Literature DB >> 29179497

Marital status and survival in epithelial ovarian cancer patients: a SEER-based study.

Xinyu Wang1, Xi Li1, Shaofei Su1, Meina Liu1.   

Abstract

Marital status has been proved to be correlated to the survival of patients in various cancer types, except for that in the large female population of epithelial ovarian cancer (EOC). In this study, we retrospectively extracted 10905 eligible EOC patients from the Surveillance, Epidemiology, and End Results (SEER) database in the period from 2004 to 2012. We categorized marital status as married, divorced/separated, widowed, and never married. Chi-square test was used to investigate the association between marital status and other variables. The Kaplan-Meier test was adopted to compare survival curves of different groups. Multivariate Cox regression analyses were conducted to estimate the effect of marital status on overall survival (OS) and epithelial ovarian cancer-specific survival (EOCSS). To explore how marital status affected patients diagnosed at the same stage, we further performed subgroup analyses according to TNM stage. The results showed that marital status was an independent predictor for OS and EOCSS. Subgroup analyses indicated that the relationship between marital status and prognosis varied according to different conditions. Widowed patients had poorer prognosis than the other groups in most conditions, while the never married group showed similar risk of mortality as the married ones.

Entities:  

Keywords:  SEER; cancer survival; epithelial ovarian cancer; marital status

Year:  2017        PMID: 29179497      PMCID: PMC5687667          DOI: 10.18632/oncotarget.21648

Source DB:  PubMed          Journal:  Oncotarget        ISSN: 1949-2553


INTRODUCTION

Epithelial ovarian cancer (EOC) is a clinically and biologically heterogeneous class of tumors including several major subtypes: serous, mucinous, endometrioid, and clear cell [1]. Although advances in diagnosis and treatment have been achieved in recent decades, age-standardized 5-year survival rate from ovarian cancer for all histological groups combined was around 30–40% in most countries from 1995 to 2009 [2]. It has become the fifth leading cause of cancer death in women in the U.S. In 2017, it is estimated that 22,440 new cases of ovarian cancer will be diagnosed and 14,080 deaths due to ovarian cancer will occur [3]. Previous studies have identified that women with a family history of ovarian cancer are at an increased risk of ovarian cancer [4]. Moreover, certain factors like the type, grade, and stage of the cancer, patients’ age and general health all affect the prognosis of EOC patients. Micro-level studies have also helped to better and more precisely predict the survival of ovarian cancer [5]. Among the studies, however, marital status, which plays an important role in women’s physical and mental health, has rarely been investigated for its effect on the EOC prognosis. In recent years, many researches have demonstrated that marital status independently predicts the survival of gastric cancer [6-8], colorectal cancer [9, 10], liver cancer [11], pancreatic cancer [12], and several other types of cancer [13-16]. Identifying the relationship between the marital status and the survival of EOC would help researchers, doctors, as well as policy makers better cope with the increasing trend of mortality rate. Therefore, we performed a comprehensive population-based analysis to clarify the prognostic significance of marital status on the survival of EOC patients. We used data in 2004-2012 from the US Surveillance, Epidemiology and End Results (SEER) cancer registry program to investigate the association of overall survival and ovarian cancer-specific survival with marital status and further analyzed the association stratified by stage.

RESULTS

Patient baseline characteristics

A total of 10905 eligible EOC patients were identified during the study period (from 2004 to 2012) in the SEER database. Among them, 5919 (54.28%) were married, 1268 (11.63%) were divorced or separated, 1733 (15.89%) were widowed, and 1985 (18.20%) were never married. Table 1 represents the summary of the subgroups of each variable and the relationship between each variable and marital status. Significant differences were observed in most of the comparisons. Specifically, widowed patients were more likely to be over 80 years (41.32%), while most of the never married patients were less than 60 years (67.41%). White patients accounted for the majority of each marital group, but the proportion of black patients was slightly higher in never married group (13.50%) than that in other groups. The distribution of marital status in diagnosis period of 2004-2008 and 2009-2012 was not statistically different (P=0.0612). Widowed patients were more likely to be diagnosed at stage IV (40.74%), while never married patients had the highest proportion among the four groups of being diagnosed at stage I. Moreover, widowed patients had the lowest proportion of receiving any type of surgery (63.24%), while the married had the highest (90.13%), compared with other groups.
Table 1

Baseline characteristics of EOC patients (n, %)

