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. 2019 Sep 6;9:12857. doi: 10.1038/s41598-019-49326-3

Classification of aggressive and classic mantle cell lymphomas using synchrotron Fourier Transform Infrared microspectroscopy

Magdalena Kolodziej 1,#, Dorota Jesionek-Kupnicka 2,#, Marcin Braun 2,3,#, Vitaliy Atamanyuk 4, Sylwia Sloniec 4, Jozef Cebulski 4, Marian Cholewa 4, Janusz Kopczynski 5, Philip Heraud 6,7, Mark J Tobin 8, Jitraporn Vongsvivut 8, Izabela Zawlik 9,10,
PMCID: PMC6731317  PMID: 31492883

Abstract

Mantle cell lymphoma (MCL) is regarded as an incurable neoplasm, even to the novel drug strategies. It is known MCL has two morphological variants- classic and aggressive. Aggressive MCL is characterized by a higher mitotic index and proliferation rate, and poor overall survival in comparison to classic subtype. The insight into the detailed biochemical composition of MCL is crucial in the further development of diagnostic and treatment guidelines for MCL patients; therefore Synchrotron radiation Fourier Transform Infrared (S-FTIR) microspectroscopy combined with Principal Component Analysis (PCA) was used. The major spectral differences were observed in proteins and nucleic acids content, revealing a classification scheme of classic and aggressive MCLs. The results obtained suggest that FTIR microspectroscopy has reflected the histopathological discrimination of both MCL subtypes.

Subject terms: B-cell lymphoma, Infrared spectroscopy

Introduction

Mantle cell lymphoma (MCL) is a mature B-cell lymphoma, which originates from the inner mantle zone and is characterised by elevated expression of cyclin D1 as a result of the 11q13 translocation1. MCL diagnosis is based on standard histopathological examination complemented essentially by immunohistochemical staining for CD20, CD5, cyclin D1 and Ki67 and frequently supplemented by broad immunohistochemical panels including SOX11, TP53, p16, C-MYC, molecular analysis of 11q13 translocation and inclusion of clinical parameters, such as lactate dehydrogenase levels and white blood cell counts2,3.

MCL is regarded as an incurable neoplasm, and is resistant to novel drug strategies2,4; therefore, there is an emerging need for unravelling the biology of this malignancy. It is already known that MCL is a heterogeneous disease and distinct morphological variants have been described. These encompass classic and aggressive (blastoid and pleomorphic) mantle cell lymphomas24. The classic MCL is composed mainly of small-to-medium sized lymphocytic cells with moderate features of malignancy and displays mantle zone, nodular, or diffuse architecture. The aggressive MCLs, on the other hand, show high malignant features (resembling lymphoblasts in blastoid variant and resembling large, heterogeneous, anaplastic cells in pleomorphic variants). The classic MCL is characterised by lower mitotic index and lower proliferation rate (Ki67/MiB-1 index) in comparison to both aggressive subtypes5. The aggressive MCLs have more frequently poor prognostic mutations in TP53 and CDKN2A/B genes in comparison to the classic MCLs6,7. Finally, the aggressive MCLs are characterised by a poorer progression-free and overall survival, when compared to classic variants and according to current guidelines aggressive MCL patients are allocated into high-risk groups2,5.

Although the MCLs classification is well-established with histopathological assessment, the insight into the molecular/biochemical information would be invaluable for a better description of both entities and would be a fundamental proof for the validity of their classification.

Fourier Transform Infrared (FTIR) microspectroscopy offers a novel approach for the assessment of biochemical changes such as healthy and cancerous tissue differentiation and the determination of cancer subtypes without the use of any additional reagents8,9. Synchrotron radiation (SR) sources provide bright, broadband infrared light, enabling the analysis of micron-sized samples with higher than the conventional signal to noise than is possible with conventional IR sources10. The purpose of the current study was to determine differences between classic and aggressive mantle cell lymphomas using S-FTIR microspectroscopy combined with PCA analysis of the acquired spectroscopic data.

Results

Histopathological micrographs of control and malignant lymph node tissues, classic and aggressive MCL, are shown in Fig. 1.

Figure 1.

Figure 1

Haematoxylin/eosin histopathological images of representative control and lymphoma tissues. (a,b) non-neoplastic control lymph node, (c,d) classic mantle cell lymphoma, (e,f) and aggressive mantle cell lymphoma. Ki67 proliferation index in (g) classic and (h) aggressive MCL. All MCL cases were positive for cyclin D1 (i) and CD5 (j). Scale bars: 1 mm in (a,c,e) and 50 um in (b,d,f,g–j).

