高通量质谱成像中动态稀疏采样的深度学习方法。

David Helminiak, Hang Hu, Julia Laskin, Dong Hye Ye
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引用次数: 8

摘要

一种用于动态采样的监督学习方法(SLADS)通过将随机过程纳入压缩感知方法来解决传统问题。从样本重建中提取统计特征,用回归模型估计熵降,以便动态确定最佳采样位置。这项工作引入了一种增强的SLADS方法,以动态采样(DLADS)的深度学习方法的形式,显示出与传统的直线扫描相比,高保真重建的样本采集时间减少了~ 70-80%。这些改进在使用纳米喷雾解吸电喷雾电离(纳米desi)质谱成像(MSI)获得的小鼠子宫和肾脏组织的尺寸不对称、高分辨率分子图像中得到了证明。训练集创建的方法进行了调整,以减轻使用先前的SLADS方法时产生的拉伸工件。过渡到DLADS消除了特征提取的需要,并进一步利用卷积层来利用像素间的空间关系。此外,尽管训练和测试数据不同,DLADS仍显示出有效的泛化。总的来说,DLADS被证明可以最大限度地提高纳米desi MSI的潜在实验吞吐量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Approach for Dynamic Sparse Sampling for High-Throughput Mass Spectrometry Imaging.

A Supervised Learning Approach for Dynamic Sampling (SLADS) addresses traditional issues with the incorporation of stochastic processes into a compressed sensing method. Statistical features, extracted from a sample reconstruction, estimate entropy reduction with regression models, in order to dynamically determine optimal sampling locations. This work introduces an enhanced SLADS method, in the form of a Deep Learning Approach for Dynamic Sampling (DLADS), showing reductions in sample acquisition times for high-fidelity reconstructions between ~ 70-80% over traditional rectilinear scanning. These improvements are demonstrated for dimensionally asymmetric, high-resolution molecular images of mouse uterine and kidney tissues, as obtained using Nanospray Desorption ElectroSpray Ionization (nano-DESI) Mass Spectrometry Imaging (MSI). The methodology for training set creation is adjusted to mitigate stretching artifacts generated when using prior SLADS approaches. Transitioning to DLADS removes the need for feature extraction, further advanced with the employment of convolutional layers to leverage inter-pixel spatial relationships. Additionally, DLADS demonstrates effective generalization, despite dissimilar training and testing data. Overall, DLADS is shown to maximize potential experimental throughput for nano-DESI MSI.

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