CharacteristicTotalMarriedDivorced/SeparatedWidowedNever marriedP value
Marital status10905(100.00)5919(54.28)1268(11.63)1733(15.89)1985(18.20)
Age<0.0001
 <605065(46.45)2994(50.58)595(46.92)138(7.96)1338(67.41)
 60-692707(24.82)1648(27.84)371(29.26)311(17.95)377(18.99)
 70-791882(17.26)925(15.63)225(17.74)568(32.78)164(8.26)
 ≥801251(11.47)352(5.95)77(6.07)716(41.32)106(5.34)
Race<0.0001
 White8956(82.13)5021(84.83)1024(80.76)1404(81.02)1507(75.92)
 Black846(7.76)267(4.51)144(11.36)167(9.64)268(13.50)
 Others1103(10.11)631(10.66)100(7.89)162(9.35)210(10.58)
Diagnosis year0.0612
 2004-20085709(52.35)3076(51.97)670(52.84)954(55.05)1009(50.83)
 2009-20125196(47.65)2843(48.03)598(47.16)779(44.95)976(49.17)
Grade<0.0001
 I732(6.71)415(7.01)57(4.50)58(3.35)202(10.18)
 II1365(12.52)776(13.11)148(11.67)145(8.37)296(14.91)
 III3751(34.40)2133(36.04)468(36.91)516(29.77)634(31.94)
 IV1966(18.03)1148(19.40)240(18.93)252(14.54)326(16.42)
 Unknown3091(28.34)1447(24.45)355(28.00)762(43.97)527(26.55)
TNM stage<0.0001
 I2512(23.04)1421(24.01)249(19.64)244(14.08)598(30.13)
 II992(9.10)565(9.55)106(8.36)137(7.91)184(9.27)
 III4290(39.34)2452(41.43)503(39.67)646(37.28)689(34.71)
 IV3111(28.53)1481(25.02)410(32.33)706(40.74)514(25.89)
Histological type<0.0001
 Serous5544(50.84)3182(53.76)702(55.36)803(46.34)857(43.17)
 Mucinous604(5.54)310(5.24)73(5.76)64(3.69)157(7.91)
 Clear-cell780(7.15)446(7.54)75(5.91)62(3.58)197(9.92)
 Endometrioid1162(10.66)657(11.10)116(9.15)109(6.29)280(14.11)
 Others2815(25.81)1324(22.37)302(23.82)695(40.10)494(24.89)
Surgery<0.0001
 No1707(15.65)584(9.87)206(16.25)637(36.76)280(14.11)
 Yes9198(84.35)5335(90.13)1062(83.75)1096(63.24)1705(85.89)

Effect of marital status on overall and cancer-specific survival

The results of Kaplan-Meier tests and multivariate Cox analyses of the effect of marital status on OS and EOCSS were shown in Table 2 and Table 3, respectively. The 5-year OS rate was 51.11% for the married, 39.30% for the divorced/separated, 51.28% for the never married, and 25.40% for the widowed (log-rank test P<0.0001) (Figure 1). After adjusting for other confounding factors with multivariate Cox regression, marital status was found to be an independent predictor of OS. Divorced/separated (HR=1.21, 95%CI: 1.11, 1.31), widowed (HR=1.12, 95%CI: 1.04, 1.20), and never married (HR=1.11, 95%CI: 1.03, 1.19) patients had an increased risk of mortality compared with married patients. In terms of EOCSS, the 5-year EOCSS rate was 53.72% for married patients, 43.42% for divorced/separated patients, 29.81% for widowed, and 54.02% for never married patients (log-rank test P<0.0001) (Figure 2). Similarly, after adjusting for all covariates, marital status was still identified as significantly associated with the EOCSS. Divorced/separated (HR=1.15, 95%CI: 1.06, 1.26), widowed (HR=1.11, 95%CI: 1.03, 1.20), and never married (HR=1.10, 95%CI: 1.02, 1.19) patients had an increased risk of EOC-specific mortality compared with married patients.
Table 2

Univariate and multivariate analyses of overall survival (OS)

