An imbalance between cellular apoptosis and survival may be critical for the pathogenesis of lymphoma. Therefore, the gene expression pattern in lymph node preparations from patients with mantle cell lymphoma (MCL) was compared to the pattern in nonmalignant hyperplastic lymph nodes (HLs). Oligonucleotide microarray analysis was performed comparing 5 MCLs to 4 HLs using high-density microarrays. The expression data were analyzed using Genespring software. For confirmation, the expression of selected genes was analyzed by real-time polymerase chain reaction using the RNA extracted from 16 MCL and 12 HL samples. The focus was on 42 genes that were at least 3-fold down-regulated in MCL; in addition to the B-cell leukemia 2 (BCL2) system other apoptotic pathways were altered in MCL. The FAS-associated via death domain (FADD) gene that acts downstream of the FAS cascade as a key gene to induce apoptosis was more than 10-fold down-regulated in MCL. Furthermore, the death-associated protein 6(DAXX) gene, the caspase 2 (CASP2) gene, and the RIPK1 domain containing adapter with death domain(RAIDD) gene, which are key genes in other proapoptotic pathways, were also decreased in the MCL samples. The suggestion is made that in addition to the known overexpression of cyclin D1, which drives entry into the cell cycle, disturbances of pathways associated with apoptosis contribute to the development of MCL.

Mantle cell lymphoma (MCL) is a subgroup of moderately aggressive B-cell lymphomas that seems incurable with available treatments. In addition to morphologic and immunologic features as proposed by the European Lymphoma Task Force (ELTF)1 and the Revised European American Lymphoma (REAL) classification,2 detection of the rearrangement and overexpression of the cyclin D1 (CCND1, BCL1/PRAD1) gene3 is used for characterization of MCL.4 CCND1 controls the progression from the G1 to the S phase of the cell cycle by binding to cyclin-dependent kinases (CDK4 and CDK6). This complex directly phosphorylates the retinoblastoma (RB) protein causing the release of the E2F family of transcription factors.5 BecauseCCND1 is not highly expressed in either normal lymphocytes or other low-grade non-Hodgkin lymphomas,6 overexpression of CCND1 in MCL suggests an important role for it in the pathogenesis of this lymphoma. CCND1 is associated with the development of several types of solid tumors7,8 and transfection experiments have shown that CCND1 may interact with oncogenes such as c-myc and ras.9 AlthoughCCND1 may be thought of as an oncogene, overexpression ofCCND1 alone seems not to be sufficient to promote malignant transformation.10 Additional abnormalities are required. We set out to find these additional abnormalities.

Microarray analysis11 has been recently developed as a highly efficient method of gene expression profiling.46 Recently, the microarray technique was used by several groups to subclassify malignant diseases including high-grade lymphoma.12-20 

To expand the understanding of altered pathways in MCL, we performed oligonucleotide microarray analysis on well-characterized lymph node samples. All MCL samples used for our analyses had the morphologic and immunologic features of MCL and overexpressed CCND1. As a control, we investigated gene expression in nonmalignant hyperplastic lymph nodes (HLs). We used 2 different strategies for analysis of changes in gene expression in the tumor cells. First, we examined the expression of genes that are known to be involved in the pathogenesis of other hematologic malignancies and genes involved in cell cycle control and in signal transduction. Second, we focused on highly differentially expressed genes in MCL compared to the control normal HLs. In addition to the B-cell leukemia 2 (BCL2) pathway, we found that other apoptotic pathways were altered in MCL. The microarray results were confirmed by real-time polymerase chain reaction (PCR) and immunohistochemistry in a larger set of clinical samples.

RNA isolation

Lymph nodes from 16 patients with MCL and 12 individuals with HLs due to nonmalignant causes were investigated. All morphologic diagnoses were confirmed by immunohistochemistry and CCND1 overexpression was detected in all of the MCL samples. The tissue sections were reviewed by 2 independent specialists. Total RNA was extracted from microdissected tumor cells from quick-frozen lymph nodes using the acid guanidium/phenol/chloroform method with minor modifications.21 In addition, RNA was purified by the RNeasy cleanup system (Qiagen, Valencia, CA) according to the manufacturer's protocol.

Oligonucleotidemicroarray

The detailed protocol for the sample preparation and microarray processing is available from Affymetrix (Santa Clara, CA). Briefly, at least 8 μg purified RNA was reverse transcribed by Superscript II reverse transcriptase (Life Technologies, Grand Island, NY) using T7-(dT)24 primer containing a T7 RNA polymerase promoter. After synthesis of the second complementary DNA (cDNA) strand, this product was used in an in vitro transcription reaction to generate biotinylated complementary RNA (cRNA).

Fifteen micrograms of fragmented cRNA was hybridized to a HuGeneFL microarray (Affymetrix) for 16 hours at 45°C with constant rotation at 60 rpm according to the Affymetrix protocol. This high-density oligonucleotide-based array targets 5600 human genes as selected from the National Center for Biotechnology Information (NCBI) Gene Bank database.47 Each microarray was used to assay a single sample. After hybridization, the microarray was washed and stained on an Affymetrix fluidics station and scanned with an argon ion confocal laser, with a 488-nm emission and detection at 570 nm. The fluorescence intensity was measured for each microarray and normalized by global scaling to 2500 and to the average fluorescence intensity for the entire microarray.22 The data were imported into a Microsoft Excel database.

Dataanalysis

Data analysis was performed with the Genespring software version 3.0 (Silicon Genetics, San Carlos, CA). To be able to calculate fold changes and not to lose genes that are not expressed in one sample, but switched on in the other, or vice versa, we set the lowest raw data value at an arbitrary “11.”23 To eliminate “fold-change” calls within the range of background noise, we required for significant changes that the genes to be classified as “up-regulated” had raw data values of at least 500 in the MCL samples, and to be called “down-regulated” had raw data values of at least 500 in the control.23 Within those parameters, genes were selected if they were either up- or down-regulated at least 3-fold in 4 of 5 cases of MCL studied by microarray.

Genelists

The gene expression profile of our clinical tumor samples includes: (1) changes potentially responsible for the development of MCL; (2) secondary gene expression alterations due to (1); (3) unrelated changes; and (4) false-positive/negative data. Nevertheless, the computational tools to better ascertain new insights about genes differentially expressed in MCL as compared to the control HLs are not yet at hand. Lacking a program that is able to discriminate reliably between these different possibilities and wishing to order the expression data into more meaningful pathways, we went through the public gene databases47 48 and developed a database containing information for 1149 genes that may be involved in the regulation of cell growth and cell signaling. We categorized these genes in 32 subgroups as given in Table 1and we created for each of the subgroups a separate Excel file containing the name of the gene, the GenBank accession number, and additional information if necessary.

Table 1.

