Sun AH, Zhang XY, Huang YY, Chen L, Wang Q, Jiang XC. Prognostic value and predictive model of tumor markers in stage I to III gastric cancer patients. World J Clin Oncol 2024; 15(8): 1033-1047 [PMID: 39193154 DOI: 10.5306/wjco.v15.i8.1033]
Corresponding Author of This Article
Xiao-Cong Jiang, Chief Doctor, Department of Radiotherapy Oncology, Huizhou Municipal Central Hospital, No. 41 Eling North Road, Huizhou 516001, Guangdong Province, China. onion1021@163.com
Research Domain of This Article
Oncology
Article-Type of This Article
Retrospective Study
Open-Access Policy of This Article
This article is an open-access article which was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
Ai-Hua Sun, Xin-Yu Zhang, Xiao-Cong Jiang, Department of Radiotherapy Oncology, Huizhou Municipal Central Hospital, Huizhou 516001, Guangdong Province, China
Yang-Yang Huang, Department of Hepatobiliary Surgery, Fujian Provincial Hospital, Fuzhou 350001, China
Lei Chen, Qing Wang, Department of General Surgery, Xiang'an Hospital of Xiamen University, Xiamen 361102, Fujian Province, China
Co-corresponding authors: Qing Wang and Xiao-Cong Jiang.
Author contributions: Sun AH write the main work; Zhang XY, Huang YY, Chen L helped write the manuscript; Wang Q and Jiang XC designed this study. All authors read and approved the final manuscript.
Institutional review board statement: This study was approved by Institutional Review Board of the Huizhou Municipal Central Hospital.
Informed consent statement: This study was approved by Institutional Review Board of the Huizhou Municipal Central Hospital.
Conflict-of-interest statement: All the authors report no relevant conflicts of interest for this article.
Data sharing statement: The data used to support the findings of this study are available from the corresponding author upon request.
Open-Access: This article is an open-access article that was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution NonCommercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: https://creativecommons.org/Licenses/by-nc/4.0/
Corresponding author: Xiao-Cong Jiang, Chief Doctor, Department of Radiotherapy Oncology, Huizhou Municipal Central Hospital, No. 41 Eling North Road, Huizhou 516001, Guangdong Province, China. onion1021@163.com
Received: March 20, 2024 Revised: July 3, 2024 Accepted: July 24, 2024 Published online: August 24, 2024 Processing time: 149 Days and 5.1 Hours
Abstract
BACKGROUND
Preoperative serum tumor markers have been widely used in the diagnosis and treatment of gastric cancer patients. However, few studies have evaluated the prognosis of gastric cancer patients by establishing statistical models with multiple serum tumor indicators.
AIM
To explore the prognostic value and predictive model of tumor markers in stage I and III gastric cancer patients.
METHODS
From October 2018 to April 2020, a total of 1236 patients with stage I to III gastric cancer after surgery were included in our study. The relationship between serum tumor markers and clinical and pathological data were analyzed. We established a statistical model to predict the prognosis of gastric cancer based on the results of COX regression analysis. Overall survival (OS) was also compared across different stages of gastric cancer.
RESULTS
The deadline for follow-up was May 31, 2023. A total of 1236 patients were included in our study. Univariate analysis found that age, clinical stage, T and N stage, tumor location, differentiation, Borrmann type, size, and four serum tumor markers were prognostic factors of OS (P < 0.05). It was shown that clinical stage, tumor size, alpha foetoprotein, carcinoembryonic antigen, CA125 and CA19-9 (P < 0.05) were independent prognostic factors for OS. According to the scoring results obtained from the statistical model, we found that patients with high scores had poorer survival time (P < 0.05). Furthermore, in stage I patients, the 3-year OS for scores 0-3 ranged from 96.85%, 95%, 85%, and 80%. In stage II patients, the 3-year OS for scores 0-4 were 88.6%, 76.5%, 90.5%, 65.5% and 60%. For stage III patients, 3-year OS for scores 0-6 were 70.9%, 68.3%, 64.1%, 50.9%, 38.4%, 18.5% and 5.2%. We also analyzed the mean survival of patients with different scores. For stage I patients, the mean OS was 55.980 months. In stage II, the mean OS was 51.550 months. The mean OS for stage III was 39.422 months.
