Summary

Using a Cyclic Ion Mobility Spectrometer for Tandem Ion Mobility Experiments

Published: January 20, 2022
doi:

Summary

Ion mobility spectrometry (IMS) is an interesting complement to mass spectrometry for the characterization of biomolecules, notably because it is sensitive to isomerism. This protocol describes a tandem IMS (IMS/IMS) experiment, which allows the isolation of a molecule and the generation of the mobility profiles of its fragments.

Abstract

Accurate characterization of chemical structures is important to understand their underlying biological mechanisms and functional properties. Mass spectrometry (MS) is a popular tool but is not always sufficient to completely unveil all structural features. For example, although carbohydrates are biologically relevant, their characterization is complicated by numerous levels of isomerism. Ion mobility spectrometry (IMS) is an interesting complement because it is sensitive to ion conformations and, thus, to isomerism.

Furthermore, recent advances have significantly improved the technique: the last generation of Cyclic IMS instruments offers additional capabilities compared to linear IMS instruments, such as an increased resolving power or the possibility to perform tandem ion mobility (IMS/IMS) experiments. During IMS/IMS, an ion is selected based on its ion mobility, fragmented, and reanalyzed to obtain ion mobility information about its fragments. Recent work showed that the mobility profiles of the fragments contained in such IMS/IMS data can act as a fingerprint of a particular glycan and can be used in a molecular networking strategy to organize glycomics datasets in a structurally relevant way.

The goal of this protocol is thus to describe how to generate IMS/IMS data, from sample preparation to the final Collision Cross Section (CCS) calibration of the ion mobility dimension that yields reproducible spectra. Taking the example of one representative glycan, this protocol will show how to build an IMS/IMS control sequence on a Cyclic IMS instrument, how to account for this control sequence to translate IMS arrival time into drift time (i.e., the effective separation time applied to the ions), and how to extract the relevant mobility information from the raw data. This protocol is designed to clearly explain the critical points of an IMS/IMS experiment and thus help new Cyclic IMS users perform straightforward and reproducible acquisitions.

Introduction

The complete chemical characterization of biomolecules is key to understanding their underlying biological and functional properties. To this end, "omics" sciences have developed in recent years, aiming for the large-scale characterization of chemical structures at biological concentrations. In proteomics and metabolomics, MS has become a core tool to unravel the structural heterogeneity found in biological media-notably thanks to its sensitivity and ability to provide structural information through tandem MS (MS/MS). In MS/MS strategies, an ion is selected according to its mass, then fragmented, and finally, the masses of its fragments are acquired to establish a fingerprint of the molecule. MS/MS spectra can, in particular, be used to match spectral databases1,2, or tentatively reconstruct the parent structures3,4. Under the assumption that similar spectra belong to similar compounds, MS/MS data can also be used to build molecular networks (MNs) connecting related species through a similarity score5,6.

However, because of the inherent property of MS to detect the mass-to-charge ratio (m/z) of ions, the technique is blind to a number of structural features that fall within the range of (stereo)isomerism. For example, carbohydrates are made of several monosaccharide subunits, many of which are stereoisomers or even epimers (e.g., Glc vs. Gal or Glc vs. Man). These subunits are linked by glycosidic bonds, which can differ by the position of the linkage (regioisomerism) and the steric configuration of the anomeric carbon (anomerism). These characteristics make it difficult for standalone MS to distinguish between carbohydrate isomers7, and only regioisomerism can be addressed using high-energy activation methods8,9,10. Although derivatization is an option to disrupt the equivalence of stereoisomeric groups11, it requires extensive sample preparation. Another, more straightforward option is to couple MS with an analytical dimension sensitive to isomerism, such as IMS.

Because this protocol is designed for users who are already familiar with the basic concepts of IMS, and because detailed reviews are available elsewhere12,13, only a brief overview of the principles of IMS is given here. IMS is a gas-phase separation method that relies on the interaction of ions with a buffer gas and an electric field, ultimately separating ions according to their gas-phase conformations. Different principles of IMS coupled to MS can be found on commercial instruments: some operate at alternating high and low electric fields (field asymmetric IMS, FAIMS), while most operate within the low field limit—notably drift tube IMS (DTIMS, linearly decreasing electric field), traveling wave IMS (TWIMS, symmetric potential waves), and trapped IMS (TIMS, high flow of buffer gas trapping ions against electric fields)13. The low-field methods allow access to a so-called CCS, a property of the ion-gas pair that represents the surface (in Å2 or nm2) of the ion that interacts with the buffer gas during the separation. CCS is theoretically instrument-independent and is thus useful to generate data that can be reproduced between different laboratories14. Ion mobility separations can be impacted by various parameters and, notably, by fluctuations of the gas pressure and gas temperature in the mobility cell. The CCS calibration is a way to remedy this, as both the calibrant and the species of interest will be similarly affected13. However, it is mandatory to install the instrument in a temperature-controlled room and to have a reliable gas pressure control system.

An interesting evolution of IMS is IMS/IMS, which was first introduced in 2006 by Clemmer's group as an analog of MS/MS15,16. In IMS/IMS, an ion of interest is selectively isolated based on its ion mobility; it is then activated (until possible fragmentation), and a new IMS analysis of the activated ion or fragments is performed. In the first instrumental design, two IMS cells were put in series, separated by an ion funnel where the activation stood. Since then, although a number of IMS/IMS setups were proposed (for a review, see Eldrid and Thalassinos17), the first commercial mass spectrometer with IMS/IMS capability only became available in 201918. This instrument substantially improved the initial concept by combining it with another technological breakthrough: a cyclic design of the IMS cell.

