Open Access
25 April 2023 Imaging and positioning through scattering media with double-helix point spread function engineering
Jingjing Gao, Pengwei Wang, Wenwen Li, Xuyu Zhang, Chunyuan Song, Zhentao Liu, Shensheng Han, Honglin Liu
Author Affiliations +
Abstract

Significance

Double-helix point spread function (DH-PSF) microscopy has been developed for three-dimensional (3D) localization and imaging at super-resolution but usually in environments with no or weak scattering. To date, super-resolution imaging through turbid media has not been reported.

Aim

We aim to explore the potential of DH-PSF microscopy in the imaging and localization of targets in scattering environments for improved 3D localization accuracy and imaging quality.

Approach

The conventional DH-PSF method was modified to accommodate the scanning strategy combined with a deconvolution algorithm. The localization of a fluorescent microsphere is determined by the center of the corresponding double spot, and the image is reconstructed from the scanned data by deconvoluting the DH-PSF.

Results

The resolution, i.e., the localization accuracy, was calibrated to 13 nm in the transverse plane and 51 nm in the axial direction. Penetration thickness could reach an optical thickness (OT) of 5. Proof-of-concept imaging and the 3D localization of fluorescent microspheres through an eggshell membrane and an inner epidermal membrane of an onion are presented to demonstrate the super-resolution and optical sectioning capabilities.

Conclusions

Modified DH-PSF microscopy can image and localize targets buried in scattering media using super-resolution. Combining fluorescent dyes, nanoparticles, and quantum dots, among other fluorescent probes, the proposed method may provide a simple solution for visualizing deeper and clearer in/through scattering media, making in situ super-resolution microscopy possible for various demanding applications.

1.

Introduction

Optical imaging has gained widespread use in biomedical imaging because of its high resolution and capacity to provide diverse information. However, the propagation of light in biological tissues is diffused by scattering, resulting in limited penetration depth and poor resolution. Achieving super-resolution imaging through/in scattering media is highly desirable but extremely challenging. Various fluorescence microscopies have achieved resolutions down to nanometers using sparsely excited fluorescent particles and their corresponding algorithms. However, such techniques are limited to discrete cells in vitro rather than in vivo. Understanding the functions and mechanisms of cells in their microenvironment is critical. Therefore, there is an urgent need for in-situ super-resolution imaging.

Several techniques have been proposed to overcome the challenges posed by scattering. Wavefront shaping13 and transmission matrix measurement46 can compensate for or characterize scattering; however, they require either a navigation star or access to the other side of a stationary scattering medium. The deconvolution imaging technique7,8 requires prior measurements of the point spread function (PSF) of the scattering medium; therefore, it is not ideal for dynamic biological tissues. Speckle autocorrelation imaging911 is immune to the motions of scattering media, but it has a limited field of view determined by the optical memory effect range.1214 These methods and techniques are unsuitable for super-resolution microscopy through or in biological tissues, particularly noninvasively.

Microscopic imaging techniques have been developed to enhance the resolution and penetration depth. Confocal microscopy1517 is primarily used for imaging live cells cultured in vitro and superficial areas of fixed tissues owing to its point scan and limited penetration capabilities. Structured light illumination microscopy,1820 which can achieve a resolution of half the diffraction limit by illuminating the sample with a modulated streak structure light, requires precise modulation and complex reconstruction algorithms and does not significantly improve the penetration depth. The penetration depth is greater for longer wavelengths, which leads to the development of two/multiphoton microscopies.2124 The penetration depth can reach 500  μm for 1300 nm photons,25 with an equivalent optical thickness (OT) of 2. Despite these improvements, the penetration depth and resolution are still limited to observing subcellular structures and molecular arrangements in cells beneath or in scattered biological tissues.

After introducing the double-helix point spread function (DH-PSF),26 Pavani et al. optimized the method and proposed DH-PSF microscopy to enable three-dimensional (3D) fluorescence imaging in super-resolution.27,28 Because of its excellent axial positioning ability, DH-PSF microscopy has been widely applied in in-depth estimation,29,30 particle tracing,3133 and other applications.3436 However, most DH-PSF microscopy has been conducted in weak or nonscattering environments, and its performance in strong scattering environments has not yet been explored.