CONCLUSION
Our statistical model can effectively predict the prognosis of gastric cancer patients.
Core Tip: Gastric cancer is one of the most common malignant tumors in the world, few studies have established models to evaluate the prognosis of gastric cancer patients by preoperative serum tumor markers. The relevance between serum tumor markers and clinical and pathological data was analyzed in this study. We established a statistical model to predict the prognosis of gastric cancer, The perspective model can be helpful for the diagnosis and treatment of gastric cancer.
Citation: Sun AH, Zhang XY, Huang YY, Chen L, Wang Q, Jiang XC. Prognostic value and predictive model of tumor markers in stage I to III gastric cancer patients. World J Clin Oncol 2024; 15(8): 1033-1047
Gastric cancer is one of the most common malignant tumors in the world. Although its mortality has decreased in recent years, gastric cancer remains the third most common cause of cancer-related death[1]. In China, the incidence of gastric cancer is much higher. A total of 456124 people developed gastric cancer in 2018, and gastric cancer is the second leading cause of death among Chinese cancer patients (17.5%)[2]. Therefore, the early diagnosis of gastric cancer is particularly important. According to the Chinese Society of Clinical Oncology (CSCO) guidelines, preoperative diagnosis of gastric cancer mainly depends on endoscopy, imaging and pathological examination[3]. However, preoperative serum tumor markers are still classic components with reference values.
Alpha foetoprotein (AFP), one of the earliest discovered tumor markers, plays an important role in the diagnosis and treatment of hepatocellular carcinoma[4]. It has also been shown to be associated with female reproductive system tumors such as endodermal sinus tumor[5]. Carcinoembryonic antigen (CEA) is most commonly used in the diagnosis and follow-up of colorectal and intestinal cancer, and its diagnostic value in gastric cancer has also been confirmed[6]. The level of CA-125 influences the prognosis of multiple tumors, such as non-Hodgkin’s lymphoma, endometrial cancer[7,8]. In addition, it is a useful prognostic biomarker for recurrence in gastric cancer patients[9]. In previous studies, the diagnostic value of CA19-9 in colorectal cancer has been fully proven[10].
In general, serum tumor markers are strongly associated with the stage and metastasis of gastric cancer[11]. The importance of the four tumor markers we studied for the early diagnosis of gastric cancer has long been demonstrated[12]. However, few studies have established models to evaluate the prognosis of gastric cancer patients using preoperative serum tumor markers. Therefore, in this present study, we aimed to explore the diagnostic and prognostic value of four preoperative serum tumor markers in different clinical stages of gastric cancer patients by using a scoring system.
MATERIALS AND METHODS
Our study was conducted at Huizhou Municipal Central Hospital. From October 2018 to April 2020, a total of 1236 patients with stage I to III gastric cancer who had undergone surgery were included in our study. Patients with emergency operations, incompatible pathological types, unclear causes of death or death within 30 days, incomplete data, or those who were lost to follow-up were excluded (Figure 1). All procedures performed in research involving human participants were in accordance with the Declaration of Helsinki.
Figure 1
Flow chart of patients included in the study.
All patients’ venous blood samples were taken into serum separator tubes within one week before surgery. Hematological parameters were determined immediately after blood sample collection using an electrochemical luminescence immunoassay analyzer (e602, Roche, Switzerland) in the clinical laboratory. The clinicopathological data of the patients, including gender, age, serum AFP, CEA, CA125, and CA19-9 levels, and pathological results were obtained from database in our hospital. The pathological stage was evaluated according to the 8th AJCC criterion for gastric cancer. None of the patients had received any chemoradiotherapy or surgery before testing for serum tumor markers. The upper normal limits of CA199, CEA, AFP and CA125 were 27 U/mL, 5 ng/mL, 5 ng/mL and 15 U/m, respectively. Furthermore, to analyze the influence of preoperative tumor markers on the prognosis of gastric cancer in different clinical stages, the weight of each marker was evaluated in our study. According to the positive numbers of tumor markers, the patients were scored from 0 to 6. The deadline for follow-up was May 31, 2020. Overall survival (OS) was recorded by telephone.
