Literature DB >> 35117634

A nomogram for predicting cancer-specific survival in different age groups for operable gastric cancer: a population-based study.

Shuai Guo1, Mu-Yan Shang2, Zhe Dong1, Jun Zhang1, Yue Wang1, Zhi-Chao Zheng1, Yan Zhao1.   

Abstract

BACKGROUND: The age thresholds for differentiating young and elderly patients are still under debate. This study aimed to evaluate the cut-off age for differentiating patients along with the prognostic value of age for operable gastric cancer (GC).
METHODS: Patients diagnosed with resected gastric adenocarcinoma were identified from the National Cancer Institute's Surveillance, Epidemiology, and End Results (SEER) database (training cohort and internal validation cohort) and Liaoning Cancer Hospital (external validation cohort). Kaplan-Meier plots were used to compare cancer-specific survival (CSS) across different age groups. Univariate and multivariate analysis was conducted using a Cox regression model. Predictive ability of the nomogram was determined by the Harrell's concordance index (C-index), calibration curves, and Akaike's Information Criterion (AIC).
RESULTS: A total of 17,339 patients with GC were included. According to the univariate analysis results, CSS was similar among patients aged 20-69 years old, started to worsen for patients over the age of 70, and was the worst for patients older than 79 years in the training cohort. Thus, we further divided the age groups into 20-69, 70-79, and >79, and multivariate analysis showed that patients above 70 years of age had worse CSS. The nomogram was established based on the results of the multivariate analysis. The C-indexes for the training, internal, and external validation cohorts were 0.7531, 0.7344, and 0.7431, respectively.
CONCLUSIONS: This study showed that age had a relative predictive ability for CSS, 70 years should be the cut-off age, and age ≥70 years is an independent prognostic risk factor for GC patients who undergo surgery. These data highlight the importance of individualized treatment to improve the prognosis of patients with GC. 2020 Translational Cancer Research. All rights reserved.

Entities:  

Keywords:  Age; gastric cancer (GC); nomogram; prognosis

Year:  2020        PMID: 35117634      PMCID: PMC8798211          DOI: 10.21037/tcr.2020.02.37

Source DB:  PubMed          Journal:  Transl Cancer Res        ISSN: 2218-676X            Impact factor:   1.241


Introduction

Gastric cancer (GC) is the fifth most common cancer in the world and the third leading cause of cancer-related mortality (1). Although great progress has been made in the treatment of GC, the prognosis is still not optimistic. Apart from typical pathological prognostic factors, the demographic characteristics of patients, especially age, have been proven to affect survival outcomes of multiple cancers, including colorectal (2) and prostate cancer (3). The GC incidence rate increases gradually with age (4). The age of patients at GC onset is generally between 50–70 years old, and 60% of patients with GC are aged over 65 years (5,6), although the incidence of GC among younger people is increasing (7). Old age has been a problem for choosing effective treatment strategies, and clarifying the association between age and long-term survival of GC to improve therapeutic efficacy is critical. Previous findings on the prognosis of young and elderly patients have not formed a consensus. Some studies reported that younger patients had a better prognosis (5,8), whereas others have indicated unfavorable characteristics and poorer prognosis in young patients (9,10). Still other studies found no significant differences in stage-specific survival between the 2 age groups (6,11,12). However, the study population sizes were relatively small or the age thresholds for differentiating young from elderly patients were not fixed in these studies. In contrast, the U.S. National Cancer Institute’s Surveillance, Epidemiology, and End Results (SEER) database comprises larger samples of data on GC than those of other studies, enabling us to evaluate the impact of age at diagnosis on gastric cancer-specific survival (GCSS). Therefore, this study aimed to determine whether differences in cancer-specific survival (CSS) exist between different age groups, to evaluate a cut-off age, and to establish a predictive model for GC patients based on age.