We developed DH-PSF microscopy to image through biological tissue layers by taking advantage of the easier recognition of the double-spot structure rather than a single spot in the background of speckles. Through simulations in a scattering environment, we demonstrated excellent localization capability within an OT of 5. We then built an experimental system and achieved a transverse (x-y) localization accuracy of 13 nm and an axial localization accuracy of 51 nm. Utilizing a specially designed algorithm, we successfully reconstructed 3D images of multiple fluorescent microspheres through an eggshell membrane and a piece of an onion epidermal tissue layer, with precise localization of all microspheres and improved visualization of membrane structures owing to axial filtering in deconvolution. Our approach may provide a solution for in situ and in vivo 3D super-resolution imaging of biological tissues.

2.

Methods

2.1.

Generation and Optimization of DH-PSF

Traditionally, the DH-PSF scheme is created by a linear superposition of LG modes with equal weights. An LG beam is a vortex beam with unique parameters, such as the vortex phase and spin angular momentum. Compared with a conventional Gaussian beam, a vortex beam has better resistance to turbulence interference during propagation.37,38 Accordingly, the DH-PSF maintains a relatively complete beam shape through the scattering medium. Under the modulation of the DH-PSF, a Gaussian spot on the image plane (i.e., the PSF of a conventional imaging system) is transformed into two discrete centrosymmetric spots. The size and shape of the double spot were preserved, and its azimuthal angle changed as the point target deviated axially from the initial object plane. The relationship between the azimuthal angle θ and axial distance z is26

Eq. (1)

θ=2arctan[zobj2z0(1z1zobjfocus)],
where z0 is the Rayleigh length, zobj is the distance from the object plane, and zobjfocus is the object plane distance from the entrance pupil.

The direct superposition of LG modes introduces both phase and amplitude modulations into the mask. However, most wavefront modulation devices are sensitive to either the amplitude or the phase, resulting in low energy efficiency. To enhance energy efficiency, the mask is usually optimized to be phase-only.27 Here, we adopted the optimization method described in Ref. 27, combined with the Gerchberg–Saxton (GS) algorithm, and obtained an energy efficiency enhancement of 30 times.

2.2.

Evaluation of Localization Accuracy in a Scattering Environment

In this study, we conducted simulations of DH-PSF modulation in a scattering environment and systematically investigated the effect of scattering on positioning accuracy. The scattering medium was simulated using a multilayer phase-mask model constrained by the spatial power spectral density39 with an anisotropy factor g=0.95. Different thicknesses and optical depths were considered, with all scattering effects concentrated on a plane and represented as a single random phase mask. The configuration of the simulation is shown in Fig. 1(a). The DH-PSF mask was placed on the middle plane of a 4f system composed of L1 and L2.

Fig. 1

Simulation of DH-PSF modulation in a scattering environment. (a) Simulation configuration: a point source on the front focal plane of L1 illuminates a scattering medium and then enters into the 4f system with a DH-PSF mask inserted into the middle focal plane. The image plane is the back focal plane of L2. (b), (c) SBRs and localization errors at different OTs, respectively. (d) Recorded patterns on the image plane at different OTs.

JBO_28_4_046008_f001.png

Fig. 2

Experimental setup. A 488-nm laser beam is filtered and collimated and then coupled into an objective to illuminate the sample. The objective collects the fluorescent light and subsequently passes through the DM, TL, and the PSF engineering module before being collected by the camera. M1 – M2: mirrors, F1 – F2: filters, L1 – L3: lenses, TL: tube lens, TR: triangle reflector, DM: dichroic mirror (with a cut-on wavelength of λc=500  nm), P: polarizer, SLM: spatial light modulator. Two photographs of samples 1 and 2 placed on a grid pattern are inserted to show their visual turbidity.

JBO_28_4_046008_f002.png

The back focal plane of L2 is the image plane, and Fig. 1(d) shows the intensity patterns of the DH-PSFs of a point source at various OTs. When the OT is small, the double spot maintains its shape well; however, as the OT increases, the distortion of the double spot becomes more severe, resulting in more energy escaping from the two spots and contributing to random speckles. However, if the signal-to-background ratio (SBR)40 is greater than a certain value, the localization algorithm can still operate normally with high accuracy. Figure 1(b) shows the decay of the SBR with increased OT, and Fig. 1(c) shows the calculated localization error at different OTs. At OT=6, the SBR drops to 0.6, and the positioning errors in the x-, y-, and z-directions exceed 1%. An SBR>1 is typically required to ensure positioning accuracy, corresponding to an OT of 5 and a transmission rate of 0.7%. At OT=5, the localization errors in all axes are <1%; thus, the positioning accuracy is considered to be equivalent to that for nonscattering environments.

The simulation results prove that DH-PSF can be utilized for localization in scattering environments. However, in experiments, the physical thickness of the scattering medium cannot be ignored, and it is necessary to choose thin scattering layers considering the limited working distance of the microscope objectives.

