Title: And%20one%20man%20in%20his%20time%20plays%20many%20parts,
1Stochastic models of aging and mortality
- And one man in his time plays many parts,
- His acts being seven ages
- For his shrunk shank and his big manly voice,
- Turning again toward childish treble, pipes
- And whistles in his sound. Last scene of all,
- That ends this strange eventful history,
- Is second childishness and mere oblivion,
- Sans teeth, sans eyes, sans taste, san
everything.
The sixth age shifts Into the
lean and slipper'd pantaloon, With spectacles on
nose and pouch on side, His youthful hose, well
saved, a world too wide
A nonstochastic model of aging and mortality by
W. Shakespeare and Titian
2What is aging?
- J. M. Smith (1962) Aging processes are those
which render individuals more susceptible as they
grow older to the various factors, intrinsic or
extrinsic, which may cause death. - P. T. Costa and R. R. McCrae (1995) What
happens to an organism over time.
3- Force of mortality (hazard rate) increases with
age
4Increasing mortality as a proxy for aging
- We cant measure aging processes directly,
particularly since we cant define them. - Mortality rates are easy to measure. In most
metazoans, mortality rates increase with age.
5Increasing mortality as a proxy for aging
- We cant measure aging processes directly,
particularly since we cant define them. - Mortality rates are easy to measure. In most
metazoans, mortality rates increase with age. - This includes us.
6This is not a trivial observation!
- Implicit in Roman annuity rates.
- 17th C. annuity and life-insurance rates were
generally age-independent. - Annuity as gamble Who is the best bet?
- Very old (for whom the increased hazard would be
most clear) rare, uncertain age. - Extreme haphazardness of plagues, wars.
7Some questions about aging
- Why do creatures age?
8Some questions about aging
- Why do creatures age?
Old (and recurrent) idea Improper nutrition.
- Unto the woman he said, I will greatly multiply
thy sorrow and thy conception in sorrow thou
shalt bring forth children and thy desire shall
be to thy husband In the sweat of thy face shalt
thou eat bread, till thou return unto the ground
for out of it wast thou taken for dust thou art,
and unto dust shalt thou return.
9Some questions about aging
- Why do creatures age?
THINGS FALL APART
10Some questions about aging
- Why do creatures age?
Problems with this naïve answer
11Aging not universal.
- Negligible senescence prokaryotes, bristlecone
pine, tortoises, lobster - Gradual senescence mammals, birds, fish, yeast
- Rapid senescence flies, bees (workers), nematodes
12Some questions about aging
- Why do creatures age?
- Why does aging have the particular age-patterns
that it does?
13Some questions about aging
- Why do creatures age?
- Why does aging have the particular age-patterns
that it does? - Why do different species have characteristic
patterns of aging?
14Some questions about aging
- Why do creatures age?
- Why does aging have the particular age-patterns
that it does? - Why do different species have characteristic
patterns of aging? - Why is aging so variable?
15Some questions about aging
- Why do creatures age?
- Why does aging have the particular age-patterns
that it does? - Why do different species have characteristic
patterns of aging? - Why is aging so variable?
- Why is aging so constant?
16The Gompertz-Makeham mortality law
- Gompertz (1825) we observe that in those tables
the numbers of living in each yearly increase of
age are from 25 to 45 nearly, in geometrical
progression. - Makeham (1867) Theory of partial forces of
mortality. Diseases of lungs, heart, kidneys,
stomach, liver, brain associated with diminution
of the vital power.
17log hazard rate in Japan 1981-90
18log infectious disease hazard rate in Japan
1981-90
19log cancer hazard rate in Japan 1981-90
20log suicide hazard rate in Japan 1981-90
21log auto accident hazard rate in Japan 1981-90
22log breast cancer hazard rate in Japan 1981-90
23log homicide hazard rate in Japan 1981-90
24Species Initial mort. MRDT (yrs) Max life (yrs)
Human (US F, 1980 .0002 8.9 122
Herring Gull .0032 5.4 49
Horse .0002 4 46
Rhesus monkey .02 15 gt35
Starling .5 gt8 20
Lake sturgeon .013 10 gt150
House fly 4-12 .02-.04 .3
Soil nematode 2 .02 .15
25MRDT seems to be species-characteristic
26Mortality plateaus
Female mortality at ages 80 (Japan 13 W.
European countries (1980-92)
27Mediterranean fruit fly mortality
28Is this about biology?
Lifetimes of electrical relays
Force of junking for automobiles in
various periods
29What is a Markov process?
- A stochastic process Xt (where t is time, usually
taken to be the positive reals) such that if you
know the process up to a given time t, the
behavior after time t depends only on the state
at time t. - The process may be killed, either randomly (at a
rate depending on the current position) or
instantaneously when it hits a certain part of
the state space.
30Lessons for young scientists from reviewing the
Markov mortality model literature
- Its easy to get your work published if your
model reproduces known phenomena
31Lessons for young scientists from reviewing the
Markov mortality model literature
- Its easy to get your work published if your
model reproduces known phenomena - even if you put them in (decently concealed)
with your assumptions
32Lessons for young scientists from reviewing the
Markov mortality model literature
- Its easy to get your work published if your
model reproduces known phenomena - even if you put them in (decently concealed)
with your assumptions - and even if the mathematics is wrong.
