Abstract
The mammalian brain is a highly complex network that consists of millions to billions of densely-interconnected neurons. Precise dissection of neural circuits at the mesoscopic level can provide important structural information for understanding the brain. Optical approaches can achieve submicron lateral resolution and achieve “optical sectioning” by a variety of means, which has the natural advantage of allowing the observation of neural circuits at the mesoscopic level. Automated whole-brain optical imaging methods based on tissue clearing or histological sectioning surpass the limitation of optical imaging depth in biological tissues and can provide delicate structural information in a large volume of tissues. Combined with various fluorescent labeling techniques, whole-brain optical imaging methods have shown great potential in the brain-wide quantitative profiling of cells, circuits, and blood vessels. In this review, we summarize the principles and implementations of various whole-brain optical imaging methods and provide some concepts regarding their future development.
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Introduction
The brain is the evolutionary pinnacle of life, controlling all aspects of the lives of humans. Numerous individuals have long hoped to decipher the mystery of how the brain works, but to date, we have yet to reveal the basic mechanisms underlying memory, thought, and consciousness. The current limited understanding of brain structure and function has resulted in a lack of effective drugs and treatments for brain disorders such as Alzheimer’s disease and Parkinson’s disease while hindering the development of brain-inspired intelligent technology. Detailed mapping of the anatomical architecture of brain cells and their brain-wide connectivity is an essential condition for elucidating how the brain works [1,2,3,4]. Efforts to “map the brain” have been ongoing for more than a century. In 1906, the Spanish neurobiologist Santiago Ramón y Cajal was awarded the Nobel Prize for his work on depicting the structure of neurons and their connections, which laid the foundation of modern neuroscience [5]. The German anatomist Korbinian Brodmann conducted a detailed study of the cortex, observing how its layers, tissues, neurons, and other cells vary in structure and size. The result was the definition of the Broadman areas, which included 52 cortical areas [6]. Based on serial histological sections, the Jülich Research Centre created a 3D probabilistic atlas of the human brain in 2020 [7], which can be further integrated with multimodal neuroimaging [8]. All these studies have extensively advanced the development of brain science.
At the macroscopic level, neuroimaging techniques such as magnetic resonance imaging (MRI), functional MRI (fMRI), and diffusion tensor imaging (DTI) have vastly increased our knowledge of the functional and structural organization of the human brain [9,10,11,12]. Nevertheless, these methods fail to capture fine structural and cellular organization due to their limited spatial resolution. At the microscopic level, electron microscopes (EMs) can provide information about structure at superresolutions of nanometers [13,14,15] but are limited by the low scanning speed, so 3D neuronal mapping of the whole mouse brain is not possible.
At the mesoscopic level, the lateral resolution of optical imaging methods can reach the submicron level, allowing resolution of the structure of cells, axons, and dendrites, and having the natural advantage of allowing the determination of neural circuit connectivity. Furthermore, various fluorescence labeling strategies [16,17,18,19,20] have greatly expanded the range of applications of optical imaging technology. However, acquiring images deep inside the brain with optical methods is challenging, as brain tissue is highly heterogeneous and strongly scatters light. In this paper, we review the technical routes and the latest progress in various whole-brain optical imaging methods.
Challenges for Whole-brain Optical Imaging in Neural Circuit Research
The structural organization of the brain is exceptionally complex. Depending on the physical scale of interest, the brain can be divided into lobes, neural circuits, neurons, synapses, and even molecules [21]. Neurons are the basic building blocks of neural circuits; for example, the mouse brain, weighing only ~0.42 g, consists of ~70 million neurons [22,23,24]. The diameters of neuronal somata, arterioles, and venules are approximately tens of microns, while capillaries measure approximately several microns in diameter, and the diameters of dendrites and axon fibers measure 1 micron and below [25, 26]. However, dendrites can cover local areas of hundreds of microns, and axons can extend over long distances, sometimes spanning the whole brain. As a result, to obtain the fine structure of neural circuits, whole-brain imaging must be achieved at micron resolution, spanning several orders of magnitude [27]. This is similar to drawing a world map, which should not only cover the whole world but also accurately depict local details such as the grassroots road networks of each country.
When performing 3D optical imaging of biological tissue, the resulting dataset comprises a series of 2D images obtained by axial step scanning. Each 2D image is obtained by imaging the sample at the focal plane of the detection objective. Spatial resolution refers to the ultimate minimum structural size that a microscope can resolve. In whole-brain optical imaging, the spatial resolution includes the lateral resolution along the focal plane of the detection objective and the axial resolution along the axial direction of the detection objective. The lateral resolution is generally determined by the detection objective, calculated according to the Abbe formula r = λ/(2NA) or the Rayleigh criterion r = 0.61λ/NA [28], where r is the lateral resolution, NA is the numerical aperture of the detection objective, and λ is the imaging wavelength. The axial resolution depends on how the optical sectioning is performed and is generally worse than the lateral resolution.