3.

Experiment

3.1.

Experimental Setup

A sample of buried fluorescent microspheres (Ex/Em:488/550  nm, GF1000C, Huge Biotechnology) was illuminated by a 488-nm excitation beam from a semiconductor laser (Lambda beam 488 – 200, RGB Laser Systems), as shown in Fig. 2. The emitted fluorescence light was collected using a 100× microscopic objective (numerical aperture: 1.3, RMS100X–PF, Olympus) paired with a tube lens with a focal length of f=200  nm. The exit image plane was relayed by a 4f system consisting of lenses L2 and L3 onto a camera (Edge 4.2, PCO). The optimized DH-PSF phase distribution was displayed on a reflective phase-only spatial light modulator (SLM) (LETO, Holoeyes), placed on the back focal plane of L2. A triangular reflector was applied to approximate the norm incidence to ensure the proper use of the SLM at nearly normal incidence. The sample was placed on a piezo nanopositioning stage (P18.XYZ200S, Core Morrow). To suppress the environmental background, bandpass filters F1 (LL01-488-25, Semrock) and F2 (BLP01-488R-25, Semrock), along with a dichroic mirror (Di03-R488-t1-25◊36, Semrock), were used.

Two different samples were prepared. One consisted of several fluorescent microspheres randomly scattered on a slide and covered by an eggshell membrane with a thickness of 20  μm. In contrast, the other consisted of several microspheres covered by a layer of onion epidermal tissue with a thickness of 100  μm. Unlike the eggshell membrane, the surface of the onion epidermal tissue was rougher, with a greater chance of microspheres attaching to the valleys, leading to axial depth variations. The thicknesses of both samples were smaller than the working distance of the objective lens. The SBRs of the modulated double-spots for both samples were >1, satisfying the condition for accurate positioning.

3.2.

System Calibration

In DH-PSF imaging and positioning, the lateral position is determined from the midpoint of the line connecting the double spots, whereas the axial position is estimated from the azimuth angle of the line. Typically, the angle is mapped to an axial position to calibrate the system. To prepare the calibration sample, a solution of fluorescent microspheres with an average diameter of 1  μm was diluted 5000 times, and a drop of the diluted solution was placed on a microscope slide with a pipette. After evaporation, discrete fluorescent microspheres remained on the slide and were used as calibration samples. The samples were fixed on the piezo nanopositioning stage, and the default z=0 corresponded to the focal plane.

To obtain DH-PSF modulated patterns, the stage was scanned along the z axis from 6.8 to 6.8  μm with a step size of 100 nm, and 137 frames were recorded. Figure 3(a) shows the patterns of a selected microsphere corresponding to several z positions. As the z-value changes within the scanning range, the modulated double spot rotates around its center, and the rotating angle varies from π2 to π2. More side lobes appear at a larger deviation from z=0. Figure 3(b) shows that θ is approximately proportional to z, and a linear fit of the θz relationship yields a coefficient of determination of R_Square = 0.99645. However, a polynomial fitting curve is a closer representation of the relationship, with a higher R_Square = 0.99996. A polynomial curve was adopted in our investigation to enhance the accuracy of the axial localization. In addition, the system was calibrated in advance for lateral drifts to ensure and estimate imaging and localization accuracy.

Fig. 3

Calibration of the experimental system. (a) Modulation patterns of a selected microsphere at several z positions. (b) Calibration curves of angle θ with axial position z.

JBO_28_4_046008_f003.png

3.3.

Quantification of Localizing Accuracy

The recorded patterns of 137 positions were adopted for quantifying the localization accuracy, with a preset interval of 100 nm for stage scanning as the reference value. Statistical analysis was performed on the error values in the x-, y-, and z-directions, and the resulting histogram distribution diagrams are shown in Fig. 4. The full-width at half-maximum value of the Gaussian fitting curve represents the positioning accuracy, which is 13 nm in the x- and y-axes directions and 51 nm in the z axis direction.

Fig. 4

Localization accuracy in the x, y, and z directions. (a)–(c) Distributions of positioning in the x, y, and z directions and corresponding localization accuracy estimated from the fitted curve.

JBO_28_4_046008_f004.png

3.4.

