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Clinical Research Papers:

Drug metabolism and clearance system in tumor cells of patients with multiple myeloma

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Oncotarget. 2015; 6:6431-6447. https://doi.org/10.18632/oncotarget.3237

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Wafa Hassen, Alboukadel Kassambara, Thierry Reme, Surinder Sahota, Anja Seckinger, Laure Vincent, Guillaume Cartron, Jérôme Moreaux, Dirk Hose and Bernard Klein _

Abstract

Wafa Hassen1,2, Alboukadel Kassambara1,3, Thierry Reme1,3, Surinder Sahota4, Anja Seckinger5,6, Laure Vincent7, Guillaume Cartron7, Jérôme Moreaux1,3,8, Dirk Hose5,6 and Bernard Klein1,3,8

1 Institute of Human Genetics, CNRS-UPR1142, Montpellier, France

2 High Institute of Biotechnology of Monastir, University of Monastir, Tunisia

3 CHU Montpellier, Laboratory for Monitoring Innovative Therapies, Department of Biological Haematology, Montpellier, France

4 Cancer Sciences Unit, Faculty of Medicine, University of Southampton, UK

5 Medizinische Klinik V, Universitätsklinikum Heidelberg, Heidelberg, Germany

6 Nationales Centrum für Tumorerkrankungen, Heidelberg, Germany

7 CHU Montpellier, Department of Clinical Hematology, Montpellier,  France

8 University of Montpellier 1, UFR Medicine, Montpellier, France

Correspondence:

Bernard Klein, email:

Keywords: Multiple Myeloma, Drug Metabolism and Clearance, Prognosis

Received: October 21, 2014 Accepted: December 10, 2014 Published: December 26, 2014

Abstract

Resistance to chemotherapy is a major limitation of cancer treatments with several molecular mechanisms involved, in particular altered local drug metabolism and detoxification process. The role of drug metabolism and clearance system has not been satisfactorily investigated in Multiple Myeloma (MM), a malignant plasma cell cancer for which a majority of patients escapes treatment. The expression of 350 genes encoding for uptake carriers, xenobiotic receptors, phase I and II Drug Metabolizing Enzymes (DMEs) and efflux transporters was interrogated in MM cells (MMCs) of newly-diagnosed patients in relation to their event free survival. MMCs of patients with a favourable outcome have an increased expression of genes coding for xenobiotic receptors (RXRα, LXR, CAR and FXR) and accordingly of their gene targets, influx transporters and phase I/II DMEs. On the contrary, MMCs of patients with unfavourable outcome displayed a global down regulation of genes coding for xenobiotic receptors and the downstream detoxification genes but had a high expression of genes coding for ARNT and Nrf2 pathways and ABC transporters. Altogether, these data suggests ARNT and Nrf2 pathways could be involved in MM primary resistance and that targeting RXRα, PXR, LXR and FXR through agonists could open new perspectives to alleviate or reverse MM drug resistance.


Introduction

Multiple Myeloma (MM) is a malignant plasma cell disease accounting for approximately 10% of haematological malignancies, with 25,000 new patients per year in the EU and a median survival of five years [1]. The disease develops primarily in the bone marrow and is associated with end organ damages including bone lesions, renal failure and anaemia [2]. Although significant advances have been made, the current treatment regimens do not cure the majority of patients who repeatedly relapse until they succumb to the disease [3]. Resistance to chemotherapy is a major hurdle limiting the efficacy of MM treatment. Anticancer drugs resistance can be innate –primary- or acquired over time following exposure to the drug and involves diverse molecular mechanisms, in particular, altered local drug metabolism and detoxification process is a major barrier that lies between chemotherapeutic agents and their intended curative potential [4,5].

Drug metabolism and clearance (DMC) system is a defense system that imports, sensors, inactivates and excretes chemicals (xenobiotics) from a variety of sources including dietary components, environmental pollutants and drugs that can profoundly impair the structure and function of cells and tissues. After drug uptake, DMC system proceeds through enzymatic conversion of xenobiotics into more water-soluble metabolites that are better effluxed from the cell through membrane transporters and discharged into urinary and biliary systems [6,7].

Drug sensing is mediated by members of the superfamily of nuclear receptors including Pregnane X Receptor (PXR, NR1I2), Constitutive Androstane Receptor (CAR, NR1I3), Liver X Receptor (LXR, NR1H3) and the Farnesol X Receptor (FXR, NR1H4) as well as some cytosolic ligand-activated transcription factors, i.e., Hepatocyte Nuclear factor 4 (HNF4), Nuclear factor-erythroid 2p45-related factor 2 (Nrf2), Hypoxia inducing factors (HIF1α, HIF3 α), Metal transcription factors (MTF1, MTF2) and the Aryl hydrocarbon Receptor (AhR). Theses xenobiotic receptors coordinately regulate the defense against nearly all xenochemicals and often share common properties particularly broad ligand specificity and diverse often-overlapping spectra of target genes [6,8].

