<?xml version="1.0" encoding="ISO-8859-1"?><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance">
<front>
<journal-meta>
<journal-id>0034-8910</journal-id>
<journal-title><![CDATA[Revista de Saúde Pública]]></journal-title>
<abbrev-journal-title><![CDATA[Rev. Saúde Pública]]></abbrev-journal-title>
<issn>0034-8910</issn>
<publisher>
<publisher-name><![CDATA[Faculdade de Saúde Pública da Universidade de São Paulo]]></publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id>S0034-89102012000400016</article-id>
<article-id pub-id-type="doi">10.1590/S0034-89102012005000039</article-id>
<title-group>
<article-title xml:lang="en"><![CDATA[Cause-specific mortality and income inequality in São Paulo, Brazil]]></article-title>
<article-title xml:lang="pt"><![CDATA[Mortalidade segundo causas básicas e desigualdade de renda no Município de São Paulo]]></article-title>
<article-title xml:lang="es"><![CDATA[Mortalidad según causas básicas y desigualdad de renta en el Municipio de Sao Paulo, Brasil]]></article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Chiavegatto Filho]]></surname>
<given-names><![CDATA[Alexandre Dias Porto]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
<xref ref-type="aff" rid="A02"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Gotlieb]]></surname>
<given-names><![CDATA[Sabina Léa Davidson]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Kawachi]]></surname>
<given-names><![CDATA[Ichiro]]></given-names>
</name>
<xref ref-type="aff" rid="A02"/>
</contrib>
</contrib-group>
<aff id="A01">
<institution><![CDATA[,Universidade de São Paulo Faculdade de Saúde Pública Departamento de Epidemiologia]]></institution>
<addr-line><![CDATA[São Paulo SP]]></addr-line>
<country>Brasil</country>
</aff>
<aff id="A02">
<institution><![CDATA[,Harvard University Harvard School of Public Health Department of Society, Human Development and Health]]></institution>
<addr-line><![CDATA[Boston MA]]></addr-line>
<country>United States</country>
</aff>
<pub-date pub-type="pub">
<day>00</day>
<month>08</month>
<year>2012</year>
</pub-date>
<pub-date pub-type="epub">
<day>00</day>
<month>08</month>
<year>2012</year>
</pub-date>
<volume>46</volume>
<numero>4</numero>
<fpage>712</fpage>
<lpage>718</lpage>
<copyright-statement/>
<copyright-year/>
<self-uri xlink:href="http://www.scielosp.org/scielo.php?script=sci_arttext&amp;pid=S0034-89102012000400016&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><self-uri xlink:href="http://www.scielosp.org/scielo.php?script=sci_abstract&amp;pid=S0034-89102012000400016&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><self-uri xlink:href="http://www.scielosp.org/scielo.php?script=sci_pdf&amp;pid=S0034-89102012000400016&amp;lng=en&amp;nrm=iso&amp;tlng=en"></self-uri><abstract abstract-type="short" xml:lang="en"><p><![CDATA[OBJECTIVE: To analyze cause-specific mortality rates according to the relative income hypothesis. METHODS: All 96 administrative areas of the city of São Paulo, southeastern Brazil, were divided into two groups based on the Gini coefficient of income inequality: high (&gt;0.25) and low (<0.25). The propensity score matching method was applied to control for confounders associated with socioeconomic differences among areas. RESULTS: The difference between high and low income inequality areas was statistically significant for homicide (8.57 per 10,000; 95%CI: 2.60;14.53); ischemic heart disease (5.47 per 10,000 [95%CI 0.76;10.17]); HIV/AIDS (3.58 per 10,000 [95%CI 0.58;6.57]); and respiratory diseases (3.56 per 10,000 [95%CI 0.18;6.94]). The ten most common causes of death accounted for 72.30% of the mortality difference. Infant mortality also had significantly higher age-adjusted rates in high inequality areas (2.80 per 10,000 [95%CI 0.86;4.74]), as well as among males (27.37 per 10,000 [95%CI 6.19;48.55]) and females (15.07 per 10,000 [95%CI 3.65;26.48]). CONCLUSIONS: The study results support the relative income hypothesis. After propensity score matching cause-specific mortality rates was higher in more unequal areas. Studies on income inequality in smaller areas should take proper accounting of heterogeneity of social and demographic characteristics.]]></p></abstract>
<abstract abstract-type="short" xml:lang="pt"><p><![CDATA[OBJETIVO: Analisar causas básicas de óbito segundo a teoria de renda relativa. MÉTODOS: Os 96 distritos do Município de São Paulo, SP, foram divididos em dois grupos segundo desigualdade de renda, com base no índice de Gini (alta &gt; 0,25 e baixa <0,25). Foi aplicada a metodologia propensity score matching para controlar por fatores de confusão referentes às diferenças socioeconômicas e demográficas entre os distritos. RESULTADOS: A diferença entre a mortalidade de distritos desiguais e mais igualitários foi estatisticamente significativa para homicídios (8,57 por 10.000 residentes [IC95% 2,60; 14,53]), doença isquêmica do coração (5,47 por 10.000 [IC95% 0,76; 10,17]), aids (3,58 por 10.000 [IC95% 0,58; 6,57]) e doenças respiratórias (3,56 por 10.000 [IC95% 0,18; 6,94]). As dez causas básicas mais frequentes foram responsáveis por 72,3% do total da diferença. A mortalidade infantil também foi estatisticamente maior para distritos mais desiguais (2,80 por 10.000 [IC95% 0,86; 4,74]), assim como mortalidade masculina (27,37 por 10.000 [IC95% 6,19; 48,55]) e feminina (15,07 por 10.000 [IC95% 3,65; 26,48]). CONCLUSÕES: Os resultados encontrados estão de acordo com o esperado pela teoria da renda relativa. A mortalidade por todas as causas básicas analisadas foi maior em distritos mais desiguais depois do uso da metodologia do propensity score matching. Estudos sobre a desigualdade de renda realizados em regiões menores precisam levar em consideração a distribuição heterogênea das características sociais e demográficas.]]></p></abstract>
