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首页> 外文期刊>Frontiers in Public Health >Identification of Snails and Schistosoma of Medical Importance via Convolutional Neural Networks: A Proof-of-Concept Application for Human Schistosomiasis
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Identification of Snails and Schistosoma of Medical Importance via Convolutional Neural Networks: A Proof-of-Concept Application for Human Schistosomiasis

机译:卷积神经网络鉴定蜗牛和医学重要性的血吸虫:人类血吸虫病的概念证据应用

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In recent decades, computer vision has proven remarkably effective in addressing diverse issues in public health, from determining the diagnosis, prognosis, and treatment of diseases in humans to predicting infectious disease outbreaks. Here, we investigate whether convolutional neural networks (CNNs) can also demonstrate effectiveness in classifying the environmental stages of parasites of public health importance and their invertebrate hosts. We used schistosomiasis as a reference model. Schistosomiasis is a debilitating parasitic disease transmitted to humans via snail intermediate hosts. The parasite affects more than 200 million people in tropical and subtropical regions. We trained our CNN, a feed-forward neural network, on a limited dataset of 5,500 images of snails and 5,100 images of cercariae obtained from schistosomiasis transmission sites in the Senegal River Basin, a region in western Africa that is hyper-endemic for the disease. The image set included both images of two snail genera that are relevant to schistosomiasis transmission – that is, Bulinus spp. and Biomphalaria pfeifferi – as well as snail images that are non-component hosts for human schistosomiasis. Cercariae shed from Bi. pfeifferi and Bulinus spp. snails were classified into 11 categories, of which only two, S. haematobium and S. mansoni , are major etiological agents of human schistosomiasis. The algorithms, trained on 80% of the snail and parasite dataset, achieved 99% and 91% accuracy for snail and parasite classification, respectively, when used on the hold-out validation dataset – a performance comparable to that of experienced parasitologists. The promising results of this proof-of-concept study suggests that this CNN model, and potentially similar replicable models, have the potential to support the classification of snails and parasite of medical importance. In remote field settings where machine learning algorithms can be deployed on cost-effective and widely used mobile devices, such as smartphones, these models can be a valuable complement to laboratory identification by trained technicians. Future efforts must be dedicated to increasing dataset sizes for model training and validation, as well as testing these algorithms in diverse transmission settings and geographies.
机译:近几十年来,计算机愿景已经证明,在解决公共卫生的各种问题方面,从确定人类疾病的疾病诊断,预测和治疗预测传染病爆发的疾病的疾病显着有效。在这里,我们研究了卷积神经网络(CNNS)是否也可以证明对公共卫生寄生虫的环境阶段和无脊椎动物宿主进行分类的有效性。我们将血吸虫病用作参考模型。血吸虫病是一种衰弱的寄生疾病,通过蜗牛中间体宿主传播给人类。寄生虫在热带和亚热带地区影响了200多万人。我们培训了我们的CNN,前馈神经网络,在5,500个蜗牛图像图像的有限数据集上,从塞内加尔河流域的血吸虫病传输地点获得了5,500粒植物体,这是西非的地区,这是该疾病的超流域。图像集包括两种与血吸虫病传输相关的蜗牛属的图像 - 即Bulinus SPP。和生物pphalararia pfeifferi - 以及对人血吸虫病的非组分宿主的蜗牛图像。紫藤属于bi。 pfeifferi和bulinus spp。蜗牛分为11个类别,其中只有两个,S. haemoobium和S. mansoni,是人血吸虫病的主要原因。在80%的蜗牛和寄生虫数据集上培训的算法,分别在扑入验证数据集上使用了蜗牛和寄生虫分类的99%和91%的准确性 - 与经验丰富的寄生学家相当的性能。这种概念证明研究的有希望的结果表明,这种CNN模型和潜在类似的可复制模型有可能支持蜗牛的分类和医疗重要性的寄生虫。在远程现场设置中,可以在经济高效和广泛使用的移动设备上部署机器学习算法,例如智能手机,这些模型可以是由培训的技术人员对实验室识别的有价值补充。未来的努力必须致力于增加数据集大小以进行模型培训和验证,以及在不同传输设置和地理标记中测试这些算法。

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