Literature DB >> 33837301

The circulating soluble form of the CD40 costimulatory immune checkpoint receptor and liver metastasis risk in rectal cancer.

Annette Torgunrud1, Hanna Abrahamsson2,3, Sebastian Meltzer4,5, Arne Mide Solbakken6, Kjersti Flatmark1,3,6, Svein Dueland7, Kine Mari Bakke2,3, Paula Anna Bousquet2, Anne Negård3,8, Christin Johansen2, Lars Gustav Lyckander9, Finn Ole Larsen10, Jakob Vasehus Schou10, Kathrine Røe Redalen11, Anne Hansen Ree2,3.   

Abstract

BACKGROUND: In colorectal cancer, the inflamed tumour microenvironment with its angiogenic activities is immune- tolerant and incites progression to liver metastasis. We hypothesised that angiogenic and inflammatory factors in serum samples from patients with non-metastatic rectal cancer could inform on liver metastasis risk.
METHODS: We measured 84 angiogenic and inflammatory markers in serum sampled at the time of diagnosis within the population-based cohort of 122 stage I-III patients. In a stepwise manner, the statistically strongest proteins associated with time to development of liver metastasis were analysed in the corresponding serum samples from 273 stage II-III rectal cancer patients in three independent cohorts.
RESULTS: We identified the soluble form of the costimulatory immune checkpoint receptor cluster of differentiation molecule 40 (sCD40) as a marker of liver metastasis risk across all patient cohorts-the higher the sCD40 level, the shorter time to liver metastasis. In patients receiving neoadjuvant treatment, the sCD40 value remained an independent variable associated with progression to liver metastasis along with the local treatment response. Of note, serum sCD40 was not associated with progression to lung metastasis.
CONCLUSIONS: Circulating sCD40 is a marker of liver metastasis risk in rectal cancer and may be developed for use in clinical practice.
© 2021. The Author(s).

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Year:  2021        PMID: 33837301      PMCID: PMC8292313          DOI: 10.1038/s41416-021-01377-y

Source DB:  PubMed          Journal:  Br J Cancer        ISSN: 0007-0920            Impact factor:   7.640


Background

Colorectal cancer (CRC) is a common malignancy with a sharp rise in incidence from the age of 60.[1] Despite improved understanding of the biological complexity[2,3] and increasingly individualised treatments based on biological characteristics,[4,5] progression to liver metastasis remains an important cause of severe morbidity and dismal survival. The consensus molecular subtype classification of primary CRC tumours has provided a theoretical framework for the role of the immune system, which in a likely simplified manner, defines subtype-1 tumours as highly immunogenic and the subtype-4 counterpart with a chronically inflamed tumour microenvironment (TME) as immune-tolerant.[2] In clinical practice, detrimental systemic inflammation can be regarded as a driver event for poor outcome of advanced CRC.[6] Tumour-driven inflammation locally induces proangiogenic factors, which subsequently facilitate the migration of inflammatory cells into the TME[7,8] and support suppressive cellular and signalling immune responses,[9] thereby creating a vicious cycle favourable for tumour progression.[10] In the liver, hepatocytes in concert with the inflammatory response incite the formation of pro-metastatic niches, paving the way for metastatic colonisation.[11] Interestingly, perioperative chemotherapy containing the angiogenic inhibitor bevacizumab resulted in significantly better tumour response and survival outcomes for patients with resectable colorectal liver metastases with an angiogenic growth pattern within the liver tissue compared to cases devoid of this histologic feature.[12] Recognising the functional network of interrelated angiogenic and immune-modulatory factors as relevant for liver tumours in particular, recent studies have explored the therapeutic efficacy of combining angiogenic inhibition with immune checkpoint blockade (ICB).[9,13] In the clinical context, multiplex protein analysis of blood is a rational approach to search for mechanistically involved factors that may be candidates for new therapies. Conceptually, simultaneous assessment of a high number of circulating proteins can unveil the systemic manifestations of the TME biology as well as the constitutional and acquired physiology of the patient for this purpose.[14] Rectal cancer comprises about a third of all CRC cases. When rectal cancer presents with extensive growth or lymph node involvement within the pelvic cavity, neoadjuvant treatment is given to reduce the risk of local recurrence after the pelvic surgery, but metastatic progression, especially to the liver, remains a common failure. Low primary rectal tumours have the propensity to metastasise to the lungs as the primary site,[15] but patients with single-organ lung metastases have significantly better prognosis compared to those with other metastatic sites.[16] Hence, to explore our hypothesis that angiogenic and inflammatory activity originating in the primary tumour and manifested systemically may impact on the risk of developing liver metastases in particular and potentially be targeted within an intensified multimodal therapy course, we measured 84 serum proteins (Supplementary Table S1) in specimens sampled at the time of diagnosis in a cohort of stage I–III patients. This population-based Investigation Cohort (IC) comprised 122 T2–T4 rectal cancer cases treated according to standard clinical guidelines.[17] Circulating proteins that were found associated with liver metastasis risk were further validated in three independent cohorts of stage II–III patients, Validation Cohort (VC) 1–3, each with unique characteristics that together with the IC represented the full biological range of this heterogeneous disease. The VC1 was used because 35.4% of the 79 cases had organ-invasive (T4) disease that is at particularly high risk of poor outcome.[18] The VC2 was chosen because 49.6% of the 135 cases had low primary tumour (5 cm or less from the anal verge) with the specific risk of developing lung metastases[19] and therefore might challenge our hypothesis. The VC3 was analysed because its 59 cases resembled those of VC1.