Algorithms

Super-resolution images can be reconstructed by fusing hundreds or thousands of frames of sparsely excited fluorescent particles far smaller than the diffraction limit. However, in our study, the fluorescent microspheres were larger than the diffraction limit of λ/2NA=211  nm, and the membranes in our samples had dense and continuous structures. In our experiment, we positioned the fluorescent microspheres by fitting a double Gaussian spot and used deconvolution based on DH-PSF to reconstruct the membrane structure around the microspheres. Because the focal plane of the microscopic objective lens was fixed in our experiment, we moved the sample layer-by-layer to the focal plane of the microscopic objective lens during the movement process. By choosing the in-focus DH-PSF to deconvolve the recorded data, a clear image of each layer is recovered, and a 3D image of the sample is obtained by stacking. The in-focus DH-PSF is a double-spot pattern at the plane of z=0. We also observed that deconvolution of the in-focus DH-PSF blurs out-of-focus sections and enhances in-focus sections, thereby improving image quality. Such convolution processing functions as optical sectioning.

4.

Results

4.1.

Imaging and Localization through Eggshell Membrane

Sample 1 was fixed on the nanopositioning stage, which was adjusted to change the object distance to obtain the finest double spot, and its initial position was set to z=0. The stage was scanned uniformly toward the objective lens from z=19.6  μm to z=8.3  μm, with images recorded at z=19.6  μm and subsequently at each 100 nm interval. The recorded images at different positions are presented in Fig. 7 (Video 1); the images of conventional microscopy, without the DH-PSF mask on the SLM, are provided in Fig. 8 (Video 2) for comparison. The four frames of images from Fig. 7 (Video 1) are shown in Fig. 5(a). The image at z=0 exhibits a sharp double-spot structure. As the absolute value of z increases, the azimuth angle of the double spot changes. The position of each fluorescent microsphere was calculated, and each frame was deconvoluted using the DH-PSF at z=0 and stacked together to obtain a 3D image, as shown in Fig. 5(b). The membrane was illuminated with fluorescent light from microspheres. Because of DH-PSF deconvolution’s excellent optical sectioning performance, the microspheres, their relative position to the membrane, and the membrane’s internal structures can be well differentiated. In contrast, the images obtained by conventional microscopy [Figs. 5(f)5(i)] and conventional DH-PSF microscopy [Figs. 5(j)5(m)] are blurred.

Fig. 5

Imaging and localization through eggshell membrane. (a) Selected frames during scanning with the DH-PSF mask on the SLM. The double-spot rotates as the value of z changes, as seen in the zoom-ins. The color bar is shown at the bottom. (b) 3D image of sample 1 reconstructed from our modified DH-PSF method. (c)–(e) Projection views in the x-y, x-z, and y-z planes, respectively, with corresponding color and scale bars. (f)–(i) Results of conventional microscopy. (j)–(m) Results of the conventional DH-PSF technique. Compared with conventional microscopy, conventional DH-PSF accurately localizes discrete fluorescent particles but has worse image quality of the eggshell membrane with less distinguishable details. In contrast, our method differentiates the structures of protein fibers in the eggshell membrane (Video 1; Video 2).

JBO_28_4_046008_f005.png

In the conventional DH-PSF scheme, sparsely distributed fluorescent particles, which are much smaller than the diffraction limit, can be localized with an accuracy of nanometers or tens of nanometers, and the final image is a fusion of numerous frames of discretely excited fluorescent particles, which are bound to targets of interest, organelles, and structures in cells. The resolution is determined by the localization accuracy, thus achieving super-resolution. However, in our case, the fluorescent microspheres were larger than the diffraction limit, and the eggshell membrane was not fluorescently stained. Images were obtained by deconvolution. During scanning, only the in-focus plane has a double-spot PSF of θ=0  deg, at z=0, whereas the out-of-focus planes (away from z=0) have rotated double-spots. After deconvoluting the double-spot PSF scheme at z=0, the image of the in-focus frame is enhanced, whereas the out-of-focus frames are blurred, thus achieving optical sectioning capability. The positions of the microspheres through the scattering layer are still localized, as in conventional DH-PSF engineering, with unprecedented accuracy in scattering environments. Figures 5(c)5(e) show the projection views on the x-y, x-z, and y-z planes. The estimated thickness of the eggshell membrane from the y-z projection, as shown in Fig. 5(e), is 19  μm. Microspheres A and B are calculated to be 19.62 and 19.63  μm away from the top surface of the eggshell membrane, respectively.

4.2.

Imaging and Localization through Onion Epidermis Tissue Layer

For sample 2, a larger scanning interval of 500 nm was used because of its thicker structure. The scanning range was from z=34.5  μm to z=85  μm. Figures 8 and 9 (Videos 3 and 4) display the recorded images at different positions with the DH-PSF mask on and off the SLM, respectively. The reconstructed 3D image in Fig. 6 shows the eight microspheres dispersed within the onion epidermal tissue layer. The thickness of the onion epidermal layer was estimated to be 100  μm, which was in agreement with the theoretical values, and the distribution of the microspheres had a span of 80  μm. Once again, the image reconstructed from the DH-PSF deconvolution provides more details than that of conventional microscopy.

