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Identification of tumor-infiltrating immune cells and prognostic validation of tumor- infiltrating mast cells in adrenocortical carcinoma: results from bioinformatics and real-world data

Xi Tiana,b*, Wenhao Xua,b*, Yuchen Wanga,b*, Aihetaimujiang Anwaiera,b, Hongkai Wanga,b, Fangning Wana,b, Yu Zhua,b, Dalong Caoa,b, Guohai Shia,b, Yiping Zhua,b, Yuanyuan Qua,b, Hailiang Zhanga,b, and Dingwei Yea,b

ªDepartment of Urology, Fudan University Shanghai Cancer Center, Shanghai, China; bDepartment of Oncology, Shanghai Medical College, Fudan University, Shanghai, P.R. China

ABSTRACT

Objective: The purpose of this study was to explore the composition of tumor-infiltrating immune cells (TIIC) and prognostic significance of tumor-infiltrating mast cells (TIMC) in adrenocortical carcinoma (ACC). Methods: The gene expression profiles of ACC were downloaded from the Cancer Genome Atlas (TCGA) and Gene Expression Omnibus (GSE90713, GSE12368). The abundance of TIICs in ACC samples was calculated by CIBERSORT algorithm and immunohistochemistry was used to identify mast cells of 39 tumor samples from Fudan University Shanghai Cancer Center (FUSCC). Differentially expressed genes (DEGs) were analyzed by LIMMA package using R software. Survival analysis was analyzed by Kaplan-Meier method and Cox regression models.

Results: The abundance of mast cells (p = . 008) was positively correlated with ACC patients’ outcome in TCGA cohort and was also positively correlated with both overall survival (p < . 05) and progression-free survival (p < . 05) in FUSCC cohort. Different TIMC infiltrations showed significant changes in signaling pathways including DNA replication, nuclear chromosome segregation, and meiotic cell cycle process of ACC. In addition, elevated expression of eight hub genes (KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2) related to the abundance of TIMC in ACC was significantly correlated with the poor prognosis of the patients.

Conclusion: In conclusion, higher TIMC infiltration was positively correlated with ACC patients’ outcome in both TCGA and FUSCC cohort. Lower TIMC infiltration and elevated expression of hub genes (KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2) are markedly correlated with aggressive progression and poor prognosis, which might shed lights on novel targets for treatment strategies.

ARTICLE HISTORY

Received 2 April 2020 Revised 11 June 2020 Accepted 12 June 2020

KEYWORDS

Adrenocortical carcinoma; tumor infiltrating immune cells; tumor infiltrating mast cells; CIBERSORT; differentially expressed genes

Introduction

Adrenocortical carcinoma (ACC) is a very rare endocrine malignancy, the Surveillance, Epidemiology, and End Results (SEER) database estimates that the annual incidence rate is about 0.72 per million cases, resulting in 0.2% of all cancer deaths in the United States.1 Due to difficulties in early diagnosis of ACC, most patients have appeared metastasis at first diagnosis, and thus leading to few opportunities for surgery and extremely poor prognosis.2 At present, mitotane remains the only nemesis approved by the U.S. Food and Drug Administration for ACC treatment,3 and high-risk ACC patients can only be treated with mitotane alone or in combination with cytotoxic drugs, while these treatments could merely bring them limited survival benefits.4 In recent years, management of immune microenvironment and immunotherapy development has made a great breakthrough in many cancers, including melanoma, clear cell renal cell carcinoma, non-small cell lung cancer, etc.5,6 Hence, future progress and opportunities in immunotherapy may be able to bring novel treatment managements of ACC.7 Tumor

immune microenvironment plays an important role in the occurrence and progression of cancer and can greatly affect the effect of immunotherapy.8 Therefore, it is of great signifi- cance to evaluate tumor immune microenvironment and investigate major promotion to cancer aggressive progression and unfavorable prognosis of ACC.

In the past few decades, more and more evidences show that the malignant phenotype of tumor is determined by the inherent activity of tumor cells and the complex interaction of various cell types in the tumor microenvironment (TME), especially the tumor-infiltrating immune cells (TIICs).9,10 There is a rising awareness that TIICs can interact with the tumor cells, change the tumor immune microenvironment, and even affect the management of cancer.11,12 Ren et al.13 reported that the interaction between stromal cells and epithelial cells affects the progression of pancreatic cancer and Bingle L et al.14 reported that tumor-related macrophage infiltration has a negative effect on the prognosis of patients with breast and bladder cancer. However, the role TIICs play in ACC remains blurred and it needs to be further studied.

CONTACT Ding-Wei Ye

dwyelie@163.com

*Contribute equally

& Supplemental data for this article can be accessed in publisher’s website.

@ 2020 The Author(s). Published with license by Taylor & Francis Group, LLC.

Mast cell is a kind of granulocyte immune cell, which exists in tissues exposed to the external environment. Current studies revealed that the function of tumor-infiltrating mast cell (TIMC) varies greatly with the type of tumor. For instance, Rajput AB et al15 found that matrix-infiltrating mast cells suggest a good prognosis for invasive breast cancer. While Imada A et al.16 claimed that stromal mast cells correlate with angiogenesis and poor outcome in stage I lung adenocarcinoma.

To investigate the differential infiltration amplification of TIICs and elucidate their potential prognostic value in ACC patients, we measured TIICs of ACC by CIBERSORT algo- rithm and constructed interaction networks of differentially expressed genes (DEGs) by LIMMA package using R software. We hypothesized that the possible carcinogenic activity of TIMC may impact multiple hallmarks related to tumor development and lead to poor prognosis of ACC. These findings may reveal potential therapeutic targets and provide insights into the molecular mechanisms of ACC microenvironment.

Materials and methods

An overview of this work

In this work, we firstly used CIBERSRT algorithm to eval- uate the microenvironment of 79 ACC in TCGA cohort. Then, survival analyses were applied to identify the prog- nostic value of tumor-infiltrating immune cells (TIICs), and tumor-infiltrating mast cells (TIMCs) were found positively correlated with patients’ overall survival. In the next step, GSE90713, GSE12368 and FUSCC cohort were used to identify TIMC’s role in microenvironment and prognostic value as external validation. Finally, correlation analysis was applied to evaluate the relationship between TIMCs and other kinds of TIICs. Gene set enrichment analysis and identification of differentially expressed genes were used to explore potential mechanism behind TIMC’s positive prognostic value. A flow chart is drawn in Supplementary figure 1.