After xenobiotic binding, these receptors translocate to the nucleus and govern the tandem expression of genes encoding for phase I and II Drug Metabolizing Enzymes (DMEs) and transporters. Phase I DMEs consist primarily of oxidases, reductases and dehydrogenases that detoxify xenobiotics by introducing, modifying or unmasking a polar functional group into xenobiotics, respectively. Cytochrome P450s (CYP450s) are the main Phase I DMEs detoxifying a vast number of xenobiotics, including 80% of drugs used in clinic [9,10]. Phase II DMEs subsequently conjugate highly polar endogenous ligands (glutathione, sulfate, glucoronide, amino-acid, methyl and acetyl) to phase I metabolites of xenobiotics, giving rise to more hydrophilic compounds, which can be excreted out of the cell. Glutathione S-transferases (GST), UDP-glucoronosyltransferase (UGT) and sulfotransferases (SULT) constitute the major routes of conjugation [11,12]. Both parental xenobiotics and their metabolites can finally be exported out of the cell through xenobiotic transporters (Phase III), which mediate translocation of chemicals into and out of cells. Drug transporters constitute a superfamily of specialized proteins that span cell membrane bilayers and mediate translocation of chemicals into and out of cells. Depending on the source of energy, these transporters belong either to the family of ATP binding cassette (ABC) transporters that utilizes ATP hydrolysis-generated energy or to the subfamilies of Solute Carriers (SLC) driven by an exchange or cotransport of intracellular and/or extracellular ions with the substrate. ABC transporters comprise seven families with about 20 carriers involved in drug transport and mediate only unidirectional efflux. The SLC comprise 52 families with many drug carriers involved in both drug uptake (Phase 0) and efflux. The role of these xenobiotic transporters is crucial, dictating the circulating and cellular levels of drugs and subsequently their cytotoxic/therapeutic effects [13,14].

Unsurprisingly, DMC system has been demonstrated to compromise the efficacy of cancer chemotherapy and lead to treatment failure through promoting the metabolism and the elimination of chemotherapeutic agents. Much attention has been directed toward the role of ABC transporters since numerous studies have established a causative link between high expression of ABC proteins and worse clinical outcome and refractory disease [15]. Similarly, the expression of phase I / II DMEs have also been proved to modulate chemotherapeutic efficacy [5]. More recently, several studies have thus shown that the activation of PXR, AhR, Nrf2, HIF1α or PPARs play a critical role in altering the therapeutic response through reducing active drug concentration within tumor cells [4,16]. Meanwhile, emerging evidences suggest that the activation of DMC system in response to cancer drugs could also enhance chemosensitivity. As such, the drug biotransformation through phase I DMEs does not always yield pharmacologically inactive metabolites and could instead produce highly active toxic metabolites in a common process referred to as bioactivation [17]. Moreover, xenobiotic receptors functions are tissue/context-specific manner and their activation in different cancer settings have been reported to be pro-apoptotic, anti-proliferative and antitumoral [18].

Despite the relevance of DMC process for the effectiveness or failure of chemotherapy, its contribution to MM pathology and prognosis have been poorly investigated with much concern given to the study of single nucleotide polymorphism (SNP) of phase I and II enzymes, transporters and some xenobiotic receptors genes [19]. To this end, we have looked for the expression of 350 genes encoding for uptake carriers, xenobiotic receptors, phase I/II DMEs and efflux transporters in MM cells (MMCs) of patients with newly diagnosed MM, in relation with their clinical outcome (relapse and survival). This study shows that MMCs of patients with a better survival are metabolically competent and display an increased expression of genes coding for several xenobiotic receptors and their downstream target genes among influx and efflux transporters and phase I/II DMEs. On the other hand, MMCs of patients with poor outcome exhibit global down regulation of DMC genes but overexpressed genes coding for Nrf2 and ARNT pathways and several members of ABC transporter family suggesting that Nrf2 and ARNT pathways are likely to be key players of MM primary resistance.

Results

40 Drug Metabolism and Clearance genes are prognostic to EFS in MM patients

The expression of 40 genes among a consensus list of 350 genes coding for DMC system (Supplementary Table S1) was found to be prognostic for Event Free Survival (EFS) in patients of the HM cohort using a Cox analysis. Fourteen genes were associated with a good prognosis and 26 with a bad one. The 14 good prognostic genes encode for 4 xenobiotic receptors (RXRα, HNF1α, MTF1 and FXR), 4 phase I DMEs (CYP46A1, CYP1B1, NQO2, XHD), 2 phase II DMEs (SAT1, BAAT) and 4 SLC members (SLC2A1, SLC2A3, SLC22A4, SLC22A15) (Table 1). The 26 bad prognostic genes encode for 12 transporters (including 7 members of ABC family - ABCB1, ABCB2, ABCB10, ABCD1, ABCD2, ABCE1, ABCF3 - and 4 members of SLC family - SLC38A5, SLC16A1, SLCO5A1 and SLC19A2), the Aryl hydrocarbon Receptor Nuclear Translocator (ARNT), MTF2 and Keap1- the cytosolic regulator of Nrf2 (Table 2).

Table 1: Good prognostic genes for patients of the HM cohort. The value of the expression of each of the 350 DMC genes for predicting the EFS of the newly-diagnosed patients of the HM cohort was looked for using a Cox univariate analysis. Data are the beta coefficients, the hazard ratios and P values of the Cox model. Genes are ranked according to increasing P values.