The spatial resolution is usually measured by imaging standard samples such as fluorescent microspheres [29] or resolution test slides with high sampling rates. However, the resolution deteriorates in the actual imaging process due to the influence of signal intensity and density, background intensity, tissue scattering, and other factors. In addition, to fully utilize the system’s spatial resolution, the sampling interval must be at most one-half the size of the smallest resolvable feature [30]. For actual whole-brain imaging, the voxel size should be selected according to factors including the size of the research subjects, signal intensity, imaging speed, and tissue volume. Table 1 shows the recommended voxel sizes and the estimated amount of data for different research goals.
Nonhuman primates, as species much closer to humans than rodents, are irreplaceable for our understanding of cognitive functions, brain diseases, and therapies [33,34,35,36] but are also very difficult to handle and expensive, and research involving them is time-consuming. By leveraging the species’ reproductive biology and genetic engineering, nonhuman primate brain studies have become an essential part of various international brain projects [37,38,39]. The Japan Brain/MINDS (Brain Mapping by Integrated Neurotechnologies for Disease Studies) [40] and the China Brain Science Project [41] use marmosets and macaques as the primary research objects, respectively. As one of the smallest anthropoid primates, the marmoset brain weighs ~7.78 g and contains ~630 million neurons [23, 24, 42]. The macaque, a long-standing primate model for neuroscience research, has a brain that weighs ~87.35 g and contains ~6.37 billion neurons [23, 42]. Due to their enormous sizes, optical imaging of the whole brains of nonhuman primates is far more difficult than that of mouse brains.
Technical Routes for Achieving Whole-brain Optical Imaging
Due to the scattering and absorption of light by biological tissues, classical optical methods such as confocal and two-photon microscopy have limited imaging depth, reaching only tens to hundreds of microns into the mouse brain [43, 44]. To obtain micron-resolution 3D datasets of centimeter-sized samples, whole-brain optical imaging must solve the following two problems. First, the out-of-focus signal must be suppressed to obtain a single high-resolution 2D image, which can be achieved by various optical sectioning methods such as confocal, two-photon excitation, structured illumination, and light sheet sectioning [43, 45,46,47,48]. The second is to surpass the limitation of optical imaging depth to axially scan large samples. The different existing whole-brain optical imaging techniques can be divided into two technical routes according to the way they overcome the optical imaging depth limit: tissue clearing-based techniques and histological sectioning-based techniques (Fig. 1).
Tissue clearing, a century-old approach [49], refers to a collection of techniques that render biological samples transparent by following the simple rule of refractive index matching to eliminate scattering [50]. However, in practice, the choice of tissue-clearing reagents and design protocols requires consideration of many factors, including molecules of interest, maintenance of sample structures, endogenous fluorescent proteins, and immunolabeling [51]. The tissue-clearing workflows are too numerous and complicated to categorize accurately, but they can be broadly divided into the following modules: fixation, pre-treatment, delipidation, labeling, and refractive index matching [51]. According to the type of reagent used, tissue-clearing approaches can be divided into hydrophobic, hydrophilic, and hydrogel-based methods [18, 52, 53]. Hydrophobic methods, also called solvent-based clearing methods, use organic solvents to achieve fast and complete transparency of the intact sample. However, some hydrophobic techniques can quench the signal of a fluorescent protein. Representative hydrophobic methods include 3D imaging of solvent-cleared organs (3DISCO) [54], immunolabeling-enabled 3DISCO (iDISCO) [55], ultimate 3DISCO (uDISCO) [56], DISCO with superior fluorescence preserving capability (FDISCO) [57], nanobody(VHH)-boosted 3DISCO (vDISCO) [58], stabilized 3DISCO (sDISCO) [59], and polyethylene glycol (PEG)-associated solvent system (PEGASOS) [60]. Hydrophilic methods using water-soluble reagents cannot achieve complete transparency like hydrophobic methods but have better biocompatibility and biosafety with brain tissues. Representative hydrophilic tissue-clearing approaches include FocusClear [61], Scale [62], ScaleS [63], See Deep Brain (SeeDB) [64], See Deep Brain 2 (SeeDB2) [65], rapid clearing method based on Triethanolamine and Formamide (RTF) [66], FRUIT [67], Urea-Based Amino-sugar Mixture (UbasM) [68], Clear, Unobstructed Brain/Body Imaging Cocktails and Computational analysis (CUBIC) [69,70,71,72] and CUBIC-X [73, 74]. Based on the principle of securing biomolecules in situ through covalent crosslinking, hydrogel-based methods convert tissue into synthetic gels using polyacrylamide or into reinforced tissue gels using polyepoxide, followed by delipidation and refractive index matching. Hydrogel-based methods can achieve a good transparency effect, but some technologies require a long incubation time, and the operation protocols are complicated. Representative technologies include CLARITY [75], passive CLARITY technique/perfusion-assisted agent release in situ (PACT/PARS) [76, 77], system-wide control of interaction time and kinetics of chemicals (SWITCH) [78], stabilization to harsh conditions via intramolecular epoxide linkages to prevent degradation (SHIELD) [79], and entangled link-augmented stretchable tissue-hydrogel (ELAST) [80].