This study analyzed the influencing factors on the survival of patients with gastric cancer, then scored patients with gastric cancer according to the results of the survival analysis, and compared the prognosis of patients with different stages of gastric cancer according to their total score. The χ2 test, Cox regression analysis and Kaplan-Meier method were used to analyze the data. All data analyses were performed using IBM SPSS 23.0 software. P < 0.05 have significant differences.
RESULTS
A total of 1236 patients were recruited for our study, including 937 males (75.8%) and 299 females (24.2%). The median age of these patients was 65 years, ranging from 23 to 87. The number of patients with clinicopathological stage I was 288 (23.3%), and the number of patients with stage II and III gastric cancer was 272 (22.0%) and 676 (54.7%), respectively. By the end of our follow-up period, 842 patients were alive, and 394 patients died (Table 1).
Table 1 Patient demographics and clinicopathologic features, n (%).
Variables
Patients (n = 1236)
Gender
Male
937 (75.8)
Female
299 (24.2)
Age
< 65
685 (55.4)
≥ 65
551 (44.6)
Drinking
Yes
269 (21.8)
No
967 (78.2)
Smoking
Yes
266 (21.5)
No
970 (78.5)
Operation methods
Open surgery
1103 (89.2)
Laparoscopic surgery
133 (10.8)
Hospitalization time
< 15 days
539 (43.6)
≥ 15 days
697 (56.4)
Clinical stage
I
288 (23.3)
II
272 (22.0)
III
676 (54.7)
T stage
T1
224 (18.1)
T2
127 (10.3)
T3
174 (14.1)
T4
711 (57.5)
N stage
N0
504 (40.8)
N1
203 (16.4)
N2
227 (18.4)
N3
302 (24.4)
Tumor location
Cardia
633 (51.2)
Gastric body
239 (19.3)
Antrum of stomach
364 (29.5)
Pathological type
Adenocarcinoma
1168 (94.5)
Mucinous adenocarcinoma
42 (3.4)
Squamous cell carcinoma
15 (1.2)
Signet ring cell carcinoma
11 (0.9)
Degree of differentiation
Well
19 (1.5)
High
42 (3.4)
Medium
300 (24.3)
Moderate to low
330 (26.7)
Poor
545 (44.1)
Borrmann type
I
155 (12.5)
II
287 (23.2)
III
737 (59.6)
IV
57 (4.7)
Size
< 5cm
690 (55.8)
≥ 5cm
546 (44.2)
Survival status
Alive
842 (68.1)
Dead
394 (31.9)
The relevance between four different tumor markers and clinical data was explored. It was shown that an elevation of AFP revealed a significant correlation with clinical stage, N stage, and survival status (Table 2). However, there was no significant difference in age, gender, differentiation, pathology type, tumor location, Borrmann type and size (P > 0.05; Table 2). The values of CEA were also analyzed, which showed that CEA was associated with age, clinical stage, N stage, T stage, tumor location, differentiation, Borrmann type, size, and survival status (Table 2). However, CEA was not related with gender and pathology type (P > 0.05; Table 2). Different from AFP and CEA, the level of CA125 was associated with T stage, N stage and clinical stage, differentiation, Borrmann type, size, and survival status (Table 2). A similar trend was observed in the increase of CA19-9, the preoperative serum CA19-9 expression was significantly different in clinical stage, T and N stage, tumor location, differentiation, pathology type, Borrmann type, size, and survival status (Table 2). However, CA199 was not related with gender and age (P > 0.05; Table 2).
Table 2 The association of demographics and clinicopathologic characteristics with four serum tumor markers.
