IVCVMED-PHSep 28, 2020

High-throughput molecular imaging via deep learning enabled Raman spectroscopy

arXiv:2009.13318v1105 citations
Originality Incremental advance
AI Analysis

This addresses the bottleneck of high-throughput molecular imaging for biomedical applications, representing a strong incremental advance with specific gains.

The paper tackled the slow data acquisition problem in Raman spectroscopy by developing a deep learning framework called DeepeR, which achieved up to 160x speed-ups in imaging, enabling high-resolution cellular imaging in under one minute with a 9x improvement in mean squared error for denoising.

Raman spectroscopy enables non-destructive, label-free imaging with unprecedented molecular contrast but is limited by slow data acquisition, largely preventing high-throughput imaging applications. Here, we present a comprehensive framework for higher-throughput molecular imaging via deep learning enabled Raman spectroscopy, termed DeepeR, trained on a large dataset of hyperspectral Raman images, with over 1.5 million spectra (400 hours of acquisition) in total. We firstly perform denoising and reconstruction of low signal-to-noise ratio Raman molecular signatures via deep learning, with a 9x improvement in mean squared error over state-of-the-art Raman filtering methods. Next, we develop a neural network for robust 2-4x super-resolution of hyperspectral Raman images that preserves molecular cellular information. Combining these approaches, we achieve Raman imaging speed-ups of up to 160x, enabling high resolution, high signal-to-noise ratio cellular imaging in under one minute. Finally, transfer learning is applied to extend DeepeR from cell to tissue-scale imaging. DeepeR provides a foundation that will enable a host of higher-throughput Raman spectroscopy and molecular imaging applications across biomedicine.

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