Once the tissues are rendered transparent, light-sheet microscopy is the preferred choice for rapid subcellular-resolved volumetric imaging of intact samples. Different from the conventional microscope, the illumination and detection path are separated in a light-sheet microscope [48, 81]. A thin light sheet illuminates the sample from the side to achieve selective fluorescence excitation. The optical axis of the detection arm is perpendicular to the light sheet, and the focal plane of the objective coincides with the light sheet. Except for the time required to move the field of view (FOV), the imaging speed of light-sheet microscopy is limited only by the acquisition rate of the camera. Light-sheet illumination effectively reduces photobleaching and phototoxic effects. The thickness of the light sheet and the NA of the detection objective together determines the axial resolution of light-sheet microscopy. However, to cover the imaging range of the whole mouse brain, thick illumination light sheets and long working-distance, low-NA, large field-of-view detection objectives are generally needed [50, 51, 82].
Another technical route for whole-brain imaging is the combination of block-face imaging with histological sectioning: the restriction of optical imaging depth is overcome by alternating the imaging and sectioning processes. Various optical sectioning methods, including confocal, two-photon excitation, structured illumination, and inverted setup light-sheet microscopy [48], as well as other emerging techniques (chemical sectioning [83], deep learning-based optical sectioning [84], and line-illumination modulation [85]), can be used to obtain images of shallow parts of the sample. Moreover, diverse histological sectioning techniques have been developed for embedding and sectioning the whole mouse brain. For example, resin-embedded sectioning can achieve submicron accuracy [86, 87], agarose-embedded vibrating sectioning can preserve the morphology of the tissue well [88,89,90], cryosectioning or liquid nitrogen milling can maintain the biochemical characteristics of the sample [91, 92], and paraffin-embedded sectioning enables the semithin sectioning of large tissues [93, 94]. The imaging quality and speed of such whole-brain imaging methods largely depend on the selection and implementation of the imaging and sectioning techniques. Due to the time-consuming nature of the tissue sectioning, the imaging speed of such methods is lower than that of tissue-clearing-based, whole-brain imaging methods. Thankfully, however, the sample preparation is simple with this technical route, and higher resolutions and more uniform data quality can be more easily achieved.
Light-sheet Microscopy for Whole-brain Optical Imaging
The concept of perpendicular illumination was first proposed >100 years ago [95] in the observation of colloidal particles. In 2004, Huisken et al. developed selective plane illumination microscopy (SPIM) to generate 3D images of millimeter-sized transparent medaka embryos [96], achieving the first application of light-sheet microscopy in developmental biology. In 2007, Dodt et al. proposed ultramicroscopy combined with a hydrophobic tissue-clearing solution and thus were the first to use light-sheet imaging on artificially transparent mouse brains [97]. Over the past several decades, various light-sheet microscopy techniques have been proposed and have rapidly been applied in biological imaging [48, 81, 98, 99].
The generation of light sheets is a crucial part of implementing light-sheet microscopy. An ideal light sheet has a large lateral extent with a uniformly small axial extent to achieve uniform and thin light-sheet illumination and fluorescence excitation in a wide FOV. However, limited by physical principles and optics, this ideal light sheet is difficult to achieve. Light sheets are typically divided into two categories; static light sheets formed by focusing a Gaussian beam with a cylindrical lens [96] (Fig. 2A) and dynamic light sheets generated by scanning a laser beam across the FOV [100] (Fig. 2B). Non-Gaussian beams such as Bessel beams [101, 102], Airy beams [103], and lattice-based light sheets [104] can be used in dynamic light-sheet implementation to improve the axial resolution of high-speed, volumetric functional imaging. However, Gaussian beams are most commonly used to produce light sheets in practice for imaging large, cleared neural tissue. The optical sectioning resolution of a light-sheet microscope is derived from the product of the illumination and detection point spread functions (PSFs) [48, 81]. For Gaussian beams, a higher-NA illumination objective produces a thinner light sheet and higher axial resolution but with a shorter Rayleigh range and a smaller FOV. In addition, using a high-NA detection objective can increase both the lateral and axial resolution. However, the detection objective NA is limited by geometric and immersion medium constraints and the working distance [81, 105]. Additional practical engineering problems include the inhomogeneity in the depth of the cleared sample and the refractive index mismatch between the sample, solution, air, and container. These trade-offs make it challenging to achieve high-resolution optical sectioning with a large FOV and thus a uniform spatial resolution and image quality over an intact sample of centimeter size.
