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NAD(P)H Fluorescence Lifetime Imaging for the Metabolic Analysis of the Murine Intestine and Parasites During Nematode Infection

Published: September 01, 2023
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Summary

The present protocol describes the NAD(P)H fluorescence lifetime imaging of an explanted murine intestine infected with the natural parasite Heligmosomoides polygyrus, which allows one to investigate metabolic processes both in host and parasite tissues in a spatially resolved manner.

Abstract

Parasites generally have a negative effect on the health of their host. They represent a huge health burden, as they globally affect the health of the infested human or animal in the long term and, thus, impact agricultural and socio-economic outcomes. However, parasite-driven immune-regulatory effects have been described, with potential therapeutic relevance for autoimmune diseases. While the metabolism in both the host and parasites contributes to their defense and is the basis for nematode survival in the intestine, it has remained largely understudied due to a lack of adequate technologies. We have developed and applied NAD(P)H fluorescence lifetime imaging to explanted murine intestinal tissue during infection with the natural nematode Heligmosomoides polygyrus to study the metabolic processes in both the host and parasites in a spatially resolved manner. The exploitation of the fluorescence lifetime of the co-enzymes nicotinamide adenine dinucleotide (NADH) and nicotinamide adenine dinucleotide phosphate (NADPH), hereafter NAD(P)H, which are preserved across species, depends on their binding status and the binding site on the enzymes catalyzing metabolic processes. Focusing on the most abundantly expressed NAD(P)H-dependent enzymes, the metabolic pathways associated with anaerobic glycolysis, oxidative phosphorylation/aerobic glycolysis, and NOX-based oxidative burst, as a major defense mechanism, were distinguished, and the metabolic crosstalk between the host and parasite during infection was characterized.

Introduction

Parasitic infections impose a huge burden on human health1,2. A correlation between the rise in autoimmune diseases and the decline in parasitic infections has been observed in industrial countries. It is known that parasites can have beneficial effects by dampening excessive host immune responses. H. polygyrus is a natural parasite found in the intestine in rodents, and this parasite is known to induce immunoregulatory mechanisms that reduce the anti-parasitic immune response of the host via, among other mechanisms, the induction of regulatory T cells (Treg) in the infected host3,4,5,6,7,8,9,10,11. Those regulatory mechanisms are especially of interest in degenerative autoimmune diseases.

The analysis of the metabolic crosstalk between the host and intestinal nematodes remains widely neglected, although metabolism plays an important role in both the host and parasites for defense, survival, and function. We propose to adapt and apply NADH and NADPH fluorescence lifetime imaging upon two-photon excitation, a technology already widely used in different physiological and pathophysiological situations in mammalian cells and tissues12, to investigate host and nematode metabolism in living tissues correlatively.

NADH and NADPH, referred to as NAD(P)H, are ubiquitous molecules that are preserved in all cell-based lifeforms and play the role of co-enzymes in various metabolic pathways. For instance, they are involved in energy production, reductive biosynthesis, and NADPH oxidase-mediated reactive oxygen species (ROS) production, which are mainly linked to cell defense and cell communication13,14,15,16,17,20. Both co-enzymes emit fluorescence at ~450 nm upon two-photon excitation at 750 nm, thus allowing for marker-free metabolic imaging in cells and tissues19,21. Exciting both NADH and NADPH with only one wavelength is possible due to their similar and rather broad two-photon excitation spectra21.

The fluorescence lifetime of the co-enzyme NAD(P)H is directly dependent on the enzyme to which it binds18,21,22,23. Due to its chemical structure allowing for intramolecular energy transfer, the excited NADH or NADPH molecule loses energy through internal conversion processes, at a rate depending on its binding properties, to the enzymes (catalyst) before it relaxes and emits a fluorescence photon. This lifetime gives insight into the NAD(P)H binding site on the enzyme and, thus, the preferential biochemical reaction taking place19,21,22,23,24,25. The fluorescence lifetime of free NADH and NADPH molecules amounts to ~450 ps, whereas their fluorescence lifetime when bound to an enzyme is much longer (~2,000 ps) and depends on their binding site on the respective enzyme21.

There are more than 370 enzymes involved in NAD(P)H-linked processes; however, only the most abundant will be able to contribute to the resulting NAD(P)H fluorescence lifetime within the excitation range of the microscope. Using RNASeq data from mammal cells, we identified the most abundant NAD(P)H-dependent enzymes and generated a fluorescence lifetime reference to interpret the data generated in tissue and cell samples18. Thereby, this work distinguished for instance between the preferential activity of lactate dehydrogenase (LDH), which is associated with anaerobic glycolytic metabolic pathways, and isocitrate dehydrogenase (IDH) and pyruvate dehydrogenase (PDH) activity, which are mainly involved in aerobic glycolysis/oxidative phosphorylation metabolic pathways16,20. Additionally, NADPH binding to NADPH oxidases, which are the enzymes that are mainly responsible for oxidative burst, can be easily resolved due to the characteristic location of these enzymes in the cell (membrane-bound) and because of the particularly long NADPH fluorescence lifetime (3,650 ps)18,24,29,30,32. RNASeq data from H. polygyrus shows that the reference generated for mammalian cells also applies in adapted form to this nematode27.