Lists of genes involved in cell signaling pathways

SubgroupNo. of genes
Adapter proteins 19 
Caspases/caspase substrates 12  
Cell-cycle proteins 95 
Cell surface markers 88  
Clusters of differentiation 44 
Coactivators/HATs 13  
Corepressors 
Cytokines/cytokine receptors 65  
Cytoskeletal proteins 61 
Death domain adapters 10  
DNA damage repair proteins 32 
Enhancer binding proteins 69  
Extracellular matrix proteins 45  
Glutamate receptors 4  
G-protein regulators 17  
G-proteins 33  
Growth factors/growth factor receptors 98  
Histones 15  
Ion channels 49  
Kinases (Pl3, Ser-Thr) 22  
MAPKs/SAPsK/JAKs 64  
Mitochondrial proteins 33  
NOSs 2  
Nuclear receptors 24  
PDZ adapters 7  
Phosphatases 56  
Signaling effectors 65 
SMADs/STATs 10  
Synaptic vesicles 17  
TGF/TNF 31 
Transcription factors 23  
Tyrosine kinases 18 
SubgroupNo. of genes
Adapter proteins 19 
Caspases/caspase substrates 12  
Cell-cycle proteins 95 
Cell surface markers 88  
Clusters of differentiation 44 
Coactivators/HATs 13  
Corepressors 
Cytokines/cytokine receptors 65  
Cytoskeletal proteins 61 
Death domain adapters 10  
DNA damage repair proteins 32 
Enhancer binding proteins 69  
Extracellular matrix proteins 45  
Glutamate receptors 4  
G-protein regulators 17  
G-proteins 33  
Growth factors/growth factor receptors 98  
Histones 15  
Ion channels 49  
Kinases (Pl3, Ser-Thr) 22  
MAPKs/SAPsK/JAKs 64  
Mitochondrial proteins 33  
NOSs 2  
Nuclear receptors 24  
PDZ adapters 7  
Phosphatases 56  
Signaling effectors 65 
SMADs/STATs 10  
Synaptic vesicles 17  
TGF/TNF 31 
Transcription factors 23  
Tyrosine kinases 18 

By screening the public available gene databases (http://www4.ncbi.nlm.nih.gov/ and http://www4.ncbi.nlm.nih.gov/omim/), 1149 genes that may be involved in the regulation of cellular growth and cell signaling were selected and categorized. For each of the subgroups, a separate Excel file was created containing the name of the gene, the GenBank accession number and additional information.

By combining these gene lists with the genes that were selected due to changes of expression by comparing MCL to the control, we identified pathways that were altered in our tumor samples.

Real-time PCR

Total RNA (2 μg) was processed directly to cDNA by reverse transcription with Superscript II (Life Technologies) according to the manufacturer's protocol in a total volume of 100 μL. All PCR primers and TaqMan probes (Table 2) were designed using software PRIMER349 using published sequence data from the NCBI database. Primers were synthesized by Life Technologies. TaqMan probes were purchased from Applied Biosystems (Foster City, CA) and were labeled with the reporter dye FAM in the 5′ end and the quencher dye TAMRA in the 3′ end. In control experiments with 12 replicates, no false positives were detected and the variance between each of the replicates was within 5%. Amplification reactions contained 5 μL cDNA, 12.5 μL of the Universal Taqman 2× PCR mastermix (Applied Biosystems), and 2.5 μL of each of the specific primers and the probe. Primer and TaqMan probe concentrations in the final volume of 25 μL were 300 nM and 100 nM, respectively. All reactions were performed in triplicate in an iCycler iQ system (Biorad, Hercules, CA) and the thermal cycling conditions were: 2 minutes at 50°C, 10 minutes at 95°C, followed by 45 cycles of 95°C for 15 seconds, and 60°C for 1 minute.

Table 2.

Primers and probes used for real-time polymerase chain reaction

GenePrimer 1 (5′-3′)Primer 2 (5′-3′)Probe (5′-FAM-3′-TAMRA)
CASP8 AAGCAAACCTCGGGGATACT TCCATTCCTGTCCCTAATGC AGCACGGGAGAAAGTGCCCAAA 
CASP9 GTTGAGACCCTGGACGACAT CCTTTCACCGAAACAGCATT CAGTCCCTCCTGCTTAGGGTCGC 
RAIDD TGGAGGGACTGGTTCTTCAG ATCCAGCAGGAGCATTGTTT TGCTCAAACCACAGGCCTCCG 
DAXX GACGGACATTTCCTCTTCCA CGCCTCCATTGAAGGAAGTA CAATCAGAGGAGCCCTTCACCACTG 
DP2 AACCATTTGGCTGCTGATTC GATTCTGACATTCCTGAGCAGAA CAAGTGGATTGGCCTGCCTACCA 
FADD GTGCGGGAGTCACTGAGAAT GTCAGCCACCAGGTTCATCT AACGCAACAGTGGCCCACCTG 
FAS TCCAAGGGATTGGAATTGAG ACCTGGAGGACAGGGCTTAT AGGCCTGCATCATGATGGCCA 
ICSBP1 GCTGATCAAGGAGCCTTCTG ACCAGTCTGGAAGGAGCTGA AAAAGGAGCCCTTCCCCGCC 
PDCD1 TGTCTTTCCTAGCGGAATGG CCAAGAGCAGTGTCCATCCT TCGGAGTGCCCAGCCACTGA 
STAF50 TCATTTGCTGGGTTTGTGAA GCTACCTGCAGCTTTTCCTG CCAAGGTCACCAAACATTCCGC 
TRAIL TCACAGTGCTCCTGCAGTCT GCAATGCCACTTTTGGAGTA CCAACGAGCTGAAGCAGATGCA 
BAC TCCCTGGAGAAGAGCTACGA AGGAAGGAAGGCTGGAAGAG CAATGAGCGGTTCCGCTGCC 
GenePrimer 1 (5′-3′)Primer 2 (5′-3′)Probe (5′-FAM-3′-TAMRA)
CASP8 AAGCAAACCTCGGGGATACT TCCATTCCTGTCCCTAATGC AGCACGGGAGAAAGTGCCCAAA 
CASP9 GTTGAGACCCTGGACGACAT CCTTTCACCGAAACAGCATT CAGTCCCTCCTGCTTAGGGTCGC 
RAIDD TGGAGGGACTGGTTCTTCAG ATCCAGCAGGAGCATTGTTT TGCTCAAACCACAGGCCTCCG 
DAXX GACGGACATTTCCTCTTCCA CGCCTCCATTGAAGGAAGTA CAATCAGAGGAGCCCTTCACCACTG 
DP2 AACCATTTGGCTGCTGATTC GATTCTGACATTCCTGAGCAGAA CAAGTGGATTGGCCTGCCTACCA 
FADD GTGCGGGAGTCACTGAGAAT GTCAGCCACCAGGTTCATCT AACGCAACAGTGGCCCACCTG 
FAS TCCAAGGGATTGGAATTGAG ACCTGGAGGACAGGGCTTAT AGGCCTGCATCATGATGGCCA 
ICSBP1 GCTGATCAAGGAGCCTTCTG ACCAGTCTGGAAGGAGCTGA AAAAGGAGCCCTTCCCCGCC 
PDCD1 TGTCTTTCCTAGCGGAATGG CCAAGAGCAGTGTCCATCCT TCGGAGTGCCCAGCCACTGA 
STAF50 TCATTTGCTGGGTTTGTGAA GCTACCTGCAGCTTTTCCTG CCAAGGTCACCAAACATTCCGC 
TRAIL TCACAGTGCTCCTGCAGTCT GCAATGCCACTTTTGGAGTA CCAACGAGCTGAAGCAGATGCA 
BAC TCCCTGGAGAAGAGCTACGA AGGAAGGAAGGCTGGAAGAG CAATGAGCGGTTCCGCTGCC 

