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Deep Cytometry: Deep learning with Real-time Inference in Cell Sorting and Flow Cytometry

机译:深细胞学:深度学习,具有电池分选和流式细胞术的实时推断

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Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It outperforms other machine learning algorithms in problems where large amounts of data are available. In the area of measurement technology, instruments based on the photonic time stretch have established record real-time measurement throughput in spectroscopy, optical coherence tomography, and imaging flow cytometry. These extreme-throughput instruments generate approximately 1 Tbit/s of continuous measurement data and have led to the discovery of rare phenomena in nonlinear and complex systems as well as new types of biomedical instruments. Owing to the abundance of data they generate, time-stretch instruments are a natural fit to deep learning classification. Previously we had shown that high-throughput label-free cell classification with high accuracy can be achieved through a combination of time-stretch microscopy, image processing and feature extraction, followed by deep learning for finding cancer cells in the blood. Such a technology holds promise for early detection of primary cancer or metastasis. Here we describe a new deep learning pipeline, which entirely avoids the slow and computationally costly signal processing and feature extraction steps by a convolutional neural network that directly operates on the measured signals. The improvement in computational efficiency enables low-latency inference and makes this pipeline suitable for cell sorting via deep learning. Our neural network takes less than a few milliseconds to classify the cells, fast enough to provide a decision to a cell sorter for real-time separation of individual target cells. We demonstrate the applicability of our new method in the classification of OT-II white blood cells and SW-480 epithelial cancer cells with more than 95% accuracy in a label-free fashion.
机译:深度学习在图像和语音识别和综合方面取得了壮观的性能。它在可能提供大量数据的问题中表现出其他机器学习算法。在测量技术领域,基于光子时间拉伸的仪器已经建立了光谱,光学相干断层扫描和成像流式细胞术中的记录实时测量产量。这些极端吞吐量的仪器产生了大约1个Tbit / s的连续测量数据,并导致了非线性和复杂系统中的罕见现象以及新类型的生物医学仪器。由于它们产生的数据丰富,时间拉伸仪器是一种自然适合深入学习分类。以前我们已经表明,通过时拉显微镜,图像处理和特征提取的组合可以实现高精度的高吞吐量标签的细胞分类,然后深入学习血液中的癌细胞。这种技术具有早期检测原发性癌症或转移的承担。在这里,我们描述了一种新的深度学习管道,其完全避免了直接在测量信号上直接操作的卷积神经网络的慢速和计算昂贵的信号处理和特征提取步骤。计算效率的提高使得能够通过深度学习来进行低延迟推断并使该管道适用于细胞分类。我们的神经网络少于几毫秒来对细胞进行分类,足以提供对细胞分选机的决定,以便实时分离各个靶细胞。我们展示了我们的新方法在OT-II白细胞和SW-480上皮癌细胞的分类中具有超过95%的可标记时尚的精度。

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