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Smartphone-Supported Malaria Diagnosis Based on Deep Learning

机译:智能手机支持的疟疾诊断基于深度学习

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Malaria remains a major burden on global health, causing about half a million deaths every year. The objective of this work is to develop a fast, automated, smartphone-supported malaria diagnostic system. Our proposed system is the first system using both image processing and deep learning methods on a smartphone to detect malaria parasites in thick blood smears. The underlying detection algorithm is based on an iterative method for parasite candidate screening and a convolutional neural network model (CNN) for feature extraction and classification. The system runs on Android phones and can process blood smear images taken by the smartphone camera when attached to the eyepiece of a microscope. We tested the system on 50 normal patients and 150 abnormal patients. The accuracies of the system on patch-level and patient-level are 97% and 78%, respectively. AUC values on patch-level and patient-level are, respectively, 98% and 85%. Our system could aid in malaria diagnosis in resource-limited regions, without depending on extensive diagnostic expertise or expensive diagnostic equipment.
机译:疟疾仍然是对全球健康造成严重负担,每年造成约一万人死亡的一半。这项工作的目的是开发一种快速,自动,智能手机支持的疟疾诊断系统。我们提出的系统是使用智能手机上的两个图像处理和深度学习的方法来检测厚血涂片疟原虫的第一个系统。底层检测算法是基于用于寄生虫候选筛选和用于特征提取和分类的卷积神经网络模型(CNN)的迭代方法。 Android手机上的系统运行,并可以处理由智能电话相机拍摄血涂片图像时附连到显微镜的目镜。我们测试系统上的50名正常患者和150例异常。上补丁级别和患者水平的系统的准确度是97%和78%,分别。上补丁级别和患者水平AUC值分别是98%和85%。我们的系统可以帮助在资源有限的地区疟疾诊断,而不依赖于广泛的诊断知识或昂贵的诊断设备。

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