FTIR spectral description

Representative absorbance (A) and Extended Multiplicative Scattering Corrected second derivative (B) average spectra of the healthy control and two MCL subtypes are presented in Fig. 2. Since the visual inspection of peak positions on raw spectra was difficult, spectra were transformed into the second derivative to enhance the features of overlapping bands (Fig. 2b). The second derivative spectrum gives a negative value for every band located in the absorbance spectrum and allows for more accurate identification of individual peaks in complex spectra. The averaged spectra of every patient included in the further analysis can be found in Supplementary Figs S1S4.

Figure 2.

Figure 2

Comparisons of the average absorbance (a) and EMSC-corrected second derivative (b) spectra of the healthy control, classcic MCL and aggressive MCL with assigned minima.

The absorbance minima determined for all tissues in the protein region are vibrations of amide I (1700–1630 cm−1) and amide II (1580–1500 cm−1) functional groups1012. The peaks localised at 1695 cm−1, 1682 cm−1 and 1639 cm−1 are characteristic for aggregated β-sheet, β-turn, and β-sheet structures, respectively11,13. Typically, the minimum found at 1655 cm−1 is attributed to α-helix structures of amide I13. The (N–H) bending coupled to (C–N) symmetric stretching vibrations assigned to amide II are localised at 1571 cm−1 and 1541 cm−112,14. Of note is a peak found at 1515 cm−1, typically attributed to (C–H) bending vibrations of tyrosine15. Of interest are absorbance intensity changes observed for malignant tissues. Both classic and aggressive MCL represents an increase in absorbance intensity noted in peak attributed to α-helix (1655 cm−1) structure of amide I, more pronounced in aggressive MCL (Fig. 2b). Absorbance intensity increase noticed in aggressive subtype has also been observed for minima attributed to amide I β-sheet (1639 cm−1), amide II (1541 cm−1) and tyrosine (1515 cm−1) (Fig. 2b). It was already reported that features associated with an aggressive clinical course of MCL included overexpression of the p53 protein6. This protein plays an important role in the regulatory control of the cell cycle and its mutations have been associated with the progression to more aggressive forms of the disease6,16.

The absorbance minima found at 1425 cm−1 and 1330 cm−1 are typically responsible for asymmetric and symmetric CH3 and CH2 bending vibrations of lipids and proteins8,10. The peak localised at 1404 cm−1 is responsible for (CH3) bending vibrations of proteins13.

The other prominent peaks occur in the lower wavenumber region. The peak found in control tissue at 1231 cm−1, assignable to asymmetric stretching vibrations of PO2 in DNA17 is shifted towards higher wavenumber by 3 cm−1 and 7 cm−1 in classic and aggressive MCL respectively. Moreover, the absorbance intensity of this peak is increased in aggressive MCL, which coincide with available knowledge about cyclin D1 overexpression18. The absorbance intensity of minimum localised at 1172 cm−1, attributed to symmetric stretching vibrations of PO2 in DNA17 is slightly decreased in both MCL subtypes, indicating DNA fragmentation associated with apoptotic cell death19. The detailed assignments of the minima found in 2nd derivative spectra are shown in Table 1.

Table 1.

Summary of mean values of wavenumbers (cm−1) seen in FTIR spectra of classic and aggressive MCL and control tissue.

Band position (cm−1) Vibrational mode References
1695 Amide I: aggregated β-sheet 13
1682 Amide I: β-turn structure 11
1655 Amide I: α-helix 13
1639 Amide I: β-sheet structure 11
1571 δas(N–H) and νs(C–N) stretch in amide II 12
1541

Amide II: δ(N–H) coupled to ν(C–N) vibrational modet

AAmide II: perpendicular modes of α-helix and parallel-chain β-sheet

10, 14
1515 δ(C–H) from tyrosine 15
1425 δas(CH3) and δas(CH2) of lipids and proteins 8
1404 δ(CH3) of proteins 13
1330 δs(CH3) and δs(CH2) of lipids and proteins 10
1231 νas (PO2) of DNA 17
1172 νs (PO2) of DNA 17

Abbreviations: νs – symmetric stretch; νas – asymmetric stretch; δs – symmetric in-plane deformation (bend); δas – asymmetric in-plane deformation (bend).

