Clinical Trials Study Open Access
Copyright ©The Author(s) 2015. Published by Baishideng Publishing Group Inc. All rights reserved.
World J Gastroenterol. Jul 21, 2015; 21(27): 8398-8407
Published online Jul 21, 2015. doi: 10.3748/wjg.v21.i27.8398
SLITRK3 expression correlation to gastrointestinal stromal tumor risk rating and prognosis
Chao-Jie Wang, Zi-Zhen Zhang, Jia Xu, Ming Wang, Wen-Yi Zhao, Lin Tu, Chun Zhuang, Hui Cao, Department of Gastrointestinal Surgery, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai 200127, China
Qiang Liu, Yan-Yin Shen, Department of Pathology, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai 200127, China
Chao-Jie Wang, Zhi-Gang Zhang, State Key Laboratory of Oncogenes and Related Genes, Shanghai Cancer Institute, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai 200240, China
Author contributions: Wang CJ and Zhang ZZ contributed equally to this study and were co-first authors; Wang CJ and Zhang ZZ participated in data collection, data analysis, and wrote the manuscript; Xu J, Wang M, Zhao WY, Tu L, Zhuang C, Liu Q, and Shen YY participated in data collection and helped perform the statistical analysis; Cao H and Zhang ZG conceived the study, participated in its design, and provided critical revisions; all authors read and approved the final manuscript.
Supported by National Natural Science Foundation of China General Program, No. 81272743; Shanghai City Committee of Science and Technology Key Project, No. 11411950800; and Key Discipline Project of Renji Hospital, Shanghai Jiaotong University School of Medicine, No. RJ4101304.
Institutional review board statement: Clinical materials and samples were obtained with approval from the Ethical Committees of Renji Hospital and Shanghai Jiaotong University School of Medicine.
Clinical trial registration statement: The clinical investigation was carried out in accordance with the principles expressed in the Declaration of Helsinki.
Informed consent statement: Written informed consent was obtained from all participants.
Conflict-of-interest statement: No potential conflicts of interest relevant to this article were reported.
Data sharing statement: No additional data are available.
Open-Access: This article is an open-access article which was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
Correspondence to: Hui Cao, MD, Department of Gastrointestinal Surgery, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, No. 1630 Dong fang Road, Shanghai 200127, China. caohuishcn@hotmail.com
Telephone: +86-21-68383711 Fax: +86-21-58394262
Received: November 25, 2014
Peer-review started: November 26, 2014
First decision: January 8, 2015
Revised: February 13, 2015
Accepted: April 28, 2015
Article in press: April 28, 2015
Published online: July 21, 2015

Abstract

AIM: To assess the influence of SLIT and NTRK-like family member 3 (SLITRK3) on the prognosis of gastrointestinal stromal tumor (GIST) and determine whether SLITRK3 can help improve current risk stratification systems.

METHODS: We hypothesized that SLITRK3 could be used as a prognostic molecular biomarker for GIST. 35 fresh tumor samples and 417 paraffin-embedded specimens from GIST patients were utilized. SLITRK3 mRNA expression in GIST tumor tissue was detected by real-time polymerase chain reaction, and SLITRK3 protein levels were estimated by immunohistochemistry. The correlation of SLITRK3 expression with various tumor clinicopathological characteristics and follow-up data were analyzed.

RESULTS: GIST tumors had high expression of SLITRK3 compared with adjacent normal tissues and the expression level gradually increased with risk grade. SLITRK3 protein expression was closely associated with gastrointestinal bleeding, tumor site, tumor size, mitotic index, and National Institutes of Health (NIH) classification. Survival analysis showed that SLITRK3 expression was closely correlated with overall survival and disease-free survival of GIST patients. Multivariate analysis also identified SLITRK3 expression, mitotic index, and NIH stage as significant risk factors of GIST recurrence.

CONCLUSION: SLITRK3 expression is a highly significant predictor of GIST recurrence and metastasis. Combinations of SLITRK3 and NIH stage have strong predictive and prognostic value, and are feasible markers for clinical practice in gastrointestinal stromal tumor.