Methods

Patient selection

Data were obtained from the SEER 18 Regs Custom Data (with additional treatment fields), Nov 2017 Sub (1973–2015 varying). From the SEER database, patients diagnosed between 2010 and 2015 were set as the training cohort, and patients diagnosed between 2004 and 2009 were set as the internal validation cohort. Patients from Liaoning Cancer Hospital between 2011 and 2016 formed the external validation cohort. The inclusion criteria were as follows: patients older than 20, pathological confirmation of gastric adenocarcinoma (codes: M-8140/3, M8143-3 to M-8145/3, M-8210/3, M-8211/3, M-8255/3, M-8260/3 to M-8263/3, M-8310/3, M-8323/3, M-8480/3, M-8481/3), patients received surgery, and American Joint Committee on Cancer (AJCC) eighth edition stages I–III. The exclusion criteria were as follows: patients with an unknown number of lymph node (LN) retrieved, an unknown number of positive LNs, an unknown AJCC stage, survival of less than 1 month, unknown survival time or death because of any other cause. The CONSORT diagram is listed in .
Figure S1

CONSORT diagram of the training and internal validation cohorts. AJCC, eighth edition. AJCC, American Joint Committee on Cancer; LN, lymph node.

Figure S2

CONSORT diagram of the external validation cohort. AJCC, eighth edition. AJCC, American Joint Committee on Cancer; LN, lymph node.

Statistical analysis

Patient data including age at diagnosis, gender, race, histological grade, T stage, N stage, TNM stage, radiotherapy, positive number of LNs, total number of retrieved LNs, tumor size, cause-specific death classification, survival time (months), and status were retrieved from both the SEER database and the Liaoning Cancer Hospital dataset. To better establish the impact of age on CSS, age at diagnosis was classified into the following groups: 20–29, 30–39, 40–49, 50–59, 60–69, 70–79, and older than 79 years. Categorical variables were compared by χ2 test. Survival rates were estimated using the Kaplan-Meier method. The nomogram, Harrell’s concordance index (C-index), Akaike’s Information Criterion (AIC), and calibration curves were generated to compare the predictive accuracy for different age groups. Statistical Package for Social Science (SPSS; IBM, Armonk, NY, USA) version 23.0 and R software (version 3.4.4) were used to conduct all statistical analyses. P<0.05 was considered a statistically significant value.

Results

Clinicopathological characteristics

A total of 17,339 patients were eligible for this study, and the clinicopathological characteristics of these patients are summarized in . Statistical significance (P<0.05) was found for all the variables when the training set and the external validation set were compared. Meanwhile, except for race, the variables of the internal validation set were significantly different from those of the training set. It was apparent that the patients in the external validation set were younger than those in the training set (23.2% vs. 38.3% of the group ≥70 years). Patients in the internal and external validation sets had a greater number of unfavorable features, including larger tumor size, advanced T stage, LN metastasis, and poorer histological grade. However, more patients in the external validation set had ≥15 LNs retrieved and less in the internal validation set than those of training set.
Table 1