Fig. 6

Imaging and localization of multiple microspheres through the onion epidermal tissue. (a) The reconstructed 3D images of multiple fluorescent microspheres in sample 2 by utilizing of our method. (b)–(d) Projection views in the x-y, x-z, and y-z planes, respectively, with corresponding scale bars. (e)–(h) Results of the conventional microscopy. (i)–(l) Results of the conventional DH-PSF technique. Our method provides the best image quality while preserving super-resolution localization capability (Video 3; Video 4).

JBO_28_4_046008_f006.png

Fig. 7

Example of recorded images at different positions with the DH-PSF mask on the SLM of sample 1 (Video 1, MP4, 14.1 MB [URL: https://doi.org/10.1117/1.JBO.28.4.046008.s1]).

JBO_28_4_046008_f007.png

Fig. 8

Example of recorded images at different positions without the DH-PSF mask on the SLM of sample 1 (Video 2, MP4, 14.1 MB [URL: https://doi.org/10.1117/1.JBO.28.4.046008.s2]).

JBO_28_4_046008_f008.png

Fig. 9

Example of recorded images at different positions with the DH-PSF mask on the SLM of sample 2 (Video 3, MP4, 11.9 MB [URL: https://doi.org/10.1117/1.JBO.28.4.046008.s3]).

JBO_28_4_046008_f009.png

Fig. 10

Example of recorded images at different positions without the DH-PSF mask on the SLM of sample 2 (Video 4, MP4, 11.6 MB [URL: https://doi.org/10.1117/1.JBO.28.4.046008.s4]).

JBO_28_4_046008_f010.png

5.

Discussion and Conclusions

The DH-PSF deconvolution has an excellent optical sectioning capability, determined by the axial localization accuracy. Combined with axial scanning, we can see the internal distribution of a turbid medium and the targets of interest in/behind the medium. In this case, fluorescent staining is unnecessary as long as there is valid illumination. For sparse particles, their positions in/behind the scattering medium can be localized with the calibrated accuracy of the DH-PSF system. After staining with fluorescent dyes, sparse excitation and image fusion can achieve a super-resolution image of a target of interest. The surrounding scattering medium can also be observed with and without fluorescent staining using DH-PSF super-resolution and optical sectioning.

Currently, limited by experimental facilities in our proof-of-concept experiment, the optical sectioning and super-resolution localizing capability is demonstrated directly, whereas super-resolution imaging is reliably reasoned from localization accuracy. The implementation of DH-PSF microscopy can be realized by simply integrating a PSF modulation module into a fluorescence microscope. Next, we will image stained cells covered by scattering media to achieve super-resolution imaging of the cells and their surrounding environments. However, some issues must be addressed when using this method to image the stained cells. For instance, a high-power laser is necessary to penetrate the scattering medium and excite stained cells, which may cause photodamage or phototoxicity. This time-consuming scanning procedure restricts its application to dynamic targets and scattering media. The penetration thickness is limited because deeper tissues like the hypodermis are still unreachable. The scanning procedure may be replaced by 3D deconvolution, and the penetration thickness may be enhanced using a longer excitation wavelength or other scattering-overcoming techniques. In the future, the unprecedented super-resolution at the deep penetration of DH-PSF microscopy might enable a clear view of internal organelles and protein structures of cells in biological tissues, which is critical for investigating cell functions and metabolism in situ and in vivo.

In summary, we proposed a new application of DH-PSF microscopy. Benefitting from the optical sectioning of our developed DH-PSF deconvolution algorithm, the image of the targets of interest and the surrounding scattering medium can be significantly enhanced even without fluorescent staining. We have demonstrated that DH-FSF microscopy can be utilized for super-resolution imaging and localization through or within scattering media, and the penetration thickness increases to an OT of 5. At the same time, the transverse resolution is 13 nm, and the axial resolution is 51 nm. The ability to see and localize through or within scattering media has the potential to enable in situ observation of cells in tissues, which may provide a powerful tool for numerous bio-related fields.

Disclosures

The authors have no relevant financial interests in this article or potential conflicts of interest to disclose.

References

1. 

I. M. Vellekoop and C. M. Aegerter, “Scattered light fluorescence microscopy: imaging through turbid layers,” Opt. Lett., 35 (8), 1245 –1247 https://doi.org/10.1364/OL.35.001245 OPLEDP 0146-9592 (2010). Google Scholar

2. 