Probe set

Name

Beta Coefficient

HR

P value

202449_s_at

RXRA

-0.36

0.7

0.0011

210515_at

HNF1A

-0.29

0.75

0.0082

220331_at

CYP46A1

-0.28

0.75

0.0086

203455_s_at

SAT1

-0.26

0.77

0.013

201250_s_at

SLC2A1

-0.25

0.78

0.016

202436_s_at

CYP1B1

-0.3

0.74

0.024

206913_at

BAAT

-0.23

0.79

0.025

202499_s_at

SLC2A3

-0.33

0.72

0.028

228497_at

SLC22A15

-0.24

0.79

0.033

205322_s_at

MTF1

-0.23

0.79

0.034

206340_at

NR1H4

-0.22

0.81

0.037

203814_s_at

NQO2

-0.24

0.79

0.038

205896_at

SLC22A4

-0.27

0.76

0.042

210301_at

XDH

-0.19

0.82

0.049

Table 2: Bad prognostic genes for patients of the HM cohort. The value of the expression of each of the 350 DMC genes for predicting the EFS of the newly-diagnosed patients of the HM cohort was looked for using a Cox univariate analysis. Data are the beta coefficient, the hazard ratio and P value of the Cox model. Genes are ranked according to increasing P values.

Probe set

Name

Beta Coefficient

HR

p-Value

203302_at

DCK

0.32

1.4

1e-04

202854_at

HPRT1

0.35

1.4

6e-04

223320_s_at

ABCB10

0.29

1.3

0.00074

230619_at

ARNT

0.25

1.3

0.00096

219565_at

CYP20A1

0.30

1.4

0.0014

209646_x_at

ALDH1B1

0.3

1.3

0.0016

224918_x_at

MGST1

0.26

1.3

0.0021

234973_at

SLC38A5

0.25

1.3

0.0022

205073_at

CYP2J2

0.28

1.3

0.0026

206756_at

CHST7

0.25

1.3

0.0028

202307_s_at

TAP1

0.27

1.3

0.0039

202236_s_at

SLC16A1

0.25

1.3

0.0066

201612_at

ALDH9A1

0.24

1.3

0.0074

220984_s_at

SLCO5A1

0.25

1.3

0.0081

201872_s_at

ABCE1

0.25

1.3

0.0087

202180_s_at

MVP

0.23

1.3

0.012

202850_at

ABCD3

0.24

1.3

0.013

207583_at

ABCD2

0.24

1.3

0.016

202417_at

KEAP1

0.25

1.3

0.016

202589_at

TYMS

0.19

1.2

0.017

236597_at

UGT3A1

0.21

1.2

0.022

209681_at

SLC19A2

0.2

1.2

0.026

202394_s_at

ABCF3

0.22

1.2

0.029

202275_at

G6PD

0.20

1.2

0.03

209993_at

ABCB1

0.21

1.2

0.033

203345_s_at

MTF2

0.2

1.2

0.049

The Drug Metabolism and Clearance score splits patients of two independent cohorts into three groups with different EFS and OS

The prognostic information of these 40 DMC genes was summed within a single parameter - a DMC score - as indicated in the Methods section. DMC score ranged from -10.79 to 15.97 in the 206 MMCs of the patients of the HM cohort and the higher the DMC score is, the worse the outcome is. Running an unsupervised clustering of the 40 prognostic DMC genes along the 206 patients ranked according to increasing DMC score, genes were split into 2 clusters: a cluster comprising bad prognostic genes mainly overexpressed in MMCs with the highest DMC scores (bad prognosis) and a second cluster with the good prognostic ones overexpressed in MMCs with the lowest DMC scores (good prognosis). MMCs with intermediate DMC scores variably expressed both bad and good prognosis DMC genes (Figure 1). To delineate these 3 patient groups, a k-means clustering (3 groups, 200 runs) was used splitting patients into a low DMC score group comprising 43% of the patients (-10.79 ≤ DMC score < -0.673), an intermediate DMC score group (40% of the patients, -0.673 ≤ DMC score < 4.24) and a high DMC score group (17% of the patients, 4.24 ≤ DMC score < 15.97) (Figure 1).

As illustrated in Figure 2, patients of the HM cohort from the 3 DMC groups had different EFS and Overall Survival (OS). The median EFS were 12.9, 32 and 47.6 months for the high, intermediate and low DMC score groups, respectively (P = 5.2 x 10-12) (Figure 2). The median OS was 32.9 months for the high DMC score group and not reached for both intermediate and low DMC score groups (P = 9.4 x 10-5, Figure 2).

Using the cutoff points designed with the HM cohort (- 0.673 and 4.24), patients of the independent UAMS-TT2 cohort were similarly split into high, intermediate and low DMC score groups comprising 12.5, 34% and 53.5% of patients, respectively. The median EFS of patients of the high DMC score group was 19.3 months, 3- and 3.5-fold shorter than that of the low and intermediate DMC score patients, respectively (P = 9.8 x 10-7) (Figure 3). The median EFS of the intermediate and low DMC score groups were not significantly different. Furthermore, the median OS of UAMS-TT2 patients of the high DMC score group was 45 months and not-reached for the low and intermediate DMC score groups (P = 1.1 x 10-4) (Figure 3).

Heatmap of supervised clustering of the 40 prognostic genes for EFS along the 206 patients of the HM cohort ranked according increasing DMC score.