Clinicopathological characteristics of study populations

CharacteristicsTraining set (A) (N=7,493), N (%)Internal validation set (B) (N=8,129), N (%)P value (A vs. B)External validation set (C) (N=1,717), N (%)P value (A vs. C)
Age (years)<0.001<0.001
   20–2947 (0.6)29 (0.4)6 (0.3)
   30–39208 (2.8)224 (2.8)34 (2.0)
   40–49638 (8.5)788 (9.7)129 (7.5)
   50–591,547 (20.6)1,549 (19.1)440 (25.6)
   60–692,188 (29.2)2,150 (26.4)709 (41.3)
   70–791,975 (26.4)2,179 (26.8)318 (18.5)
   >79890 (11.9)1,210 (14.9)81 (4.7)
Gender0.025<0.001
   Male4,800 (64.1)5,067 (62.3)1,252 (72.9)
   Female2,693 (35.9)3,062 (37.7)465 (27.1)
Race0.708
   White4,952 (66.1)5,380 (66.2)
   Black928 (12.4)1,034 (12.7)
   Othera1,613 (21.5)1,715 (21.1)
T stage<0.001<0.001
   T11,863 (24.9)1,868 (23.0)218 (12.7)
   T2924 (12.3)1,000 (12.3)307 (17.9)
   T32,546 (34.0)2,845 (35.0)34 (2.0)
   T4a1,721 (23.0)1,818 (22.4)970 (56.5)
   T4b439 (5.9)598 (7.4)188 (10.9)
N stage<0.001<0.001
   N03,532 (47.1)3,363 (41.4)590 (34.4)
   N11,337 (17.8)1,456 (17.9)335 (19.5)
   N21,198 (16.0)1,455 (17.9)373 (21.7)
   N3a999 (13.3)1,321 (16.3)297 (17.3)
   N3b427 (5.7)534 (6.6)122 (7.1)
TNM stage<0.001<0.001
   I2,268 (30.3)2,290 (28.2)370 (21.5)
   II2,331 (31.1)2,240 (27.6)368 (21.4)
   III2,894 (38.6)3,599 (44.2)979 (57.0)
LN examined<0.001<0.001
   <153,069 (41.0)4,241 (52.2)345 (20.1)
   ≥154,424 (59.0)3,888 (47.8)1,372 (79.9)
Grade0.001<0.001
   1416 (5.8)360 (4.6)51 (3.0)
   21,988 (27.9)2,092 (27.0)437 (25.5)
   3 and UD4,728 (66.3)5,310 (68.4)1,229 (71.6)
Site0.005<0.001
   Upper stomach2,436 (41.5)2,464 (39.8)696 (41.9)
   Middle stomach720 (12.3)697 (11.3)253 (15.2)
   Lower stomach2,174 (37.0)2,483 (40.1)711 (42.8)
   Overlapping type543 (9.2)543 (8.8)
Tumor size (cm)<0.001<0.001
   <54,055 (60.9)3,963 (56.5)652 (49.1)
   ≥52,603 (39.1)3,056 (43.5)677 (50.9)

a, Other includes American Indian/AK Native, Asian/Pacific Islander. LN, lymph node; UD, undifferentiated type.

a, Other includes American Indian/AK Native, Asian/Pacific Islander. LN, lymph node; UD, undifferentiated type.

Overall survival (OS) of GC among different age groups

The Kaplan-Meier plot for the training set is shown in . The patients who were older than 79 years of age at the time of diagnosis presented with the worst survival rate with a 5-year CSS rate of 57.2%, 51.1%, 57.0%, 52.7%, 54.6%, 52.2%, and 43.9% for patients ages 20–29, 30–39, 40–49, 50–59, 60–69, 70–79, and >79 years, respectively. We then evaluated the long-term survival of the validation sets (). The results were consistent with those of the training set. Mean survival times were 44.2, 41.5, 41.3, 41.2, 39.9, 36.9, and 32.0 months for each age group, respectively, in the internal validation set, and 48.0, 44.2, 46.9, 46.4, 45.3, 40.9, and 34.8 months for each age group, respectively, in the external validation set. There were significant differences found in all analyses (log-rank: P<0.001).
Figure 1

Kaplan-Meier estimates of OS in the training set (A), internal validation set (B), and external validation set (C). OS, overall survival.

Kaplan-Meier estimates of OS in the training set (A), internal validation set (B), and external validation set (C). OS, overall survival.