O. Katz et al., “Looking around corners and through thin turbid layers in real time with scattered incoherent light,” Nat. Photonics, 6 (8), 549 –553 https://doi.org/10.1038/nphoton.2012.150 NPAHBY 1749-4885 (2012). Google Scholar

3. 

R. Horstmeyer et al., “Guidestar-assisted wavefront-shaping methods for focusing light into biological tissue,” Nat. Photonics, 9 (9), 563 –571 https://doi.org/10.1038/nphoton.2015.140 NPAHBY 1749-4885 (2015). Google Scholar

4. 

G. Huang et al., “Generalizing the Gerchberg–Saxton algorithm for retrieving complex optical transmission matrices,” Photonics Res., 9 (1), 34 –42 https://doi.org/10.1364/PRJ.406010 (2021). Google Scholar

5. 

Y. Choi et al., “Overcoming the diffraction limit using multiple light scattering in a highly disordered medium,” Phys. Rev. Lett., 107 (2), 023902 https://doi.org/10.1103/PhysRevLett.107.023902 PRLTAO 0031-9007 (2011). Google Scholar

6. 

S. M. Popoff et al., “Measuring the transmission matrix in optics: an approach to the study and control of light propagation in disordered media,” Phys. Rev. Lett., 104 (10), 100601 https://doi.org/10.1103/PhysRevLett.104.100601 PRLTAO 0031-9007 (2010). Google Scholar

7. 

E. Edrei and G. Scarcelli, “Memory-effect based deconvolution microscopy for super-resolution imaging through scattering media,” Sci. Rep., 6 33558 https://doi.org/10.1038/srep33558 SRCEC3 2045-2322 (2016). Google Scholar

8. 

H. C. Zhuang et al., “High speed color imaging through scattering media with a large field of view,” Sci. Rep., 6 32696 https://doi.org/10.1038/srep32696 SRCEC3 2045-2322 (2016). Google Scholar

9. 

O. Katz et al., “Non-invasive single-shot imaging through scattering layers and around corners via speckle correlations,” Nat. Photonics, 8 (10), 784 –790 https://doi.org/10.1038/nphoton.2014.189 NPAHBY 1749-4885 (2014). Google Scholar

10. 

J. Bertolotti et al., “Non-invasive imaging through opaque scattering layers,” Nature, 491 (7423), 232 –234 https://doi.org/10.1038/nature11578 (2012). Google Scholar

11. 

Y. Okamoto et al., “Noninvasive three-dimensional imaging through scattering media by three-dimensional speckle correlation,” Opt. Lett., 44 (10), 2526 –2529 https://doi.org/10.1364/OL.44.002526 OPLEDP 0146-9592 (2019). Google Scholar

12. 

S. C. Feng et al., “Correlations and fluctuations of coherent wave transmission through disordered media,” Phys. Rev. Lett., 61 (7), 834 –837 https://doi.org/10.1103/PhysRevLett.61.834 PRLTAO 0031-9007 (1988). Google Scholar

13. 

I. Freund et al., “Memory effects in propagation of optical waves through disordered media,” Phys. Rev. Lett., 61 (20), 2328 –2331 https://doi.org/10.1103/PhysRevLett.61.2328 PRLTAO 0031-9007 (1988). Google Scholar

14. 

B. Judkewitz et al., “Translation correlations in anisotropically scattering media,” Nat. Phys., 11 (8), 684 –689 https://doi.org/10.1038/nphys3373 NPAHAX 1745-2473 (2015). Google Scholar

15. 

D. Loterie et al., “Digital confocal microscopy through a multimode fiber,” Opt. Express, 23 (18), 23845 –23858 https://doi.org/10.1364/OE.23.023845 OPEXFF 1094-4087 (2015). Google Scholar

16. 

A. Nwaneshiudu et al., “Introduction to confocal microscopy,” J. Invest. Dermatol., 132 (12), 1 –5 https://doi.org/10.1038/jid.2012.429 JIDEAE 0022-202X (2012). Google Scholar

17. 

J. Pawley, Handbook of Biological Confocal Microscopy, 236 2nd ed.Springer, New York, New York (2006). Google Scholar

18. 

Z. Wang et al., “High-speed image reconstruction for optically sectioned, super-resolution structured illumination microscopy,” Adv. Photonics, 4 (2), 026003 https://doi.org/10.1117/1.AP.4.2.026003 AOPAC7 1943-8206 (2022). Google Scholar

19. 