Figure 1: Heatmap of supervised clustering of the 40 prognostic genes for EFS along the 206 patients of the HM cohort ranked according increasing DMC score. A k-means function was used to identify the -0.673 and 4.24 cutoff points to split patients into 3 groups with a low, intermediate and high DMC score.

Kaplan-Meier curves of the EFS and OS of the 3 DMC score groups of patients of the HM cohort.

Figure 2: Kaplan-Meier curves of the EFS and OS of the 3 DMC score groups of patients of the HM cohort.

Kaplan-Meier curves of the EFS and OS of the 3 DMC score groups of patients of the UAMS-TT2 cohort.

Figure 3: Kaplan-Meier curves of the EFS and OS of the 3 DMC score groups of patients of the UAMS-TT2 cohort.

Drug Metabolism and Clearance profile in MMCs of patients with bad versus good prognosis

The above analysis shows that the 40 DMC prognostic genes could split patients of 2 independent cohorts into at least two groups with a different EFS and OS. We looked for a differential expression of all 350 DMC genes between these groups. The intermediate DMC group was not considered because MMCs of these patients variably expressed both good and bad prognosis DMC genes. Using a SAM supervised analysis (2 fold change, FDR ≤ 0.05), 101 of the 350 DMC genes had an increased expression in low DMC score MMCs (good prognosis group) and only 14 in high DMC score MMCs (bad prognosis group) (Tables 3 and 4). The 101 genes whose expression is increased in the low DMC score group include genes coding for 7 xenobiotic receptors, particularly FXR (4.5-fold increase), HIF3α (4.1-fold increase), HNF4 α (4-fold increase), CAR (3.1-fold increase), MTF1 (2.7-fold increase). These 101 low DMC score group genes include 30 of the known 47 CYP genes including members of the CYP2 (CYP2B6, CYP2C9, CYP2E1 and CYP2D6) and CYP3 families (CYP3A4, CYP3A5 and CYP3A7), 19 genes coding for SLC members and 11 genes for ABC transporters (Table 3). The 14 genes whose expression is up-regulated in the high DMC score group comprise genes coding for the ARNT transcription factor, Keap1 the co-regulator of Nrf2, 3 ABC members (ABCD3, ABCE1, ABCB2/TAP1), 1 SLC member (SLC16A1) and 1 CYP450 (CYP20A1) (Table 4).

As illustrated by the supervised clustering of the expression of these 115 genes in MMCs of patients of the HM cohort ranked according to increasing DMC score (Figure 4), this data emphasizes that MMCs of the low DMC score group have higher abilities for biotransformation and detoxification of xenobiotics including drugs with regard to the high expression of a majority of xenobiotic receptors and of their downstream target genes (30% of DMC genes overexpressed) compared to MMCs of the high DMC score group (only 5% of DMC genes overexpressed). This is further evidenced by an Ingenuity Pathway Analysis which reveals an enrichment of genes coding for PXR/CAR pathways in the low DMC group and for Nrf2 pathway in the high DMC group (data not shown). In addition, the expression of PXR/CAR target genes was higher in low DMC score MMCs compared to high DMC score ones and the reverse for Nrf2 target genes (Figures 5A and 5B).

Table 3: Genes up regulated in low DMC Score group. The expression of the 350 DMC genes in MMCs of patients of the two low versus high DMC score groups (HM cohort, -10.79 ≤ DMC score < -0.673 and 4.24 ≤ DMC score ≤ 15.97) was compared using a SAM supervised analysis (2 fold change, FDR ≤ 0.05). Data are the list of the 101 genes whose expression in increased in MMCs of patients with low DMC score and their fold change in expression between low and high score MMCs.