The cyclic IMS cell theoretically allows increasing near-infinitely the drift path length and, thus, the resolving power of the instrument19. This was achieved by means of a particular instrument geometry, where the cyclic TWIMS cell is placed orthogonally to the main ion optical axis. A multifunction array region at the entrance of the IMS cell allows controlling the direction of the ion path: (i) sending ions sideways for IMS separation, (ii) forward for MS detection, or (iii) backward from the IMS cell to be stored in a prearray cell. From this prearray store cell, the ions can be activated and the fragments reinjected in the IMS cell for ion mobility measurement, an approach that has been successfully used to characterize stereoisomers20. Ultimately, the collected data contain ion mobility and m/z information for the precursor and its fragments.

In a recent publication that used this cyclic design for glycan analyses (Ollivier et al.21), we showed that the mobility profile of the fragments contained in such IMS/IMS data acts as a fingerprint of a biomolecule that can be used in a molecular networking strategy. The resulting network, called IM-MN, led to the organization of glycomics datasets in a structurally relevant way, whereas the network built solely from MS/MS data (MS-MN) revealed little information. To complement this publication and help Cyclic IMS users implement this workflow, this protocol provides a complete description of the protocol used to collect the data. This protocol focuses only on the generation of the IMS/IMS data that users can then use to build IM-MN networks (see21)—or for any other application of their choice. Building of IM-MN will not be considered herein, as protocols for molecular networking are already available22. The crucial points that must be followed to generate valuable and reproducible IMS/IMS acquisitions are highlighted. Taking the example of one of the oligosaccharides studied by Ollivier et al.21, the following steps are detailed: (i) sample preparation, (ii) tuning of the Cyclic IMS instrument, (iii) automated peak-picking of the data, and (iv) CCS calibration.

Protocol

NOTE: An overview of the protocol is provided in Figure 1. The parameters used for the experiments described in the present protocol can be found in Supplemental Table S1 and Supplemental Table S2.

1. Preparation of the sample solution

NOTE: The protocol is described using an arabinoxylan pentasaccharide (23-α-L-arabinofuranosyl-xylotetraose or XA2XX; see the Table of Materials) as an example.

  1. Preparation of the solvent: 500 µM LiCl in 50:50 H2O:MeOH (vol./vol.).
    1. Prepare a 100 mM stock solution of lithium chloride (LiCl) in H2O by weighing 212 mg of LiCl and add 50 mL of high-purity deionized water (H2O) in a 50 mL polypropylene conical tube. Shake until completely dissolved.
      NOTE: The solvent is doped with a lithium salt to promote the formation of [M+Li]+ adducts in the ion source of the spectrometer, as it usually yields better-quality fragmentation spectra compared to other alkali adducts. The use of LiCl is recommended because organic acids (and thus their salts) have previously been found to impact IMS profiles23.
    2. In a glass bottle, dilute the LiCl stock solution 200x: to 250 µL of the stock solution, add 24.75 mL of H2O. Add 25 mL of methanol (MeOH) to reach a final concentration of LiCl of 500 µM in 50:50 H2O:MeOH (v/v). Sonicate for 2 min to degas the solvent.
      NOTE: MeOH presents a health hazard (H225, H301, H311, H331, H370); manipulate under an extractor hood wearing a lab coat, gloves, and eye protection. A proportion of 50:50 MeOH/H2O (v/v) appears to be the best solvent for the ionization of oligosaccharides; however, MeOH can be substituted by acetonitrile (ACN) if needed.
  2. In a 1.5 mL polypropylene tube, weigh 1 mg of the carbohydrate. Dissolve with an appropriate volume of 500 µM LiCl to reach a concentration of 1 mg/mL. Dilute to a final concentration of 10 µg/mL in 50:50 MeOH/H2O + 500 µM LiCl. Store at 4 °C.
    NOTE: The concentration of 10 µg/mL was chosen to optimize the signal over all fragment ions during IMS/IMS-MS (this is for a pure compound; increase the concentration when working on mixtures). For the acquisition of reference IMS/IMS spectra, do not dilute the sample further: saturation of the MS detector prior to fragmentation is expected, although the instrument offers options to correct it (see step 3.2.).

2. Tuning of the Cyclic IMS mass spectrometer

NOTE: Software-related instructions (windows, menus, and commands) are highlighted in bold.

