Literature DB >> 24586813

Low socioeconomic status is associated with worse survival in children with cancer: a systematic review.

Sumit Gupta1, Marta Wilejto2, Jason D Pole3, Astrid Guttmann4, Lillian Sung1.   

Abstract

BACKGROUND: While low socioeconomic status (SES) has been associated with inferior cancer outcome among adults, its impact in pediatric oncology is unclear. Our objective was therefore to conduct a systematic review to determine the impact of SES upon outcome in children with cancer.
METHODS: We searched Ovid Medline, EMBASE and CINAHL from inception to December 2012. Studies for which survival-related outcomes were reported by socioeconomic subgroups were eligible for inclusion. Two reviewers independently assessed articles and extracted data. Given anticipated heterogeneity, no quantitative meta-analyses were planned a priori.
RESULTS: Of 7,737 publications, 527 in ten languages met criteria for full review; 36 studies met final inclusion criteria. In low- and middle-income countries (LMIC), lower SES was uniformly associated with inferior survival, regardless of the measure chosen. The majority of associations were statistically significant. Of 52 associations between socioeconomic variables and outcome among high-income country (HIC) children, 38 (73.1%) found low SES to be associated with worse survival, 15 of which were statistically significant. Of the remaining 14 (no association or high SES associated with worse survival), only one was statistically significant. Both HIC studies examining the effect of insurance found uninsured status to be statistically associated with inferior survival.
CONCLUSIONS: Socioeconomic gradients in which low SES is associated with inferior childhood cancer survival are ubiquitous in LMIC and common in HIC. Future studies should elucidate mechanisms underlying these gradients, allowing the design of interventions mediating socioeconomic effects. Targeting the effect of low SES will allow for further improvements in childhood cancer survival.

Entities:  

Mesh:

Year:  2014        PMID: 24586813      PMCID: PMC3935876          DOI: 10.1371/journal.pone.0089482

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Socioeconomic status (SES), a multi-dimensional construct encompassing economic resources, power and social standing, has been associated with a number of health outcomes.[1]–[4] Understanding the mechanisms behind such associations is necessary in order to reduce health disparities. Among adult patients, strong evidence exists supporting socioeconomic gradients in cancer mortality. [5]. By contrast, the equivalent pediatric literature is sparse and predominantly restricted to low- and middle-income countries (LMIC). [6], [7] High-income country (HIC) studies have yielded seemingly contradictory results.[8]–[10] Given differences in cure rates and developmental position, adult socioeconomic gradients cannot be extrapolated to children with cancer. We therefore undertook the first systematic review of the literature examining the impact of SES upon pediatric oncology outcomes. Our primary objective was to determine the impact of income- and education-based measures of SES on event-free survival (EFS), overall survival (OS) and disease-free survival (DFS) among children with cancer. Secondary objectives included determining the effect of other SES measures, as well as the effect of SES on treatment-related mortality (TRM), relapse and abandonment of therapy.

Methods

The conduct of the review followed the PRISMA framework. [11] Both the PRISMA Checklist and the initial protocol can be found in Checklist S1 and Text S1.

Data Sources

We performed electronic searches of Ovid Medline, EMBASE and CINAHL from inception to December 10th, 2012 with the assistance of a library scientist. The Medline search strategy is illustrated in Table 1, with complete strategies illustrated in Text S2.
Table 1

Medline Search Strategy.

SetHistoryResultsComments
1“emigration and immigration”/or residence characteristics/or “catchment area (health)”/or housing/or public housing/or health status disparities/or Healthcare Disparities/or ruralhealth services/or suburban health services/or urban health services/or exp Insurance/orexp Health Services Accessibility/or exp Socioeconomic Factors/54,3627SES Terms
2Exp Neoplasms/2,416,057Neoplasm terms
31 and 23,227,924Base clinical set
4limit 3 to “all child (0 to 18 years)”4,042Age group limit
5(infan* or child* or adolescen* or youth* orteen* or pediatric* or paediatric*).mp.2,961,284Age group textword terms
64 or (3 and 5)4,533FINAL Results

Study Selection

Inclusion and exclusion criteria were defined a priori. Inclusion criteria were: (1) ecologic, cross-sectional, cohort, case-control or randomized control trial designs; (2) pediatric data available, with pediatric ages defined by authors, and (3) at least one pre-specified survival-related outcome reported by subgroups defined by a pre-specified socioeconomic variable (see below). Biologic factors may account for a portion of the disparities in outcome seen between different ethnic groups. [12] Since the independent effects of biology and SES cannot be disentangled when ethnicity is the sole proxy of SES, such studies were excluded. There was no restriction by language. Two reviewers (SG, MW) independently evaluated identified titles and abstracts, retrieved any potentially relevant manuscript and determined eligibility; discrepancies were resolved through consensus. Agreement between reviewers was assessed using the kappa statistic. [13] Non-English articles were assessed with the assistance of pediatric oncologists whom were native speakers of the relevant language.