Variables5-year OS (%)Univariate analysisMultivariate analysis
Log-rankPHR(95%CI)P
Marital status606.08<0.0001
 Married51.11Ref.
 Divorced/separated39.301.21(1.11, 1.31)<0.0001
 Widowed25.401.12(1.04, 1.20)0.0040
 Never married51.281.11(1.03, 1.19)0.0070
Age1851.17<0.0001
 <6059.23Ref.
 60-6944.941.19(1.11, 1.27)<0.0001
 70-7931.401.48(1.38, 1.60)<0.0001
 ≥8014.292.11(1.93, 2.31)<0.0001
Race98.70<0.0001
 White45.83Ref.
 Black33.341.20(1.10, 1.31)<0.0001
 Others53.510.97(0.88, 1.06)0.4693
Diagnosis year6.680.0098
 2004-200844.86Ref.
 2009-201245.570.94(0.89, 0.99)0.0180
Grade1121.83<0.0001
 I84.75Ref.
 II67.331.47(1.20, 1.80)0.0002
 III43.171.78(1.47, 2.15)<0.0001
 IV44.921.63(1.34, 1.99)<0.0001
 Unknown30.121.65(1.36, 2.01)<0.0001
TNM stage3099.93<0.0001
 I86.11Ref.
 II67.002.56(2.20, 2.97)<0.0001
 III37.265.45(4.83, 6.14)<0.0001
 IV18.267.25(6.41, 8.21)<0.0001
Histological type1140.85<0.0001
 Serous40.09Ref.
 Mucinous68.051.71(1.46, 1.99)<0.0001
 Clear-cell64.331.39(1.22, 1.58)<0.0001
 Endometrioid81.940.66(0.57, 0.76)<0.0001
 Others31.651.09(1.02, 1.16)0.0105
Surgery4068.36<0.0001
 No7.03Ref.
 Yes52.810.38(0.35, 0.41)<0.0001
Table 3

Univariate and multivariate analyses of epithelial ovarian cancer-specific survival (EOCSS)

Variables5-year CSS (%)Univariate analysisMultivariate analysis
Log-rankPHR(95%CI)P
Marital status483.44<0.0001
 Married53.72Ref.
 Divorced/separated43.421.15(1.06, 1.26)0.0009
 Widowed29.811.11(1.03, 1.20)0.0087
 Never married54.021.10(1.02, 1.19)0.0163
Age1431.58<0.0001
 <6061.17Ref.
 60-6947.701.13(1.06, 1.22)0.0005
 70-7935.831.35(1.24, 1.46)<0.0001
 ≥8018.851.82(1.65, 2.00)<0.0001
Race84.07<0.0001
 White48.88Ref.
 Black36.981.14(1.04, 1.25)0.0064
 Others57.630.93(0.84, 1.03)0.1497
Diagnosis year6.330.0119
 2004-200848.06Ref.
 2009-201249.220.93(0.88, 0.99)0.0165
Grade1095.98<0.0001
 I88.01Ref.
 II71.571.53(1.22, 1.92)0.0002
 III46.181.91(1.54, 2.37)<0.0001
 IV47.421.76(1.41, 2.20)<0.0001
 Unknown33.121.77(1.42, 2.21)<0.0001
TNM stage3104.52<0.0001
 I89.74Ref.
 II72.003.08(2.59, 3.65)<0.0001
 III39.937.23(6.29, 8.31)<0.0001
 IV20.359.67(8.38,11.15)<0.0001
Histological type1131.21<0.0001
 Serous42.97Ref.
 Mucinous71.141.78(1.51, 2.10)<0.0001
 Clear-cell67.741.45(1.26, 1.66)<0.0001
 Endometrioid86.110.58(0.50, 0.69)<0.0001
 Others34.731.10(1.03, 1.17)0.0068
Surgery3847.60<0.0001
 No8.59Ref.
 Yes55.990.36(0.33, 0.39)<0.0001
Figure 1

Kaplan-Meier curves of the effect of marital status on overall survival (OS)

Figure 2

Kaplan-Meier curves of the effect of marital status on epithelial ovarian cancer-specific survival (EOCSS)

Besides, we found that the hazard ratio increased with the growth of age; black patients were associated with poorer OS and EOCSS; compared with the patients with the histological type of serous, patients with mucinous and clear-cell cancer had increased risk of overall and EOC-specific mortality, while patients with endometroid cancer had reduced risk of the both; the hazard ratio increased as the TNM stage at diagnosis advanced; as expected, patients who underwent surgery had better prognosis than that of the ones who did not.

