Background: Hepatocellular carcinoma (HCC) is a malignant tumor with rapid progression, high recurrence rate and poor prognosis. The objective of our investigation was to explore the prognostic value of CDK5R1 in HCC.

Methods: The raw data of HCC raw data were downloaded from The Cancer Genome Atlas (TCGA) database. The Wilcoxon signed-rank test, Kruskal–Wallis test and logistic regression were applied to investigate the relevance between the CDK5R1 expression and clinicopathologic characteristics in HCC. Kaplan–Meier and Cox regression analysis were employed to examine the association between clinicopathologic features and survival. Gene set enrichment analysis (GSEA) was applied to annotate the biological function of CDK5R1.

Results: CDK5R1 was highly expressed in HCC tissues. The high expression of CDK5R1 in HCC tissues was significantly associated with tumor status (P=0.00), new tumor event (P=0.00), clinical stage (P=0.00) and topography (P=0.00). Elevated CDK5R1 had significant correlation with worse overall survival (OS; P=7.414e−04), disease-specific survival (DSS; P=5.642e−04), disease-free interval (DFI; P=1.785e−05) and progression-free interval (PFI; P=2.512e−06). Besides, univariate and multivariate Cox regression analysis uncovered that increased CDK5R1 can independently predict adverse OS (P=0.037, hazard ratio [HR]= 1.7 (95% CI [1.0–2.7])), DFI (P=0.007, hazard ratio [HR]= 3.0 (95% CI [1.4–6.7])), PFI (P=0.007, hazard ratio [HR]= 2.8 (95% CI [1.3–5.9])). GSEA disclosed that notch signaling pathway and non-small cell lung cancer were prominently enriched in CDK5R1 high expression phenotype.

Conclusions: Increased CDK5R1 may act as a promising independent prognostic factor of poor survival in HCC.

Primary liver cancer ranks as the fourth most common malignant tumor and the sixth leading cause of cancer incidence in the world, with a 5-year survival rate of 18% [1]. Hepatocellular carcinoma (HCC) constitutes 85–90% of primary liver cancer [2], we mainly focus on HCC in the present study. Although local hepatectomy makes it possible to cure HCC, the overall survival outcome of HCC remains poor. The 5-year local recurrence rate after radical resection is much more than 70% [3]. When HCC related symptoms occur, the average survival time of patients is just approximately 3–4 weeks [4]. Take into account this situation, early prediction of the prognosis before and after treatment is of great significance to improve the 5-year survival rate. On the one hand, it is the key step for the doctor to formulate the correct treatment plan [5]; on the other hand, it is helpful to encourage patients to actively strengthen the monitoring of abnormal indicators, detect abnormalities in time, and treat as early as possible. However, a robust prognostic biomarker of HCC remains limited.

Cyclin-dependent kinase 5 (CDK5) is a unique member of the cyclin-dependent kinases (Cdks) family of serine/ threonine kinases [6]. CDK5 not only plays an important regulatory role in the physiological and pathological processes of the nervous system, but also regulates cell apoptosis and senescence, and works in a variety of tumors [7–9]. Recent studies have found that CDK5 has the effect of driving G1-S and RB phosphorylation in medullary thyroid carcinoma models [10]. It must bind to the activator to exert its activity. P35 is one of the two activators of CDK5, which is encoded by Cyclin-dependent kinase 5 regulatory subunit 1 (CDK5R1), and thus CDK5R1 plays a crucial role in the proper activity of CDK5 [8]. Previous studies have reported that overexpressed CDK5 and CKD5R1 (P35) could promote the progression and metastasis of lung cancer [11], similar results can be seen in melanoma [12], pancreatic cancer [13], large B-cell lymphoma [14] and head and neck squamous cell carcinoma [15]. However, the role and clinical significance of CDK5 and CKD5R1 (P35) in hepatocellular carcinoma have not been reported so far. This article seeks to explore the role of CDK5R1 in HCC and its potential prognostic value.

Patient information

The RNA-sequencing data and corresponding patient clinical information were collected from the TCGA data repository (https://portal.gdc.cancer.gov/repository), involving 374 HCC samples and 50 normal samples, and workflow type was HTSeq-FPKM. The clinical features of HCC patients including age, serum AFP value, BMI, family history, clinical stage, topography (T), lymph node (N), metastasis (M), residual tumor, tumor status, gender, vascular invasion, histologic grade, Child-Pugh, new tumor event, virus, tumor weight, risk factor (alcohol consumption and/or viral hepatitis), postoperative ablation embolization and radiation were recorded. Some unavailable or unclear clinical information was removed. Moreover, in order to verify the expression of CDK5R1 in HCC tissues, gene expression profiles of GSE121248 and GSE62232 were downloaded from the Gene Expression Omnibus (GEO) database. The selection criteria for the data set were: (1) primary hepatocellular carcinoma; (2) complete microarray data; (3) containing cancerous and matched paracancerous tissues (4) the cause of HCC has a wide coverage, including viral infections such as HCV and HBV, heavy drinking, non-alcoholic steatohepatitis and so on.

Enrichment analysis of GSEA

GSEA is a method that can be used for analysis and calculations so as to ascertain whether the apriori defined group of genes has a consistent and statistically significant difference between two biologic status [16]. In the present study, an ordered list of all genes was firstly produced based on the basis of their association with CDK5R1 expression by GSEA. The expression level of CDK5R1 was served as a phenotype label. The number of gene set permutations were 1000 times for each analysis. The statistical significance of pathways is dependent on normal P-value <0.05 and false discovery rate (FDR) q-val<0.05.

Statistical analysis

All statistical analyses were performed with R (version 3.6.1, 2019-07-05, R Foundation, Vienna, Austria), the expression of CDK5R1 between HCC and normal groups was compared by Wilcoxon rank sum tests, and adjacent normal tissues by Wilcoxon signed-rank tests. The relationship between CDK5R1 expression and clinicopathologic characteristics were conducted on the Wilcoxon signed-rank test or Kruskal–Wallis test and logistic regression. The association between the expression of CDK5R1 and survival outcome along with other clinicopathological characteristics was carried out using Cox regression analysis and Kaplan–Meier. In the Cox regression analysis, P<0.05 means statistically significant. The median expression value of CDK5R1 was considered to be the cut-off value.

Construction of PPI network

To investigate the interaction between CDK5R1 and other genes, we established a CDK5R1-related PPI network via the Search Tool for the Retrieval of Interacting Genes/Proteins (STRING) database (https://string-db.org/) [17] with a minimum required interaction score >0.4, and Cytoscape 3.7.1 [18] was applied to visualize these interactions after hiding the disconnected nodes.