Comparisons of survival using Cox regression model in the training cohort

Univariate analysis results of the training set using Cox regression model are listed in . In the univariate analysis, using ages 60–69 years as reference, the patients who were younger than 69 years had almost the same prognosis and showed no significant difference (P=0.596, 0.708, 0.307, and 0.895 for the age groups 20–29, 30–39, 40–49, and 50–59 years, respectively). The CSS decreased with age only over 70 years [hazard radio (HR), 1.14; 95% confidence interval (CI), 1.02–1.26; P=0.021] and was the worst in the >79-year age group (HR, 1.63; 95% CI, 1.44–1.85; P<0.001) (). The age groups were then divided into 20–69, 70–79, and >79 years for multivariate analysis to be performed. Moreover, race, histological grade, T stage, N stage, number of retrieved LNs, site, tumor size, and radiation were also associated with CSS. Each of these variables was included in the multivariate analysis. The multivariate analysis showed that older age (70–79 and >79 years), race (white), histological grade [poorly differentiated and undifferentiated type (UD)], T stage (T2/3/4), N stage (N1/2/3), number of retrieved LNs (<15), site (upper stomach), tumor size (≥5 cm), and the absence of radiation therapy were independent risk factors for prognosis ().
Table S1

Univariate analysis of CSS in the training set

VariablesTraining set
HR (95% CI)P value
Age (years)
   20–290.86 (0.48–1.52)0.596
   30–391.05 (0.82–1.34)0.708
   40–490.92 (0.78–1.08)0.307
   50–591.01 (0.90–1.13)0.895
   60–69Reference
   70–791.14 (1.02–1.26)0.021
   >791.63 (1.44–1.85)<0.001
Gender
   MaleReference
   Female0.97 (0.90–1.06)0.517
Race
   WhiteReference
   Black1.03 (0.91–1.16)0.669
   Othera0.74 (0.67–0.82)<0.001
T stage
   T1Reference
   T2/T3/T45.39 (4.63–6.28)<0.001
N stage
   N0Reference
   N1/2/34.03 (3.66–4.43)<0.001
LN examined
   <15Reference
   ≥150.92 (0.85–1.00)0.050
Grade
   1/2Reference
   3 and UD1.95 (1.77–2.15)<0.001
Site
   Upper stomachReference
   Middle stomach0.87 (0.74–1.01)0.066
   Lower stomach0.90 (0.82–1.00)0.051
   Overlapping type1.40 (1.21–1.63)<0.001
Tumor size (cm)
   <5Reference
   ≥52.08 (1.91–2.26)<0.001
Radiation
   NoReference
   Yes1.15 (1.06–1.24)0.001

a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type.

Table 2

Multivariate analysis of CSS in the training set

VariablesHR (95% CI)P value
Age (years)
   20–69Reference
   70–791.33 (1.21–1.46)<0.001
   >791.71 (1.52–1.93)<0.001
Race
   WhiteReference
   Black1.04 (0.92–1.17)0.107
   Othera0.82 (0.73–0.91)<0.001
T stage
   T1Reference
   T2/T3/T43.04 (2.58–3.58)<0.001
N stage
   N0Reference
   N1/2/33.02 (2.72–3.35)<0.001
LN examined
   <15Reference
   ≥150.72 (0.67–0.78)<0.001
Grade
   1/2Reference
   3 and UD1.47 (1.33–1.62)<0.001
Site
   Upper stomachReference
   Middle stomach0.76 (0.65–0.89)0.001
   Lower stomach0.79 (0.70–0.88)<0.001
   Overlapping type0.94 (0.81–1.10)0.453
Tumor size (cm)
   <5Reference
   ≥51.31 (1.26–1.50)<0.001
Radiation
   NoReference
   Yes0.76 (0.69–0.83)<0.001

a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type.

a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type.

Development and validation of a prediction model

Independent risk factors of the training set were used to generate the nomogram (). The calibration curve is shown in , and the C-index was 0.7531. We then validated the results. Relatively good calibrations were also observed between the predictive and actual 5-year CSS for the validation sets (). The C-index of the internal and external validation sets was 0.7344 and 0.7431, respectively. Univariate and multivariate analysis of the validation sets indicated that patients aged 70–79 and over 79 years experienced worse prognosis, which also supported the age-based prediction model ().
Figure 2

Nomogram of OS in the training set. OS, overall survival; LN, lymph node; GCSS, gastric cancer-specific survival.