Primers and TaqMan probes were designed using software PRIMER3 (http://www.genome.wi.mit.edu/cgi-bin/primer/primer3_www.cgi) using sequence data from the NCBI database.

We and others used the expression of β-actin (BAC) in malignant hematopoietic cells to normalize the expression data of each of the genes.24 25 BAC was used as an active and endogenous reference to correct for differences in the amount of total RNA added to a reaction and to compensate for different levels of inhibition during reverse transcription of RNA and during PCR.

Immunohistochemistry

Immunohistochemical analysis was performed on cryostat sections from snap-frozen tissue blocks using modifications of immunoperoxidase techniques as previously described.26 CCND1 and BCL2 antibodies were purchased from Dako (Carpinteria, CA). Antibody detection was performed with the Dako labeled streptavidin-biotin system (LSAB).

Distribution of gene expression in MCL

To select the most interesting genes from a total of 5600 genes analyzed by oligonucleotide microarray in our clinical samples, we performed several restrictions as described in “Materials and methods.” In this study, we focused on 4731 genes that had raw data of more than 500 according to our background cutoff. Microarray data were available from 5 MCL and 4 HL samples; fold changes of gene expression were based on the comparison between each of the MCL with the control HLs. Figure 1 provides a snapshot overview of the number of genes that were unchanged or either increased or decreased at least 2-, 3-, 5-, or 10-fold in either 3, 4, or 5 of the 5 samples compared to the expression in HLs. We focused on genes that were more than 3-fold up- or down-regulated in at least 4 of the 5 MCL samples.

Fig. 1.

Distribution of gene expression in MCL samples.

Overview of the number of genes that were unchanged or either up- or down-regulated at least 2-, 3-, 5-, or 10-fold in 3 (░), 4 (▪), or 5 (■) of the 5 MCL samples compared to expression in HL samples. We focused on genes that were more than 3-fold up- or down-regulated in at least 4 of 5 MCL samples.

Fig. 1.

Distribution of gene expression in MCL samples.

Overview of the number of genes that were unchanged or either up- or down-regulated at least 2-, 3-, 5-, or 10-fold in 3 (░), 4 (▪), or 5 (■) of the 5 MCL samples compared to expression in HL samples. We focused on genes that were more than 3-fold up- or down-regulated in at least 4 of 5 MCL samples.

Close modal

Most differentially regulated genes in MCL

The comparison of the genes that were 3-fold or greater up-regulated in at least 4 of the 5 MCL with the list that we culled from the public databases containing a total of 1149 genes (Table 1) involved in cell growth and signaling resulted in a list of 92 highly differentially expressed genes. Fifty of them were up-regulated in MCL (Table 3) and 42 of them were down-regulated (Table 4). Many of the up-regulated genes were transcription factors (eg, AP2, ATF1, C/EBPγ, JUN, MYB, MYC), cell cycle–related genes (eg,CCND1, CDK4, DP2, E2F5), and growth factors and their receptors (eg, IL-1R, IL-3, IL-8, IL-13, IL-18).

Table 3.

Genes whose expression is up-regulated in mantle cell lymphoma compared to hyperplastic lymph nodes as analyzed by oligonucleotide microarray