Key Words: SLITRK3, Gastrointestinal stromal tumor, Biomarkers, Non-epithelial tumors, Risk stratification

Core tip: Prognostic biomarkers are required to refine risk stratification treatment strategies for gastrointestinal stromal tumor (GIST). In this study, we hypothesized that SLIT and NTRK-like family member 3 (SLITRK3) could be used as a prognostic molecular biomarker for GIST. The results indicated that SLITRK3 expression is a highly significant predictor of GIST recurrence and metastasis. Combinations of SLITRK3 and NIH stage have strong predictive and prognostic value, and are feasible markers for clinical practice in gastrointestinal stromal tumor.



INTRODUCTION

Gastrointestinal stromal tumors (GISTs) are the most common non-epithelial tumors[1] and the most common type of gastrointestinal cancer following gastric and colorectal cancer[1-4]. Surgery is the primary treatment option, but patients suffer from high-rates of tumor recurrence or metastasis, resulting in death. The majority of GISTs result from activating mutations in c-KIT and alpha-type platelet-derived growth factor receptor (PDGFRA)[5]. Recent studies have shown that adjuvant therapy with imatinib, a small molecule tyrosine kinase inhibitor, can prolong both survival and time to metastasis following surgery[6]. However, most micro-GISTs (less than 1 cm in diameter) have little malignancy potential despite the presence of KIT or PDGFRA mutations[7]. Furthermore, a 2002 risk assessment for aggressive GISTs showed that tumor growth rates can be affected by numerous factors[8]. Together, this demonstrates the need for additional prognostic molecular biomarkers to better characterize tumor prognosis and guide treatment strategy.

Secretion of transmitters and hormones is regarded as a hallmark of neuroendocrine cells and tumors. Synaptic-like microvesicle proteins, such as amphiphysin, synaptic vesicle protein, SV2, and synapsin 1, are found in a majority of GISTs[9]. Expression of these proteins enables GISTs to secrete neurotransmitters or hormones, suggesting that GISTs adopt a neuroendocrine phenotype. SLITRK3 is one of the six isoforms of SLIT and neurotropic tyrosine receptor kinase (NTRK)-like family member (Slitrk1-6), which are neuronal transmembrane proteins that control neurite growth[10]. Recently, SLITRK3 has been identified as a post-synaptic adhesion molecule that selectively regulates inhibitory synapse development and is important for normal functional GABAergic synapse development[11]. GABA is a key inhibitory neurotransmitter and mediates synaptic transmission, neural network development[12], and is involved in digestive diseases such as esophageal reflux and gastric cancer[13-15]. GISTs may originate from the interstitial cells of Cajal (ICCs), with pacemaker potentials suggesting that mutations in genes involved in synapse or neural development may underlie GIST behavior[9]. In agreement with this, we have previously found that the expression of SLITRK3 was increased in a high-risk group compared to a low-risk group (unpublished data), and Milde et al[16] showed higher SLITRK3 expression levels in lymphoma.

The aim of this study was to assess the influence of SLITRK3 on the prognosis of GIST and determine whether SLITRK3 can help improve current risk stratification systems. We hypothesized that up-regulation of SLITRK3 is strongly-associated with high recurrence risk and poor prognosis in GIST patients. We tested this by using qRT-PCR and immunohistochemistry on GIST samples and examining the relationship to patient outcome.

MATERIALS AND METHODS
Patients and samples

Formalin-fixed paraffin-embedded (FFPE) tissue sections were collected from GIST patients who underwent surgery at Renji Hospital, Shanghai Jiaotong University School of Medicine, China from 2004 to 2012. The inclusion criteria for this study were as follows: (1) primary GIST cases with definite pathologic diagnosis, as previously described[17]; (2) all cases received surgical resection; and (3) no reoccurrence or metastasis was detected. The exclusion criteria were: (1) chemotherapy, radiotherapy, or other anti-tumor therapy before surgery; and (2) incomplete clinicopathologic data. A total of 417 tumor tissue samples, with tumor adjacent normal tissue available for 139, were collected.

All cases were divided into four groups according to the risk table published by the National Institutes of Health (NIH) (Table 1)[8]. Tissue microarray and immunohistochemical staining were performed to access the expression levels of SLITRK3 in these samples. The follow-up data, including survival, reoccurrence, and metastasis as re-examination results, were obtained from outpatient medical records or from patients and their relatives by telephone interview using a follow-up questionnaire.