Figure 3

The calibration curves for predicting OS of patients at 3 and 5 years, in the training set (A), internal validation set (B), and external validation set (C). OS, overall survival; GCSS, gastric cancer-specific survival.

Table 3

Multivariate analysis of CSS in the internal and external validation sets

VariablesInternal validation setExternal validation set
HR (95% CI)P valueHR (95% CI)P value
Age (years)
   20–69ReferenceReference
   70–791.42 (1.32–1.52)<0.0011.34 (1.10–1.63)0.004
   >791.81 (1.66–1.98)<0.0011.76 (1.28–2.42)0.001
Gender
   Male
   Female
Race
   WhiteReference
   Black1.03 (0.94–1.14)0.485
   Othera0.77 (0.71–0.84)<0.001
T stage
   T1ReferenceReference
   T2/T3/T42.94 (2.62–3.31)<0.0012.59 (1.59–4.22)<0.001
N stage
   N0ReferenceReference
   N1/2/32.78 (2.56–3.00)<0.0013.68 (2.83–4.80)<0.001
LN examined
   <15Reference
   ≥150.76 (0.63-0.93)0.007
Grade
   1/2ReferenceReference
   3 and UD1.43 (1.33–1.54)<0.0011.25 (1.02–1.53)0.028
Site
   Upper stomachReferenceReference
   Middle stomach0.73 (0.64–0.82)<0.0010.70 (0.52–0.94)0.018
   Lower stomach0.76 (0.70–0.83)<0.0010.82 (0.68–0.98)0.032
   Overlapping type0.98 (0.89–1.08)0.422
Tumor size (cm)
   <5ReferenceReference
   ≥51.16 (1.09–1.24)<0.0011.32 (1.09–1.61)0.006
Radiation
   NoReference
   Yes0.72 (0.67–0.76)<0.001

a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type.

Table S2

Univariate analysis of CSS in the internal and external validation sets

VariablesInternal validation setExternal validation set
HR (95% CI)P valueHR (95% CI)P value
Age (years)
   20–290.98 (0.59–1.63)0.9301.18 (0.38–3.69)0.778
   30–390.95 (0.78–1.16)0.6121.20 (0.68–2.10)0.531
   40–490.95 (0.85–1.07)0.3890.87 (0.60–1.27)0.468
   50–590.95 (0.86–1.04)0.2400.90 (0.71–1.12)0.338
   60–69ReferenceReference
   70–791.18 (1.09–1.28)<0.0011.45 (1.17–1.80)0.001
   >791.54 (1.40–1.69)<0.0012.04 (1.47–2.84)<0.001
Gender
   MaleReferenceReference
   Female0.99 (0.93–1.05)0.6400.93 (0.77–1.12)0.424
Race
   WhiteReference
   Black0.96 (0.87–1.05)0.324
   Othera0.71 (0.66–0.77)<0.001
T stage
   T1ReferenceReference
   T2/T3/T44.59 (4.11–5.11)<0.0015.13 (3.24–8.28)<0.001
N stage
   N0ReferenceReference
   N1/2/33.59 (3.34–3.86)<0.0014.69 (3.63–6.05)<0.001
LN examined
   <15ReferenceReference
   ≥151.00 (0.94–1.06)0.0030.80 (0.65–0.98)0.028
Grade
   1/2ReferenceReference
   3 and UD1.80 (1.67–1.93)<0.0011.37 (1.13–1.67)0.001
Site
   Upper stomachReferenceReference
   Middle stomach0.74 (0.66–0.84)<0.0010.58 (0.43–0.77)<0.001
   Lower stomach0.81 (0.75–0.88)<0.0010.75 (0.62–0.90)0.002
   Overlapping type1.31 (1.17–1.47)<0.001
Tumor size (cm)
   <5ReferenceReference
   ≥51.76 (1.65–1.88)<0.0011.73 (1.42–2.10)<0.001
Radiation
   NoReference
   Yes1.10 (1.04–1.17)0.002

a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type.