Methods

Patients and procedures

Three-hundred and ninety-five patients with confirmed non-metastatic rectal adenocarcinoma from four prospective studies, approved by the pertinent Ethics Committees and Institutional Review Boards, were included in this post hoc analysis. All patients had given written informed consent for study participation with ancillary investigations. The patient cohorts with demographic data have been detailed in full previously.[19] Briefly, the IC (NCT01816607) consisted of 122 stage I–III patients with a mean age of 64 years, enrolled at Akershus University Hospital (Lørenskog, Norway) between October 28th, 2013 and December 17th, 2017, and was censored on January 2nd, 2020. The study was designed as a prospective biomarker study for patients enrolled according to unselected recruitment. The VC1 (NCT00278694) consisted of 79 stage II–III patients with a mean age of 57 years, enrolled at Oslo University Hospital (Oslo, Norway) and Akershus University Hospital between October 5th, 2005 and March 3rd, 2010, and was censored on February 22nd, 2017. The study patients received neoadjuvant short-course oxaliplatin-based chemotherapy followed by long-course chemoradiotherapy before the radical surgery. The VC2 (NCT02113384) consisted of 135 stage II–III patients with a mean age of 63 years, enrolled at Oslo University Hospital between September 13th, 2012 and March 31st, 2016, and was censored on August 24th, 2018. This study was designed as a prospective biomarker study for patients with locally advanced tumours who were eligible for standard long-course chemoradiotherapy before the surgery. The VC3 (NCT00964457) consisted of 59 stage II–III RC patients with a mean age of 66 years, enrolled at Herlev and Gentofte Hospital (Herlev, Denmark) between July 6th, 2009 and October 27th, 2014, and was censored on October 1st, 2016. The study patients received a similar intensified neoadjuvant treatment regimen to that administered to the VC1 patients. All patients in the present study had standard diagnostic workup and evaluation of response to neoadjuvant therapy (ypTN staging) in the surgical specimen, including scoring of histologic tumour regression grade (TRG) (Supplementary materials and patient procedures). Each cohort was scored according to the preferred TRG protocol[20-22] at the study site; to enable comparison across the cohorts, all TRG results were converted to the same scale, where TRG1 comprised both complete and near-complete tumour regression, moderate tumour regression was set to TRG2 and minimal-to-no tumour regression received the score of TRG3, in consultation with an experienced specialist in pathology. Follow-up consisted of clinical examination and CT scanning at three months following surgery, then every six months for two years and finally every year until five years. The various treatment regimens and clinical and pathological features of the patients in the different cohorts are summarised in Supplementary Table S2. At the last date of censoring, the median follow-up time for all cohorts was 34 months [minimum (min) 0, maximum (max) 60]. At this time, 46 patients had developed liver metastasis and 38 patients had metastasis to the lungs. The collected data were quality-controlled by the first author before the present analyses.

Analysis of circulating proteins

Serum was collected at the time of study enrolment before any treatment and stored at –80 °C until analysis. In the IC, VC1 and VC3 specimens, the simultaneous analysis of 84 proteins related to angiogenesis and inflammation was undertaken with the required number of customised Luminex® Multiplex Assays (R&D Systems, Minneapolis, MN, USA). In VC2, the soluble cluster of differentiation molecule 40 (sCD40) was measured by single-parameter immunoassays (R&D Systems, product number DCCD40). All analytes were measured in duplicate in both assays.

