基于集成深度学习算法的显微血液涂片图像疟疾寄生虫检测

C. B. Jones, C. Murugamani
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引用次数: 3

摘要

疟疾是一种致命的综合症,由疟原虫形成,通过受感染的按蚊叮咬传播。有几种治疗疟疾的药物,但由于设备和技术不足,很难检测到。专家对血液涂片图像进行显微镜检查,有助于准确发现感染疟疾的寄生虫。然而,手工分析是冗长而耗时的,因为专家必须处理许多情况。本文提出了一种基于混合深度学习方法对血液涂片图像进行分类的计算机辅助疟疾寄生虫检测模型,该模型具有较高的分类准确率。在该方法中,使用双侧滤波技术对血液涂片图像进行预处理,其中使用卷积神经网络提取特征。通过改进的灰狼优化选择这些特征,并使用支持向量机对图像进行分类。为了评估所提出技术的效率,利用NIH疟疾数据集,并将结果与现有方法在准确性、F-Measure、召回率、精密度和特异性方面进行比较。结果表明,所提出的方案是准确的,可以更有助于病理学家可靠的寄生虫检测。
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Malaria parasite detection on microscopic blood smear images with integrated deep learning algorithms
Malaria is a deadly syndrome formed by the Plasmodium parasite that spreads through the bite of infected Anopheles mosquitoes. There are several drugs to cure malaria but it is difficult to detect due to inadequate equipment and technology. Microscopic check-ups of blood smear images by experts help to detect malaria-infected parasites accurately. However, manual analysis is tedious and time-consuming as the experts have to deal with many cases. This paper presents computer assisted malaria parasite detection model by classifying the blood smear image with hybrid deep learning methods that have high accuracy for classification. In the proposed approach the blood smear images are pre-processed using bilateral filtering technique in which features are extracted with the convolutional neural network. These features are selected by the improved grey-wolf optimization, and image classification is performed with the support vector machine. To evaluate the efficiency of the proposed technique, the NIH malaria dataset is utilized and the results are compared with existing approaches in terms of accuracy, F-Measure, recall, precision, and specificity. The outcome reveals that the proposed scheme is accurate and can be more helpful to pathologists for reliable parasite detection.
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