Nomogram of OS in the training set. OS, overall survival; LN, lymph node; GCSS, gastric cancer-specific survival. The calibration curves for predicting OS of patients at 3 and 5 years, in the training set (A), internal validation set (B), and external validation set (C). OS, overall survival; GCSS, gastric cancer-specific survival. a, Other includes American Indian/AK Native, Asian/Pacific Islander. CSS, cancer-specific survival; HR, hazard radio; CI, confidence interval; LN, lymph node; UD, undifferentiated type. We further compared the predictive efficacy of age serving as a continuous variable and categorical variable (3 groups and 6 groups). As listed in , when assessed as a continuous type, age had a better predictive accuracy and goodness of fit with the C-index (0.7539 vs. 0.7359) and AIC (7,773.2 vs. 8,695.0) of the training and internal validation sets, respectively. Age in the 3 age groups and the 6 age groups had a similar prognostic performance (C-index: 0.7531 vs. 0.7532; AIC: 7,769.7 vs. 7,777.9 for the training set, and C-index: 0.7344 vs. 0.7350; AIC: 8,714.3 vs. 8,712.9 for the internal validation set). Notably, age divided into 3 groups (C-index: 0.7431; AIC: 1,772.1) had a superior performance compared to 6 groups (C-index: 0.7391; AIC: 1,802.8) and was comparable with continuous type (C-index: 0.7426; AIC: 1,794.1).
Table 4

Predictive accuracy of age in continuous type and categorical type (6 groups and 3 groups)

AgeTraining setInternal validation setExternal validation set
C-indexAICC-indexAICC-indexAIC
Continuous0.75397,773.20.73598,695.00.74261,794.1
Categorical (6 groups)0.75327,777.90.73508,712.90.73911,802.8
Categorical (3 groups)0.75317,769.70.73448,714.30.74311,772.1

C-index, Harrell’s concordance index; AIC, Akaike’s Information Criterion.

C-index, Harrell’s concordance index; AIC, Akaike’s Information Criterion.

