In 2012, Sabrina Tavernise produced an alarming article
for the New York Times: Life Spans Shrink for Least-Educated Whites in the U.S.. She was reporting on a study
of mortality data that indicated that non-Hispanic whites with less education
than a high school degree were experiencing a sharp drop in life expectancy. Such a drop did not occur in the case of
Hispanics and blacks without a high school education. This chart was provided’
There was no good explanation for why this was
occurring. Education and income tend to
track. Consequently, there are a number
of possible explanations based on less-healthy lifestyles that might be
expected among a very low-income population. The drop in life expectancy was significantly
greater for women than for men. Therein
may reside a clue as to what might be going on.
Such a large increase in mortality in a developed country
is nearly unheard of.
“The five-year decline for white
women rivals the catastrophic seven-year drop for Russian men in the years
after the collapse of the Soviet Union, said Michael Marmot, director of the
Institute of Health Equity in London.”
“By 2008, life expectancy for
black women without a high school diploma had surpassed that of white women of
the same education level, the study found.”
After a brief burst of publicity on this topic, it seems
to have retired to academic circles with apparently no provable explanation in
sight.
In the past few months another analysis of mortality data
has emerged and provided new insights. Anne
Case and Angus Deaton have produced the article Rising morbidity and mortality in midlife among white non-Hispanic Americans in the 21st century. They
were particularly interested in health and mortality of those in the 45 to 54
age group. They provided this chart to
make sure we realized that something strange and troubling is going on in the
United States.
Note that the curve for (45-54) Hispanics (USH) continues
to follow that of other countries while only that of (45-54) non-Hispanic
whites (USW) goes soaring into space.
The authors also conclude that education is a critical
factor in the level of mortality. All
the rise in mortality comes from the cohort with a high school degree or less. Those with some college education but no
degree have slightly decreased mortality.
For those with a college degree or post-graduate education the mortality
rate has continued to drop. Note that
the data presented by Tavernise was based on those without a high school
diploma, a much smaller group.
Much of the increase in mortality comes from bad
lifestyle choices. Increases in drug use
(poisoning) and alcohol abuse are indicated as major contributors, along with a
greater number of suicides.
It is interesting that the data on mortality from
diabetes (poor nutrition) and lung cancer (smoking) are not contributors to the
rise.
The authors also break out the data on mortality from
poisoning, suicides, and liver disease by age group for non-Hispanic whites.
If the factors considered here are the dominant causes of
increased mortality, then there is a definite peak in the middle years, with
lower increases for younger and older groups.
However, it is significant that all age groups indicate higher mortality
from these causes.
The authors provide a brief discussion of possible
explanations, but as with Tavernise, they can only speculate about changing
lifestyle choices. It seems that their
emphasis on the age factor is perhaps more of a diversion than a fundamental
clue. The educational attainment
variable seems to be the dominant effect, as identified in Tavernise’s article.
Education is important because it is associated with
income, which in turn is correlated with quality of life (lifestyle choices),
family stability, and economic security.
Let’s consider a few more pieces of data that provide additional
insight.
This source
provides an interesting look at how income (education?) affects longevity. Consider this chart based on Social Security
data.
Beginning in the 1970s, the life expectancies of
wealthier 65-year-olds began to diverge from those of lower income people. The
fact that lower income people have seen little increase in longevity at age 65
is a good counter argument to those who would claim that the Social Security
retirement age should be raised. One can
think of reasons why this mortality divergence might occur, but one has to also
explain why this effect suddenly began to occur in the 1970s.
There is an age-related phenomenon that might also
provide a clue as to what is at work. An
article in The Economist titled Age and happiness: The U-bend of life
provided this interesting chart.
When social scientists poll people on how satisfied they
are currently with their lives they derive responses as a function of age that
produce a U-shaped curve with a minimum in middle age. If one equates satisfaction with life with
happiness, then the younger are happier and the older are happier. Scientists conclude that this type curve
exists in all but a few societies, but the minimum can vary in age.
“….interest in the U-bend has been growing. Its effect on happiness is
significant—about half as much, from the nadir of middle age to the elderly
peak, as that of unemployment. It appears all over the world. David
Blanchflower, professor of economics at Dartmouth College, and Mr Oswald looked
at the figures for 72 countries. The nadir varies among countries—Ukrainians,
at the top of the range, are at their most miserable at 62, and Swiss, at the
bottom, at 35—but in the great majority of countries people are at their
unhappiest in their 40s and early 50s. The global average is 46.”
If one returns to
the age-grouped chart of Case and Deaton, a mortality versus age curve would
look like the inverse of the U-bend curve just above. This suggests a possible inverse correlation
between mortality and happiness. If the opposite
of happiness and satisfaction is anxiety, then one can hypothesize that the
stress related to increased anxiety in middle-age has deleterious health
effects and increases mortality.
The article
provides this input on the correlation between happiness and health.
“Whatever the causes of the
U-bend, it has consequences beyond the emotional. Happiness doesn't just make
people happy—it also makes them healthier. John Weinman, professor of
psychiatry at King's College London, monitored the stress levels of a group of
volunteers and then inflicted small wounds on them. The wounds of the least
stressed healed twice as fast as those of the most stressed. At Carnegie Mellon
University in Pittsburgh, Sheldon Cohen infected people with cold and flu
viruses. He found that happier types were less likely to catch the virus, and
showed fewer symptoms of illness when they did. So although old people tend to
be less healthy than younger ones, their cheerfulness may help counteract their
crumbliness.”
There is also this interesting finding that has some
relevance to white versus black and Hispanic issues.
“In America, being black used to
be associated with lower levels of happiness—though the most recent figures
suggest that being black or Hispanic is nowadays associated with greater
happiness.”
Finally, the article makes this assertion related to
educational attainment, income, and happiness.
“Education, in other words,
seems to make people happy because it makes them richer. And richer people are
happier than poor ones—though just how much is a source of argument….”
If we are to make sense of all this data, we must
identify a mechanism, or mechanisms, that increase mortality for whites but not
blacks or Hispanics, and operates mainly on poorly educated people. It must also be unique to the United States
because it is apparently not operative in any other developed nation. And yet it is even more complicated than
that. We like to think of the United
States as a single country and average data nationwide in order to arrive at
conclusions. This averaging process can hide
some rather significant excursions.
This source
provides data on life expectancy at the age 50.
It tallies how many years one might be expected to live after reaching
age 50 depending on which county one lives in.
The darker colors indicate lower life expectancies. The amount of variation is enormous. One could drive a hundred miles and find a
location where people live twenty years less than they do in the place just
left.
This data suggests that there are multiple factors
important in determining mortality rates: climate, culture, ethnicity, race,
occupation, environment….. Good luck in
sorting all that out!
The only thing we know for sure is that something is
going terribly wrong in our society.
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