<abstract abstract-type="short" xml:lang="es"><p><![CDATA[OBJETIVO: Analizar causas básicas de óbito según la teoría de renta relativa. MÉTODOS: Los 96 distritos del Municipio de Sao Paulo, SP, Brasil fueron divididos en dos grupos según desigualdad de renta, con base en el índice de Gini (alta ? 0,25 y baja < 0,25). Se aplicó la metodología propensity score matching para controlar por factores de confusión relacionadas con las diferencias socioeconómicas y demográficas entre los distritos. RESULTADOS: La diferencia entre la mortalidad de distritos desiguales y más igualitarios fue estadísticamente significativa para homicidios (8,57 por 10.000 residentes [IC95% 2,60; 14,53]), enfermedad isquémica del corazón(5,47 por 10.000 [IC95% 0,76; 10,17]), sida (3,58 por 10.000 [IC95% 0,58; 6,57]) y enfermedades respiratorias (3,56 por 10.000 [IC95% 0,18; 6,94]). Las diez causas básicas mas frecuentes fueron responsables por 72,3% del total de la diferencia. La mortalidad infantil también fue estadísticamente mayor para distritos más desiguales (2,80 por 10.000 [IC95% 0,86; 4,74]), así como la mortalidad masculina (27,37 por 10.000 [IC95% 6,19; 48,55]) y femenina (15,07 por 10.000 [IC95% 3,65 ; 26,48]). CONCLUSIONES: Los resultados encontrados están de acuerdo con lo esperado por la teoría de la renta relativa. La mortalidad por todas las causas básicas analizadas fue mayor en distritos más desiguales después del uso de la metodología del propensity score matching. Estudios sobre la desigualdad de renta realizados en regiones menores deben tomar en consideración la distribución heterogénea de las características sociales y demográficas.]]></p></abstract>
<kwd-group>
<kwd lng="en"><![CDATA[Mortality]]></kwd>
<kwd lng="en"><![CDATA[Cause of Death]]></kwd>
<kwd lng="en"><![CDATA[Income]]></kwd>
<kwd lng="en"><![CDATA[Health Inequalities]]></kwd>
<kwd lng="en"><![CDATA[Social Inequity]]></kwd>
<kwd lng="pt"><![CDATA[Mortalidade]]></kwd>
<kwd lng="pt"><![CDATA[Causas de Morte]]></kwd>
<kwd lng="pt"><![CDATA[Renda]]></kwd>
<kwd lng="pt"><![CDATA[Desigualdades em Saúde]]></kwd>
<kwd lng="pt"><![CDATA[Iniquidade Social]]></kwd>
<kwd lng="es"><![CDATA[Mortality]]></kwd>
<kwd lng="es"><![CDATA[Health Inequalities]]></kwd>
<kwd lng="es"><![CDATA[Mortalidad]]></kwd>
<kwd lng="es"><![CDATA[Causas de Muerte]]></kwd>
<kwd lng="es"><![CDATA[Renta]]></kwd>
<kwd lng="es"><![CDATA[Desigualdades en la Salud]]></kwd>
<kwd lng="es"><![CDATA[Inequidad Social]]></kwd>
</kwd-group>
</article-meta>
</front><body><![CDATA[ <p><a name="top"></a><font face="Verdana, Arial, Helvetica, sans-serif" size="4"><b>Cause-specific    mortality and income inequality in S&atilde;o Paulo, Brazil</b></font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Mortalidade    segundo causas b&aacute;sicas e desigualdade de renda no Munic&iacute;pio de    S&atilde;o Paulo</b></font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>Mortalidad seg&uacute;n    causas b&aacute;sicas y desigualdad de renta en el Municipio de Sao Paulo, Brasil</b></font></p>     <p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Alexandre Dias    Porto Chiavegatto Filho<sup>I, II</sup>; Sabina L&eacute;a Davidson Gotlieb<sup>I</sup>;    Ichiro Kawachi<sup>II</sup></b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><sup>I</sup>Departamento    de Epidemiologia. Faculdade de Sa&uacute;de P&uacute;blica. Universidade de    S&atilde;o Paulo. S&atilde;o Paulo, SP, Brasil    <br>   <sup>II</sup>Department of Society, Human Development and Health. Harvard School    of Public Health. Harvard University. Boston, MA, United States</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><a href="#back">Correspondence    | Correspond&ecirc;ncia</a></font></p>     <p>&nbsp;</p>     <p>&nbsp;</p> <hr size="1" noshade>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>ABSTRACT</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>OBJECTIVE:</b>    To analyze cause-specific mortality rates according to the relative income hypothesis.    <br>   <b>METHODS:</b> All 96 administrative areas of the city of S&atilde;o Paulo,    southeastern Brazil, were divided into two groups based on the Gini coefficient    of income inequality: high (<u>&gt;</u>0.25) and low (&lt;0.25). The propensity    score matching method was applied to control for confounders associated with    socioeconomic differences among areas.    <br>   <b>RESULTS:</b> The difference between high and low income inequality areas    was statistically significant for homicide (8.57 per 10,000; 95%CI: 2.60;14.53);    ischemic heart disease (5.47 per 10,000 &#91;95%CI 0.76;10.17&#93;); HIV/AIDS    (3.58 per 10,000 &#91;95%CI 0.58;6.57&#93;); and respiratory diseases (3.56    per 10,000 &#91;95%CI 0.18;6.94&#93;). The ten most common causes of death accounted    for 72.30% of the mortality difference. Infant mortality also had significantly    higher age-adjusted rates in high inequality areas (2.80 per 10,000 &#91;95%CI    0.86;4.74&#93;), as well as among males (27.37 per 10,000 &#91;95%CI 6.19;48.55&#93;)    and females (15.07 per 10,000 &#91;95%CI 3.65;26.48&#93;).    <br>   <b>CONCLUSIONS:</b> The study results support the relative income hypothesis.    After propensity score matching cause-specific mortality rates was higher in    more unequal areas. Studies on income inequality in smaller areas should take    proper accounting of heterogeneity of social and demographic characteristics.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Descriptors:</b>    Mortality. Cause of Death. Income. Health Inequalities. Social Inequity.</font></p> <hr size="1" noshade>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>RESUMO</b></font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>OBJETIVO:</b>    Analisar causas b&aacute;sicas de &oacute;bito segundo a teoria de renda relativa.    <br>   <b>M&Eacute;TODOS:</b> Os 96 distritos do Munic&iacute;pio de S&atilde;o Paulo,    SP, foram divididos em dois grupos segundo desigualdade de renda, com base no    &iacute;ndice de Gini (alta <u>&gt;</u> 0,25 e baixa &lt;0,25). Foi aplicada    a metodologia <i>propensity score matching</i> para controlar por fatores de    confus&atilde;o referentes &agrave;s diferen&ccedil;as socioecon&ocirc;micas    e demogr&aacute;ficas entre os distritos.    <br>   <b>RESULTADOS:</b> A diferen&ccedil;a entre a mortalidade de distritos desiguais    e mais igualit&aacute;rios foi estatisticamente significativa para homic&iacute;dios    (8,57 por 10.000 residentes &#91;IC95% 2,60; 14,53&#93;), doen&ccedil;a isqu&ecirc;mica    do cora&ccedil;&atilde;o (5,47 por 10.000 &#91;IC95% 0,76; 10,17&#93;), aids    (3,58 por 10.000 &#91;IC95% 0,58; 6,57&#93;) e doen&ccedil;as respirat&oacute;rias    (3,56 por 10.000 &#91;IC95% 0,18; 6,94&#93;). As dez causas b&aacute;sicas mais    frequentes foram respons&aacute;veis por 72,3% do total da diferen&ccedil;a.    A mortalidade infantil tamb&eacute;m foi estatisticamente maior para distritos    mais desiguais (2,80 por 10.000 &#91;IC95% 0,86; 4,74&#93;), assim como mortalidade    masculina (27,37 por 10.000 &#91;IC95% 6,19; 48,55&#93;) e feminina (15,07 por    10.000 &#91;IC95% 3,65; 26,48&#93;).    <br>   <b>CONCLUS&Otilde;ES:</b> Os resultados encontrados est&atilde;o de acordo com    o esperado pela teoria da renda relativa. A mortalidade por todas as causas    b&aacute;sicas analisadas foi maior em distritos mais desiguais depois do uso    da metodologia do <i>propensity score matching.</i> Estudos sobre a desigualdade    de renda realizados em regi&otilde;es menores precisam levar em considera&ccedil;&atilde;o    a distribui&ccedil;&atilde;o heterog&ecirc;nea das caracter&iacute;sticas sociais    e demogr&aacute;ficas.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Descritores:</b>    Mortalidade. Causas de Morte. Renda. Desigualdades em Sa&uacute;de. Iniquidade    Social.</font></p> <hr size="1" noshade>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>RESUMEN</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>OBJETIVO:</b>    Analizar causas b&aacute;sicas de &oacute;bito seg&uacute;n la teor&iacute;a    de renta relativa.    <br>   <b>M&Eacute;TODOS:</b> Los 96 distritos del Municipio de Sao Paulo, SP, Brasil    fueron divididos en dos grupos seg&uacute;n desigualdad de renta, con base en    el &iacute;ndice de Gini (alta ? 0,25 y baja &lt; 0,25). Se aplic&oacute; la    metodolog&iacute;a propensity score matching para controlar por factores de    confusi&oacute;n relacionadas con las diferencias socioecon&oacute;micas y demogr&aacute;ficas    entre los distritos.    <br>   <b>RESULTADOS:</b> La diferencia entre la mortalidad de distritos desiguales    y m&aacute;s igualitarios fue estad&iacute;sticamente significativa para homicidios    (8,57 por 10.000 residentes &#91;IC95% 2,60; 14,53&#93;), enfermedad isqu&eacute;mica    del coraz&oacute;n(5,47 por 10.000 &#91;IC95% 0,76; 10,17&#93;), sida (3,58    por 10.000 &#91;IC95% 0,58; 6,57&#93;) y enfermedades respiratorias (3,56 por    10.000 &#91;IC95% 0,18; 6,94&#93;). Las diez causas b&aacute;sicas mas frecuentes    fueron responsables por 72,3% del total de la diferencia. La mortalidad infantil    tambi&eacute;n fue estad&iacute;sticamente mayor para distritos m&aacute;s desiguales    (2,80 por 10.000 &#91;IC95% 0,86; 4,74&#93;), as&iacute; como la mortalidad    masculina (27,37 por 10.000 &#91;IC95% 6,19; 48,55&#93;) y femenina (15,07 por    10.000 &#91;IC95% 3,65 ; 26,48&#93;).    <br>   <b>CONCLUSIONES:</b> Los resultados encontrados est&aacute;n de acuerdo con    lo esperado por la teor&iacute;a de la renta relativa. La mortalidad por todas    las causas b&aacute;sicas analizadas fue mayor en distritos m&aacute;s desiguales    despu&eacute;s del uso de la metodolog&iacute;a del <i>propensity score matching</i>.    Estudios sobre la desigualdad de renta realizados en regiones menores deben    tomar en consideraci&oacute;n la distribuci&oacute;n heterog&eacute;nea de las    caracter&iacute;sticas sociales y demogr&aacute;ficas.</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><b>Descriptores:</b>    Mortality. Health Inequalities. Mortalidad. Causas de Muerte. Renta. Desigualdades    en la Salud. Inequidad Social.