Subgroup analyses of patients stratified by TNM stage

We further explored the effect of marital status on OS and EOCSS, stratified by TNM stage. The stage-specific survival curves of the OS and EOCSS of different marital status were shown in Figure 3 and Figure 4, respectively. The results of stage-stratified Cox regression were summarized in Table 4 for OS and Table 5 for EOCSS.
Figure 3

Kaplan-Meier curves of the effect of marital status on OS for all patients stratified by stage

Figure 4

Kaplan-Meier curves of the effect of marital status on EOCSS for all patients stratified by stage

Table 4

Subgroup analyses stratified by TNM stage for all EOC patients (OS)

Stage IStage IIStage IIIStage IV
Marital status
 MarriedRef.Ref.Ref.Ref.
 Divorced/separated1.56(1.12, 2.18) a1.07(0.75, 1.54)1.21(1.08, 1.37)a1.13(1.00, 1.28)
 Widowed1.52(1.11, 2.08)a1.38(1.01, 1.87)b1.13(1.01, 1.27)b1.07(0.96, 1.20)
 Never married1.19(0.91, 1.57)1.54(1.15, 2.06)a1.04(0.93, 1.16)1.11(0.99, 1.25)
Age
 <60Ref.Ref.Ref.Ref.
 60-691.06(0.79, 1.43)1.05(0.78, 1.43)1.21(1.09, 1.33)a1.12(1.00, 1.24)b
 70-792.37(1.75, 3.22)a2.10(1.53, 2.88)a1.59(1.43, 1.78)a1.19(1.06, 1.34)a
 ≥805.03(3.56, 7.10)a3.54(2.51, 4.99)a2.12(1.84, 2.43)a1.62(1.41, 1.86)a
Race
 WhiteRef.Ref.Ref.Ref.
 Black1.26(0.88, 1.80)1.43(0.97, 2.09)1.20(1.04, 1.38)b1.07(0.94, 1.22)
 Others0.78(0.56, 1.10)0.84(0.56, 1.25)0.99(0.86, 1.13)1.03(0.89, 1.18)
Diagnosis year
 2004-2008Ref.Ref.Ref.Ref.
 2009-20120.88(0.69, 1.11)1.02(0.81, 1.30)0.92(0.85, 1.00)0.96(0.88, 1.04)
Grade
 IRef.Ref.Ref.Ref.
 II1.46(1.00, 2.13)1.17(0.66, 2.08)1.51(1.08, 2.11)b1.38(0.87, 2.17)
 III1.74(1.18, 2.55)a1.60(0.92, 2.77)1.90(1.39, 2.62)a1.32(0.86, 2.02)
 IV1.56(0.98, 2.48)1.22(0.67, 2.21)1.76(1.28, 2.44)a1.26(0.81, 1.95)
 Unknown1.66(1.12, 2.46)b1.66(0.93, 2.97)1.84(1.33, 2.55)a1.21(0.79, 1.86)
Histological type
 SerousRef.Ref.Ref.Ref.
 Mucinous0.94(0.66, 1.34)1.05(0.60, 1.84)2.50(1.94, 3.22)a2.10(1.62, 2.72)a
 Clear-cell1.09(0.81, 1.48)1.16(0.77, 1.76)1.59(1.31, 1.94)a1.55(1.20, 2.00)a
 Endometrioid0.56(0.40, 0.78)a0.68(0.47, 0.98)b0.50(0.39, 0.64)a0.95(0.72, 1.26)
 Others0.76(0.56, 1.04)1.21(0.93, 1.58)1.09(0.99, 1.21)1.13(1.03, 1.24)b
Surgery
 YesRef.Ref.Ref.Ref.
 No0.17(0.11, 0.25)a0.22(0.15, 0.34)a0.34(0.30, 0.40)a0.40(0.36, 0.45)a

a: p<0.01; b: p <0.05.

Table 5

Subgroup analyses stratified by TNM stage for all EOC patients (EOCSS)