GeneAccessMapDescriptionChange
Transcription factors     
AF10 U13948 10p12 ALL1 fused gene from chromosome 10  
AP2α M61156 6p22.3 Transcription factor AP2α > 10 
ATF1 X55544 12q13 Activating transcription factor > 10 
C/EBPγ U20240  CCAAT/enhancer binding protein γ > 10  
DP2 L40386  E2F dimerization partner DP2 > 10  
E2F5 U15642  E2F transcription factor 5 > 10  
JUN U65928 1p32 V-jun avian sarcoma virus oncogene homolog 8  
MYBL2 X13293 20q13.1 V-myb avian myeloblastosis viral oncogene  
MYC M13929 8q24.12 Avian myelocytomatosis viral oncogene > 10 
PBX2 X59842 6p21.3 Pre-B-cell transcription factor 2 > 10  
TAF2 X84003  TBP associated factor, RNA polymerase 2 > 10  
TAF2D X95525 10q24 100-kd subunit of Pol II > 10  
TBP X54993 6q27 TATA box binding protein 6  
YES1 M15990 18p11.31 Yamaguchi sarcoma virual oncogene > 10  
Cell-cycle–related genes     
CCND1 X59798 11q13 Cyclin D1 > 10  
CCNG2 U47414 Cyclin G2 > 10 
CDC8 L16991  Deoxythymidylate kinase > 10 
CDK4 U37022 12q14 Cyclin-dependent kinase 4 > 10 
CKS1 X54941 8q21 CDC28 protein kinase 1 > 10 
MDM2 U33203 12q14.3 Homolog of mouse double minute 2 > 10  
RB1 L49209 13q14.1 Retinoblastoma, exon 4 > 10  
RBBP2 S66431 12p11 Retinoblastoma-binding protein 2 > 10 
RBBP5 X85134 1q32 Retinoblastoma-binding protein 5 > 10  
SKP2 U33761 5p13 S-phase kinase-associated protein 2 > 10  
Growth factors/receptors     
ICSBP1 M91196  Interferon consensus sequence binding protein 1 > 10 
IFNA16 M27318 9q22 Interferon alpha 16 
IFNA201 K01900 9q22 Interferon alpha-201 > 10 
IL-1R1 M27492 2q12 Interleukin-1 receptor, type 1 > 10  
IL-3 M20137 5q23 Interleukin-3 > 10 
IL-8 M28130 4q12 Interleukin-8 > 10 
IL-13 U31120 5q31 Interleukin-13 > 10 
IL-13RA1 Y10659 Chr X Interleukin-13 receptor, alpha 1 > 10  
IL-18 D49950 11q22.2 Interleukin-18 > 10 
ILF3 U10324  Interleukin enhancer binding factor 3 > 10  
LIFR X61615 5p13 Leukemia inhibitory factor receptor 4  
Signal proteins and others     
BCL2 U15173  Oncogene B-cell leukemia 2 > 10  
BLK S76617 8p23 B lymphoid tyrosine kinase 6  
FLI1 M98833 11q24.1 Friend leukemia virus integration 1 4  
H1F0 X03473 22q13.1 H1 histone family, member 0 > 10  
H2BFQ M60571 1q21 H2B histone family, member Q > 10  
NCK1 X17576 3q21 Melanoma NCK protein > 10  
NRAS X02751 1p13 Neuroblastoma RAS viral oncogene homolog > 10  
OGR1 U48405 14q31 Ovarian cancer G protein-coupled receptor 1 
PRKCB1 X06318 16p12 Protein kinase C, beta 1 
PRKM8 U35005  Protein kinase mitogen-activated 8 (JNK1) > 10  
RAB2 M28213  RAS-associated protein 2 8  
RAB9 U44103  RAS-associated protein 9 > 10 
REL X75042 2p13 V-rel avian reticuloendotheliosis viral oncogene 6  
RXRG U38480 1q22 Retinoic X receptor gamma > 10  
STAF50 X82200  Interferon inducible gene 
GeneAccessMapDescriptionChange
Transcription factors     
AF10 U13948 10p12 ALL1 fused gene from chromosome 10  
AP2α M61156 6p22.3 Transcription factor AP2α > 10 
ATF1 X55544 12q13 Activating transcription factor > 10 
C/EBPγ U20240  CCAAT/enhancer binding protein γ > 10  
DP2 L40386  E2F dimerization partner DP2 > 10  
E2F5 U15642  E2F transcription factor 5 > 10  
JUN U65928 1p32 V-jun avian sarcoma virus oncogene homolog 8  
MYBL2 X13293 20q13.1 V-myb avian myeloblastosis viral oncogene  
MYC M13929 8q24.12 Avian myelocytomatosis viral oncogene > 10 
PBX2 X59842 6p21.3 Pre-B-cell transcription factor 2 > 10  
TAF2 X84003  TBP associated factor, RNA polymerase 2 > 10  
TAF2D X95525 10q24 100-kd subunit of Pol II > 10  
TBP X54993 6q27 TATA box binding protein 6  
YES1 M15990 18p11.31 Yamaguchi sarcoma virual oncogene > 10  
Cell-cycle–related genes     
CCND1 X59798 11q13 Cyclin D1 > 10  
CCNG2 U47414 Cyclin G2 > 10 
CDC8 L16991  Deoxythymidylate kinase > 10 
CDK4 U37022 12q14 Cyclin-dependent kinase 4 > 10 
CKS1 X54941 8q21 CDC28 protein kinase 1 > 10 
MDM2 U33203 12q14.3 Homolog of mouse double minute 2 > 10  
RB1 L49209 13q14.1 Retinoblastoma, exon 4 > 10  
RBBP2 S66431 12p11 Retinoblastoma-binding protein 2 > 10 
RBBP5 X85134 1q32 Retinoblastoma-binding protein 5 > 10  
SKP2 U33761 5p13 S-phase kinase-associated protein 2 > 10  
Growth factors/receptors     
ICSBP1 M91196  Interferon consensus sequence binding protein 1 > 10 
IFNA16 M27318 9q22 Interferon alpha 16 
IFNA201 K01900 9q22 Interferon alpha-201 > 10 
IL-1R1 M27492 2q12 Interleukin-1 receptor, type 1 > 10  
IL-3 M20137 5q23 Interleukin-3 > 10 
IL-8 M28130 4q12 Interleukin-8 > 10 
IL-13 U31120 5q31 Interleukin-13 > 10 
IL-13RA1 Y10659 Chr X Interleukin-13 receptor, alpha 1 > 10  
IL-18 D49950 11q22.2 Interleukin-18 > 10 
ILF3 U10324  Interleukin enhancer binding factor 3 > 10  
LIFR X61615 5p13 Leukemia inhibitory factor receptor 4  
Signal proteins and others     
BCL2 U15173  Oncogene B-cell leukemia 2 > 10  
BLK S76617 8p23 B lymphoid tyrosine kinase 6  
FLI1 M98833 11q24.1 Friend leukemia virus integration 1 4  
H1F0 X03473 22q13.1 H1 histone family, member 0 > 10  
H2BFQ M60571 1q21 H2B histone family, member Q > 10  
NCK1 X17576 3q21 Melanoma NCK protein > 10  
NRAS X02751 1p13 Neuroblastoma RAS viral oncogene homolog > 10  
OGR1 U48405 14q31 Ovarian cancer G protein-coupled receptor 1 
PRKCB1 X06318 16p12 Protein kinase C, beta 1 
PRKM8 U35005  Protein kinase mitogen-activated 8 (JNK1) > 10  
RAB2 M28213  RAS-associated protein 2 8  
RAB9 U44103  RAS-associated protein 9 > 10 
REL X75042 2p13 V-rel avian reticuloendotheliosis viral oncogene 6  
RXRG U38480 1q22 Retinoic X receptor gamma > 10  
STAF50 X82200  Interferon inducible gene 

These genes were selected because their expression was up-regulated ≥ 3-fold in at least 4 of 5 mantle cell lymphoma samples as compared to the nonmalignant hyperplastic lymph nodes.

Access indicates GenBank accession number.

Table 4.

Genes whose expression is down-regulated in mantle cell lymphoma compared to hyperplastic lymph nodes as analyzed by oligonucleotide microarray