Evaluation of TIICs in ACC

The Gene expression profiles and clinical information of patients with ACC were downloaded from the Cancer Genome Atlas (TCGA). Clinical information and transcrip- tome data are combined into a matrix. The CIBERSORT17 analysis tool is a deconvolution algorithm that uses a set of barcode gene expression values (corresponding to a “signature matrix” of 547 genes) to accurately determine the composition of immune cells in tumor sample data. The expression profile was normalized and R software was used to run the CIBERSORT algorithm with the number of permutations was set to 100 to explore the proportion of 22 kinds of TIICs in ACC samples. The bar chart and heat map were drawn to show the composition of TIICs of each sample; correlations between TIICs’ abundance were dis- cussed and a heat map was drawn to display the correlation between cells using pheatmap package.18 TIMC abundance

was equal to the sum of abundance of mast cell resting and mast cell activated.

Survival analysis of TIICs abundance of ACC

After calculating the TIICs’ abundance, we sought to identify whether the kinds of TIICs have prognostic value. Clinical information of patients and TIICs’ abundance data are com- bined into a matrix. According to the median of TIICs’ abun- dance, the samples were divided into high abundance group and low abundance group. R software was applied to draw survival curves to visualize the impact of TIICs’ abundance on patients’ overall survival using survival package.19 TIICs with prognostic value were included in the multivariate Cox regression analysis.

Evaluating microenvironment of ACC and normal tissues from Gene Expression Omnibus (GEO) data sets

The p value of TIMC is the smallest in multivariate Cox regression analysis, so we aim to explore the impact of TIMC on ACC microenvironment in other cohorts. Two chip datasets GSE90713 and GSE12368 were downloaded from GEO (Affymetrix GPL15207 platform, Affymetrix GPL570 platform, respectively). The corresponding genes transformed into a probe were converted into a symbol according to the annotation information on the platform. CIBERSORT was applied to evaluate the microenvironment of ACC and normal tissues.

Validation of TIMCs’ prognostic significance in Fudan university Shanghai cancer center cohort

To further validate TIMCs’ prognostic significance, real- world data were also collected from our institute. This study included 39 ACC patients who underwent surgical treatment from Fudan University Shanghai Cancer Center (FUSCC) between 2013 and 2019, and tumor specimens were obtained with informed consent. Anti-tryptase mono- clonal antibody (Ab2378, diluted 1:10,000; Abcam) was used to identify mast cells using immunohistochemistry (IHC). The positive or negative staining was evaluated by two experienced pathologists and determined as follows. The overall IHC score from 0 to 12 was evaluated accord- ing to the multiplying of the staining intensity and extent score, as previously described.20 The IHC scores 0-3, 4-12 are defined as low TIMC group and high TIMC group. Scatter diagram was drawn to explore the correlations between TIMC abundance with phenotype, and Kaplan- Meier method was applied to validate TIMC’s prognostic significance by comparing two groups survival rates.

Impact of TIMC on ACC microenvironment

Correlation analysis, Gene set enrichment analysis (GSEA), and differential gene expression analysis were applied to explore potential mechanism behind TIMC’s positive prognos- tic value. According to the median value of TIMC abundance, ACC samples were divided into high TIMC group and low

Figure 1. CIBERSRT algorithm was used to evaluate the microenvironment of 79 ACC in TCGA cohort. (a-b) The abundance of TIICs in each sample is different and it can also be found that most of the TIICs in ACC are T cells, natural killer cells, macrophages, etc. (c) Different kinds of TIICs in ACC can interact with each other. For example, T cells CD8 is positively correlated with macrophages M1 (Correlation coefficient = 0.48) and T cells CD4 memory activated is positively correlated with B cells memory (Correlation coefficient = 0.48).

a

C

b

TIMC group. To investigate the impact of TIMC on ACC microenvironment, other types of TIICs’ abundance in two groups were calculated and illustrated. Correlation analysis was applied, and Spearman’rho and p values were calculated to confirm the relationship between TIMC and other kinds of TIICs. GSEA was used to explore the potential involved signal pathways of ACC microenvironment.

The limma package21 was used to analyze the data (adjusted p-value < 0.05 and fold change of at least 2x) and volcano map was drawn. In the high TIMC group, the genes with increased expression were marked with red, and the genes with decreased expression were marked with blue. Heat map was drawn accord- ing to the expression matrix of the samples to show the difference of gene expression between the two groups. Biological character- istics, such as biological process (BP), molecular functional (MF) and cellular component (CC), were extracted from gene ontology (GO)22 enrichment analysis to determine the role of DEGs in ACC. The pathways associated with DEGs were explored by searching the Kyoto Encyclopedia of Genome and Genome (KEGG)23 which is a database resource for understanding advanced functions and biological systems from large-scale mole- cular data generated by high-throughput experimental techni- ques. Functional enrichment analyses were completed by using ClusterProfiler package.24

Further screening, identification and functional enrichment analysis on DEGs

To find the most important genes which exert subtle impact on TIMC abundance, it is necessary to further screen the DEGs. DEGs were uploaded to the Search Tool for the Retrieval of Interacting Genes (STRING; http://string-db.org) (version 10.0) online database25 to predict protein-protein interaction (PPI) networks of DEGs and analyze the functional interac- tions between proteins. This may help to further understand the potential mechanism of the occurrence and development of ACC. Cytoscape (version 3.5)26 is an open-source

bioinformatics software platform for visualizing molecular interaction networks. MCODE (version 1.4.2),27 a Cytoscape plug-in, was used to find the most significant hub genes with MCODE Score≥5. According to the expression level of the screened hub genes in the high and low TIMC group, the scatter plot was drawn using R, and functional enrichment analyses were carried out.

Survival analysis and functional annotations of hub genes associated with TIMC

Survival analysis and functional annotations of hub genes associated with TIMC were carried out to find potential therapeutic targets. According to the expression level of hub genes, the samples were divided into high expression group and low expression group, and Kaplan-Meier method was applied to evaluate the prognostic value of hub genes. The age, sex, pTNM stage, clinical stage, and expression level of hub genes were brought into the univariate regression analy- sis to find out the factors related to the prognosis of patients. While multivariate Cox regression models, including com- mon prognostic factors (pTNM stage, clinical stage) and expression level of hub genes, were also established to find independent prognostic variables.