Discussion

GC is widely recognized as an age-related disease, and despite growing evidence that neoadjuvant therapy or adjuvant therapy is beneficial for locally advanced GC, the prognosis has remained poor. Understanding the related factors of GC progression can lead to better individualized therapy and prognosis prediction for GC. Considering that the relationship between age and OS rates might be complicated, especially in elderly patients, we selected GCSS as the primary study outcome to evaluate the prognostic value of age. As a key factor, the correlation between age and survival has been widely analyzed in several cancers (3,13,14). In terms of GC, it has been reported that young patients exhibited worse survival due to the high malignancy of tumor characteristics (10). Jiang et al. (15) reported that younger GC patients usually have metastasis to LNs. Seo et al. also indicated that younger patients had more advanced GC, while the overexpression of p53, HER-2, and MSI were found to be significantly decreased in younger age groups (12). Chen et al. (16) indicated that in patients who received surgery, those aged between 56 and 65 years had better CSS and presented with favorable clinicopathological features. By contrast, Song et al. (17) suggested that elderly patients experienced a lower OS rate compared with young patients in operable GC. However, the cut-off values of age assessed by the above studies were inconsistent. In our study, age groups were divided into 20–29, 30–39, 40–49, 50–59, 60–69, 70–79, and older than 79 years. After adjusting the available data by known GC prognostic factors, CSS changed with age, being lower among patients older than 70 years. The impact of age on CSS was consistent in both the training and validation sets. Thus, our findings indicate that 70 years should be cut-off age and that elderly GC patients have poorer GCSS than younger patients. We included Western and Eastern populations to establish the age-based prediction model. Although clinicopathological characteristics between the training and validation sets were significantly different, the C-index was above 0.70 each time. Further evaluation found that, compared with the initial age grouping, age split into 3 groups had a similar and even better predictive accuracy and goodness of fit, which confirmed the model has good extrapolation and prediction efficiency. Old age is one of the risk factors that preclude surgical treatment for patients. Contrary to non-elderly patients, elderly patients are more likely to have postoperative complications, and poor compensatory capacity leads to poor tolerance of surgical trauma (18,19). Moreover, the feasibility of inadequate perioperative therapy also increases with age. Previous studies have revealed that chemotherapy and radiotherapy were less likely to be performed on older patients, because they might experience a high incidence and risk of comorbidities, and decreased life expectancy (20,21). This might explain why our results had a poor prognosis for elderly patients. Other research has demonstrated that elderly patients may be able to gain better prognosis from invasive treatment. Choo et al. showed that although patients aged over 80 years suffered from coronary heart disease, cerebral infarction, renal insufficiency, hypertension, and other diseases, surgical intervention was superior to supportive treatment (22). Pan et al. performed a meta-analysis on laparoscopic gastrectomy (LG) for elderly patients and concluded that short outcomes were acceptable from LG for elderly patients and that old age alone should not be regarded as a contraindication of LG (23). For adjuvant chemotherapy, the Adjuvant Chemotherapy Trial of TS-1 for Gastric Cancer (ACTS-GC) (24) found that compared with surgery alone, patients aged from 60 to 80 years experienced a better OS and relapse-free survival (RFS) with the postoperative treatment of TS-1. The CLASSIC trial (25) also indicated that patients over 65 years with positive LNs could benefit from surgery in addition to adjuvant chemotherapy. Numerous studies have also investigated the efficacy and safety of targeted therapies for elderly patients with advanced GC. The Trastuzumab for Gastric Cancer (ToGA) trial (26) revealed that trastuzumab had a beneficial effect on the elderly group (≥60), with no significant increase in the incidence of severe toxicities. The RAINBOW (27) and REGARD (28) trials reported that ramucirumab or ramucirumab plus paclitaxel could serve as an alternative therapy for elderly GC patients with distant metastasis. However, prospective studies have imposed age limits for eligible populations, so specific evidence of phase III trials regarding treatment for elderly patients is currently unavailable (29,30). Relevant findings were usually derived from subgroup analysis. Further prospective trials are needed to determine guidelines for GC therapy, particularly in elderly patients. Some limitations existed in our study. First, it was a retrospective study, thus bias might potentially exist. Second, the SEER database did not contain treatment details such as chemotherapy and target therapy. Third, relatively few patients aged 20–29 were involved, which might have affected the results.

Conclusions

In conclusion, this study showed that age had relative predictive ability of GCSS. Furthermore, it found that 70 years should be the cut-off age and that age ≥70 years is an independent prognostic risk factor for GC patients who undergo surgery. These data highlight the importance of individualized treatment for improving the prognosis of patients with GC.
  30 in total

1.  Trastuzumab in combination with chemotherapy versus chemotherapy alone for treatment of HER2-positive advanced gastric or gastro-oesophageal junction cancer (ToGA): a phase 3, open-label, randomised controlled trial.

Authors:  Yung-Jue Bang; Eric Van Cutsem; Andrea Feyereislova; Hyun C Chung; Lin Shen; Akira Sawaki; Florian Lordick; Atsushi Ohtsu; Yasushi Omuro; Taroh Satoh; Giuseppe Aprile; Evgeny Kulikov; Julie Hill; Michaela Lehle; Josef Rüschoff; Yoon-Koo Kang
Journal:  Lancet       Date:  2010-08-19       Impact factor: 79.321

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Journal:  Cancer Epidemiol       Date:  2017-11-07       Impact factor: 2.984

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Journal:  Arch Surg       Date:  2009-06

5.  Clinicopathological features and prognosis of gastric cancer in young patients.

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9.  Impact of Age on the Prognosis of Operable Gastric Cancer Patients: An Analysis Based on SEER Database.

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1.  Modular characteristics and the mechanism of Chinese medicine's treatment of gastric cancer: a data mining and pharmacology-based identification.

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