GeneAccessMapDescriptionChange
Apoptosis-related genes     
CASP9 U60521  Caspase 9, apoptosis-related cysteine protease > 10 
CASP10 U60519 2q33-q34 Caspase 10, apoptosis-related cysteine protease 
CHARAS1 J00277  C-Ha-ras1 p21 proto-oncogene > 10 
RAIDD U79115 12q21.33 CASP2 and RIPK1 domain-containing adaptor with death domain > 10 
CYC1 J0444 8q24.3 Cytochrome C1 > 10 
FADD X84709 11q13.3 Fas (TNFRSF6)-associated via death domain > 10  
DAXX AF006041 6p21.3 Death-associated protein 6 3  
PDCD1 U64863 2q37.3 Programmed cell death 1 > 10  
RIN1 L36463  Ras interactor 
Retinoid acid–related genes     
RARA X06614 17q12 Retinoic acid receptor, alpha 8  
RARG M38258 12q13 Retinoic acid receptor, gamma > 10  
RI58 U34605  Retinoic acid and interferon–inducible 58K protein > 10 
RORA U04898 15q21 RAR-related orphan receptor A > 10 
Kinases     
PRKAA2 U06454 1p31 Protein kinase, AMP-activated, alpha 2 
PRKG1 Y07512 10q11.2 Protein kinase, cGMP-dependent, type I 8  
PRKM7 U29725 17p11.2 Protein kinase mitogen-activated 7 (MAP kinase) > 10  
Growth factors/receptors     
IFI17 J04164  Interferon-induced protein 17 3  
IFNAR1 J03171 21q22.1 Interferon (alpha, beta, and omega) receptor 1 10 
IL-1RL2 U49065  Interleukin-1 receptor-like 2 10 
IL-6R M20566 1q21 Interleukin-6 receptor 10 
IL-9R L39064 Xq28 Interleukin-9 receptor 
IL-11RA U32324 9p13 Interleukin-11 receptor, alpha > 10  
IL-12RB2 U64198 1p31.3 Interleukin-12 receptor, beta 2 10  
IL-15RA U31628 10p15 Interleukin-15 receptor, alpha > 10 
IL-18R1 U43672 2q12 Interleukin-18 receptor 1 
TGFBR3 L07594 1p33-p32 Transforming growth factor, beta receptor III 8  
TNFRSF12 U83598 1p36.2 TNF receptor superfamily, member 12 4  
TNFRSF1A M58286 12p13.2 TNF receptor superfamily, member 1A > 10  
Cell-cycle–related genes     
CCNA1 U66838 13q12.3 Cyclin A1 
CDC34 L22005 19p13.3 Cell division cycle 34 > 10 
MAD1L1 U33822 7p22 MAD1 (mitotic arrest deficient, yeast, homolog) 3  
MAD2L1 U65410 4q27 MAD2 (mitotic arrest deficient, yeast, homolog) 
RBBP1 S57153  Retinoblastoma-binding protein 1 10 
Others     
APR D90070  Adult T-cell leukemia–derived PMA-responsive 
H1F4 M60748 6p22.2 H1 histone family, member 4 
KIR2DL4 X99479 19q13.4 Killer cell immunoglobulin-like receptor 10  
KLRC1 X54867 12p13 Killer cell lectin-like receptor subfamily C > 10 
MAGEB1 X82539 Xp21.3 Melanoma antigen, family B, 1 > 10  
PPP2R5B L42374 11q12 Protein phosphatase 2, regulatory subunit B > 10  
TAF2A D90359 Xq13.1 TATA box binding protein associated factor 10 
TAL1 M63589 1p32 T-cell acute lymphocytic leukemia 1 
XPA D14533 9q22.3 Xeroderma pigmentosum, complementation A > 10 
GeneAccessMapDescriptionChange
Apoptosis-related genes     
CASP9 U60521  Caspase 9, apoptosis-related cysteine protease > 10 
CASP10 U60519 2q33-q34 Caspase 10, apoptosis-related cysteine protease 
CHARAS1 J00277  C-Ha-ras1 p21 proto-oncogene > 10 
RAIDD U79115 12q21.33 CASP2 and RIPK1 domain-containing adaptor with death domain > 10 
CYC1 J0444 8q24.3 Cytochrome C1 > 10 
FADD X84709 11q13.3 Fas (TNFRSF6)-associated via death domain > 10  
DAXX AF006041 6p21.3 Death-associated protein 6 3  
PDCD1 U64863 2q37.3 Programmed cell death 1 > 10  
RIN1 L36463  Ras interactor 
Retinoid acid–related genes     
RARA X06614 17q12 Retinoic acid receptor, alpha 8  
RARG M38258 12q13 Retinoic acid receptor, gamma > 10  
RI58 U34605  Retinoic acid and interferon–inducible 58K protein > 10 
RORA U04898 15q21 RAR-related orphan receptor A > 10 
Kinases     
PRKAA2 U06454 1p31 Protein kinase, AMP-activated, alpha 2 
PRKG1 Y07512 10q11.2 Protein kinase, cGMP-dependent, type I 8  
PRKM7 U29725 17p11.2 Protein kinase mitogen-activated 7 (MAP kinase) > 10  
Growth factors/receptors     
IFI17 J04164  Interferon-induced protein 17 3  
IFNAR1 J03171 21q22.1 Interferon (alpha, beta, and omega) receptor 1 10 
IL-1RL2 U49065  Interleukin-1 receptor-like 2 10 
IL-6R M20566 1q21 Interleukin-6 receptor 10 
IL-9R L39064 Xq28 Interleukin-9 receptor 
IL-11RA U32324 9p13 Interleukin-11 receptor, alpha > 10  
IL-12RB2 U64198 1p31.3 Interleukin-12 receptor, beta 2 10  
IL-15RA U31628 10p15 Interleukin-15 receptor, alpha > 10 
IL-18R1 U43672 2q12 Interleukin-18 receptor 1 
TGFBR3 L07594 1p33-p32 Transforming growth factor, beta receptor III 8  
TNFRSF12 U83598 1p36.2 TNF receptor superfamily, member 12 4  
TNFRSF1A M58286 12p13.2 TNF receptor superfamily, member 1A > 10  
Cell-cycle–related genes     
CCNA1 U66838 13q12.3 Cyclin A1 
CDC34 L22005 19p13.3 Cell division cycle 34 > 10 
MAD1L1 U33822 7p22 MAD1 (mitotic arrest deficient, yeast, homolog) 3  
MAD2L1 U65410 4q27 MAD2 (mitotic arrest deficient, yeast, homolog) 
RBBP1 S57153  Retinoblastoma-binding protein 1 10 
Others     
APR D90070  Adult T-cell leukemia–derived PMA-responsive 
H1F4 M60748 6p22.2 H1 histone family, member 4 
KIR2DL4 X99479 19q13.4 Killer cell immunoglobulin-like receptor 10  
KLRC1 X54867 12p13 Killer cell lectin-like receptor subfamily C > 10 
MAGEB1 X82539 Xp21.3 Melanoma antigen, family B, 1 > 10  
PPP2R5B L42374 11q12 Protein phosphatase 2, regulatory subunit B > 10  
TAF2A D90359 Xq13.1 TATA box binding protein associated factor 10 
TAL1 M63589 1p32 T-cell acute lymphocytic leukemia 1 
XPA D14533 9q22.3 Xeroderma pigmentosum, complementation A > 10 

These genes were selected because their expression was down-regulated ≥ 3-fold in at least 4 of 5 mantle cell lymphoma samples as compared to the nonmalignant hyperplastic lymph nodes.

Access indicates GenBank accession number.

Apoptosis-related genes in MCL

We found genes that are involved in common apoptotic pathways abnormally expressed in MCL. BCL2 and cytochrome C1(CYC1), which were previously shown to be up- and down-regulated in several subtypes of low-grade lymphoma,27 were similarly altered in our MCL samples (Tables 3 and 4). Furthermore, we discovered an altered pathway in MCL that is known to be associated with apoptosis, but that has not been described to be abnormal in lymphoma cells. The cell surface receptor FAS (Apo-1, CD95) has been well characterized in apoptosis. One of the downstream interacting proteins is FAS-associated via death domain (FADD). We found that this gene was markedly down-regulated in all of the MCL samples as compared to the HL samples. In addition, several other apoptosis-related genes, such as caspase 2 (CASP2)and RIPK1 domain containing adapter with death domain(RAIDD), death-associated protein 6 (DAXX), and programmed cell death 1 (PDCD1, PD1), were substantially down-regulated in the tumor samples (Table 4).