Table 1 Risk level access of gastrointestinal stromal tumor.
Risk levelTumor size (cm)Mitotic count (50/HPF)Primary tumor location
Very low ≤ 2.0 ≤ 5Any
Low2.1-5.0 ≤ 5Any
Medium2.1-5.0> 5Stomach
< 5.06-10Any
5.1-10.0 ≤ 5Stomach
HighAnyAnyTumor rupture
> 10.0AnyAny
Any> 10Any
> 5.0> 5Any
2.1-5.0> 5Non stomach
5.1-10.0 ≤ 5Non stomach

Additionally, 35 fresh frozen GIST specimens were obtained between 2010 and 2012 from GIST patients who received surgical resection at Renji Hospital, Shanghai Jiaotong University School of Medicine, China. The samples were used for qRT-PCR detection of SLITRK3 expression.

Tissue microarray construction

Tissue microarrays were constructed by Suzhou Xinxin Biotechnology Co., Ltd (Xinxin Biotechnology Co, Suzhou, China). First, 139 GIST tissues with paired tumor adjacent normal tissues were used to construct 3 microarrays, while the other 278 GIST tissues were used to construct another 4 microarrays. Tissue paraffin blocks of GIST samples were stained with hematoxylin-eosin to confirm the diagnoses, and were marked at fixed points with most typical histological characteristics under a microscope. Two 1.6 mm cores per donor block were transferred into a recipient block tissue microarray, with each dot array containing fewer than 160 dots. Three-micron-thick sections were cut from the recipient block and transferred to glass slides with an adhesive tape transfer system for ultraviolet cross linkage.

Immunohistochemistry

The slides were baked at 56 °C for 1 h, de-paraffinized in xylene for 20 min, and rehydrated through a graded series of ethanol concentrations (5 min in 100% ethanol followed by 5 min in 70% ethanol). Antigen retrieval was performed in a pressure cooker for 10 min with 0.01 mol/L sodium citrate buffer (pH 6.0). Endogenous peroxidase activity was quenched with 0.3% hydrogen peroxide in methanol at 37 °C for 30 min. Next, an SLITRK3 antibody (NBP1-93619, Novus Biologicals, Colorado, United States; concentration: 1:100) was applied to cover the specimens overnight at 4 °C, which was followed by incubation with a labeled polymer-HRP anti-rabbit secondary antibody (Dako, CA, United States) for 30 min at room temperature. Staining was detected with diaminobenzidine (Thermo, MA, United States) as chromogen and counterstained with hematoxylin prior to coverslipping. The staining intensity and percentage of positive cells were recorded by two pathologists of Renji Hospital (Liu Q and Shen YY) and a consensus score was obtained for each slide. Immunohistochemical scoring was categorized as follows: (1) staining intensity was scored from 0 to 3: 0 for no staining, 1 for weak staining, 2 for moderate staining, and 3 for strong staining; (2) staining area was graded into 0-3 levels: 0 for no staining area, 1 for extent to less than 1/3, 3 for more than 2/3, and 2 for in-between; and (3) immunohistochemical classification was based on the sum of intensity and extent score: 0 as negative (-), 1-2 as weakly positive (+), 3-4 as positive (++), and 5-6 as strongly positive (+++). We further ranked the protein level into two classes as (-) or (+) for SLITRK3 low expression while (++) or (+++) was for SLITRK3 high expression.

RNA extraction and RT-PCR conditions

Total RNA was extracted from fresh frozen GIST specimens and GIST cells using RNAiso Plus (Takara, Dalian, China) according to the manufacturer’s instructions. RNA quantity and quality were measured by NanoDrop 2000 (NanoDrop, DE, United States). RNA integrity was assessed by standard denaturing agarose gel electrophoresis. Reverse-transcription reactions were performed with Prime Script® RT Master Mix (Takara, Dalian, China) according to the manufacturer’s instructions. First-strand cDNA was synthesized from 2 μg of total RNA.