Variables
AFP
P value
CEA
P value
CA125
P value
CA19-9
P value
Positive (n = 1043)
Negative (n = 193)
Positive (n = 904)
Negative (n = 332)
Positive (n = 858)
Negative (n = 378)
Positive (n = 969)
Negative (n = 267)
Gender
0.200
0.072
0.072
0.809
Male
798
139
673
264
663
274
736
201
Female
245
54
231
68
195
104
233
66
Age
0.753
0.002
0.214
0.144
< 65
576
109
526
159
486
199
548
137
≥ 65
467
84
378
173
372
179
421
130
Clinical stage
0.034
0.000
0.000
0.000
I
257
31
263
25
242
46
278
10
II
227
45
208
64
196
76
240
32
III
559
117
433
243
420
256
451
225
T stage
0.855
0.000
0.000
0.000
T1
193
31
208
16
181
43
214
10
T2
108
19
104
23
110
17
121
6
T3
146
28
116
58
109
65
128
46
T4
596
115
476
235
458
253
506
205
N stage
0.005
0.000
0.000
0.000
N0
446
58
430
74
392
112
462
42
N1
171
32
150
53
145
58
166
37
N2
185
42
151
76
149
78
152
75
N3
241
61
173
129
172
130
189
113
Tumor location
0.082
0.000
0.221
0.041
Cardia
537
96
433
200
444
189
485
148
Gastric body
191
48
182
57
155
84
182
57
Antrum of stomach
315
49
289
75
259
105
302
62
Pathological type
1.000
0.324
0.417
0.045
Adenocarcinoma
985
183
858
310
814
354
919
249
Other
58
10
46
22
44
24
50
18
Degree of differentiation
0.606
0.049
0.014
0.002
Well, high, medium
308
53
278
83
269
92
303
58
Moderate to low, poor
735
140
626
249
589
286
666
209
Borrmann type
0.220
0.000
0.029
0.000
I and II
381
61
353
89
324
118
391
51
III and IV
662
132
551
243
534
260
578
216
Size
0.305
0.000
0.000
0.000
< 5
589
101
555
135
528
162
590
100
≥ 5
454
92
349
197
330
216
379
167
Survival status
0.000
0.000
0.000
0.000
Alive
736
106
686
156
646
196
728
114
Dead
307
87
218
176
212
182
241
153
To further analyze the factors affecting the prognosis of gastric cancer patients, we used univariate and multivariate Cox regression analysis. The univariate analysis indicated that age, clinical stage, T and N stage, tumor location, differentiation, Borrmann type, size, and four serum tumor markers were prognostic factors for OS (Table 3). However, pathology type and gender had no significance for OS (P > 0.05; Table 3). Furthermore, we included meaningful factors from the univariate analysis in the multivariate analysis. In multivariate analysis, the clinical stage was derived from both T and N stages, so we only included the clinical stage in multivariate analysis. The results showed that clinical stage, tumor size, AFP, CEA, CA125 and CA19-9 (P < 0.05; Table 3) were independent prognostic factors for OS.
Table 3 Univariate and multivariate cox regression analysis for overall survival.
Variables
OS
HR (95%CI)
P value
Univariate analysis
Gender (male vs female)
0.922 (0.729-1.165)
0.496
Age (< 65 vs ≥ 65)
1.315 (1.080-1.604)
0.007
Clinical stage
I
1 (Reference)
II
2.876 (1.735-4.768)
0.000
III
8.712 (5.601-13.552)
0.000
T stage
T1
1 (Reference)
T2
1.693 (0.889-3.227)
0.019
T3
4.438 (2.634-7.478)
0.000
T4
6.330 (3.981-10.065)
0.000
N stage
N0
1 (Reference)
N1
2.330 (1.667-3.257)
0.000
N2
3.239 (2.383-4.401)
0.000
N3
5.201 (3.957-6.836)
0.000
Location
Cardia
1 (Reference)
Gastric body
1.306 (1.025-1.664)
0.031
Antrum of stomach
1.698 (1.276-2.261)
0.000
Pathological type (adenocarcinoma vs other)
1.209 (0.807-1.813)
0.358
Differentiation (well, high and medium vs moderate to low and poor)
1.776 (1.392-2.265)
0.000
Borrmann type (III vs other)
0.579 (0.462-0.724)
0.000
Size (< 5 vs ≥ 5)
0.403 (0.329-0.494)
0.000
AFP (positive vs negative)
1.929 (1.520-2.448)
0.000
CEA (positive vs negative)
3.155 (2.584-3.851)
0.000
CA125 (positive vs negative)
2.521 (2.067-3.074)
0.000
CA19-9 (positive vs negative)
3.489 (2.847-4.276)
0.000
Multivariate analysis
Age (< 65 vs ≥ 65)
1.225 (0.999-1.501)
0.052
Clinical stage
I
1 (Reference)
II
2.102 (1.248-3.540)
0.005
III
4.860 (2.988-7.907)
0.000
Location
Cardia
1 (Reference)
Gastric body
1.531 (1.187-1.976)
0.051
Antrum of stomach
1.092 (0.847-1.406)
0.498
Differentiation (well, high and medium vs moderate to low and poor)
1.212 (0.940-1.564)
0.139
Borrmann type (III vs other)
0.873 (0.688-1.108)
0.265
Size (< 5 vs ≥ 5)
1.269 (1.020-1.578)
0.032
AFP (positive vs negative)
1.728 (1.359-2.198)
0.000
CEA (positive vs negative)
2.037 (1.646-2.522)
0.000
CA125 (positive vs negative)
1.739 (1.416-2.135)
0.000
CA19-9 (positive vs negative)
1.910 (1.535-2.377)
0.000
Then, we analyzed the differences among these increased tumor markers based on OS. There were statistically significant differences in OS among four different tumor markers (P < 0.05; Figure 2A). Therefore, we conducted a multivariate Cox regression analysis for the four tumor markers separately, and established a statistical model based on the results. The score of each variable in the model was calculated by dividing the minimum β-coefficient from the multivariate Cox regression analysis and rounding to the nearest 0.5. The total score was calculated by summing the scores of each variable. A score-based model was developed (Table 4).
