荧光显微镜图像中粒子检测与跟踪的深度学习

Christian Ritter, Roman Spilger, Ji Young Lee, R. Bartenschlager, K. Rohr
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引用次数: 3

摘要

跟踪亚细胞结构显示为斑点在荧光显微镜图像是重要的量化病毒和细胞过程。我们开发了一种新的生物粒子跟踪方法,该方法将深度学习用于粒子检测和粒子关联。我们的方法结合了用于粒子检测的自适应反卷积网络和用于跟踪的基于lstm的递归神经网络。双向lstm利用正向和反向的过去和未来信息,并在多个检测中共同确定分配概率。我们使用颗粒跟踪挑战的图像序列以及丙型肝炎病毒蛋白的活细胞荧光显微镜数据来评估所提出的方法。事实证明,与以前的方法相比,我们的方法产生了最先进的结果或改善了结果。
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Deep Learning For Particle Detection And Tracking In Fluorescence Microscopy Images
Tracking of subcellular structures displayed as spots in fluorescence microscopy images is important to quantify viral and cellular processes. We have developed a novel tracking approach for biological particles which uses deep learning for both particle detection and particle association. Our approach combines a domain adapted Deconvolution Network for particle detection with an LSTM-based recurrent neural network for tracking. Past and future information in both forward and backward direction is exploited by bidirectional LSTMs, and assignment probabilities are determined jointly across multiple detections. We evaluated the proposed approach using image sequences of the Particle Tracking Challenge as well as live cell fluorescence microscopy data of hepatitis C virus proteins. It turned out that our approach yields state-of-the-art results or improves the results compared to previous methods.
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