Probe set

Name

Fold Change

207225_at

AANAT

2.24

210082_at

ABCA4

2.01

217504_at

ABCA6

2.23

219577_s_at

ABCA7

2.17

242541_at

ABCA9

4.1

1569072_s_at

ABCB5

4.87

1554911_at

ABCC11

3.82

1553410_a_at

ABCC12

2.29

239217_x_at

ABCC3

3.89

210245_at

ABCC8

2.47

208462_s_at

ABCC9

2.75

207593_at

ABCG4

2.41

234197_at

ACSM1

2.91

207820_at

ADH1A

2.22

223781_x_at

ADH4

2.87

210505_at

ADH7

2.96

227113_at

ADHFE1

2.88

210962_s_at

AKAP9

2.16

240435_at

ALDH1A2

2.75

211004_s_at

ALDH3B1

2.1

204942_s_at

ALDH3B2

2.27

205082_s_at

AOX1

2.33

206955_at

AQP7

2.23

223652_at

AS3MT

2.8

206913_at

BAAT

3.86

205627_at

CDA

2.08

220446_s_at

CHST4

2.63

221164_x_at

CHST5

2.58

224400_s_at

CHST9

4.34

205502_at

CYP17A1

2.48

203475_at

CYP19A1

2.36

205749_at

CYP1A1

3.06

202436_s_at

CYP1B1

2.68

206504_at

CYP24A1

2.5

208327_at

CYP2A13

2.04

211295_x_at

CYP2A6

2.26

207718_x_at

CYP2A7

2.15

206755_at

CYP2B6

4.08

210272_at

CYP2B7P1

2.28

208126_s_at

CYP2C18

2.09

216058_s_at

CYP2C19

2.13

216025_x_at

CYP2C9

3.75

217468_at

CYP2D6

2.3

209975_at

CYP2E1

3.5

220562_at

CYP2W1

2.67

244407_at

CYP39A1

2.43

205998_x_at

CYP3A4

2.11

211440_x_at

CYP3A43

2.24

214234_s_at

CYP3A5

2.61

205939_at

CYP3A7

2.29

220331_at

CYP46A1

3.21

211231_x_at

CYP4A11

2.27

1555497_a_at

CYP4B1

2.23

206153_at

CYP4F11

2.78

206539_s_at

CYP4F12

2.87

210452_x_at

CYP4F2

3.24

237395_at

CYP4Z1

3.2

207386_at

CYP7B1

3.22

232494_at

CYP8B1

2.21

228268_at

FMO2

3.55

206930_at

GLYAT

5.33

205752_s_at

GSTM5

2.74

222124_at

HIF3A

4.14

208429_x_at

HNF4A

4

204041_at

MAOB

4.38

205813_s_at

MAT1A

3.02

244122_at

MGST3

2.85

205322_s_at

MTF1

2.7

206797_at

NAT2

2.18

202237_at

NNMT

3.12

206410_at

NR0B2

2.59

206340_at

NR1H4

4.55

207007_at

NR1I3

3.11

206345_s_at

PON1

2.05

210367_s_at

PTGES

2.89

208131_s_at

PTGIS

2.17

205128_x_at

PTGS1

2.32

204748_at

PTGS2

3.46

217020_at

RARB

2.1

207185_at

SLC10A1

3.95

207095_at

SLC10A2

2.78

240159_at

SLC15A2

2.13

1552761_at

SLC16A11

2

204462_s_at

SLC16A2

2.59

220455_at

SLC16A8

4.77

237799_at

SLC22A12

2.1

207444_at

SLC22A13

2.64

232232_s_at

SLC22A16

2

220554_at

SLC22A7

3.52

231352_at

SLC22A8

3.6

207560_at

SLC28A1

3.06

216432_at

SLC28A2

2.3

220475_at

SLC28A3

3.15

1560149_at

SLC29A2

3.28

242773_at

SLC5A1

2.05

216603_at

SLC7A8

3.03

220135_s_at

SLC7A9

4.32

204368_at

SLCO2A1

4.13

207601_at

SULT1B1

2.01

219934_s_at

SULT1E1

2.61

210301_at

XDH

3.31

 

Table 4: Genes up regulated in High DMC Score group. The expression of the 350 DMC genes in MMCs of patients of the high versus low DMC score groups (HM cohort, -10.79 ≤ DMC score < -0.673 and 4.24 ≤ DMC score ≤ 15.97) was compared using a SAM supervised analysis (2 fold change, FDR ≤ 0.05). Data are the list of the 14 genes whose expression in increased in MMCs of patients with high DMC score and their fold change in expression between high and low score MMCs.

Probe set

Name

Fold Change

202850_at

ABCD3

2.045

201872_s_at

ABCE1

2.115

209646_x_at

ALDH1B1

2.539

230619_at

ARNT

2.017

202024_at

ASNA1

2.059

219565_at

CYP20A1

2.027

203302_at

DCK

3.461

202275_at

G6PD

2.832

202854_at

HPRT1

2.114

202417_at

KEAP1

2.196

202180_s_at

MVP

2.28

202236_s_at

SLC16A1

2.566

202307_s_at

TAP1

2.317

209605_at

TST

2.025

Heatmap of the supervised clustering of genes differentially expressed between low and high DMC score MMCs of patients of the HM cohort.

Figure 4: Heatmap of the supervised clustering of genes differentially expressed between low and high DMC score MMCs of patients of the HM cohort. Patients are ranked according to increasing DMC score.

Expression of the target genes driven byfig5b

Figure 5: Expression of the target genes driven by PXR/CAR and Nrf2 in low and high DMC score MMCs. Data are the mean Affymetrix signals interrogating the target genes driven by PXR/CAR activation (A) or by Nrf2 (B) activation in MMCs of the patients of the low or high DMC score groups designed in Figure 1. The horizontal bars indicate the mean values ± SD of the expression of all target genes in each MMC group and these mean values were compared using a student t-test.

Whole genome molecular portrait of MMCs of patients with bad versus good prognosis

In order to get a better insight of the biological pathways delineating MMCs with low and a high DMC score, we looked for the differential expression of 12684 genes (variance ≥ 100) using a SAM supervised analysis (fold change ≥ 2, FDR ≤ 0.05, 1000 permutations) in MMCs of patients with low versus high DMC score (good versus bad prognosis). 2026 genes had their expression up regulated in low DMC score MMCs and 544 in high DMC score ones. Using Ingenuity Pathway Analysis, low DMC score MMCs showed an enrichment for pathways of the DMC system including LXR, PXR, FXR, Cytochrome P450 pathways, together with an enrichment for cytokine pathways (hyper cytokinemia, hyper chemiohinema and atherosclerosis signaling pathways) with TREM1, STAT3, Rel A, CREB and ILβ as upstream regulators (Figure 6A). High DMC score MMCs displayed prominently an enrichment for DNA Replication, Damage and Repair, Mitochondria dysfunction and oxidative stress response pathways (Figure 6B). Using the C2 Kegg collection (c2.cp.kegg.v.4.0) of the Gene Set Enrichment Analysis (GSEA) software, two modules of gene sets were enriched in high DMC score MMCs, the first one includes oxidative stress, mitochondrial dysfunction, unfolded protein response and proteasome deregulation with ubiquitin mediated proteolysis (Parkinson’s disease, Oxidative Phosphorylation, Alzheimer disease, proteasome, Huntington disease) and the second module includes DNA repair, mismatch repair and base excision repair gene sets. The low DMC score MMCs showed enrichment for drug and xenobiotic metabolism, cytokine-cytokine receptor interaction, retinol and lipid metabolism and calcium signaling pathways.