Data Abstraction

Two reviewers (SG, MW) independently abstracted data using standardized forms. The primary outcomes were EFS, OS and DFS; secondary outcomes were specific causes of treatment failure (TRM, relapse, abandonment). Relative survival was assumed to be comparable to OS. Multiple measures of SES exist in the literature, reflecting three main domains: material resources, knowledge related assets and social standing. [14] Though income and education (including measures of occupation) were the key variables of interest in this study, we included a broad range of SES measures reflecting these domains: material possession (e.g. car ownership), family composition (e.g. marital status), health insurance status, health care accessibility and immigrant status. Both ecologic and individual-level variables were included. When measures over multiple time periods were available, only the most contemporaneous time period was recorded. Study authors were contacted to solicit missing data. Study quality was assessed using a framework of potential biases developed by Hayden et?al to evaluate prognosis studies. [15] Four key indicators of study quality relevant for studies examining the impact of SES were identified a priori: (1) the degree to which study samples reflected underlying populations, (2) whether loss to follow-up was associated with socioeconomic characteristics, (3) whether potential confounders were accounted for and (4) the appropriateness of the analysis. Further details are provided in the online supplemental data. When assessing the degree to which study samples represented the general population, samples derived from clinical trials were judged to be only partly representative of the overall population, as patients of low SES who consent to trials may be systematically different than those who do not. [16], [17] Single institution studies were also assessed as only partly representative. The loss to follow-up quality indicator was judged not applicable for settings in which abandonment of therapy constituted a significant cause of treatment failure. [18] As various indicators measure different domains of socioeconomic position, accounting for confounding was assessed as adequate if both a measure of disease risk and a second SES indicator were included. Analyses that were not based on time-to-event data were assessed as partially adequate.

Analysis

Given the anticipated heterogeneity in settings, SES measures and malignancies, no quantitative meta-analyses were planned. The magnitude and underlying mechanisms of any association between SES and outcome are likely to differ between developing and developed countries. The results were therefore summarized separately for LMIC and for HIC, as defined by the World Bank using Gross National Income per capita (LMIC <$12,616 vs. HIC ≥$12,616). [19]. As the unit of analysis varied markedly even among studies investigating a common SES variable (e.g. per unit of monthly income vs. per income quintile), we could not compare magnitudes of association across studies. Consequently, measures of association between SES and outcome were plotted on a single graph in which sample size was represented on the x-axis. Positive associations (defined as higher SES associated with better outcome) were placed to the right of the y-axis while negative associations (defined as higher SES associated with worse outcome) were placed to the left, regardless of statistical significance or magnitude. Points more distal from the y-axis therefore do not represent greater degrees of association. When the SES measure was categorical (e.g. income quintiles), the direction of the association was determined by comparing outcomes between the highest and lowest SES categories. For each study, associations for only the highest aggregation of cancers were presented. Statistically significant associations were displayed in red and non-significant associations in black. For studies describing the effect of dichotomous measures of income or insurance upon EFS, OS or DFS in acute lymphoblastic leukemia (ALL) or Hodgkin lymphoma (HL), the proportion of adverse outcomes attributable to low SES (attributable risk) was calculated by the following formula (pe = proportion of the population exposed to the adverse prognosticator; RR = ratio of the cumulative incidence of adverse outcome in the two groups): [20] ALL and HL were chosen as they account for a significant percentage of incident cases of childhood cancer. The concept of attributable risk assumes that the relationship is causal and that no significant bias or confounding exists. Attributable risks were also calculated for recently discovered biologic prognosticators as comparators. These prognosticators were chosen by the authors based on their prominence in either clinical practice (e.g. minimally residual disease) or laboratory research (e.g. CRLF2 expression).

Ethics Statement

Institutional review board approval was not required as only group-level, and not individual-level data were obtained from already published studies.

Results

Figure 1 illustrates the flow of study identification and selection. A total of 7,737 abstracts were identified by the search strategy; 527 articles in ten languages were retrieved for full evaluation. Of these, 36 met eligibility criteria. The kappa statistic of agreement between the two reviewers was 0.82 (95% confidence interval (CI) 0.72–0.91). Characteristics of the included studies, including indicators of study quality, are shown in Table 2. Though most studies were of acceptable quality, only half accounted for potential confounders.
Figure 1

PRISMA flow diagram.

Table 2

Characteristics of included studies.

CharacteristicStudies, N (%)
LMIC (N = 10)HIC (N = 26)
Malignancy
All cancers0 (0.0)8 (30.8)
Leukemia or lymphoma9 (90.0)15 (57.7)
Solid tumor1 (10.0)1 (3.8)
Central nervous system tumor0 (0.0)2 (7.7)
Type of socioeconomic variable examined
Ecologic1 (10.0)13 (50.0)
Income-based7 (70.0)2 (7.7)
Education-baseda 6 (60.0)10 (38.5)
Otherb 5 (50.0)10 (38.5)
Sample Size
<1001 (10.0)4 (15.4)
1009999 (90.0)9 (34.6)
1,0009,9990 (0.0)12 (46.2)
≥10,0000 (0.0)1 (3.8)
Restricted to adolescents/young adultsc
Yes0 (0.0)2 (7.7)
No10 (100.0)24 (92.3)
Study sample adequately reflective of general populationd
Yes8 (80.0)21 (80.7)
No/Partial/Unsure2 (20.0)5 (19.2)
Loss to follow-up unrelated to socioeconomic statusd
Yes3 (30.0)21 (80.7)
No/Partial/Unsure1 (10.0)5 (19.2)
Not applicable6 (60.0)0 (0.0)
Potential confounders accounted ford
Yes6 (60.0)12 (46.2)
No/Partial/Unsure4 (40.0)14 (53.8)
Analysis appropriated
Yes8 (80.0)18 (69.2)
No/Partial/Unsure2 (20.0)8 (30.8)

HIC – high-income countries; LMIC – low- and middle-income countries.