Hence, in this work, by performing NAD(P)H fluorescence lifetime imaging (FLIM) in freshly explanted duodenum samples of mice infected with H. polygyrus, information on the ratio between free and enzyme-bound NAD(P)H was acquired, which depicted the general metabolic activity in all tissues, as well as the predominantly active enzyme in each pixel of the image (i.e., the enzyme to which NAD(P)H preferentially binds in that specific location). The success of these experiments relies on the accurate sample preparation of the explanted intestine, the reliable live imaging of the NAD(P)H fluorescence lifetime at subcellular resolution, and standardized data evaluation, as discussed in this protocol.

Protocol

All the experiments were performed in accordance with the National Animal Protection Guidelines and approved by the German Animal Ethics Committee for the protection of animals (G0176/16 and G0207/19). The protocol describes NAD(P)H fluorescence lifetime imaging data acquisition and data evaluation, which allow one to assess the general metabolic activity and specific metabolic pathways in both the host intestine and the parasites upon infection with the natural murine intestinal nematode, H. polygyrus. For this purpose, female C57BL/6 mice aged 10-12 weeks old were infected with 200 stage 3 larvae (L3). At different time points of the infection, the infected mice were sacrificed, and the duodenums were excised and prepared for imaging as previously described33. The duodenums of uninfected, age- and sex-matched mice were similarly prepared and imaged for control purposes. For maintaining the tissue properties necessary for further imaging and analysis, the samples must be processed immediately after explanting, and the next steps (steps 1.1-1.7) must be performed swiftly (Figure 1B).

1. Sample preparation

  1. Cut pieces of ~1 cm length from the initially excised duodenum.
  2. Glue the straightened tissue tube in the middle of a small Petri dish with fast-curing tissue glue (47 mm diameter, 10 mm rim height, see Table of Materials) (Figure 1A2).
  3. Apply a thin layer of additional glue to the bottom of the Petri dish over a large area around the tissue with a micro-brush (Figure 1A2).
  4. Use blunt scissors to make an incision along the entire length of the physically fixed intestine in the vicinity of the bottom of the Petri dish (Figure 1A3).
  5. Unfold the intestine with blunt tweezers so that the abluminal side comes into complete contact with the glue. Thus, the intestine lies fixed by the glue with the luminal side facing upward (Figure 1A4).
    1. In the case of an infected mouse, count the worms under a stereomicroscope (magnification 10x) to ensure the infection was successful (Figure 1A5).
  6. Seal the intestine with agarose to protect it from drying out. Here, 0.5%-0.9% agarose was used to protect the sensitive intestinal tissue from burning due to its low-temperature melting point of approximately 38 °C. Draw 1 mL of agarose into a pipette, and drizzle carefully onto the intestine with tender contact between the pipette tip and the tissue so that a thin layer of about 0.5 mm thickness completely encloses the tissue (Figure 1A6).
  7. Fill up the Petri dishes with the samples sealed in agarose with PBS (10%) at room temperature, and then close them with the lid. Either image the samples directly, or place them on ice in a thermally insulating box to queue for measuring. Place the first prepared sample under the microscope objective on a heating plate set to 37 °C (Figure 1A8).

2. Imaging

NOTE: The microscope system used to perform NAD(P)H-FLIM in infected and healthy duodenal tissue samples consists of the devices listed and described in Figure 2 and the Table of Materials. Use ImSpector 208 as the controlling software for all the modules used.

