首页> 外文会议>International conference on machine vision >Automatic White Blood Cell Classification Using Pre-trained Deep Learning Models: ResNet and Inception
【24h】

Automatic White Blood Cell Classification Using Pre-trained Deep Learning Models: ResNet and Inception

机译:使用预先训练的深度学习模型自动进行白细胞分类:ResNet和Inception

获取原文

摘要

This works gives an account of evaluation of white blood cell differential counts via computer aided diagnosis (CAD) system and hematology rules. Leukocytes, also called white blood cells (WBCs) play main role of the immune system. Leukocyte is responsible for phagocytosis and immunity and therefore in defense against infection involving the fatal diseases incidence and mortality related issues. Admittedly, microscopic examination of blood samples is a time consuming, expensive and error-prone task. A manual diagnosis would search for specific Leukocytes and number abnormalities in the blood slides while complete blood count (CBC) examination is performed. Complications may arise from the large number of varying samples including different types of Leukocytes, related sub-types and concentration in blood, which makes the analysis prone to human error. This process can be automated by computerized techniques which are more reliable and economical. In essence, we seek to determine a fast, accurate mechanism for classification and gather information about distribution of white blood evidences which may help to diagnose the degree of any abnormalities during CBC test. In this work, we consider the problem of pre-processing and supervised classification of white blood cells into their four primary types including Neutrophils, Eosinophils, Lymphocytes, and Monocytes using a consecutive proposed deep learning framework. For first step, this research proposes three consecutive pre-processing calculations namely are color distortion; bounding box distortion (crop) and image flipping mirroring. In second phase, white blood cell recognition performed with hierarchy topological feature extraction using Inception and ResNet architectures. Finally, the results obtained from the preliminary analysis of cell classification with (11200) training samples and 1244 white blood cells evaluation data set are presented in confusion matrices and interpreted using accuracy rate, and false positive with the classification framework being validated with experiments conducted on poor quality blood images sized 320 × 240 pixels. The deferential outcomes in the challenging cell detection task, as shown in result section, indicate that there is a significant achievement in using Inception and ResNet architecture with proposed settings. Our framework detects on average 100% of the four main white blood cell types using ResNet V1 50 while also alternative promising result with 99.84% and 99.46% accuracy rate obtained with ResNet V1 152 and ResNet 101, respectively with 3000 epochs and fine-tuning all layers. Further statistical confusion matrix tests revealed that this work achieved 1, 0.9979, 0.9989 sensitivity values when area under the curve (AUC) scores above 1, 0.9992, 0.9833 on three proposed techniques. In addition, current work shows negligible and small false negative 0, 2, 1 and substantial false positive with 0, 0, 5 values in Leukocytes detection.
机译:这项工作提供了通过计算机辅助诊断(CAD)系统和血液学规则评估白细胞差异计数的方法。白细胞,也称为白细胞(WBC),起着免疫系统的主要作用。白细胞负责吞噬作用和免疫力,因此可防御涉及致命疾病发生率和死亡率相关问题的感染。诚然,对血液样本进行显微镜检查是一项耗时,昂贵且容易出错的任务。手动诊断将在执行全血细胞计数(CBC)检查时搜索特定的白细胞和载玻片中的数目异常。复杂性可能来自大量不同的样本,包括不同类型的白细胞,相关的亚型和血液中的浓度,这使得分析容易出现人为错误。该过程可以通过更可靠,更经济的计算机化技术来自动化。本质上,我们寻求确定一种快速,准确的分类机制,并收集有关白血证据分布的信息,这可能有助于诊断CBC测试期间的任何异常程度。在这项工作中,我们考虑使用连续提出的深度学习框架对白细胞进行预处理和将其分类为四种主要类型的问题,包括中性粒细胞,嗜酸性粒细胞,淋巴细胞和单核细胞。第一步,这项研究提出了三个连续的预处理计算,即色彩失真;边框变形(裁剪)和图像翻转镜像。在第二阶段,使用Inception和ResNet架构通过分层拓扑特征提取执行白细胞识别。最后,将使用(11200)个训练样本和1244个白细胞评估数据集对细胞分类进行的初步分析所得的结果呈现在混淆矩阵中,并使用准确率进行解释,并且通过在分类框架上进行的实验验证了假阳性率质量较差的血液图像尺寸为320×240像素。如结果部分所示,具有挑战性的细胞检测任务的不同结果表明,在提议的设置下使用Inception和ResNet体系结构取得了显著成就。我们的框架使用ResNet V1 50可以平均检测四种主要白细胞类型的100%,同时还可以通过使用ResNet V1 152和ResNet 101分别以3000个历元获得99.84%和99.46%的准确率,并对所有结果进行微调层。进一步的统计混淆矩阵测试显示,在三种建议的技术下,当曲线下面积(AUC)得分分别高于1,0.9992,0.9833时,这项工作获得了1,0.9979,0.9989的灵敏度值。此外,当前的工作显示白细胞检测中的假阴性0、2、1和基本假阳性可忽略不计,值为0、0、5。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号