Clinicopathologic features of patients with HCC

Clinicopathologic features of patients with HCC including age, serum AFP value, BMI, family history, stage, topography (T), lymph node (N), metastasis (M), residual tumor, tumor status, gender, vascular invasion, histologic grade, Child-Pugh, new tumor event, virus, tumor weight, risk factor (alcohol consumption and/or viral hepatitis), postoperative ablation embolization and radiation were downloaded from TCGA database (Table 1). A total of 121 female and 250 male patients were involved in the present study, 90.8% (n=336) of them were over age 40. There were 158 of 335 (47.2%) overweight patients, whose BMI were more than 25. Most of patients (65%, n=208) didn’t have family history. Moreover, most patients (65.6%, n=235) had risk factors, such as alcohol consumption and/or viral hepatitis. The tumor grade included 232 (63.4%) G1-G2 and 134 (36.6%) G3-G4. The stage I-II was found in 257 (74.1%) patients and stage III-IV in 90 (25.9%). Tumor status involved 201(57.1%) tumor free and 151(42.9%) with tumor. The topography included 74.7% (n=275) T1-T2 and 25.3% (n=93). A total of 4 of 256 (1.6%) patients had lymph node metastasis, 4 of 270 (1.5%) patients had distant metastases, 109 of 315 (34.6%) cases had vascular invasion and 169 patients had new tumor event after treatment. As for Child-Pugh, most of the cases (90.8%, n=217) were Child-Pugh A. Besides, 22 (9.2%) cases were Child-Pugh B-C. Serum AFP value<20 was found in 147(52.9%) cases, 20≤ AFP<400 in 66 (23.7%) and AFP ≥400 in 65 (23.4%). The weight of the tumors removed exceeded 500 grams in 248 (83.2%) cases, 500< W ≤1000 in 30 (10.1%) cases, W > 1000 in 20 (6.7%) cases. Besides, 2.3% (8 of 346) patients had undergone radiation therapy and 8.1% (28 of 347) cases had undergone postoperative ablation embolization.

Table 1
HCC patient characteristics based on TCGA
Clinical characteristicsTotal%
Age (years)   
>40 336 90.8 
≤40 34 9.2 
Gender   
male 250 67.4 
female 121 32.6 
BMI   
≥25 158 47.2 
<25 177 52.8 
Family history   
Yes 112 35.0 
No 208 65.0 
Histologic grade   
G1-G2 232 63.4 
G3-G4 134 36.6 
Clinical stage   
I-II 257 74.1 
III-IV 90 25.9 
  
T1-T2 275 74.7 
T3-T4 93 25.3 
  
N0 252 98.4 
N1 1.6 
  
M0 266 98.5 
M1 1.5 
Residual tumor   
R0 324 94.7 
R1 18 5.3 
Tumor status   
tumor free 201 57.1 
with tumor 151 42.9 
Vascular invasion   
Yes 109 34.6 
No 206 65.4 
Child-Pugh   
217 90.8 
B-C 22 9.2 
AFP   
AFP<20 147 52.9 
20<AFP<400 66 23.7 
AFP≥400 65 23.4 
New tumor event   
Yes 169 48.3 
No 181 51.7 
Risk factor   
Alcohol consumption and viral hepatitis 39 11.0 
Alcohol consumption 79 22.1 
Viral hepatitis 117 32.7 
Neither 123 34.4 
Postoperative ablation embolization   
Yes 28 8.1 
No 319 91.9 
Radiation therapy   
Yes 2.3 
No 338 97.7 
Clinical characteristicsTotal%
Age (years)   
>40 336 90.8 
≤40 34 9.2 
Gender   
male 250 67.4 
female 121 32.6 
BMI   
≥25 158 47.2 
<25 177 52.8 
Family history   
Yes 112 35.0 
No 208 65.0 
Histologic grade   
G1-G2 232 63.4 
G3-G4 134 36.6 
Clinical stage   
I-II 257 74.1 
III-IV 90 25.9 
  
T1-T2 275 74.7 
T3-T4 93 25.3 
  
N0 252 98.4 
N1 1.6 
  
M0 266 98.5 
M1 1.5 
Residual tumor   
R0 324 94.7 
R1 18 5.3 
Tumor status   
tumor free 201 57.1 
with tumor 151 42.9 
Vascular invasion   
Yes 109 34.6 
No 206 65.4 
Child-Pugh   
217 90.8 
B-C 22 9.2 
AFP   
AFP<20 147 52.9 
20<AFP<400 66 23.7 
AFP≥400 65 23.4 
New tumor event   
Yes 169 48.3 
No 181 51.7 
Risk factor   
Alcohol consumption and viral hepatitis 39 11.0 
Alcohol consumption 79 22.1 
Viral hepatitis 117 32.7 
Neither 123 34.4 
Postoperative ablation embolization   
Yes 28 8.1 
No 319 91.9 
Radiation therapy   
Yes 2.3 
No 338 97.7 

AFP = alpha fetal protein; BMI = Body Mass Index; M = distant metastasis; N = lymph node metastasis; T = topography distribution.

CDK5R1 was overexpressed in HCC

In our research, Wilcoxon rank sum test was used to compare the CDK5R1 expression in 374 HCC tissues and 50 normal tissues. CDK5R1 was significantly elevated in HCC (P=1.565e−17) (Figure 1A). In addition, compared with 50 adjacent normal tissues, the expression of CDK5R1 was prominently increased in HCC (P=3.536e−09) based on Wilcoxon signed-rank tests (Figure 1B). Further, to verify CDK5R1 expression in other datasets, we downloaded GSE 121248 and GSE 62232 datasets from GEO database. The results also indicated that the expression of CDK5R1 was high in HCC compared with normal tissues (Figure 1C,D).

CDK5R1 is elevated in HCC

Figure 1
CDK5R1 is elevated in HCC

(A) CDK5R1 showed prominently high expression in HCC samples than in normal samples via Wilcoxon rank sum test. (B) The expression of CDK5R1 was significantly increased in HCC tissues compared with adjacent non-cancerous tissues via Wilcoxon singed-rank test. (C and D) showed CDK5R1 was prominently elevated in HCC samples from GSE 121248 and GSE 62232; CDK5R1, Cyclin-dependent kinase 5 regulatory subunit 1.

Figure 1
CDK5R1 is elevated in HCC

(A) CDK5R1 showed prominently high expression in HCC samples than in normal samples via Wilcoxon rank sum test. (B) The expression of CDK5R1 was significantly increased in HCC tissues compared with adjacent non-cancerous tissues via Wilcoxon singed-rank test. (C and D) showed CDK5R1 was prominently elevated in HCC samples from GSE 121248 and GSE 62232; CDK5R1, Cyclin-dependent kinase 5 regulatory subunit 1.

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The effects of overexpressed CDK5R1 on clinicopathological characteristics

As shown in (Figure 2A–F), increased CDK5R1 had a significant correlation with histologic grade ((G1-2 vs. G3-4, P=0.004), clinical stage (Stage I−II vs. Stage III−IV, P=2.185e−04), topography (T1-2 vs. T3-4, P=5.232e−04), tumor status (P=0.002), AFP (AFP<20 vs. 20≤AFP<400 vs. AFP≥400, P=0.023) and new tumor event (P=0.016).

Association between CDK5R1 expression and clinicopathologic characteristics

Figure 2
Association between CDK5R1 expression and clinicopathologic characteristics

As we can see from panels (AF), elevated CDK5R1 was significantly correlated with (A) histologic grade, (B) clinical stage, (C) topography, (D) tumor status, (E) AFP, (F) New tumor event; AFP, alpha fetal protein; M, distant metastasis; N, lymph node metastasis; T, topography distribution.

Figure 2
Association between CDK5R1 expression and clinicopathologic characteristics

As we can see from panels (AF), elevated CDK5R1 was significantly correlated with (A) histologic grade, (B) clinical stage, (C) topography, (D) tumor status, (E) AFP, (F) New tumor event; AFP, alpha fetal protein; M, distant metastasis; N, lymph node metastasis; T, topography distribution.

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Logistic regression was applied to analyze the relationship between CDK5R1 expression and clinicopathologic features (Table 2). We found that overexpressed CDK5R1 was significantly associated with tumor status (OR = 2.28 for with tumor vs. tumor free, P=0.00), new tumor event (OR = 1.95 for yes vs. no, P=0.00), clinical stage (OR = 2.10 for III-IV vs. I-II, P=0.00) and topography (OR = 2.08 for T3-4 vs. T1-2, P=0.00). Taken together, high expression of CDK5R1 (based on median expression value) was closely related to worse clinicopathologic characteristics and prone to have a poor prognosis.