Flow cytometry

Flow cytometry (FCM) was used to detect CD8+T and CD4+T cells frequency of CD45+ cells in low and high TIMC samples. Then, some molecules were also detected (IFN-y, IL- 22, IL-17A, IL-4 reveal CD4+T cells’ plasticity and IFN-y, TNF- a, GZMB, PRF1, Ki-67 act as CD8+T cells’ effector molecules). Fresh ACC tissues were obtained from tissue bank of Fudan University Shanghai Cancer Center. Staining of molecules was established by using Fixation/Permeabilization Solution Kit according to the manufacturer’s instructions. The stained cells were washed and re-suspended in the cell staining buffer. FCM was analyzed by BD Celesta and FlowJo software (Tree Star). All the FCM antibodies and reagents are summarized in Supplementary table 2.

Results

Profile of TIICs in ACC microenvironment

According to CIBERSORT algorithm, the proportion of 22 types of TIICs in 79 cases of ACC was calculated and displayed by bar chart. As depicted in Figure 1a-b, the abundance of TIICs in each sample is different, and T cells, natural killer cells, macrophages account for most of the TIICs in ACC microenvironment. Additionally, TIICs’ infiltration levels show strong correlation with each other in ACC microenvironment (Figure 1c). For example, T cells CD8 is positively correlated with macrophages M1 (Correlation coefficient = 0.48) and T cells CD4 memory activated is positively correlated with B cells memory (Correlation coefficient = 0.48)

The prognostic value of TIICs in ACC samples

The samples were divided into high abundance group and low abundance group according to the median of each type of TIICs and survival analysis was carried out. As depicted in Figure 2a-e, the abundance of T cells follicular helper (p = . 003), macrophages M0 (p = .015) were significantly correlated with poor prognosis of ACC. While the abundance of mast cells (p = . 008), B cells naive (p = . 031) and monocytes (p = . 044) were positively associated with patient outcome. Multivariate Cox regression analysis (Table 1) suggested that mast cells were mostly correlated with patients’ outcome with smallest p value (p = . 007). Survival curves of TIICs with no significant prognostic value are shown in Supplementary Figure 2.

Figure 2. Survival analyses were applied to identify the prognostic value of tumor-infiltrating immune cells (TIICs). (a-e) The abundance of T cells follicular helper (p = .003), macrophages M0 (p = .015) was significantly correlated with poor prognosis of ACC. While the abundance of mast cells (p = .008), B cells naive (p = .031) and monocytes (p = . 044) was positively associated with patient outcome.

T cells follicular helper level

+

high

low

Macrophages MO level

+

high

+

a

b

low

1.00

1.00

Survival probability

0.75

Survival probability

0.75

0.50

0.50

0.25

p=3.011e-03

0.25

p=1.526e-02

0.00

0.00

0

1

2

3

4

5

6

7

8

9

10

11

12

0

1

2

3

4

5

6

7

8

9

10

11

12

Patient at risk

Time(years)

Time(years)

Patient at risk

high

25

24

14

11

8

5

4

3

1

1

0

0

0

high

39

35

21

15

10

8

3

3

2

2

2

1

1

low

54

51

42

31

20

17

9

7

6

4

4

2

2

low

40

40

35

27

18

14

10

7

5

3

2

1

1

0

1

2

3

4

5

6

7

8

9

10

11

12

0

1

2

3

4

5

6

7

8

9

10

11

12

Time(years)

Time(years)

C

Mast cells level

high

+

low

d

B cells naive level 4

high

+ low

1.00-

1.00-

Survival probability

0.75

Survival probability

0.75

0.50

0.50

0.25

p=7.894e-03

0.25

p=3.068e-02

0.00

0.00

0

1

2

3

4

5

6

7

8

9

10

11

12

0

1

2

3

4

5

6

7

8

9

10

11

12

Time(years)

Time(years)

Patient at risk

Patient at risk

high

39

38

31

23

16

14

8

6

3

2

1

1

1

high

39

39

31

25

15

12

8

6

4

3

3

2

2

low

40

37

25

19

12

8

5

4

4

3

3

1

1

low

40

36

25

17

13

10

5

4

3

2

1

0

0

0

1

2

3

4

5

6

7

8

9

10

11

12

0

1

2

3

4

5

6

7

8

9

10

11

12

Time(years)

Time(years)

e

Monocytes level +

high

4

low

1.00

Survival probability

0.75

0.50

0.25

p=4.448e-02

0.00

0

1

2

3

4

5

6

7

8

9

10

11

12

Patient at risk

Time(years)

high

39

37

30

24

17

15

10

8

5

4

3

1

1

low

40

38

26

18

11

7

3

2

2

1

1

1

1

0

1

2

3

4

5

6

7

8

9

10

11

12

Time(years)

Table 1. Multivariate Cox regression analysis of Tumor-infiltrating immune cells.
Tumor infiltrating immune cellsHRpvalue
B cells naive0.003(0-6.240)0.134
Monocytes0.005(0-6.057)0.144
Macrophages M0116.551(1.413-9616.049)0.035
Mast cells0(0-0.007)0.007

Microenvironment of ACC and normal tissues from Gene Expression Omnibus (GEO) data sets

As is depicted in Figure 3, the abundance of TIICs varies from sample to sample and TIMC abundance of normal samples is higher than that of tumor tissues in both GSE90713 and GSE12368. Survival analysis cannot be done due to the lack of survival information.

Prognostic significance of TIMC in FUSCC cohort

Clinicopathological characteristics in relation to TIMC infiltra- tion status of 39 ACC patients (Fudan University Shanghai Cancer Center cohort) are listed in Table 2. Low and high magnification views of two groups’ TIMCs are shown in Figure 4a. Higher TIMCs’ abundance was correlated with lower AJCC stage, pT stage, pN stage, pM stage and samples presenting necrosis showed higher TIMCs (Figure 4b-c). In Figure 4d, higher TIMCs’ infiltration was positively correlated with both overall survival (p < . 05) and progression-free survival (p <. 05). In samples which did not present necrosis (Figure 4e), higher TIMCs’ infiltration was still positively correlated with both over- all survival (p < . 05) and progression-free survival (p <. 05).