Ultramicroscopy [97] uses a cylindrical lens to generate a Gaussian static light sheet and two opposing illumination arms to illuminate the sample from both sides. This method has been shown to achieve complete imaging of the excised hippocampus and whole embryonic mouse brain, with an axial resolution of several microns. Saghafi et al. [106] achieved a more uniform light sheet with a longer Rayleigh range using aspheric optics, further improving the imaging quality of ultramicroscopy. Digital scanned laser light-sheet fluorescence microscopy (DSLM) [100], developed by Keller et al. in 2008, was the first technique capable of generating dynamic light sheets by rapidly scanning a micrometer-thin laser beam and was used for the in vivo imaging of zebrafish embryos. This approach improved illumination uniformity, efficiency, and image quality over cylindrical lens-based light-sheet generation schemes. Mertz et al. used an acousto-optic modulator (AOM) to achieve structured illumination during beam scanning. They demonstrated the ability to suppress out-of-focus backgrounds through partial imaging of a cleared mouse brain [107]. The confocal light-sheet microscopy (CLSM) technique [108] proposed by Silvestri et al. used confocal detection to reject background signals but required sophisticated synchronous scanning. Baumgart et al. realized virtual confocal line detection conveniently by synchronizing the rolling shutter of a scientific complementary metal-oxide-semiconductor (sCMOS) camera with the scanning illumination beam [109] (Fig. 2C). The CLARITY-optimized light-sheet microscope (COLM) [110] was designed with double-sided beam scanning illumination and virtual confocal line detection. It can acquire an entire clarified mouse brain dataset in ~4 h with a 10×, 0.6-NA detection objective. Spherical-aberration-assisted extended depth-of-field (SPED) light sheet microscopy [111] extends the field depth by subtly inducing spherical aberrations, enabling high-speed volumetric imaging without needing to scan the detection objective. This technique is capable of rapid subcellular resolution imaging of 1-mm-thick CLARITY mouse brain samples and cellular resolution Ca2+ imaging of entire zebrafish nervous systems.
To overcome the disadvantage of the uneven axial thickness of Gaussian beam-based light sheets and further improve the axial resolution in a large FOV, a higher-NA beam waist can be swept along the sheet’s propagation direction, as proposed in axially swept light-sheet microscopy (ASLM) [112] (Fig. 2D). Synchronizing the sweeping with a rolling shutter allows large-volume imaging of cleared tissues with consistently high axial resolution [113,114,115,116]. However, this method sacrifices some integration time benefits and the original selective excitation advantage of light-sheet illumination. Among these methods, mesoscale-selective plane-illumination microscopy (mesoSPIM) [114] was designed as an open-hardware project for building and operating a modular light-sheet microscope that utilized an electrically tuneable lens (ETL) for excitation beam waist sweeping. Cleared-tissue axially swept light-sheet microscopy (ctASLM) [115] achieved isotropic high-resolution imaging over large FOVs through fast aberration-free remote focusing. This technique acquired a millimeter-sized cleared mouse bone marrow dataset with an isotropic resolution of ~300 nm. Unlike sweeping the illumination beam waist, a higher axial resolution within a large FOV can also be achieved by tiling a smaller but thinner light sheet [117] (Fig. 2E). Tiling light-sheet microscopy (tiling LSM) [118] uses this approach to achieve fast imaging of transparent tissues at multiple resolution scales. A multi-immersion open-top light-sheet microscope [119] uses a configuration with the illumination and collection objectives at 45° to the vertical axis, and they are placed below (rather than above) the cleared specimen. This approach increases the ease of use and throughput and enables simple mounting of multiple samples processed with various clearing protocols. The further upgraded hybrid open-top light-sheet microscopy (hybrid OTLS) [120] can achieve versatile multiscale volumetric imaging >12 cm × 7.5 cm × 1 cm by combining a unique non-orthogonal dual-objective and conventional (orthogonal) open-top light-sheet architecture. This flexible system provides an efficient solution for different imaging requirements in terms of resolution, sample size, and tissue-clearing protocol. In addition, light-sheet microscopy can perform multiview imaging of the same sample [121, 122] and achieve improved spatial resolution and image contrast by implementing multiview deconvolution and other algorithms [123, 124]. The multiangle-resolved subvoxel selective plane illumination microscope (Mars-SPIM) [125] first acquired low-resolution raw datasets of the cleared whole mouse brain from 8 views in 30 min with a Gaussian static light-sheet microscope and reconstructed a digital atlas with ~1 µm3 isotropic voxels. Content-aware compressed-sensing (CACS) light-sheet microscopy [126] images the cleared mouse brain at a low resolution under two opposite views in ~10 min with a dual-side confocally-scanned Bessel light-sheet microscope and then restores the isotropic voxel resolution to 0.5 μm3 and improves the signal-to-noise ratio for the two-view fusion 3D image. This type of computational method to improve the resolution requires at least several hours of additional post-computation time. More importantly, the low NA used in the acquisition of original low-resolution data enables the system to obtain a large field of view and accelerate the imaging speed, but also greatly limits the detection of fine structures with weak signals. Therefore, the digitally-reconstructed high-resolution data from the original data acquired at a low NA are not comparable to those obtained directly from optical imaging with a high NA.
