School of Engineering Science, University of Science and Technology of China, Hefei 230027, China; Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei 230088, China; School of Biomedical Engineering, University of Science and Technology of China, Suzhou 215123, China.
Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei 230088, China; National Engineering Laboratory for Brain-inspired Intelligence Technology and Application, University of Science and Technology of China, Hefei 230027, China.
J Neurosci Methods. 2023 Nov 1;399:109966. doi: 10.1016/j.jneumeth.2023.109966. Epub 2023 Sep 2.
Imaging and reconstruction of the morphology of neurons within the entire central nervous system (CNS) is important for deciphering the neural circuitry and related brain functions. With combination of tissue clearing and light sheet microscopy, previous studies have imaged the mouse CNS at cellular resolution, while remaining single axons unresolvable due to the tradeoff between sample size and imaging resolution. This could be improved by sectioning the sample into thick slices and imaged with high resolution light sheet microscopy as described in our previous study. However, the achievable quality for 3D imaging of serial thick slices is often hindered by surface undulation and other artifacts introduced by sectioning and handling limitations.
In order to improve the imaging quality for mouse CNS, we develop a high-performance vibratome system for sample sectioning and handling automation. The sectioning mechanism of the system was modeled theoretically and verified experimentally. The effects of process parameters and sample properties on sectioning accuracy were studied to optimize the sectioning outcome. The resultant imaging outcome was demonstrated on mouse samples.
Our theoretical model of vibratome effectively depicts the relationship between the sample surface undulation errors and the sectioning parameters. With the guidance of the theoretical model, the vibratome is able to achieve a local surface undulation error of ±0.5 µm and a surface arithmetic mean deviation (Sa) of 220 nm for 300-μm-thick tissue slices. Imaging results of mouse CNS show the continuous sectioning capability of the vibratome.
Our automatic sectioning and handling system is able to process serial thick slices for 3D imaging of the whole CNS at a single-axon resolution, superior to the commercially available vibratome devices.
Our automatic sectioning and handling system can be optimized to prepare thick sample slices with minimal surface undulation and manual manipulation in support of 3D brain mapping with high-throughput and high-accuracy.
对整个中枢神经系统(CNS)内神经元形态的成像和重建对于破译神经回路和相关脑功能非常重要。通过组织透明化和光片显微镜相结合,以前的研究已经以细胞分辨率对小鼠 CNS 进行了成像,而由于样品尺寸和成像分辨率之间的权衡,仍然无法分辨单个轴突。这可以通过将样品切成厚片并使用我们之前研究中描述的高分辨率光片显微镜进行成像来改善。然而,由于切片和处理限制引入的表面波动和其他伪影,用于厚片连续 3D 成像的可实现质量通常受到阻碍。
为了提高小鼠 CNS 的成像质量,我们开发了一种用于样本切片和处理自动化的高性能切片机系统。该系统的切片机制进行了理论建模并通过实验验证。研究了工艺参数和样品性质对切片精度的影响,以优化切片结果。在小鼠样本上展示了所得的成像结果。
我们的切片机理论模型有效地描述了样本表面波动误差与切片参数之间的关系。在理论模型的指导下,切片机能实现 300-μm 厚组织切片局部表面波动误差为±0.5 µm,表面算术平均偏差(Sa)为 220nm。小鼠 CNS 的成像结果显示了切片机的连续切片能力。
我们的自动切片和处理系统能够以单轴分辨率处理连续的厚切片,用于整个 CNS 的 3D 成像,优于市售的切片机设备。
我们的自动切片和处理系统可以进行优化,以最小的表面波动和手动操作制备厚样品切片,支持高通量和高精度的 3D 脑图谱绘制。