Wiesner David, Suk Julian, Dummer Sven, Nečasová Tereza, Ulman Vladimír, Svoboda David, Wolterink Jelmer M
Centre for Biomedical Image Analysis, Masaryk University, Brno, Czech Republic.
Department of Applied Mathematics & Technical Medical Centre, University of Twente, Enschede, The Netherlands.
Med Image Anal. 2024 Jan;91:102991. doi: 10.1016/j.media.2023.102991. Epub 2023 Oct 5.
Data-driven cell tracking and segmentation methods in biomedical imaging require diverse and information-rich training data. In cases where the number of training samples is limited, synthetic computer-generated data sets can be used to improve these methods. This requires the synthesis of cell shapes as well as corresponding microscopy images using generative models. To synthesize realistic living cell shapes, the shape representation used by the generative model should be able to accurately represent fine details and changes in topology, which are common in cells. These requirements are not met by 3D voxel masks, which are restricted in resolution, and polygon meshes, which do not easily model processes like cell growth and mitosis. In this work, we propose to represent living cell shapes as level sets of signed distance functions (SDFs) which are estimated by neural networks. We optimize a fully-connected neural network to provide an implicit representation of the SDF value at any point in a 3D+time domain, conditioned on a learned latent code that is disentangled from the rotation of the cell shape. We demonstrate the effectiveness of this approach on cells that exhibit rapid deformations (Platynereis dumerilii), cells that grow and divide (C. elegans), and cells that have growing and branching filopodial protrusions (A549 human lung carcinoma cells). A quantitative evaluation using shape features and Dice similarity coefficients of real and synthetic cell shapes shows that our model can generate topologically plausible complex cell shapes in 3D+time with high similarity to real living cell shapes. Finally, we show how microscopy images of living cells that correspond to our generated cell shapes can be synthesized using an image-to-image model.
生物医学成像中数据驱动的细胞跟踪和分割方法需要多样且信息丰富的训练数据。在训练样本数量有限的情况下,可以使用合成的计算机生成数据集来改进这些方法。这需要使用生成模型合成细胞形状以及相应的显微镜图像。为了合成逼真的活细胞形状,生成模型使用的形状表示应该能够准确地表示细胞中常见的精细细节和拓扑变化。三维体素掩码在分辨率上受限,多边形网格不容易对细胞生长和有丝分裂等过程进行建模,无法满足这些要求。在这项工作中,我们建议将活细胞形状表示为通过神经网络估计的带符号距离函数(SDF)的水平集。我们优化一个全连接神经网络,以在三维加时间域中的任何点提供SDF值的隐式表示,该表示以从细胞形状旋转中解缠的学习潜在代码为条件。我们在表现出快速变形的细胞(杜氏阔沙蚕)、生长和分裂的细胞(秀丽隐杆线虫)以及具有生长和分支丝状伪足突起的细胞(A549人肺癌细胞)上证明了这种方法的有效性。使用真实和合成细胞形状的形状特征和骰子相似系数进行的定量评估表明,我们的模型可以在三维加时间中生成拓扑合理的复杂细胞形状,与真实活细胞形状高度相似。最后,我们展示了如何使用图像到图像模型合成与我们生成的细胞形状相对应的活细胞显微镜图像。