Figure 2 Overall survival.
A: Overall survival (OS) according to different tumor markers in all patients; B: OS according to different scores in all patients; C: OS between high score patients and low score patients. AFP: Alpha foetoprotein; CEA: Carcinoembryonic antigen.
Table 4 Multivariate cox regression analysis and assigned scores about four tumor markers.
Variables
OS
HR (95%CI)
P value
β
Reference value
Score
AFP (positive vs negative)
1.722 (1.355-2.190)
0.000
0.543
0.543
1
CEA (positive vs negative)
2.311 (1.877-2.847)
0.000
0.838
0.543
2
CA125 (positive vs negative)
1.957 (1.595-2.401)
0.000
0.671
0.543
1
CA19-9 (positive vs negative)
2.504 (2.021-3.103)
0.000
0.920
0.543
2
The results showed that different scores were closely related to T and N stage, clinical stage, Borrmann type, differentiation, tumor location, size and OS (Table 5). Then we selected significant variables for further analyses (Table 6).
Table 5 The association of demographics and clinicopathologic characteristics with different scores.
Variables
0 (n = 537)
1 (n = 219)
2 (n = 181)
3 (n = 139)
4 (n = 59)
5 (n = 71)
6 (n = 30)
P value
Gender
0.506
Male
413
158
136
104
50
55
21
Female
124
61
45
35
9
16
9
Age
0.179
< 65
316
124
98
68
31
36
12
≥ 65
221
95
83
71
28
35
18
Clinical stage
0.000
I
197
51
27
10
3
0
0
II
120
66
36
33
10
6
1
III
220
102
118
96
46
65
29
T stage
0.000
T1
147
48
15
10
3
0
1
T2
75
22
20
9
0
1
0
T3
56
37
27
25
13
13
3
T4
259
112
119
95
43
57
26
N stage
0.000
N0
292
96
64
36
11
4
1
N1
94
40
18
27
8
15
1
N2
73
37
44
32
14
17
10
N3
78
46
55
44
26
35
18
Tumor location
0.010
Cardia
268
95
97
77
37
41
18
Gastric body
93
58
28
26
11
14
9
Antrum of stomach
176
66
56
36
11
16
3
Pathological type
0.236
Adenocarcinoma
514
202
172
133
54
64
29
Other
23
17
9
6
5
7
1
Degree of differentiation
0.013
Well, high, medium
174
64
53
41
16
8
5
Moderate to low, poor
363
155
128
98
43
63
25
Borrmann type
0.000
I and II
241
80
42
48
10
15
6
III and IV
296
139
139
91
49
56
24
Size
0.000
< 5
364
121
91
66
17
22
9
≥ 5
173
98
90
73
42
49
21
Survival status
Alive
433
161
128
75
27
16
2
Dead
104
58
53
64
32
55
28
Table 6 Further comparison of variables with different score.