Quantitative real-time PCR

All qRT-PCR primer sequences were obtained from the Primer Bank database (http://pga.mgh.harvard.edu/primerbank/) (Table 2). Relative quantification of cDNA samples were measured by the SYBR-Green method in a final volume of 20 μL with Power SYBR® Green PCR Master Mix (Applied Biosystems, NY, USA) according to the manufacturer’s instructions. All reactions were performed on ABI ViiA™ 7 Real-Time PCR System (Applied Biosystems, NY, United States) in triplicate and the results were analyzed by ViiA™ 7 software. The 2-△Ct method was used to quantify the relative gene expression levels and 18S was used for normalization.

Table 2 Quantitative real-time PCR primer for candidate genes and endogenous reference gene.
Gene namePrimerSequence (5'-3')Tm (°C)Amplicon size (bp)
SLITRK3ForwardTTCCATAGCTGAGATGCTTCACA61.487
ReverseGGAATCGGGGTAGTCCATCC61.2
18SForwardGTAACCCGTTGAACCCCATT60.4151
ReverseCCATCCAATCGGTAGTAGCG61.7
Statistical analysis

For comparisons, one-way analyses of variance, Wilcoxon signed rank test, and chi-squared tests were performed where appropriate. Kaplan-Meier curves were used to visualize biomarker expression, and NIH risk stage with respect to overall survival (OS) and disease-free survival (DFS) data. Univariate and multivariate analyses were based on the Cox proportional hazards regression model. Only those factors statistically significant (P < 0.05) in univariate analysis had access to the next multivariate analyses. Statistical analyses were all performed using SPSS 19.0 software (Chicago, IL, United States). All statistical tests were 2-sided, and P-value differences < 0.05 were considered statistically significant. All statistical analysis was reviewed and confirmed by Zhi-Gang Zhang.

RESULTS
Patient and tumor characteristics

Detailed clinicopathological data is shown in Table 3. Of the 417 paraffin-embedded GIST tissue samples, the predominant cell types were spindle cell (n = 271; 65.0%), epithelioid cell (n = 54; 12.9%), and mixed (n = 92; 22.1%). The maximum tumor diameter detected in GIST patients ranged from 0.5 to 30 cm (median: 5.5 cm). Risk stratification was performed according to the NIH risk classification, and suggested that there were 33 (7.9%) very low-risk cases, 154 (36.9%) low-risk cases, 67 (16.1%) intermediate-risk cases, and 163 (39.1%) high-risk cases.

Table 3 Patient and tumor characteristics.
Clinicopathological factorsn (%)
GenderMale226 (54.2)
Female191 (45.8)
Age (yr) ≤ 60223 (53.5)
> 60194 (46.5)
Median60
Gastrointestinal bleedingNo315 (75.5)
Yes102 (24.5)
Primary tumor siteStomach229 (54.9)
Small bowel123 (29.5)
Colon21 (5.0)
Others44 (10.6)
Predominant cell typeSpindle271 (65.0)
Epithelioid54 (12.9)
Mixed92 (22.1)
Primary tumor size (cm)0-5202 (48.4)
5.1-10138 (33.1)
> 1077 (18.5)
Median5.5
Mitotic index (per 50 HPFs)0-5309 (74.1)
6-1060 (14.4)
> 1048 (11.5)
NIH stageVery low risk33 (7.9)
Low risk154 (36.5)
Intermediate risk67 (16.1)
High risk163 (39.1)
RecurrenceNo331 (79.4)
Yes71 (17.0)
Insufficient data15 (3.6)
Death from illnessNo376 (90.2)
Yes26 (6.2)
Insufficient data15 (3.6)
GIST tumors have high expression of SLITRK3 protein compared with adjacent normal tissues

We performed immunohistochemistry in 139 GIST tissue samples which had both tumor (T) and adjacent non-tumor (N) tissue to determine if expression levels of SLITRK3 differed between tumor and non-tumor tissue. The results showed that SLITRK3 protein was expressed at different levels in different tissue samples and was divided into four classes, as described in materials and methods (Figure 1A). Most of the adjacent non-tumor tissues were (-) or (+), while most tumor samples ranged from (+) to (+++) (Figure 1B and Table 4), indicating higher SLITRK3 protein levels in tumor samples. The difference between tumor and paired adjacent normal tissues (T-N), ranging from -1 to 3 [(-) for 0 and (+++) for 3], revealed that SLITRK3 expression was increased in 76.3% (100/131) of GIST tumors where T-N > 0 (Figure 1C). Wilcoxon signed rank test further confirmed that GIST tumors have a significantly higher expression of SLITRK3 protein than adjacent normal tissue tumor samples (P < 0.001).

