best detection method for our task since it is 64% faster in the training stage and 98% faster to detect the glomeruli in each image.
机译:肾小球是许多肾病影响的肾脏的显微结构。 这些疾病的诊断取决于通过肾活检采样的每个肾小球病理学家的研究。 为了帮助病理学家进行图像分析,我们提出了肾脏组织学图像的肾小球检测方法。 为此,我们评估了两种最先进的深学习技术:单次拍摄具有成立V2(SI2)(SI2)和较快的基于区域的卷积神经网络,具有成立v2(fro)。 结果,我们达到了:0.88的地图和0.94的F1分数,当使用Si2和0.87的Map和0.97的F1分数时,使用Fri2时。 平均而言,要处理每个图像,需要30.91s,而Si2只需0.79秒。 在我们的实验中,我们发现Si2模型是我们任务的最佳检测方法,因为训练阶段更快64%,在每个图像中检测到肾小球的速度更快98%。

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