  1. Open the instrument console from the instrument control software (MS tune page, see the software details in the Table of Materials), and put the instrument in Operate mode. Wait for at least 3 h for the high voltages to stabilize in the IMS cell.
    NOTE: For the best reproducibility, the voltages in the IMS cell need to be completely stabilized. Turn on the high voltages and let the instrument stabilize overnight before any cyclic IMS analysis. Furthermore, the pressure and temperature in the ion mobility cell must be kept as constant as possible. Although a readback for the pressure is available in the Vacuum tab, no readback is available for the temperature. Keep the instrument in a thermostated laboratory. The instrument used in this work operates at 1.75 mbar in a laboratory thermostated at 20 °C.
  2. Cyclic IMS instrument setup
    NOTE: Standard solutions must be infused using the built-in fluidics system for the instrument setup.
    1. Place the fluidics containers filled with the appropriate manufacturer-provided standards on the fluidics system: Reservoir B ('Lockmass'): 10 pg/µL leucine enkephaline (LEU ENK) in 50:50 ACN/H2O + 0.1% formic acid; Reservoir C ('Calibrant'): MajorMix.
      NOTE: In this protocol, the MajorMix calibration solution will be used to calibrate both the m/z and CCS dimensions. For practical reasons, an external CCS calibration will be performed (see step 5 of the protocol); hence, it is also possible to use an in-house calibrant mixture for the CCS and another calibrant for the m/z (e.g., sodium formate or sodium iodide).
    2. On the Tune page of the Quartz console, go to the Fluidics tab. Set the sample fluidics to reservoir C and the reference fluidics to reservoir B. Infuse both solutions consecutively in the ion source to check the MS signal.
    3. Perform the ADC setup, detector setup (using LEU ENK), and mass calibration (see the Table of Materials for the calibration solution) from the Instrument Setup page according to the manufacturer's instructions.
  3. Record an IMS acquisition of the calibration solution with a single pass separation (use this for external IMS calibration).
    NOTE: The ion source and the traveling wave (TW) parameters (static wave height and wave velocity) must be kept constant during all the acquisitions (calibration and acquisitions). If the user does not have prior knowledge of the optimal parameters for his sample, this step can be performed after step 3 of the protocol (for [M+Li]+ adducts of neutral oligosaccharides, the representative results use a TW height of 16 V and TW velocity of 350 m/s, which give the best results).
    1. From the Fluidics tab, select baffle position Sample and infuse the calibrant (see the Table of Materials) in the ion source (using the built-in fluidics system) through the 'Sample' probe at a flow rate of 10 µL/min.
    2. Set up a single-pass IMS sequence. From the Tune page, put the instrument in Mobility mode, and open the Cyclic Sequence Control window. Select Advanced mode. From the Cyclic Functions tab of this new window, select Add Bundle, then Single/Multipass. Wait for a sequence of mobility events to appear in the Sequence tab of the same window.
      NOTE: To activate the real-time display, the user must apply the instrument parameters: click on Tune di TOF mode or Run di Mobility mode. Before switching the instrument between TOF and Mobility modes, it is necessary to Abort any running acquisition (including the Tune page display). The relative abundance of ions may vary between TOF mode and Mobility mode because of changes in the ion transmission parameters.
    3. Adapt the sequence so that all the calibrant ions make a single pass around the cyclic IMS racetrack. Do not change the Inject time or the Eject and acquire time; however, lower the Separate time to 1 ms (in the Sequence tab). If some ions of the calibration mixture do not fit in the displayed arrival time window, change the synchronization of the IMS with the pusher of the orthogonal acceleration TOF analyzer by increasing the number of Pushes Per Bin in the ADC Settings tab.
      NOTE: The times in the control sequence only control the multifunction array for ion gating. As long as the ions are engaged in their first (or nth) pass around the racetrack, they will finish said pass even if the direction of the TW has changed in the array in the meantime. Lowering the separation time to 1 ms means that the array will switch to ejection mode after 1 ms. This ensures that the faster ions will not have enough time to pass through the array and engage in a second pass before the slower ions finish their first pass. Therefore, all ions will be subjected to the same number of passes (i.e., one pass), which is necessary to perform IMS calibration.
    4. Record a 2-min acquisition. In the Cyclic Sequence Control window, click on Acquire to open the Acquisition Settings popup window. Input the Filename, Description, and Length of Acquisition (mins) and click Save.
  4. Record another 2 min acquisition of the calibration solution under the same conditions as step 2.3 (use this to check the quality of the CCS calibration). In the Cyclic Sequence Control window, click on Acquire to open the Acquisition Settings popup window. Input the Filename, Description, and Length of Acquisition (mins) and click Save.
  5. Thoroughly wash the fluidics system with 50:50 H2O/ACN to avoid crystallization of the calibrant in the peek tubing.

