Department of Electrical Engineering, Stanford University, Stanford, CA 94305, USA.
Department of Bioengineering, Stanford University, Stanford, CA 94305, USA.
Int J Mol Sci. 2024 May 17;25(10):5473. doi: 10.3390/ijms25105473.
Cryogenic electron tomography (cryoET) is a powerful tool in structural biology, enabling detailed 3D imaging of biological specimens at a resolution of nanometers. Despite its potential, cryoET faces challenges such as the missing wedge problem, which limits reconstruction quality due to incomplete data collection angles. Recently, supervised deep learning methods leveraging convolutional neural networks (CNNs) have considerably addressed this issue; however, their pretraining requirements render them susceptible to inaccuracies and artifacts, particularly when representative training data is scarce. To overcome these limitations, we introduce a proof-of-concept unsupervised learning approach using coordinate networks (CNs) that optimizes network weights directly against input projections. This eliminates the need for pretraining, reducing reconstruction runtime by 3-20× compared to supervised methods. Our in silico results show improved shape completion and reduction of missing wedge artifacts, assessed through several voxel-based image quality metrics in real space and a novel directional Fourier Shell Correlation (FSC) metric. Our study illuminates benefits and considerations of both supervised and unsupervised approaches, guiding the development of improved reconstruction strategies.
低温电子断层扫描(cryoET)是结构生物学的有力工具,能够以纳米级的分辨率对生物样本进行详细的 3D 成像。尽管 cryoET 具有潜力,但它面临着诸如缺失楔形问题等挑战,由于不完全的数据采集角度,限制了重建质量。最近,利用卷积神经网络(CNNs)的监督深度学习方法在很大程度上解决了这个问题;然而,它们的预训练要求使得它们容易出现不准确和伪影,特别是当代表性训练数据稀缺时。为了克服这些限制,我们引入了一种使用坐标网络(CNs)的概念验证无监督学习方法,该方法直接针对输入投影优化网络权重。这消除了预训练的需要,与监督方法相比,重建运行时间减少了 3-20 倍。我们的计算机模拟结果表明,通过在实空间中使用几种基于体素的图像质量度量和一种新的方向傅里叶壳相关(FSC)度量来评估,形状完成度得到了改善,并且缺失楔形伪影减少了。我们的研究阐明了监督和无监督方法的优势和考虑因素,为改进重建策略的发展提供了指导。