Also included occupation-based measures of socioeconomic status.

Included measures of material possession, family composition, insurance status, immigrant status, and health care accessibility.

As defined by study authors.

See supplemental data for definitions of study quality variables.

HIC – high-income countries; LMIC – low- and middle-income countries. Also included occupation-based measures of socioeconomic status. Included measures of material possession, family composition, insurance status, immigrant status, and health care accessibility. As defined by study authors. See supplemental data for definitions of study quality variables.

Low- and Middle-income Country Studies

The results of the ten eligible LMIC studies are shown in Table 3, with full details available in Table S1. Of the ten, seven found at least one measure of low SES to be significantly associated with inferior outcome.[21]–[27] The remaining three found no significant association.[28]–[30] When restricted to studies examining the primary outcomes of EFS, OS or DFS, 6/7 (85.8%) studies showed at least one statistically significant association where lower SES was associated with worse survival.
Table 3

Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in low- and middle-income countries.

CountryMalignancyNOutcomeMeasureEcologic MeasuresIncome MeasuresEducation Measuresa Other SES Measures
Bonilla 2010El SalvadorStandard risk ALL260EFS HR 0.84; Per $100 increase HR 0.49; ≥Secondary vs. ≤primary Telephone ownership NS
Mode of transport NS
High risk ALL183EFS Monthlyincome NSParentaleducation NSTelephone ownership NS
Mode of transport NS
Mostert 2010IndonesiaALL283EFS HR 2.6; 2nd/3rd class ward vs. VIP/1st class ward, based on income . .
Tang 2008ChinaALL346EFS . 5-year EFS 61.2% urban vs. 30.3% rural; p<0.0001 c
Dinand 2007IndiaHodgkin Lymphoma145EFS HR 5.4; Low vs. high Kuppuswami score b
Pedrosa 2007BrazilNon-Hodgkin Lymphoma110OS Family income NSMaternal education NS
Carlos 2002MexicoRetinoblastoma552OS HR 2.38; Most marginalized vs. least
Viana 1998BrazilALL167DFS 5-year DFS 58% for those >0.4 × minimum wage vs. 8% for those <0.4 × minimum wage; p<0.0001 >4 kw hours daily electric consumption vs. <4 kw hours; p = 0.0003
Very poor vs. fair-good housing conditions; p = 0.006
Gupta 2009El SalvadorAML78TRM Monthly income NSParental education NSTelephone ownership NS
Number of family members NS
Cost to travel to clinic NS
Wang 2011ChinaALL323Abandonment Paternal education NS 32.5% abandonment good housing conditions vs. 83.3% poor; p<0.001
Maternal education NS
Kulkarni 2010IndiaALL532Abandonment Kuppuswami score NSb

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; DFS – disease free survival; EFS – event free survival; HR – hazard ratio; N – number; NS – non-significant; OS – overall survival; SES – socioeconomic status; TRM – treatment related mortality.

Bolded variables indicate statistically significant associations. Magnitudes of non-significant associations and confidence intervals of significant associations can be found in Table S1, along with definitions of each variable.

Education measures also include occupation-based measures.

Aggregate score based on income, education and occupation.

Urban residents also had medical insurance while rural residents did not.

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; DFS – disease free survival; EFS – event free survival; HR – hazard ratio; N – number; NS – non-significant; OS – overall survival; SES – socioeconomic status; TRM – treatment related mortality. Bolded variables indicate statistically significant associations. Magnitudes of non-significant associations and confidence intervals of significant associations can be found in Table S1, along with definitions of each variable. Education measures also include occupation-based measures. Aggregate score based on income, education and occupation. Urban residents also had medical insurance while rural residents did not. Figure 2 illustrates each association between a socioeconomic variable and outcome plotted by study sample size, restricted to LMIC studies examining EFS, OS or DFS. One Brazilian study of non-Hodgkin lymphoma provided log rank p values of without information on the directions of association; none of these were statistically significant. [30] Regardless of the SES measure chosen, lower SES was always associated with inferior EFS/OS/DFS, with the majority of associations statistically significant. There were no studies that showed that lower SES was associated with better survival irrespective of statistical significance.
Figure 2

Associations between socioeconomic measures and event-free and overall survival in low- and middle-income countries.

A. Measures of material possession, family composition, insurance status, immigrant status, and health care accessibility. B. Measures of education and occupation. C. Measures of income. Positive = lower socioeconomic status associated with inferior outcome; Negative = lower socioeconomic status associated with superior outcome. Magnitudes of association are not plotted. Statistically significance is denoted in red. Data points with a number above represent multiple socioeconomic variables.

Associations between socioeconomic measures and event-free and overall survival in low- and middle-income countries.