Table 2
Relationship between CDK5R1 expression and clinicopathologic figures by logistic regression
Clinical characteristicsTotal (N)Odds ratio in CDK5R1 expressionP-value
Age (>40 vs. ≤40) 370 1.00 (0.49–2.04) 1.000 
Gender (male vs. female) 371 0.88 (0.57–1.35) 0.560 
BMI (≥25 vs. <25) 335 0.76 (0.49–1.17) 0.210 
Family history (yes vs. no) 320 0. 9 (0.57–1.42) 0.640 
Child-Pugh (B-C vs. A) 239 1.23 (0.51–3.04) 0.640 
AFP    
 AFP≥400 vs. AFP<20 212 1.68 (0.93–3.05) 0.080 
 20≤AFP<400 vs. AFP<20 213 1.27 (0.71–2.28) 0.420 
 AFP≥400 vs. 20≤AFP<400 131 1.32 (0.67–2.65) 0.420 
Tumor status (with tumor vs. tumor free) 352 2.28 (1.48–3.52) 0.000 
Tumor weight    
W > 1000 vs. W ≤ 500 268 1.05 (0.42–2.64) 0.920 
 1000 ≥ W > 500 vs. W ≤ 500 278 1.57 (0.73–3.49) 0.250 
W > 1000 vs. 1000 ≥ W > 500 50 0.67 (0.21–2.09) 0.490 
Vascular invasion (yes vs. no) 315 1.23 (0.77–2.00) 0.380 
New tumor event (yes vs. no) 350 1.95 (1.28–3.00) 0.000 
Residual tumor (R1-2 vs. R0) 342 1.00 (0.38–2.62) 1.000 
Histologic grade (G3-4 vs. G1-2) 366 1.53 (1.00–2.35) 0.050 
Clinical stage (III-IV vs. I-II) 347 2.10 (1.29–3.47) 0.000 
T (T3-4 vs. T1-2) 368 2.08 (1.29–3.40) 0.000 
N (N1 vs. N0) 256 1.00 (0.12–8.44) 1.000 
M (M1 vs. M0) 270 0.33 (0.02–2.60) 0.340 
Radiation therapy (yes vs. no) 352 1.00 (0.23–4.29) 1.000 
Postoperative ablation embolization (yes vs. no) 353 1.01 (0.46–2.20) 0.987 
Risk factor    
 Viral hepatitis versus neither 240 1.21 (0.72–2.02) 0.467 
 Alcohol consumption versus neither 202 1.16 (0.66–2.06) 0.600 
 Alcohol consumption and viral hepatitis versus neither 162 0.66 (0.31–1.36) 0.264 
 Alcohol consumption versus viral hepatitis 196 0.96 (0.54–1.72) 0.897 
 Alcohol consumption and viral hepatitis versus viral hepatitis 156 0.54 (0.25–1.13) 0.107 
 Alcohol consumption and viral hepatitis versus alcohol consumption 118 0.56 (0.25–1.22) 0.152 
Clinical characteristicsTotal (N)Odds ratio in CDK5R1 expressionP-value
Age (>40 vs. ≤40) 370 1.00 (0.49–2.04) 1.000 
Gender (male vs. female) 371 0.88 (0.57–1.35) 0.560 
BMI (≥25 vs. <25) 335 0.76 (0.49–1.17) 0.210 
Family history (yes vs. no) 320 0. 9 (0.57–1.42) 0.640 
Child-Pugh (B-C vs. A) 239 1.23 (0.51–3.04) 0.640 
AFP    
 AFP≥400 vs. AFP<20 212 1.68 (0.93–3.05) 0.080 
 20≤AFP<400 vs. AFP<20 213 1.27 (0.71–2.28) 0.420 
 AFP≥400 vs. 20≤AFP<400 131 1.32 (0.67–2.65) 0.420 
Tumor status (with tumor vs. tumor free) 352 2.28 (1.48–3.52) 0.000 
Tumor weight    
W > 1000 vs. W ≤ 500 268 1.05 (0.42–2.64) 0.920 
 1000 ≥ W > 500 vs. W ≤ 500 278 1.57 (0.73–3.49) 0.250 
W > 1000 vs. 1000 ≥ W > 500 50 0.67 (0.21–2.09) 0.490 
Vascular invasion (yes vs. no) 315 1.23 (0.77–2.00) 0.380 
New tumor event (yes vs. no) 350 1.95 (1.28–3.00) 0.000 
Residual tumor (R1-2 vs. R0) 342 1.00 (0.38–2.62) 1.000 
Histologic grade (G3-4 vs. G1-2) 366 1.53 (1.00–2.35) 0.050 
Clinical stage (III-IV vs. I-II) 347 2.10 (1.29–3.47) 0.000 
T (T3-4 vs. T1-2) 368 2.08 (1.29–3.40) 0.000 
N (N1 vs. N0) 256 1.00 (0.12–8.44) 1.000 
M (M1 vs. M0) 270 0.33 (0.02–2.60) 0.340 
Radiation therapy (yes vs. no) 352 1.00 (0.23–4.29) 1.000 
Postoperative ablation embolization (yes vs. no) 353 1.01 (0.46–2.20) 0.987 
Risk factor    
 Viral hepatitis versus neither 240 1.21 (0.72–2.02) 0.467 
 Alcohol consumption versus neither 202 1.16 (0.66–2.06) 0.600 
 Alcohol consumption and viral hepatitis versus neither 162 0.66 (0.31–1.36) 0.264 
 Alcohol consumption versus viral hepatitis 196 0.96 (0.54–1.72) 0.897 
 Alcohol consumption and viral hepatitis versus viral hepatitis 156 0.54 (0.25–1.13) 0.107 
 Alcohol consumption and viral hepatitis versus alcohol consumption 118 0.56 (0.25–1.22) 0.152 

Abbreviations: AFP, alpha fetal protein; BMI, body mass index; CDK5R1, cyclin-dependent kinase 5 regulatory subunit 1; M, distant metastasis; N, lymph node metastasis; T, topography distribution.

Correlation between clinicopathologic features and survival

Kaplan–Meier unclosed that elevated CDK5R1 had a significant correlation with worse overall survival (OS; P=7.414e−04), disease-specific survival (DSS; P=5.642e−04), disease-free interval (DFI; P=1.785e−05) and progression-free interval (PFI; P=2.512e−06), which suggested that HCC patients with high CDK5R1 had a tendency to have shorter survival time than that with low CDK5R1 (Figure 3A–D).

Survival outcomes based on Kaplan–Meier analysis

Figure 3
Survival outcomes based on Kaplan–Meier analysis

Kaplan–Meier survival analysis showed that increased CDK5R1 was prominently associated with poor (A) OS, (B) DSS, (C) DFI, (D) PFI; DFI, disease-free interval; DSS, disease-specific disease; OS, overall survival; PFI, progression-free interval.

Figure 3
Survival outcomes based on Kaplan–Meier analysis

Kaplan–Meier survival analysis showed that increased CDK5R1 was prominently associated with poor (A) OS, (B) DSS, (C) DFI, (D) PFI; DFI, disease-free interval; DSS, disease-specific disease; OS, overall survival; PFI, progression-free interval.