Figure 1
Figure 1 Immunohistochemistry of SLITRK3 in gastrointestinal stromal tumor and adjacent non-tumor tissues. A: Representative images of SLITRK3 expression levels detected in tumor and adjacent tissue; B: Frequency distribution of SLITRK3 staining scores in tumor and adjacent non-tumor tissues; C: Frequency distribution of different SLITRK3 expression levels calculated by normalizing the SLITRK3 expression score in tumor against that in adjacent non-tumor tissues.
Table 4 Expression levels of SLITRK3 in gastrointestinal stromal tumor and adjacent non-tumor tissues n (%).
TissueSLITRK3 level
-++++++
Tumor14 (11)37 (28)49 (37)31 (24)
Non-tumor tissue91 (69)33 (25)5 (4)2 (2)
SLITRK3 protein expression level is closely correlated with clinicopathological factors in GIST

In order to better understand the significance of SLITRK3 expression in GIST tumor tissues, we expanded the tissue microarray sample size to 417 cases (4 cases were off-chip and not included in the statistics). Among the 413 GIST tumor tissues, SLITRK3 staining was strongly positive (+++) in 85 cases (20.6%), positive (++) in 142 cases (34.4%), weakly positive (+) in 112 cases (27.1%), and negative (-) in 74 cases (17.9%). We then ranked the protein level into two classes: (-) or (+) for low expression and (++) or (+++) for high expression, in order to further investigate the relationship between SLITRK3 and clinicopathological factors in GIST. Chi-square test revealed that the SLITRK3 protein level was not associated with gender, age, or predominant cell type, but was closely related with gastrointestinal bleeding, primary tumor site, primary tumor size, mitotic index, and NIH classification (Table 5).

Table 5 Correlations between SLITRK3 expression and clinicopathological factors in 417 gastrointestinal stromal tumor patients.
Clinicopathological factors1SLITRK3 expression
Number of patientsχ2P value2
LowHigh
GenderMale1001232240.0011.000
Female85104189
Age (yr) ≤ 60991212200.0001.000
> 6087106193
Gastrointestinal bleedingNo1531603137.7220.006
Yes3367100
Primary tumor siteStomach12010622624.730< 0.0013
Small bowel3488122
Colon14721
Others182644
Predominant cell typeSpindle1261442702.5520.279
Epithelioid262753
Mixed345690
Primary tumor size ≤ 5 cm1168319927.260< 0.0013
> 5 cm70144214
Mitotic index ≤ 5/50 HPF15714930618.763< 0.0013
> 5/50 HPF2978107
NIH stageVery low risk2833153.340< 0.0013
Low risk8767154
Intermediate risk254166
High risk46116162
SLITRK3 mRNA expression is up-regulated in fresh tumor tissues with higher NIH risk

To further confirm SLITRK3 expression in GIST, the relative expression levels of SLITRK3 mRNAs were analyzed by qRT-PCR in 35 fresh GISTs samples. The relative expression level of SLITRK3 mRNA in the low risk group (n = 13), intermediate risk group (n = 10), and high risk group (n = 12) were 0.002 ± 0.002, 0.008 ± 0.009, and 0.011 ± 0.009, respectively, indicating a gradually increasing trend. SLITRK3 expression in GIST tumor tissues of the intermediate and high risk groups were significantly higher than those of the low-risk group (P = 0.003 and P = 0.044) (Figure 2).