Statistical considerations

Analyses were performed using the IBM SPSS Statistics for Mac version 26, GraphPad Prism version 8.4.2 or R version 4.0.0. The 84 serum proteins were analysed in a stepwise process. First, we used the Significance Analysis for Microarrays (SAM) software version 5.0 in the R workspace, which handles any missing data by imputation using the K-nearest-neighbour method,[23] to select the most significant proteins in the IC. Herein, differences in protein levels according to the time to liver metastasis detection were identified by a set of Cox regression analyses, where each protein received a score based on its difference relative to the standard deviation of repeat measurements.[23] Next, we identified the statistically strongest proteins associated with this specific outcome for the IC, VC1, VC2 and VC3 cohorts progressively in univariable Cox proportional hazard models in SPSS. Finally, the top serum protein, sCD40, was analysed against established prognostic markers in a multivariable Cox proportional hazard model. The results are presented as hazard ratio (HR) with a 95% confidence interval (95% CI). The Kruskal–Wallis test or Mann–Whitney U test was used to determine differences between groups, and Dunn’s pairwise comparison was used as post hoc test for multiple comparisons. Correlations were calculated by the Spearman’s rho test and P values were corrected using the Holm–Šidák method. Survival was calculated in each cohort separately from the date of study enrolment to the date of detected metastasis in the liver, lungs or other sites, death from any cause or end of follow-up at 5 years, whichever occurred first. Crude survival differences were assessed by the log-rank test and visualised by the Nelson–Aalen cumulative hazard method. All tests were two-sided and P values of less than 0.05 were considered statistically significant.

Results

Angiogenesis and inflammation serum proteins and liver metastasis

In the IC, serum levels of ANGPT2, sCD40, C–X–C motif chemokine ligand 2 (CXCL2), tumour necrosis factor superfamily member 10B (TNFRSF10B), fms-related receptor tyrosine 3 ligand (FLT3LG) and vascular endothelial growth factor A (VEGFA) showed strong positive association with the time to detection of liver metastasis (Table 1, factors ranged by the relative difference in protein level according to the outcome, D).[23] None of the 84 cytokines was associated with the time to detection of metastasis in lungs or other sites in the SAM survival analysis (not shown). As further shown in Table 1, the false discovery rate (Q) was 0 for CXCL2, ANGPT2, sCD40 and TNFRSF10B but 7.73 (still within the accepted limit of 10)[23] for FLT3LG and VEGFA, indicating that the results were likely not random. However, only CXCL2 and sCD40 remained significant in the SPSS univariable Cox regression analysis with regard to higher levels associated with increased risk of progression to liver metastasis. Furthermore, only sCD40 upheld the association with the time to liver metastasis detection in VC1, leaving sCD40 as the only remaining candidate for analysis in VC2. Finally, sCD40 was validated as a potent marker of liver metastasis risk in VC3. When comparing sCD40 with prognostic markers in clinical use (circulating carcinoembryonic antigen at the time of diagnosis and neoadjuvant treatment response parameters ypT and TRG of the surgical specimen), sCD40 and TRG remained independent variables associated with progression to liver metastasis (Table 2).
Table 1

Circulating proteins and the development of liver metastasis—the separate cohorts.

SAM analysisUnivariable Cox regression analysis
DQN (%)HR (95% CI)aP
Investigation cohortb
 CXCL22.140121 (99.2)1.001 (1.000–1.002)0.011
 ANGPT21.550121 (99.2)1.000 (1.000–1.000)0.833
 sCD401.510121 (99.2)1.004 (1.001–1.007)0.007
 TNFRSF10B1.350121 (99.2)1.000 (0.998–1.002)0.904
 FLT3LG0.957.73116 (95.1)0.996 (0.982–1.011)0.618
 VEGFA0.887.73101 (82.8)1.000 (1.000–1.000)0.849
Validation cohort 1
 CXCL279 (100)1.001 (0.999–1.002)0.249
 sCD4079 (100)1.003 (1.000–1.006)0.040
Validation cohort 2c
 sCD40129 (95.6)1.001 (1.000–1.002)0.029
Validation cohort 3d
 sCD4055 (93.2)1.003 (1.000–1.006)0.044

ANGPT2 angiopoietin-2, CI confidence interval, CXCL2 C–X-C motif chemokine ligand 2, D likelihood score, FLT3LG fms-related receptor tyrosine kinase 3 ligand, HR hazard ratio, Q false discovery rate, SAM Significance Analysis for Microarrays, sCD40 soluble cluster of differentiation molecule 40, TNFRSF10B tumour necrosis factor superfamily member 10B, VEGFA vascular endothelial growth factor A.

aHR above 1 indicates enhanced probability for the event. Patients were omitted from the analyses because they developed lung metastasis before the first occurrence of liver metastasis: bone cand additional three patients without metastatic disease who were lost to follow-up.

dAdditional two patients who died without metastatic disease.

Table 2

Prognostic factors and the development of liver metastasis—all cohorts.

