Killeen Andrew, Bertrand Thibault, Lee Chiu Fan
Department of Bioengineering, Imperial College London, South Kensington Campus, London, United Kingdom.
Department of Mathematics, Imperial College London, South Kensington Campus, London, United Kingdom.
Biophys Rep (N Y). 2024 Jan 9;4(1):100142. doi: 10.1016/j.bpr.2024.100142. eCollection 2024 Mar 13.
Active nematics is an emerging paradigm for characterizing biological systems. One aspect of particularly intense focus is the role active nematic defects play in these systems, as they have been found to mediate a growing number of biological processes. Accurately detecting and classifying these defects in biological systems is, therefore, of vital importance to improving our understanding of such processes. While robust methods for defect detection exist for systems of elongated constituents, other systems, such as epithelial layers, are not well suited to such methods. Here, we address this problem by developing a convolutional neural network to detect and classify nematic defects in confluent cell layers. Crucially, our method is readily implementable on experimental images of cell layers and is specifically designed to be suitable for cells that are not rod shaped, which we demonstrate by detecting defects on experimental data using the trained model. We show that our machine learning model outperforms current defect detection techniques and that this manifests itself in our method as requiring less data to accurately capture defect properties. This could drastically improve the accuracy of experimental data interpretation while also reducing costs, advancing the study of nematic defects in biological systems.
活性向列相是一种用于表征生物系统的新兴范式。特别受关注的一个方面是活性向列相缺陷在这些系统中所起的作用,因为人们发现它们介导了越来越多的生物过程。因此,在生物系统中准确检测和分类这些缺陷对于增进我们对这类过程的理解至关重要。虽然对于细长成分的系统存在强大的缺陷检测方法,但其他系统,如上皮层,并不适合此类方法。在这里,我们通过开发一种卷积神经网络来检测和分类汇合细胞层中的向列相缺陷,解决了这个问题。至关重要的是,我们的方法可以很容易地在细胞层的实验图像上实现,并且专门设计用于适用于非杆状的细胞,我们通过使用训练模型检测实验数据上的缺陷来证明这一点。我们表明,我们的机器学习模型优于当前的缺陷检测技术,这在我们的方法中表现为需要更少的数据就能准确捕捉缺陷特性。这可以大幅提高实验数据解释的准确性,同时降低成本,推动生物系统中向列相缺陷的研究。