  1. To initially find the region of interest (ROI), place the sample in the Petri dish under the objective, and move along the x- and y-plane by hand to find a suitable ROI by visual inspection using the wide-field fluorescence microscopy mode.
  2. Switch the imaging system to two-photon excitation using either PMT detection or time-correlated single-photon counting (TCSPC) detection by switching modes in the software. Take special care to ensure that the environment is dark and vibration-free, to enclose the microscope in lightproof curtains, and to use a pneumatic suspended optical table, if possible.
  3. Immerse the objective lens in the Petri dish containing the sample with the controlling software by clicking on the lens-system icon and turning the mouse wheel to alter the z-position.
  4. Tune the laser to 765 nm, and set the maximum laser power to 10 %, which corresponds to 30 mW under the objective, by typing in the desired wavelength in the wavelength panel of the software. Adjust the laser power if needed. Measure below a gain of 40% (~30 mW to 100 mW) to avoid tissue photodamage and unwanted metabolic shifts.
  5. In the software, set the step size of the z-stage to 2 µm, which corresponds to the axial resolution of the microscope at 765 nm in tissue.
  6. Set the line scanning frequency to 400 Hz in the galvo mirror panel, resulting in a pixel dwell time of 4.95 µs.
  7. Set the image averaging over two to four images by choosing the averaging number from the dropdown menu in the software (i.e., scan the ROI two to four times to acquire smoother images). In this way, the total pixel dwell time is increased to 9.9-19.8 µs for the benefit of a higher signal-to-noise ratio (SNR) in the analysis process.
  8. Set the image field of view (FOV) to 505 pixels x 505 pixels (500 x 500 µm²) by choosing the parameters in the FOV panel in the software.
  9. For each measurement, calibrate the module time in advance to ensure the optimal function of the TCSPC electronics by clicking on initialize in the calibrating window in the hardware menu for the TCSPC.
  10. Adjust the fast photodiode externally to detect the Ti:Sa laser pulse train by using a fast oscilloscope.
    NOTE: The signal of the photodiode is used to trigger the hPMT detection and photon counting by the TCSPC with respect to the excitation pulse. The detection is repeated every 12.5 ns (i.e., the time between two consecutive laser pulses), corresponding to the repetition rate of the Ti:Sa laser (80 MHz).
  11. Define the range of the measurement depth by first setting the averaging to 1 and the gain of the laser power to ~10%, then starting the video mode (click on the video button), searching for the depth from which the signal can be still acquired by clicking the lens system icon again, and using the mouse wheel to progress into the sample while increasing the gain progressively.
  12. For the NAD(P)H-FLIM images of the tissue samples measured in FLIM mode, set the system to 765 nm at a maximum of 100 mW nominal power. Detect the fluorescence signal of NAD(P)H (466/60 nm) with the hybrid PMT at a gain of 97%, which is set in the software. The TCSPC module counts photons over 227 time windows (bins), each of 55 ps.
  13. Right-click on the displayed image during the measurement in the software, and choose display > T-PROFILE to visualize the decay curve acquired by the system.
  14. Note the number of bins before the laser pulse in the decay curve for later analysis.
  15. Acquire the data by clicking on start measurement.
    NOTE: The data must match a specific format. Each slice, recorded at any tissue depth, is separated by a distance of 2 µm, and has an area of 500 µm x 500 µm, and the slices are acquired as a stack of 500 µm x 500 µm slices at 227 x 55 ps (Figure 3A) time points. Each voxel contains a spatially resolved (in the x-plane and y-plane) photon arrival time histogram. This represents the fluorescence decay (Figure 3B). A typically measured volume must be in the form of a hyper stack with dimensions of ~500 µm x 500 µm x 100-300 µm and 227 bins, where every slice in the z-plane contains the time-dependent intensity data as described above. For an exemplary set of measurement data, this results in (505 x 505 x 227) x 100 pixels (16 bit) and corresponds to about 4 GB.

3. Data analysis

NOTE: For the phasor analysis of the NAD(P)H-FLIM images, the program for calculating the lifetimes is a custom-written code in Python33.

  1. Use Anaconda with a Python 3.7 distribution on the Spyder IDE (see Table of Materials). The code uses Pythons' standard libraries.
  2. Load the code into the IDE, and execute. A file path dialog opens.
  3. Choose the folder with the raw data to analyze. The code is programmed to choose three parameters before the analysis through a Tkinter user input dialog with checkboxes, a dropdown menu, and text fields.
  4. Choose an offset within the input dialog. Determine the offset as the number of the first slices in the time stack that are not analyzed.
    NOTE: The parameter cuts the time points before the excitation pulse. With the calibration of the system and trigger diode, this value must be approximately five slices or the number of dead bins before laser excitation, as described in step 2.14.
  5. Choose the representation of the phasor plots within the input dialog's dropdown menu. Here, choose the appearance of the data points (cloud-like or topographic), as well as axis ticks of the semicircle time axis (enzymes or time [ps]), as options from the dropdown menu.
  6. Click on OK.
  7. Check that the code calculates two types of information from the NAD(P)H-FLIM z-stacks.
    1. First, measure the spatial information of each volume slice by the collapse of the TCSPC stacks, where the 227 time-resolved photon counting histograms are projected onto a single slice called the intensity projection image (Figure 3G), and from the Fourier-based analysis of the exponential decay curves (as described by Leben et al.18), and from the normalized real and imaginary part for each pixel in each volume slice (Figure 3C).
    2. From the real and imaginary images, obtain the phasor plots (Figure 3D) and the average fluorescence lifetime (t) image (color-coded, spatially resolved average decay constants for each voxel) (Figure 3E).
      NOTE: As described in the introduction, the fluorescence lifetime of NAD(P)H, when bound to enzymes, is determined by the binding site of the co-enzyme to the respective enzyme.
    3. Determine the contribution of the respective enzyme to the metabolic activity by generating the vector between the phase vector of each pixel and the phase vector of unbound NAD(P)H and projecting it onto the half-circle in the phasor plot. The half-circle represents all the possible mono-exponential decays of fluorescence lifetimes in pure compounds .
    4. Using the previously generated reference of fluorescence lifetimes of NAD(P)H bound to most abundant NAD(P)H-dependent enzymes18,33 (Supplementary Figure 1), and calculate the probability of the activation of these enzymes.
      NOTE: A color code of the most dominant enzyme (i.e., of the enzyme for which the highest activation probability is calculated) is attributed to each pixel, thus producing an enzyme map (Figure 3F).
  8. From the ratio of free (unbound) to enzyme-bound NAD(P)H, specifically from the vectorial ratio in the phasor plot between free NAD(P)H at 450 ps and the enzyme-bound state, calculate the general metabolic activity as a percentage between 0% *only unbound NAD(P)H) and 100% (only enzyme-bound NAD(P)H). By attributing a metabolic activity (0%-100%) value to each pixel, a (color-coded) activity map is generated (Figure 3F).
  9. Overlay the resulting maps with the intensity images to gain additional morphologic information. Here, use an ImageJ macro (see Table of Materials) to overlay the hue and saturation of the enzyme or activity maps with the brightness of the intensity images.
    1. Ensure that the macro iterates over the whole stack. For every slice (depth) in the stack, it must split the intensity image and the map of choice respectively into HUE, SATURATION, and BRIGHTNESS (Image > type > HSB stack).
    2. Separate the main channels for both the HSB stacks (Image > stacks > stack to images).
    3. Close the HUE and SATURATION of the intensity stack, as well as the BRIGHTNESS of the map stack (close(slicename_HUE), close(slicename_BRIGHTNESS), …).
    4. Recombine the remaining channels to form a new HSB stack consisting of the HUE and SATURATION from the slice of the map of interest and the BRIGHTNESS from the intensity image (Image > stacks > images to stack).
    5. Change the image type to RGB for a better visual appearance (Image > type > RGB color).