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Univariate analysis for OS with Cox regression model showed that poor OS had prominently correlation with CDK5R1 expression (high vs. low; P=0.033, HR = 2.0 (95% CI [1.1–3.9])), new tumor event (yes vs. no; P=0.012, HR = 3.0 (95% CI [1.3–7.0])), tumor status (with tumor vs. tumor free; P=0.001, HR = 4.0 (95% CI [1.8–9.2])), CDK5 expression (high vs. low; P=0.032, HR = 2.4 (95% CI [1.1–5.2])), CDC25B expression (high vs. low; P=0.005, HR = 3.1 (95% CI [1.4–6.8])) (Table 3). However, at multivariate Cox regression analysis, CDK5R1 expression (high vs. low; P=0.037, HR = 1.7 (95% CI [1.0–2.7])), tumor status (with tumor vs. tumor free; P=0.004, HR = 3.3 (95% CI [1.5-7.6])), the expression of CDC25B (high vs. low; P=0.011, HR = 1.9 (95% CI [1.2-3.1])) could independently predict adverse OS (Table 3, Figure 4A). Besides, this revealed that patients with elevated CDK5R1 have a 1.7 times higher risk of adverse OS than patients with low CDK5R1 expression.

Association between clinicopathologic characteristics and survival outcome of HCC patient through univariate and multivariate Cox regression analysis

Figure 4
Association between clinicopathologic characteristics and survival outcome of HCC patient through univariate and multivariate Cox regression analysis

Panel (A) showed CDK5R1 can independently predict adverse OS. Panel (B) indicated CDK5R1 can independently predict poor DFI. Panel (C) suggested that CDK5R1 can independently predict worse PFI; DFI, disease-free interval; OS, overall survival; PFI, progression-free interval.

Figure 4
Association between clinicopathologic characteristics and survival outcome of HCC patient through univariate and multivariate Cox regression analysis

Panel (A) showed CDK5R1 can independently predict adverse OS. Panel (B) indicated CDK5R1 can independently predict poor DFI. Panel (C) suggested that CDK5R1 can independently predict worse PFI; DFI, disease-free interval; OS, overall survival; PFI, progression-free interval.

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Table 3
Association between clinicopathologic characteristics and HCC patient OS through univariate and multivariate analysis with Cox regression survival model
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 1.3 0.4-4.2 0.715    
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.6 0.4-1.0 0.064 0.8 0.6-1.0 0.084 
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 1.0 0.7-1.6 0.961    
New tumor event (yes vs. no) 3.0 1.3-7.0 0.012 0.8 0.4-1.9 0.669 
Age (>40 vs. ≤40) 4.7 0.6-34.8 0.133    
Gender (male vs. female) 0.5 0.2-1.1 0.086 1.4 0.8-2.5 0.281 
Histologic grade (G3-4 vs. G1-2) 1.6 0.7-3.3 0.247    
M (M1 vs. M0) 5.4 0.7-40.7 0.099 2.8 0.6-12.4 0.177 
N (N1 vs. N0) 4.3 0.6-31.7 0.157    
T (T3-4 vs. T1-2) 1.2 0.5-3.0 0.691    
Clinical stage (III-IV vs. I-II) 1.4 0.6-3.3 0.454    
Postoperative ablation embolization (yes vs. no) 1.1 0.4-3.2 0.870    
Radiation therapy (yes vs. no) 0.8 0.5-1.3 0.997    
Vascular invasion (yes vs. no) 1.3 0.6-2.9 0.560    
Tumor status (with tumor vs. tumor free) 4.0 1.8-9.2 0.001 3.3 1.5-7.6 0.004 
Family history (yes vs. no) 1.8 0.9-3.7 0.116    
Residual tumor (R1-2 vs. R0) 1.4 0.2-10.2 0.761    
CDK5 (high vs. low) 2.4 1.1-5.2 0.032 1.6 1.0-2.6 0.077 
CAPN2 (high vs. low) 1.4 0.6-2.9 0.426    
CAPN1 (high vs. low) 1.6 0.7-3.3 0.242    
MAPT (high vs. low) 1.3 0.6-2.8 0.447    
CDC25B (high vs. low) 3.1 1.4-6.8 0.005 1.9 1.2-3.1 0.011 
PAK1 (high vs. low) 1.5 0.7-3.0 0.310    
PPP1R1B (high vs. low) 1.0 0.5-2.2 0.947    
NTRK2 (high vs. low) 0.7 0.3-1.5 0.404    
NDEL1 (high vs. low) 0.9 0.4-2.0 0.829    
YWHAE (high vs. low) 0.9 0.4-1.9 0.840    
CDK5R1 (high vs. low) 2.0 1.1-3.9 0.033 1.7 1.0-2.7 0.037 
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 1.3 0.4-4.2 0.715    
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.6 0.4-1.0 0.064 0.8 0.6-1.0 0.084 
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 1.0 0.7-1.6 0.961    
New tumor event (yes vs. no) 3.0 1.3-7.0 0.012 0.8 0.4-1.9 0.669 
Age (>40 vs. ≤40) 4.7 0.6-34.8 0.133    
Gender (male vs. female) 0.5 0.2-1.1 0.086 1.4 0.8-2.5 0.281 
Histologic grade (G3-4 vs. G1-2) 1.6 0.7-3.3 0.247    
M (M1 vs. M0) 5.4 0.7-40.7 0.099 2.8 0.6-12.4 0.177 
N (N1 vs. N0) 4.3 0.6-31.7 0.157    
T (T3-4 vs. T1-2) 1.2 0.5-3.0 0.691    
Clinical stage (III-IV vs. I-II) 1.4 0.6-3.3 0.454    
Postoperative ablation embolization (yes vs. no) 1.1 0.4-3.2 0.870    
Radiation therapy (yes vs. no) 0.8 0.5-1.3 0.997    
Vascular invasion (yes vs. no) 1.3 0.6-2.9 0.560    
Tumor status (with tumor vs. tumor free) 4.0 1.8-9.2 0.001 3.3 1.5-7.6 0.004 
Family history (yes vs. no) 1.8 0.9-3.7 0.116    
Residual tumor (R1-2 vs. R0) 1.4 0.2-10.2 0.761    
CDK5 (high vs. low) 2.4 1.1-5.2 0.032 1.6 1.0-2.6 0.077 
CAPN2 (high vs. low) 1.4 0.6-2.9 0.426    
CAPN1 (high vs. low) 1.6 0.7-3.3 0.242    
MAPT (high vs. low) 1.3 0.6-2.8 0.447    
CDC25B (high vs. low) 3.1 1.4-6.8 0.005 1.9 1.2-3.1 0.011 
PAK1 (high vs. low) 1.5 0.7-3.0 0.310    
PPP1R1B (high vs. low) 1.0 0.5-2.2 0.947    
NTRK2 (high vs. low) 0.7 0.3-1.5 0.404    
NDEL1 (high vs. low) 0.9 0.4-2.0 0.829    
YWHAE (high vs. low) 0.9 0.4-1.9 0.840    
CDK5R1 (high vs. low) 2.0 1.1-3.9 0.033 1.7 1.0-2.7 0.037 

Abbreviations: CI, confidence interval; HR, hazard ratio; M, distant metastasis; N, lymph node metastasis; OS, overall survival; T, topography distribution.

Univariate Cox analysis of DFI disclosed that highly expressed CDK5R1 had a prominent effect on DFI (P=0.000, hazard ratio [HR]= 2.7 (95% CI [1.6–4.5])), other clinical factor, for instance TNM (T (T3-4 vs. T1-2): P=0.043, HR = 2.0 (95% CI [1.0–3.9])), clinical stage (III-IV vs. I-II) (P=0.022, hazard ratio [HR]= 2.1 (95% CI [1.1–4.1])) was also associated with shorter DFI. At multivariate analysis, CDK5R1 (high vs. low; P=0.007, hazard ratio [HR]= 3.0 (95% CI [1.4-6.7])) were the clinicopathologic characteristics that remained significantly correlated with DFI (Table 4, Figure 4B). This showed that patients with increased CDK5R1 have a 3.0 times higher risk of poor DFI than patients with low CDK5R1 expression.