Principal component analysis

The PCA results were obtained with three spectral ranges 1720–1495 cm−1, 1440–1400 cm−1 and 1360–1160 cm−1 covering spectral features characteristic for proteins, lipids, carbohydrates and nucleic acids functional groups. Initially PCA was performed to differentiate MCL tissues from healthy control and results are presented on Fig. 3a,b. The PC loading plots show the amide band region attributable to proteins (1700–1500 cm−1) was heavily loaded for PC1 revealing separation of healthy control from both malignant tissues with 56% explained variance (green ellipse, Fig. 3a). Spectra of control can be distinguished from MCL tissues by having negative PC1 scores (Fig. 3a), which can be explained by strong positive loading observed at 1630 cm−1 attributed to β-sheet structures of amide I functional group (Fig. 3b). Positive loadings at 1559 cm−1 and 1541 cm−1, attributable to amide II protein conformers, also separated healthy control cluster from malignant tissues. Moreover, both cancer tissues spectra are separated by positive PC1 scores (purple ellipse, Fig. 3a), explained by strong negative loadings indicated at 1661 cm−1 (amide I)14, 1566 cm−1 ((COO–) asymmetric stretching vibrations of amide II)20 and 1551 cm−1 (amide II α-helix structures)20 (Fig. 3b). These outcomes suggest that the amide I and II structures are most responsible for discrimination of healthy control from lymphoma tissues, which confirms the conclusions drawn from the examination of the average spectra (Fig. 2). Other differences with an impact on classification involve the negative loadings from rocking vibrations of CH2 of distributed cis-olefins (1419 cm−1) and C=O stretching from polysaccharides (1195 cm−1, 1167 cm−1) as well as positively loaded peak responsible for symmetric stretching vibrations of PO2 (1185 cm−1) (Fig. 3b). The PC2 loading plot reveals components mainly responsible for healthy control spectral data dispersion.

Figure 3.

Figure 3

PCA scores (left) and loadings (right) plots showing projections against the first 3 PCs that explain the majority of the spectral variation. (a,b) Control (green ellipse) and both malignant tissues (purple ellipse) spectral datasets, and (c,d) classcic (blue ellipse) and aggressive (pink ellipse) MCL tissues, alone. Black ellipse indicates dead patients.

Subsequently, PCA was performed including only the lymphoma tissue spectral datasets. Results presented in Fig. 3c reveals separation of spectral clusters of classic (blue ellipse) and aggressive (pink ellipse) MCL. Classic MCL distinction is explained by negative loadings at 1661 cm−1, 1641 cm−1 and 1530 cm−1 assignable to amide I and II protein conformers (Fig. 3d). Aggressive MCL cluster can be distinguished by positive loadings observed at 1650 cm−1, 1624 cm−1 and 1541 cm−1. This outcomes clearly corresponds to changes in absorbance intensity of protein moiety of described average spectra: in the aggressive subtype protein level is higher than in classic MCL (Fig. 2). Of interest is a PC2 positive loading observed at 1647 cm−1 and assigned to α-helix amide I structures. This loading seems to be responsible for distinction of spectra obtained from two patients, for whom the treatment was not successful (black ellipse, Fig. 3c).

Discussion

This research has demonstrated that the histopathological subtyping of MCL into classic and aggressive forms has its strong background in the biochemical landscape of both subtypes. It should be emphasised that this is the first study which has reported the combination of S-FTIR and PCA analysis for the assessment of MCL subtypes. We previously reported the usefulness of the presented approach in distinction of lung cancer subtypes and estimation of chemotherapy efficacy in breast cancer8,9.

Our present results showed an absorbance increase in peaks attributed to amide I, amide II and nucleic acids noticed in both malignant tissues, much more pronounced in aggressive MCL. The shift of wavenumber was observed for PO2 asymmetric stretching vibrations corresponding to DNA. PCA loadings revealed amide I rich in β-sheet structures and amide II bands mainly differentiate two MCLs. These results correlate with available knowledge about proteins overexpression in the aggressive MCL subtypes.

In conclusion, classic and aggressive MCL are distinct biological and biochemical entities. FTIR spectroscopy was a sensitive tool for the distinction of the biochemical composition of both subtypes and this knowledge may be beneficial for understanding the biology of MCL.

Methods

Material

The study was conducted under the Institutional Review Board (Protocol No. KBET/6/06/2014) from June 2014 at the University of Rzeszow. The experimental protocols used in this study were approved by the institutional ethics committees (IECs) of the University of Rzeszow and were carried out in accordance with the approved guidelines. Informed consent was obtained from all subjects.

The research was conducted on formalin-fixed paraffin embedded (FFPE) tissue samples that were prepared according to standard protocols. The material was obtained from 18 patients with mantle cell lymphoma. Patients were hospitalised in the Holy Cross Cancer Center in Kielce and examined in the Department of Hematology of Medical University in Lodz between 2009–2018, and treated for MCL with customised chemotherapy. All patients were of white race, eight males, nine females and one unknown. Nine patients were diagnosed with classic MCL and nine patients with aggressive MCL. Clinicopathological characteristics of all MCL patients are presented in Table 2.