4. Tissue segmentation

NOTE: Use a pre-trained U-Net-based network (ILASTIK, see Table of Materials) for segmenting the intestinal host and nematode tissue, respectively, and furthermore, the epithelium and lamina propria in the host and the high NAD(P)H fluorescence signal areas and low NAD(P)H fluorescence signal areas in the nematode.

  1. Open ILASTIK, and choose a new project and pixel classification.
  2. Load the previously calculated intensity projection from step 3.7.1 by clicking on Add new > Add separate images. Load random slices from multiple measurements into the container.
  3. Click on Feature selection > select features. Add a sigma value of 50 (unitless weight), and tick all the features to be active.
    NOTE: While the sigma value determines the weight of the features, the features determine the classes and the ability of the network to recognize edges, shapes, texture, or color.
  4. Click on Training, and name the labels according to the tissue to segment (e.g., Epithelium, Background, etc.) by clicking on them. Select a label, and color all the pixels within the image corresponding to that label.
  5. Repeat for the other labels.
  6. Repeat for approximately half the images in the loaded dataset.
  7. Click on Live Update, and let the model predict the labels for the remaining unlabeled images.
  8. Correct approximately half of the solely predicted and unlabeled images by relabeling the falsely estimated segmentations, and repeat the Live Update.
  9. Repeat this step until the network has learned to estimate the desired tissue of interest correctly; ensure that the confidence of the network shown on the left close to the label names ranges between 95% and 98%.
  10. Load a new dataset as described in step 3.11, this time with all slices from one measurement, and click on Prediction Export.
  11. In the "Source dropdown" menu, choose Simple Segmentation; in "Format", choose the output to be in tiff format; and in "Choose Export Image Settings", select save path for the output. Click on export.
  12. This creates binary masks for the tissue type of interest. Since they consist of slices where the segmented tissue of interest has a pixel value of 1 and the rest have a pixel value of 0 (Figure 3H), simply multiply the binary masks with the generated data as listed in step 1.1 and steps 1.4-1.7. This leads to masked data (Figure 3 I, J, M). Use ImageJ for this step (Process > Image calculator > multiply).
  13. For each volume slice, calculate a signal-to-noise ratio (SNR) from the masked intensity images. Use an ImageJ macro for that purpose. Create your program such that it calculates the signal-to-noise ratio (SNR) from the segmented and masked images.
    1. Use the segmented background from step 3.21 as background (BG) and the segmented tissue of interest as signal (SIG) by iterating over every pixel of every slice with a value greater than 0 with two nested for-loops. Compute the SNR with the following formula33:
      Equation 1
      where mean SIG refers to the mean value of the signal histogram, mean BG refers to the mean value of the background histogram, and std BG refers to the standard deviation of the background histogram.
    2. Discard volume slices with an SNR value lower than 5 from further analysis.
  14. With the Python script18,33, create an enzyme-frequency graph from the enzyme maps for each tissue type by summing and averaging the enzymes slice-wise and then normalizing them to a 100 µm³ tissue volume (Figure 3K, N).
    1. Code the script such that it loads the masked enzyme map.
    2. Iterate over every pixel, calculate the sum of pixels of the same enzyme, and then divide by the volume analyzed (the total of all pixels).
    3. Group the calculated abundances in their metabolic states, and average by dividing by the number of enzymes in each group. Write code that attributes metabolic states grouped around LDH to anaerobic glycolysis-like pathways, enzyme activity grouped around PDH/IDH/GAPDH to aerobic glycolysis/oxPhos-like pathways, and NADPH oxidase activity (NOX activity) to oxidative burst/oxidative stress used for defense (Figure 3L, O).
    4. Use the matplotlib library from Python to visualize the data with boxplots.
  15. Calculate the activity of the tissue from the masked activity maps (Figure 3F) as the mean value over each volume slice for all pixels with a value greater than 0 using an ImageJ macro by running Analyze > Measure.
  16. Visualize all the generated images side by side with ImageJ/FIJI.