Univariable Cox regression analysisMultivariable Cox regression analysis
N (%)aHR (95%CI)bPN (%)aHR (95%CI)bP
sCD40389 (98)1.002 (1.001–1.002)<0.001233 (59)1.001 (1.000–1.002)0.006
CEA326 (83)0.999 (0.987–1.011)0.892233 (59)0.988 (0.966–1.010)0.280
TRG286 (72)1.844 (1.246–2.729)0.002233 (59)1.781 (1.028–3.084)0.039
ypT286 (72)1.838 (1.270–2.661)0.001233 (59)1.522 (0.966–2.399)0.070

CEA carcinoembryonic antigen, CI confidence interval, HR hazard ratio, sCD40 soluble cluster of differentiation molecule 40, TRG tumour regression grade, ypT histologic tumour stage following neoadjuvant treatment.

aPatients who developed lung metastasis (six cases) before the first occurrence of liver metastasis were omitted from the analysis.

bHR above 1 indicates enhanced probability for the event.

Circulating proteins and the development of liver metastasis—the separate cohorts. ANGPT2 angiopoietin-2, CI confidence interval, CXCL2 C–X-C motif chemokine ligand 2, D likelihood score, FLT3LG fms-related receptor tyrosine kinase 3 ligand, HR hazard ratio, Q false discovery rate, SAM Significance Analysis for Microarrays, sCD40 soluble cluster of differentiation molecule 40, TNFRSF10B tumour necrosis factor superfamily member 10B, VEGFA vascular endothelial growth factor A. aHR above 1 indicates enhanced probability for the event. Patients were omitted from the analyses because they developed lung metastasis before the first occurrence of liver metastasis: bone cand additional three patients without metastatic disease who were lost to follow-up. dAdditional two patients who died without metastatic disease. Prognostic factors and the development of liver metastasis—all cohorts. CEA carcinoembryonic antigen, CI confidence interval, HR hazard ratio, sCD40 soluble cluster of differentiation molecule 40, TRG tumour regression grade, ypT histologic tumour stage following neoadjuvant treatment. aPatients who developed lung metastasis (six cases) before the first occurrence of liver metastasis were omitted from the analysis. bHR above 1 indicates enhanced probability for the event. The sCD40 levels as measured (in pg/ml, Fig. 1) with the multiplex assay batches displayed different levels across cohorts, with median values of 300.6 (min 88.10, max 1168) in IC, 291.9 (min 184.0, max 920.6) in VC1 and 372.2 (min 242.0, max 982.5) in VC3. The single-parameter analysis of VC2 resulted in a median sCD40 value of 504.9 (min 220.7, max 2493), which was significantly different (P < 0.001, by Kruskal–Wallis test) from the multi-parameter assay measures. When pooling all patients, those with serum sCD40 above the global median value of 371.3 had shorter time to development of liver metastasis (log-rank, P < 0.001, Fig. 2) with HR of 2.96 (95% CI, 1.57–5.56), P = 0.001. Serum sCD40 was not associated with progression to lung metastasis (Supplementary Fig. S1; HR 0.94 (95% CI, 0.49–1.82), P = 0.856). For distant metastasis-free survival, irrespective of metastatic organ, HR was 1.92 (95% CI, 1.31–2.83), P = 0.001 for the entire cohort. For overall survival, HR was 2.57 (95% CI, 1.70–3.89), P < 0.001.
Fig. 1

sCD40 serum leves in the different cohorts.

Patients’ serum levels of the soluble cluster of differentiation molecule 40 (sCD40, open circles) in the Investigation Cohort (IC) and Validation Cohorts (VC1–3); grey line, the cohort median value.

Fig. 2

High or low sCD40 and risk of liver metastasis development.

Cumulative percentages of cases with liver progression among all patients grouped with higher or lower than the median serum value of the soluble cluster of differentiation molecule 40 (sCD40).

sCD40 serum leves in the different cohorts.

Patients’ serum levels of the soluble cluster of differentiation molecule 40 (sCD40, open circles) in the Investigation Cohort (IC) and Validation Cohorts (VC1–3); grey line, the cohort median value.

High or low sCD40 and risk of liver metastasis development.