Variables
P value
Clinical stage
T stage
N stage
Location
Differentiation
Borrmann type
Size
Survival status
0 vs 1
0.001
0.027
0.036
0.016
0.437
0.035
0.001
0.032
0 vs 2
0.000
0.000
0.000
0.678
0.461
0.000
0.000
0.007
0 vs 3
0.000
0.000
0.000
0.296
0.541
0.034
0.000
0.000
0 vs 4
0.000
0.000
0.000
0.077
0.464
0.000
0.000
0.000
0 vs 5
0.000
0.000
0.000
0.218
0.000
0.000
0.000
0.000
0 vs 6
0.000
0.000
0.000
0.020
0.104
0.007
0.000
0.000
1 vs 2
0.001
0.001
0.005
0.021
0.990
0.005
0.365
0.575
1 vs 3
0.000
0.001
0.005
0.071
0.956
0.725
0.160
0.000
1 vs 4
0.000
0.001
0.000
0.030
0.872
0.005
0.000
0.000
1 vs 5
0.000
0.000
0.000
0.106
0.002
0.020
0.000
0.000
1 vs 6
0.000
0.002
0.000
0.061
0.193
0.100
0.011
0.000
2 vs 3
0.092
0.481
0.061
0.541
0.967
0.033
0.653
0.002
2 vs 4
0.095
0.032
0.072
0.187
0.869
0.366
0.004
0.001
2 vs 5
0.000
0.004
0.000
0.373
0.003
0.867
0.007
0.000
2 vs 6
0.002
0.101
0.001
0.026
0.188
0.817
0.048
0.000
3 vs 4
0.445
0.206
0.316
0.521
0.864
0.016
0.018
0.351
3 vs 5
0.001
0.036
0.003
0.867
0.003
0.056
0.027
0.000
3 vs 6
0.007
0.202
0.001
0.116
0.180
0.136
0.105
0.000
4 vs 5
0.045
0.180
0.114
0.824
0.024
0.657
0.849
0.008
4 vs 6
0.069
0.329
0.065
0.348
0.306
0.774
0.907
0.000
5 vs 6
0.671
0.282
0.133
0.252
0.520
0.899
0.922
0.086
To evaluate the impact of different scores on the prognosis of different stages of gastric cancer, Kaplan-Meier survival curves showed that the OS of patients with different scores was significantly different (Figure 2B; P < 0.05). Furthermore, we divided the patients into a low-score group (score ≤ 2) and a high-score group (score > 2) according to the result. We found that patients with high score had poor survival time (Figure 2C; P < 0.05). Next, subgroup analysis showed that the survival outcomes of patients with gastric cancer at different stages were also consistent with this finding. Patients were excluded from this analysis due to the small number of people with a stage I score of 4 (n = 3) and stage II scores of 5 (n = 6) and 6 (n = 1). In stage I, the 3-year OS for scores 0-3 ranged from 96.85%, 95%, 85%, and 80% (Figure 3). In stage II, this trend was slightly different. The 3-year OS for scores 0-4 were 88.6%, 76.5%, 90.5%, 65.5% and 60% (Figure 3). As for stage III, the 3-year OS for scores 0-6 were 70.9%, 68.3%, 64.1%, 50.9%, 38.4%, 18.5% and 5.2% (Figure 3). At the same time, we also analyzed the mean survival of patients with different scores. For stage I patients, the mean OS was 55.980 months. In stage II, the mean OS was 51.550 months. The mean OS of stage III was 39.422 months (Table 7).
Figure 3 Overall survival according to different scores in different stages patients.
A: Overall survival of patients with stage I; B: Overall survival of patients with stage II; C: Overall survival of patients with stage III.
Table 7 Means and 95%CI for overall survival in patients with different stages and different score of gastric cancer.
