Joseph H.
Holbrook
ab,
Gabrielle E.
Kemper
b and
Amanda B.
Hummon
*abc
aOhio State Biochemistry Program, The Ohio State University, Columbus, Ohio 43210, USA. E-mail: hummon.1@osu.edu
bDepartment of Chemistry and Biochemistry, The Ohio State University, Columbus, Ohio 43210, USA
cComprehensive Cancer Center, The Ohio State University, Columbus, Ohio 43210, USA
First published on 22nd January 2024
Mass spectrometry imaging (MSI) has become increasingly utilized in the analysis of biological molecules. MSI grants the ability to spatially map thousands of molecules within one experimental run in a label-free manner. While MSI is considered by most to be a qualitative method, recent advancements in instrumentation, sample preparation, and development of standards has made quantitative MSI (qMSI) more common. In this feature article, we present a tailored review of recent advancements in qMSI of therapeutics and biomolecules such as lipids and peptides/proteins. We also provide detailed experimental considerations for conducting qMSI studies on biological samples, aiming to advance the methodology.
MSI is complementary to other methods commonly used for spatial analysis of biological samples, including hematoxylin and eosin (H&E) staining and immunohistochemistry (IHC) staining. Both methods are utilized in detecting and locating various biomolecules within tissues and even to the single cell level. Despite the widespread use of both techniques, neither method can provide ample molecular/chemical information on biomolecules of interest.3 MSI can provide simultaneous quantification of many different analyte compounds, unlike H&E and IHC staining.4 MSI also has an added advantage over these traditional techniques in that it is a label-free technique and can study a broad range of analyte compounds simultaneously within one imaging run.5
There are several different techniques used for MSI studies that can be classified into hard and soft ionization techniques. Hard ionization refers to adding an excess amount of internal energy into a molecule and leading to extensive fragmentation of the molecule. This type of ionization is extremely useful for structural characterization of molecules.6 Soft ionization techniques use less energy and result in less fragmentation of molecules; thus, the target molecule remains intact for analysis. Matrix-assisted laser desorption/ionization (MALDI) is one of the most popular approaches for conducting soft ionization. MALDI-MS has been applied to a variety of applications such as mass spectral fingerprinting of bacteria7 and the characterization of polymers,8 proteins,9 and peptides,10 to name a few. The process for MALDI-MS is like MALDI-MSI where a laser strikes a sample containing matrix, which then generates ions for subsequent detection to provide molecular information about the sample. However, a crucial distinction between MALDI-MS and MALDI-MSI lies in the spatial information. While MALDI-MS provides molecular information about the sample it does not provide this information in a spatially defined manner like MALDI-MSI grants, as shown in Fig. 1. MALDI-MSI, combines all the spectra collected over the sample region to create an ion image, which is information that is not achieved by MALDI-MS alone. MALDI has bolstered in popularity for imaging and the technique has been applied on a variety of sample types including tissues,11,12 3D cell cultures, such as spheroids and organoids,13–15 and even single-cell imaging.16,17 Another extensively used soft ionization technique for imaging is desorption electrospray ionization (DESI). DESI has the added benefit of using a liquid-spray extraction which allows for samples to be analyzed in ambient conditions.18 Other, less extensively used MSI techniques include secondary ion mass spectrometry (SIMS) and laser ablation inductively coupled plasma (LA-ICP). SIMS is a hard ionization technique used for imaging that displays high spatial resolution; albeit, at the cost of analyte fragmentation.19 LA-ICP based imaging also displays higher spatial resolution but provides mainly topological elemental information.20 Interestingly, nanoparticle-enhanced LDI-MS, an ionization technique similar to MALDI, has recently been applied for increasing metabolite sensitivity in both breast cancer and neuromyelitis optica spectrum disorder.21,22 This ionization technique is efficient for studies involving lower molecular weight metabolites as MALDI matrices can result in ion suppression and matrix peaks.23 All of these techniques have many variants which allow researchers to tailor their ionization source for specific applications.24
Despite their differences, these techniques have the same general experimental flow of using a laser or liquid-spray to raster over a sample causing the formation of ions which then proceed to the mass spectrometer for subsequent detection. While the flow of ions to the detector is generally the same for these techniques, the mechanisms for ion formation are different.25 This feature represents a key advantage in mass spectrometry, where different imaging modalities can be used in a complementary fashion since molecules display different propensities for ionization.26,27
The vast majority of MSI studies involve mapping the distribution of therapeutics and biomolecules, including lipids,28–30 proteins,31–33 peptides,34 carbohydrates,35,36 and other metabolites.37
Biomolecules display heterogeneity; both across different classes of molecules and within subclasses.38,39 It is this inherent heterogeneity that has made biomolecules increasingly popular to study by MSI, as differential expression of potential biomarkers is often correlated to disease states.40,41 Therapeutics are often employed for prevention and treatment of diseases, in hopes of altering the expression of biomolecules back to a normal healthy state.42 In short, endogenous species can be altered in response to an exogenous drug treatment.42,43 This property has made MSI of exogenous therapeutics increasingly popular to study, as investigators can map therapeutics spatially and monitor how endogenous species are altered.27,44 Since biomolecules are involved in many key biological processes and therapeutic intervention can influence their expression, they have become popular targets for biomarker discovery.45 Numerous MSI studies have focused on increasing both the sensitivity and specificity of measurements for biomolecules.46–49 Distinguishing how a disease state or therapeutic intervention impacts biomolecule expression and localization can give us further insight into both the pharmacokinetics50 and pharmacodynamics.51