Stage IStage IIStage IIIStage IV
Marital status
 MarriedRef.Ref.Ref.Ref.
 Divorced/separated1.35(0.89, 2.05)1.01(0.68, 1.51)1.16(1.02, 1.31)b1.12(0.99, 1.27)
 Widowed1.82(1.24, 2.68)a1.38(0.97, 1.95)1.13(1.00, 1.27)b1.08(0.96, 1.21)
 Never married1.09(0.78, 1.50)1.60(1.17, 2.19)a1.02(0.91, 1.15)1.13(1.00, 1.27)b
Age
 <60Ref.Ref.Ref.Ref.
 60-690.72(0.50, 1.05)0.98(0.70, 1.36)1.18(1.06, 1.30)a1.10(0.99, 1.23)
 70-791.67(1.15, 2.43)a1.88(1.33, 2.66)a1.48(1.32, 1.66)a1.14(1.01, 1.29)b
 ≥802.53(1.61, 3.95)a2.31(1.56, 3.43)a1.97(1.70, 2.28)a1.51(1.31, 1.74)a
Race
 WhiteRef.Ref.Ref.Ref.
 Black1.03(0.65, 1.63)1.44(0.96, 2.16)1.17(1.00, 1.35)b1.02(0.89, 1.16)
 Others0.76(0.51, 1.14)0.75(0.48, 1.18)0.95(0.82, 1.09)0.98(0.84, 1.13)
Diagnosis year
 2004-2008Ref.Ref.Ref.Ref.
 2009-20120.79(0.60, 1.04)0.99(0.76, 1.28)0.93(0.86, 1.01)0.95(0.88, 1.04)
Grade
 IRef.Ref.Ref.Ref.
 II1.58(0.96, 2.60)1.21(0.61, 2.38)1.46(1.02, 2.07)b1.42(0.88, 2.28)
 III2.31(1.42, 3.76)a1.87(0.97, 3.62)1.91(1.37, 2.65)a1.33(0.85, 2.07)
 IV2.09(1.18, 3.69)b1.47(0.73, 2.96)1.78(1.27, 2.49)a1.28(0.81, 2.01)
 Unknown1.86(1.13, 3.07)b1.76(0.89, 3.50)1.88(1.34, 2.63)a1.22(0.78, 1.91)
Histological type
 SerousRef.Ref.Ref.Ref.
 Mucinous0.92(0.60, 1.41)1.30(0.71, 2.37)2.55(1.96, 3.32)a1.99(1.52, 2.61)a
 Clear-cell1.07(0.75, 1.51)1.36(0.88, 2.12)1.60(1.31, 1.97)a1.55(1.19, 2.01)a
 Endometrioid0.42(0.27, 0.65)a0.64(0.41, 0.98)b0.49(0.38, 0.63)a0.88(0.65, 1.19)
 Others0.72(0.50, 1.04)1.33(0.99, 1.77)1.11(1.00, 1.23)1.12(1.01, 1.23)b
Surgery
 YesRef.Ref.Ref.Ref.
 No0.11(0.07, 0.17)a0.16(0.11, 0.26)a0.34(0.29, 0.39)a0.39(0.35, 0.44)a

a: p <0.01; b: p <0.05.

a: p<0.01; b: p <0.05. a: p <0.01; b: p <0.05. After adjusting for other covariates in Cox regression, patients with different marital status at stage IV showed similar risk of all-cause mortality; widowed patients had greater all-cause mortality risk than married ones at stage I, II, and III; divorced/separated showed prognostic disadvantage at stage I and III, while never married patients only at stage II. For EOC-specific survival, never married patients had poorer prognosis at stage II and IV; widowed patients showed disadvantage at stage I and III; while divorced/separated had greater cancer-specific mortality risk at stage III.

TNM stage-stratified analyses of patients who underwent surgical procedures

We also explored the effect of marital status on OS and EOCSS, stratified by TNM, in patients who received any type of surgery. The survival curves of the OS and EOCSS of different marital status were shown in Figure 5 and Figure 6, respectively. The results were summarized in Table 6 for OS and Table 7 for EOCSS.
Figure 5

Kaplan-Meier curves of the effect of marital status on OS for surgical patients stratified by stage

Figure 6

Kaplan-Meier curves of the effect of marital status on EOCSS for surgical patients stratified by stage

Table 6

Subgroup analyses stratified by TNM stage for surgical patients (OS)