</font></p> <hr size="1" noshade>     <p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>INTRODUCTION</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The association    between income and health can be assessed through two distinct mechanisms: the    absolute income effect and the relative income effect. The absolute income effect    is exemplified by the well-established association between income, poverty and    death and illness. Those living in poverty have lower access to health services,    clean water, secure jobs, decent education, as well as are more vulnerable to    violence and natural disasters.<sup>18</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Conversely, the    relative income hypothesis posits that an individual's health status is additionally    determined by his/her relative social position, which depends on the income    level. Thus, an individual with a given income would have worse health status    when living in close proximity to wealthier individuals compared to others with    a similar standard of living. To paraphrase Seneca in <i>Epistles to Lucilius</i>,    "poor in the midst of riches, which is the sorest kind of poverty."</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Among several theories    to explain the relative income effect one of the most influential is Wilkinson's    (the psychosocial hypothesis):<sup>18</sup> stress and shame produced by invidious    social comparisons increase an individual's vulnerability to illness. Additionally,    lower relative income can materially affect life opportunities. For example,    someone who has enough resources to afford a phone cannot be described as deprived    (in an absolute sense) of the ability to communicate with others. Nevertheless,    if everybody else owns a phone and also has access to the Internet, then that    individual who can only afford the phone can be relatively deprived. The sense    of relative deprivation can be experienced as loss of status and prestige, but    it is also experienced because an individual who does not have access to the    Internet (in a society where everybody else is connected) can miss out on information    such as job opportunities.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">From the perspective    of social epidemiology, one empirical test of the relative income hypothesis    is whether the local income distribution has an independent effect on mortality    and morbidity above and beyond the effect of absolute income. To date, empirical    tests have linked income distribution and health.<sup>15,19</sup> A recent meta-analysis    of multilevel studies found a statistically significant association between    higher income inequality and excess mortality and poor self-rated health; each    0.05 unit increase in the Gini coefficient was associated with a 7.8% excess    mortality risk (95% CI 5.9;9.8).<sup>8</sup> However, the size of the area for    which income inequality is relevantly associated with health outcome is still    a matter of debate. According to an earlier review by Subramanian &amp; Kawachi,<sup>15</sup>    the association between income inequality and health is more robust for studies    conducted in larger (in particular, U.S. states) than smaller areas (neighborhoods).    This observation is inconsistent with the relative income theory which posits    that social comparisons are likely to be more significantly felt as the individual    is proximate to reference groups (i.e. when compared against one's immediate    neighbors versus other people living in the same state).<sup>13</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Before refuting    this theory we should note an important methodological issue of testing the    relative income hypothesis in smaller areas such as neighborhoods. In societies    with high income segregation such as in Brazil,<sup>11</sup> the distribution    of income within a neighborhood is more equal than that between neighborhoods.<sup>19</sup>    Thus, income distribution within a <i>favela</i> (urban slum) tend to be far    more equal (i.e. everybody is equally poor) compared to the rest of the metropolitan    area. Thus, relevant social comparisons may not be fully valid by focusing on    the distribution of income within a neighborhood.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Another challenge    to the relative income theory is the mechanism by which inequality may have    an effect on health. The psychosocial theory of inequality posits that the harmful    effects of inequality are mediated by stress.<sup>18</sup> But according to    a recent literature review, five out of nine studies found little or no effect    of stress as a potential mediator between socioeconomic status and health.<sup>10</sup>    This inconsistency in the literature may partly be explained by the crude manner    in which "stress" is often measured.<sup>5</sup> An alternative approach is    to examine the specific pattern of excess morbidity and mortality associated    with inequality to assess whether it is consistent with a stress-related mechanism.    For example, accumulated evidence at the individual level points to an association    between stress and cardiovascular disease but there is less evidence for cancers.