Quantitative mass spectrometry studies often rely on some form of separations such as gas or liquid chromatography (GC or LC) coupled to a mass spectrometer. There are many protocols and techniques that describe how to perform quantification of therapeutics,52,53 lipids,54,55 proteins,56 and carbohydrates,57 using separations. Quantification using LC-MS is considered the gold standard in quantification of biomolecules, as the technique is robust and routinely utilized. MSI offers a complementary alternative to traditional LC-MS, where spatial information can be gained.58 When working with separations, the user must routinely check column stability and perform quality control checks for both peak integrity and retention time shifting. With improvements in mass spectrometry instrumentation, sensitivity, specificity, and data analysis, MSI has emerged as a potential alternative for quantitative studies, termed quantitative MSI (qMSI).59 qMSI has emerged within the field of mass spectrometry as it allows for relative and absolute values of concentration of specific analytes within a spatial context. MSI has been used extensively in pharmacokinetic and toxicology studies to determine drug and associated metabolite localization within tissues. Conducting qMSI allows for the determination of drug or metabolites concentration in the tissue along with the spatial localization in one workflow without the need of extended validation with other analytical techniques.60 Reduced usage of other analytical techniques allows for higher throughput of novel therapeutics within the therapeutic development pipeline and could contribute to the discovery of biomolecular targets in a timelier manner. Compared to LC-MS, MSI typically has more user-friendly protocols and allows for direct analysis of a sample, without the need for any digestion or fractionation, and provides spatial localization information. It is important to note, spatial omics, where LC-MS and MSI studies are conducted in tandem, has been increasing in popularity.61,62 Spatial omics aids in validating the identification of analytes, provides quantitative information, and grants spatial information for a given sample.
Many qMSI experiments describe relative quantification, which is dependent on the use of internal standards or endogenous molecules to assess the concentration of other molecules within a sample.63,64 Relative quantification studies aid in providing relative concentration changes in addition to the spatial localization of subclasses of biomolecules within samples.65 These types of studies have even been used in pharmacokinetic and pharmacodynamic studies of therapeutics and associated metabolites.66 The capabilities of MSI have improved to the point of obtaining absolute quantification. Absolute quantification involves an intense sample preparation, as it must address differences in both ionization and extraction efficiency of molecules and consider signal suppression caused by “matrix effects”.63,67 Additionally, absolute quantification is comparable to relative quantification in that both must contend with a lack of available standards.
In this feature article, we describe the most recent advancements made in qMSI studies of therapeutics and biomolecules with a focus on MALDI & DESI systems. The following sections will contain considerations for both method development and data analysis. Additionally, we present detailed sections focused on qMSI of therapeutics, lipids, and peptides/proteins. Within, we provide prime examples of qMSI employed by our and other research groups. Finally, the scope and limitations of qMSI will be discussed in further detail. We would also like to highlight other excellent reviews on the topic of qMSI of biomolecules.63,68,69
Matrix (Abbreviation) | Common biological targets | Polarity (Ref.) |
---|---|---|
1,5-Diaminonaphthalene (DAN) | Lipids | +72,73, −72–74 |
2′,5′-Dihydroxyacetophenone (DHA) | Lipids,75,76 proteins,73 peptides76 | +,73,75,76 −76 |
2′,5′-Dihydroxybenzoic acid (DHB) | Lipids,75,77 peptides77 | +75,77 |
9-Aminoacridine (9-AA) | Lipids,74 metabolites,78 proteins79 | −74,78,79 |
α-Cyano-4-hydroxycinnamic acid (CHCA) | Lipids,72N-glycans,80,81 proteins82 | +72,80–82 |
N-(1-naphthyl)ethylenediamine dihydrochloride (NEDC) | Lipids,46,83 metabolites84 | +,46 −46,83,84 |
Norharmane (NOR) | Lipids | +85,86 |
Sinapinic acid (SA) | Proteins, peptides | +87,88 |
Trans-2-[3-(4-tert-butylphenyl)-2-methyl-2-propenylidene]malononitrile (DCTB) | Lipids | +70,89 |
MALDI-MSI of lipids benefits from measurements conducted in both positive and negative polarity, by increasing lipid class coverage in biological samples. Positive polarity measurements readily display phosphatidylcholine (PC) and sphingomyelin (SM) lipid species due to their inherent positive charge and have been described using numerous matrices.90 For example, Jalaludin and colleagues, examined exosomal lipid content using a variety of matrices including DHB, CHCA, and SA in positive mode.91 They found PC and SM lipids to be some of the most abundant lipids present in positive mode measurements, but noted that this detection can be influenced by both matrix selection and sample preparation. Negative polarity measurements display mainly phosphatidylethanolamine (PE), phosphatidylinositol (PI), phosphatidylserine (PS), and phosphatidylglycerol (PG) using matrices such as DAN, 9-AA, DHA, and others.75,90 Recently, Angerer and colleagues, empirically determined that DAN matrix is best suited for high spatial resolution MALDI-MSI and tandem-MS of lipids in negative polarity.72 DAN matrix predominantly displayed PE lipids, but also exhibited broad lipid coverage in negative polarity over other traditional matrices.