Major Pathways enriched in low (A) or high (B) DMC score MMCs.fig6b

Figure 6: Major Pathways enriched in low (A) or high (B) DMC score MMCs. The Ingenuity Pathway Analysis was used to identify the pathways encoded by the whole genome genes differentially expressed between low and high DMC score MMCs.

Discussion

The current study shows that MMCs of patients with good clinical outcome, harvested prior to any treatment, overexpressed genes coding for several xenobiotic receptors (LXR, CAR, FXR and RXRA), and accordingly their downstream target genes coding for DMC actors (phase I/II DMEs, uptake and efflux transporters). On the contrary, MMCs of patients with bad outcome bear global down regulation of DMC system but highly expressed genes coding for the ARNT and Nrf2 pathways together with several members of ABC transporters suggesting a key role of these gene products in primary drug resistance of MM cells.

PXR, CAR, LXR and FXR activation may confer drug sensitivity to MMCs

The overexpression of genes coding for the main actors of the DMC system in MMCs of patients with a good outcome could appear somewhat surprising given the well established role of DMEs and transporters to promote the metabolism, elimination and detoxification of chemotherapeutic drugs leading to reduced therapeutic effectiveness and treatment failure. However, emerging reports have demonstrated that xenobiotic receptors as well as their transcriptional targets among DMEs and drug carriers could confer, in a context-dependent manner, either drug resistance or drug sensitivity.

RXRα

RXRα (RXRA), − whose gene expression in MMCs is a good prognostic marker - is the permissive combinatory partner for PXR, CAR, LXR, and FXR heterodimerization and nuclear translocation after ligand binding. Its activation has been previously associated with good prognosis in different cancers and RXRα synthetic ligands, the rexinoids, have shown promising antitumor activity in preclinical and clinical studies in different cancer types [20]. In particular, bexarotene, a synthetic rexinoid, approved by FDA was found to induce a 50% overall inhibitory response in patients with refractory or persistent cutaneous T-cell lymphoma and to improve the overall survival [21]. Several studies have demonstrated that RXRA antitumor activity is attributable to enhanced apoptosis, cell cycle regulation and increased sensitivity to several chemotherapeutic drugs through down regulation of Nrf2 antioxidant pathway [22,23].

PXR

PXR pathway is one of the major xenobiotic signalling cascades enriched in MMCs of low DMC score patients with good outcome. PXR is a major coordinator of the detoxification process; but its role in tumor cells is somehow controversial since PXR functions in a tissue-specific and/or ligand-promoter dependent manner and could play a key role in chemoresistance or chemosensitivity. The role of PXR in promoting chemoresistance is well documented in breast, endometrial, prostate, ovarian colon and colorectal [16]. However, others studies have shown that PXR could have anticancer activities, independently of its role in the DMC system, in colon, liver and breast cancers [24,25]. As such, in addition to its master role in drug metabolism regulation, PXR is thought to modulate cancer cell resistance or sensitivity through the control of several cellular processes including regulation of genes involved in cell proliferation, metastasis, pro-apoptosis, anti-apoptosis and endocrine homeostasis as well as regulation of the oxidative stress response [18,26,27].

LXR

In addition to PXR pathway, LXR pathway is also enriched in low DMC score MMCs. LXR, activated by naturally occurring oxysterols, small lipophilic molecules and xenochemicals, act as cholesterol sensors to regulate the transcription of gene products that control intracellular cholesterol homeostasis through biosynthesis, catabolism and transport. The role of LXR in cancer drugs response has not been investigated. However, recently, it have demonstrated that activation of LXR pathway induces inhibition of clonogenic MM growth, MM tumor initiating cells in vitro and in vivo [28].

SLC transporters

A possible explanation of the transcriptomic profile with high drug metabolism and detoxification abilities in MMCs of patients with good outcome is likely due to the fact that high xenobiotic receptors expression trigger upregulation of uptake transporters, the SLC members. Indeed, in those low DMC score MMCs, the expression of 19 SLC members was up regulated, suggesting that drugs might enter more efficiently into MMCs and induce cancer cell death. On the contrary, in high DMC score MMCs, the low expression of xenobiotic receptors and associated low expression of these intake transporters could lead to reduced drug internalization and chemotherapy inefficacy. In particular, low DMC score MMCs highly expressed genes coding for SLC7 family, SLC22 or SLC10, which are crucial for drug uptake [14], [7,29]. Moreover, SLC7A7 is a major influx transporter of melphalan [30,31], a main drug used to treat MM patients of the HM cohort used in this study. Previous work has shown that down-regulation of SLC7A7 reduced the Melphalan uptake by 58% and toxicity by 3.5-fold in hematopoietic tumor cells [32]. Further, Agnelli et al (2011) also reported that a high expression of SLC7A7 gene in MMCs positively correlated with a better prognosis [33].