Figure 2
Figure 2 SLITRK3 mRNA expression in 35 gastrointestinal stromal tumor tissues with different risk grades (aP < 0. 05, group 1 vs group 2; bP < 0.01, group 1 vs group 3). The SLITRK3 mRNA levels in GIST tumor tissues of the high risk group (group 3) and intermediate risk group (group 2) were significantly higher than those of the low-risk group (group 1) (P = 0.003 and P = 0.044).
SLITRK3 is a predictor for poor prognosis in GIST patients

The relationship between SLITRK3 expression and overall survival (OS) or disease-free survival (DFS) in GIST patients was investigated. All 398 cases with complete follow-up data were classified into four classes according to SLITRK3 expression levels and calculated according to the Kaplan-Meier method. The 5-year OS rates decreased successively from 100% in (-), 99.0% in (+), 86.7% in (++), and 57.4% in (+++) (Log-Rank-test, P < 0.001) (Figure 3A). Meanwhile, the 5-year DFS rates also decreased successively form 91.7% in (-), 78.6% in (+), 71.6% in (++), and 41.8% in (+++) (Log-Rank-test, P < 0.001) (Figure 3B).

Figure 3
Figure 3 Overall survival (A) and disease-free survival (B) of 398 gastrointestinal stromal tumors according to SLITRK3 expression.

To further investigate whether SLITRK3 can be used as an independent predictor associated with poor prognosis in GIST, univariate and multivariate analysis were performed. Univariate analysis revealed that primary tumor size, mitotic index, NIH stage, and SLITRK3 expression were significantly associated with OS (Table 6). Univariate analysis revealed that primary tumor site, primary tumor size, mitotic index, NIH stage, and SLITRK3 expression were significantly associated with DFS (Table 7).

Table 6 Univariate analysis of factors influencing overall survival in 402 patients with gastrointestinal stromal tumor.
Factor5-yr OS rate (%)OS HR (95%CI)P value
GenderMale: Female81.3: 89.20.508 (0.221-1.169)0.111
Age (yr) ≤ 60: > 6088.9: 80.02.186 (0.989-4.832)0.053
Gastrointestinal bleedingNo: Yes86.8: 81.21.259 (0.559-2.837)0.578
Primary tumor siteGastric: Non-gastric83.0: 86.81.143 (0.529-2.470)0.733
Predominant cell typeSpindle: Epithelioid: Mixed87.7: 82.4: 88.80.935 (0.586-1.491)0.778
Primary tumor size (cm) ≤ 5: > 599.2: 74.022.726 (3.079-167.742)0.0021
Mitotic index (HPFs) ≤ 5/50: 6-10/50: > 10/5096.5: 83.0: 39.74.727 (2.887-7.740)< 0.0011
NIH stageVery low: Low: Mid: High100.0: 100.0: 88.6: 70.38.005 (2.365-27.098)0.0011
SLITRK3 expression(-): (+): (++): (+++)100.0: 99.0: 86.7: 57.44.164 (2.227-7.786)< 0.0011
Table 7 Univariate analysis of factors influencing disease-free survival in 402 patients with gastrointestinal stromal tumor.
Factor5-yr DFS rate (%)DFS HR (95%CI)P value
GenderMale: Female69.0: 69.70.643 (0.398-1.038)0.071
Age (yr) ≤ 60: > 6072.1: 65.61.285 (0.806-2.049)0.292
Gastrointestinal bleedingNo: Yes71.6: 65.71.425 (0.874-2.322)0.155
Primary tumor siteGastric: Non-gastric81.5: 59.42.669 (1.623-4.388)0.0011
Predominant cell typeSpindle: Epithelioid: Mixed72.0: 67.1: 71.30.877 (0.661-1.164)0.365
Primary tumor size (cm) ≤ 5: > 592.2: 50.88.183 (3.921-17.079)< 0.0011
Mitotic index (HPFs) ≤ 5/50: 6-10/50: > 10/5084.2: 50.7: 19.03.289 (2.545-4.253)< 0.0011
NIH stageVery low: Low: Mid: High100.0: 93.3: 87.1: 40.05.421 (3.249-9.045)< 0.0011
SLITRK3 expression(-): (+): (++): (+++)91.7: 78.6: 71.6: 41.82.082 (1.575-2.753)< 0.0011

Only those factors with statistically significant relationships with DFS in the univariate analysis were entered in the Cox’s proportional-hazard model for multivariate analysis (Table 8). The NIH stage is based on primary tumor site, tumor size, and mitotic index, and correlated with each of them strongly, so we developed 3 models for multivariate analysis. Analysis included NIH stage without SLITRK3 expression in model A, SLITRK3 expression instead of NIH stage in model B, and both in model C. In model A, primary tumor site, mitotic index, and NIH stage were statistically significant indicators of poor DFS, and model B showed that SLITRK3 expression is also a significant indicator of poor DFS. Importantly, in model C, SLITRK3 expression (but not NIH stage) was an independent risk factor for GIST recurrence.