MALDI analysis of peptides and proteins has primarily involved the use of sinapinic acid (SA) for large proteins and CHCA matrix for peptide mapping.92,93 Recently, Gu and colleagues compared SA and CHCA matrices to a more novel 4-hydroxy-3-nitrobenzonitrile matrix in the analysis of organic molecules, peptides, and proteins.94 They found that 4-hydroxy-3-nitrobenzonitrile, in comparison to the more traditional matrices, displayed lower background signal and was comparable to other matrices in the analysis of biological tissues. Similarly, Park et al., used both CHCA and DHB for relative quantification of proteins and peptides by constructing calibration curves for the proportion of analyte-to-matrix ion abundance and the analyte-to-matrix ratio.95 This observation for temperature-selected MALDI is amendable for the use of no internal standard and provides a rapid and inexpensive relative quantification of analytes in MALDI analysis. Most recently, the use of MALDI high-plex immunohistochemistry (MALDI-IHC) was employed for the analysis of intact proteins using CHCA matrix.96 In this study, photo-cleavable mass tags are attached to antibodies for increased specificity of protein targets relative to traditional in situ tryptic digestion. Using these tags and CHCA as a matrix, this team was able to obtain 5 μm spatial resolution imaging of proteins in a semi-quantitative manner.
While not the focus of this feature article, carbohydrates are another significantly important biomolecule for conducting qMSI. Carbohydrate analysis has often involved the use of soft ionization techniques such as MALDI.97 The most conventional matrices used for carbohydrate analysis include DHB and CHCA.97,98 For example, Angel and colleagues published a robust protocol on the imaging of N-glycans and peptides using the same formalin-fixed paraffin embedded (FFPE) tissue section using CHCA as a matrix.99 In this study, they were able to co-localize N-glycans and peptides for region specific information on the same tissue section. Similarly, the Heeren research group was able to perform N-glycan imaging with CHCA matrix in fresh frozen (FF) tissue sections.80 In their study, they optimized a protocol for FF samples that was comparable to the signal obtained to the more traditional FFPE samples imaged for N-glycans.
Additionally, crystal sizing is another important aspect to consider when choosing a matrix application device. Different matrix application devices can result in diverse matrix crystal sizes which influences the spatial resolution of an image and analyte delocalization.103,104 Single cell spatial resolution is now obtainable with the use of nebulization or sublimation where matrix crystal sizes are as small as 1-to-30 μm in size, depending on the matrix and application device.104 In comparison, most mammalian cells typically have a diameter of 10 to 100 μm.105 Therefore, it is advisable to use a robotic sprayer for nebulization of matrix or a sublimation device for uniform distribution of small matrix crystals across a sample. Using these devices mitigates irregularities between users and allows for uniform application of internal standards for both relative and absolute quantification studies.