Stage
Score
Mean overall survival time (months)
Estimate
SE
95%CI
I
0 (n = 197)
56.200
0.516
55.188-57.212
1 (n = 51)
56.893
0.777
55.371-58.416
2 (n = 27)
52.090
2.283
47.615-56.564
3 (n = 10)
44.700
3.985
36.889-52.511
Overall (n = 285)
55.980
0.456
55.086-56.874
II
0 (n = 120)
54.133
0.946
52.279-55.987
1 (n = 66)
49.802
1.778
46.316-53.288
2 (n = 36)
53.627
1.320
51.039-56.214
3 (n = 33)
44.903
3.293
38.449-51.357
4 (n = 10)
38.400
6.442
25.773-51.027
Overall (n = 265)
51.550
0.845
49.893-53.207
III
0 (n = 220)
46.927
1.052
44.864-48.989
1 (n = 102)
44.814
1.727
41.429-48.199
2 (n = 118)
43.357
1.661
40.102-46.613
3 (n = 96)
35.471
2.129
31.298-39.645
4 (n = 48)
31.096
3.157
24.909-37.283
5 (n = 71)
20.462
2.271
16.010-24.913
6 (n = 30)
10.966
2.240
6.576-15.355
Overall (n = 676)
39.422
0.792
37.870-40.974
DISCUSSION
Preoperative serum tumor markers have significant value in the diagnosis and prognosis of gastric cancer. However, in recent years, with the development of detection technology, many new methods, such as molecular detection and gene detection, have been used in gastric cancer. Fu et al[13] found that exosomal TRIM3 may serve as a new biomarker for gastric cancer diagnosis and might provide a new avenue for gastric cancer therapy[13]. Ma et al[14] reported that LncRNA PANDAR was an independent unfavorable prognostic factor in gastric cancer. Serum granulysin levels also have significant value as a novel prognostic marker of gastric cancer[15]. Due to the emergence of these detection methods, the value of serum tumor markers in the diagnosis and treatment of gastric cancer is often overlooked. According to the CSCO guideline, tumor markers still play an important role in the prognosis and therapeutic effect of gastric cancer[3]. Some researchers have found that the combined detection of multiple tumor markers can improve the early detection of digestive tract tumors[16,17].
In this study, we enrolled a total of 1236 gastric cancer patients as subjects. First, we used the χ2 test to analyze the relationship between four tumor markers and clinicopathological parameters. Many previous studies focused on the early diagnosis of gastric cancer using tumor marker. Mo et al[18] found that CEA, CA199, and CA724 were significant for the diagnosis of gastric cancer, and combing these three tumor markers could improve diagnostic sensitivity and accuracy[18]. Another study the enrolled 154 patients with gastric cancer found that by readjusting the cut-off values from 5.0 ng/mL to 5.2 ng/mL for CEA and from 37.00 U/mL to 30.0 U/mL for CA19-9, the sensitivity for CA199 increased from 34.2% to 40.2%, but there was no increase for CEA[19].
Ning et al[16] also suggested that the combination detection of TK1, CEA, CA19-9 and CA72-4 might be useful for the diagnosis of gastric cancer and colorectal cancer[16]. In our study, we found that age, clinical stage, T and N stage, tumor location, differentiation, Borrmann type, size, and 4 serum tumor markers could affect the prognosis of gastric cancer patients. However, only clinical stage and tumor markers were independent influencing factors for the prognosis of gastric cancer. In a meta-Analysis including 14651 gastric cancer patients, it was suggested that CEA may be an independent prognostic factor in gastric cancer[20]. Moreover, Jo et al[21] found that regarding metastatic gastric cancer, patients with higher value of CA 19-9 had shorter OS[21]. Tian et al[22] concluded that elevated CEA, CA19-9, CA242 and CA50 levels were associated with poorer prognosis[22], only CA 242 was a statistically independent risk factor[23]. Our conclusion was the same as this about the significant value of CEA and CA199, besides one study showed that gastric cancer is associated with CA125 and CA242[24], But only CA125 was related to the distant metastasis of gastric cancer. This indicated the significant value of CA125, in the future we will explore clinical value of CA125 for stage IV gastric cancer. However, the previous studies only examined the impact of a tumor marker on the prognosis of gastric cancer. To analyze the effect of combining four tumor markers on the prognosis of gastric cancer, we established a score-based model according to the result of Cox regression analysis to assign our patients a different score. Subsequently, differences in clinicopathological parameters among gastric cancer patients with different scores were analyzed. Similarly, Guo et al[23] also developed a risk assessment model based on regression coefficients derived from Cox regression analysis. It was reported that the median survival time differed significantly among the different expression of the three tumor markers. CA72-4, a tumor marker, was not included in our study. At that time, some studies have shown that CA72-4 plays a significant role in the diagnosis and prognosis of gastric cancer. We can pay attention to this indicator in our future studies. More importantly, we also compared patients with different scores between different clinical stages. Among patients with