Microenvironmental changes caused by differential TIMC levels on ACC

Other TIICs’ abundance was different between two groups when the samples were stratified with the median TIMC abundance (Figure 5a). As shown in Figure 5b, there is a positive association

between Macrophage M2 and mast cells (Spearman’rho = 0.334, p = . 003). While B cells naive, Monocytes, T cells follicular helper, Dendritic cells activated and T cells CD4 memory acti- vated are negatively correlated with mast cells (Spearman’rho = - 0.329, p = . 003; Spearman’rho = - 0.321 p = . 004; Spearman’rho = - 0.289, p = . 010; Spearman’rho = - 0.262, p = . 020; Spearman’rho = - 0.239, p = . 034). GSEA was applied to explore the possible cellular explanations of the microenvironmental change and there was a significant difference in gene expression between two groups (Figure 5d). As is depicted in Figure 5e-g, gene expression was significantly enriched in DNA replication, nuclear chromosome segregation, and meiotic cell cycle process in the low TIMC group (Top 20 enriched pathway were listed in Figure 5c). These possible functions are closely associated with activation and proliferation of various immune cells and can cause changes in the abundance of TIICs.

As shown in the volcanic map, expression of 88 genes decreased and 16 genes increased in the high TIMC group (Figure 6a). The expression level of the 104 genes is differ- ent between two groups (Figure 6b), and these genes are associated with sister chromatid segregation, sister chromatid cohesion, cell cycle, p53, signaling pathway, etc. (Figure 6c-d).

Figure 3. GSE90713 and GSE12368 cohort were used to validate TIMC's role in microenvironment. (a-d) The abundance of TIICs varies from sample to sample and TIMC abundance of normal samples is higher than that of tumor tissues in both GSE90713 and GSE12368.

100%

B cells naive

a

B cells memory

Plasma cells

b

80%

T cells CD8

T cells CD4 naive

T cells CD4 memory resting

P<0.05

GSE90713

T cells CD4 memory activated

0.4-

60%

T cells follicular helper

cells regulatory (Tregs)

TIMC abundance

T cells gamma delta

0.3-

NK cells resting

NK cells activated

40%

Monocytes

Macrophages MO

0.2-

Macrophages M1

Macrophages M2

0.1.

20%

Dendritic cells resting

Dendritic cells activated

Mast cells resting

Mast cells activated

0.0

Eosinophils

0%

Neutrophils

Normal tissues Tumor tissues

Normal

Tumor

GSE90713

100%

C

B cells naive

d

B cells memory

Plasma cells

80%

= T cells CD8

GSE12368

T cells CD4 naive

0.20-

T cells CD4 memory resting

P=0.16

T cells CD4 memory activated

60%

T cells follicular helper

TIMC abundance

T cells regulatory (Tregs)

0.15

T cells gamma delta

NK cells resting

NK cells activated

Monocytes

0.10-

40%

Macrophages MO

Macrophages M1

Macrophages M2

0.05

20%

Dendritic cells resting

” Dendritic cells activated

Mast cells resting

Mast cells activated

0.00

Eosinophils

0%

Neutrophils

Normal tissues Tumor tissues

Normal

Tumor

GSE12368

Table 2. Clinicopathological characteristics in relation to TIMC infiltration status of 39 ACC patients (Fudan University Shanghai Cancer Center cohort).
CharacteristicsTIMC infiltration Entire cohort IHC (0-3) IHC (4-12) (N = 39) (N = 22) (N = 17)x2p value
N (%)
Age0.030.86
<70 years34 (87.2)19 (86.4)15 (88.2)
≥70 years5 (12.8)3 (13.6)2 (11.8)
Gender0.220.64
Male19 (48.7)10 (45.5)9 (52.9)
Female20 (51.3)12 (54.5)8 (47.1)
AJCC stage6.88<0.01
I-II14 (35.9)4 (18.2)10 (58.8)
III-IV25 (64.1)18 (81.8)7 (41.2)
T staget2.170.14
T1 - T220 (51.3)9 (40.9)11 (64.7)
T3 - T419 (48.7)13 (59.1)6 (35.3)
N staget9.29<0.01
N019 (48.7)6 (27.3)13 (76.5)
N120 (51.3)16 (72.7)4 (23.5)
M staget9.85<0.01
M021 (53.8)7 (31.8)14 (82.4)
M118 (46.2)15 (68.2)3 (17.6)
Necrosis6.88<0.01
Present25 (64.1)18 (81.8)7 (41.2)
Absent14 (35.9)4 (18.2)10 (58.8)

t TNM scoring system: Tumor size, Lymph Nodes affected, Metastases. AJCC, American Joint Committee on Cancer.

Figure 4. Validating TIMC's positive prognostic value in Fudan University Shanghai Cancer Center (FUSCC) cohort. (a) Low and high magnification views of two groups' TIMCs. (b-c) Higher TIMCs abundance was correlated with lower AJCC stage, pT stage, pN stage, pM stage, and samples presenting necrosis showed higher TIMCs. (d) Higher TIMCs infiltration was positively correlated with both overall survival (p < . 05) and progression-free survival (p < . 05). (e) In samples which did not present necrosis, higher TIMCs infiltration was still positively correlated with both overall survival (p < . 05) and progression-free survival (p < . 05).

a

b

C

TIMChigh

127

** , ANOVA P=0.003

12-

TIMCs purity

9

TIMCs purity

9.

6-

6

3

3.

TIMClow

0

Stage I

Stage II

Stage III

Stage IV

0

T1-T2

T3-T4

NO

N1

MO

M1

Necrosisneg

Necrosis008

d

Overall Survival

e

Overall Survival

TIMCslow

TIMCslow

Percent survival (%)

100

n=22

TIMCshigh

Necrosisneg patients

Percent survival (%)

100

n=10

TIMCshigh

:

50-

50-

n=17

n=4

p=0.019, HR(high)=3.258

p=0.018.