CYP450

The high expression of 30 out of the 47 known CYP450 coding genes in low DMC score MMCs could be an additional mechanism, which explains the association of active xenobiotic/drug metabolism in MMCs to favourable patients’ outcome. Although CYP450 generally leads to increased elimination of drugs and subsequently to therapeutic failure, an increase in CYP450 can also trigger drug biotransformation, generate more cytotoxic intermediate metabolites and have therapeutic benefit. This is particularly true for some drugs used in the treatment of the patients enrolled in this study, including Cyclophosphamide and Thalidomide. Cyclophosphamide, a nitrogen mustard alkylating prodrug, requires metabolic activation and undergoes CYP2B6/CYP2C9 mediated oxidation to induce DNA damage and cell death in target cancer cells [34,35].

ABC transporters

Low DMC score MMCs highly expressed genes coding for ABC transporters but these are exclusively members of ABCA and ABCC subfamilies. Conversely, high DMC score MMCs overexpressed genes encoding for members of ABCB, ABCD, ABCDE and ABCF families. Several studies have reported the role of some ABC transporters in MM drug resistance, mainly that of ABCB1/MDR1/PgP [36-38]. However, a clinical trial with a potent and specific inhibitor to ABCB1 (Zosuquidar) did not show any benefit in progression free or overall survival suggesting additional transporters or mechanisms are involved in conferring drug resistance [39]. Our data suggest that several ABC transporters are involved in the primary drug resistance phenotype, which could justify at least in part the limited therapeutic success of monotargeted therapies and imply, in accordance with previous studies, that ABC transporter family could exhibit a high degree of functional redundancy [40,41]. Moreover, our data strongly suggest that in cancer drug resistant or sensitive phenotype, more concern should be given to the ratio of efflux (ABC transporters) versus influx transporters (SLC transporters) rather than considering efflux proteins solely.

Although MMCs of patients with bad outcome display a global down regulation of DMC genes expression, they overexpressed genes coding for ARNT or Nrf2 pathways.

ARNT

ARNT also designated as hypoxia-inducible factor HIF-1β, is a major transcription factor up regulated in high DMC score MMCs. ARNT serves as binding partner for several bHLH members and plays a key role in two distinct cellular signalling pathways – the AhR and HIF pathways - activated in response to environment stimulations and also largely involved in cancer cell biology. The HIF pathway mediates cellular adaptive responses to reduced oxygen supply. Under sufficient oxygen supply (normoxia), HIF1α is degraded after ubiquitination; under hypoxia, HIF1α accumulates, heterodimerizes with ARNT and translocates to the nucleus. The HIF1α/ARNT complex mediates the transcription of numerous target genes mediating adaptive response to low oxygen tension. HIF signalling has been shown to contribute to tumor progression by promoting invasion/metastasis, metabolic alterations and the induction of angiogenesis in numerous cancer types. HIF1α expression has been reported in about 35% of CD138+ cells isolated from MM patient’s samples [42]. In preclinical studies, the inhibition of HIF1α has been shown to enhance the sensitivity to melphalan and early down-regulation of HIF1α expression has been reported in MM cell lines sensitive to bortezomib and lenalidomide [42-44].

AhR, the second heterodimerization partner for ARNT, is a chemosensor responsive signalling cascade to a set of environmentally common immunosuppressive chemicals. After ligand binding, AhR undergoes a conformational change, forms a heterodimer with ARNT and activates the transcription of a wide range of phase I/II DMEs and drug transporters. For several decades, AhR/ARNT pathway has been studied largely because of its critical role in immunosuppression and as major regulator of xenobiotic-induced carcinogenesis [10]. Early studies have demonstrated a major role for the AhR in malignant B cell transformation including B lymphomas, leukaemia and multiple myeloma among other cancers [45]. More recently, increasing epidemiological and experimental data provided substantial support that AhR presumably activated by endogenous ligand(s) plays an important role in tumor promotion and progression [46]. As such, AhR was found to be over-expressed and constitutively active in a variety of cancers and its nuclear expression is frequently associated with bad prognosis and advanced histological grade [47,48]. In particular, many studies demonstrated elevated AhR levels and constitutive activity in a variety of cancer cell lines and B lineage malignancies including lymphomas, myelomas and T cell leukemia [45]. Microarray analysis of 1,036 human cancer cell lines revealed a significant role of AhR in myelomas and other B lineage cancer subtypes among other cancers [49]. In cancer cells, AhR is though to promote cell proliferation, cell motility and migration and oxidative stress through cross talk with ER, NFkB, p53 and Nrf2 pathways [50,51].

Using acute myeloid leukaemia cells, recent data pointed out increased antioxidants enzymes and Nrf2 transcripts and elevated intracellular glutathione concentration after ARNT up regulation [52]. Further, it have been demonstrated that the knockdown of ARNT in cancer cells reduced proliferation rate and the transformation ability and enhanced cisplatin-induced apoptosis [53].

Nrf2

The second major pathway found up regulated in the high DMC score group with the worst prognosis is Nrf2 signalling cascade. Nrf2 is at the crossroad between drug metabolism and oxidative stress responses. This was further confirmed by data from Ingenuity Pathways Analysis and GSEA analysis underlining oxidative stress as major component of high DMC score group signature.