stage II gastric cancer, those with a score of 2 had a longer mean survival and a smaller 3-year survival than those with a score of 1. Previous studies have also analyzed the prognostic evaluation of tumor markers in different stages of gastric cancer. Feng et al[25] found that the positive rates of CEA, CA19-9, AFP and CA125 were relatively low for early gastric cancer[25]. In addition, a Japanese study compared the evaluation of serum CEA and CA 19-9 Levels before and after surgery in stage II/III gastric cancer[26]. However, in this study, the prognostic value of the combination of these two tumor markers for gastric cancer was not studied in detail. Lin et al[27] specifically studied the effect of CEA and CA19-9 on the prognosis of stage III gastric cancer[27]. However, none of the studies were the same as ours. A statistical scoring model is established to predict the prognosis of gastric cancer patients according to the 4 tumor markers. In our study, we further analyzed the role of the statistical model in the prognostic of patients with different stages of gastric cancer. Surprisingly, we found that our prognostic statistical model did not play a larger role in stage I and II than in stage III. Only in stage III gastric cancer did we find that the prognosis of gastric cancer patients became worse and worse as the score increased. But in stage I and II gastric cancer patients, we found that the mean survival time of stage I gastric cancer patients with a score of 0 and a score of 1 was 56.200 months ± 0.516 months and 56.893 months ± 0.777 months, respectively and stage II gastric cancer patients with a score of 1 and 2 were 49.802 months ± 1.778 months and 53.627 months ± 1.320 months, respectively. However, patients with the highest score had the shortest mean survival time regardless of clinical stage. This also suggested that the statistical model might be helpful in evaluating the prognosis of patients with stage I and II disease. There were also other studies on the use of scoring systems in patients with gastric cancer. Wang et al[28] established a scoring system to evaluate the role of second-line chemotherapy in the prognosis of patients with advanced gastric cancer based on performance status: Eastern Cooperative Oncology Group, Hb, time-to-program and other indicators[28]. In this study, the patients were divided into high-risk group and low-risk group after scoring, and the survival rate of the two groups was significantly different. Our scoring system only includes serum tumor markers. We will try to incorporate more clinical indicators into the scoring system to better help us judge the prognosis of gastric cancer patients in future studies.
Not only in the diagnosis, treatment and prognosis of gastric cancer, serum tumor markers also play an important role in tumor chemotherapy. In Sun et al’s study, the decreases in tumor marker after chemotherapy (CEA ≥ 35%, CA19-9 ≥ 30%, or CA72-4 ≥ 40%) could predict a higher clinical benefit in patients with metastatic gastric cancer[29]. Another study analyzed the use of tumor markers in neoadjuvant chemotherapy, which showed that high levels of CEA (> 50 ng/mL) may predict clinical disease progression after neoadjuvant chemotherapy, and a decrease (> 70%) in CA72-4 may predict pathological response to neoadjuvant chemotherapy[30]. For our study, should we use different chemotherapy regimens for patients with different stages of gastric cancer?
There are still several shortcomings in our study. First, our study did not include sufficient patients with scores of 3 and 4, especially those with stage I and II gastric cancer. Second, the follow-up period was relatively short. This study analyzed only 3-year OS in patients with gastric cancer and did not include disease free survival in the follow-up program. This may have an impact on the results of our study. In addition, we did not study the impact of the combination of different tumor markers on the diagnosis and prognosis of gastric cancer patients. In subsequent studies, we can divide the four tumor markers into different groups to study their value in the diagnosis and treatment of gastric cancer.
CONCLUSION
In conclusion, preoperative serum tumor markers (AFP, CEA, CA125, CA19-9) are associated with the prognosis of different clinical stage gastric cancer, and the number of increased serum tumor markers have significant value for OS of gastric cancer patients.
Footnotes
Provenance and peer review: Unsolicited article; Externally peer reviewed.
Peer-review model: Single blind
Specialty type: Oncology
Country of origin: China
Peer-review report’s classification
Scientific Quality: Grade D
Novelty: Grade C
Creativity or Innovation: Grade C
Scientific Significance: Grade B
P-Reviewer: Kita K S-Editor: Liu H L-Editor: A P-Editor: Wang WB
Zhou CM, Zhao SH. Evaluation of the value of combined detection of tumor markers CA724, carcinoembryonic antigen, CA242, and CA19-9 in gastric cancer.World J Gastrointest Oncol. 2024;16:1737-1744.
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