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Deep Convolutional Neural Network Ensemble for Improved Malaria Parasite Detection

机译:深度卷积神经网络合奏,改善疟疾寄生虫检测

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Malaria prognosis, performed through the identification of parasites using microscopy, is a vital step in the early initiation of treatment. Malaria inducing parasites such as Plasmodium falciparum are difficult to identify and thus have a high mortality rate. For these reasons, a deep convolutional neural network algorithm is proposed in this paper to aid in accurately identifying parasitic cells from red blood smears. By using a mixture of machine learning techniques such as transfer learning, a cyclical and constant learning rate, and ensemble methods, we have developed a model capable of accurately identifying parasitic cells within red blood smears. 14 networks pretrained from the ImageNet database are retrained with the fully connected layers replaced. A cyclical and constant learning rate are used to traverse local minima in each network. The output of each trained neural network is representing a single vote that is used in the classification process. Majority voting criteria are applied in the final classification decision between the candidate malaria cells. Several experiments were conducted to evaluate the performance of the proposed model. The NIH Malaria Dataset from the National Institute of Health, a dataset of 27,558 images formed from microscopic patches of red blood smears, is used in these experiments. The dataset is segmented into 80% training set, 10% validation set, and 10% test set. The validation set is used as the decision metric for choosing ensemble network architectures and the test set is used as the evaluation metric for each model. Different ensemble network architectures are experimented with and promising performance is observed on the test dataset with the best models achieving a test accuracy better than several state-of-the-art methodologies.
机译:通过使用显微镜鉴定寄生虫进行的疟疾预后,是治疗早期开始的重要步骤。诱导寄生虫等疟疾诱导疟原虫难以识别,因此具有高死亡率。由于这些原因,本文提出了一种深度卷积神经网络算法,以帮助精确地识别来自红血涂片的寄生细胞。通过使用机器学习技术的混合物,例如转移学习,循环和恒定的学习率,以及集合方法,我们开发了一种能够准确地识别红血涂片内的寄生细胞的模型。从ImageNet数据库中留下的14个网络被重新替换为完全连接的图层。循环和恒定的学习速率用于在每个网络中遍历局部最小值。每个训练有素的神经网络的输出代表分类过程中使用的单个投票。大多数投票标准适用于候选疟疾细胞的最终分类决定。进行了几次实验以评估所提出的模型的性能。来自国家健康研究所的NIH Malaria DataSet,在这些实验中使用了由红血涂片的微观斑块形成的27,558个图像的数据集。数据集分为80%培训集,10%验证集和10%的测试集。验证集用作选择集合网络架构的判定度量,并且测试集用作每个模型的评估度量。不同的集合网络架构进行实验,在测试数据集上观察到有希望的性能,具有比几种最先进的方法更好地实现测试精度的最佳模型。

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