Abstract
As a label-free, nondestructive method, phase contrast is by far the most popular microscopy technique for routine inspection of cell cultures. However, features of interest such as extensions near cell bodies are often obscured by a glow, which came to be known as the halo. Advances in modeling image formation have shown that this artifact is due to the limited spatial coherence of the illumination. Nevertheless, the same incoherent illumination is responsible for superior sensitivity to fine details in the phase contrast geometry. Thus, there exists a trade-off between high-detail (incoherent) and low-detail (coherent) imaging systems. In this work, we propose a method to break this dichotomy, by carefully mixing corrected low-frequency and high-frequency data in a way that eliminates the edge effect. Specifically, our technique is able to remove halo artifacts at video rates, requiring no manual interaction or a priori point spread function measurements. To validate our approach, we imaged standard spherical beads, sperm cells, tissue slices, and red blood cells. We demonstrate real-time operation with a time evolution study of adherent neuron cultures whose neurites are revealed by our halo correction. We show that with our novel technique, we can quantify cell growth in large populations, without the need for thresholds and system variant calibration.
© 2018 Optical Society of America under the terms of the OSA Open Access Publishing Agreement
1. Introduction
In developing phase contrast microscopy (PCM) [1], Zernike employed Abbe’s revolutionary concept in imaging theory: the image is a result of interference between the incident and the scattered light, which is to say, the image is an interferogram [2]. Thus, the problem of enhancing the contrast in an image of a transparent specimen becomes equivalent to increasing the contrast in an interferogram. By developing a spatial filter that both attenuates and phase-shifts the incident light by with respect to the scattered light, Zernike obtained drastically improved contrast even from complete phase objects, such as those specimens exhibiting negligible absorption. This achievement triggered the broad adoption of PCM by cell biology labs, as the instrument offers fast, nondestructive visual inspection of unlabeled cells.
Despite its massive success, PCM has a number of limitations. Since the intensity image depends on four variables: the intensity of the incident light, the intensity of the scattered light, the sine, and cosine of their phase difference, PCM’s use is limited to qualitative inspection rather than quantitative assays. Furthermore, because the incident light is not a perfect plane wave, it contains non-zero frequency components that get inadvertently phase shifted by , and thus, interfere with the scattered light. These components result in contours of high-contrast intensity changes, especially around the edges of the object, commonly referred to as a “halo” artifact. Previous work has been dedicated to eliminating the halo problem. Double-path systems were once popular [3, 4], although such systems are known to suffer from poor temporal phase stability, constraining time-lapse observation. A more popular class of solutions involves changing the illumination to a spatially coherent field [5–8], which involves modifying the instrument and, thus, reducing its compatibility with existing facilities. Similarly, it is possible to start from a commercial phase contrast microscope and simply reduce the area of the illumination ring, thus improving the spatial coherence of the illumination leading to a reduction in halo [9, 10]. Perhaps the most immediate way to increase the coherence of the imaging field is to switch to a laser line illumination [11–13]. This approach introduces a trade-off; namely, when the coherence area becomes much larger than the field of view, there is a notable reduction in image quality due to laser speckle and other coherence-induced artifacts, such as spurious fringes, diffraction rings, among others [12].
The second class of approaches involves pure numerical processing, which is particularly popular in phenotypic screening applications [14]. For example, in references [15, 16] the halo was used to improve the algorithm’s ability to discriminate between cells, yet in [17] it was noted that halos obscure morphological features. Invariant to the author’s cell segmentation strategy, the resulting cell perimeter coordinates must be further refined in post-processing [18, 19]. Finally, a method that combines both hardware and numerical processing was proposed in Ref [20]. Using a full description of image formation with partially coherent light, this approach relies on iterative deconvolution steps to invert a nonlinear image formation model. While successful for certain categories of samples, the approach suffers from poor numeric convergence leading to long computation times, impractical for real-time operation and high-throughput assays.
In this paper, we describe a new, real-time, approach for removing halos in existing phase contrast microscopy. Our method uses an optical module that attaches to the output of an otherwise unmodified microscope (Fig. 1(a)). This module allows us to collect four interference images, which are used to decouple the unknowns in a per-pixel interferometric measurement and obtain a map of optical path length shifts [21]. As this quantitative phase map is a faithful measurement of the image field, it, too, contains the halo artifact (Fig. 1(b)). We show that the edge artifacts are effectively removed using numerical processing that involves a spatial Hilbert transform. The main advantages of this approach are: 1) the halo removal procedure runs in real-time 2) the method combined with the SLIM hardware can be used to augment existing phase contrast microscopes, and 3) the fidelity of the quantitative phase map improves, enabling quantitative measurements on cells and tissues. We show that this procedure can be applied to other common-path imaging methods that suffer from artifacts due to partially coherent illumination. We demonstrate our technique on standard samples, a variety of live cells, as well as time-lapse measurements of neuronal growth that would be otherwise difficult to measure without our method.