In unstressed cells, Nrf2 is bound to Keap1, ubiquitinated and degraded by proteasome. Upon electrophilic stress, Nrf2 is released from Keap1, translocates into the nucleus and activates the transcription of genes coding for redox balancing proteins (heme-oxygenase1), phase II detoxifying genes and drug transporters [54]. Growing evidences suggest that a Nrf2 constitutive up-regulation is associated with cancer development, progression and resistance to chemotherapy [55-58]. Constitutive activation of Nrf2 is a major advantage for cancer cell for detoxification of ROS associated with cell cycle and growth. The oncogenes K-Ras, B-Raf, and Myc can stimulate Nrf2 gene transcription in cancer cells, leading to a reduction in the intracellular ROS level and the promotion of oncogenesis. Interestingly, elevated activity of Nrf2 in cancer cells has been shown to decrease their sensitivity to common chemotherapeutic agents. This is particularly true for the proteasome inhibitor Bortezomib, a major line of MM treatment. In vitro and in clinical studies showed high expression of Nrf2 associated with poor responsiveness to Bortezomib treatment [59,60]. In accordance with other reports, our data underlined a key role of oxidative stress in MM prognosis with the involvement with several signalling pathways related to redox homeostasis [61-65].

The current study shows that the genes coding for xenobiotic receptors and their downstream DMC target genes are overexpressed in MMCs of patients with good outcome and only those coding for ARNT or Nrf2 pathways in MMCs of patients with poor outcome. Above all, these data suggest that selectively targeting upstream regulators of the major PXR, FXR, LXR and Nrf2 pathways using a subset of synthetic antagonists or agonists for those xenobiotic receptors could provide a promising strategy to improve the efficacy of treatment in MM. A fine understanding of the DMC system in MM biology will help improving the use of drugs currently used in MM.

Methods

Patient samples and gene expression data

206 patients with newly-diagnosed MM were enrolled in the current study after written informed consent at the University hospitals of Heidelberg (Germany) or Montpellier (France) (HM cohort). These patients underwent frontline induction treatment with Dexamethasone and various drugs, high-dose chemotherapy with 200 mg/m2 Melphalan and autologous stem cell transplantation according or in analogy to the GMMG-HD3-trial [66]. At relapse, various treatments regimens were applied including Bortezomib and immunomodulatory drugs (Thalidomide, Lenalidomide, Pomalidomide).

Bone marrow was harvested at diagnosis, MMCs were purified, gene expression profiling (GEP) assayed using Affymetrix U133 2.0 plus microarrays, and data normalized using the MAS5 Affymetrix algorithm with a scaling factor of 500 as described previously [67]. The .CEL and MAS5 files are deposited in the Array Express public database (http://www.ebi.ac.uk/arrayexpress/) under accession number E-MTAB-362.

Publicly available MAS5 normalized GEP data (GEO, http://www.ncbi.nlm.nih.gov/geo/, accession number GSE2658) from purified MMCs of a cohort of 345 patients were also used. These patients were treated with total therapy 2 protocol (UAMS-TT2 cohort) at the University of Arkansas for Medical Sciences (UAMS, Little Rock, USA) [68].

Identification of prognostic Drug Metabolism and Clearance genes (DMC genes) and DMC score building

Based on the review of literature and databases [69], a consensus list of 350 human genes coding for xenobiotic receptors and co-regulators (29 genes), phase I DMEs (107 genes), phase II DMEs (90 genes) and uptake and efflux transporters (124 genes) was selected. The corresponding Affymetrix probe sets and gene ontology description are listed in the Supplemental Table S1. When several probe sets were available for a same gene, the probe set with the highest variance was chosen.

Genes whose expression in MMCs could predict for patients’ Event Free Survival (EFS) were identified using a univariate Cox Model. A prognostic Drug Metabolism and Clearance score (termed DMC score) was built by computing the mean of the standardized Affymetrix signals of the prognostic genes weighted by their Cox Beta Coefficient. Then patients were ranked according to increased DMC score and split into 3 groups according to their expression of the prognostic DMC genes in MMCs using the k-means function.

Data Analysis

The analyses were done with R (http://www.r-project.org/) and Bioconductor (http://www.bioconductor.org/) softwares. Survival curves were plotted using the Kaplan-Meier method. Gene expression data were visualized using Cluster (v2.11) and Tree View (v1.6, Eisen laboratory, Berkeley, USA). Ingenuity Pathway Analysis (IPA) software was carried out using a false discovery rate (FDR < 0.05) with at least 5 genes for one pathway. Gene set enrichment analysis was performed using the GSEA Software (http://www.broadinstitute.org/gsea/index.jsp, Broad Institute, Cambridge, USA), and the collections for canonical pathways (c2.cp.kegg) or transcription factor targets (C3.tft).

Acknowlgements

This work was supported by grants from the French INCA (Institut National du Cancer) Institute (2012-109/087437), the European Community (FP7-OVERMYR), FEDER (141786 & 42667) and the University Hospital of Montpellier (CEP-IRB). We thank Mrs Pantesco from the Microarray Core Facility of IRB (http://irb.montp.inserm.fr/en/index.php?page=Plateau&IdEquipe=6).

Conflict of Interest

The authors declare no conflict of interest.

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