3. IMS/IMS-MS acquisition

  1. Using a syringe pump, infuse the (lithium-doped) sample at 10 µg/mL through the sample probe at a flow rate of 10 µL/min.
  2. Switch the instrument to TOF mode (from the MS tune page) to check the stability of the signal. Record a full MS acquisition (1 min) of the sample, which will be useful to check the isotopic pattern and the presence of potential contaminants.
    NOTE: Because the sample concentration is chosen to obtain a good ion signal for the fragments, a TOF saturation may be observed at this step. TOF saturation can be identified using the following artifacts: (i) an artificially increased MS resolution, (ii) a change in isotopic ratios, and (iii) a multitude of low-abundance peaks in-between isotopes. Use the DRE Lens (Dynamic Range enhancement, Quad/MS Profile/DRE tab of the main Tune page) to attenuate the transmission of ions and discard the saturation in TOF mode (Figure 2A,B).
  3. Put the instrument in MSMS mode (Quad/MS Profile tab of the main Tune page) and select the mass of the targeted ion in the MSMS Mass field for isolation in the quadrupole (in the example: m/z of 685.2, corresponding to the [M+Li]+ ionic species of the arabinoxylan pentasaccharide). Record a 1 min acquisition to check the precursor isolation when processing the data.
    NOTE: Lithium adducts have an isotope at -1 Da of the monoisotopic peak, which needs to be removed from the MS/MS selection window so that it will not interfere with the processing steps. It can be removed by narrowing the selection range using the LM Resolution and HM Resolution parameters in the Quad/MS Profile tab (Figure 2C).
  4. Set up a "slicing" IMS sequence to perform a mobility-based selection of the isomer of interest.
    1. Switch the instrument to Mobility mode (see step 2.3.2). In the Cyclic Sequence Control window, from the Cyclic Functions Tab, select Add bundle and then Slicing. Wait for a complex sequence of mobility events to appear in the Sequence tab (Figure 3).
      NOTE: It is possible to visualize each step of the IMS/IMS process: click on the Eject and Acquire event in the Sequence tab. Once highlighted in red, move it to the appropriate position within the sequence using the Up and Down buttons.
    2. Position the Eject and Acquire event right after the first Separate event (i.e., move it at row 3 instead of row 8 in the sequence as displayed in Figure 3) and then click Run. Look for the results of the initial separation to be displayed in real time. Increase the duration of the first Separate event for a multipass separation by changing the time value for this event in the sequence until the resolution of the IMS peaks is satisfactory. Record a 1 min acquisition for reference.
      NOTE: Take note of the ADC Start Delay value in the ADC Setup tab: it will be useful to check the quality of the isolation.
    3. Click Pause. Note that the results of the initial separation are displayed, although modifications in the control sequence will not be applied until the user clicks Run again. Position the Eject and Acquire event below the Eject, Eject to Pre-Store, and Hold and Eject events. Adjust the duration of the events so that the targeted peak is in the Eject to Pre-Store region, and any other ion is either in the Eject or Hold and Eject region.
      NOTE: The duration of these three events compared to the arrival time distributions (ATDs) can be visualized using the color-coded bar below the mobility spectrum in the Mobilogram tab (Figure 3).
    4. Position the Eject and Acquire event at the end of the sequence, below the Reinject from Pre-Store and the second Separate events. Click Run to display the selected population.
      NOTE: Because the selected population has left the IMS cell, all previous separation has been lost, and it is back to a single-pass separation (which is desired).
    5. Check the quality of the isolation. To verify that only the peak of interest has been selected, perform the same separation after reinjection as before reinjection (i.e., same Separate time) as shown in Figure 4. Record a 1 min acquisition for reference.
      NOTE: The users are encouraged to check the ejected population; the Eject to Pre-Store time window should be baseline level (Figure 4B). To check this, put the ADC Start Delay di Manual mode in the ADC Settings tab, and enter the delay time noted in step 3.4.2. Record a 1 min acquisition for reference.
    6. In the Sequence tab, in the column next to the user-defined event times (the Time Abs column, highlighted in red), look for the summed times of all events. Take note of the Time Abs found on the line of the Reinject from Pre-Store event for performing the CCS calibration.
  5. Fragment the targeted peak between the two rounds of IMS. Change the voltages of the reinjection step to increase the kinetic energy of the ions, and fragment them upon collision with the ion mobility gas.
    1. Set the duration of the Separate event directly preceding the Eject and Acquire to 1 ms (see explanation in step 2.3.3).
    2. On the Reinject from Pre-Store line, tick the Enable Activation box, and optimize the fragmentation with the built-in control. If the spectrum is satisfactory (e.g., the base peak is a fragment), proceed directly to step 3.5.4.
      NOTE: When enabling activation, three voltages on the line will turn grey: these are the voltages that the user needs to change if manual optimization of the voltages is required (see the next step). These three voltages (Pre-Array Gradient, Pre-Array Bias, and Array Offset) form the gradient used to activate the ions. The kinetic energy of the ions will increase with the slope between the Pre-Array Bias and Array Offset (see Figure 5). The default values of the Gradient → Bias → Offset values are: without activation 85 → 70 → 45 V; maximum activation of the built-in function 185 → 170 → -5 V (+150 V). After fragmentation, do not forget to readjust the ion transmission using the DRE lens (decrease the attenuation of the signal) (see step 3.2.).
    3. If the fragmentation is not satisfactory with the built-in control, uncheck the Enable Activation box and proceed to manually optimize the reinjection voltages. Increase the Pre-Array Gradient voltage (the Pre-Array Bias voltage must always be kept 15 V below the Pre-Array Gradient), and lower the Array Offset voltage (which can be set as negative) until the results are satisfactory.
      NOTE: When manually tuning the voltages of the multifunction array, the user can switch from the 'Mobilogram' view to interactive schematics of the voltages applied in the multifunction array (PE diagram) to better visualize the voltage settings (Figure 5A).
    4. Record a 2 min acquisition. In the acquisition pop-up window, tick the Retain Drift Time option to generate a file containing only the arrival times vs m/z (the acquisition time used for chromatographic analyses-the retention time-is removed from the file). Note that this file is labeled *_dt.RAW.
      NOTE: If the user forgets to check the Retain Drift Time option, it is still possible to extract the IMS dimension using the Driftscope 2.9 software (File | Export to MassLynx | Retain Drift Time).
  6. Turn the instrument back to TOF mode in the main Tune page, and thoroughly rinse the system with 50:50 MeOH/H2O before proceeding with the next sample.

4. IMS/IMS-MS processing with MZmine 224

NOTE: MZmine 2 is available from the URL given in the Table of Materials. The use of MZmine 2.51 is recommended. At the time of preparation of this manuscript, the later versions cannot open RAW files from Cyclic IMS instruments because of a change in the import function.

  1. Import the raw file(s) containing only the IMS and m/z dimensions (*_dt.RAW) using Raw data methods | Raw data import.
    NOTE: Raw files will appear on the left side of the main MZmine window. Do not import the original *.RAW files that still contain the retention time dimension. MZmine does not distinguish retention time from IMS arrival time, and the data points of both dimensions would overlap.
  2. Optimize the workflow parameters on a representative file by selecting it in the Raw data files list.
    1. Evaluate the noise level in the data. Right-click on the file in the Raw data files list, select Show TIC and display the base peak "chromatogram" (BPC). Double-click on the smallest peak observable by eye to display its mass spectrum. Consider the noise level in the data to be around that of the second isotope of the base peak in this spectrum, and use this same value for all the intensity thresholds in the following processing steps.
      NOTE: The data were acquired using quadrupole isolation and are thus considered by MZmine as MS/MS. Throughout the entire MZmine processing, be sure to work at an MS level = 2.
    2. Perform the mass detection using Raw data methods | Feature detection | Mass detection. For data acquired in profile mode, use the Wavelet transform algorithm. To set up the parameters of the algorithms in MZmine, click on the […] button next to the algorithm and use the Show preview option to visualize the data while optimizing the parameters.
      NOTE: At this stage, the peaks selected by the algorithm will appear in red in the preview window. When using the wavelet transform algorithm on proprietary RAW files, MZmine will sometimes mistake the profile data points for centroided peaks. The software will display a message stating that the user is running a profile algorithm on centroided spectra: ignore this message and click OK.
    3. Reconstruct the extracted ion mobility spectra (EIM) for each fragment mass using Raw data methods | Feature detection | ADAP Chromatogram builder on the 'masses' mass list generated by the previous step. As the m/z tolerance input at this stage is a scan-to-scan tolerance, be sure to leave it at least 3-4 times higher than the overall expected accuracy.
    4. As the previous step does not have a preview option, check the quality of the peak picking directly using the Feature list that appeared on the right panel of the main MZmine window. Open the Feature list, select all rows, right-click, and select Show/XIC (dialog). Click Tutti to display all ions on the mobility spectrum. Inspect the picked peaks that appear in color to ensure that there are no obvious missed peaks.
    5. Deconvolve the EIMs to split the m/z that contain different peaks in multiple features. Use Feature list methods | Feature detection | Chromatogram deconvolution, and choose the Wavelets (ADAP) algorithm. Optimize the algorithm for the data using the Show preview option and the following key parameters: S/N threshold, coefficient/area threshold, and RT wavelet range.
      NOTE: Checking the aspect of the deconvolved spectrum is recommended. Use the chromatogram visualization tool, as described in step 4.2.4. The deconvolved peaks will appear in color, and peaks of the same mass should be split, as presented in Figure 6A.
    6. Deisotope the deconvolved EIMs using Feature list methods | Isotopes | Isotopic peaks grouper. Use the expected accuracy of the instrument for the m/z tolerance value, and set the arrival time tolerance to 0.1 ms (displayed in MZmine as Retention time tolerance 0.1 min), as isotopes are not resolved during the IMS separation. Check the feature list: if any isotopes remain, increase the tolerance values.
      NOTE: Although the deisotoping can theoretically be performed at any moment of the feature list processing, it is important to do it last so that the charge values can be exported (the algorithms used for the other steps will sometimes remove the charge state information).
  3. If processing multiple IMS/IMS-MS spectra, repeat the processing with these optimized parameters. Keep the same parameters for all spectra.
  4. In the case of multiple spectra, group them in a single table to export them; if not, skip directly to step 4.5. To group the spectra, use Feature list methods | Alignment | Join aligner. Because the objective is not to actually align the peaks, use restrictive tolerance values for both m/z and arrival time. Give the same weight to both dimensions.
  5. Export the final feature list to a *.csv file. Use Feature list methods | Export/Import | Export to CSV file and export the following values: Export row m/z, Export row retention time (the actual IMS arrival time), Peak m/z, and Peak height. Use a comma as a field separator.