Table 2.

Cliniopathological characteristics of patients with mantle cell lymphoma.

Case No. Age Sex Histological type Cyclin D1 Ki 67 index First-line treatment Relapse Next-line treatment Long term follow-up
50 ND F blastoid/pleomorphic positive 90 RCHOP ND ND ND
6 82 M blastoid/pleomorphic positive 90 RCHOP yes R-Benda Death
7 59 F blastoid/pleomorphic negative 100 RCHOP yes R-Benda Death
22 ND ND blastoid/pleomorphic positive 80 ND ND ND ND
27 70 M blastoid/pleomorphic positive 70–80 RCHOP yes R-Benda Alive
4 76 F classic positive 40 RCVP yes R-Benda Alive
8 70 F classic positive 20 RCHOP no no Alive
18 67 M classic positive 30 ND ND ND ND
21 70 F classic positive 20–40 RCP yes R-Benda Alive
23 86 M classic positive 20 ND ND ND ND
25 75 F classic positive 40–50 RCHOP yes Benda Alive
28 68 M classic positive 50 RCHOP no no Alive
30 86 M classic positive 30–50 R-Benda no no Death
32 75 F classic positive 40–50 RCHOP no no Death
36 88 F blastoid/pleomorphic positive 40 COP ND ND Death
37 83 M blastoid/pleomorphic positive 80 RCOP/RCP ND ND Alive
39 70 F blastoid/pleomorphic positive 50 RCHOP ND ND Death
40 76 M blastoid/pleomorphic positive 90 RCHOP ND ND Death

(Abbreviations: RCHOP = Rituximab, Cyclophosphamide, Doxorubicin (Hydroxydaunomycin), Vincristine (Oncovin), Prednisolone; RCVP = Rituximab, Cyclophosphamide, Vincristine, Prednisolone; RCP = Rituximab, Cyclophosphamide, Prednisolone; COP = Cyclophosphamide, Vincristine (Oncovin), Prednisolone; R-Benda = Rituximab, Bendamustine; ND = no data).

Pathological diagnostic approach

The standard panel of antibodies examined in patients with MCL covered CD20, CD3, BCL2, BCL6, MYC, CD10, MUM1, Ki67, cyclin D1, SOX11, TdT, CD5, CD38 and PAX5 (BSAP). The antibodies clones along with the manufacturer are named in Table 3.

Table 3.

The list of antibodies used in the immunohistochemical analysis.

Antibody Clone Company
BCL2 124 DAKO
BCL6 PG-B6p DAKO
BSAP (PAX-5) DAK-Pax5 DAKO
CD3 Polyclonal rabbit DAKO
CD5 4C7 DAKO
CD10 56C6 DAKO
CD20 L26 DAKO
CD38 SP149 Cell Marque
Cyclin D1 EP12 DAKO
MYC Y69 VENTANA
Ki-67 MIB-1 DAKO
MUM-1 MUM1p DAKO
SOX-11 MRQ-58 Cell Marque
TdT EP266 DAKO

Immunohistochemical analysis used monoclonal antibodies [FLEX Monoclonal Mouse Anti-Human, Ready-to-Use (Link), Dako, Denmark] and EnVisionTMFLEX + (Dako, Denmark) for the visualization. The tests were carried out using Autostainer Link 48 (Dako, Denmark).

The H&E slides were scanned using UltraFast Scanner (Philips IntelliSite Solution, USA) with DigiPath™ Professional Production Software (Xerox, Norwalk, CT, USA) and representative areas of each case were selected and microtomed into 8 µm thick sections and mounted onto 1-mm-thick calcium fluoride (CaF2) windows (Crystran, UK).

S-FTIR measurements and spectral analysis

The S-FTIR measurement was performed in transmission mode using a Bruker Vertex V80v FTIR spectrometer coupled with a Hyperion 2000 FTIR microscope (Bruker Optik GmbH, Ettlingen, Germany) equipped with a liquid nitrogen-cooled narrow-band mercury cadmium telluride (MCT) detector, at the Australian Synchrotron IR Microspectroscopy Beamline (Victoria, Australia). The spectral acquisition was performed using a 36× IR objective (NA = 0.50; Bruker Optik GmbH, Ettlingen, Germany) with the aperture size adjusted to 6.9 µm diameter beam size, and the spectra were acquired at a 4 µm step interval between pixels. The S-FTIR transmission maps were then acquired to cover an area of 200 μm × 200 μm on the MCL tissue. For each pixel, the S-FTIR spectrum was recorded within a spectral range of 3800–700 cm−1 using 4-cm−1 spectral resolution and 8 co-added scans. In all cases, Blackman-Harris 3-Term apodization, Power-Spectrum phase correction, and zero-filling factor of 2 were set as default acquisition parameters using OPUS 8.0.19 software suite (Bruker). Background spectra were collected from sample-free clean areas on the same CaF2 substrate, following the acquisition of every 50 single spectra of the tissue, using 64 co-added scans and the same default parameters.