2. Materials and methods
Microscopy
Our method can be implemented with any phase-sensitive imaging technique. However, we choose to use quantitative phase imaging [22] (QPI), which enables objective measurements of the phase shift in a reproducible, system-independent manner. Recently, such systems have found fertile ground in studies of reproductive cells [23–26], single cell cytometry [27–36], as well as histopathology sections [37–39], and plate reader style screening of whole cell populations [40–42].
In this work, we use phase-shifting interferometer (CellVista SLIM Pro module, Phi Optics, Inc., Fig. 1(a)) which is highly sensitive to phase shifts from fine object details [43], advancing QPI methods in terms of spatial and temporal sensitivity with respect to previous generation of instruments (see, e.g., [44–46]). The components used in our add-on module are a small contribution to the total cost of ownership of a fully automated commercial microscope (Axio Observer Z1, Zeiss in this work). The system essentially performs four-frame phase shifting interferometry on the phase-contrast microscope field [47,48]. After numerical processing, the four phase-contrast frames yield a measurement of the phase shift along the optical path at each pixel. To demonstrate the broad applicability of our halo removal technique, the RBC in Fig. 5(d) was measured on an off-axis common-path white light interferometer [49], which also suffers from halo artifacts [50].
Sample preparation
We imaged a variety of samples, as illustrated in Fig. 5. The HeLa cell culture (Fig. 4(b)) was prepared following reference [51]. Polystyrene beads (Fig. 4(b) and Fig. 5(a)) are a common metrology sample used to verify the accuracy of phase sensitive microscopes. The beads were suspended between two coverslips and imaged with a 40x/0.75 objective in oil immersion media with a well-known refractive index (Zeiss, n = 1.518). The oil immersion is used to avoid “phase wrapping” [52, 53]. The spermatozoon (Fig. 5(b)) was obtained from freshly thawed bull semen, which after washing, was imaged in a phosphate-buffered saline solution following the protocol in [26]. The tissue microarray (Fig. 5(c)) was prepared according to the protocol in [39]. Following reference [54], the RBC (Fig. 5(d)) was imaged in a PBS solution spaced between two coverslips.
The postnatal mice neurons (P0-P1, C57BL/6) were prepared as described in [30]. After rapidly thawing, the neurons were plated on poly-d-lysine-coated 35 mm glass Petri dishes at a low-density (∼65 cells per mm2) and grown at 37°C, in the presence of 5% CO2, in standard maintenance media Neurobasal® 1% 200 mM glutamine and 1% penicillin/streptomycin. Reagents were obtained from Invitrogen. Time-lapse observation was performed after 5 days in vitro. Half the media was aspirated and replaced with fresh maintenance media warmed to 37°C immediately before imaging.
3. Results and discussion
We use a Hilbert transform approach to correct the high-frequency data, effectively generating halo-free images. In essence, we filter the halo with directional derivatives, performing a 1D integration for each integration, and merge the resulting images, in the spatial domain, with undistorted content. This procedure effectively preserves the “correct” parts of the phase map and fixes the incorrect ones. The method is motivated by the observations in Fig. 2. Thus, the halo appears around the edges of the cell as a thick, negative phase value shadow (Fig. 2(a), red arrows). However, the halo is not a significant issue for isolated, small, structures like the neurite extension in Fig. 2(a) (green arrow). Thus, the image’s spatial frequency content can be broadly divided into “preserved high-frequencies” and “distorted low-frequencies” (Fig. 2(b)).