Both MALDI-MSI and DESI-MSI have been used effectively for therapeutic penetration analyses in tissues and 3D cell cultures.44,124,125 Most studies focus on direct comparisons between a treated and an untreated sample, providing relative quantification of therapeutics and metabolites. Our research group has focused on therapeutic and metabolite detection using MALDI-MSI since 2011,126 using 3D cell culture models as a means of recapitulating the tumor microenvironment and examining the penetration capabilities of chemotherapeutics.127,128 In 2022, President Biden signed the FDA Modernization Act 2.0 into law, which advocates for the use of alternatives to animal models in drug testing, including the use of 3D cell cultures for drug efficacy studies.129 The combination of 3D cell culture models and MSI can facilitate drug development as the spatial localization of the therapeutic and metabolites can be visualized in addition to potential differential abundances of biological molecules related to the drug treatment.130,131
We have examined the penetration and metabolism of irinotecan (IR), a topoisomerase I inhibitor, in 3D cell culture models, such as a colorectal cancer spheroid model and organoids using MALDI-MSI.13,132 This study mapped the therapeutic, irinotecan, and the active metabolite, 7-ethyl-10-hydroxycamptothecin (SN-38), in a colorectal cancer spheroid model,13 thus describing relative quantitation of the analytes within the spheroid and providing pharmacokinetic insights for the drug distribution. More recently, we have expanded the development of the spheroid model system and drug delivery systems to further recapitulate in vivo conditions by incorporation of 3D printed fluidic devices,133 introduction of dietary restrictions,134 and drug delivery with liposomes.135 Each of these studies relied on MALDI-MSI for relative quantitation of IR and associated metabolites, as a clinically relevant chemotherapeutic for spheroid model development. In a more recent publication, we describe absolute quantification of IR in a time-dependent penetration study using a spheroid model system and MALDI-qMSI.136 To create the calibration curves, control spheroids were homogeneously sprayed with different concentrations of IR solutions to establish the limit-of-detection (LOD) of IR on the sample as shown in Fig. 2. After spraying with IR solutions, deuterated IR was then applied as an internal standard. Using the generated calibration curve with an R2 = 0.9643, we then applied spatial segmentation to distinguish the concentration of IR throughout the dosage interval in a spheroid region specific manner. We concluded from this study, after a 48-hour incubation period with 20.6 μM, the concentration of irinotecan throughout the spheroid was 16.9 μM. This experiment is the first of its kind to show MALDI-qMSI of a therapeutic in a single spheroid.
Fig. 2 qMSI of irinotecan (IR) distribution in HCT 116 spheroids. (A) MSI of IR and the internal standard (IS), d10-irinotecan, detected at 587.286 m/z and 597.349 m/z respectively. Data is normalized against peak area of the IS. (B) Calibration curve of IR quantification. The error bars shown represent the quantification of three biological replicates of spheroids. (C) Penetration curve displaying IR concentration changing as a function of treatment time in whole spheroids. Adapted with permission from ref. 136. Copyright {2023} American Chemical Society. |
There has been a plethora of exciting publications recently for using MSI to visualize therapeutic penetration in model systems. For example, Islam and colleagues successfully mapped the therapeutics Imipramine and Chloroquine, along with their metabolites in C57BL/6 male wildtype mice using DESI-MSI, MALDI-MSI, and atmospheric pressure (AP)-MALDI-MSI.137 Their work emphasized the newly developed AP-MALDI-MSI, but also serves as an excellent example of several different ionization techniques being used complementary to one another to elucidate drug and metabolite penetration. Another publication by Traberg and colleagues, describes an innovative mimetic tissue model for skin and incorporates the use of spiked standard homogenates into the mimetic tissue for MALDI-qMSI.138 In their study, they monitored the penetration and concentration of bleomycin, a medication used in the treatment of cancers, using a skin biopsy from a pig. They establish the LOD of bleomycin using the tissue memetic model homogenates for MALDI-MSI and obtained comparable values for the concentration of the drug as determined by LC-MS.
Work by Holm et al., combined the use of DESI- and MALDI-MSI to map the distribution of the immunosuppressant cyclosporine (CsA) in whole body mouse sections and larger organs.139 Their work focused primarily on the use of DESI-MSI, where DESI-MSI was optimized using rat liver homogenate spiked with different concentrations of CsA. Using the homogenates, they determined the LOD of CsA was around 5 μg g−1 and CsA was mainly detected as a Na+ or K+ adduct. Interestingly, they found CsA to be primarily localized to the liver and pancreas, whereas the hydroxy and dihydroxy metabolites were predominantly in the intestines. Additionally, recent work by the Laskin group demonstrated near proportionate concentrations of diclofenac and metabolites between LC-MS and nano-DESI-MSI.140 Quantitative nano-DESI-MSI was achieved by comparison to a deuterated standard incorporated into the solvent spray. Using selected ion monitoring (SIM) during nano-DESI-MSI acquisition allowed for distinguishing the spatial localization of diclofenac metabolites in specific regions within mouse kidney and liver.