(high)=6.569

0

0

All patients

0

20

40

60

80

100

0

20

40

60

80

Time (months)

Time (months)

Progression-free Survival

Progression-free Survival

TIMCslow

TIMCslow

Percent survival (%)

100-

n=22

TIMCshigh

Percent survival (%)

100

TI

n=10

TIMCshigh

1

50

50

n=1

n=4

p=0.034, HR(high)=2.714

p=0.030,

HR(high)=5.420

0

0

0

20

40

60

80

0

20

40

60

80

Time (months)

Time (months)

Cell TypeSpearman's rhoP value
Macrophages M20.3340.003
B cells naive-0.3290.003
Monocytes-0.3210.004
T cells follicular helper-0.2890.010
Dendritic cells activated-0.2620.020
T cells CD4 memory activated-0.2390.034
Macrophages MO-0.2220.050
NK cells resting-0.1810.110
T cells gamma delta0.1760.122
Neutrophils-0.1590.162
T cells CD4 memory resting0.1490.191
Eosinophils-0.1190.297
NK cells activated0.0870.447
Dendritic cells resting0.0790.488
T cells CD8-0.0760.508
Plasma cells-0.0720.530
T cells regulatory (Tregs)-0.0710.537
B cells memory-0.0440.701
Macrophages M10.0320.777
T cells CD4 naive-0.0030.976
Figure 5. Correlation analysis and Gene set enrichment analysis (GSEA) were applied to explore microenvironmental changes caused by TIMC and potential mechanism behind TIMC's positive prognostic value. (a) Other TIICs abundance was different between two groups When the samples were stratified with the median TIMC abundance. (b) There is a positive association between Macrophage M2 and mast cells (Spearman'rho = 0.334, p = . 003). While B cells naive, monocytes, T cells follicular helper, Dendritic cells activated and T cells CD4 memory activated are negatively correlated with mast cells (Spearman'rho = - 0.329, p = . 003; Spearman'rho = - 0.321 p = . 004; Spearman'rho = - 0.289, p = . 010; Spearman'rho = - 0.262, p = . 020; Spearman'rho = - 0.239, p = . 034). (c) Top 20 enriched pathway. (d) There was a significant difference in gene expression between two groups. (e-g) Gene expression was significantly enriched in DNA replication, nuclear chromosome segregation, and meiotic cell cycle process in the low TIMC group.

a

1.0-

Neutrophils

b

Eosinophils

Dendritic cells activated

Dendritic cells resting

Macrophages M2

0.8

Macrophages M1

Macrophages MO

Monocytes

NK cells activated

NK cells resting

0.6

T cells gamma delta

T cells regulatory (Tregs)

T cells follicular helper

T cells CD4 memory activated

T cells CD4 memory resting

0.4-

T cells CD4 naive

T cells CD8

Plasma cells

B cells memory

B cells naive

0.2-

0.0

High TIMC

Low TIMC

C

e

Enrichment plot: GO_DNA_REPLICATION

0.0

Top 20 enriched gene sets in low TIMC infiltration group

Enrichment score (ES)

NES :- 2.046

0.1

GO_MEIOTIC_CELL_CYCLE

NOM-p :< 0.001

GO_MEIOTIC_CHROMOSOME_SEPARATION

1.855

-0.2

FDR-q:0.070

GO_SPINDLE_ORGANIZATION

-1.856

GO_MEIOTIC_CHROMOSOME_SEGREGATION

-1.971

-0.3

-1.972

GO_MITOTIC_SPINDLE_ASSEMBLY

-1972

0.4

GO_ORGANELLE_FISSION

GO_REGULATION_OF_CHROMATIN_BINDING

-1.979

-1.983

0.5

GO_SPINDLE_ASSEMBLY

GO_DNA_DEPENDENT_DNA_REPLICATION

-1.889

0.6

GO_MITOTIC_NUCLEAR_DIVISION

-1.992

GO_MITOTIC_SPINDLE_ORGANIZATION

-1.996

GO_MITOTIC_SISTER_CHROMATID_SEGREGATION

-2.002

-2.004

GO_MEIOTIC_CELL_CYCLE_PROCESS

-2.004

Ranked list metric (Signal2Noise)

GO_CHROMOSOME_SEPARATION

2.017

0.0

GO_SISTER_CHROMATID_SEGREGATION

W” (postively comelated)

GO_DNA_REPLICATION

-2.045

9.4

-2.046

GO_CHROMOSOME_SEGREGATION

.2

GO_ATTACHMENT_OF_SPINDLE_MICROTUBULES_TO_KINETOCH

-2.050

-2.058

Zero eross at 5795

GO_REGULATION_OF_CHROMOSOME_SEGREGATION

-2.068

0.2

GO_NUCLEAR_CHROMOSOME_SEGREGATION

-2.072

0.4

0.0

T (negatively comrelated).

d

q

2.000

4,000

8.000

8.000 10.000 12.000 14,000 10,000 18,000 20,000

high TIMC

Rank in Ordered Dataset

low TIMC

Enrichment profile - Hits

Ranking metric scores

Gene name

f

Enrichment plot: GO_NUCLEAR_CHROMOSOME_SEGREGATION

Enrichment score (ES)

0.0

0.1

NES :- 2.072

-0.2

NOM-p :< 0.001

0.3

FDR-q:0.229

0.4

-0.5

-0.6

Ranked list metric (Signal2Noise)

h’ (positively comeinbed)

O

Zero cross at 5795

14

T (negatively comelased)

·

2,000

4,000

8,000

8,000 10,000 12,000 14,000 16,000 18,000 20,000

Rank in Ordered Dataset

Enrichment profile - Hits

Ranking metric scores

g

Enrichment plot: GO_MEIOTIC_CELL_CYCLE_PROCESS

Enrichment score (ES)

0.0

NES :- 2.004

0.1

NOM-p :< 0.001

-0.2

FDR-q:0.081

0.3

-0.4

0.5

Ranked list metric (Signal2Noise)

0.0

h” (positively correlated)

Zero cross at 5795

0.4

T (negatively comrelated)

a

2,000

4,000

8,000

8,000 10,000 12,000 14,000 18,000 18,000 20,000

Rank in Ordered Dataset

Enrichment profile - Hits

Ranking metric scores

Screening and functional annotations of hub genes

The PPI network among all DEGs was constructed with inter- acted specificity score equal to 0.4 (Figure 7a). The most relevant protein interaction group was selected as hub genes

cluster, including KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2 (Figure 7b). As shown in Figure 7c, expression of the hub genes was significantly decreased in the high TIMC group compared with low TIMC group (p <. 001).