As an increasing number of commercial products (LaVision, Zeiss, Olympus, Leica, Nuohai, Applied Scientific Instrumentation, and Bruker) become available, light-sheet microscopes are increasingly becoming routine equipment in microscope facilities. While light-sheet imaging allows for high-throughput volumetric data acquisition, clearing methods must make the sample highly transparent to avoid excessive residual scattering and absorption for whole-brain imaging. Light-sheet microscopy generally enables rapid imaging of centimeter-sized cleared mouse brains in hours at micron-level resolution and fine imaging of local areas at submicron resolution. Consequently, this approach is an attractive strategy for quantitative brain-wide cell profiling.
Whole-brain Optical Imaging Based on Block-face Imaging and Histological Sectioning
In contrast to tissue-clearing strategies, the optical imaging depth can also be extended by combining block-face imaging with histological sectioning. This automated block-face whole-brain imaging approach combines top-view optical sectioning imaging with integrated tissue sectioning; it can be viewed as an automated high-throughput implementation of the traditional, manual histological procedure [127, 128]. Although this method results in a prolonged sectioning time, the sample embedding process is simple, and it is easier to achieve uniform high resolution and image quality for large tissue samples. This advantage is essential for observing delicate structures such as axons and dendrites that are distributed brain-wide and measure only 1 micron or less in diameter. Representative approaches include serial two-photon tomography (STP), block-face serial microscopy tomography (FAST), and micro-optical sectioning tomography (MOST) series of technologies.
Serial Two-photon Tomography
In 2007, two-photon tissue cytometry was developed by Ragan et al. [129], combining two-photon microscopy with paraffin-embedded sectioning to enable 3D imaging of intact mouse hearts at a voxel size of 0.78 μm × 0.78 μm × 2 μm. In 2012, an improved STP technique was developed that employs a two-photon microscope based on high-speed galvanometric scanners and vibrating sectioning of agarose-embedded brains with minimal detrimental effects on the fluorescence and sample morphology [88] (Fig. 3A). The imaging plane is located 50 μm below the surface to obtain undisturbed optical images, and lateral 2D images of the entire brain coronal sections can be imaged as a mosaic of FOVs. This technique has high lateral sampling rates (2 μm, 1 μm, and 0.5 μm optional); however, due to the limited imaging throughput, the axial sampling interval is typically set to 50 μm, making it impossible to track continuous signals in 3D. In 2016, Economo et al. [130] used a resonant scanning galvanometer and high excitation power to further improve the STP technique in high-speed volumetric STP tomography. They devised a low viscosity clearing solution that enabled reliable vibrating sectioning of gelatin-embedded brain samples over many days and allowed an imaging depth >200 μm. With this platform, a mouse brain dataset with a voxel size of 0.3 μm × 0.3 μm × 1 μm could be obtained in 8 days–10 days, enabling the visualization and reconstruction of long-range axonal arbors. However, additional data registration was required due to the inevitable tissue deformation introduced by the sectioning of cleared samples, and the imaging speed of this point-scan method could not be improved further without much difficulty. The MouseLight project used this platform to reconstruct >1000 projection neurons in the motor cortex, thalamus, subiculum, and hypothalamus [131].
STP uses two-photon excitation to achieve high-quality optical sectioning; however, point-by-point scanning significantly limits throughput. Therefore, a more typical application of STP is whole-brain imaging with an axial sampling interval of 50 μm–100 μm in 6.5 h–21 h. Due to the simple and deformable-free agarose embedding, STP was used at the mesoscale to generate a series of two-dimensional images spanning all regions of the brain, enabling brain-wide quantitative cell profiling [132,133,134] and region-to-region connectivity (The Allen Mouse Brain Connectivity Atlas) [135].
Block-face Serial Microscopy Tomography
Similar to STP, the FAST technique proposed by Seiriki et al. in 2017 also uses vibrating sectioning to achieve 50 μm–80 μm slicing of agarose-embedded samples. The difference is that FAST also uses a spinning disk-based confocal microscope to optically section at depths of up to 100 μm below the surface and monochromatically image a whole mouse brain in 2.4 h with a voxel size of 0.7 μm × 0.7 μm × 5 μm [136, 137] (Fig. 3B). This method employs a Nipkow spinning disk, which projects highly parallelized excitation light beams to achieve high imaging rates and has optical sectioning capabilities comparable to those of traditional confocal microscopy. FAST has also been used to image the marmoset brain at subcellular resolution, but the low axial sampling rate limits the continuous tracing of axons and dendrites.