Representative Results

Using the current NAD(P)H-FLIM procedure28,29,33 combined with the described phasor analysis method, the metabolic activity and metabolic pathways in healthy and infected duodenums were measured at day 6, day 10, day 12, and day 14 post-infection with the murine intestinal nematode H. polygyrus.

Preserved intestinal tissue viability in the excised duodenum revealed by NAD(P)H-FLIM
In order to investigate tissue activity ex vivo and to determine how long excised tissue samples remain metabolically active for compared to tissue in living organisms, NAD(P)H-FLIM was performed on excised duodenal tissue from healthy mice that was (i) freshly excised or (ii) kept on ice for 3 h, and the results were compared to already published NAD(P)H-FLIM data acquired in the intestine of anesthetized mice32. The preparation of the excised duodenum and the imaging experiment were carried out as described in the sample preparation protocol (step 1).

The fluorescence lifetime of NAD(P)H was measured over a period of 3 h and at four different tissue depths (villus tip: ~0 µm, upper villus: ~−50 µm, lower villus: ~−100 µm, base of the villus: ~−200 µm). From the NAD(P)H-FLIM data acquired in this way, activity maps were generated showing the general metabolic activity in the different regions of the villi over time. The general metabolic activity (free to enzyme-bound NAD(P)H) is considered to be an indicator of the degeneration of the tissue (Figure 4A,B).

A second series of measurements with similar tissue samples was carried out with another piece of intestine. Here, the measurements were not taken directly after sacrifice, but the tissue was placed on ice for 3 h after preparation to mimic the maximum waiting time for samples placed on ice in the real experiment. After a warm-up time of ~15 min using a heating plate, imaging at different tissue depths was performed (Figure 4C,D). The metabolic activity measured in the two previously described setups was in good agreement with the metabolic activity measured by NAD(P)H-FLIM under intravital conditions in the murine intestine32.

Detection of different metabolic and enzyme activity in host intestinal tissue and H. polygyrus over the course of acute infection using NAD(P)H-FLIM
Over the course of the disease from day 6 post infection, when the worm larvae develop in the submucosa, burst into the lumen at day 10, and infiltrate the intestinal niche, an increase in overall metabolic activity of the parasites was observed. From a more dormant state at day 6 58.0% ± 2.2%, the metabolic activity increased steadily to 73.1% ± 5.9%.

The initial state of the parasite during early infection is reflected in its metabolic fingerprint; specifically, at day 6, energy production was balanced between anaerobic and aerobic pathways, indicating imminent breakthrough into the lumen. There was then a shift in the energy production to strongly anaerobic glycolysis-like behavior, presumably due to the increased energy need for migrating into the lumen (day 10), and the parasites showed an oxidative phosphorylation/aerobic glycolysis-like pathway for energy production later on (measured up to day 14). The general metabolic activity of the host remained comparable to the healthy state at 74.0% ± 7.6% (day 6 to 14), whereas the metabolic pathways in the host tissue were dominantly aerobic/oxidative phosphorylation during the course of the acute infection.

The defense reaction of the parasites is based on DUOX2 activation, as the only member of the NADPH oxidase family in this species. This reaction is negligible in the early stage of the infection, at day 6, but increases at later time points during acute infection Hence, we detected a drastic increase in DUOX2 activation starting from day 10, after luminal transmigration, and throughout the acute phase of infection. (Figure 5E,F)

The Inflammatory behavior of the host, on the other hand, increased dramatically compared to a healthy state at day 10 post infection, with the appearance of the parasite in the lumen, and ceased later on at day 14 post infection. This behavior parallels the fact that parasites induce a regulatory phenotype in the host immune system at the later stages (chronic) stages of infection4,6,7 (Figure 5AD).

Figure 1
Figure 1: Preparation of the murine intestinal tissue for NAD(P)H-FLIM with the multiphoton laser-scanning microscope. (A) Preparation requires removing the piece of intestine and trimming it to about 1 cm in length (1), spreading tissue glue on a Petri dish and placing the tube on it (2), cutting the tube longitudinally with blunt scissors near the bottom (3), unfolding the tube to open the luminal side with blunt forceps (4), counting the worms under a stereomicroscope (5), sealing the tissue with low-concentration agarose in a thin layer about 0.5 mm thick (6), filling the dish with 10 % PBS (7), and imaging the tissue sample or placing it on ice to await processing (8). (B) Time axis for processing a single tissue sample in minutes from the removal of the duodenum to placement under the microscope. The measurement time of a sample involved finding an ROI, warming up the cooled samples on a heating element to 37 °C in the meantime, and then acquiring the images. (C) The average measurement time of 45 min (determined afterward from the data) is plotted in (C) against the four infection stages investigated, as well as healthy tissue. Please click here to view a larger version of this figure.