Figure 6. Differential gene analysis was applied to identify DEGs related to TIMC. (a) Expression of 88 genes decreased and 16 genes increased in the high TIMC group. (b-d) The expression level of the 104 genes is different between two groups and these genes are associated with sister chromatid segregation, sister chromatid cohesion, Cell cycle, p53, signaling pathway, etc.

a

b

Type

High TIMG

Title

Low TIMC

E

6

A

2.0

DOWN

NOT

UP

-$

1.5

-log10(Padj)

1.0

0.5

0.0

-8

-4

0

4

8

Log2FoldChange

C

d

sister chromatid segregation

Cell cycle

sister chromatid cohesion

p53 signaling pathway

forebrain development-

Transcriptional misregulation in cancer-

heterochromatin assembly

Viral carcinogenesis

centromeric sister chromatid cohesion

Oocyte meiosis

chromosome segregation

Cellular senescence

nuclear chromosome segregation

Non-small cell lung cancer-

mitotic sister chromatid segregation

heterochromatin organization

p.adjust

Hepatocellular carcinoma

p.adjust

regulation of cellular senescence

0.005

Melanoma

0.20

0.010

Platinum drug resistance

0.25

spindle

0.015

0.30

0.020

Glioma

0.35

mitotic spindle

Pancreatic cancer

chromosome, centromeric region

Chronic myeloid leukemia

chromosomal region

spindle microtubule

MicroRNAs in cancer

8

midbody

Non-homologous end-joining

Flemming body

Thiamine metabolism

kinetochore

Endocrine resistance

spindle midzone

Progesterone-mediated oocyte maturation

ion channel complex

2-Oxocarboxylic acid metabolism

0.0

2.5

5.0

7.5

10.0

0

1

2

3

4

Functional enrichment analysis showed that the hub genes were mainly enriched in chromosome segregation, chromo- some region, and cell cycle (Figure 7d-e).

Survival analysis of hub genes in ACC

As depicted in Figure 8, the overexpression of hub genes associated with TIMCs abundance is significantly correlated with poor prognosis in ACC patients (p <. 05). Univariate Cox regression model suggested that pTstage, pMstage, clinical stage, and expression of hub genes were significantly correlated with prognosis in (p < . 001; Figure 9a). In the multivariate Cox regression models (Figure 9b-i), the expression of hub genes was still significantly correlated with prognosis in ACC patients (p <. 05).

Mast cell infiltration may exert favorable influence on plasticity of CD8 + T and CD4 + T cells

FCM validated that both CD8 + T and CD4 + T cells’ abun- dance was significantly higher in high TIMC group (Supplementary figure 3A). As is shown in Supplementary figure 3B, IL-4 of CD4 + T cells was significantly higher in high TIMC group. PRF1 and Ki-67 of CD8 + T cells also

elevated significantly in high TIMC group (Supplementary figure 3 C). These findings implied that TIMC might poten- tially promote the accumulation of both CD8 + T and CD4 + T cells and enhanced their plasticity. And this might partly explain that TIMC infiltration act as a favorable prognostic factor.

Discussion

Tumor microenvironment plays an important role in the occurrence and development of cancer. It is composed of various immune cells, cancer-related fibroblasts, and endothe- lial cells,28 and the interaction between these cells also involves kinds of chemokines, cytokin3es, angiogenic mediators, growth factors, and so on.29 Recent evidences suggest that the influence of TIICs is a double-edged sword in cancer,30 and mast cells, T cells follicular helper, macrophages, B cells, monocytes31-34 have been found to have independent prognos- tic significance in different tumors. In this study, we also found that these types of TIICs are significantly associated with the prognosis of ACC patients, which suggests that the tumorigen- esis and progression of ACC are closely related to the TME and shed light on the future research direction.

Figure 7. The most significant genes were screened and functional enrichment analysis indicated the hub genes were mainly enriched in chromosome segregation, etc. (a-b) The PPI network among all DEGs was constructed and hub genes of Cluster1 are KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2. (c) Expression of the hub genes decreased in the high TIMC group compared with the low TIMC group. (d-e) Functional enrichment analysis showed that the hub genes were mainly enriched in chromosome segregation, chromosome region, and cell cycle.

BAHCCI

a

PRED3

MOH28

MAMY20

b

NING

TMPPE

SLOTAS

00-20

20170

RGBP

KIF18A

ALPEL

VIGP

GPCZ

BERG

GORI

FSCNI

SLC3142

84-80410

NR4AS

ETV4

CAN2

TNFSF13B

OTKI

SUCODAL

CNM404

RRCON

CDAS

SKA1

SGOL1

KAZN

CAMS

CHSTID

SHROOMS TTYMI

CYP2783

HAGS

LMKIB

GSTAL

POMAZ

GSG2

SUCHAS

TFCPZLE

CHOV

CKAPZL

PITX1

OLGAPJ

SOOLE

POUF1

CELSA3

PARZ

CEPSS

VEDCZ

5L2

CDK1

GPRS#

9682

CDCA8

SALLS

SGOL2

AMITEE

MARPA

SLPI

LEF

DOIS

PHPLAS

ZNF3850

SYTLZ

HELLS

LIPZID

DNASEILS

PR337℃

OPPL

I

C50G2

CORS

CEP55

MPPŞ

PNMAZ

FENI

HMGAZ

ALCM11

BUB1

NSMF

GRIMAS

CAONGT

CIONES

CDKNZA

KIAAG224

SPARED

ADAM12

CODG73

POMAGA

SPNS3

NDOU

FAMMICH

PIPSKLI

C

a

b

C

d

61


30



60-

30

MRNA expression

mRNA expression

4

MRNA expression

MRNA expression

“.

20

2

10

0

0

0

0

0

High TIMC

Low TIMC

High TIMC

Low TIMC

High TIMC

Low TIMC

High TIMC

Low TIMC

KIF18A

CDCA8

SKA1

CEP55

e

f

g

h



6


40

10

MRNA expression

4

expression

30

MRNA expression

miRNA expression

4

5

..