The algorithm proceeds by taking a directional derivative of the frequency bands corresponding to objects smaller than the coherence radius. When applied to a phase map, this procedure yields an image similar to simulated differential interference contrast (DIC). This “relief” style image contains significantly less halo compared to the input image, as it is essentially a high-pass filtered gradient. To remove the gradient and highlight the edges otherwise submerged by the halo, we use a Hilbert transform to perform integration along the direction of the derivative. In the first approximation, the measured phase shift, , can be described as the ideal phase, , from which a low-frequency version,, is subtracted [20],
Equation (1) describes how portions of the measured image exhibit negative values. The key idea of our approach is to realize that since is a smooth function and, thus, its spatial derivative is negligible. Taking the derivative along a direction, say, we obtain a measured quantity that is not significantly affected by the halo,In order to integrate and obtain back the quantitative phase, we use the Hilbert transform along. The Hilbert transform is a common tool in off-axis holography [55–57] and has been used in the context of differential interference contrast microscopy (DIC) as well [58, 59].Taking the Hilbert transform of Eq. (2) yields
In Eq. (3), denotes a principal value integral and stands for the convolution operation along. Integrating Eq. (3) by parts, we obtainNote that the first term on the right-hand side of Eq. (4) vanishes and the second term amounts to a convolution operation, thusEquation (5) indicates that applying a Hilbert transform to the phase derivative yields the phase image itself, except, it is convolved with a kernel . This means that the phase reconstruction is very accurate at short scales when the kernel approaches a delta-function. Therefore, to make sure that large-scale features are not washed out by this convolution, we compare each pixel in the reconstructed phase with the original measurement and keep the maximum. With this procedure, we ensure that the Hilbert transform can only improve the image. Since the Hilbert, transform along one direction is most effective at removing the halo at the edge perpendicular to the direction of the derivative; we compute the Hilbert transform along multiple directions and choose at each point the maximum phase value. This way, in essence, we identify the dominant edge direction at each point in the image and remove the respective halo artifact.For maximum computation speed, we perform both the spatial derivative, and Hilbert transforms simultaneously (Fig. 3), in the frequency domain, as
To account for different objectives and illumination sources, spatial frequencies corresponding to those above the coherence length are completely preserved (Fig. 3, shoulder in the filter profile). We emphasize that this filter choice is independent of the sample and only needs to be made once for each objective. We choose and stress that no qualitative differences are observed within an order of magnitude. Thus, Eq. (6) becomes,We found that three operations along different directions were sufficient for a good reconstruction (Fig. 3, along 0°, 45°, 90°). Due to the high-speed of our GPU-based implementation, typical computation times are under 40 ms and dominated by the Fourier transform step (GeForce GTX 970M, 4 MP phase map). Visualization 1, Visualization 2, Visualization 3, and Visualization 4 (movies) show representative videos of the system’s operation. Visualization 4 (movie) illustrates the real-time operation and that the computation time is less than the typical time to acquire a frame. In practice, this means the proposed algorithm is completely masked by the acquisition process [39]. Figure 4 shows a comparison between the proposed algorithm and previous efforts [20], a runtime comparison is omitted as our method is implemented as an optimized GPU code, while the latter is written in MATLAB and runs on the CPU.
Figure 5 shows that our demodulation routine is applicable to a wide category of samples. First, we tested our method on standard samples. The 1 μm bead in Fig. 5 is a common metrology sample used to verify the accuracy of phase sensitive microscopes. The polystyrene beads were suspended between two coverslips and imaged with a 40x/0.75 objective in oil immersion. Importantly, the round shaped structure remains completely unchanged after restoration.
The bovine spermatozoon shown in Fig. 5 has a dense halo artifact around the edges of the head region (40x/0.75). After processing, the halo disappears and the negative values are removed. Unlike the sperm cell in Fig. 5(b), the 4 μm thick slice of histopathological prostate tissue in Fig. 5(c) forms a continuous sheet spanning a large area of the microscope slide. The halo surrounds the gland wall (white arrow). This artifact effectively submerges fine extracellular structures under a large negative valued shadow. After applying our method, we can clearly see the cell walls of the small cells that make up the many lobbed acinary shaped gland (Fig. 5, white arrows). Importantly, we can correct the halo while preserving the relative thickness of gland wall. The ability to preserve low-frequency data while recovering high-frequency information is particularly important for studying adherent cells with complicated morphology.
To demonstrate the wide-ranging applications of our method, we performed halo removal on a red blood cell acquired with white light diffraction phase microscopy (wDPM [49], 40x/0.75NA objective). As wDPM is a self-referenced interferometer operating under broadband illumination, it, too, can display halo artifacts. As shown in Fig. 5, the halo from this very different microscope is also removed.
To validate our technique as a method to study cell growth and proliferation, we performed time-lapse imaging of a whole 35 mm petri dish over the course of 29 hours (Fig. 6, 20x/0.3NA objective). This is accomplished by using the automated imaging technique described in [39], where the image consists of a large number of mosaic tiles that are assembled and aligned to form a two gigapixel time-lapse sequence. Once assembled the sequence can be inspected with a “deep zoom” style image viewer (such as TrakEM2 [60]). By manually counting representative fields of view, we estimate that the dish contained sixty-four thousand neurons and forty-five thousand well-pronounced neurites.