The sparse imaging and reconstruction tomography (SMART) system, proposed by Chen et al. in 2021, also uses a spinning-disk confocal system and vibration sectioning configuration but is equipped with a high-NA objective to achieve a voxel size of 0.3 μm × 0.3 μm × 1 μm and can be combined with tissue clearing to increase the imaging depth to 250 μm [138]. This technology adopts a sparse imaging strategy that combines real-time data analysis with instrument control. Under the assumption that the labeled individual neurons are structurally continuous, the strategy first acquires a single slice image to determine the area where the signal is located, followed by further volume imaging. As a result, a whole mouse brain dataset with sparsely labeled neurons is acquired in ~20 h. However, this approach inherently possesses a fixed maximum imaging speed, can lead to data loss due to the missed detection of signals, and is unsuitable for samples with widely distributed signals.
Micro-optical Sectioning Tomography
In 2010, Li et al. proposed a MOST system based on automatic precision sectioning and line-scanning imaging. MOST uses a diamond knife to continuously cut resin-embedded mouse brain samples into 1-μm thick sections and then performs line-scanning imaging at the moment of section generation [86] (Fig. 4A). The section thickness directly determines the axial resolution of this method. For the first time, imaging of a Golgi-stained whole mouse brain [139] with a voxel size of 0.33 μm × 0.33 μm × 1 μm was achieved in 242 h, with a total of 15,380 coronal sections. Using this system to image Nissl-stained samples, the cellular and vascular configurations in the whole mouse brain can be visualized at a submicron voxel resolution with high image quality [140, 141]. In 2013, fluorescence micro-optical sectioning tomography (fMOST) was developed, improving the imaging part of MOST using an acousto-optic deflector (AOD) to achieve long-term stable confocal laser scanning imaging [142] (Fig. 4B). Combined with a resin-embedding method that preserves the fluorescent protein signal [143], fMOST can image a fluorescence-labeled, whole mouse brain with a voxel size of 1.0 μm × 0.8 μm × 1.0 μm in 447 h, which demonstrated for the first time the tracking results of the uninterrupted long-range axon projection of a single neuron across the whole brain [27].
To further improve the imaging speed and system robustness, structured illumination fluorescence micro-optical sectioning tomography (SI-fMOST) was developed by adopting a high-throughput structured illumination microscope [144] to perform block-face imaging of the entire sample section in a mosaic manner (Fig. 4C). Due to the submicron precision of resin-embedded sectioning, the system can implement real-time counterstaining of the sample surface in the whole-brain imaging process. Compared to the simultaneous slicing and imaging approach adopted by MOST and fMOST, the block face-based SI-fMOST decouples the imaging from the sectioning, further enhancing reliability and reducing distortions and data loss. As a result, a colocalized whole-brain dataset of both fluorescence-labeled neurons and counterstained cell bodies with a voxel size of 0.32 μm × 0.32 μm × 2 μm was acquired in 3 days [145], significantly facilitating the precise tracing of long-range projections and accurate location of nuclei. Chemical section fluorescence micro-optical sectioning tomography (CS-fMOST) adopts a unique chemical reactivation method [83] to illuminate only the top, submicron-thick layer of the sample for imaging without background fluorescence. This chemical reactivation method is achieved by chemically switching the fluorescent state of the labeled proteins off and on. Therefore, the imaging module does not have to implement the optical sectioning function, dramatically reducing the system’s complexity. CS-fMOST also employs a high-throughput time-delay integration (TDI)-based line-scanning widefield microscope [146], allowing multicolor whole-brain imaging with a voxel size of 0.23 μm × 0.23 μm × 1 μm within 6 days [147]. High-definition fluorescence micro-optical sectioning tomography (HD-fMOST) implements a line-illumination modulation (LiMo) technique, which uses the natural intensity modulation of Gaussian line illumination to achieve high-throughput line scanning with remarkable background inhibition (Fig. 4D). Benefitting from LiMo, HD-fMOST can achieve high-definition whole-brain optical imaging with a voxel size of 0.32 μm × 0.32 μm × 1 μm in 111 h [85] and perform high-efficiency online data compression and processing. HD-fMOST pushes further into the limits of optical sectioning and demonstrates the potential to facilitate large-scale acquisition and analysis of whole-brain high-resolution datasets.
In addition, a variety of MOST techniques based on other imaging and sectioning methods have been developed, including two-photon fMOST (2p-fMOST), which uses two-photon excitation [148], dual-mode MOST (dMOST), for the simultaneous acquisition of Golgi-stained neurons and cytoarchitecture [149], rapid whole-brain optical tomography, capable of automatic slice collection [89], the high-throughput light-sheet tomography platform (HLTP), which adopts inverted setup light sheet imaging [150], deep learning-based fMOST, which uses a U-net convolutional neural network for real-time optical sectioning [84, 151], and cryo-MOST [91] and cryo-fMOST [92], for label-free frozen state imaging.