<sup>1,7</sup>    Wilkinson &amp; Pickett<sup>20</sup> analyzed seven different cause-specific    mortality rates from 3,139 counties in the United States and found that income    inequality was associated to ischemic heart disease, respiratory disease, and    homicide.</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The objective of    the present study was to analyze cause-specific mortality differences according    to the relative income theory using a methodological approach that takes into    account local heterogeneity.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>METHODS</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">This analysis was    developed by focusing on the two aforementioned challenges. First, we applied    a statistical method known as propensity score matching to control for potential    confounders of the association between income inequality and health, as highly    deprived neighborhoods can have relatively equal distribution of income (because    everyone is equally poor). In such a case, it would be misleading to compare    people's health in unequal vs. equal neighborhoods regardless of absolute local    characteristics. Second, we identified cause-specific patterns of mortality    associated with income inequality. Preliminary results of the main study are    published elsewhere.<sup>3</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">S&atilde;o Paulo,    southeastern Brazil, is a very unequal and segregated city.<sup>2,17</sup> In    the past, the city was considered to have a radial distribution of income, the    farther away from the center the poorer its residents.<sup>16</sup> As population    density increased wealthier residents came to prefer more peripheral areas;    and the need for construction workers, and domestic and other low-paid laborers    made them move to these areas as well. Extreme income inequality between closely-adjacent    areas became an important characteristic of S&atilde;o Paulo.<sup>2</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">S&atilde;o Paulo    is currently divided into 31 administrative areas, known as <i>subprefeituras</i>.    They are further divided into administrative areas, a proxy for neighborhood    and the smallest areas for which health data is available. S&atilde;o Paulo    has a total of 96 administrative areas (median population of 98,649 residents)    covering the entire area of the city.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">We included 16    administrative area-level variables in the model: prevalence of <i>favelas</i>    (proportion of households classified as "<i>subnormais</i>" or slums); poverty    rate (proportion of residents living in households with an income of less than    half of the monthly minimum wage per capita); median per capita income; education    of head of household (measured by years of schooling); household density (average    number of people living in the same household); proportion of households with    tap water; proportion of households with garbage collection; proportion of households    with no sewage system; proportion of heads of household under 21 years old;    illiteracy rate of heads of household; illiteracy rate of 8-12 years old; proportion    of teachers per student (5th to 8th grade); HIV/AIDS rate; proportion of infants    (under 1 year old); proportion of elderly (over 64 years old); and proportion    of women. Data was obtained from the 2000 Population Census,<a name="topa"></a><a href="#backa">ª</a>    as well as from the 2001 School Census (proportion of teachers per student)<a name="topb"></a><a href="#backb"><sup>b</sup></a>    and the S&atilde;o Paulo Epidemiological Bulletin (HIV/AIDS rate).<a name="topc"></a><a href="#backc"><sup>c</sup></a>    The variables are all based on official municipal and federal data and were    selected to control for absolute characteristics that may affect health besides    income inequality. After the selection of variables, no further changes were    made (i.e. no variables were included or excluded during the analysis). The    variable used to define exposure in the propensity score model was the Gini    coefficient, which was also calculated from the 2000 Population Census. The    outcome was cause-specific (10 most frequent causes of death) and total mortality    rates, available from the municipal government,<a name="topd"></a><a href="#backd"><sup>d</sup></a>    which were subsequently adjusted for age. To minimize random annual variation    within the administrative areas, we calculated mortality rates from 1998 to    2002, within the five years of the 2000 Census.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">To avoid confusion    between income inequality area and poverty area, we applied propensity score    matching. A propensity score is the probability of assignment to a particular    treatment or exposure given a set of observed covariates. It was first introduced    by Rosenbaum &amp; Rubin.<sup>12</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The probability    of assignment to a "treatment", or "exposure" (in this instance, a neighborhood    with high income inequality) is estimated using logistic regression in which    we enter possible (and observed) causes of assignment to the treatment. The    propensity score reduces a large set of covariates to a single scalar summary    variable but it does not make assessments about the prediction of individual    variables, avoiding multicollinearity.