Table 8 Multivariate analysis of factors influencing disease-free survival in 402 patients with gastrointestinal stromal tumor.
FactorModel A
Model B
Model C
DFS HR(95%CI)P valueDFS HR(95%CI)P valueDFS HR(95%CI)P value
Primary tumor siteGastric: Non-gastric1.762 (1.036-2.999)0.03712.046 (1.232-3.401)0.00621.593 (0.928-2.733)0.091
Primary tumor size (cm) ≤ 5: > 51.388 (0.567-3.398)0.4733.370 (1.545-7.351)0.00221.183 (0.477-2.934)0.717
Mitotic index (HPFs) ≤ 5/50: 6-10/50: > 10/502.027 (1.494-2.749)< 0.00122.549 (1.930-3.366)< 0.00122.032 (1.496-2.760)< 0.0012
NIH stageVery low: Low: Mid: High2.753 (1.426-5.314)0.00322.707 (1.387-5.283)0.0042
SLITRK3 expression(-): (+): (++): (+++)1.508 (1.151-1.976)0.00321.465 (1.114-1.928)0.0062
SLITRK3 index is helpful to improve the accuracy of NIH risk stratification system

In order to find out whether SLITRK3 can help improve the NIH stage, we further investigated a subgroup of 152 high risk cases. The Kaplan-Meier analysis revealed that the 5-year DFS rate in the SLITRK3 (+++) group was significantly lower than the others (20.3% vs 52.7%, Log-Rank-test, P = 0.018) (Figure 4).

Figure 4
Figure 4 Disease-free survival analysis in a subgroup of 152 high risk cases.

Furthermore, we found that 71 patients suffered from disease recurrence, mostly with an original high NIH risk rating. Kaplan-Meier curve analysis based on SLITRK3 expression of these patients showed that 1-year and 3-year OS rates in the SLITRK3 (-), (+), (++) group was 83.3% and 61.7%, respectively; the SLITRK3 (+++) group was 58.5% and 9.7%, respectively (Log-Rank-test, P =0.003) (Figure 5).

Figure 5
Figure 5 Overall survival analysis in 71 patients after recurrence.
DISCUSSION

In the current study, we examined the correlation between SLITRK3 and GLIST behavior and survival. We found that SLITKR3 was expressed more highly in tumor tissue, correlated well with clinicopathological features, and predicted poor survival in patients. Most importantly, increasing SLITKR3 expression correlated with decreased overall survival and disease-free survival.

Currently, risk stratification schemes for operable GIST, such as the NIH consensus criteria, modified consensus criteria, and AFIP-Miettinen criteria, all depend on tumor site, tumor size, and mitosis index[8,18-20]. Mitosis count is one of the most valuable prognostic factors in GIST, but has limitations and controversial reliability[21]. Observation of mitosis can be subjective, time consuming, and affected by the high power field (HPF) area of the microscope and tissue fixation time. A previous study using 16 different pathologists and different microscopes resulted in a wide counting range from the same sample[22]. Moreover, according to current risk stratification, abrupt changes can occur in estimating risk of recurrence when the tumor size or mitosis index is close to a cutoff value. This is especially important due to the existence of small and mitotically inactive malignant GISTs[1,23,24]. Together, these factors suggest that the current risk criteria can be improved significantly.

We found that the clinical measurements in our study, including age, sex, tumor size, and mitoses index, were all similar to previously reported studies[21,25-27]. Patients who suffered from disease recurrence or death were mainly from the high-risk group. The 5-year OS and DFS rate of our database were 85.0% and 69.4%, respectively, compared with 72.3% and 70.5%, respectively, from a large multicenter, retrospective analysis of clinical data published in Lancet Oncology 2012[21]. The better 5-year OS rate of our study might reflect differences in standardized treatment and the use of IM adjuvant therapy.