Cumulative percentages of cases with liver progression among all patients grouped with higher or lower than the median serum value of the soluble cluster of differentiation molecule 40 (sCD40). In support of circulating sCD40 representing interrelated angiogenic and inflammatory responses in the patients (Table 3), we found weak correlations between sCD40 values and serum levels of other proteins identified by the SAM survival analysis (TNFRSF10B and FLT3LG), as well as the pro-inflammatory cytokine interleukin-6 (IL-6) that was also measured on the protein assay. Of note, a relatively strong correlation (rho of 0.501) was observed between increasing erythrocyte sedimentation rate and higher sCD40 value, altogether indicating an association with detrimental inflammatory activity.[24] Declining haemoglobin and albumin in the circulation are markers of increasing severity of a malignant condition;[25] we found an inverse but weak correlation between the levels of sCD40 and each of these factors. As the formation of liver pro-metastatic niches is dependent on functional hepatocytes,[11] the sCD40 value showed weak correlation with circulating alanine aminotransferase as a marker of inflammatory damage of hepatocytes.[26]
Table 3

Correlations between the soluble cluster of differentiation molecule 40 and other circulating factors—all cohorts.

N (%)Spearman’s rhoPPa
CXCL2260 (66)0.0420.5010.872
ANGPT2395 (100)0.0830.1000.403
TNFRSF10B201 (51)0.359<0.001<0.001
FLT3LG245 (62)0.345<0.001<0.001
VEGFA180 (46)–0.0470.5330.872
IL-6164 (42)0.296<0.001<0.001
TNF-α177 (45)0.1250.0980.403
IFN-γ176 (45)–0.0520.4960.872
Haemoglobin334 (85)–0.219<0.001<0.001
Thrombocytes316 (80)0.0820.1470.493
Neutrophils300 (76)0.0930.1070.493
Lymphocytes298 (75)–0.0560.3330.568
Monocytes297 (75)0.1860.0010.013
C-reactive protein301 (76)0.1850.0010.013
Albumin315 (80)–0.1870.0010.013
Carcinoembryonic antigen333 (84)0.1630.0030.027
Erythrocyte sedimentation rate120 (30)0.501<0.001<0.001
Creatinine180 (46)0.0770.3020.568
Aspartate aminotransferase214 (54)–0.1390.0420.291
Alanine aminotransferase322 (82)–0.235<0.001<0.001
Lactate dehydrogenase283 (72)0.1930.0010.013
Alkaline phosphatase319 (81)0.0650.2440.568
γ-glutamyl transferase296 (75)0.1030.0780.434
Bilirubin318 (81)–0.0900.1090.493

ANGPT2 angiopoietin-2, CXCL2 C–X-C motif chemokine ligand 2, FLT3LG fms-related receptor tyrosine kinase 3 ligand, IFN-γ interferon γ, IL-6 interleukin-6, TNF-α tumour necrosis factor α, TNFRSF10B TNF superfamily member 10B, VEGFA vascular endothelial growth factor A.

aCorrected for multiple comparisons.

Correlations between the soluble cluster of differentiation molecule 40 and other circulating factors—all cohorts. ANGPT2 angiopoietin-2, CXCL2 C–X-C motif chemokine ligand 2, FLT3LG fms-related receptor tyrosine kinase 3 ligand, IFN-γ interferon γ, IL-6 interleukin-6, TNF-α tumour necrosis factor α, TNFRSF10B TNF superfamily member 10B, VEGFA vascular endothelial growth factor A. aCorrected for multiple comparisons.

Circulating sCD40, patients and the primary tumour

As summarised in Table 4, the serum sCD40 value was weakly correlated with the patient’s age but unrelated to female or male sex. Patients with stage II (T3–4N0) disease had significantly higher sCD40 levels than stage I and III patients, reflecting the highest sCD40 levels among T4 cases and lack of correlation with positive N stage. Post hoc analysis (Dunn’s pairwise comparison) confirmed the significant differences in sCD40 among disease stages, again with the highest values for stage II, as well as the significantly increasing sCD40 levels for more advanced T stages. The significantly lower sCD40 levels in patients who obtained TRG1 in the surgical specimen after neoadjuvant treatment, confirmed in the post hoc analysis with no difference between TRG2 and TRG3 cases, reflect the strong but independent association to the development of liver metastasis for sCD40 and TRG1, which was also apparent in the multivariable Cox regression analysis (Table 2).
Table 4

Associations between the circulating soluble cluster of differentiation molecule 40 and clinical parameters—all cohorts.