820

RNA

2

E10

2

0

0

0

High TIMC

Low TIMC

High TIMC

Low TIMC

High TIMC

Low TIMC

0

High TIMC

Low TIMC

BUB1

CDK1

SGOL1

SGOL2

d

e

chromosome segregation-

mitotic sister chromatid segregation

sister chromatid segregation

Oocyte meiosis-

nuclear chromosome segregation

mitotic nuclear division

mitotic metaphase plate congression

9

metaphase plate congression

Progesterone-mediated oocyte maturation

nuclear division-

establishment of chromosome localization -

chromosome localization

Cell cycle

chromosomal region

chromosome, centromeric region

spindle microtubule

p.adjust

p.adjust

spindle

p53 signaling pathway

mitotic spindle

8

0.005

9.02

kinetochore

0.010

0.04

condensed chromosome outer kinetochore

0.015

midbody

Gap junction

0.06

spindle midzone

0.020

intercellular bridge

microtubule binding

Cellular senescence-

tubulin binding-

histone kinase activity -

microtubule plus-end binding

RNA polymerase II CTD heptapeptide repeat kinase activity-

Viral carcinogenesis

protein serine/threonine kinase activity

5

ATP-dependent microtubule motor activity, plus-end-directed-

cyclin-dependent protein serine/threonine kinase activity-

cyclin binding

Human immunodeficiency virus 1 infection-

cyclin-dependent protein kinase activity-

0

1

2

3

4

5

D

1

2

3

Because of the great variability in the type, grade, or stage of tumor and the distribution of mast cells, it is difficult to clearly define the function of TIMC as pro- or anti-tumorigenic. Current studies revealed that mast cells can mobilize and regulate the activity of T cells, regulatory T cells, and antigen-presenting cells (APC) through soluble media or cell-cell contact.35 In addition to inflammatory effects, mast cells are also thought to synthesize and release effective angiogenic factors, such as VEGF.36 Many studies have shown that TIMC may be related to tumor microves- sels density and promote tumor angiogenesis.37 This study

found that TIMC abundance is a favorable prognostic fac- tor in ACC, while the change of TIMC abundance is accompanied by a wide range of other types of TIICs’ abundance changes which may suggest that TIMC does play a key role in the TME of ACC. In FUSCC cohort, we also found that higher TIMC infiltration was positively correlated with both overall survival and progression-free survival. Thus, TIMC may be a potential therapeutic target. Previous studies have found that cell cycle and chromo- some aberration are very important in ACC tumorigenesis.38 GSEA results show that genes related to

Figure 8. The overexpression of hub genes associated with TIMCs abundance in ACC is significantly associated with poor prognosis.

a

Overall Survival

b

Overall Survival

C

Overall Survival

d

Overall Survival

2

Low-BUB1.TPM

High BUB1 TPM

0

LOW KIF18A TPM

High KIF 18A TPM

10

LOW COCA8 TPM

High CDCA8 TPM

9

Low SGOL1 TPM

Logrank p=2.6e-06

Logrank p=3.8e-08

Logrank p=3.90-07

High SGOL1 TPM

Logrank p=4.9c-06

:

HR(high)=7.7

P(HR)=52-05

HR(high)=12

0.8

HR(high)=9.8

P(HR) 2.0-05

Vo

HR(high) 6.8

p(HR) 5.3e-05

Percent survival

nghigh)=38

P(HR) 7.6e-06

Percent survival

n(high)=38

Percent survival

n(high)=38

0.6

n[low)=37

0.6

n(low)=38

0.6

n(low)=38

Percent survival

n|high)=38

:

h@low)=38

0.4

0.4

0.4

04

S

8

S

0.0

00

0.0

:

0

50

100

150

0

50

100

150

0

50

100

150

0

50

100

150

Months

Months

Months

Months

e

Overall Survival

f

Overall Survival

g

Overall Survival

h

Overall Survival

2

LOW CDK1 TPM

0

High CDK1 TPM

Low SGOL2 TPM

High SGOL2 TPM

1

Low CEP55 TPM

9

Low SKA1 TPM

Logrank p=7e-08

Logrank p=0.00011

High CEP55 TPM

Logrank p=5.2e-07

High SKA1 TPM

Logrank p=3.5e-05

0.g

HR(high)=11

HR(high)=4.8

PUHRJ=1.20-05

O.B

p(HR)=0.00042

8

HR(high)=9.6

p(HR)=2e-05

4.8

HR(high)=5.8

n(high)=38

P(HR)=0.00021

Percent survival

n(high)=38

n[low)=38

Percent survival

.n(low)=38

Percent survival

n(high)=38

n(low)=38

Percent survival

n(high)=38

0.6

0.6

0.6

n(low)=38

0.4

0.4

0.4

02

2

0.2

0.2

0.0

0.0

0.0

0

50

100

150

0

50

100

150

0

50

100

150

0

50

100

150

Months

Months

Months

Months

İ

Disease Free Survival

I

Disease Free Survival

k

Disease Free Survival

1

Disease Free Survival

9

Low

9

High BUB1 TPM

Low KIF 18A TPM

0

Low COCA8 TPM

9

High CDCA8 TPM

Low SGOL1 TPM

Logrank p=7.96-06

High KIF18A

High SGOL1 TPM

Logrank p=1.5e-06

Logrank p 3.48-06

Logrank p=0.00028

0.8

HR(high)=5

p(HR)=4.6-05

0.8

HR(high)=5.6

p(HR)=1.4e-05

0.8

HR(high)=5.3

p(HR)=2.5€-05

:

·HR(high)=3.5

Percent survival

Percent survival

Percent survival

Percent survival

P(HR)=0.00058 nghịgh)=38

níhigh)=38

n[low)=37

n(high)=38

Whigh)-38

0.6

0.6

n(low)=38

0.6

n(low)=38

0

n[low]=38

0.4

0.4

0.4

0.4

02

0.2

0.2

8

0.0

8

0.0

8

0

50

100

150

0

50

100

150

D

50

100

150

0

50

100

150

Months

Months

Months

Months

m

Disease Free Survival

n

Disease Free Survival

0

Disease Free Survival

p

Disease Free Survival

2

Low CDK1 TPM

0

Low SGOL2

2

1

High CDK1 TPM

Logrank p=0.00019

High SGOL2 TPM

Low CEP55 TPM

Logrank p=1.2e-05

High CEP55 TPM

Low SKA1 TPM

HR(high)=4.8

Logrank p=1.36-05

High SKA1 TPM

Logrank p=3.86-05

0.8

HR(high)=3.6

p(HR)=0.00043

S

P(HR)=5,4e-05

0

HR(high)=4.6

P(HR)=6e-05

HR(high)=4.3

P(HR)=D.00014

Percent survival

n(high)=38

n(high)=38

nihighy Se

n(low)=38

Percent survival

TƯƠNG=38

Percent survival

n(low)=38

Percent survival

níhigh) 38

0.6

W

0.6

0.6

n(low)=38

0.4

0.4

0.4

à

9

5

3

0

8

0.0

0

50

100

150

0

50

100

150

D

50

100

150

0

50

100

150

Months

Months

Months

Months

cell cycle and chromosome replication are enriched in low TIMC group, indicating that the activation of mast cells is also regulated by them.

