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Human-level blood cell counting on lens-free shadow images exploiting deep neural networks

机译:在利用深神经网络的无透镜阴影图像上计数人级血细胞

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摘要

In point-of-care testing, in-line holographic microscopes paved the way for realizing portable cell counting systems at marginal cost. To maximize their accuracy, it is critically important to reliably count the number of cells even in noisy blood images overcoming various problems due to out-of-focus blurry cells and background brightness variations. However, previous studies could detect cells only on clean images while they failed to accurately distinguish blurry cells from background noises. To address this problem, we present a human-level blood cell counting system by synergistically integrating the methods of normalized cross-correlation (NCC) and a convolutional neural network (CNN). Our comprehensive performance evaluation demonstrates that the proposed system achieves the highest level of accuracy (96.7-98.4%) for any kinds of blood cells on a lens-free shadow image while others suffer from significant accuracy degradations (12.9-38.9%) when detecting blurry cells. Moreover, it outperforms others by up to 36.8% in accurately analyzing noisy blood images and is 24.0-40.8x faster, thus maximizing both accuracy and computational efficiency.
机译:在护理点测试中,在线全息显微镜铺平了以边缘成本实现便携式电池计数系统的方式。为了最大化其准确性,即使在嘈杂的血液图像中可靠地计算细胞数量克服巨大的血液图像,克服焦点外模糊细胞和背景亮度变化。然而,之前的研究可以仅在清洁图像上检测细胞,同时他们未能准确地区分背景噪声。为了解决这个问题,我们通过协同整合归一化互相关(NCC)和卷积神经网络(CNN)的方法来提出人级血细胞计数系统。我们的综合性能评估表明,拟议的系统在无透镜阴影图像上的任何种类血细胞上实现了最高的准确性(96.7-98.4%),而其他系统在检测模糊时患有显着的准确性降解(12.9-38.9%)细胞。此外,它在准确分析嘈杂的血液图像方面优于36.8%,并且速度更快,更快,从而最大限度地提高了准确性和计算效率的36.0-40.8倍。

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