N (%)Median (min, max)Spearman’s rhoPa
Age (years)395 (100)64 (30, 93)0.237<0.001
Sex
  Female153 (39)371.0 (88.1, 1730)
  Male242 (61)372.5 (120.1, 2493)0.905
Stage
  I30 (8)283.1 (120.1, 624.5)
  II106 (27)448.8 (88.10, 2493)
  III246 (62)364.6 (151.8, 1730)<0.001
  Xb13 (3)393.7 (148.0, 804.0)
T
  237 (9)286.7 (120.1, 624.5)
  3185 (47)362.3 (151.8, 2493)
  4172 (44)420.7 (88.10, 1353)<0.001
  Xb1 (0)148.0
N
 0136 (34)412.8 (88.10, 2493)
  198 (25)363.5 (198.9, 1730)
  2148 (37)364.7 (151.8, 1017)0.194
  Xb13 (3)393.7 (148.0, 804.0)
ypT
  049 (17)379.3 (88.10, 1122)
  119 (7)301.6 (196.5, 616.1)
  252 (18)383.8 (225.1, 852.6)
  3127 (44)365.0 (139.6, 2493)
  439 (14)385.4 (224.4, 920.6)0.058
ypN
  0200 (70)375.1 (88.10, 2493)
  161 (21)352.9 (139.6, 1168)
  225 (9)351.4 (151.8, 814.5)0.470
pCR (ypT0N0)
  Yes46 (16)375.2 (88.10, 1122)
  No240 (84)370.3 (139.6, 2493)0.830
TRG
  1147 (51)351.9 (88.10, 1122)
  268 (24)430.1 (160.7, 2493)
  371 (25)385.4 (139.6, 1093)0.001

max maximum, min minimum, pCR pathological complete response, TRG tumour regression grade, ypT histologic staging following neoadjuvant treatment.

aBy Spearman’s rho correlation (continuous variable) and Kruskal–Wallis test or Mann–Whitney U test, as appropriate (categorical variables).

bUnclassified cases are detailed in Supplementary materials and patient procedures.

Associations between the circulating soluble cluster of differentiation molecule 40 and clinical parameters—all cohorts. max maximum, min minimum, pCR pathological complete response, TRG tumour regression grade, ypT histologic staging following neoadjuvant treatment. aBy Spearman’s rho correlation (continuous variable) and Kruskal–Wallis test or Mann–Whitney U test, as appropriate (categorical variables). bUnclassified cases are detailed in Supplementary materials and patient procedures.