A. Measures of material possession, family composition, insurance status, immigrant status, and health care accessibility. B. Measures of education and occupation. C. Measures of income. Positive = lower socioeconomic status associated with inferior outcome; Negative = lower socioeconomic status associated with superior outcome. Magnitudes of association are not plotted. Statistically significance is denoted in red. Data points with a number above represent multiple socioeconomic variables.

High-income Country Studies

The results of the 26 eligible studies conducted in HIC are shown in Table 4, all of which used EFS or OS as their outcome. Full details are available in Table S2. Individual-level and ecologic measures of SES were used by 13 (50.0%) and 10 (38.5%) studies respectively; three studies (11.5%) used both. Of the 26, 14 (53.8%) showed at least one measure of low SES to be significantly associated with inferior outcome.[10], [31]–[43].
Table 4

Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in high-income countries.

CountryOutcome MeasureMalignancyNEcologic MeasuresIncome MeasuresEducation Measuresa Other SES Measures
Metzger 2008USAEFSHodgkin lymphoma327 HR 1.9; High poverty county vs. low
Bhatia 2002USA, CanadaEFSALL1596Annual household income NSPaternal educationNS
Maternal educationNS
Hann 1981England5 year EFSALL209Paternal occupationNS
Lightfoot 2012England, Scotland, WalesOSALL1559 HR 1.29; Deprived vs. affluent Paternal occupationNS
Syse 2012NorwayOSCancers6280Household income NS OR 1.2; ≤High school vs. ≥College Marital status NS
Number of children NS
Rondelli 2011ItalyOSALL3522 . HR 1.70; Immigrant vs. non-immigrant
Walsh 2011b Ireland5 year OSAll Cancers1440SAHRUdeprivationindexNS
Youlden 2011Australia5 year OSCancers6289Disadvantageindex NS HR 1.55; Remote vs. Major city
Crouch 2009c UK5 year OSAll cancers654 Affluent 70% OS to deprived 64%; trend p<0.5
Hsieh 2009USAOSNB1777 5-year OS Urban county 63% OS vs. rural county 55%; p = 0.04
Kent 2009USAOSLeukemias4158Census-baseddeprivationindex NS HR 1.56; Any insurance vs. none/unknown
Birch 2008b , c England5 year OSAll Cancers31722 Affluent 71% to deprived 70%; trend p = 0.001
Moschovi 2007GreeceOSMB50Maternal education NSPlace of residence NS
Perez-Martinez 2007d Spain5 year OSAll cancers90+.Immigrant status NS
Tseng 2006England, Wales5 year OSMalignant CNS3169Carstairsindex NS
Charalampopolou 2004GreeceOSALL293Maternaleducation NS HR 2.85; Other vs. married
HR 0.63; Per child
Coleman 1999England, Wales5 year OSHodgkin lymphoma189Carstairsindex NS
NHL273Carstairsindex NS
CNS1050Carstairsindex NS
Wilms257Carstairsindex NS
OST117Carstairsindex NS
ES97Carstairsindex NS
STS319Carstairsindex NS
GCT121Carstairsindex NS
McKinney 1999e UKOSAll Cancers1979Carstairsindex NS
Schillinger 1999England, Wales5 year OSALL5566Carstairsindex NS
Coebergh 1996Netherlands5 year OSStandard-risk ALL367Parentaleducation NS
High-risk ALL141Parentaleducation NS
AML67Parentaleducation NS
Hord 1996USA5 year OSALL178 OR 0.61; Total insurance coverage vs. at least partially uncovered
Petridou 1994GreeceOSLeukemias120.Paternaloccupation NS HR 0.29; Private car vs. none
Paternaleducation NSMaternity hospital type NS
Maternaleducation NSAbility to choose doctor NS
McWhirter 1983Australia5 year OSALL70 High social class 59% OS vs. low 27%
Szklo 1978USA2 year OSALL55 High rental value 51% OS vs. low rental value 28%; p<0.005
Byrne 2011USAMediandurationAML (Age 0–9)84Communitypoverty level NS
AML (Age 10–19)102Communitypoverty level NS
Walters 1972f USAMediandurationALL334 16.2 months lowest SES vs. 24.3 months highest

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; CNS – central nervous system tumors; EFS – event free survival; ES – Ewing sarcoma; GCT – germ cell tumors; HR – hazard ratio; LR – log rank; MB – medulloblastoma; N – number; NB – neuroblastoma; NHL – non-Hodgkin lymphoma; OR – odds ratio; OS – overall survival; OST – osteosarcoma; RR – relative risk; SES – socioeconomic status; STS – soft tissue sarcoma; UK – United Kingdom; USA – United States of America.

Bolded variables indicate statistically significant associations. Magnitudes of non-significant associations and confidence intervals of significant associations can be found in Table S2, along with definitions of each variable.

Education measures also include occupation-based measures.

Individual malignancies within the overall category showed no significant association between SES and outcome.

Adolescent and young adult population.

Immigrant patients from one center were compared to a historical control.

Within the overall malignancy category, leukemias did show a significant association between lower SES and inferior outcome.

No statistical analysis was presented, though the authors state that survival was “directly related to SES”.