Gene expression of MCL confirmed and extended by real-time PCR

To confirm the expression data from the oligonucleotide microarray studies and to extend the analysis to a larger set of clinical samples, we analyzed by real-time PCR the expression of a total of 11 genes in 16 samples from MCL and 12 samples from HLs. Table5 shows the results of each of the genes analyzed in each of the samples. All the assays were done in triplicate. The variance between the triplicates was less than 5%. The results were normalized to the expression of BAC in each of the samples. Figure 2 summarizes the expression data measured by oligonucleotide microarray compared to real-time PCR for the selected genes. We found with one exception (caspase 9) that for both the up-regulated and down-regulated genes, both of the methods detected similar patterns of expression.

Table 5.

Results from real-time polymerase chain reaction analysis of selected genes

SampleCASP8CASP9RAIDDDAXXDP2FADDFASICSBP1PDCD1STAF50TRAIL
12.4 10.2 11.0 6.8 12.2 9.8 8.1 10.6 16.3 8.7 8.0 
11.5 9.7 10.0 7.1 11.6 9.5 8.9 11.7 13.1 9.7 6.2 
12.4 10.1 11.0 8.5 12.7 10.6 8.6 13.1 15.1 9.9 9.7 
11.6 11.6 11.3 8.2 17.9 11.2 5.5 7.2 12.2 4.7 8.5 
10.4 9.6 11.7 7.1 12.0 10.2 10.8 12.9 14.8 9.0 8.4 
10.3 9.9 12.2 8.1 13.5 10.2 6.3 13.4 16.2 10.3 9.8 
10.9 9.9 12.1 8.7 12.9 9.7 5.5 11.7 14.9 8.3 8.2 
9.9 10.5 11.3 8.2 11.2 9.7 5.9 12.1 15.4 8.2 8.7 
9.9 10.1 12.0 9.3 12.1 10.0 6.7 11.8 12.5 9.3 7.7 
10.4 10.2 10.5 7.7 11.7 10.2 8.6 11.8 11.1 8.6 7.9 
12.3 9.1 11.9 9.0 13.5 10.5 6.0 11.6 15.5 9.3 10.0 
8.8 10.6 11.0 8.3 12.1 9.4 6.8 8.4 12.9 7.8 7.8 
10.1 9.7 10.5 7.5 13.4 8.1 6.6 12.1 13.8 7.8 6.6 
12.1 10.6 12.2 8.6 14.0 10.0 4.5 12.4 14.2 11.4 9.2 
10.2 10.0 11.1 7.4 12.9 10.0 6.1 13.2 14.5 10.4 9.5 
13.4 11.9 10.1 9.4 15.8 8.9 1.9 12.9 11.3 8.8 10.1 
Mean (SD) 11.0 (1.2) 10.2 (0.7) 11.2 (0.7) 8.1 (0.8) 13.1 (1.7) 9.9 (0.7) 5.7 (2.1) 11.7 (1.7) 14.0 (1.6) 8.9 (1.5) 8.5 (1.2) 
1245T 8.3 10.1 5.7 6.2 19.1 4.9 11.9 11.3 3.2 14.4 7.6 
1278T 17.7 13.8 7.5 8.9 19.2 4.3 8.2 14.2 7.8 10.8 8.7 
1408T 8.7 11.3 6.1 6.7 19.3 4.3 10.8 12.4 4.3 15.3 9.3 
1440T 10.4 12.3 7.3 8.9 20.0 5.8 10.3 12.0 6.5 13.3 10.4 
1935T 14.3 13.6 1.4 3.4 15.2 0.0 6.2 12.4 0.4 10.4 10.6 
1956T 13.5 9.6 9.6 6.6 17.6 8.8 12.4 15.5 10.9 12.1 9.3 
2850T 3.2 1.7 2.9 3.5 13.4 1.1 7.7 7.8 1.1 13.5 9.1 
3853T 11.8 9.5 9.8 8.3 15.6 10.4 12.0 15.4 11.1 12.6 8.9 
4010T 12.7 10.0 9.6 8.0 14.6 10.8 13.5 15.8 14.5 13.1 7.2 
4893T 11.1 9.8 7.3 7.1 18.0 7.7 13.0 14.1 7.4 14.1 7.1 
4896T 10.7 10.6 5.7 6.5 17.6 5.5 10.6 16.6 5.5 14.4 10.0 
5341T 11.5 12.0 9.5 7.3 20.0 9.2 16.0 13.8 8.1 16.1 11.0 
Mean (SD) 11.2 (3.6) 10.4 (3.1) 6.9 (2.7) 6.8 (1.8) 17.5 (2.2) 6.1 (3.4) 11.1 (2.7) 13.4 (2.4) 6.7 (4.2) 13.3 (1.7) 9.1 (1.3) 
Fold unchg unchg 18 (down) 3 (down) 21 (up) 14 (down) 42 (up) 3 (up) 157 (down) 20 (up) 2 (up) 
SampleCASP8CASP9RAIDDDAXXDP2FADDFASICSBP1PDCD1STAF50TRAIL
12.4 10.2 11.0 6.8 12.2 9.8 8.1 10.6 16.3 8.7 8.0 
11.5 9.7 10.0 7.1 11.6 9.5 8.9 11.7 13.1 9.7 6.2 
12.4 10.1 11.0 8.5 12.7 10.6 8.6 13.1 15.1 9.9 9.7 
11.6 11.6 11.3 8.2 17.9 11.2 5.5 7.2 12.2 4.7 8.5 
10.4 9.6 11.7 7.1 12.0 10.2 10.8 12.9 14.8 9.0 8.4 
10.3 9.9 12.2 8.1 13.5 10.2 6.3 13.4 16.2 10.3 9.8 
10.9 9.9 12.1 8.7 12.9 9.7 5.5 11.7 14.9 8.3 8.2 
9.9 10.5 11.3 8.2 11.2 9.7 5.9 12.1 15.4 8.2 8.7 
9.9 10.1 12.0 9.3 12.1 10.0 6.7 11.8 12.5 9.3 7.7 
10.4 10.2 10.5 7.7 11.7 10.2 8.6 11.8 11.1 8.6 7.9 
12.3 9.1 11.9 9.0 13.5 10.5 6.0 11.6 15.5 9.3 10.0 
8.8 10.6 11.0 8.3 12.1 9.4 6.8 8.4 12.9 7.8 7.8 
10.1 9.7 10.5 7.5 13.4 8.1 6.6 12.1 13.8 7.8 6.6 
12.1 10.6 12.2 8.6 14.0 10.0 4.5 12.4 14.2 11.4 9.2 
10.2 10.0 11.1 7.4 12.9 10.0 6.1 13.2 14.5 10.4 9.5 
13.4 11.9 10.1 9.4 15.8 8.9 1.9 12.9 11.3 8.8 10.1 
Mean (SD) 11.0 (1.2) 10.2 (0.7) 11.2 (0.7) 8.1 (0.8) 13.1 (1.7) 9.9 (0.7) 5.7 (2.1) 11.7 (1.7) 14.0 (1.6) 8.9 (1.5) 8.5 (1.2) 
1245T 8.3 10.1 5.7 6.2 19.1 4.9 11.9 11.3 3.2 14.4 7.6 
1278T 17.7 13.8 7.5 8.9 19.2 4.3 8.2 14.2 7.8 10.8 8.7 
1408T 8.7 11.3 6.1 6.7 19.3 4.3 10.8 12.4 4.3 15.3 9.3 
1440T 10.4 12.3 7.3 8.9 20.0 5.8 10.3 12.0 6.5 13.3 10.4 
1935T 14.3 13.6 1.4 3.4 15.2 0.0 6.2 12.4 0.4 10.4 10.6 
1956T 13.5 9.6 9.6 6.6 17.6 8.8 12.4 15.5 10.9 12.1 9.3 
2850T 3.2 1.7 2.9 3.5 13.4 1.1 7.7 7.8 1.1 13.5 9.1 
3853T 11.8 9.5 9.8 8.3 15.6 10.4 12.0 15.4 11.1 12.6 8.9 
4010T 12.7 10.0 9.6 8.0 14.6 10.8 13.5 15.8 14.5 13.1 7.2 
4893T 11.1 9.8 7.3 7.1 18.0 7.7 13.0 14.1 7.4 14.1 7.1 
4896T 10.7 10.6 5.7 6.5 17.6 5.5 10.6 16.6 5.5 14.4 10.0 
5341T 11.5 12.0 9.5 7.3 20.0 9.2 16.0 13.8 8.1 16.1 11.0 
Mean (SD) 11.2 (3.6) 10.4 (3.1) 6.9 (2.7) 6.8 (1.8) 17.5 (2.2) 6.1 (3.4) 11.1 (2.7) 13.4 (2.4) 6.7 (4.2) 13.3 (1.7) 9.1 (1.3) 
Fold unchg unchg 18 (down) 3 (down) 21 (up) 14 (down) 42 (up) 3 (up) 157 (down) 20 (up) 2 (up) 