Discussion

We measured 84 circulating proteins associated with angiogenesis and inflammation in pre-treatment serum specimens sampled within a population-based study cohort of stage I–III rectal cancer patients and identified the soluble form of the CD40 costimulatory immune checkpoint receptor[27] being a strong prognostic marker of the time to development of liver metastasis. The prognostic value was validated in three independent study cohorts of stage II–III rectal cancer patients characterised by a high percentage of cases with organ-invasive or low primary tumour, altogether representing the full biological range of this heterogeneous disease. Patients receiving neoadjuvant treatment with complete or near-complete treatment response of the surgical specimen had lower pre-treatment serum levels of sCD40, but the sCD40 value remained an independent variable associated with progression to liver metastasis along with the histopathological TRG1. Of note, the level of serum sCD40 was not associated with progression to lung metastasis. These observations may reflect the specific depletion of tumour-directed immune cells within the liver microenvironment.[28] We hypothesised that the development of liver metastases is contingent on angiogenic and immune-modulatory activity driven by the progressing primary tumour and detectable in the circulation. We found that a high serum sCD40 level correlated with high erythrocyte sedimentation rate and decreased haemoglobin and serum albumin, suggesting a role of sCD40 in the interplay between systemic inflammation and an adverse disease course.[24] The histopathological tumour response to neoadjuvant therapy is a strong determinant of long-term survival,[29,30] herein the progression to liver metastasis.[19] Since circulating sCD40, in contrast to the TRG parameter as the local response score, was available before any treatment started and also pertained to patients proceeding directly to pelvic surgery, it might be an ideal candidate for risk stratification and response prediction in rectal cancer, for instance in selecting patients for intensified neoadjuvant therapy[31] or the addition of an immune-modulatory agent within the multimodal therapy course. As a member of the tumour necrosis factor receptor superfamily, CD40 is a key regulator of adaptive immune responses.[32] In its membrane-bound state (mCD40), it is found on the surface of several cell types, including endothelial cells,[33] antigen-presenting dendritic cells[34] and B cells;[35] however, its expression shows low tissue specificity and has not been specifically detected in colon or rectum (www.proteinatlas.org).[36] In advanced cancer, blockade of coinhibitory immune checkpoint proteins revokes evasion of T-cell cytotoxicity,[37-39] a strategy adopted with great success in several cancer entities, including a small subgroup of highly immunogenic CRC.[40-42] Most malignancies, however, are unresponsive to ICB,[43] including the majority of CRC cases.[44] Agonists of costimulatory immune checkpoint receptors have been advocated an alternative strategy to invoke antitumour immune activity, with antibodies targeting several proteins under development.[27] In experimental models, agonistic CD40 antibodies have been explored in combination with anti-angiogenic agents[45] or ICB and radiation.[46] In an inherently immune-tolerant pancreatic cancer model, sequential radiotherapy, mCD40 activation and ICB led to an intratumoural shift of the T-cell populations from tumour-promoting to tumour-suppressing phenotypes, resulting in tumour eradication and long-term immunity.[46] Another recent pancreatic cancer experiment supported these findings, demonstrating that restoration of functional dendritic cells in the TME by combining treatment with FLT3LG and agonistic mCD40 antibodies induced antitumour immunity and enhanced responsiveness to radiotherapy.[47] However, the soluble form of CD40 comprises the extracellular domain of mCD40, generated via proteolytic cleavage from the surface of CD40-expressing cells.[48,49] Thus, sCD40 can act as a natural antagonist of the mCD40–CD40 ligand (CD40L) interaction,[49] implying that the shedding of sCD40 may represent a negative feedback control of mCD40-mediated functions. Early experimental studies showed that lack of CD40L or blocking of the mCD40–CD40L interaction led to severely impaired B-cell antibody production[50] and thereby impaired adaptive immune responses.[51] In a dose-escalating study with an agonistic CD40 antibody for patients with advanced solid tumours, half the participants at the maximum-tolerated dose experienced depletion of helper and cytotoxic T cells,[52] suggesting that stimulation of the CD40–CD40L axis may have led to counterproductive immune modulation.[53] Specifically, it has long been known that CD40–CD40L signalling in the interaction of various immune cell subsets enhances a counterbalancing apoptotic activity mediated by Fas–FasL.[54] In this regard, recent experimental and patient data demonstrated that myeloid cells within colorectal liver metastases caused apoptotic depletion of tumour-directed T cells mediated via Fas–FasL signalling, which was not the case for colorectal lung metastases.[28] We may speculate if circulating sCD40 reflects the liver specificity of disseminating CRC, as the organotropism is said to be largely based on the unique microenvironment, including the secretome, of the specific target organs for metastatic tumour cells.[55] Measuring sCD40 in clinical CRC practice may be of note in this regard. The patients of our four rectal cancer cohorts had been given diverse neoadjuvant treatment regimens and a fifth of the cases had proceeded directly to pelvic surgery. The data analysis was limited by the lack of systematic reporting of other known prognostic factors, for instance patient comorbidities and other tumour data, such as distance to the circumferential margin or the status of extramural vascular invasion. Moreover, the serum sCD40 measurement was undertaken with two different methods that displayed differences in measured sCD40 levels. Still, increasing levels of sCD40 remained significantly associated with shorter time to development of liver metastasis across all patient cohorts. It is tempting to speculate that high circulating sCD40 may have impeded a tumour-directed immune response protecting against metastatic colonisation of the liver and further suggests the determination of this immune-modulating factor to be integrated in the diagnostic workup for rectal cancer. To our knowledge, we are the first to demonstrate that high circulating level of the sCD40 costimulatory immune checkpoint receptor is a marker of liver metastasis risk in CRC. Given this is validated in further studies, it should be feasible to use in clinical practice. Supplementary Materials
  53 in total

1.  Immunoregulation and Clinical Implications of ANGPT2/TIE2+ M-MDSC Signature in Non-Small Cell Lung Cancer.

Authors:  Elodie Lauret Marie Joseph; Caroline Laheurte; Marine Jary; Laura Boullerot; Kamal Asgarov; Eléonore Gravelin; Adeline Bouard; Laurie Rangan; Magalie Dosset; Christophe Borg; Olivier Adotévi
Journal:  Cancer Immunol Res       Date:  2019-12-23       Impact factor: 11.151

Review 2.  From tumour heterogeneity to advances in precision treatment of colorectal cancer.

Authors:  Cornelis J A Punt; Miriam Koopman; Louis Vermeulen
Journal:  Nat Rev Clin Oncol       Date:  2016-12-06       Impact factor: 66.675

Review 3.  The Intersection between Tumor Angiogenesis and Immune Suppression.

Authors:  Osama E Rahma; F Stephen Hodi
Journal:  Clin Cancer Res       Date:  2019-04-03       Impact factor: 12.531

Review 4.  Consensus molecular subtypes and the evolution of precision medicine in colorectal cancer.

Authors:  Rodrigo Dienstmann; Louis Vermeulen; Justin Guinney; Scott Kopetz; Sabine Tejpar; Josep Tabernero
Journal:  Nat Rev Cancer       Date:  2017-01-04       Impact factor: 60.716

Review 5.  Signal interaction between the tumour and inflammatory cells in patients with gastrointestinal cancer: Implications for treatment.