<sup>6</sup> The propensity approach is    intended to identify administrative areas that are as alike as possible to each    other with respect to the probability of being "exposed."</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The Gini coefficient    was used to measure inequality of income distribution. It theoretically ranges    from 0.0 (perfect equality, with every household earning exactly the same) to    1.0 (absolute inequality, with a single household earning a locality's entire    income). Mathematically, the Gini coefficient is equivalent to half the average    absolute difference between the incomes of any two households randomly sampled    for a population, and then normalized to the mean. In the present analyses,    we defined our exposure as having relative high income inequality (Gini coefficient    &gt;0.25), and non-exposure as relative low income inequality (&lt;0.25). As    there is no clear cut-off for high vs. low income inequality, we set it at 0.25    as it was close to the median Gini coefficient of the areas studied. The overall    Gini coefficient in our sample ranged from 0.12 (Jaguar&aacute;) to 0.55 (Vila    Andrade).</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The propensity    score ranges from 0 (high probability of low income inequality within an area)    to 1 (high probability of high income inequality). The variables selected in    our model generated propensity scores considered to be "highly predictive" of    the exposure<sup>14</sup> (the area under the ROC curve, or c-statistic, was    0.907).</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The administrative    areas with different exposures were subsequently matched on their propensity    scores using a caliper width of 0.01 -the most frequently used value in the    literature. If an area was not within a caliper width of any other with an opposite    exposure situation, it was excluded from the analysis. We chose to apply matching    with replacement to minimize loss of areas in the analysis. Of a total of 96    administrative areas in the city of S&atilde;o Paulo, 27 different areas had    propensity scores within a caliper width of 0.01 of another one with opposite    exposure, and were included in the analysis. The "exchangeable" areas were matched    based on their propensity scores according to exposure status. In other words,    each high inequality area was matched with another area that resembles its counterfactual    (except for high inequality). In the matching procedure, two administrative    areas (Sa&uacute;de and Vila Mariana) were matched four times, and one (Santana)    was matched twice, resulting in a total of 17 pairs.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>RESULTS</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Before using propensity    score matching (which included all 96 administrative areas) there was no significant    mortality difference between high and low income inequality areas among infants,    elderly, males and females (<a href="/img/revistas/rsp/2012nahead/3251t01.jpg">Table 1</a>). When    we analyzed the underlying causes of death, there was statistically significant    different age-adjusted mortality only from cancer (higher on high inequality    areas) and diabetes (higher on low inequality areas).</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">After using propensity    score matching four of the 10 most common underlying causes of death had significantly    higher mortality on high than on low inequality income areas (<a href="/img/revistas/rsp/2012nahead/3251t02.jpg">Table    2</a>). The greatest difference was for homicide (8.57 per 10,000 &#91;95%CI    2.60; 14.53&#93;), followed by ischemic heart disease (5.47 per 10,000 &#91;95%CI    0.76; 10.17&#93;), HIV/AIDS (3.58 per 10,000 &#91;95%CI 0.58; 6.57&#93;) and    respiratory diseases (3.56 per 10,000 &#91;95%CI 0.18; 6.94&#93;). All 10 underlying    causes analyzed had higher mortality rates in high inequality areas.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Infant mortality    also showed significantly higher age-adjusted mortality in high inequality areas    (2.80 per 10,000 &#91;95%CI 0.86;4.74&#93;), as well as male mortality (27.37    per 10,000 &#91;95%CI 6.19;48.55&#93;) and female mortality (15.07 per 10,000    &#91;95%CI 3.65;26.48&#93;). Elderly mortality was also higher in high income    inequality areas (8.85 per 10,000), although non-significant (95%CI -0.72;18.44).</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The analysis of    the relative importance of each underlying cause of death to the total mortality    difference between high and low inequality areas (41.58 per 10,000) showed that    homicides accounted for 20.60% of excess mortality, ischemic heart disease for    13.16% and HIV/AIDS for 8.61% (<a href="#f1">Figure 1</a>). The 10 most common    causes of death accounted for 72.30% of the total mortality difference.</font></p>     <p><a name="f1"></a></p>     <p>&nbsp;</p>     ]]></body>