We have also examined the efficacy and penetration of other therapeutics using a 3D spheroid model. For example, platinum-based therapeutics, like oxaliplatin, cisplatin, carboplatin were visualized along with metabolites after derivatization with diethyldithiocarbamate using MALDI-MSI.141 In this study, we quantified the concentration of oxaliplatin in different regions of the spheroid model by constructing calibration curves using ultra performance liquid chromatography (UPLC) and coupled this information with the spatial distribution of the drug. We demonstrated the ability to visualize these platinum-based therapeutics, such as oxaliplatin, within 90 minutes of incubation in distinct regions of the spheroid model including the necrotic core. Coupling the information gained from MALDI-MSI with UPLC-MS we were able to monitor drug clearance as oxaliplatin-related species decreased rapidly in 2 hours, where even after 90 minutes, only 7.0% of the initial drug was present in the spheroids providing some pharmacokinetic insight for these drugs in this model. Concurrently, we have focused on MALDI-MSI of protein and peptide therapeutics, ranging from FDA-approved drugs to novel therapeutics. We visualized Cetuximab, a monoclonal antibody that is used for immunotherapy treatment of colorectal cancer, by MALDI-MSI after on-tissue-reduction and -alkylation.142 Cetuximab is a epidermal-growth-factor receptor (EGFR) inhibitor, so by using two different spheroid models that express different levels of EGFR, we examined disparate changes in the pharmacokinetics between the two spheroids using MSI. Similarly, in collaboration with Professor Dehua Pei and his research group, we used MALDI-MSI to examine both the pharmacokinetics and pharmacodynamics of cyclic peptidyl inhibitors within a colorectal spheroid model.143 We found for the cyclic peptidyl inhibitor, PGD97, that once it effectively enters the cytosol, it is rapidly reduced to its active form and subsequently undergoes degradation, with some of the intact peptide still present after 24 hours. This finding was important in determining the efficacy of PGD97 as an inhibitor of the cystic fibrosis transmembrane conductance regulator and associated ligand in the treatment of cystic fibrosis.
Limited works have been published detailing MALDI-qMSI of lipids.154 Most works have focused on direct comparisons of lipid abundance between a disease state and healthy control tissue.155–158 A recent study by Martín-Siaz and colleagues elegantly demonstrated the blending of MALDI-MSI and HPLC-MS to distinguish how well the two techniques correlate with one another in lipid biomarker discovery in clear cell renal cell carcinoma.159 This study found that both MALDI-MSI and HPLC-MS experiments could spatially classify the lipid signature to distinct regions in the kidney, such as the cortex and medulla. A direct comparison of healthy vs. renal cell carcinoma was made using MALDI-MSI and quantification was conducted using internal standards with HPLC-MS analysis. Their findings highlight the potential of using MALDI-MSI for distinguishing different cell populations in a sample based on the samples lipid profile and how quantification can be conducted complementary to imaging modalities. Jadoul and colleagues demonstrated an innovative method for MALDI-qMSI of lipids within a brain section by using brain homogenates spiked with an internal standard.160 They quantified different PC lipid species spatial distributions in a region specific manner within a mouse brain section as shown in Fig. 3. This study highlights the ability to conduct MALDI-qMSI of lipids and other small endogenous compounds while considering matrix effects caused by imaging a heterogenous tissue. A more recent study by Angelini and coworkers utilized on-tissue derivatization of cholesterol by adapting an enzyme-assisted derivatization for sterol analysis (EADSA) for absolute quantification of cholesterol in a mouse brain tissue.161 In general, the group applied [2H7]cholesterol as an internal standard to mouse brain sections using an automated sprayer, followed by cholesterol oxidase enzyme and Girard-P hydrazine to apply a charge-tagged sterol hydrazone. After incubation, CHCA matrix was applied using an HTX TM-sprayer and endogenous cholesterol was detected using MALDI-MSI and normalized to the applied internal standard. Using this method, they were able to assess, both qualitatively and quantitatively, region specific changes in cholesterol levels between wild-type (WT) and Niemann-Pick C1 disease (Npc1) mice brain sections as a function of age. Similarly, a recent publication by Vandenbosch et al., demonstrates the use of a multi-class internal standard lipid mixture, sprayed homogenously over a mouse brain section for quantification of several different lipid classes in one imaging run using MALDI-MSI.162 They found subtle differences in image quality between normalization to an internal standard and normalizing to the conventionally applied TIC.