Stage IStage IIStage IIIStage IV
Marital status
 MarriedRef.Ref.Ref.Ref.
 Divorced/separated1.56(1.10, 2.20)b1.20(0.81, 1.78)1.22(1.07, 1.39)a1.15(0.99, 1.35)
 Widowed1.49(1.06, 2.10)b1.30(0.92, 1.83)1.07(0.94, 1.23)1.18(1.00, 1.38)b
 Never married1.45(1.10, 1.92)a1.49(1.09, 2.03)b1.03(0.91, 1.16)1.15(0.99, 1.33)
Age
 <60Ref.Ref.Ref.Ref.
 60-691.10(0.81, 1.50)1.10(0.80, 1.51)1.24(1.12, 1.37)a1.14(1.01, 1.30)b
 70-792.49(1.80, 3.44)a2.06(1.47, 2.88)a1.66(1.48, 1.87)a1.20(1.03, 1.39)b
 ≥805.13(3.52, 7.47)a4.43(3.05, 6.43)a2.15(1.81, 2.55)a1.57(1.26, 1.94)a
Race
 WhiteRef.Ref.Ref.Ref.
 Black1.32(0.89, 1.96)2.13(1.39, 3.25)a1.21(1.03, 1.43)b1.11(0.93, 1.33)
 Others0.80(0.56, 1.14)0.82(0.54, 1.26)1.02(0.88, 1.19)1.01(0.85, 1.21)
Diagnosis year
 2004-2008Ref.Ref.Ref.Ref.
 2009-20120.84(0.65, 1.08)1.19(0.92, 1.56)0.92(0.84, 1.00)0.94(0.84, 1.05)
Grade
 IRef.Ref.Ref.Ref.
 II1.41(0.96, 2.06)1.30(0.73, 2.32)1.46(1.04, 2.05)b1.28(0.79, 2.09)
 III1.70(1.15, 2.51)a1.65(0.95, 2.89)1.83(1.33, 2.51)a1.23(0.78, 1.95)
 IV1.49(0.93, 2.39)1.25(0.68, 2.28)1.69(1.22, 2.34)a1.23(0.77, 1.97)
 Unknown1.56(1.03, 2.36) b1.78(0.99, 3.20)1.74(1.25, 2.42)a1.15(0.72, 1.84)
Histological type
 SerousRef.Ref.Ref.Ref.
 Mucinous0.95(0.66, 1.37)1.48(0.86, 2.56)2.55(1.94, 3.34)a1.97(1.42, 2.74)a
 Clear-cell1.14(0.83, 1.55)1.18(0.77, 1.79)1.54(1.25, 1.89)a1.38(1.05, 1.82)b
 Endometrioid0.57(0.40, 0.81)a0.69(0.47, 1.00)0.49(0.38, 0.63)a0.87(0.65, 1.17)
 Others0.77(0.54, 1.08)1.17(0.88, 1.57)1.05(0.93, 1.17)0.96(0.84, 1.09)

a<0.01; b<0.05.

Table 7

Subgroup analyses stratified by TNM stage for surgical patients (EOCSS)

Stage IStage IIStage IIIStage IV
Marital status
 MarriedRef.Ref.Ref.Ref.
 Divorced/separated1.42(0.92, 2.19)1.10(0.70, 1.71)1.16(1.02, 1.33)b1.15(0.98, 1.35)
 Widowed1.81(1.18, 2.78)a1.35(0.91, 2.00)1.07(0.94, 1.24)1.19(1.01, 1.41)b
 Never married1.38(0.99, 1.92)1.61(1.16, 2.25)a1.02(0.90, 1.15)1.16(0.99, 1.35)
Age
 <60Ref.Ref.Ref.Ref.
 60-690.76(0.52, 1.12)1.04(0.74, 1.47)1.21(1.09, 1.34)a1.13(0.99, 1.29)
 70-791.69(1.13, 2.53)b1.86(1.29, 2.70)a1.55(1.37, 1.75)a1.13(0.97, 1.32)
 ≥802.25(1.33, 3.82)a2.66(1.69, 4.18)a1.99(1.67, 2.38)a1.44(1.15, 1.81)a
Race
 WhiteRef.Ref.Ref.Ref.
 Black1.15(0.69, 1.92)2.12(1.35, 3.34)a1.17(0.99, 1.40)1.11(0.92, 1.34)
 Others0.76(0.50, 1.16)0.70(0.43, 1.15)0.98(0.84, 1.15)0.92(0.76, 1.11)
Diagnosis year
 2004-2008Ref.Ref.Ref.Ref.
 2009-20120.76(0.57, 1.03)1.14(0.85, 1.53)0.92(0.84, 1.01)0.94(0.84, 1.05)
Grade
 IRef.Ref.Ref.Ref.
 II1.52(0.92, 2.52)1.31(0.66, 2.61)1.41(0.99, 2.00)1.33(0.80, 2.21)
 III2.29(1.39, 3.77)a1.93(0.99, 3.76)1.83(1.31, 2.55)a1.25(0.77, 2.02)
 IV2.00(1.12, 3.57)b1.51(0.74, 3.07)1.70(1.22, 2.39)a1.27(0.78, 2.07)
 Unknown1.70(1.00, 2.88)1.92(0.96, 3.83)1.77(1.26, 2.50)a1.16(0.71, 1.90)
Histological type
 SerousRef.Ref.Ref.Ref.
 Mucinous0.93(0.60, 1.45)1.79(0.99, 3.23)2.57(1.94, 3.40)a1.86(1.31, 2.63)a
 Clear-cell1.10(0.77, 1.58)1.41(0.90, 2.20)1.54(1.25, 1.91)a1.41(1.06, 1.88)b
 Endometrioid0.43(0.27, 0.67)a0.64(0.42, 1.00)b0.48(0.37, 0.62)a0.81(0.59, 1.11)
 Others0.68(0.45, 1.03)1.29(0.93, 1.77)1.07(0.95, 1.20)0.95(0.82, 1.09)