Figure 2
Figure 2: Schematic of the experimental setup. The system consists of a tunable Ti:Sa laser titanium:sapphire LASER Chameleon ULTRA II (690-1,080 nm, 80 MHz, pulse width of 140 fs) with a commercial scan head Trimscope II. A water-immersion objective lens (20x, NA 1.05) focuses the excitation light. A system of dichroic mirrors, interference filters (525/50 nm, 593/40 nm, 655/40 nm), and PMTs detects the fluorescence signal. The fluorescence lifetime data are detected using a hybrid PMT (GaAsP) (hPMT) at channel 466/60 nm, which is cooled by a cooling module (CM) and is connected to a time-correlated single photon counting module; this process involves detecting photons within a bin of 55 ps and acquiring data over 9 ns with a Gaussian-shaped instrument response function of 250 ps FWHM (TCSPC). To trigger the TCSPC, 5%-8% of the initial pulse intensity is split from the excitation beam and is redirected in an ultra-fast photodiode (PD). To obtain the two-photon excitation in real-time mode without the TCSPC, PMTs with color filters (525 nm, 593 nm, 655 nm) are used. A broadband mercury-vapor lamp (MV) and an ocular pathway are used for the observation of the probe (OP) for visual fluorescence microscopy and positioning the sample, and the ROI is found with an intravital stage (IS) with a step size of 1 µm (IS). Please click here to view a larger version of this figure.

Figure 3
Figure 3: Phasor analysis of the time-domain NAD(P)H-FLIM data. (A) The raw data are acquired in four dimensions: the spatial information (x, y, z; 505 pixels = 500 µm for xy) and the TCSPC data (227 time points of 55 ps each for t). (B) Each pixel in the TCSPC raw data along t as shown in (A) contains the fluorescence intensity decay after an excitation pulse in 227 time bins of 55 ps each. The time-domain TCSPC data is Gaussian pre-convoluted and transferred to a virtual phase domain by calculating the normalized, discrete Fourier transform numerical (phasor approach). This results in a complex number of every pixel in the image, containing a real and imaginary part, and this can be split up and represented as two intensity-coded images per slice measured: (C, left) the real part and (C, right) the imaginary part. (D) The real and imaginary parts provide the coordinates in the phasor plot, where every point in the plot has a spatial counterpart and its decay information from (B). The semicircular time axis indicates mono-exponential lifetimes. (E) The fluorescence lifetimes are calculated and color-coded from (C) using the continuous Fourier (back-) transformation). This is equivalent to a mono-exponential analysis of the intensity decay curve in (B). Following a previously developed analysis framework, (F, right) a map of NAD(P)H-dependent enzymes and (F, left) a map of the enzymatic activity are generated. (G) In parallel, the TCSPC raw data are collapsed into the intensity projection, losing the temporal information and preserving only the spatial information. (H) From this, masks are generated using ILASTIK for the desired tissue of interest by trained segmentation algorithms, which are overlayed with the intensity projection; an example is shown here for (I, left) parasite and (I, right) host at day 14 post-infection. (J, left) The masked activity map and masked enzyme map of (J, right) the parasite and of (M) the host tissue. From the masked maps, enzyme-frequency graphs for the parasite are generated by counting the enzymes and normalizing the abundance percentage to 100 µm3 (K). Following the analysis of Liublin et al.33, the enzyme abundances were grouped according to the metabolic pathways of aerobic glycolysis and oxidative phosphorylation/anaerobic glycolysis, as well as oxidative burst and a metabolically inactive state (unbound, free NAD(P)H) for (L) the parasite and for (N,O) the host tissue. All scale bars are 100 µm. Please click here to view a larger version of this figure.

Figure 4
Figure 4: Pre-evaluation of the vitality of the explanted tissue. (A) Map of the enzymatic activity from the freshly explanted duodenum of a healthy C57/bl6 mouse, as described in section 3. The tissue was imaged directly after preparation in 20 min intervals for a time of 106 min in total on a heating plate at 37 °C. The measurements were conducted at four different tissue depths: the tips of the villi (0 µm), the upper middle (−50 µm), the lower middle (−100 µm), and the base of the villi (−200 µm). The examples shown in (A) are the upper middle region of the villi 5 min and 68 min after preparation. For each measurement time point, the enzymatic activity averaged over all depths was calculated from the segmented activity maps of the lamina propria and epithelial tissue and plotted over the measurement time. (B) The graph shows the vitality and degeneration behavior of the explanted tissue after sacrifice and preparation over 106 min. To cover the tissue degeneration behavior of the prepared samples that were put on ice to queue for measurement, as described in section 1, freshly explanted duodenum from a healthy C57/bl6 mouse was prepared and stored on ice for 3 h to mimic the maximum waiting time that occurred during the experiments. (C) The tissue was then heated up to 37 °C and imaged with NAD(P)H-FLIM, and an activity map was generated. The corresponding average activities of the tissue were calculated from the segmented data as described for (B), and (D) this resulted in an activity of 57.8% ± 4.6% for the lamina propria and 68.5% ± 5.7% for the epithelium). All scale bars are 250 µm. Please click here to view a larger version of this figure.