Before spectral pre-processing atmospheric compensation function (OPUS 8.0.19 software, Bruker) was applied to remove CO2 and water vapour interference features. FTIR spectra embedded in acquired chemical maps were extracted and pre-processed using CytoSpec™ version 1.4.02 (Cytospec Inc., Boston, MA, USA) as follows. Prior to Hierarchical Cluster Analysis (HCA), the spectra were quality screened based upon a minimum signal-to-noise (S/N) ratio of 100 measured over the spectral ranges of 1720–1495 cm−1, 1440–1400 cm−1 and 1360–1160 cm−1. Next, quality-screened spectra were pre-processed using noise-reduction algorithm, followed by second derivatization using 13-point Savitzky-Golay algorithm to eliminate the broad baseline offset and curvature and to enhance the features of hidden and overlapping bands. Subsequently, spectra were vector-normalised to account for pathlength differences between samples. HCA based on five clusters was applied on the pre-processed spectra using three spectral regions of 1720–1495 cm−1, 1440–1400 cm−1 and 1360–1160 cm−1 to exclude the paraffin bands typically found at 2920 cm−1, 2850 cm−1, 1470 cm−1 and 1465 cm−1 [10]. As a result, obtained average absorbance and second derivative spectra were used for cluster selection for further analysis.

Principal component analysis (PCA) was performed using The Unscrambler® 10.4 software package (CAMO Software AS, Oslo, Norway). Prior to PCA selected representative second derivative spectra were corrected using Extended Multiplicative Scatter Correction (EMSC) in order to correct spectral artefacts commonly found in FTIR spectra of biological samples. The PCA approach was first applied to three individual groups: healthy control, classic MCL and aggressive MCL to eliminate outliers from samples in the same group.

After the selection of representative spectra, the EMSC-normalised second derivative spectral datasets of all groups were combined into one single set. PCA was subsequently performed on the entire combined dataset to investigate similarities and differences of biochemical makeups between healthy and malignant tissues. To exclude the bands associated with paraffin, the PCA was calculated using three spectral regions of 1720–1495 cm−1, 1440–1400 cm−1 and 1360–1160 cm−1.

Supplementary information

Dataset 1 (2.4MB, pdf)

Acknowledgements

We thank Synevo Sp. z o.o. Company (HQ, Warsaw, Poland) for providing the access to UltraFast Scanner and DigiPath™ Professional Production Software. The S-FTIR spectral images of all tissue samples used in this study was acquired using an online Bruker Vertex V80v FTIR spectrometer coupled with a Hyperion 2000 FTIR microscope system at Infrared Microspectroscopy (IRM) beamline at Australian Synchrotron (Victoria, Australia). The study was financially supported by University of Rzeszow, Faculty of Medicine. The study was partly performed within the project ‘Centre for Innovative Research in Medical and Natural Sciences’, which was supported by University of Rzeszow, and was co-financed within Regional Operational Programme for Podkarpackie Province for 2007–2013 (Contract Number: UDA-RPPK.01.03.00-18-004/12-00).

Author Contributions

M.K. designed the project and analyzed and discussed the data. D.J.K. and M.B. designed the project and prepared samples. J.K. prepared samples. V.A. and S.S. performed experiment at Australian Synchrotron. J.C. designed the project and analyzed and discussed the data. M.C. designed the project and analyzed and discussed the data. P.H. designed the project. M.T. and J.V. designed the project, performed experiment at Australian Synchrotron and analyzed and discussed the data. I.Z. designed the project and analyzed and discussed the data. All authors prepared final manuscript.

Data Availability

For original data, please contact izazawlik@yahoo.com.

Competing Interests

The authors declare no competing interests.

Footnotes

Publisher’s note: Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Magdalena Kolodziej, Dorota Jesionek-Kupnicka and Marcin Braun contributed equally.

Supplementary information

Supplementary information accompanies this paper at 10.1038/s41598-019-49326-3.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Dataset 1 (2.4MB, pdf)

Data Availability Statement

For original data, please contact izazawlik@yahoo.com.


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