Fig. 3 Analysis by MALDI-MSI of sections from an intact brain and brain homogenates spiked with a range of PC(16:0 d31/18:1) concentrations. (A) A serial section after H&E staining. (B) Definition of ROIs on the section (ROI1: red corpus callosum; ROI2: green cerebral cortex; ROI3: blue lateral septal nucleus; ROI4: grey caudoputamen; ROI5: yellow hypothalamus). (C) Molecular images showing the distribution of different PC ionic species ([M + H]+, [M + Na]+ and [M + K]+) across the intact brain section surface. (D) Molecular image showing the intensity scale corresponding to the [PC(16:0 d31/18:1) + H]+ on the spiked (between 100 and 8000 μg g−1) homogenate sections analysed simultaneously to the intact brain. Reproduced with permission from ref. 160, under Creative Commons License Attribution 4.0 International (CC-BY 4.0), Springer Nature (https://creativecommons.org/licenses/by/4.0/legalcode). |
While ongoing work is being conducted on qMSI of lipid species, simultaneously, there has been a push in the imaging community for increased depth in identification and quantification of double bond and stereospecific numbering (sn-) position in lipids.154 Both the degree of saturation and sn-positioning have important biological functions and can even be used for prediction of disease and for diagnostics, making these molecular features essential for further examination.163–165 Born & Prentice described the use of electron induced dissociation (EID) performed with the use of a MALDI source to generate fragments of PC lipids for identification of sn-1 and sn-2 positions, as well as the location of double bonds within the fatty acyl chains.166 Interestingly, the authors demonstrated the ability to characterize and identify PC lipids directly from a rat brain tissue section due to the addition of EID. They later extrapolated this technique further by describing how relative quantification could be performed using this technique on both sodium and potassium adducts in PC lipids.167 This methodology can be used complementary to traditional imaging workflows to provide greater details in lipid characterization in tissue sections. Traditionally, collision induced dissociation (CID) is performed complementary to imaging experiments to provide lipid structural information such as the degree of unsaturation or fatty acyl chain length but lacks the ability to elucidate sn-position and double bond location.168–170 Claes and colleagues combined ozone-induced dissociation (OzID) with CID to demonstrate isomer-resolved MALDI-MSI of lipids in rat brain.168 In this study, ozone was supplied directly into a SYNAPT HDMS G2-Si system where a lipid precursor is trapped and when in the presence of ozone fragmentation occurs at the double bond position. When CID is conducted in tandem with OzID, sn-position can be determined for further characterization of lipid structure. Additionally, sensitivity testing was conducted to establish the LOD of 1.1 fg μm−2 and limit of quantification (LOQ) of 2.2 fg μm−2 of a PC 34:1 standard to establish characteristic OzID fragments that could be used in the remainder of the study. These studies describe innovative methodologies for identification of lipid biomolecules and serve as platforms for increased quantitative studies to be performed using MALDI-qMSI.
Similarly to MALDI-MSI, DESI-MSI of lipids has focused primarily on relative changes in lipid abundance in tissues and more quantitative imaging is forthcoming.171 Research conducted by Mondal et al., detailed the ability to use DESI-MSI to differentiate cancerous versus adjacent normal in samples obtained from 73 breast cancer patients.172 They identified several lipid species that were upregulated in the cancerous tissue, including four diacylglycerol (DG) molecules which were the most unique and intense change in lipid abundance for the entire patient set. They concluded that utilizing DESI-MSI was useful in validation for intraoperative surgical pathology and DG would serve as a unique diagnostic biomarker for predicting breast cancer in patients, as validated by their machine learning experiments. To advance from a more qualitative understanding of lipid distribution to a more quantitative assessment, research groups using DESI-MSI have employed spiking internal standards into their solvent spray. For example, Julia Laskin's research group has published several works detailing the introduction of internal standards to solvent spray to achieve DESI-qMSI with lipid biomolecules. Specifically, the Laskin group developed a high spatial resolution and high throughput protocol for DESI-MSI of lipids that elegantly details all the parameters and considerations needed for obtaining high quality lipid images.173 Within this work, the group detailed how the incorporation of lipid internal standards into the working solvent reflects the actual distribution and concentration of lipid species within uterine tissue, as shown in Fig. 4. This study also focused on matrix effects as a key issue for achieving qMSI and they showed how the incorporated internal standards undergo the same ionization suppression as endogenous lipid species making normalization to the standard more appropriate than traditional normalization to TIC. In a similar study from the Laskin group, the same integration of internal standards to the solvent system was applied to imaging of mouse lung tissues in a comparative fashion with nano-DESI MSI and LC-MS/MS lipidomics.111 The multi-class internal standard lipid mixture spiked in the solvent contained different classes of both lipids and fatty acids for normalization. This study concluded that the direct sampling method of nano-DESI MSI provides close to 50% lipid coverage in comparison to the LC-MS/MS analysis, demonstrating the breadth of lipid coverage obtainable in a high-throughput, spatially defined manner. Recently, Mavroudakis and colleagues modified the extraction solvent in a nano-DESI system with crown ether molecules to better understand alkali metal ion distributions in mouse brain tissue sections with the addition of internal standards for relative quantification.174 Where alkali metal ions play important roles in biological processes, the group examined the interplay between Na+ and K+ concentrations at the elemental level to see how these concentration influence adduct formation in lipid species. In summary, they successfully quantified alkali metals, lipids, and other metabolites and distinguished how they are located spatially in ischemic regions of a mouse stroke model.