5. TWCCSN2 of the centroided IMS/IMS spectra

NOTE: In this protocol, a logarithmic fit calibration25,26 will be used, which tends to give better results than linear calibration and is easy to implement in a spreadsheet or an in-house processing script. An in-house script (written in R) is available at the URL given in the Table of Materials.

  1. Pick the reference arrival time values from the calibrant acquisition (see step 2.3). Do this manually using the constructor software (see the Table of Materials) to check the aspect of all IMS calibrant peaks.
    1. In the Chromatogram window, open the *_dt.RAW file corresponding to the calibrant.
    2. For each calibration point, generate the EIM using the Display | Mass option.
    3. Check the profile of the EIMs. If some are poorly defined, smooth them using the Process | Smooth option (as the best results are typically obtained with the Savitzky-Golay algorithm, smooth 2 times over 3 bins). Report the apex values in a spreadsheet.
      NOTE: Because the reference points are generally acquired using low-resolution DTIMS devices, some multimodal distributions may appear in Cyclic IMS depending on the calibrants. Remove any peak presenting such a distribution from the calibration list.
  2. Calculate the logarithmic fit parameters from the calibrants.
    1. For all calibration points, calculate the following.
      1. Calculate the drift time using Eq (1):
        Equation 1 (1)
        with td the drift time, tA the measured arrival time, and tinj the time of injection in the IMS cell (all in ms).
        NOTE: For small molecules, such as oligosaccharide fragments, the dead time (flight time between the exit from the IMS cell and the detector) variation between different masses is within the error range of the CCS calibration and can be ignored.
      2. Calculate the neutral mass of the ions using Eq (2):
        Equation 2 (2)
        with z the charge state of the ion, and mion the mass of the counter-ion (in Da). Use exact masses to avoid introducing uncertainty. If there is an atom loss instead of a counter-ion, use negative mion values (e.g., for [M-H] mneutral = (m/z) * |z| – (- 1.007276) = (m/z) * |z| + 1.007276).
      3. Calculate the CCS' parameter using Eq (3):
        Equation 3 (3)
        with CCS the reference drift tube DTCCSN2 value (in nm2), and mgas the mass of the drift gas (in Da; ex. for nitrogen: mgas = 28.01 Da).
      4. Calculate the td' parameter using Eq (4):
        Equation 4 (4)
        with d the detector start delay used experimentally to correct for dead time (typically ~1.5 ms).
      5. Calculate logarithm of the above parameters:
        ln (CCS') and ln (t'd)
    2. Perform a linear regression to determine the R2 coefficient and the x and y parameters of the logarithmic fit (with x the slope and ln(y) the intercept) using Eq (5):
      Equation 5 (5)
      NOTE: The user can plot the ln(CCS') vs ln(td') values to visually check the results of the calibration, although this is optional.
  3. Apply the calibration to the experimental data to calibrate the peaks picked by MZmine for every IMS/IMS spectrum exported to the *.csv file. For each point, calculate the following.
    1. Calculate the drift time using Eq (6):
      Equation 6 (6)
      with tseq the time preceding the final IMS separation (the 'Time Abs' value noted in step 3.4.6).
      NOTE: If calibrating multiple IMS/IMS spectra acquired with different sequences, carefully check the tseq values.
    2. Calculate the neutral mass of the ions using Eq (7):
      Equation 7 (7)
    3. Calculate the td' and td'' parameters using Eq (8) and Eq (9):
      Equation 8 (8)
      Equation 9 (9)
    4. Calculate the final calibrated CCS values (TWCCSN2 in nm2) using Eq (10):
      Equation 10 (10)
      NOTE: Although step 5.2.2. gives ln(y) as the intercept, y must be used to obtain the final CCS value. Do not forget to apply an exponential function.
  4. Check the accuracy of the calibration by applying the calibration to the second acquisition of the calibration solution acquired in step 2.4.
    NOTE: The calibration should yield results with an error of ~1-2%.