<body><![CDATA[<p align="center"><img src="/img/revistas/rsp/2012nahead/3251f01.jpg"></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>DISCUSSION</b></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">More unequal areas    had higher mortality rates from all 10 underlying causes of death analyzed.    Four causes of death were statistically significant (homicide, ischemic heart    disease, HIV/AIDS, and respiratory diseases). Excess mortality of both males    and females as well as excess infant mortality were found. Our results are consistent    with those reported by Wilkinson &amp; Pickett,<sup>20</sup> in which income    inequality was statistically significantly associated with mortality from ischemic    heart disease, homicide and respiratory diseases, though not from diabetes or    cancer.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The psychosocial    hypothesis posits that the relative distribution of income within an area adversely    affects health because of stress and shame induced by invidious social comparisons    between residents. This may explain the excess mortality from ischemic heart    disease, which has a well-established association with stress.<sup>9</sup> Growing    evidence suggests that stress is also linked to pulmonary function.<sup>4</sup>    Furthermore, the majority of respiratory deaths in our study are likely to be    due to chronic obstructive pulmonary diseases, which are in turn primarily associated    to cigarette smoking. Excess deaths from respiratory disease can be plausibly    linked to higher psychosocial stress and smoking rates in the population studied.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Homicide and HIV/AIDS    can similarly reflect behavioral responses to people's feelings of missed life    opportunities. Youth growing up in areas with high income segregation (and consequently    low mobility) feel they have no future in life, which in turn increases the    probability of higher risk-taking behavior such as joining street gangs or unprotected    sex.<sup>18</sup></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">S&atilde;o Paulo    is a relevant area to study the effects of relative income on health because    it is a city with high income segregation.<sup>17</sup> Even though it has a    Gini coefficient of 0.51, the median value for its 96 administrative areas is    0.25. Living in poverty in S&atilde;o Paulo is not associated with living in    an unequal neighborhood. On the contrary, the 14 poorest areas had a Gini coefficient    below 0.25, i.e., poorer neighborhoods have a more equal distribution of income,    i.e. their residents are equally poor.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">A reason for the    missing consensus on the adverse health effect of income inequality for small    areas such as neighborhoods may be the homogeneity of income within small geographic    scales.<sup>19</sup> Our analysis showed that even for a notoriously unequal    city such as S&atilde;o Paulo, this is still an issue. Only one area stood out    as highly unequal (Vila Andrade), with a Gini coefficient of 0.55.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The propensity    score matching approach<sup>12</sup> showed some advantages. First, it allows    to explicitly check for overlap in the confounder distribution prior to the    analysis -a step that is sometimes skipped when conducting "black box" multivariable-adjusted    regression. The exposed and unexposed groups are then matched, and comparisons    are drawn only within the range of overlap in propensity scores, thereby avoiding    off-support inference. Secondly, the propensity score deals with the dimensionality    aspect in the multivariable analysis by reducing a large set of covariates to    a single scalar variable. Lastly, this approach does not rely on any particular    functional form (e.g. linearity) between the covariate and the outcome within    each treatment group.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">A major limitation    of the propensity score approach is that it deals only with the set of observed    covariates to build the model. It does not address the issue of confounding    by unobserved factors, and in the worst case, the approach may even lead to    increased bias. Nor can the approach deal with the endogeneity of residential    preferences, which is an issue in causal inference that applies to all observational    studies on effects of area of residence on health. The replication of the results    in other cities may also be an issue. Although S&atilde;o Paulo is one of the    largest cities in the world, matches were found only for 27 of the 96 administrative    areas. The use of binary exposure status (which is a limitation of the propensity    score matching approach) may also caused loss of information. The categorization    of the level of income inequality into three levels (high, low, and medium)    rather than using the median might have strengthened the associations. On the    other hand, precision would have been compromised because of further reduction    in the sample size of matched administrative areas.</font></p>     ]]></body>