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; CNS – central nervous system tumors; EFS – event free survival; ES – Ewing sarcoma; GCT – germ cell tumors; HR – hazard ratio; LR – log rank; MB – medulloblastoma; N – number; NB – neuroblastoma; NHL – non-Hodgkin lymphoma; OR – odds ratio; OS – overall survival; OST – osteosarcoma; RR – relative risk; SES – socioeconomic status; STS – soft tissue sarcoma; UK – United Kingdom; USA – United States of America. Bolded variables indicate statistically significant associations. Magnitudes of non-significant associations and confidence intervals of significant associations can be found in Table S2, along with definitions of each variable. Education measures also include occupation-based measures. Individual malignancies within the overall category showed no significant association between SES and outcome. Adolescent and young adult population. Immigrant patients from one center were compared to a historical control. Within the overall malignancy category, leukemias did show a significant association between lower SES and inferior outcome. No statistical analysis was presented, though the authors state that survival was “directly related to SES”. Figure 3 illustrates each HIC association plotted by the study sample size. Of the 21 measures of association between ecologic SES variables and outcome, 15 (71.4%) showed lower SES to be associated with worse survival, five of which were statistically significant. The remaining six (28.6%) showed that lower SES was associated with superior outcome, none of which were statistically significant.
Figure 3

Associations between socioeconomic measures and event-free and overall survival in high-income countries.

A. Ecologic measures B. Measures of material possession, family composition, insurance status, immigrant status, and health care accessibility. C. Measures of education and occupation. D. Measures of income. Positive = lower socioeconomic status associated with inferior outcome; Negative = lower socioeconomic status associated with superior outcome. Magnitudes of association are not plotted. Statistically significance is denoted in red. Data points with a number above represent multiple socioeconomic variables. 3* indicates 2 non-significant associations and one significant association.

Associations between socioeconomic measures and event-free and overall survival in high-income countries.

A. Ecologic measures B. Measures of material possession, family composition, insurance status, immigrant status, and health care accessibility. C. Measures of education and occupation. D. Measures of income. Positive = lower socioeconomic status associated with inferior outcome; Negative = lower socioeconomic status associated with superior outcome. Magnitudes of association are not plotted. Statistically significance is denoted in red. Data points with a number above represent multiple socioeconomic variables. 3* indicates 2 non-significant associations and one significant association. Of the 15 measures of association between individual parental education and outcome, ten (66.7%) showed that lower parental education was associated with worse survival, three of which were statistically significant. None of the five (38.5%) associations in which higher parental education was associated with worse survival were statistically significant. Two studies examined the impact of family income. In one study, there was no association between annual income categorized above and below $30,000 and EFS (HR = 1.0). [44] The second study found that lower income was associated with worse OS though the association was not statistically significant. [42]. Of the 14 associations between the remaining individual-level SES variables and outcome, 12 (85.7%) showed that worse SES was associated with inferior outcome, seven of which were statistically significant. Two (14.3%) studies showed that better SES was associated with worse outcome. One of these two was statistically significant; among children with ALL in Greece, a higher number of siblings was associated with a lower risk of death (HR 0.63 per child; 95% CI 0.40–0.99). [10]. Figure S1 illustrates all associations between SES measures (individual or ecologic) and outcome from the subset of HIC studies conducted in the United States. Of eleven associations, eight (72.7%) showed that lower SES was associated with worse outcome; two were statistically significant. There were three associations in which better SES was associated with worse survival; none were statistically significant.

Attributable Risk

Table 5 shows the proportion of adverse outcomes attributable to low socioeconomic measures of income or insurance as calculated from LMIC and HIC studies. Based on the selected studies, and assuming both causality and the absence of significant bias or confounding, eliminating the adverse effect of low socioeconomic status would result in a theoretical 22.9% to 74.8% reduction in adverse outcome among LMIC children. Among HIC children, 0.0% to 31.9% of adverse outcomes could be avoided.
Table 5

Proportion of adverse outcomes (attributable risk) due to poor socioeconomic prognosticators in studies of the effect of dichotomous measures of income and insurance in acute lymphoblastic leukemia and Hodgkin lymphoma, as well as of selected biologic prognosticators by way of comparison.

MalignancyCountryCategoryAdverse Prognosticatorpe RRAR
Dinand 2007HLIndiaLMICLow SES, based on aggregate score including income0.675.474.8%
Mostert 2010ALLBrazilLMICMonthly per capita income <0.4 ×minimum wage0.251.222.9%
Viana 1998ALLIndonesiaLMIC2nd/3rd class ward, based on income0.762.655.0%
Tang 2008ALLChinaLMICRural residence/no insurance0.741.837.1%
Bhatia 2002ALLUSA, CanadaHICAnnual household income <$30,0000.561.00.0%
Hord 1996ALLUSAHICAt least partially uncovered by insurance0.291.615.7%
Lightfoot 2012ALLEngland, Scotland, WalesHICDeprived area, based in part on income0.391.310.2%
Metzger 2008HLUSAHICCounty with high % children in poverty0.521.931.9%
Borowitz 2008SR-ALLMultipleHICMRD>0.01%0.147.245.6%
Borowitz 2008HR-ALLMultipleHICMRD>0.01%0.303.239.4%
Loken 2012AMLMultipleHICResidual disease by flow cytometry0.222.1720.5%
Chen 2012ALLMultipleHICHigh CRLF2 expression0.181.8613.1%

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; AR – attributable risk; HIC – high-income country; HL – Hodgkin lymphoma; LMIC – low- to middle-income country; MRD – minimal residual disease; pe – proportion of population exposed to the adverse prognosticator; RR – risk ratio; SES – socioeconomic status.

ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; AR – attributable risk; HIC – high-income country; HL – Hodgkin lymphoma; LMIC – low- to middle-income country; MRD – minimal residual disease; pe – proportion of population exposed to the adverse prognosticator; RR – risk ratio; SES – socioeconomic status.

Discussion

In this systematic review, we found that among children with cancer in LMIC, measures of low SES were uniformly associated with inferior outcome. The majority of these associations were statistically significant. The results in HIC were less uniform although the majority of associations (including all but one of the statistically significant associations) also linked lower SES and worse outcome. We chose to include multiple measures of SES in this systematic review, as SES indicators measure “different, often related aspects of socioeconomic stratification and may be more or less relevant to different health outcomes.” [45] This issue may be particularly pronounced in pediatric oncology, where mechanisms linking SES and outcome are likely complex and inter-related, as illustrated in Figure 4. These mechanisms have been suggested by previous authors as outlined in the figure legend, but are often theoretical with little empiric basis.
Figure 4

Mechanisms linking socioeconomic status domains to both general and childhood cancer specific health outcomes.

Domains and general mechanisms are adapted from the work of Galobardes et?al., Braveman et?al., Krieger et?al. and Marmot. Several childhood specific mechanisms are suggested by Bhatia et?al., Gage, Viana et?al. and Gupta et?al. These mechanisms are often theoretical with little empiric basis.

Mechanisms linking socioeconomic status domains to both general and childhood cancer specific health outcomes.

Domains and general mechanisms are adapted from the work of Galobardes et?al., Braveman et?al., Krieger et?al. and Marmot. Several childhood specific mechanisms are suggested by Bhatia et?al., Gage, Viana et?al. and Gupta et?al. These mechanisms are often theoretical with little empiric basis. Based on this framework, our finding that all measures of low SES in LMIC were associated with inferior outcome implies that in these settings, many mechanisms link SES and outcome. Interventions targeting a particular mechanism in LMIC are therefore likely to decrease but not erase socioeconomic gradients in outcome. For example, while the provision of free treatment, accommodation and transport to families in El Salvador resulted in a decrease in abandonment rates to 13%, socioeconomic variables remained the strongest predictors of abandonment. [46] Multi-faceted interventions are thus required in order to completely eliminate the negative influence of poor SES in LMIC. Turning to studies conducted in HIC, income-based measures of SES were not significantly associated with outcome, though were infrequently investigated. By contrast, measures encompassing paternal education, material possession, and insurance status were often statistically associated with inferior outcome. This contrast to the LMIC findings has several potential explanations. First, a negative influence of low SES in HIC may be present but weaker than in LMIC, such that HIC studies were more likely to be underpowered. As the majority of non-significant associations were in the direction of low SES being associated with inferior outcome, this hypothesis is plausible. Alternatively, only some of the pathways illustrated in Figure 4 may be relevant in HIC. Interestingly, both American studies examining the effect of insurance coverage found the lack of full coverage to be significantly associated with inferior survival. [34], [47] In HIC, measures of access to health care may therefore be more relevant than, for example, measures of income. It is also likely that the impact of different aspects of SES will vary between settings and malignancies. For example, different measures of SES are likely to be relevant in countries with universal access to health care than in those without. Compliance will have a greater potential effect upon outcome in malignancies for which outpatient oral chemotherapy plays a major role than those involving mainly inpatient therapy.

Implications for Future Studies

Future studies must move beyond choosing socioeconomic variables and outcomes based simply on what data are easily available to the investigators. Instead, authors should posit specific mechanisms and potential confounders in advance, identify measures of SES and outcomes consistent with the hypothesis, and only then examine for significant associations. For example, Bhatia et?al. measured rates of compliance to oral chemotherapy among American children with ALL. Low rates of compliance were linked to single mother households and associated with higher rates of relapse. [48] Demonstrating the role of a particular pathway thus not only leads to a deeper understanding of the impact of SES, but also to plausible interventions mediating the pathway. While such studies are likely to be complex, their impact may be significant. We have shown that improving the outcome of children of low SES to that of their high SES brethren would result in the elimination of up to 74.8% of adverse outcomes in LMIC and up to 31.9% of adverse outcomes in HIC. By way of comparison, minimal residual disease accounts for a theoretical 39.4% of relapse in high-risk ALL, while the novel feature of high CRLF2 expression accounts for 13.1% of relapse among all children with ALL. [49], [50] Consequently, debate on how low SES can be targeted is warranted, both in LMIC and HIC. Targeted interventions could encompass more frequent follow-up, intensive compliance monitoring, or other stratagems.