Table 4
Association between clinicopathologic characteristics and HCC patient DFI through univariate and multivariate analysis with Cox regression survival model
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 2.1 0.9–4.9 0.096 5.2 1.9-14.2 0.001 
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.9 0.6–1.2 0.341    
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 0.9 0.7–1.3 0.632    
New tumor event (yes vs. no) 2.4 1.4–4.0 0.996    
Age (>40 vs.≤40) 1.0 0.4–2.3 0.926    
Gender (male vs. female) 0.9 0.5–1.6 0.599    
Histologic grade (G3-4 vs. G1-2) 1.2 0.7–2.1 0.486    
M (M1 vs. M0) 0.8 0.6–1.1 1.000    
N (N1 vs. N0) 4.2 0.6–31.4 0.159    
T (T3-4 vs. T1-2) 2.0 1.0–3.9 0.043 5.2 0.5-51.1 0.159 
Clinical stage (III-IV vs. I-II) 2.1 1.1–4.1 0.022 0.4 0.0-3.8 0.430 
Postoperative ablation embolization (yes vs. no) 2.7 1.4–5.5 0.005 1.1 0.5-2.5 0.752 
Radiation therapy (yes vs. no) 1.5 0.2–11.1 0.683    
Vascular invasion (yes vs. no) 1.0 0.5–2.0 0.910    
Tumor status (with tumor vs. tumor free) 35 13.4–93.5 0.000 36.7 13.2-101.6 0.000 
Family history (yes vs. no) 1.1 0.6–2.1 0.639    
residual tumor (R1-2 vs. R0) 1.7 1.0–2.6 0.393    
CDK5 (high vs. low) 1.6 0.9–2.9 0.082 1.1 0.6-2.1 0.751 
CAPN2 (high vs. low) 0.8 0.5–1.4 0.506    
CAPN1 (high vs. low) 1.5 0.8–2.5 0.178    
MAPT (high vs. low) 1.2 0.7–2.1 0.546    
CDC25B (high vs. low) 2.1 1.2–3.7 0.007 1.8 1.0-3.4 0.056 
PAK1 (high vs. low) 1.1 0.6–2.0 0.676    
PPP1R1B (high vs. low) 0.8 0.5–1.5 0.537    
NTRK2 (high vs. low) 0.9 0.5–1.5 0.567    
NDEL1 (high vs. low) 0.9 0.5–1.6 0.682    
YWHAE (high vs. low) 1.0 0.6–1.7 0.987    
CDK5R1 (high vs. low) 2.7 1.6–4.5 0.000 3.0 1.4-6.7 0.007 
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 2.1 0.9–4.9 0.096 5.2 1.9-14.2 0.001 
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.9 0.6–1.2 0.341    
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 0.9 0.7–1.3 0.632    
New tumor event (yes vs. no) 2.4 1.4–4.0 0.996    
Age (>40 vs.≤40) 1.0 0.4–2.3 0.926    
Gender (male vs. female) 0.9 0.5–1.6 0.599    
Histologic grade (G3-4 vs. G1-2) 1.2 0.7–2.1 0.486    
M (M1 vs. M0) 0.8 0.6–1.1 1.000    
N (N1 vs. N0) 4.2 0.6–31.4 0.159    
T (T3-4 vs. T1-2) 2.0 1.0–3.9 0.043 5.2 0.5-51.1 0.159 
Clinical stage (III-IV vs. I-II) 2.1 1.1–4.1 0.022 0.4 0.0-3.8 0.430 
Postoperative ablation embolization (yes vs. no) 2.7 1.4–5.5 0.005 1.1 0.5-2.5 0.752 
Radiation therapy (yes vs. no) 1.5 0.2–11.1 0.683    
Vascular invasion (yes vs. no) 1.0 0.5–2.0 0.910    
Tumor status (with tumor vs. tumor free) 35 13.4–93.5 0.000 36.7 13.2-101.6 0.000 
Family history (yes vs. no) 1.1 0.6–2.1 0.639    
residual tumor (R1-2 vs. R0) 1.7 1.0–2.6 0.393    
CDK5 (high vs. low) 1.6 0.9–2.9 0.082 1.1 0.6-2.1 0.751 
CAPN2 (high vs. low) 0.8 0.5–1.4 0.506    
CAPN1 (high vs. low) 1.5 0.8–2.5 0.178    
MAPT (high vs. low) 1.2 0.7–2.1 0.546    
CDC25B (high vs. low) 2.1 1.2–3.7 0.007 1.8 1.0-3.4 0.056 
PAK1 (high vs. low) 1.1 0.6–2.0 0.676    
PPP1R1B (high vs. low) 0.8 0.5–1.5 0.537    
NTRK2 (high vs. low) 0.9 0.5–1.5 0.567    
NDEL1 (high vs. low) 0.9 0.5–1.6 0.682    
YWHAE (high vs. low) 1.0 0.6–1.7 0.987    
CDK5R1 (high vs. low) 2.7 1.6–4.5 0.000 3.0 1.4-6.7 0.007 

Abbreviations: CI, confidence interval; DFI, disease-free interval; HR, hazard ratio; M, distant metastasis; N, lymph node metastasis; T, topography distribution.

Univariate Cox regression analysis of progression free interval (PFI) revealed that worse PFI was significantly associated with advanced TNM (T (T3-4 vs. T1-2): P=0.047, hazard ratio [HR]= 1.9 (95% CI [1.0–3.6])), clinical stage (III-IV vs. I-II) (P=0.026, HR = 2.0 (95% CI [1.1–3.8])), postoperative ablation embolization (yes vs. no) (P=0.003, HR = 2.7 (95% CI [1.4–5.1])), tumor status (with tumor vs. tumor free) (P=0.000, HR = 37.1 (95% CI [14.2–97.4])), residual tumor (R1-2 vs. R0) (P=0.001, HR = 6.4 (95% CI [2.2–18.3])), elevated CDK5R1 (P=0.000, HR = 2.5 (95% CI [1.5–4.2])), as shown in Table 4. Whereafter, multivariate analysis with Cox regression model uncovered that high expression of CDK5R1 was an independent prognostic factor for PFI, with an HR of 2.8 (P=0.007, 95% CI [1.3–5.9]), other clinical factor, for instance, the expression of CDC25B (high vs. low) (P=0.044, HR = 1.8 (95% CI [1.0–3.2])) was also independently associated with poor PFI (Table 5, Figure 4C). This uncovered that patients with highly expressed CDK5R1 have a 2.8 times higher risk of poor PFI than patients with low CDK5R1 expression.