a: p <0.01; b: p <0.05.

a<0.01; b<0.05. a: p <0.01; b: p <0.05. For patients at Stage I, all the three unmarried groups had poorer prognosis when compared with the married group; additionally, never married patients at stage II, divorced/separated patients at stage III, and widowed patients at stage IV were identified to have greater all-cause mortality risk than married patients. In the context of EOCSS, widowed patients at stage I and IV, never married patients at stage II, and divorced/separated patients at stage III were discovered in the multivariate Cox regression to have survival disadvantage over married patients.

DISCUSSION

In this study, we found that unmarried patients, including divorced/separated, widowed and never married, were at significantly greater risk of mortality after diagnosis of EOC. After adjusting for demographic factors, clinical characteristics, and treatment, complete marriage was still associated with a reduction of the risk of death. When we analyzed the effect of marital status on OS and EOCSS stratified by stage, in overall patients and patients having surgery, the effect differed according to different conditions. Moreover, the results showed that widowed patients had the highest proportion of being diagnosed at advanced stage and the lowest proportion of receiving surgical treatment. Though most of the findings of this study are consistent with the findings of previous observational studies conducted on other types of cancer [8, 12, 17, 18], that unmarried patients had survival disadvantage compared with married patients, the significance of this study is that we analyzed the effect of marital status on the OS and EOCSS according to different stages and repeated the analyses for patients who underwent surgery, which had never been investigated for ovarian cancer before. Moreover, contrary to the statement that married patients are more likely to be diagnosed at early stage [7, 9], we found that the never married patients had the highest proportion of being diagnosed at stage I (30.31%) and the second highest proportion of receiving surgical treatment. What is astounding is that the never married patients had the highest 5-year overall survival and cancer-specific survival, slightly higher than the married ones. The phenomenon may be explained by several reasons. The first is that the never married group of this study included the single, unmarried or domestic partner (same sex or opposite sex or unregistered), which decreased the proportion of truly unmarried patients in that group and made the results underestimate the effect of being truly unmarried. Besides, the ones that actually had a partner in this group may enjoy a more satisfied relationship even though they did not have a registered marriage. Second, since that most of the never married group were younger than 60 years (67.41%), an age of sufficient vigilance of any sign of disease, it was reasonable that they visited doctors and detected the tumor earlier. Third, the never married patients had very less possibility of having given birth to a child, thus may pay more attention to their reproductive system. However, after adjusting for other confounders in the multivariate Cox analyses, the never married patients did not show as much advantage as the married ones. They went through nearly the same amount of risk as the widowed patients for all-cause mortality (HR: 1.11 for the never married vs 1.12 for the widowed), and cancer-specific mortality (HR: 1.11 for the never married vs 1.12 for the widowed). It is possible that although some of the patients in the never married group were actually accompanied, the truly single ones may suffer more than the widowed, since widowed patients can obtain the physical and psychological support from their children. Therefore, the similar hazard ratio may be a compromise of the two kinds of situation in the never married group. There are many existing explanations of the benefit of marriage for patients and they are also suitable for cancer patients. Generally, marriage, which is a main source of social support, can build up the patients’ confidence to conquer the disease, increase the patients’ adherence to the treatment plans and prescriptions of doctors [19], which can directly lead to better prognosis [20-22]. It can also lower the level of depression and anxiety [23, 24]. Female patients may suffer more from the loss of support than male patients. Therefore, policy makers and doctors should make efforts to improve the social support from every aspect for the EOC patients who are in unmarried status. The SEER database provides us the opportunity to perform large, population-based studies. However, there are several vital limitations that should be addressed and the results of the study should be interpreted with caution. Firstly, this is an observational study and the results cannot be used to conduct causal inferences. We cannot state that the unmarried status lead to the poorer prognosis of patients, but we can conclude that the marital status is associated with, or a predictor of, the EOC prognosis. Further analyses should explore the contribution magnitude, in both direct and indirect way, of the role of marital status to the survival of EOC after diagnosis. Secondly, the limited number of accessible variables may lead to the overestimation of the effect of marital status on the cancer survival. Many other aspects can also play important roles in cancer prognosis such as comorbidity, chemotherapy, and radiotherapy. Thirdly, the follow-up period for some of the patients was so long that the marital status probably changed during the study. This is especially possible for elder patients, who were married at diagnosis but became widowed afterwards. Besides, the quality of marriage was unknown. Therefore, the classification of marriage was nominal and relatively rough. Despite these limitations, our study indicates that unmarried EOC patients including divorced/separated, widowed, and never married, are at greater risk of overall mortality and EOC-specific mortality. When caring for the unmarried cancer patients, medical staff should be well aware of the potentially poorer prognosis in this population and health care systems should make efforts to provide social support for this population to minimize the risk of death caused by marital status.

