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Rapid Detection of Bacteria Using Raman Spectroscopy and Deep Learning

机译:利用拉曼光谱和深度学习快速检测细菌

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Bacteria identification can be a time-consuming process. Machine learning algorithms that use deep convolutional neural networks (CNNs) provide a promising alternative. Here, we present a deep learning based approach paired with Raman spectroscopy to rapidly and accurately detect the identity of a bacteria class. We propose a simple 4-layer CNN architecture and use a 30-class bacteria isolate dataset for training and testing. We achieve an identification accuracy of around 86% with identification speeds close to real-time. This optical/biological detection method is promising for applications in the detection of microbes in liquid biopsies and concentrated environmental liquid samples, where fast and accurate detection is crucial. This study uses a recently published dataset of Raman spectra from bacteria samples and an improved CNN model built with TensorFlow. Results show improved identification accuracy and reduced network complexity.
机译:细菌鉴定可以是耗时的过程。使用深卷积神经网络(CNNS)的机器学习算法提供了有希望的替代方案。在这里,我们介绍了一种基于深度学习的方法,与拉曼光谱配对,快速,准确地检测细菌类的身份。我们提出了一个简单的4层CNN架构,并使用30级细菌隔离数据集进行培训和测试。我们达到约86%的识别准确性,识别速度接近实时。该光/生物检测方法对液体活组织检查和浓缩环境液体样品中的微生物检测的应用是有前途的,其中快速和准确的检测至关重要。该研究使用来自细菌样本的最近公开的拉曼光谱数据集和用纹orflow构建的改进的CNN模型。结果显示出改善的识别精度和降低的网络复杂性。

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