Table 5
Association between clinicopathologic characteristics and HCC patient PFI through univariate and multivariate analysis with Cox regression survival model
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 1.8 0.8–4.3 0.164    
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.8 0.6–1.1 0.244    
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 1.0 0.7–1.3 0.914    
New tumor event (yes vs. no) 3.4 2.1–5.7 0.995    
Age (>40 vs.≤40) 0.9 0.4–2.1 0.887    
Gender (male vs. female) 0.8 0.5–1.4 0.406    
Histologic grade (G3-4 vs. G1-2) 1.1 0.7–1.9 0.645    
M (M1 vs. M0) 5.0 0.7–37.4 0.116    
N (N1 vs. N0) 3.7 0.5–27.5 0.197    
T (T3-4 vs. T1-2) 1.9 1.0–3.6 0.047 1.1 0.1–8.9 0.925 
Clinical stage (III-IV vs. I-II) 2.0 1.1–3.8 0.026 2.0 0.2–15.5 0.525 
Postoperative ablation embolization (yes vs. no) 2.7 1.4–5.1 0.003 1.2 0.6–2.4 0.646 
Radiation therapy (yes vs. no) 1.3 0.2–9.6 0.787    
Vascular invasion (yes vs. no) 1.2 0.7–2.1 0.590    
Tumor status (with tumor vs. tumor free) 37.1 14.2–97.4 0.000 33.2 12.1–90.9 0.000 
Family history (yes vs. no) 1.1 0.6–1.9 0.785    
residual tumor (R1-2 vs. R0) 6.4 2.2–18.3 0.001 3.8 1.2–11.7 0.021 
CDK5 (high vs. low) 1.5 0.9–2.5 0.131    
CAPN2 (high vs. low) 1.0 0.6–1.7 0.978    
CAPN1 (high vs. low) 1.4 0.8–2.4 0.186    
MAPT (high vs. low) 1.1 0.7–1.9 0.665    
CDC25B (high vs. low) 2.1 1.2–3.5 0.007 1.8 1.0–3.2 0.044 
PAK1 (high vs. low) 1.3 0.8–2.2 0.350    
PPP1R1B (high vs. low) 1.0 0.6–1.6 0.858    
NTRK2 (high vs. low) 0.9 0.6–1.6 0.796    
NDEL1 (high vs. low) 1.0 0.6–1.8 0.870    
YWHAE (high vs. low) 1.1 0.6–1.8 0.797    
CDK5R1 (high vs. low) 2.5 1.5–4.2 0.000 2.8 1.3–5.9 0.007 
CharacteristicsUnivariate analysisMultivariate analysis
HR95%CIP-valueHR95%CIP-value
Child-Pugh (B-C vs. A) 1.8 0.8–4.3 0.164    
Risk factor (Alcohol consumption and/or viral hepatitis vs. neither) 0.8 0.6–1.1 0.244    
AFP (AFP≥400/20≤AFP<400 vs. AFP<20) 1.0 0.7–1.3 0.914    
New tumor event (yes vs. no) 3.4 2.1–5.7 0.995    
Age (>40 vs.≤40) 0.9 0.4–2.1 0.887    
Gender (male vs. female) 0.8 0.5–1.4 0.406    
Histologic grade (G3-4 vs. G1-2) 1.1 0.7–1.9 0.645    
M (M1 vs. M0) 5.0 0.7–37.4 0.116    
N (N1 vs. N0) 3.7 0.5–27.5 0.197    
T (T3-4 vs. T1-2) 1.9 1.0–3.6 0.047 1.1 0.1–8.9 0.925 
Clinical stage (III-IV vs. I-II) 2.0 1.1–3.8 0.026 2.0 0.2–15.5 0.525 
Postoperative ablation embolization (yes vs. no) 2.7 1.4–5.1 0.003 1.2 0.6–2.4 0.646 
Radiation therapy (yes vs. no) 1.3 0.2–9.6 0.787    
Vascular invasion (yes vs. no) 1.2 0.7–2.1 0.590    
Tumor status (with tumor vs. tumor free) 37.1 14.2–97.4 0.000 33.2 12.1–90.9 0.000 
Family history (yes vs. no) 1.1 0.6–1.9 0.785    
residual tumor (R1-2 vs. R0) 6.4 2.2–18.3 0.001 3.8 1.2–11.7 0.021 
CDK5 (high vs. low) 1.5 0.9–2.5 0.131    
CAPN2 (high vs. low) 1.0 0.6–1.7 0.978    
CAPN1 (high vs. low) 1.4 0.8–2.4 0.186    
MAPT (high vs. low) 1.1 0.7–1.9 0.665    
CDC25B (high vs. low) 2.1 1.2–3.5 0.007 1.8 1.0–3.2 0.044 
PAK1 (high vs. low) 1.3 0.8–2.2 0.350    
PPP1R1B (high vs. low) 1.0 0.6–1.6 0.858    
NTRK2 (high vs. low) 0.9 0.6–1.6 0.796    
NDEL1 (high vs. low) 1.0 0.6–1.8 0.870    
YWHAE (high vs. low) 1.1 0.6–1.8 0.797    
CDK5R1 (high vs. low) 2.5 1.5–4.2 0.000 2.8 1.3–5.9 0.007 

Abbreviations: CI, confidence interval; HR, hazard ratio; M, distant metastasis; N, lymph node metastasis; PFI, progression free interval; T, topography distribution.

CDK5R1-related signaling pathway performed on GSEA

We employed Gene Set Enrichment Analysis (GSEA) to screen significantly activated signaling pathways between high and low CDK5R1 expression phenotype group, FDR <0.05 and NOM P-val < 0.05 indicated significant differences in enrichment of MSigDB collection (c2.cp.kegg.v7.0.symbols). In our analysis, 2 signaling pathways that were prominently enriched in high CDK5R1 expression phenotype were filtered out, including notch signaling pathway and non-small cell lung cancer. (Figure 5A, Table 6).

Enrichment plots from gene set enrichment analysis (GSEA) and PPI network of CDK5R1

Figure 5
Enrichment plots from gene set enrichment analysis (GSEA) and PPI network of CDK5R1

(A) Results of GSEA showed notch signaling pathway were differentially enriched in high CDK5R1 expression phenotype. (B) PPI network of CDK5R1 suggested that CDK5R1 had close relationship with CDK5; ES, enrichment score; NES, normalized ES; FDR, false discovery rate; NOM P-val, normalized P-value; CDK5, cyclin-dependent kinase 5; CDK5R1, cyclin-dependent kinase 5 regulatory subunit 1; PPI, protein–protein interaction.

Figure 5
Enrichment plots from gene set enrichment analysis (GSEA) and PPI network of CDK5R1

(A) Results of GSEA showed notch signaling pathway were differentially enriched in high CDK5R1 expression phenotype. (B) PPI network of CDK5R1 suggested that CDK5R1 had close relationship with CDK5; ES, enrichment score; NES, normalized ES; FDR, false discovery rate; NOM P-val, normalized P-value; CDK5, cyclin-dependent kinase 5; CDK5R1, cyclin-dependent kinase 5 regulatory subunit 1; PPI, protein–protein interaction.

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Table 6
Gene sets enriched in phenotype high.
MSigDB collectionGene set nameNESNOM P-valFDR q-val
c2.cp.kegg. KEGG_NOTCH_SIGNALING_PATHWAY 1.76 0.008 1.000 
v7.0.symbols. gmt [Curated] KEGG_NON_SMALL_CELL_LUNG_CANCER 1.60 0.040 1.000 
MSigDB collectionGene set nameNESNOM P-valFDR q-val
c2.cp.kegg. KEGG_NOTCH_SIGNALING_PATHWAY 1.76 0.008 1.000 
v7.0.symbols. gmt [Curated] KEGG_NON_SMALL_CELL_LUNG_CANCER 1.60 0.040 1.000 

Abbreviations: FDR, false discovery rate; NES, normalized enrichment score; NOM, nominal. Gene sets with NOM P-val < 0.05 and FDR q-val < 0.05 are considered as significant.