C. Eggeling et al., “Direct observation of the nanoscale dynamics of membrane lipids in a living cell,” Nature, 457 (7233), 1159 –1162 https://doi.org/10.1038/nature07596 (2009). Google Scholar

20. 

S. W. Hell and J. Wichmann, “Breaking the diffraction resolution limit by stimulated-emission: stimulated-emission-depletion fluorescence microscopy,” Opt. Lett., 19 (11), 780 –782 https://doi.org/10.1364/OL.19.000780 OPLEDP 0146-9592 (1994). Google Scholar

21. 

H. Ni et al., “Quantum dots assisted in vivo two-photon microscopy with NIR-II emission,” Photonics Res., 10 (1), 189 –196 https://doi.org/10.1364/PRJ.441471 (2022). Google Scholar

22. 

N. G. Horton et al., “In vivo three-photon microscopy of subcortical structures within an intact mouse brain,” Nat. Photonics, 7 (3), 205 –209 https://doi.org/10.1038/nphoton.2012.336 NPAHBY 1749-4885 (2013). Google Scholar

23. 

W. Denk et al., “2-photon laser scanning fluorescence microscopy,” Science, 248 (4951), 73 –76 https://doi.org/10.1126/science.2321027 SCIEAS 0036-8075 (1990). Google Scholar

24. 

M. G. L. Gustafsson, “Surpassing the lateral resolution limit by a factor of two using structured illumination microscopy,” J. Microsc., 198 82 –87 https://doi.org/10.1046/j.1365-2818.2000.00710.x JMICAR 0022-2720 (2000). Google Scholar

25. 

C. Rodriguez et al., “An adaptive optics module for deep tissue multiphoton imaging in vivo,” Nat. Methods, 18 (10), 1259 –1264 https://doi.org/10.1038/s41592-021-01279-0 1548-7091 (2021). Google Scholar

26. 

A. Greengard et al., “Depth from diffracted rotation,” Opt. Lett., 31 (2), 181 –183 https://doi.org/10.1364/OL.31.000181 OPLEDP 0146-9592 (2006). Google Scholar

27. 

S. R. P. Pavani and R. Piestun, “High-efficiency rotating point spread functions,” Opt. Express, 16 (5), 3484 –3489 https://doi.org/10.1364/OE.16.003484 OPEXFF 1094-4087 (2008). Google Scholar

28. 

S. R. P. Pavani et al., “Three-dimensional, single-molecule fluorescence imaging beyond the diffraction limit by using a double-helix point spread function,” Proc. Natl. Acad. Sci. U. S. A., 106 (9), 2995 –2999 https://doi.org/10.1073/pnas.0900245106 PNASA6 0027-8424 (2009). Google Scholar

29. 

S. Quirin and R. Piestun, “Depth estimation and image recovery using broadband, incoherent illumination with engineered point spread functions,” Appl. Opt., 52 (1), A367 –A376 https://doi.org/10.1364/AO.52.00A367 APOPAI 0003-6935 (2013). Google Scholar

30. 

S. Colburn and A. Majumdar, “Metasurface generation of paired accelerating and rotating optical beams for passive ranging and scene reconstruction,” ACS Photonics, 7 (6), 1529 –1536 https://doi.org/10.1021/acsphotonics.0c00354 (2020). Google Scholar

31. 

M. A. Thompson et al., “Three-dimensional tracking of single mRNA particles in Saccharomyces cerevisiae using a double-helix point spread function,” Proc. Natl. Acad. Sci. U. S. A., 107 (42), 17864 –17871 https://doi.org/10.1073/pnas.1012868107 PNASA6 0027-8424 (2010). Google Scholar

32. 

M. P. Backlund et al., “Simultaneous, accurate measurement of the 3D position and orientation of single molecules,” Proc. Natl. Acad. Sci. U. S. A., 109 (47), 19087 –19092 https://doi.org/10.1073/pnas.1216687109 PNASA6 0027-8424 (2012). Google Scholar

33. 

M. D. Lew et al., “Three-dimensional superresolution colocalization of intracellular protein superstructures and the cell surface in live Caulobacter crescentus,” Proc. Natl. Acad. Sci. U. S. A., 108 (46), E1102 –E1110 https://doi.org/10.1073/pnas.1114444108 PNASA6 0027-8424 (2011). Google Scholar

34. 

M. Badieirostami et al., “Three-dimensional localization precision of the double-helix point spread function versus astigmatism and biplane,” Appl. Phys. Lett., 97 (16), https://doi.org/10.1063/1.3499652 APPLAB 0003-6951 (2010). Google Scholar

35. 