<body><![CDATA[<p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The use of aggregate    data is also an important limitation because it does not allow an analysis of    individual biological pathways by which income inequality affects health. Another    potential limitation is the use of a politically defined area such as administrative    areas (<i>distritos</i>), which does not take into account spatial autocorrelation    (i.e. rich areas may border slums but the two would be classified into different    administrative areas). One of the 16 variables included in the propensity score    model was reported HIV/AIDS incidence rates for each administrative area. This    variable was included because HIV/AIDS is a marker of deprivation and this condition    affects an individual's earning ability and hence can be a contributing factor    to income inequality. In the analyses in which HIV/AIDS mortality was used as    the outcome, HIV/AIDS was represented in both the left-hand and right-hand side    of the regression equation. In these models, we interpreted the difference in    HIV/AIDS mortality rate as <i>conditional</i> on the area-level differences    in HIV/AIDS rates.</font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The multivariable    approach was required due to the characteristically high heterogeneity in S&atilde;o    Paulo. There is no identifiable pattern of distribution of resources and population    that makes one part of the city easily comparable to another one. This is also    true for many other metropolitan areas situated in highly unequal countries    (such as the United States and most of the developing world). We argue that    the null findings linking income inequality and health can benefit from the    application of a methodology such as the propensity score matching that takes    into account the confounding effects of variables other than income inequality    that could affect health.</font></p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="3"><b>REFERENCES</b></font></p>     <!-- ref --><p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">1. Bergelt C, Prescott    E, Gr&#216;nb&#198;k M, Koch U, Johansen C. Stressful life events and cancer    risk. <i>Br J Cancer.</i> 2006;95(11):1579-81. 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<body><![CDATA[<!-- ref --><p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">18. Wilkinson RG.    The impact of inequality: how to make sick societies healthier. New York: The    New Press; 2005.    &nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=3309925&pid=S0034-8910201200040001600018&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --></font></p>     <!-- ref --><p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">19. Wilkinson RG,    Pickett KE. Income inequality and population health: a review and explanation    of the evidence. <i>Soc Sci Med.</i> 2006;62(7):1768-84. DOI:10.1016/j.socscimed.2005.08.036</font>&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=3309927&pid=S0034-8910201200040001600019&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --><!-- ref --><p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">20. Wilkinson RG,    Pickett KE. Income inequality and socioeconomic gradients in mortality. <i>Am    J Public Health</i>. 2008;98(4):699-704. DOI:10.2105/AJPH.2007.109637</font>&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=3309928&pid=S0034-8910201200040001600020&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --><p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2"><a name="back"></a><a href="#top"><img src="/img/revistas/rsp/2012nahead/seta.jpg" border="0"></a>    <b> Correspondence | Correspond&ecirc;ncia:    <br>   </b> Alexandre Dias Porto Chiavegatto Filho    <br>   401 Park Drive    <br>   Landmark Center, 4th Floor    ]]></body>
<body><![CDATA[<br>   Boston, Massachusetts 02215    <br>   E-mail: <a href="mailto:achiaveg@hsph.harvard.edu">achiaveg@hsph.harvard.edu</a></font></p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">Received: 4/7/2011    <br>   Approved: 3/5/2012    <br>   Article available from: <a href="http://www.scielo.br/rsp" target="_blank">www.scielo.br/rsp</a></font></p>     <p>&nbsp;</p>     <p>&nbsp;</p>     <p><font face="Verdana, Arial, Helvetica, sans-serif" size="2">The authors declare    no conflicts of interests.    <br>   <a name="backa"></a><a href="#topa">a</a> Instituto Brasileiro de Geografia    e Estat&iacute;stica. Censo Demogr&aacute;fico 2000 - Resultados do Universo:    Agregados de setores censit&aacute;rios - S&atilde;o Paulo, Regi&atilde;o Metropolitana.    Bras&iacute;lia; 2003.    <br>   <a name="backb"></a><a href="#topb">b</a> Funda&ccedil;&atilde;o Seade, CEPID-FAPESP,    Centro de Estudos da Metr&oacute;pole/Cebrap. Censo escolar 2001. &#91;cited    2010 Nov 10&#93; Available from: <a href="http://www.centrodametropole.org.br/cd/escolas/ESC2001.rar" target="_blank">http://www.centrodametropole.org.br/cd/escolas/ESC2001.rar</a>    ]]></body>
<body><![CDATA[<br>   <a name="backc"></a><a href="#topc">c</a> Secretaria Municipal da Sa&uacute;de    de S&atilde;o Paulo. Boletim epidemiol&oacute;gico de aids do Munic&iacute;pio    de S&atilde;o Paulo. S&atilde;o Paulo; 2003.    <br>   <a name="backd"></a><a href="#topd">d</a> Programa de Aprimoramento das Informa&ccedil;&otilde;es    de Mortalidade no Munic&iacute;pio de S&atilde;o Paulo; 2001.&#91;cited 2010    Nov 10&#93; Available from:    <br>   <a href="http://ww2.prefeitura.sp.gov.br//cgi/deftohtm.exe?secretarias/saude/TABNET/SIM/obito.def" target="_blank">ww2.prefeitura.sp.gov.br//cgi/deftohtm.exe?secretarias/saude/TABNET/SIM/obito.def</a></font></p>      ]]></body><back>
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