Fig. 4 Compensation for matrix effects in nano-DESI MSI by adding internal standards to the solvent in uterine tissues. (a) The use of the internal standard (Std; LPC 19:0) indicates the matrix effects originating from competitive ionization of analytes, as well as variations in the abundance of alkali metal salts. Raw images describe the ion images without any normalization (Norm.). (b) Ion images of [M + Na]+ and [M + K]+ of endogenous GPC, PC 36:1, PC 36:4, PC 38:4, and standard LPC 19:0 (Standard). Ion images are normalized to the TIC in the left two columns and to the standard LPC 19:0 (Std) in the right two columns. By normalizing to the corresponding LPC 19:0 adducts, the same ion images are obtained for [M + Na]+ and [M + K]+ ions of endogenous lipids, which are free of matrix effects and present their actual distribution in uterine tissue. Reproduced with permission from ref. 173, under Creative Commons License Attribution 4.0 International (CC-BY 4.0), Springer Nature (https://creativecommons.org/licenses/by/4.0/legalcode). |
Common within the methodology of MALDI-MSI of proteins is an in situ tryptic digestion step prior to matrix application and imaging. On-tissue tryptic digestion is critical because it allows for simplification of the MS analysis. Due to their large size, native proteins display limited compatibility and sensitivity for general MSI runs. However, creating small peptide fragments that correspond to specific proteins is more amendable to MSI analysis and can improve the sensitivity of detection. For example, in a recent study Fiorentino and colleagues describe a comprehensive pipeline for in situ detection of follicle protein content within a mouse ovary by employing trypsin digestion prior to MALDI-MSI analysis.185 Utilizing the same digested tissue, they complemented the MALDI-MSI data with nano-LC-MS/MS and correlate the peptide fragments to specific proteins by the Mascot software and the Swissprot protein database. They successfully employed a spatial proteomics workflow to map proteins of both known and unknown function during the process of folliculogenesis.
One of the benefits of conducting on-tissue tryptic digestion of proteins is that it can lead to more qMSI studies as the peptide abundance can be attributed to the abundance of a specific protein.186 Additionally, in a targeted analysis, isotope-labeled peptide internal standards can be synthesized for improved quantification.187,188 Clemis et al., demonstrated the addition of an isotopically labeled myelin protein tryptic peptide on a rat brain section post on-tissue trypsin digestion which allowed for the normalization of digested myelin protein across the entire brain section.189 The imaging was conducted on a QTrap mass spectrometer with a MALDI source which has the capability for multiple reaction monitoring (MRM) analysis for greater specificity and sensitivity of myelin protein fragments and the internal standard. Using a blank ITO slide, the authors conducted a serial dilution of the standard by aerosol deposition to construct a calibration curve of the ratio of endogenous to labeled peptide prior to qMSI. The authors found that their method supports the accurate quantification of a protein target within a tissue and has the capability to retain the spatial localization of the protein. As previously described, Porta and colleagues stringently monitored their imaging parameters to determine how many pixels are needed for accurate quantification of drugs and peptides using a dried droplet methodology with a MALDI system.121 Within their study, a trypsin digested monoclonal antibody and the associated isotopically labeled peptide standard are spotted together on a MALDI plate to distinguish the appropriate number of pixels for analysis and normalization as shown in Fig. 5. They found at least ten pixels need to be considered to obtain sufficient quantification with standard deviations below 10% for this system. Their analysis was based on similar quantitative proteomic studies where the ratio of an endogenous molecule is often compared to that of an internal standard; in their study the same area or pixels was considered for the peak area of both the digested monoclonal antibody and the internal standard. This study elegantly presents factors that need to be considered for qMSI analysis including but not limited to frequency of the laser, laser power, matrix effects, number of pixels for accurate quantification, and matrix application methods. Recently, Dewez and colleagues used a multilabel peptide approach to correct for any disproportional ionization effects caused by different local environments within a tissue section, which is not entirely taken into account with the use of an external calibration using one standard.190 In their study, they performed a comparison between multilabel and single-label quantification for histone H4 peptides in a pig colon tissue section by MALDI analysis. Utilizing a dynamic concentration for the isotopically labeled internal standards, post on-tissue trypsinization, they calculated the absolute concentration of endogenous H4 peptide in a per-pixel manner. The multilabel analysis proved superior to the single-label as it displayed reduced variance to the predicted concentration of endogenous peptide relative to the single-label. This study highlights the importance of considering tissue heterogeneity for molecules of interest, as concentrations of these molecules can be dynamic and are not often fixed in concentration across an entire tissue section.