In general, the MOST series of technologies combines whole-brain sample embedding, automatic precision sectioning, and microscopic optical imaging, providing high-resolution optical imaging that traverses every voxel at the whole-brain scale. The collected datasets have excellent resolution, data quality, and integrity and can be used for quantitative analysis of the complete single-neuron anatomy, soma distribution, vascular networks, and other anatomical structures with colocalized cytoarchitecture information.
Whole-brain Optical Imaging for Non-human Primates
The volume of the marmoset brain is ~16 times that of the mouse brain, so imaging of the entire marmoset brain can be achieved with a larger voxel size or increased imaging time [69, 136]. However, the volume of the macaque brain is >200 times that of the mouse brain, further requiring comprehensive improvements in tissue clearing, embedding, viral tracers, imaging, and image informatics for whole-brain profiling.
In 2019, Wang et al. proposed an inverted setup light-sheet microscope called volumetric imaging with synchronized on-the-fly-scan and readout (VISoR), which adopts a dynamic light sheet generated by scanning a Gaussian laser beam [152]. Moreover, a pipeline was developed for sample sectioning, clearing, imaging, and 3D image reconstruction. Finally, a complete volumetric dataset of ~50 300-μm slices of a whole mouse brain with a voxel size of ~0.5 μm × 0.5 μm × 3.5 μm was completed in <1.5 h. In 2021, Xu et al. combined the improved VISoR2 system with primate-optimized tissue sectioning and clearing, forming a pipeline capable of effective connectome-scale mapping in the large macaque brain [153]. A rhesus macaque brain was cut into ~250 consecutive 300-μm slices and cleared using this pipeline, and finally, all slices were imaged in 100 h with a voxel size of 1 μm × 1 μm × 2.5 μm. However, this 3D reconstruction of slice imaging data is inevitably hindered by data loss, nonlinear deformation, and interslice registration. In 2020, Luo et al. modified the resin-embedding process to embed large-volume tissues while preserving fluorescence. Using SI-fMOST for imaging, the complete cytoarchitectonic information of a macaque brain hemisphere and an intact ferret brain embedded with this method were obtained with submicron lateral resolution and an axial interval of 50 μm [154]. However, resin-embedded large-volume tissue samples are too rigid to be quickly and precisely sectioned, and thus, it is difficult to combine this embedding method with block-face imaging to achieve continuous high-resolution imaging. In 2022, Zhou et al. developed a novel poly-N-acryloyl glycinamide (PNAGA)-based embedding method that is suitable for intact macaque brains and can preserve the structure and fluorescence for extended periods, allowing rapid vibrating sectioning without serious deterioration of slice quality. By combining this method with a line-scan confocal imaging system, the cytoarchitectural information of a whole rhesus macaque brain was acquired in 80 days with a voxel size of 0.32 μm × 0.32 μm × 10 μm. Moreover, the projection pattern of the frontal cortex throughout the whole rhesus macaque brain hemisphere was obtained in 37 days with a voxel size of 0.65 μm × 0.65 μm × 3 μm [155]. Overall, whole-brain optical imaging techniques for nonhuman primates must be developed further to achieve finer and faster data acquisition.
Large-scale Mesoscopic Whole-brain Imaging with Data Processing and Analysis
The development of whole-brain optical imaging has resulted in an unprecedented amount of large-scale anatomical data, contributing to a method-driven renaissance in neuroanatomy [156]. These data enable brain-wide quantitative profiling of cells, circuits, and brain vascular structures. Figure 5 shows several typical whole-brain optical imaging results. Brain-wide cell analyses involve mapping the distributions of genetically defined cell types [73, 74, 134, 157], cell molecular features [58, 75, 158], and cells expressing immediate-early genes (IEGs) [132, 133, 158]. These datasets allow the precise dissection of the cellular composition of different brain regions and an understanding of the principles of mammalian brain organization [159]. This type of cell profiling application requires a relatively coarse resolution, so light-sheet microscopy is more widely used due to its high speed and the variety of available sample clearing and labeling methods. STP can also be used to obtain a high-quality whole-brain interval sampling dataset in several hours for cell analyses, but the 3D continuity is lost. Brain-wide mesoscopic connectivity data of neural circuits [135, 160,161,162,163] describe the long-range projections of specific neural populations in different brain regions, allowing an understanding of how information flows through neural circuits [164]. The more sophisticated brain-wide microscopic connectivity of single neurons is capable of showing the connectivity pathways of different brain regions at the cellular level, which is crucial for identifying cell types and defining how information is communicated between brain areas [131, 165,166,167,168,169,170,171,172]. This brain-wide observation of axons and dendritic fibers requires very high resolution and strict data quality uniformity, both of which are possible with block-face imaging methods. However, only the fMOST series of techniques and MouseLight have been realized on a large scale, especially for whole-brain, delicate single-neuron morphological tracing. In addition, whole-brain imaging can be used to reconstruct the brain-wide vascular network at the capillary level [140, 173, 174], providing morphological information for the study of the pathogenesis of vascular disease [175,176,177]. Table 2 compares the performance of these different types of whole-brain optical imaging methods and gives the recommended range of applications.