Figure 5
Figure 5: NAD(P)H-FLIM of host villi and nematode tissue indicating the metabolic state and preferential metabolic pathways in the host and parasite. (A) The average general metabolic activity determined from the masked activity maps for the epithelium (EP) (78.4% ± 5.5%) and lamina propria (LP) (76.3% ± 5.2%) in healthy murine duodenum. (B) Following our analysis, the enzyme abundances were grouped according to the metabolic pathways, including aerobic glycolysis, oxidative phosphorylation/anaerobic glycolysis, and oxidative burst for the epithelium (EP) and lamina propria (LP) in healthy murine duodenum. (C,D) Similar to (A) and (B), an analysis was performed for the host tissue acquired over the course of the acute infection. The average metabolic activity of the host tissue at day 6 was determined to be 74.0% ± 7.6%, at day 10 was 72.4% ± 10.5%, and at day 14 was 73.5% ± 11.4%. (E,F) As in (C) and (D), the parasite tissue was analyzed over the course of the acute phase of the disease. The average metabolic activity of the parasite at day 6 was (58.0% ± 2%, at day 10 was 61.1% ± 9.9%, at day 12 was 64.5% ± 5.8%, and at day 14 was 73.1% ± 5.9%. Statistical analysis was performed using an ANOVA test (ns p > 0.05, *p < 0.05, **p < 0.01, ***p < 0.001). Please click here to view a larger version of this figure.

Supplementary Figure 1: NAD(P)H binding state-dependent fluorescence lifetimes. Schematic representation of (A I) unbound (free) NAD(P)H upon excitation by photon absorption at time point 0 on the timeline and its binding-state specific fluorescence lifetime (τ) at 450 ps. The same process is shown for (A II) NADH bound to LDH and (A III) PDH, with fluorescence lifetimes at 1,600 ps and 2,470 ps, respectively, and NADPH bound to NADPH oxidases (NOX) (A IV) with its fluorescence lifetime at 3,650 ps. (B) Table of the characterized fluorescence lifetimes of NAD(P)H bound to the most abundant enzymes. Please click here to download this File.

Discussion

The critical steps within the protocol occur during the preparation and when finding the ROI. Fibers of partially digested food represent a challenge for imaging, mainly due to the endogenous luminescence of the fibers overlapping with the NAD(P)H fluorescence, but also due to their harmonic generation signal. It is of great importance to find ROIs that are free from feces. We aimed to avoid measuring areas containing feces. Washing was avoided because this affects the integrity of the fragile villi and influences the mucus viscosity. Additionally, the entire preparation procedure should preferably last about 5-10 min per sample, to avoid tissue degeneration and drying. Further, the low-concentration agarose used mimics the viscosity of the intestinal mucus34. Hence, it can be ensured that the villi do not collapse while the worms move freely during the measurement. The measurement must not last longer than 45 min (Figure 1A,B and Figure 1A,B,C) to preserve the best conditions for imaging the cellular metabolism. Therefore, the region of interest (ROI) search should not take longer than 15 min. However, to ensure that the tissue kept on ice heats up to the desired 37 °C on the heating plate, imaging should be performed after ~10 min. The imaging typically lasts 45 min (see the TCSPC data analysis for controlling tissue viability before and during measurement; Figure 1C and Figure 4). When searching for a suitable ROI, ensure that at least 20% of the luminal side of the duodenal tissue (days 10-14 post-infection) under the objective lens is covered by worm tissue and that the movement of the parasite is visible. For day 6 and healthy individuals, a suitable ROI is defined as one where the tissue integrity is maintained after preparation (typically, far from the borders of the sample). This ensures the best training conditions for the segmentation model and gives sufficient data points for further analysis. For the infection stages from day 10 onward, when the worms break through into the lumen and attach to the villi, the data are only segmented according to the background and parasite and intestinal tissue with high enzyme activity, since in the presence of the worms, the villi are mostly unstructured due to nesting, and the tissue integrity of the villi is no longer present. For the tissue explanted at day 6 and from healthy mice, the tissue integrity allows for the segmentation of the lamina propria as well as the epithelium versus the background. Thus, using separately trained models for the conditions is highly recommended. The signal overloads the detectors for highly auto-fluorescent material, occasionally accruing within the measured volume. In this work, a dynamic laser-power control was used across the imaging depth in the software.

The limitations of this technique relate to the physical limitations of the excitation volume. The axial resolution of the objective lens was previously determined to be 1.3 µm at 850 nm28, but as it typically degrades in tissue, we found a step size of 2 µm to be appropriate. With a FOV of 0.5 mm x 0.5 mm, each slice is 505 pixels x 505 pixels. The lateral resolution of the objective is ~ 350 nm; however, due to resolution degradation24,28, a pixel size of ~ 1 µm was found to be sufficient. This means that the measurement follows a stochastic approach. The acquired decay curve is composed of the sum of all the decay curves, meaning all the fluorescence lifetimes within the exited volume of ~1 x 1 x 2 µm3. The photon count recorded over time for each voxel (the measured fluorescence lifetime or TCSPC stack) follows the form of one multi-exponential decay curve or the linear combination of multi-exponential decay curves, which is difficult to predict. A model-free normalized Fourier-based analysis was used to analyze the complex fluorescence decay curve in each voxel, termed the phasor analysis. The stacks were convolved in advance with a Gaussian filter (σ2) to reduce noise within the time-resolved fluorescence images. The loss of spatial resolution is acceptable and is a trade-off for better fluorescence lifetime resolution.

