| Literature DB >> 24586813 |
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.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
Medline Search Strategy.
| Set | History | Results | Comments |
| 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/ | 54,3627 | SES Terms |
| 2 | Exp Neoplasms/ | 2,416,057 | Neoplasm terms |
| 3 | 1 and 2 | 3,227,924 | Base clinical set |
| 4 | limit 3 to “all child (0 to 18 years)” | 4,042 | Age group limit |
| 5 | (infan* or child* or adolescen* or youth* orteen* or pediatric* or paediatric*).mp. | 2,961,284 | Age group textword terms |
| 6 | 4 or (3 and 5) | 4,533 | FINAL Results |
Figure 1PRISMA flow diagram.
Characteristics of included studies.
| Characteristic | Studies, N (%) | |
| LMIC (N = 10) | HIC (N = 26) | |
| Malignancy | ||
| All cancers | 0 (0.0) | 8 (30.8) |
| Leukemia or lymphoma | 9 (90.0) | 15 (57.7) |
| Solid tumor | 1 (10.0) | 1 (3.8) |
| Central nervous system tumor | 0 (0.0) | 2 (7.7) |
| Type of socioeconomic variable examined | ||
| Ecologic | 1 (10.0) | 13 (50.0) |
| Income-based | 7 (70.0) | 2 (7.7) |
| Education-based | 6 (60.0) | 10 (38.5) |
| Other | 5 (50.0) | 10 (38.5) |
| Sample Size | ||
| <100 | 1 (10.0) | 4 (15.4) |
| 100 | 9 (90.0) | 9 (34.6) |
| 1,000 | 0 (0.0) | 12 (46.2) |
| ≥10,000 | 0 (0.0) | 1 (3.8) |
| Restricted to adolescents/young adults | ||
| Yes | 0 (0.0) | 2 (7.7) |
| No | 10 (100.0) | 24 (92.3) |
| Study sample adequately reflective of general population | ||
| Yes | 8 (80.0) | 21 (80.7) |
| No/Partial/Unsure | 2 (20.0) | 5 (19.2) |
| Loss to follow-up unrelated to socioeconomic status | ||
| Yes | 3 (30.0) | 21 (80.7) |
| No/Partial/Unsure | 1 (10.0) | 5 (19.2) |
| Not applicable | 6 (60.0) | 0 (0.0) |
| Potential confounders accounted for | ||
| Yes | 6 (60.0) | 12 (46.2) |
| No/Partial/Unsure | 4 (40.0) | 14 (53.8) |
| Analysis appropriate | ||
| Yes | 8 (80.0) | 18 (69.2) |
| No/Partial/Unsure | 2 (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.
Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in low- and middle-income countries.
| Country | Malignancy | N | OutcomeMeasure | Ecologic Measures | Income Measures | Education Measures | Other SES Measures | |
| Bonilla 2010 | El Salvador | Standard risk ALL | 260 | EFS |
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| Telephone ownership NS |
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| Mode of transport NS |
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| High risk ALL | 183 | EFS |
| Monthlyincome NS | Parentaleducation NS | Telephone ownership NS |
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| Mode of transport NS |
| Mostert 2010 | Indonesia | ALL | 283 | EFS |
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| Tang 2008 | China | ALL | 346 | EFS |
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| Dinand 2007 | India | Hodgkin Lymphoma | 145 | EFS |
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| Pedrosa 2007 | Brazil | Non-Hodgkin Lymphoma | 110 | OS |
| Family income NS | Maternal education NS |
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| Carlos 2002 | Mexico | Retinoblastoma | 552 | OS |
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| Viana 1998 | Brazil | ALL | 167 | DFS |
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| Gupta 2009 | El Salvador | AML | 78 | TRM |
| Monthly income NS | Parental education NS | Telephone ownership NS |
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| Number of family members NS |
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| Cost to travel to clinic NS |
| Wang 2011 | China | ALL | 323 | Abandonment |
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| Paternal education NS |
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| Maternal education NS |
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| Kulkarni 2010 | India | ALL | 532 | Abandonment |
| Kuppuswami score NS |
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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 2Associations 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.
Eligible studies examining the impact of socioeconomic status upon outcome in children with cancer in high-income countries.