CDK5R1-associated PPI network

The CDK5R1-associated PPI network was established with 11 points, 27 edges and an average point degree of 4.91(Figure 5B). The PPI network showed that some genes had close relationship with CDK5R1, for instance, CDK5, CAPN2, CAPN1, MAPT, CDC25B, PAK1, PPP1R1B, NTRK2, NDEL1 and YWHAE.

Despite considerable progress has been achieved in recent years, the morbidity and mortality of HCC are still increasing. Effective prediction of prognosis is of great significance for improving the survival of patients with HCC. However, so far, the prognostic biomarker has been limited. Although accumulative studies have demonstrated the clinical significance of CDK5R1 in various cancer types, up to date, the effect of CDK5R1 on HCC has not been reported. Therefore, a better understanding of the role of CDK5R1 in HCC and its potential prognostic value, as well as molecular mechanisms underlying its effects are required.

Up to date, there have been no reports on the role of CDK5R1 in HCC, but to our knowledge, CDK5R1 encodes the activator p35 of CDK5, which must be combined with the activator to work and thus CDK5R1 plays a pivotal role in regulating the appropriate activity of CDK5 [8]. That is to say, CDK5R1 has a close relationship with CDK5, which is consistent with our results in PPI network. Many studies have demonstrated that elevated CDK5R1 (p35) promotes the overexpression and activation of CDK5, which in turn promotes the initiation, progression, and metastasis of various tumors [11–15]. Accumulative studies have been proved that CDK5 is overexpressed and activated in HCC, and its excessive activation promotes the initiation and progression of HCC. Inhibition of CDK5 can increase the sensitivity of HCC cells to DNA-damaging agents and improve the responsiveness of patients with advanced HCC to sorafenib [19,20]; CDK5 knockout can inhibit the proliferation and promote apoptosis of HCC cells [21]. Taken together, we speculated that CDK5R1 may also play a critical role in the initiation, progression and metastasis of HCC.

In the present study, high-throughput RNA-seq data provided evidence that CDK5R1 was overexpressed in HCC tissues and an elevated expression of CDK5R1 had a close relationship with worse histologic grade, advanced clinical stage, poorer TNM, new tumor event, higher serum AFP value as well as shorter survival time. These suggested that there may be a high probability of HCC recurrence, invasion and metastasis in patients with elevated CDK5R1, and highly expressed CDK5R1 may herald poor prognosis. Further, univariate and multivariate Cox regression analysis disclosed that under the influence of excluding other clinicopathological factors such as genes closely related to CDK5R1, CDK5R1 was still the factor that can independently predict poor OS, DFI and PFI. Although the gene CDC25B, which is strongly associated with CDK5R1, may also independently predict poor OS and PFI.

We further investigated the function of CDK5R1 and the probable mechanism underlying the effects of CDK5R1 on the progression and metastasis HCC based on GSEA. GSEA has wide applicability and is one of the most commonly used approaches for path enrichment analysis. Compared with traditional pathway enrichment analysis such as gene ontology (GO) and Kyoto Gene and Genome Encyclopedia (KEGG), GSEA can detect the expression changes of gene sets rather than individual genes, and GSEA can detect subtle enrichment signals, which makes the results more reliable and flexible [16]; However, GSEA’s functional class scoring (FCS) approach has some limitations. When FCS analyses each pathway, it is likely to treat genes with different fold changes equally, although some genes with larger fold changes should receive greater weight, which may overlook the biological significance of certain genes and their complex interconnections. In addition, some pathway annotation information is insufficient, which makes it difficult to set the appropriate threshold to determine the gene set. Some genes also have insufficient annotation information, which reduces the sensitivity of GSEA detection [22]. As there is little literature on CDK5R1, with the performance of GSEA, we only found that notch signaling pathway and non-small cell lung cancer were significantly enriched in the CDK5R1 high expression phenotype.

Cancer stem cell is the origin of tumor, it promotes the growth and development of tumor cells and is an important cause of tumor recurrence [23–25]. In addition, cancer stem cells resist chemotherapy and radiation and are difficult to eradicate, which can lead to recurrence and metastasis for years after therapeutic treatment [26]. Studies have shown that tumor stem cells can make patients more susceptible to recurrence after HCC surgical resection [27]. The notch signaling pathway is one of the pivotal pathways that regulate the differentiation and development of cancer stem cells. It plays a key role in the self-renewal and angiogenesis of cancer stem cells. The abnormal notch signaling pathway as a carcinogen is closely linked to the occurrence, progression, and metastasis of a variety of cancers [28]. Notch signaling pathway blockers can delay the generation of tumors and effectively reduce the occurrence of tumors and self-renewal of cancer stem cells, which is expected to cure tumors by completely removing cancer stem cells [23]. Vitro experiments show that vascular endothelial CDK5 inhibitors can influence the migration and proliferation of vascular endothelial cells by inhibiting NOTCH-driven angiogenesis, thereby affecting tumor angiogenesis and ultimately inhibiting tumor growth [29]. Previous studies have also reported that DAPT, a Notch inhibitor in the nervous system, can down-regulate CDK5 activity [30]. In summary, CDK5R1 may participate in the progression and migration of HCC by regulating the notch signaling pathway. The present study is the first to report the role of CDK5R1 in HCC and the regulatory effect of CDK5R1 on the notch signaling pathway in HCC.

Although our current study has improved our understanding of the role of CDK5R1 in HCC, there are still some limitations. First, the sample size of cancer patients in the TCGA database was significantly higher than that of the control patients. Second, the absence of clinical factors in the public database, such as specific details of the patient’s medication and/or surgical treatment, also affects the patient’s prognosis. Third, the protein level of CDK5R1 in HCC and its direct role in HCC progression and metastasis remain to be further validated in vitro. Fourth, due to the limitations of GSEA, and so far, too little research has been done on CDK5R1, other important signaling pathways regulated by CDK5R1 may be missed. Finally, the present study is a retrospective study, and prospective studies should be conducted in the future to make up for the limitations of the retrospective study. Although the present study has some limitations, it does provide clues for studying the function of CDK5R1 in HCC, and provides targets and potential prognostic markers for the treatment of HCC.

Patients with elevated CDK5R1 may have a poor prognosis, increased CDK5R1 may act as a promising independent prognostic marker of poor survival and therapeutic target in HCC. Besides, it may participate in the progression and migration of HCC through regulating the notch signaling pathway.

The datasets generated and/or analyzed during the current study are available in the TCGA repository, https://portal.gdc.cancer.gov/repository?facetTab=cases; and GEO repository https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE121248 and https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE62232.

The authors declare that there are no competing interests associated with the manuscript.

This work was supported by Zhou Daihan traditional Chinese medicine master inheritance studio project; Shenzhen ‘three-name project’ Zhou Daihan TCM master TCM oncology team project of Guangzhou university of Chinese medicine; Major research projects of Guangzhou university of Chinese medicine in first-class disciplines [grant number A1-AFD018181A29]; Lingnan Traditional Chinese Medicine Tumor Academic School Inheritance Studio Project [grant number 2016LP03]; National Natural Science Foundation of China: Research on the mechanism of ‘Yi-Qi-Chu-Tan Fang’ against lung cancer invasion and metastasis based on tumor-related macrophage transformation [grant number 82074382]; Guangdong Provincial Basic and Applied Basic Research Foundation Natural Science Foundation of China: From TLR4/NF-κB signaling pathway to explore the effect of ‘Yi-Qi-Chu-Tan Fang’ on the polarization of tumor-associated macrophages.