The value of the threshold cycle after normalization to β-actin is shown for each gene. Each experiment was done in triplicate. The variance between the triplicates was < 5%.

A to Q indicates each of the MCL samples; 1245T to 5341T, each of the HL samples; Fold, fold increase or decrease in expression in mantle cell lymphoma samples compared to the control hyperplastic lymph nodes; unchg, unchanged.

Fig. 2.

Correlation between gene expression measured by microarray and real-time PCR for selected genes.

Expression data from the oligonucleotide microarray analyses (░) were confirmed for selected genes in a larger set of clinical samples from MCL by real-time PCR (▪). All the real-time PCR experiments were done in triplicate. The variance between the triplicates was less than 5%, and the results were normalized to the expression of β-actin in each of the samples.

Fig. 2.

Correlation between gene expression measured by microarray and real-time PCR for selected genes.

Expression data from the oligonucleotide microarray analyses (░) were confirmed for selected genes in a larger set of clinical samples from MCL by real-time PCR (▪). All the real-time PCR experiments were done in triplicate. The variance between the triplicates was less than 5%, and the results were normalized to the expression of β-actin in each of the samples.

Close modal

Immunohistochemistry

CCND1 and BCL2 are proteins that are important in the regulation of cell cycle and apoptosis. We found the genes coding for these proteins overexpressed in MCL by microarray analysis and confirmed our expression data for these genes as detected by immunohistochemical staining on cryostat sections from snap-frozen lymph nodes. We showed that these proteins were markedly up-regulated in the cytoplasm of the MCL cells as compared to the HL control cells (data not shown).

Microarray technology provides a powerful new tool to asses the expression of a large number of genes in a single experiment. The initial use of array technology in medical science was to characterize global gene expression profiles during physiologic changes or disease progression.19,28The aim of those studies was to accelerate the identification of diagnostic and prognostic markers and to identify novel tumor-specific markers for certain malignant diseases.12,13 20 

Recently, experience has shown that microarray analyses can provide sufficient data to detect genes or gene patterns that are associated with alterations of specific cellular pathways or signal cascades. For example, several new genes regulated downstream of p53 have been identified and are important in the p53-induced cell cycle arrest.29 The development of software specific for the analysis of gene expression data provides the tools not only to analyze single genes or gene clusters with diagnostic and prognostic importance, but also offers the possibility to correlate expression data of unknown genes with expression patterns for genes known to be involved in regulation of the biology of the cell. Knowledge of the genes involved in specific pathways facilitates the discovery of those coding for interactive proteins giving insights into their functional importance. An example of this use of microarray data is the detection of several redox and mitochondrial elements that control either resistance or sensitivity to apoptosis.22 

Here, we show that this technique can be used to analyze clinical tumor samples for alterations of specific cellular signal pathways. To date, the analysis of specific pathways was restricted to cell lines or animal models where sequential data after treatment with chemicals or radiation or induction of immunologic response were obtained to characterize new genes involved in common pathways or to describe new pathways. We analyzed clinical lymph node samples from individuals with MCL and compared their gene expression to those of highly proliferative nonmalignant lymph nodes. These control samples were used as our first screen to exclude gene expression changes resulting from cellular proliferation in general.

To ensure that the gene expression that we measured by microarray assay was not affected by degradation of the RNA extracted from the frozen lymph node samples, we used denaturating gel electrophoresis to evaluate the quality of the RNA. Furthermore, expression of well-known housekeeping genes28 including BAC andGAPDH was found to be nearly equal in all our MCL and HL samples (raw data 250 000, variance between the samples <10%). As a third quality control, CCND1 was found to be overexpressed in each of our MCL samples, but not in the HL samples, as measured by microarray analysis and immunohistochemistry.

Analysis of our microarray data identified a group of 50 genes that were significantly up-regulated in 4 of 5 MCL samples, suggesting that these genes may play an important role in the development of this type of lymphoma. These genes will be studied in greater detail in future studies. Various transcription factors (Table 3) including the E2F transcription factor 5 (E2F5), its dimerization partner DP2, and the CDC28 protein kinase 1 (CKS1) were substantially up-regulated. We confirmed the overexpression of selected genes by real-time PCR (Table5) in our set of MCL samples. To our knowledge, these genes have not been reported to be aberrantly expressed in any type of lymphomas.