Representative Results

An arabinoxylan pentasaccharide, XA2XX, was chosen as an example to illustrate this protocol. This compound is commercially available, but only as a mixture with another arabinoxylan pentasaccharide, XA3XX (pure XA3XX is also commercially available). The structures of XA2XX and XA3XX are given in Supplemental Figure S1. As the ratio of XA2XX and XA3XX in the commercial mixture is ~50:50, a solution at 20 µg/mL of the mixture was prepared to reach an XA2XX concentration of ~10 µg/mL in 50:50 MeOH/H2O + 500 µM LiCl.

First, an MS analysis of the XA2XX + XA3XX mixture was performed using high-resolution MS. As the two compounds are isomers, a single peak was observed at [M+Li]+m/z 685.24. This MS peak was selected with the quadrupole and the selection window adjusted to remove the -1 Da lithium isotope, which could be mistaken as the monoisotopic peak by processing algorithms (Figure 2).

The [M+Li]+ adducts of the pentasaccharides were then submitted to the first stage of IMS separation: after 3 passes around the cyclic IMS cell, 3 peaks were separated with arrival times of 83, 90, and 94 ms. This profile was compared to that of pure XA3XX (infused at 10 µg/mL), showing that the peaks at 83 and 90 ms corresponded to XA3XX, while the peak at 94 ms corresponded to XA2XX (Figure 4A). The peak at 94 ms was selected for IMS/IMS analysis: the ions belonging to XA3XX were ejected (Figure 4B), and the peak of interest was sent to the prearray store cell. A 3-pass separation was performed after reinjecting the ion without activation to ensure that only the XA2XX peak remained after the selection (arriving at 199 ms in Figure 4C).

Then, the ion was fragmented upon reinjection from the prestore area, and a single-pass IMS separation was performed on all the fragments. Two different activations were tried: the maximum setting of the built-in prestore activation function was first tried (Figure 5B,C); however, the precursor remained the base peak of the spectrum. This is not desired because, for reference spectra, fragments below a certain intensity threshold would typically be removed. Thus, a manually defined prearray gradient → pre-array bias → array offset voltage gradient was chosen (Figure 5D,E).

The generated IMS/IMS-MS data were deconvolved with MZmine 2.51, using the arrival time and m/z dimensions (Figure 6A), to give IMS/IMS spectra containing only the mobility information of the fragments. The peaks above 0.2% relative intensity were exported for CCS calibration (the detailed MZmine parameters are given in Supplemental Table S1). The CCS calibration was performed using the calibration solution (R2 = 0.995, mean absolute deviation of control = 1.63%, see Supplemental Table S3). This processing finally afforded a centroided, CCS-calibrated, IMS/IMS spectrum (Figure 6B).

Figure 1
Figure 1: Overview of the IMS/IMS data generation process. Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS. Please click here to view a larger version of this figure.

Figure 2
Figure 2: Isotopic pattern of an XA3XX + XA2XX arabinoxylan pentasaccharide mixture. (A) Saturated signal without DRE; (B) signal corrected using DRE with a 5% ion transmission (i.e., 95% attenuation); and (C) profile after quadrupole selection to remove the -1 Da peak corresponding to a lithium isotope. In purple: the region where artifact peaks can appear due to saturation is magnified 6 times. Abbreviations: DRE = dynamic range enhancement; MS = mass spectrometry; MSMS = tandem MS; LM Res = low-mass resolution; HM Res = high-mass resolution. Please click here to view a larger version of this figure.

Figure 3
Figure 3: Overview of the Cyclic IMS control window, in which the user defines the IMS/IMS sequence. The sequence displayed shows how to check the quality of the isolation in IMS/IMS, with a selection of XA2XX after 3 passes (the spectrum displayed corresponds to the setting of the selection events after the first-stage separation). The sequence consists in running a first 3-pass IMS separation over 58 ms, then ejecting the two faster isoforms from the IMS cell (segment 3), ejecting the slower isoform (ATD between 92 and 96 ms) in the prestore (segment 4), reinjecting it in the IMS cell without activation (segment 6), allowing the ions to undergo a further 3-pass (58-ms) separation (segment 7), then ejecting ions from the IMS cell, and acquiring data (segment 8). Abbreviations: IMS = ion mobility spectrometry; cIMS = cyclic IMS; IMS/IMS = tandem IMS; ADC = analog-to-digital converter; TW = traveling wave; PE = potential energy; ATD = arrival time distribution. Please click here to view a larger version of this figure.

Figure 4
Figure 4: Selection of XA2XX from the mixture of XA2XX and XA3XX. (A) Separation of the arabinoxylan pentasaccharides, XA3XX and XA2XX, after 3 passes (corresponding to a separation time set at 58 ms) around the Cyclic IMS cell. (B) Fraction ejected directly after the first stage of IMS separation. (C) Fraction selected for IMS/IMS on which another 3-pass separation was performed after reinjection. The XA2XX peak of interest is highlighted in gray. The ion mobility spectra are shown in data bins and annotated with their arrival time (ms). Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS. Please click here to view a larger version of this figure.

Figure 5
Figure 5: Principles of collision-induced dissociation using the prearray store area. (A) Schematics of the multifunction array region detailing key voltages (in red) used for the selection, the reinjection, and the activation during IMS/IMS experiments. The blue arrows show the direction of the traveling wave in the multifunction array. (B, C) IMS/IMS and MS/MS spectra obtained for XA2XX using the built-in prestore activation function (+150 V). The color bar represents the ion intensity scale (blue = low; red = high). (D, E) IMS/IMS and MS/MS spectra obtained for XA2XX with manual optimization of the voltages (prearray gradient 195 V, prearray bias 180 V, array offset -10 V). Precursor ions are indicated by asterisks on the spectra. The ion mobility spectra are shown in data bins and annotated with their arrival time (ms). Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS; TOF = time-of-flight. Please click here to view a larger version of this figure.

Figure 6
Figure 6: Illustration of the processing steps. Results of (A) the MZmine peak picking and (B) the CCS calibration of arabinoxylan pentasaccharide XA2XX. A shows the mass deconvolution of the IMS/IMS spectrum through a color code. B shows the final IMS/IMS spectrum after centroiding and CCS calibration. Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS; CCS = collision cross section. Please click here to view a larger version of this figure.