Fig. 5 Normalization method for peptide quantification. (a) Size of the region of interest (ROI), (b) MALDI-SRM/MS images for the peptide AEDTAVVYCAR obtained after digestion and derivatization of a monoclonal antibody, its stable isotope-labeled analogue (IS), and after pixel-by-pixel signal ratio (theoretical ratio of 2). Variation of the ratio peptide/IS after (c) pixel-by-pixel normalization and (d) area-by-area normalization as a function of the number of pixels considered per ROI. (e) Inter-spot variability (RSD%) in function of the number of pixels selected per ROI. Reproduced with permission from ref. 121, under Creative Commons License Attribution 4.0 International (CC-BY 4.0), Springer Nature (https://creativecommons.org/licenses/by/4.0/legalcode). |
While MALDI-MSI of peptides is considered the gold standard in qMSI analysis of proteins, MALDI-MSI of intact high molecular weight proteins is becoming more feasible. There are currently several techniques being employed for MALDI-MSI of intact proteins, which often involve some sort of functionalization or tagging of the target protein. Recently, MALDI-IHC, or the combination of MALDI-MSI and immunohistochemistry, has been demonstrated for the analysis of a wide variety of protein targets.96,191,192 This approach utilizes the specificity granted by traditional immunohistochemistry analysis by the use of targeted antibodies. These antibodies are functionalized by a photocleavable mass-tag which contain a modified polypeptide motif of a known molecular weight and can be observed by MALDI post ultraviolet radiation to distinguish protein location.192 While this technique allows for the visualization of particular protein targets, the peak heights from the spectral output only detail semi-quantitative data. However, incorporation of internal standards similar in chemical properties to the polypeptide mass-tags could allow for absolute quantification of the protein targets and is currently being explored. Another fascinating technique recently demonstrated by Wang, et al., for MALDI-MSI of protein biomarkers, employs the use of gold nanoparticles functionalized with organic oligomers that serve as mass-tags which are visualized after specific binding of exosome containing proteins to an antibody.193 The authors took advantage of exosome secretion from different cancer cell lines by selectively capturing the exosomes, which all contain different surface protein biomarkers dependent on the cell of origin. Utilizing their antibody-coated gold chip in tandem with mass-tag containing gold nanoparticles they effectively created a quantitative platform to both visualize and classify protein biomarkers on the surface of the exosomes. Both innovative techniques detail the feasibility of whole protein MALDI-MSI analysis and the potential of incorporating more quantitative measurements utilizing these techniques.
Outside of MALDI-MSI, qMSI of peptides and proteins is being conducted by other ionization techniques. Predominantly, liquid extraction surface analysis (LESA) has shown great success for quantification of proteins in tissue.194 Havlikova and colleagues demonstrated how LESA-MS could be used for quantitative imaging of ubiquitin within a rat brain mimetic tissue model by utilizing a dynamic concentration of a spiked isotopically labeled ubiquitin protein.194 Prior to analysis, the authors performed method validation by determining the lower and upper limits of quantification, 68.6 nmol g−1 and 163 nmol g−1 respectively, utilizing the mimetic tissue model. After determining the limits of quantification, a dynamic range of concentrations were applied to the mimetic model and used for construction of a calibration curve for the 9+ charge state of ubiquitin. They then performed the same experimental setup on sagittal sections of rat and mouse brain to determine the concentration of endogenous ubiquitin as 139.641 ± 95.403 nmol g−1 and 90.233 ± 51.512 nmol g−1 respectively. While many additional works from Dr Helen Cooper's research group has focused on LESA-MS usage for imaging of proteins and protein complexes, they have more recently described incorporating nano-DESI as an alternate ambient ionization source.195,196 nano-DESI allows for a nondenaturing solvent to be used for intact protein analysis along with the added advantage of higher resolution imaging relative to LESA-MSI.196 In the first report of native nano-DESI-MSI, Hale & Cooper employed protein standards for LOD determination, which yielded a value of ∼0.4 pmol.195 While relative concentration of protein complexes were reported for the untargeted study, the incorporation of specific internal standards could be used in a more targeted analysis. Thus, not only has this study demonstrated the feasibility of conducting native MSI using nano-DESI, but it also opens the door to future studies involving targeted qMSI.
We emphasize the need to empirically derive the most suitable matrix and solvent for conducting qMSI, which is tailored to the analyte of interest. Additionally, we discuss the homogenous application of matrix for MALDI analysis, which must be applied across the tissue to prevent matrix “hot spot” formation, as well as mitigate analyte delocalization. We focused our discussion of qMSI in the context of the two most utilized ionization sources for imaging, MALDI and DESI. For both ionization sources, we discuss recent advancements in imaging capabilities such as improvements in instrumentation, alternative methods for increasing sensitivity of detection, development of standards, and increased understanding of sample preparation. Such advancements have led to the bolstered usage of MSI for analysis of therapeutics and biomolecules. The enhancement in qMSI capabilities grants future studies to be more accurate and detail the molecular distribution of analytes in a quantitative fashion. The examples we highlighted are foundational for increasing broad-spectrum usage of qMSI. While other important molecules such as carbohydrates were not discussed, they are equally as significant as what was discussed in this feature article. As the usage of MSI expands, we foresee a shift in the MSI community from the more commonly applied direct comparison analysis of analytes to a more quantitative analysis for more accurate conclusions.
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