Because studies have shown that the overexpression of CCND1in MCL does not correlate with the proliferative activity of these tumor cells,30 other regulatory elements might cooperate with CCND1 in deregulating cell cycle control, but little is known about which proteins these may be. We found other up-regulated genes that are involved in cell cycle control including CDK4, MDM2, and SKP2. These genes were at least 10-fold higher expressed in MCL in comparison to the control HLs. AlsoE2F5, DP2 and their targets, CMYC andCDC8, were overexpressed (Table 3) in our MCL samples. These genes are downstream of CCND1/CDK4.

An imbalance between cellular apoptosis and survival may be critical for the pathogenesis of lymphoma. Programmed cell death is essential for the generation of the complex structural and functional organization of various organs and systems in the living organism. Most of the cells undergoing programmed cell death require transcriptional activation of genes that are essential for cell death. BCL2 is overexpressed in many low-grade lymphomas27 leading to the hypothesis that high levels of this protein inhibit the CYC1 system resulting in the inhibition of the caspase 9 (CASP9)-mediated cell death in these tumors. Besides the increased expression ofBCL2 and BCLX (Table 3), we found in our MCL samples that the downstream target genes, CYC1 andCASP9, were markedly decreased (Table 4, Figure3).

Fig. 3.

Apoptotic pathways disrupted in MCL as detected by microarray analysis and confirmed by real-time PCR.

Expression of several genes acting in concert to regulate the balance between proliferation and programmed cell death are altered in MCL as compared to nonmalignant HLs. The down-regulation of FADD causes a blockade of the FAS-FADD apoptotic pathway leading to secondary changes in expression of proapoptotic genes. In addition, PDCD1 and RAIDD, which can directly induce apoptosis, are markedly down-regulated in MCL.

Fig. 3.

Apoptotic pathways disrupted in MCL as detected by microarray analysis and confirmed by real-time PCR.

Expression of several genes acting in concert to regulate the balance between proliferation and programmed cell death are altered in MCL as compared to nonmalignant HLs. The down-regulation of FADD causes a blockade of the FAS-FADD apoptotic pathway leading to secondary changes in expression of proapoptotic genes. In addition, PDCD1 and RAIDD, which can directly induce apoptosis, are markedly down-regulated in MCL.

Close modal

In addition, our analysis identified several other pathways associated with apoptosis that are substantially down-regulated in MCL. One of the key genes involved in apoptosis is FADD, which is a downstream target for the FAS pathway and which can directly induce apotosis.31,32 FAS cannot induce apoptosis in FADD-deficient embryonic fibroblasts.33 These findings indicate that the FAS-FADD system is important for the endogenous regulation of the balance between survival and death of human cells34 and that the lack of expression of FADD in MCL may tilt the balance providing these tumor cells with a growth advantage. The dissection of this apoptotic pathway was shown in human leukemia and lymphoma cell lines but so far no alterations of genes that are involved in the FAS-FADD system in primary non-Hodgkin lymphoma cells are reported.35-37 As shown in Figure 3, low expression ofFADD is associated with changes in the expression of genes in the FAS cascade including TRAIL and FAP. In addition, we found the gene coding for DAXX down-regulated in MCL; this protein enhances the FAS-mediated apoptosis38 by binding to the cytosolic domain of FAS.39 Changes in expression of these genes as shown by the microarray data were confirmed by real-time PCR.

The disruption of the gene encoding for the negative immunoregulatory receptor PDCD1 in BALB/c mice causes several autoimmune diseases such as a lupuslike disease40 and an autoimmune cardiomyopathy.41 PDCD1 was, therefore, thought to be an important factor for the prevention of these diseases. PDCD1 is highly expressed in activated human T and B lymphocytes42 as well as in pro-B cells in the bone marrow.43 The engagement of PDCD1 with its ligand PD-L1 leads to the inhibition of anti-IgM–stimulated B cells41 indicating the importance of PDCD1 as a negative immunoregulatory protein. Furthermore, PDCD1 was found to be activated in lymphatic cell lines undergoing programmed cell death,44 suggesting a role of this protein in apoptosis. Expression of this gene was low in our MCL samples as determined by microarray analysis and real-time PCR. We propose that the low expression of PDCD1 may contribute to the accumulation of abnormal B cells in MCL.

We identified a third key gene, RAIDD, which is associated with apoptosis and is down-regulated in expression in MCL (Table 4). RAIDD can function as an adaptor molecule in recruiting CASP2 to the tumor necrosis factor receptor 1 (TNFR1) signaling complex. The overexpression of RAIDD in mammalian cells induces apoptosis45 and the lack of expression of RAIDD may contribute to altered apoptosis in the MCL cells (Figure 3).

In conclusion, we show in this study that microarray data can markedly enhance the search for the molecular pathogenesis of tumors. We detected by oligonucleotide microarray and confirmed by quantitative PCR as well as by immunohistochemistry that apoptotic pathways are altered in MCL. The lack of appropriate regulation of apoptosis may be an additional step in the tumorogenesis of this B-cell malignancy.

We thank Drs Jonathan Braun and Mike Teitell for their helpful discussions and the continuous encouragement by Neil Ruzic. We thank the VASDHS gene chip core lab and the UCSD Cancer Center microarray facility for the technical assistance with the microarray assay.

Division of Hematology and Oncology, Cedars Sinai Medical Center, University of California Los Angeles, School of Medicine; Department of Pathology, University of California Los Angeles, School of Medicine; Research Service, VASDHS and Division of Hematology/Oncology and Cancer Center, University of California San Diego, School of Medicine, La Jolla; and Department of Pathology, Brigham and Women′s Hospital, Boston, MA.

Submitted January 9, 2001; accepted March 15, 2001.

Supported in part by National Institutes of Health grants, Neil Ruzic Fund, Ko-So Foundation, C. and H. Koeffler Fund and Lymphoma Foundation of America. W.K.H. is a recipient of a scholarship (HO2207/1-1) from the Deutsche Forschungsgemeinschaft. S.d.V. was supported by the UCLA STAR program as a Hematology/Oncology fellow and as an Advanced Research fellow. H.P.K. is a member of the Jonsson Comprehensive Cancer Center and holds the endowed Mark Goodson Chair of Oncology Research at Cedars Sinai Medical Center/UCLA School of Medicine.

The publication costs of this article were defrayed in part by page charge payment. Therefore, and solely to indicate this fact, this article is hereby marked “advertisement” in accordance with 18 U.S.C. section 1734.

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Author notes

Wolf-K. Hofmann, Division of Hematology and Oncology, Cedars Sinai Medical Center, UCLA School of Medicine, 8700 Beverly Blvd, Suite BM-1, Rm 109, Los Angeles, CA 90048; e-mail: w.k.hofmann@em.uni-frankfurt.de.

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