Figure 7
Figure 7: A comparison of two IMS/IMS spectra of XA2XX illustrates the reproducibility of the method. The final calibrated spectrum from this paper (top) is compared to the spectrum from the work by Ollivier et al.21 (bottom, flipped). Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS; CCS = collision cross section. Please click here to view a larger version of this figure.

Supplemental Figure S1: Structures of the XA2XX and XA3XX arabinoxylan pentasaccharides. Please click here to download this File.

Supplemental Figure S2: Evaluation of the interday repeatability using XA2XX. IMS/IMS acquisitions were repeated at Day 1 (top) and Day 95 (bottom). Abbreviations: IMS = ion mobility spectrometry; IMS/IMS = tandem IMS. Please click here to download this File.

Supplemental Table S1: Detailed MZmine parameters. Please click here to download this Table.

Supplemental Table S2: Instrument parameters changed to evaluate the reproducibility. Abbreviation: ESI = electrospray ionization. Please click here to download this Table.

Supplemental Table S3: Control of the CCS calibration using a second acquisition of calibration solution. Please click here to download this Table.

Discussion

The SELECT SERIES Cyclic IMS is a powerful tool that allows selecting a defined ion population—of a given m/z and ion mobility—without the need for upstream chromatographic separation. The instrument affords the possibility of generating a bidimensional fragmentation map of this ion population, from which both MS/MS and IMS/IMS spectra can be extracted. However, the user must note several critical points that require attention during the experimental process.

First, the user should carefully check the MS isolation window for the presence of possible isobaric contaminants. Indeed, the isolation window of a quadrupole is relatively wide, and knowing ions of a slightly different m/z that may be coselected in the quadrupole will help the user properly assign the peak of interest in ion mobility.

Second, when performing the initial separation, the user must ensure that all ions undergo the same number of passes around the Cyclic ion mobility cell. This is an important and tricky aspect of ion mobility separation in a cyclic device. An erroneous evaluation of the number of passes for a given ion may lead to an improper identification and interpretation of the peaks. Controlling the number of passes of different ion populations can be tricky owing to the relatively short single-pass length (~1 m), and species with very different mobilities can quickly overlap.

In particular, a peak can split between two different passes if the array switches direction when this ion population passes through (this is relatively easy to identify: the split peak will appear sharper with a population right at the beginning of the Eject and Acquire event). To properly set the number of passes, the user should start with a short separation time (1-5 ms) that will give the 1-pass profile. Then, the user should gradually increase the separation time until the entire population has moved to higher arrival times, which will give the 2-pass profile. The 2-pass profile should look similar to the 1-pass profile but with better-resolved peaks. The time a given ion population takes to make one pass around the cyclic cell is a constant that the user can use to calculate the number of passes as a function of the separation time. For instance, if there is a 10 ms difference between the first and second pass, there will also be a 10 ms difference between the second and the third.

Third, during the IMS selection stage, the user should carefully check the quality of the isolation, as demonstrated in Figure 4. It is especially important to check the reinjected profile because if the TW height and velocity settings are too low, the ejection of the other populations might not be complete. Advanced users can correct this by adjusting the Driftcell RF radiofrequency voltage in the RF tab of the Tune page.

Fourth, the user should be careful in generating the fragmentation spectrum and, notably, in selecting the appropriate collision energy, especially if the voltages are tuned manually. Indeed, excessively lowering the Array Offset voltage can negatively impact the overall ion intensity by hindering the reinjection. In addition, the precursor and fragments might span over a wide range of mobilities. Thus, they will rapidly undergo a different number of passes if the final separation time is high, so it is important to keep a 1-ms Separate event as explained in protocol step 2.3.3. This is a major limitation since the single-pass length is relatively short, limiting the single-pass resolving power to ~100 for oligosaccharides27. In this respect, an increased path length in a single pass would be beneficial (i.e., the TWIMS-based Structures for Lossless Ion Manipulation or SLIM, with a path length of 13 m28). The SLIM setup was launched commercially very recently29.

Finally, the user should be careful in defining the final acquisition mobility range using the Pushes per bin command, particularly if working on multiply charged ions. Ion mobility is indeed a function of the charge12, and, for example, singly-charged fragments generated from a doubly-charged precursor are likely to be slower than the precursor (although they are smaller compounds).

A major limitation of using only MS and IMS separations to select the precursor (and not, for instance, an upstream step of chromatography) is that a given m/z can yield multiple peaks in IMS and that multiple peaks can come from the same compound. This is illustrated by the distributions of m/z 685.2, for both the XA2XX+XA3XX mixture and pure XA3XX, in Figure 4A. Multimodal IMS distributions of a single m/z result from different gas-phase conformations. For species analyzed as cation adducts (in positive mode), the different conformations possibly arise from differences in coordination with the counter-ion30,31,32.

For oligosaccharides, they can also arise from the separation of reducing-end anomers, although separating reducing-end anomers typically requires higher IMS resolving power than what is used here33,34,35. In the present case, the multimodal IMS distribution in Figure 4A results partly from the individual contributions of XA2XX and XA3XX. It is, however, notable that XA3XX yields two peaks, which are likely cation-coordination conformers. It was easy to identify which peak corresponded to XA2XX (i.e., the species of interest) because pure XA3XX is available commercially, and its mobility profile could be recorded separately. To work on complex mixtures such as biological media, it may be important to consider adding a chromatographic separation stage.