MATERIALS AND METHODS

Data source

In this study, we utilized the data obtained from SEER program, which consists of 18 registries covering approximately 28 percent of the US people and routinely collecting information of cancer patients including demographics, primary tumor site, cancer stage, treatment and the follow up information of survival. The database is an authoritative source of information on the incidence and survival of cancer in the United States and has been used by many studies to search prognostic factors associated with various cancers [25-28].

Inclusion criteria

Patients with ICD-O-3 (International Classification of Diseases for Oncology, 3rd edition) site code C56.9 from 2004 to 2012 were extracted from the SEER database. The inclusion criteria were as follows: (a) ICD-O-3 morphology code indicated epithelial ovarian cancer;(b) age at diagnosis was older than 18 years; (c) marital status was known; (d) diagnosed with EOC only or multiple primary cancers but EOC was the first; (e) known survival time and survival time was greater than 0 month; (f) known cause of death;(g) definite AJCC (American Joint Committee on Cancer) stage group, 6th ed TNM stage (h) known surgery information.

Study variables and outcomes

Study variables in this study included age at diagnosis, gender, year of diagnosis, race, histologic type, tumor grade, AJCC TNM stage, and surgical information. The patients were divided into four groups according to age (<60, 60-69,70-79, and ≥80). Marital status was classified as married, divorced or separated, widowed, and never married (including single, unmarried or domestic partner). Race was grouped by white, black, and others (including American Indian/Alaska native, Asian/Pacific Islanders, etc.). We divided the year of diagnosis into 2004-2008 and 2009-2012 to adjust for the survival difference caused by the advances of diagnostic techniques and therapeutic methods with the passage of time. Histologic type was classified as serous, mucinous, clear-cell, endometroid, and other epithelial types. Tumor grade I-IV represented well differentiated, moderately differentiated, poorly differentiated, and undifferentiated, respectively. Surgery was categorized as yes (received any type of surgery) and no (did not receive surgery). The primary outcomes were overall survival (OS) and epithelial ovarian cancer-specific survival (EOCSS). OS was calculated as the number of month from diagnosis to death due to any cause. EOCSS was calculated as the number of month from diagnosis to death due to EOC. Patients who died from other causes or were still alive at the end of the study period were defined as censored.

Statistical analyses

The baseline characteristics of patients with different marital status were summarized and compared using chi-square test. Kaplan-Meier log-rank test was adopted to compare the difference of OS and EOCSS between subgroups of each variable. Multivariate Cox analysis was conducted to compare the OS and EOCSS of patients with different marital status after adjusting for various covariates. To explore how marital status affected patients diagnosed at the same stage, we further conducted subgroup analyses, stratified by different AJCC TNM stage, in all patients and patients who underwent surgical procedures. All P values were two-sided, and the values less than 0.05 were considered statistically significant. All analyses were performed using SAS version 9.4 (SAS Institute Inc., Cary, NC, USA). All figures were created with Graphpad Prism 5.0.
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