Strengths and Limitations

This study represents the first comprehensive assessment of the effect of SES on children with cancer. Other strengths include the lack of language-based restrictions and the exclusion of ethnicity, allowing for the role of biologic confounders to be minimized. Our main limitation was the inability to compare magnitudes of associations across studies. Even when multiple studies used both the same outcome (e.g. EFS) and exposure (e.g. income), different units of analysis were used (richest income quintile vs. poorest income quintile, per $100 monthly income). In previous work we showed the effect of monthly income upon EFS in children with ALL in El Salvador was HR = 0.81 per $100. [28] Comparing the richest quartile to the poorest in the identical population would have resulted in a HR of 0.45. Thus meaningful comparisons can only be made when the analysis unit is identical. This also rendered the use of Forest plots inappropriate. Our figures instead were restricted to illustrating effect direction and significance. In the future, individual-level meta-analyses may be useful in this regard as long as the non-categorized covariate (e.g. monthly income) was collected. Secondly, it is possible that publication bias is present, particularly in studies of LMIC. Finally, the incidence of ALL has itself been linked to high SES in some studies. [51] For this to explain the findings of our systematic review, the biologic driver behind this association would have to be specific to a low-risk form of ALL across multiple populations. While we cannot rule this possibility out, this would not explain the association between SES and outcome seen in other cancers. In conclusion, low SES is uniformly associated with poorer outcomes among LMIC children with cancer, and widespread among HIC children. Future studies should identify specific mechanisms underlying these gradients, as well as evaluate interventions aimed at improving the outcome of children with cancer with socioeconomic risk factors. Associations between socioeconomic measures and event-free and overall survival in studies conducted in the United States. Positive = lower socioeconomic status associated with inferior outcome; Negative = lower socioeconomic status associated with superior outcome. Magnitudes of association are not plotted. Thus points distal from the y-axis may represent stronger, weaker or equivalent associations than proximal points. (DOCX) Click here for additional data file. Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in low- and middle-income countries. ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; DFS – disease free survival; EFS – event free survival; HR – hazard ratio; N – number; OS – overall survival; SES – socioeconomic status; TRM – treatment related mortality. Bolded variables indicate statistically significant associations. aThe marginalization index used by Carlos et?al. is an ecologic measure of SES; all other variables in the table are measures of individual-level SES. (DOCX) Click here for additional data file. Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in high-income countries. ALL – acute lymphoblastic leukemia; AML – acute myeloid leukemia; CNS – central nervous system tumors; EFS – event free survival; ES – Ewing sarcoma; GCT – germ cell tumors; HR – hazard ratio; MB – medulloblastoma; N – number; NB – neuroblastoma; NHL – non-Hodgkin lymphoma; OR – odds ratio; OS – overall survival; OST – osteosarcoma; RR – relative risk; SES – socioeconomic status; STS – soft tissue sarcoma; UK – United Kingdom; USA – United States of America. Bolded variables indicate statistically significant associations. aIndividual malignancies within the overall category showed no significant association between SES and outcome. bAdolescent and young adult population. cWithin the overall malignancy category, leukemias did show a significant association between lower SES and inferior outcome. dImmigrant patients from one center were compared to a historical control. eNo statistical analysis was presented, though the authors state that survival was “directly related to SES”. fHR is per level of occupation. (DOCX) Click here for additional data file. Study Protocol. (DOCX) Click here for additional data file. Search Strategies. (DOCX) Click here for additional data file. Data Abstraction Form. (DOCX) Click here for additional data file. PRISMA Checklist. (DOC) Click here for additional data file.
  48 in total

1.  Risk of dying of retinoblastoma in Mexican children.

Authors:  Leal-Leal Carlos; Rivera-Luna Roberto; Tovar-Guzmán Victor; Hernández-Girón Carlos; Lazcano-Ponce Eduardo
Journal:  Med Pediatr Oncol       Date:  2002-03

2.  Poor prognosis in Negro children with acute lymphocytic leukemia.

Authors:  T R Walters; M Bushore; J Simone
Journal:  Cancer       Date:  1972-01       Impact factor: 6.860

3.  The measurement of observer agreement for categorical data.

Authors:  J R Landis; G G Koch
Journal:  Biometrics       Date:  1977-03       Impact factor: 2.571

4.  Survival from childhood leukemia depending on socioeconomic status in Athens.

Authors:  E Petridou; H Kosmidis; S Haidas; D Tong; K Revinthi; V Flytzani; D Papaioannou; D Trichopoulos
Journal:  Oncology       Date:  1994 Sep-Oct       Impact factor: 2.935

5.  Social class as a prognostic variable in acute lymphoblastic leukaemia.

Authors:  W R McWhirter; H Smith; K M McWhirter
Journal:  Med J Aust       Date:  1983-10-01       Impact factor: 7.738

6.  Groups potentially at risk for making poorly informed decisions about entry into clinical trials for childhood cancer.

Authors:  Christian Simon; Stephen J Zyzanski; Michelle Eder; Pauline Raiz; Eric D Kodish; Laura A Siminoff
Journal:  J Clin Oncol       Date:  2003-06-01       Impact factor: 44.544

7.  An integrated evaluation of socioeconomic and clinical factors in the survival from childhood acute lymphoblastic leukaemia: a study in Greece.

Authors:  A Charalampopoulou; E Petridou; T Spyridopoulos; N Dessypris; A Oikonomou; F Athanasiadou-Piperopoulou; M Baka; M Kalmanti; S Polychronopoulou; D Trichopoulos
Journal:  Eur J Cancer Prev       Date:  2004-10       Impact factor: 2.497

8.  The changing survivorship of white and black children with leukemia.

Authors:  M Szklo; L Gordis; J Tonascia; E Kaplan
Journal:  Cancer       Date:  1978-07       Impact factor: 6.860

9.  Nonadherence to oral mercaptopurine and risk of relapse in Hispanic and non-Hispanic white children with acute lymphoblastic leukemia: a report from the children's oncology group.