Two points must be noted regarding the processing workflow used to obtain mass-deconvolved IMS/IMS spectra. First, in this protocol, it is proposed to use MZmine 224 to deconvolve the IMS/IMS spectrum using the MS dimension and, notably, use the ADAP algorithm36 to split the EIMs into different peaks. Although it gives fairly good results, as illustrated in Figure 6, the ADAP algorithm was designed for chromatographic analyses and thus accounts for asymmetry factors inherent to liquid phase chromatography, such as peak tailing. Therefore, the ADAP algorithm might result in not identifying some of the features when applied to IMS peaks (e.g., shoulders). In essence, IMS data are simpler than chromatographic data: because there is no chemical interaction of the compounds with a column, IMS data acquired under appropriate conditions (i.e., without saturating the IMS cell) are expected to follow gaussian distributions37,38. Ideally, the ADAP deconvolution step would be best replaced by a gaussian fitting function, such as that used by software destined for IMS like CUISuite 239. However, as it stands, gaussian deconvolution was not directly adapted to the complete chain of treatment described in this protocol. Therefore, using the free, open-source software MZmine appeared to be a good compromise for end-users.

The second part of the processing that warrants discussion is the CCS calibration. This protocol proposes using a logarithmic fit calibration25,26 and a commercial calibrant mixture from the same provider as that of the spectrometer (see the Table of Materials). This procedure is the most straightforward to implement in the lab. Regarding the choice of the calibrant mixture, the user should consider that, as mentioned in several studies, the accuracy of the CCS calibration is improved when using calibrants of the same molecular class and charge state as the analyte26,40,41. The error introduced when calibrating with relatively similar types of compounds (e.g., carbohydrates vs. peptides) is moderate. However, it is recommended not to use very different ions such as, for example, using salt clusters as calibrants when measuring carbohydrates41. Regarding the choice of the calibration method, Richardson et al.42 recently reported a new calibration method that takes into account the physics of TWIMS to improve the accuracy of the calibration (with a provided software). However, the approach requires the evaluation of highly specific parameters through the analysis of various types of compounds—ranging from metabolites to native proteins. Because no mixture of such a variety of compounds can be found commercially, this method was not implemented in the present protocol.

Finally, to evaluate the reproducibility of the method, we evaluated the interday reproducibility by repeating the IMS/IMS-MS acquisition at day 1 and day 95 (Supplemental Figure S2). The experiment showed that IMS/IMS-MS data are highly reproducible, with no IMS peak shifting by more than 0.2 ms over this extended period. The IMS/IMS spectrum generated in this work was further compared to another spectrum of XA2XX acquired under different conditions for previous work on ion mobility-molecular networking21. Some instrumental parameters that can impact the ion structure and ion mobility profile13 were deliberately changed—the source parameters and the activation voltage gradient (a comparison of the varying instrumental conditions is given in Supplemental Table S2). Then, the two spectra were compared using the cosine similarity score—which is popular for the comparison of MS/MS spectra in metabolomics—on the GNPS platform5 (CCS tolerance for matching fragments = 0.015 nm2).

The comparison showed a cosine similarity score of 0.87 (Figure 7), which can be considered high with regard to the important instrumental variations applied. This leads to the idea that IMS/IMS spectral libraries could be used to dereplicate glycans in complex mixtures with a high level of confidence, which would not be the case with MS/MS spectra. Note that although the current approach only uses the CCS dimension of the fragmentation spectrum, the IMS/IMS-MS data also contains MS information, which is not redundant with the CCS. To optimize the dereplicative power of IMS/IMS, a bidimensional scoring system must be developed.

Divulgazioni

The authors have nothing to disclose.

Acknowledgements

S.O. is thankful to the French National Research Agency for funding his Ph.D. (grant ANR-18-CE29-0006).

Materials

33-α-L- plus 23-α-L-Arabinofuranosyl-xylotetraose (XA3XX/XA2XX) mixture Megazyme Ltd., Wicklow, Ireland O-XAXXMIX XA2XX + XA3XX mixture
33-α-L-Arabinofuranosyl-xylotetraose (XA3XX) Megazyme Ltd., Wicklow, Ireland O-XA3XX Pure XA3XX standard
Eppendorf Safe-Lock Tubes, 1.5 mL, Eppendorf Quality, colorless, 1,000 tubes Eppendorf, Hamburg, Germany 0030120086 Used to prepare the carbohydrate stock solution and dilution
FALCON 50 mL Polypropylene Conical Tube 30 x 115 mm Corning Science México S.A. de C.V., Reynosa, Tamaulipas, Mexico 352070 Used to prepare the aqueous stock solution of 100 mM LiCl
Lithium Chloride (ACS reagent, ≥99 %) Sigma-Aldrich Inc., Saint Quentin Fallavier, France 310468 Used to dope the sample with lithium
Major Mix IMS/Tof Calibration Kit Waters Corp., Wilmslow, UK 186008113 Calibration solution for MS and IMS
MassLynx 4.2 SCN1016 Release 6 (Waters Embedded Analyser Platform for Cyclic IMS 2.9.1 Release 9) Waters Corp., Wilmslow, UK 721022377 Cyclic IMS vendor software for instrument control and data processing
Methanol for HPLC PLUS Gradient grade Carlo-Erba Reagents, Val de Reuil, France 412383 High-purity solvent
MS Leucine Enkephaline Kit Waters Corp., Wilmslow, UK 700002456 Reference compound used for tuning of the mass spectrometer
SCHOTT DURAN 100 mL borosilicate glass bottle VWR INTERNATIONAL, Radnor, Pennsylvania, US 218012458 Used to prepare the solution of 500 µM LiCl in 50:50 MeOH/Water
SELECT SERIES Cyclic IMS Waters Corp., Wilmslow, UK 186009432 Ion mobility-mass spectrometer equipped with a cylic IMS cell
Website: http://mzmine.github.io/ MZmine Development Team Link to download the MZmine software
Website: https://github.com/siollivier/IM-MN INRAE, UR BIA, BIBS Facility, Nantes, France Link to an in-house R script containing a CCS calibration function

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Ollivier, S., Fanuel, M., Rogniaux, H., Ropartz, D. Using a Cyclic Ion Mobility Spectrometer for Tandem Ion Mobility Experiments. J. Vis. Exp. (179), e63451, doi:10.3791/63451 (2022).

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