| Country | Outcome Measure | Malignancy | N | Ecologic Measures | Income Measures | Education Measures | Other SES Measures | |
| Metzger 2008 | USA | EFS | Hodgkin lymphoma | 327 |
| – |
| – |
| Bhatia 2002 | USA, Canada | EFS | ALL | 1596 | – | Annual household income NS | Paternal educationNS | – |
| – | – | – | – | – | – | – | Maternal educationNS | – |
| Hann 1981 | England | 5 year EFS | ALL | 209 | – | – | Paternal occupationNS | – |
| Lightfoot 2012 | England, Scotland, Wales | OS | ALL | 1559 |
| – | Paternal occupationNS | – |
| Syse 2012 | Norway | OS | Cancers | 6280 | – | Household income NS |
| Marital status NS |
| – | – | – | – | – | – |
| – | Number of children NS |
| Rondelli 2011 | Italy | OS | ALL | 3522 | – |
| – |
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| Walsh 2011 | Ireland | 5 year OS | All Cancers | 1440 | SAHRUdeprivationindexNS | – | – | – |
| Youlden 2011 | Australia | 5 year OS | Cancers | 6289 | Disadvantageindex NS | – | – |
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| Crouch 2009 | UK | 5 year OS | All cancers | 654 |
| – | – | – |
| Hsieh 2009 | USA | OS | NB | 1777 |
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| Kent 2009 | USA | OS | Leukemias | 4158 | Census-baseddeprivationindex NS | – | – |
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| Birch 2008 | England | 5 year OS | All Cancers | 31722 |
| – | – | – |
| Moschovi 2007 | Greece | OS | MB | 50 | – | – | Maternal education NS | Place of residence NS |
| Perez-Martinez 2007 | Spain | 5 year OS | All cancers | 90+ | – | . | – | Immigrant status NS |
| Tseng 2006 | England, Wales | 5 year OS | Malignant CNS | 3169 | Carstairsindex NS | – | – | – |
| Charalampopolou 2004 | Greece | OS | ALL | 293 | – | – | Maternaleducation NS |
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| – | – | – | – | – | – | – | – |
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| Coleman 1999 | England, Wales | 5 year OS | Hodgkin lymphoma | 189 | Carstairsindex NS | – | – | – |
| – | – | – | NHL | 273 | Carstairsindex NS | – | – | – |
| – | – | – | CNS | 1050 | Carstairsindex NS | – | – | – |
| – | – | – | Wilms | 257 | Carstairsindex NS | – | – | – |
| – | – | – | OST | 117 | Carstairsindex NS | – | – | – |
| – | – | – | ES | 97 | Carstairsindex NS | – | – | – |
| – | – | – | STS | 319 | Carstairsindex NS | – | – | – |
| – | – | – | GCT | 121 | Carstairsindex NS | – | – | – |
| McKinney 1999 | UK | OS | All Cancers | 1979 | Carstairsindex NS | – | – | – |
| Schillinger 1999 | England, Wales | 5 year OS | ALL | 5566 | Carstairsindex NS | – | – | – |
| Coebergh 1996 | Netherlands | 5 year OS | Standard-risk ALL | 367 | – | – | Parentaleducation NS | – |
| – | – | – | High-risk ALL | 141 | – | – | Parentaleducation NS | – |
| – | – | – | AML | 67 | – | – | Parentaleducation NS | – |
| Hord 1996 | USA | 5 year OS | ALL | 178 | – | – | – |
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| Petridou 1994 | Greece | OS | Leukemias | 120 | – | . | Paternaloccupation NS |
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| – | – | – | – | – | – | – | Paternaleducation NS | Maternity hospital type NS |
| – | – | – | – | – | – | – | Maternaleducation NS | Ability to choose doctor NS |
| McWhirter 1983 | Australia | 5 year OS | ALL | 70 | – | – |
| – |
| Szklo 1978 | USA | 2 year OS | ALL | 55 |
| – | – | – |
| Byrne 2011 | USA | Medianduration | AML (Age 0–9) | 84 | Communitypoverty level NS | – | – | – |
| – | – | AML (Age 10–19) | 102 | Communitypoverty level NS | – | – | – | |
| Walters 1972 | USA | Medianduration | ALL | 334 | – | – |
| – |
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 3Associations 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.
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.
| Malignancy | Country | Category | Adverse Prognosticator | pe | RR | AR | |
| Dinand 2007 | HL | India | LMIC | Low SES, based on aggregate score including income | 0.67 | 5.4 | 74.8% |
| Mostert 2010 | ALL | Brazil | LMIC | Monthly per capita income <0.4 ×minimum wage | 0.25 | 1.2 | 22.9% |
| Viana 1998 | ALL | Indonesia | LMIC | 2nd/3rd class ward, based on income | 0.76 | 2.6 | 55.0% |
| Tang 2008 | ALL | China | LMIC | Rural residence/no insurance | 0.74 | 1.8 | 37.1% |
| Bhatia 2002 | ALL | USA, Canada | HIC | Annual household income <$30,000 | 0.56 | 1.0 | 0.0% |
| Hord 1996 | ALL | USA | HIC | At least partially uncovered by insurance | 0.29 | 1.6 | 15.7% |
| Lightfoot 2012 | ALL | England, Scotland, Wales | HIC | Deprived area, based in part on income | 0.39 | 1.3 | 10.2% |
| Metzger 2008 | HL | USA | HIC | County with high % children in poverty | 0.52 | 1.9 | 31.9% |
| Borowitz 2008 | SR-ALL | Multiple | HIC | MRD>0.01% | 0.14 | 7.2 | 45.6% |
| Borowitz 2008 | HR-ALL | Multiple | HIC | MRD>0.01% | 0.30 | 3.2 | 39.4% |
| Loken 2012 | AML | Multiple | HIC | Residual disease by flow cytometry | 0.22 | 2.17 | 20.5% |
| Chen 2012 | ALL | Multiple | HIC | High CRLF2 expression | 0.18 | 1.86 | 13.1% |
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.
Figure 4Mechanisms 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.