In view of the breakthrough progress of immunotherapy in cancer in recent years, whether immunotherapy can be applied to ACC is a problem to be solved.7 The response to immunotherapy usually depends on the interaction between tumor cells and TME, 8,39 so it is of great significance to explore the composition of ACC microenvironment. This study found that there is a significant correlation between TIMC and a variety of TIICs (Macrophage M2,B cells naive, monocytes, T cells follicular helper, Dendritic cells activated and T cells CD4 memory activated) in ACC microenvironment; TIMC can be used as a potential target, which may be beneficial to ACC immunotherapy. We also found that hub genes (KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2) related to TIMC have inde- pendent prognostic significance. These eight genes may be

used as biomarkers for diagnosis and prognosis and are expected to provide new potential targets for treatment.

Thus, our research has some limitations. The main thing is the retrospective design of our study. Multicenter prospective studies are needed to verify the conclusions. However, because of the rarity of tumor, it is very difficult to carry out rando- mized controlled study in ACC. In addition, there is an urgent need to conduct in vitro and in vivo experiments to reveal the underlying mechanism of mast cell infiltration in ACC.

Conclusion

In conclusion, types of TIICs abundance significantly corre- lated with the prognosis of ACC. Lower TIMC infiltration and elevated expression of hub genes (KIF18A, CDCA8, SKA1, CEP55, BUB1, CDK1, SGOL1, SGOL2) markedly correlated with aggressive progression and poor prognosis, which might shed lights on novel targets for treatment strategies.

apvalueHazard ratiobpvalueHazard ratioCpvalueHazard ratio
T0.04713.162(1.039-166.736)T0.04712.614[1.033-153.992)
age0.3341.012(0.988-1.037)N0.1112.871(0.786-10.490)N0.1772.440(0.668-8.917)
gender0.9911.004(0.470-2.145)M0.8720.916(0.315-2.661)M0.9621.026(0,355-2.964)
stage0.4580.396(0.035-4.555)stage0.4660.403(0.035-4.630)
T<0.00110.980(4.283-28.150)BUB1<0.0012.071(1,390-3.086)CDCAB<0.0011.881(1.303-2.717)
N0.1072.221(0.842-5.857)dpvalueHazard ratioepvalueHazard ratio
T0.05510.924(0.948-125.888)T0.01719.198(1.705-216.105)
M<0.0017.351(3.305-16.351)N0.1012.969(0.808-10.906)N0.0185.158(1.325-20.083)
M0.8130.879(0.303-2.556)M0.8550.907(0.319-2.576)
stage<0.0017.166(3.027-16.960)
stage0.4940.428(0.037-4.881)stage0.2650.247(0.021-2.880)
SKA1<0.0011.544(1.277-1.867)CDK10.0021.849(1.244-2.749)CEP55<0.0011.902(1.356-2.659)
KIF18A<0.0012.477(1.752-3.504)fpvalueHazard ratiogpvalueHazard ratio
T0.03215.494(1 265-189.727)0.02616.267(1,402-188.791)
SGOL1<0.0012.176(1.587-2.982)N0.0963.009(0.822-11.010)N0.1502.581(0.709-9.394)
M0.8951.073(0.375-3.071)M0.7820.859(0.292-2.529)
CDK1<0.0012.402(1.691-3.414)stage0.3410.305(0.026-3.526)stage0.4120.360(0.031-4.148)
KIF18A0.0011.851(1 275-2.687)SGOL10.0021.773(1.244-2.525)
CDCA8<0.0012.287(1.672-3.128)
hpvalueHazard ratioipvalueHazard ratio
SGOL2<0.0012.514(1.785-3.542)0.04313.587[1.084-170.309)T0.00937.607(2.505-564.576)
N0.3091.951(0.538-7.073)N0.3991.754(0.476-6.466)
CEP55<0.0012.136(1.616-2.821)
M0.4721.462(0.519-4.122)M0.5891.331(0.472-3.755)
BUB1<0.0012.551(1.778-3.660)stage0.4180.365(0.032-4.176)stage0.2400.197(0.013-2.955)
0.50SGOL2<0.0012.100(1.396-3.159)-------SKA1<0.0011.777(1.269-2.489)
1.0 150 20 A.D 5.0
Hazard ratio

Figure 9. The expression of hub genes was significantly correlated with prognosis in both univariate and multivariate cox regression. (a) pTstage, pMstage, clinical stage, and expression of hub genes were significantly correlated with prognosis in univariate regression model (p < . 001). (b-i) In the multivariate cox regression models, the expression of hub genes was still significantly correlated with prognosis (p < . 05).

Abbreviations

TIIC

DEGS

tumor-infiltrating immune cells differentially expressed genes tumor-infiltrating mast cells

TIMC

ACC

adrenocortical carcinoma

TCGA

The Cancer Genome Atlas tumor microenvironment protein-protein interaction

TME

PPI

GSEA

Gene set enrichment analysis

BP

biological process

MF

molecular functional

CC

cellular component

GO

gene ontology

KEGG

FUSCC

Kyoto Encyclopedia of Genome and Genome Fudan University Shanghai Cancer Center

Acknowledgments

We thank the TCGA databases and GEO (ID: GSE90713, GSE12368) for providing ACC gene expression profiles.

Disclosure of potential conflicts of interest

No potential conflicts of interest were disclosed.

The Ethics approval and consent to participate in the current study were approved and consented by the ethics committee of Fudan University Shanghai Cancer center.

Availability of data and material

The datasets during and/or analyzed during the current study available from the corresponding author on reasonable request.

Authors’ contributions

The work presented here was carried out in collaboration with all authors. YDW, ZHL, and QYY defined the theme of the study and discussed analysis, interpretation, and presentation. TX, XWH, and WYC drafted the manuscript, analyzed the data, developed the algorithm, and explained the results. Aihetaimujiang, WHK and WFN, participated in the collection of relevant data and helped draft the manuscript. ZY and CDL helped to perform the statistical analysis. ZYP and SGH helped revise the manu- script and provided guiding suggestions. All the authors read and approved the final manuscript.

Funding

This work is supported by Grants from the National Key Research and Development Project (No.2019YFC1316000) and National Natural Science Foundation of China (No.81772706 and No.81802525).

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