论文标题
Distnet:通过位移回归进行深度跟踪:应用于母机中生长的细菌
DistNet: Deep Tracking by displacement regression: application to bacteria growing in the Mother Machine
论文作者
论文摘要
母机是一种流行的微流体装置,可通过显微镜并行对数千个细胞进行长期延时成像。它已成为单细胞水平定量分析和表征许多细胞过程的有价值的工具,例如基因表达和调节,诱变或对抗生素的反应。现在,该实验生成的大量数据的自动和定量分析现在是限制步骤。特别是在相对比显微镜中成像的细菌细胞的分割和跟踪 - 与高通量数据兼容的错误率是一个具有挑战性的问题。 在这项工作中,我们描述了多对象跟踪问题的一种新颖的表述,其中通过细菌位移的回归进行跟踪,尽管它们会随着时间的推移而生长和分裂,但可以同时跟踪多种细菌。我们的方法执行共同分割和跟踪,利用顺序信息以提高分割精度。 我们介绍了一个深层的神经网络体系结构,利用了一种自我发挥的机制,该机制产生了极低的跟踪错误率和分段错误率。与最先进的方法相比,我们证明了卓越的性能和速度。我们的方法命名为Distnet,代表距离+位移分割和跟踪网络。 尽管该方法特别适合母机显微镜数据,但其一般的关节跟踪和分割公式可以应用于许多其他几何形状的其他问题。
The mother machine is a popular microfluidic device that allows long-term time-lapse imaging of thousands of cells in parallel by microscopy. It has become a valuable tool for single-cell level quantitative analysis and characterization of many cellular processes such as gene expression and regulation, mutagenesis or response to antibiotics. The automated and quantitative analysis of the massive amount of data generated by such experiments is now the limiting step. In particular the segmentation and tracking of bacteria cells imaged in phase-contrast microscopy---with error rates compatible with high-throughput data---is a challenging problem. In this work, we describe a novel formulation of the multi-object tracking problem, in which tracking is performed by a regression of the bacteria's displacement, allowing simultaneous tracking of multiple bacteria, despite their growth and division over time. Our method performs jointly segmentation and tracking, leveraging sequential information to increase segmentation accuracy. We introduce a Deep Neural Network architecture taking advantage of a self-attention mechanism which yields extremely low tracking error rate and segmentation error rate. We demonstrate superior performance and speed compared to state-of-the-art methods. Our method is named DiSTNet which stands for DISTance+DISplacement Segmentation and Tracking Network. While this method is particularly well suited for mother machine microscopy data, its general joint tracking and segmentation formulation could be applied to many other problems with different geometries.