Y. Shechtman et al., “Precise three-dimensional scan-free multiple-particle tracking over large axial ranges with tetrapod point spread functions,” Nano Lett., 15 (6), 4194 –4199 https://doi.org/10.1021/acs.nanolett.5b01396 NALEFD 1530-6984 (2015). Google Scholar

36. 

Z. J. Wang et al., “Single shot, three dimensional fluorescence microscopy with a spatially rotating point spread function,” Biomed. Opt. Express, 8 (12), 5493 –5506 https://doi.org/10.1364/BOE.8.005493 BOEICL 2156-7085 (2017). Google Scholar

37. 

Y. J. Cai and S. L. He, “Propagation of a partially coherent twisted anisotropic Gaussian Schell-model beam in a turbulent atmosphere,” Appl. Phys. Lett., 89 (4), 041117 https://doi.org/10.1063/1.2236463 APPLAB 0003-6951 (2006). Google Scholar

38. 

T. Wang et al., “Beam-spreading and topological charge of vortex beams propagating in a turbulent atmosphere,” Opt. Commun., 282 (7), 1255 –1259 https://doi.org/10.1016/j.optcom.2008.12.027 OPCOB8 0030-4018 (2009). Google Scholar

39. 

H. L. Liu et al., “Physical picture of the optical memory effect,” Photonics Res., 7 (11), 1323 –1330 https://doi.org/10.1364/PRJ.7.001323 (2019). Google Scholar

40. 

J. H. Zhang et al., “A simple statistical parameter for use in evaluation and validation of high throughput screening assays,” J. Biomol. Screen., 4 (2), 67 –73 https://doi.org/10.1177/108705719900400206 JBISF3 1087-0571 (1999). Google Scholar

Biography

Jingjing Gao is a PhD candidate at the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences. Her research focuses on imaging and localization through scattering media and super-resolution optical microscopy.

Pengwei Wang received his PhD from the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences in 2022. He is a postdoctoral researcher at the Key Laboratory of Quantum Optics, Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences. His research is focused on computational imaging and spectral imaging.

Wenwen Li received her PhD from the Shanghai Advanced Research Institute, Chinese Academy of Sciences, in 2022. Currently, she is a postdoctoral researcher at the University of Science and Technology of China. Her research focuses on super-resolution optical microcopy.

Xuyu Zhang is a postgraduate jointly trained by the University of Shanghai for Science and Technology and Shanghai Institute of Optics and Fine Mechanics. He received his BS degree from Harbin Institute of Technology in 2020. His research focuses on the application of deep learning in the research of scattering imaging mechanism.

Chunyuan Song is a postgraduate student at the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences. He received his BS degree in electronic science and technology from the University of Electronic Science and Technology of China in 2020. His research focuses on scattering imaging.

Zhentao Liu received his PhD from the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences, in 2017. He is now an associate researcher at the Shanghai Institute of Optics and Mechanics. His research focuses on computational imaging and spectral imaging.

Shensheng Han received his PhD from the University of Science and Technology of China in 1990 and was a postdoctoral researcher at the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences, from 1990 to 1992. From 2003 to 2010, he was Director of the Key Laboratory of Quantum Optics, Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences. His research areas include super-resolution optical microscopy, quantum imaging, new concept X-ray imaging, etc.

Honglin Liu received her PhD from the Shanghai Institute of Optics and Fine Mechanics, Chinese Academy of Sciences in 2009. She conducted postdoctoral research at Washington University in St. Louis from 2009 to 2011 and is now an associate researcher at the Shanghai Institute of Optics and Mechanics. Her research focuses on light transport in scattering media, the discovery and interpretation of new physical properties, new methods and technologies for imaging and manipulation through scattering media, and expanding applications in biophotonics.

CC BY: © The Authors. Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
Jingjing Gao, Pengwei Wang, Wenwen Li, Xuyu Zhang, Chunyuan Song, Zhentao Liu, Shensheng Han, and Honglin Liu "Imaging and positioning through scattering media with double-helix point spread function engineering," Journal of Biomedical Optics 28(4), 046008 (25 April 2023). https://doi.org/10.1117/1.JBO.28.4.046008
Received: 23 November 2022; Accepted: 12 April 2023; Published: 25 April 2023
Lens.org Logo
CITATIONS
Cited by 2 scholarly publications.
Advertisement
Advertisement
KEYWORDS
Microspheres

Point spread functions

Scattering

Scattering media

Super resolution

Microscopy

3D image processing

Back to Top