All authors contributed to the paper and agreed to be responsible for all aspects of the work. Conceptualization: Z.Z and Z.C; Data curation: Z.Z, Z.C; Funding acquisition: E.Z; Methodology: Z.Z, Z.C, E.Z, Y.T and H.H; Visualization: Z.Z and Z.C; Writing—original draft: Z.Z; Writing—review and editing: Z.C, E.Z, H.H and YT; Language editing, Y.T and H.H.

No ethics approval was required for this work. All utilized public data sets were generated by others who obtained ethical approval.

CDK5

cyclin-dependent kinase 5

CDK5R1

cyclin-dependent kinase 5 regulatory subunit 1

DFI

disease-free interval

DSS

disease-specific survival

GEO

Gene Expression Omnibus

GSEA

Gene Set Enrichment Analysis

OS

overall survival

PFI

progression-free interval

1.
Villanueva
A.
(
2019
)
Hepatocellular Carcinoma
.
N. Engl. J. Med.
380
,
1450
1462
[PubMed]
2.
Zhou
J.
et al.
(
2018
)
Guidelines for Diagnosis and Treatment of Primary Liver Cancer in China (2017 Edition)
.
Liver Cancer
7
,
235
260
[PubMed]
3.
Erridge
S.
et al.
(
2017
)
Meta-analysis of determinants of survival following treatment of recurrent hepatocellular carcinoma
.
Br. J. Surg.
104
,
1433
1442
[PubMed]
4.
Yuen
M.F.
and
Lai
C.L.
(
2003
)
Screening for hepatocellular carcinoma: survival benefit and cost-effectiveness
.
Ann. Oncol.
14
,
1463
1467
[PubMed]
5.
Petrizzo
A.
et al.
(
2018
)
Cellular prognostic markers in hepatitis-related hepatocellular carcinoma
.
Infect. Agent Cancer
13
,
10
[PubMed]
6.
Arif
A.
(
2012
)
Extraneuronal activities and regulatory mechanisms of the atypical cyclin-dependent kinase Cdk5
.
Biochem. Pharmacol.
84
,
985
993
[PubMed]
7.
Lintas
C.
et al.
(
2019
)
An Interstitial 17q11.2 de novo Deletion Involving the CDK5R1 Gene in a High-Functioning Autistic Patient
.
Mol. Syndromol.
9
,
247
252
[PubMed]
8.
Moncini
S.
et al.
(
2011
)
The role of miR-103 and miR-107 in regulation of CDK5R1 expression and in cellular migration
.
PLoS ONE
6
,
e20038
[PubMed]
9.
Contreras-Vallejos
E.
,
Utreras
E.
and
Gonzalez-Billault
C.
(
2012
)
Going out of the brain: non-nervous system physiological and pathological functions of Cdk5
.
Cell. Signal.
24
,
44
52
[PubMed]
10.
Pozo
K.
et al.
(
2013
)
The role of Cdk5 in neuroendocrine thyroid cancer
.
Cancer Cell
24
,
499
511
[PubMed]
11.
Demelash
A.
et al.
(
2012
)
Achaete-scute homologue-1 (ASH1) stimulates migration of lung cancer cells through Cdk5/p35 pathway
.
Mol. Biol. Cell
23
,
2856
2866
[PubMed]
12.
Bisht
S.
et al.
(
2015
)
Cyclin-Dependent Kinase 5 (CDK5) Controls Melanoma Cell Motility, Invasiveness, and Metastatic Spread-Identification of a Promising Novel therapeutic target
.
Transl. Oncol.
8
,
295
307
[PubMed]
13.
Feldmann
G.
et al.
(
2010
)
Inhibiting the cyclin-dependent kinase CDK5 blocks pancreatic cancer formation and progression through the suppression of Ras-Ral signaling
.
Cancer Res.
70
,
4460
4469
[PubMed]
14.
Farina
F.M.
et al.
(
2017
)
MicroRNA-26a/cyclin-dependent kinase 5 axis controls proliferation, apoptosis and in vivo tumor growth of diffuse large B-cell lymphoma cell lines
.
Cell Death Dis.
8
,
e2890
[PubMed]
15.
Sun
S.S.
et al.
(
2015
)
Targeting STAT3/miR-21 axis inhibits epithelial-mesenchymal transition via regulating CDK5 in head and neck squamous cell carcinoma
.
Mol. Cancer
14
,
213
[PubMed]
16.
Subramanian
A.
et al.
(
2005
)
Gene set enrichment analysis: a knowledge-based approach for interpreting genome-wide expression profiles
.
Proc. Natl. Acad. Sci. U.S.A.
102
,
15545
15550
[PubMed]
17.
Szklarczyk
D.
et al.
(
2017
)
The STRING database in 2017: quality-controlled protein-protein association networks, made broadly accessible
.
Nucleic. Acids. Res.
45
,
D362
D368
[PubMed]
18.
Shannon
P.
et al.
(
2003
)
Cytoscape: a software environment for integrated models of biomolecular interaction networks
.
Genome Res.
13
,
2498
2504
[PubMed]
19.
Ehrlich
S.M.
et al.
(
2015
)
Targeting cyclin dependent kinase 5 in hepatocellular carcinoma–A novel therapeutic approach
.
J. Hepatol.
63
,
102
113
[PubMed]
20.
Ardelt
M.A.
et al.
(
2019
)
Inhibition of Cyclin-Dependent Kinase 5: A Strategy to Improve Sorafenib Response in Hepatocellular Carcinoma Therapy
.
Hepatology
69
,
376
393
[PubMed]
21.
Zhang
R.
et al.
(
2017
)
Clinical role and biological function of CDK5 in hepatocellular carcinoma: A study based on immunohistochemistry, RNA-seq and in vitro investigation
.
Oncotarget
8
,
108333
108354
[PubMed]
22.
Khatri
P.
,
Sirota
M.
and
Butte
A.J.
(
2012
)
Ten years of pathway analysis: current approaches and outstanding challenges
.
PLoS Comput. Biol.
8
,
e1002375
[PubMed]
23.
Venkatesh
V.
et al.
(
2018
)
Targeting Notch signalling pathway of cancer stem cells
.
Stem Cell Investig.
5
,
5
[PubMed]
24.
Holohan
C.
et al.
(
2013
)
Cancer drug resistance: an evolving paradigm
.
Nat. Rev. Cancer
13
,
714
726
[PubMed]
25.
Kreso
A.
and
Dick
J.E.
(
2014
)
Evolution of the cancer stem cell model
.
Cell Stem Cell
14
,
275
291
[PubMed]
26.
Malik
B.
and
Nie
D.
(
2012
)
Cancer stem cells and resistance to chemo and radio therapy
.
Front. Biosci. (Elite Ed.)
4
,
2142
2149
[PubMed]
27.
Yang
X.R.
et al.
(
2010
)
High expression levels of putative hepatic stem/progenitor cell biomarkers related to tumour angiogenesis and poor prognosis of hepatocellular carcinoma
.
Gut
59
,
953
962
[PubMed]
28.
Brzozowa-Zasada
M.
et al.
(
2016
)
Notch signalling pathway as an oncogenic factor involved in cancer development
.
Contemp. Oncol. (Pozn)
20
,
267
272
[PubMed]
29.
Merk
H.
et al.
(
2016
)
Inhibition of endothelial Cdk5 reduces tumor growth by promoting non-productive angiogenesis
.
Oncotarget
7
,
6088
6104
[PubMed]
30.
Kanungo
J.
et al.
(
2008
)
The Notch signaling inhibitor DAPT down-regulates cdk5 activity and modulates the distribution of neuronal cytoskeletal proteins
.
J. Neurochem.
106
,
2236
2248
[PubMed]

Author notes

*

These authors contributed equally to this work.

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