Authors:  Smita Bhatia; Wendy Landier; Muyun Shangguan; Lindsey Hageman; Alexandra N Schaible; Andrea R Carter; Cara L Hanby; Wendy Leisenring; Yutaka Yasui; Nancy M Kornegay; Leo Mascarenhas; A Kim Ritchey; Jacqueline N Casillas; David S Dickens; Jane Meza; William L Carroll; Mary V Relling; F Lennie Wong
Journal:  J Clin Oncol       Date:  2012-05-07       Impact factor: 44.544

Review 10.  Understanding social inequalities in health.

Authors:  Michael G Marmot
Journal:  Perspect Biol Med       Date:  2003       Impact factor: 1.416

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  27 in total

Review 1.  Pharmacogenetic Predictors of Treatment-Related Toxicity Among Children With Acute Lymphoblastic Leukemia.

Authors:  Rochelle R Maxwell; Peter D Cole
Journal:  Curr Hematol Malig Rep       Date:  2017-06       Impact factor: 3.952

Review 2.  Future cancer research priorities in the USA: a Lancet Oncology Commission.

Authors:  Elizabeth M Jaffee; Chi Van Dang; David B Agus; Brian M Alexander; Kenneth C Anderson; Alan Ashworth; Anna D Barker; Roshan Bastani; Sangeeta Bhatia; Jeffrey A Bluestone; Otis Brawley; Atul J Butte; Daniel G Coit; Nancy E Davidson; Mark Davis; Ronald A DePinho; Robert B Diasio; Giulio Draetta; A Lindsay Frazier; Andrew Futreal; Sam S Gambhir; Patricia A Ganz; Levi Garraway; Stanton Gerson; Sumit Gupta; James Heath; Ruth I Hoffman; Cliff Hudis; Chanita Hughes-Halbert; Ramy Ibrahim; Hossein Jadvar; Brian Kavanagh; Rick Kittles; Quynh-Thu Le; Scott M Lippman; David Mankoff; Elaine R Mardis; Deborah K Mayer; Kelly McMasters; Neal J Meropol; Beverly Mitchell; Peter Naredi; Dean Ornish; Timothy M Pawlik; Jeffrey Peppercorn; Martin G Pomper; Derek Raghavan; Christine Ritchie; Sally W Schwarz; Richard Sullivan; Richard Wahl; Jedd D Wolchok; Sandra L Wong; Alfred Yung
Journal:  Lancet Oncol       Date:  2017-10-31       Impact factor: 41.316

Review 3.  Optimizing medication adherence in children with cancer.

Authors:  Sumit Gupta; Smita Bhatia
Journal:  Curr Opin Pediatr       Date:  2017-02       Impact factor: 2.856

4.  Does socioeconomic status account for racial and ethnic disparities in childhood cancer survival?

Authors:  Rebecca D Kehm; Logan G Spector; Jenny N Poynter; David M Vock; Sean F Altekruse; Theresa L Osypuk
Journal:  Cancer       Date:  2018-08-20       Impact factor: 6.860

5.  Health disparities are important determinants of outcome for children with solid tumor malignancies.

Authors:  Mary T Austin; Hoang Nguyen; Jan M Eberth; Yuchia Chang; Andras Heczey; Dennis P Hughes; Kevin P Lally; Linda S Elting
Journal:  J Pediatr Surg       Date:  2014-10-26       Impact factor: 2.545

6.  Death Within 1 Month of Diagnosis in Childhood Cancer: An Analysis of Risk Factors and Scope of the Problem.

Authors:  Adam L Green; Elissa Furutani; Karina Braga Ribeiro; Carlos Rodriguez Galindo
Journal:  J Clin Oncol       Date:  2017-03-06       Impact factor: 44.544

7.  Challenges Associated With Living Remotely From a Pediatric Cancer Center: A Qualitative Study.

Authors:  Emily B Walling; Mark Fiala; Andrea Connolly; Alyssa Drevenak; Sarah Gehlert
Journal:  J Oncol Pract       Date:  2019-01-31       Impact factor: 3.840

8.  Socioeconomic status (SES) and childhood acute myeloid leukemia (AML) mortality risk: Analysis of SEER data.

Authors:  Naomi B Knoble; Melissa A Alderfer; Md Jobayer Hossain
Journal:  Cancer Epidemiol       Date:  2016-08-17       Impact factor: 2.984

9.  Association of Medicaid Expansion With Insurance Coverage Among Children With Cancer.

Authors:  Justin M Barnes; Abigail R Barker; Allison A King; Kimberly J Johnson
Journal:  JAMA Pediatr       Date:  2020-06-01       Impact factor: 16.193

10.  The Effect of Socioeconomic Factors on Outcomes of Distal Radius Fractures: A Systematic Review.

Authors:  Jessica L Truong; Chris Doherty; Nina Suh
Journal:  Hand (N Y)       Date:  2017-10-11
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