SLITRK3 is expressed predominantly in neural tissues and has neurite-modulating activity[28]. However, the function of SLITRK3 in solid tumors is poorly studied. In our previous study (unpublished data), the expression of SLITRK3 monotonically increased from the low-risk group to the high-risk group. We found that SLITRK3 was also up-regulated in tumor compared to non-tumor tissue by using immunohistochemistry and qRT-PCR. This finding is in agreement with Milde et al[16], who demonstrated that SLITRK3 was up-regulated in lymphoma. SLITRK3 expression was also associated with a higher incidence of GI bleeding, a common symptom of GIST and a good indicator for high-risk patients[29,30]. Furthermore, SLITRK3 expression correlated with NIH risk classification, and the reduced overall survival and disease-free progression suggests that elevated expression of SLITRK3 is a good tumor biomarker candidate, particularly for aggressive GISTs.

The function and mechanism of SLITRK3 protein in the malignant processes of GIST it still unclear, necessitating the need for experiments both in vitro and in vivo. However, it is very likely that there are other potential GIST risk-related genes, as suggested by our previous gene microarray (unpublished data). In agreement with this, the potassium channel tetramerization domain containing protein 10 (KCTD10) has been shown to correlate with GIST prognosis[31]. Future studies and identification of novel prognostic biomarkers will help further stratify risk groups and direct treatment strategies for GIST.

Our detailed analysis showed that SLITRK3 mRNA expression level increased according to NIH risk classification. We found that SLIRTK3 protein level was closely associated with tumor site, tumor size, and mitotic index. As current risk stratification schemes are mainly based on these three features, it is not surprising that up-regulation of SLIRTK3 is strongly associated with a high-risk NIH grade. However, we found that NIH stage was a significant unfavorable factor for OS in univariate analysis, but not multivariate analysis. This suggests that the current NIH criteria is very likely not an optimal prognostic tool. We found that under all circumstances that SLITRK3 expression was a significant predictor of poor prognosis. Therefore, we believe that the combination of SLITRK3 expression and NIH criteria will better stratify post-operative GIST patients. Many patients with operable GIST can be cured by surgery alone and may not benefit from IM adjuvant therapy. Given the expense of IM adjuvant therapy and its associated side effects[32], an improved selection of patients for adjuvant therapy will be of clinical benefit. Due to the poor prognosis and reduced OS, we strongly suggest that patients with high SLITRK3 expression, especially those who also are in the NIH high-risk groups, receive IM adjuvant therapy and close follow-up management after surgery.

In conclusion, we have identified SLITRK3 as a novel prognostic molecular biomarker that may help guide treatment of GIST.

COMMENTS
Background

Recent studies have shown that adjuvant therapy with imatinib, a small molecule tyrosine kinase inhibitor, can prolong both survival and time to metastasis following surgery. However, most micro-gastro intestinal stromal tumors (GIST) (less than 1 cm in diameter) have little malignancy potential, despite the presence of a KIT or PDGFRA mutation. Furthermore, a 2002 risk assessment for aggressive GISTs showed that tumor growth rates can be affected by numerous factors.

Research frontiers

In agreement with this, the authors have previously found that the expression of SLIT and NTRK-like family member 3 (SLITRK3) was increased in a high-risk group when compared to a low-risk group (unpublished data), and Milde et al showed higher SLITRK3 expression levels in lymphoma.

Innovations and breakthroughs

The authors hypothesized that up-regulation of SLITRK3 is strongly associated with high recurrence risk and poor prognosis in GIST patients. We tested this by using qRT-PCR and immunohistochemistry on GIST samples and examining the relationship to patient outcome.

Applications

The authors have identified SLITRK3 as a novel prognostic molecular biomarker that may help guide treatment of GIST.

Peer-review

In this study, the authors aimed to assess the influence of SLITRK3 on the prognosis of GIST, determine whether different degrees of SLITRK3 expression were significantly associated with overall survival, and assess whether this can help improve current risk stratification systems according to tables published by the National Institutes of Health for GIST.

Footnotes

P- Reviewer: Aseni P, Lu XF, Tang HH, Yang CH S- Editor: Qi Y L- Editor: Rutherford A E- Editor: Liu XM

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