The frame-acquiring time is in the range of 2.5 s to 7 s (averaging), and the acquisition time for a typical z-stack of 500 x 500 x 200 µm³ (505 x 505 x 101 voxel) takes ~ 450 s (7.5 min). These times often result in moving artifacts caused by the parasites during one measurement. The data remain usable in this case. Occasionally, the parasites move outside the measured volume during the measurement.

Using NADH and NADPH fluorescence lifetime imaging of excised murine duodenal tissue from mice infected with the nematode H. polygyrus and our previously published analysis framework using the reference fluorescence lifetimes of NAD(P)H bound to frequent NAD(P)H-dependent enzymes, the general metabolic activity and distinct metabolic pathways in the host intestinal tissue and parasite tissue were visualized and analyzed; this analysis revealed the metabolic crosstalk between the two. Alternatively, if the information on the overall metabolic activity or on the balance between NADH and NADPH is of interest, generally applicable robust algorithms and software routines are available and can be used22,23.

The protocol presented here and the established analysis procedure represent a generalized method for measuring metabolism and metabolic pathways that is applicable to other organs and other types of pathologies13,15,16,17,19,20.

Compared with, for example, single-cell analysis with cytometry, the elegance of the method lies in the possibility for obtaining subcellular spatial information about metabolic pathways with minimal intervention and in a label-free manner in biological systems, with the possibility of the additional use of markers or dyes for a higher information density. The interference with the biological tissue and the processes of infection linked to it are minimal due to the choice of a parasite naturally occurring in rodents as well as the preliminary examination of the intestinal tissue and its comparability with living tissue in terms of vitality. With appropriate segmentation and normalization, comparable measurements can be generated across the fourth dimension (time).

Disclosures

The authors have nothing to disclose.

Acknowledgements

We thank Robert Günther for their excellent technical support. Financial support from the German Research Council (DFG) under Grant SPP2332 HA2542/12-1 (S.H.), NI1167/7-1 (R.A.N.), HA5354/11-1 (A.E.H.), and RA2544/1-1 (S.R.), under Grant SFB1444, P14 (R.A.N., A.E.H.), under Grant HA5354/8-2 (A.E.H.), and under Grant GRK2046 B4 and B5 (S.H., S.R.) and HA2542/8-1 (S.H.) are greatly acknowledged. W.L. received a PhD fellowship from the Berliner Hochschule für Technik, School of Applied Sciences, Berlin in Medical Physics/Physical Engineering.

Materials

Agarose Thermo fisher J32802.22 ultra pure
Blunt scissors FST fine science tools 14108-09 blund-blund 14 cm
Bodipy c12 thermo fisher D3822 1 mg solid
Control units, diode, TCSPC LaVision Biontech custom TrimScope II
DMSO Thermo fisher D12345 3 mL
Filters Chroma 755 466 ± 20, 525 ± 25, 593 ± 20,  655 ± 20 nm
Foliodrape sheet Hartmann 277500
Gloves Sigma-Aldrich Z423262 nitril
Halogen torch Leica This item has been phased out and is no longer available KL 1500 LCD
hPMT Hamamatsu, Germany H7422 GaAsP
Ilastik Netlify free Software Java Backend
ImageJ National Institutes of health free Software FIJI – standard plugins
Imspector LaVision Biontech Vers. 208
Intravital stage LaVision Biontech custom TrimScope II
Lens system 20x Zeiss custom W-plan-apochom 20x Waterimmersion NA 1.05
Mercury vapor torch LaVision Biontech custom
microbrush Fisher scientific 22-020-002 85 mm
Microscope  LaVision Biontech custom TrimScope II
Oscilloscope Rhode & Schwarz 1326.2000.22
PBS Sigma-Aldrich AM9624 0.5 L
Petri dish Sigma aldrich P5606 40 x 15 mm
Pipette thermo fisher 4651280N Einkanalpipette
Pipette tips thermo fisher 94056980 Spitzen mit Filter
PMT Hamamatsu, Japan H7422 GaAsP
Python Python Software foundation free Software Anaconda 3.7 Spyder IDE, standard librarys with KYTE
Sterio microscope  Leica This item has been phased out and is no longer available M26, 6.3x zoom
Ti:Sa LASER CHAMELION ULTRA II Coherent, APE 690-1080 nm tunable, 80MHz
Tissueglue 3M 51115053603 3 mL
Tweezers FST fine science tools 11049-10 blund, graefe, angeled
Tweezers FST fine science tools 91197-00 Dumont, curved

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Liublin, W., Rausch, S., Leben, R., Liebeskind, J., Hauser, A. E., Hartmann, S., Niesner, R. A. NAD(P)H Fluorescence Lifetime Imaging for the Metabolic Analysis of the Murine Intestine and Parasites During Nematode Infection. J. Vis. Exp. (199), e64982, doi:10.3791/64982 (2023).

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