Figure 7 illustrates the meaning of the artifacts overcome by our technique. As shown in panel A, we correct for the non-physical dip in the phase values near the cell bodies. Indeed, without this correction, much of the mass contribution from short neuronal extensions would be eliminated. Previously, this challenge was mitigated by thresholding out the halo-induced negative values such that no phase shift is allowed to be less than 0 rad [61]. Another category of error occurs when cells cluster together. Similar to the histopathology tissue in Fig. 5, the halo artifact obscures these contact points as well as details within the cell (Fig. 7, “Junctions”), which are important for studying cell-to-cell communication [62].
As shown in Fig. 8, the halo-free phase maps show an overall positive mass growth rate, while without numerical correction; these images display little to no growth. In contrast, without application of our halo correction routine, it is difficult to detect any mass growth, despite the direct observation of sprouting neurites.
To demonstrate our newfound ability to measure the subtle growth behavior of neuronal cultures, we calculate a histogram of growth rates (Fig. 8(a)). Following the protocol outlined in reference [63], we selected the mosaic tiles within the glass bottom portion of the dish, and obtain a time-lapse growth curve that measures the cellular mass. Under a linear model for cellular growth, the slope of this line gives a growth rate. As expected, after halo removal, the petri dish shows a trend for growth (Fig. 8(b)) as well a small portion of tiles where the overall mass decreased (Fig. 8(c)).
Time-lapse sequences of representative fields of view are shown in Visualization 1, Visualization 2, and Visualization 3. While the halo-impacted data incorrectly shows that, the cells in the petri dish are not growing. After applying our technique we can accurately study neuronal growth and proliferation.
Neurons exhibit growth rates an order of magnitude smaller than adherent cells, which, due to mitosis, double in mass, roughly, every 10-40 hours (see for points of comparison [24,64]). In practice, this introduces an instrument sensitivity requirement that is difficult to meet with many methods as imaging artifacts often exceed the 0.15 Rad phase shift of a typical neurite [12, 65]. Comparing to limited previous efforts, the values reported in this work are comparable with those in reference [66], within variability due to cell type and confluence. One of the few alternatives to optical assays of dry mass involves culturing cells on a purpose-built micro-cantilever device designed to measure mass by detecting changes in resonant frequency. Using such a technique, the authors in reference [67] reported a growth rate that is, approximately two times larger than what we measured. As those cells are phenotypically closer, we believe that the discrepancy can be attributed to selection bias. Here we measure the growth rates of whole fields of view compared to isolated cells. These fields typically contain over a hundred cells, some of which gain while others lose mass (during cell death, for example). To avoid selection bias, we interferometrically resolved the entire petri dish, to capture the dynamics of the whole population.
4. Conclusions
In summary, we present a halo removal technique capable of operating in real-time on existing phase contrast microscopes. Our method relies on using the Hilbert transform to perform integration of the initial phase data along different directions and corroborating those results to preserve the quantitative nature of high-frequency structures. Although the images used in this work were acquired primarily using a SLIM add-on module, we demonstrate that the procedure outlined here can be used in other common-path systems, affected by halos. We show that by correcting the phase values surrounding neuronal extensions, our technique can be used to assay growth and proliferation of cellular cultures in an automated, high-throughput fashion over extended periods without the use of fluorescent markers.
We anticipate that this development will be easy to implement in the microscopy field, as the SLIM module can outfit any phase contrast microscope and the numerical processing runs in real-time. We illustrated the applicability of our method to quantitative studies of sperm cell characterization, red blood cell imaging, tissue diagnosis, and adherent cell growth. However, we expect that halo-free quantitative phase imaging will find numerous other applications, once the technology is adopted broadly by the life science community.
Funding
National Science Foundation (NSF) Grants CBET-0939511 STC, DBI 14-50962 EAGER, and IIP-1353368.
Acknowledgments
The authors would like to thank Dr. Marcello Rubessa for providing the bovine sperm sample. The tissue microarray was prepared under the supervision of Dr. Andre Kajdacsy-Balla. Aliquots of frozen neurons were obtained from Dr. Jyothi Arikkath at the University of Nebraska Medical Center
Disclosures
G.P and C. B. P. have a financial interest in Phi Optics, Inc., a company developing quantitative phase imaging technology for materials and life science applications.
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