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首页> 外文期刊>Journal of medical systems >An End-to-End System for Automatic Urinary Particle Recognition with Convolutional Neural Network
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An End-to-End System for Automatic Urinary Particle Recognition with Convolutional Neural Network

机译:卷积神经网络自动泌尿颗粒识别的端到端系统

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摘要

The urine sediment analysis of particles in microscopic images can assist physicians in evaluating patients with renal and urinary tract diseases. Manual urine sediment examination is labor-intensive, subjective and time-consuming, and the traditional automatic algorithms often extract the hand-crafted features for recognition. Instead of using the hand-crafted features, in this paper we propose to exploit convolutional neural network (CNN) to learn features in an end-to-end manner to recognize the urinary particle. We treat the urinary particle recognition as object detection and exploit two state-of-the-art CNN-based object detection methods, Faster R-CNN and single shot multibox detector (SSD), along with their variants for urinary particle recognition. We further investigate different factors involving these CNN-based methods to improve the performance of urinary particle recognition. We comprehensively evaluate these methods on a dataset consisting of 5,376 annotated images corresponding to 7 categories of urinary particle, i.e., erythrocyte, leukocyte, epithelial cell, crystal, cast, mycete, epithelial nuclei, and obtain a best mean average precision (mAP) of 84.1% while taking only 72 ms per image on a NVIDIA Titan X GPU.
机译:微观图像中颗粒的尿沉积物分析可以帮助医生评估肾和泌尿道疾病的患者。手动尿沉积物检查是劳动密集型,主观和耗时的,传统的自动算法经常提取手工制作的功能以进行识别。在本文中,不使用手工制作的功能,而是建议利用卷积神经网络(CNN)以以端到端的方式学习特征以识别泌尿粒子。我们将泌尿粒子识别视为对象检测和利用两种最先进的基于CNN的物体检测方法,更快的R-CNN和单次多射门检测器(SSD)以及它们的尿颗粒识别的变体。我们进一步调查了涉及基于CNN的方法的不同因素,以提高尿颗粒识别的性能。我们全面评估这些方法,该方法包括对应于7类尿液颗粒,即红细胞,白细胞,上皮细胞,晶体,铸造,肌动术,上皮细胞核,并获得最佳平均平均精度(MAP)的数据集84.1%,同时在NVIDIA Titan X GPU上只服用72 ms。

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