Authors:  Kathryn A F Pennel; James H Park; Donald C McMillan; Antonia K Roseweir; Joanne Edwards
Journal:  Cell Signal       Date:  2018-11-17       Impact factor: 4.315

6.  Regulation of neovascularization by human neutrophil peptides (alpha-defensins): a link between inflammation and angiogenesis.

Authors:  Triantafyllos Chavakis; Douglas B Cines; Joong-Sup Rhee; Olin D Liang; Uwe Schubert; Hans-Peter Hammes; Abd Al-Roof Higazi; Peter P Nawroth; Klaus T Preissner; Khalil Bdeir
Journal:  FASEB J       Date:  2004-06-18       Impact factor: 5.191

Review 7.  Biomarker-guided therapy for colorectal cancer: strength in complexity.

Authors:  Anita Sveen; Scott Kopetz; Ragnhild A Lothe
Journal:  Nat Rev Clin Oncol       Date:  2019-07-09       Impact factor: 66.675

8.  Hepatocytes direct the formation of a pro-metastatic niche in the liver.

Authors:  Jae W Lee; Meredith L Stone; Paige M Porrett; Stacy K Thomas; Chad A Komar; Joey H Li; Devora Delman; Kathleen Graham; Whitney L Gladney; Xia Hua; Taylor A Black; Austin L Chien; Krishna S Majmundar; Jeffrey C Thompson; Stephanie S Yee; Mark H O'Hara; Charu Aggarwal; Dong Xin; Abraham Shaked; Mingming Gao; Dexi Liu; Mitesh J Borad; Ramesh K Ramanathan; Erica L Carpenter; Ailing Ji; Maria C de Beer; Frederick C de Beer; Nancy R Webb; Gregory L Beatty
Journal:  Nature       Date:  2019-03-06       Impact factor: 49.962

9.  Macrophages and chemokines as mediators of angiogenesis.

Authors:  Jennifer L Owen; Mansour Mohamadzadeh
Journal:  Front Physiol       Date:  2013-07-05       Impact factor: 4.566

10.  The consensus molecular subtypes of colorectal cancer.

Authors:  Justin Guinney; Rodrigo Dienstmann; Xin Wang; Aurélien de Reyniès; Andreas Schlicker; Charlotte Soneson; Laetitia Marisa; Paul Roepman; Gift Nyamundanda; Paolo Angelino; Brian M Bot; Jeffrey S Morris; Iris M Simon; Sarah Gerster; Evelyn Fessler; Felipe De Sousa E Melo; Edoardo Missiaglia; Hena Ramay; David Barras; Krisztian Homicsko; Dipen Maru; Ganiraju C Manyam; Bradley Broom; Valerie Boige; Beatriz Perez-Villamil; Ted Laderas; Ramon Salazar; Joe W Gray; Douglas Hanahan; Josep Tabernero; Rene Bernards; Stephen H Friend; Pierre Laurent-Puig; Jan Paul Medema; Anguraj Sadanandam; Lodewyk Wessels; Mauro Delorenzi; Scott Kopetz; Louis Vermeulen; Sabine Tejpar
Journal:  Nat Med       Date:  2015-10-12       Impact factor: 53.440

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  3 in total

1.  CD40 monoclonal antibody and OK432 synergistically promote the activation of dendritic cells in immunotherapy.

Authors:  Juan Zhang; Lei Wang; Shuyi Li; Xuefeng Gao; Zhong Liu
Journal:  Cancer Cell Int       Date:  2022-06-17       Impact factor: 6.429

2.  Serum apolipoprotein B to apolipoprotein A-I ratio is an independent predictor of liver metastasis from locally advanced rectal cancer in patients receiving neoadjuvant chemoradiotherapy plus surgery.

Authors:  Chen Chen; Wei Yi; Zhi-Fan Zeng; Qiao-Xuan Wang; Wu Jiang; Yuan-Hong Gao; Hui Chang
Journal:  BMC Cancer       Date:  2022-01-03       Impact factor: 4.430

3.  Human Immunocompetent Model of Neuroendocrine Liver Metastases Recapitulates Patient-Specific Tumour Microenvironment.

Authors:  Ewald Jan Doornebal; Nicola Harris; Antonio Riva; Ravi Jagatia; Michail Pizanias; Andreas Prachalias; Krishna Menon; Melissa Preziosi; Ane Zamalloa; Rosa Miquel; Yoh Zen; Michael Robert Orford; Simon Eaton; Nigel Heaton; John Ramage; Elena Palma; Rajaventhan Srirajaskanthan; Shilpa Chokshi
Journal:  Front Endocrinol (Lausanne)       Date:  2022-07-13       Impact factor: 6.055

  3 in total

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