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An application of transfer learning to neutrophil cluster detection for tuberculosis: Efficient implementation with nonmetric multidimensional scaling and sampling

机译:迁移学习在结核病嗜中性粒细胞簇检测中的应用:非度量多维标度和采样的有效实现

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A neutrophil is a type of white blood cell that is responsible for killing pathogenic bacteria but may simultaneously damage host tissue. We established a method to automatically detect neutrophils from slides stained with hematoxylin and eosin (H&E). because there is growing evidence that neutrophils, which respond to Mycobacterium tuberculosis, are cellular biomarkers of lung damage in tuberculosis. The proposed method relies on transfer learning to reuse features extracted from the activation of a deep convolutional network trained on a large dataset. We present a methodology to identify the correct tile size, magnification, and the number of tiles using multidimensional scaling to efficiently train the final layer of this pre-trained network. The method was trained on tiles acquired from 12 whole slide images, resulting in an average accuracy of 93.0%. The trained system successfully identified all neutrophil clusters on an independent dataset of 53 images. The method can be used to automatically, accurately, and efficiently count the number of neutrophil sites in regions-of-interest extracted from whole slide images.
机译:中性粒细胞是一种白细胞,负责杀死病原性细菌,但同时会破坏宿主组织。我们建立了一种从苏木精和曙红(H&E)染色的载玻片上自动检测中性粒细胞的方法。因为越来越多的证据表明,对结核分枝杆菌有反应的中性粒细胞是肺结核中肺损伤的细胞生物标志物。所提出的方法依赖于转移学习来重用从在大型数据集上训练的深度卷积网络的激活中提取的特征。我们提供一种使用多维缩放来有效训练此预训练网络的最后一层的方法,以识别正确的图块大小,放大倍数和图块数量。该方法在从12张完整幻灯片图像获取的图块上进行了训练,平均准确度为93.0%。训练有素的系统成功地在独立的53张图像数据集中识别了所有中性粒细胞簇。该方法可用于自动,准确和有效地计算从整个幻灯片图像中提取的感兴趣区域中的中性粒细胞位点的数量。

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