The quantity and complexity of the data generated by the above studies preclude manual analysis, and extracting knowledge from these terabyte- and petabyte-scale data is likely a bottleneck that requires robust biological image analysis solutions for fully exploring the wealth of information [178,179,180,181]. The first step in parsing such image data is to preprocess the large amounts of raw data, consisting of many subvolumes of a single FOV. This step generally includes denoising, illumination correction, tiling, and quality control. Another frequently required preprocessing step is registration, where the images are accurately aligned to a standard reference atlas to allow comparison, fusion, and joint analysis between datasets from different samples. The next steps are to detect, segment, and track the target structure in the data, such as the soma or the entire neuron. Segmentation is arguably the most challenging step in biological image analysis, involving the detection of the presence of various structures and the grouping of pixels into targets of interest or backgrounds. Once segmentation and tracking are completed, further quantitative calculations can be performed to recognize the characteristics and patterns in the dataset and draw statistical conclusions. Manual involvement is often required in the above steps to inspect, correct, and annotate the results, which requires visualization of various high-dimensional images. Complete image analysis solutions require not only various powerful image analysis algorithms, data management tools, and computational tools [52, 182,183,184,185,186,187,188] but also powerful computing clusters for storing, computing and sharing large amounts of data. In short, hardware, software, and numerous processing steps are all required to form a systematic data analysis framework and pipeline.
Prospects
In summary, we have provided a general overview of the technological pathways and evolution of whole-brain optical imaging, which has become an essential set of tools in neuroscience for resolving the anatomy of the brain at the mesoscopic level. However, whole-brain imaging of nonhuman primates remains a considerable challenge. Since the largest cross-section of the macaque brain has an area of >40 cm2, intact tissue clearing is challenging. In addition, standard light-sheet microscopy based on orthogonal illumination-detection optics is unable to reach such large lateral dimensions [113], and the working distance of the available objectives limits the axial imaging depth. Moreover, the large brain volume poses a severe challenge for the continuous and stable sectioning of large cross-sections over long periods. Therefore, whole-brain imaging of the macaque brain requires a systematic integration of chemical, mechanical, imaging, and computational tools to form a practical technology platform. Combining high-throughput block-face imaging methods such as line scanning or inverted setup light-sheet microscopy with tissue transformation [189] and physical sectioning may be a promising strategy.
Ultimately, however, the maximum throughput of all imaging techniques is limited by the properties of the camera. Using the latest ~1.1 gigapixel/s sCMOS camera, at least ~257 h are needed to acquire the data of a macaque brain with a voxel size of 0.3 μm × 0.3 μm × 1 μm, regardless of the movement and cutting times. Larger throughput cameras and higher numerical aperture objectives with a larger FOV will essentially increase the speed of whole-brain imaging. In addition, existing solutions for biological-image analysis are complex and rely more on computing clusters than individual workstations. The solutions also require researchers to identify the necessary processing steps, select the appropriate computing algorithms for each step, and tune their parameters. In the future, some data processing and analysis can be moved into the data acquisition process to enable intelligent imaging, reducing the amount of invalid data from the source of data generation and speeding up the imaging and data analysis processes. Moreover, with further developments in artificial intelligence technology and cloud services, researchers will be able to use their personal computers locally to automatically process the data. In addition, to facilitate the sharing and reusing of data, there is a need to develop relevant standardization and protocols to deal with the large amounts of data obtained by various whole-brain optical imaging methods, similar to medical imaging studies such as MRI [190, 191].
The seamless integration of labeling, whole-brain optical imaging, and informatics tools has begun to yield statistically robust conclusions and transform our understanding of the structural organization of the neural circuits in the mouse. With improvements in hardware performance and the advent of hybrid methods, the rapid and detailed analysis of the whole brain of nonhuman primates is within reach. The continued development of whole-brain optical imaging methods will further expand the possibilities for dissecting the neuronal network, providing critical information for deciphering structure-function relationships and understanding complex brain functions and human brain disorders.
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Acknowledgments
This review was supported by the STI2030-Major Projects (2021ZD0201001 and 2021ZD0201000) and the National Natural Science Foundation of China (81827901 and 32192412).
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Jiang, T., Gong, H. & Yuan, J. Whole-brain Optical Imaging: A Powerful Tool for Precise Brain Mapping at the Mesoscopic Level. Neurosci. Bull. 39, 1840–1858 (2023). https://doi.org/10.1007/s12264-023-01112-y
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DOI: https://doi.org/10.1007/s12264-023-01112-y