33Challenge to homeostasis (B. Strehler, A.
Mildvan 1960)
- The rate of decrease of most physiologic
functions of human beings is between 0.5 and 1.3
percent per year after age 30, and is fit as well
by a straight line as by any other simple
mathematical function. - Challenges come at constant rate.
- Death occurs when a challenge exceeds the
organisms vital capacity. - Challenges follow the Maxwell-Boltzmann
distribution Exponentially distributed.
34Challenge to homeostasis (B. Strehler, A.
Mildvan 1960)
- Predicts the Gompertz curve.
- Predicts the nonintuitive fact that initial
mortality and rate of aging are inversely
related. - Problem The exponential rate was built into the
assumptions, for which there is no external basis.
35Extreme-value theory
- J. D. Abernethy (J. Theor. Biol. 1979) Model
organisms by independent systems, which all
fais at the same random rate. Death is the
time of the first failure. - Proves that such an organism could have
exponentially increasing death rates. - Claims (in the nonmathematical introduction and
conclusion) that this is the generic situation,
which will arise whenever the hazard rates of the
components are nondecreasing, which is untrue.
(In fact, the individual components would also
have to have exponential hazard rates.) - Still gets cited.
36Reliability theory
- M. Witten (1985) large number (m) of critical
components death comes when all fail. - Components are independent. Fail with constant
rate. - Derives hazard rate approximately mexp(?t).
37Reliability theory
- M. Witten (1985) large number (m) of critical
components death comes when all fail. - Components are independent. Fail with constant
rate. - Derives hazard rate approximately mexp(?t).
- Unmentioned ? is negative, so the hazard rate
decreases exponentially
38More reliability theory Gavrilov Gavrilova
(1990)
- m critical organs, each with n redundant
components. - Organ fails when all components fail.
- Death comes when any organ fails.
- Components fail independently with constant
exponential rate. - Derive Weibull hazard rates (power law).
- Want Gompertz hazard rates.
- Declare that biological systems have most of
their components nonfunctioning from the
beginning Number of functioning components in
each organ is Poisson. - The exponential of the Poisson then provides the
exponential hazard rates.
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40Biological problems with GG
- Arbitrary.
- Where are the missing components?
- What are the missing components?
- Theory seems to predict that nearly all organisms
should be born dead, with Gompertz mortality only
conditioned on the rare survivors.
41Small mathematical problem with GG model
42Big mathematical problem with GG model
The computation is wrong.
43(No Transcript)
44Hazard rate for the G G series-parallel
process with k1 and ??1 (solid) or ?2, ?3
(dotted).
45H. Le Brass cascading failures model
- Start at senescence state Xt1.
- Rate of jumps to next higher state is ?Xt.
- Rate of dying is ?Xt.
- Le Bras (1976) pointed out that when ?gtgt?, the
mortality rate is about ?e?t for small t. - True but a little cheap. When ?gtgt?, the system
behaves like a deterministic system d Xt/dt ?Xt.
State is Xt? e?t.
46H. Le Brass cascading failures model
- In fact, as Gavrilov Gavrilova pointed out
(1990) the result is even better when you dont
assume ?gtgt?. By this time, mortality plateaus
had been recognized. The general hazard rate is - (??)?e(??)t(??e(??)t)-1,
- which is a nice logistic Gompertz curve, with
plateau at ??.
47H. Le Brass cascading failures model
- But the exponential is still in the assumptions.
- Also, the assumptions are quite specific and
arbitrary.
48Attempts to explain the Gompertz curve with
Markov models have been successful only when
- The exponential increase was built into the
assumptions in a fairly transparent way or - The computations were wrong.
49What about mortality plateaus?
Suggested explanations
- Heterogeneity in the population selection.
(Analyzed in DS Estimating mortality rate
doubling time doubling times. Available as
preprint.) - Individuals actually deteriorate more slowly at
advanced ages.
50What about mortality plateaus?
- J. Weitz and H. Fraser (PNAS 2001) did explicit
computation for Brownian motion with constant
downward drift, killed at 0. It shows
senescence and plateaus -- hazard rates
increase rapidly (though not exponentially) at
first, but eventually converge to a finite
nonzero constant.
51Criticisms of Weitz-Fraser
- The assumptions (constant diffusion rate,
constant downward drift, killing only at 0) are
very specific. - The assumptions have little empirical
justification. - The methods cannot be generalized to any other
case.
52Criticisms of Weitz-Fraser
- The assumptions (constant diffusion rate,
constant downward drift, killing only at 0) are
very specific. - The assumptions have little empirical
justification. - The methods cannot be generalized to any other
case. - For understanding anything other than the
plateaus, the model is too general By choosing
the starting distribution, the hazard rate can
become almost anything, as long as it eventually
converges to a rate b2/2. (Here b is the rate
of negative drift.)
53In fact, the result is very general.
- Killed markov processes (which also may be
thought of as submarkov processes) converge under
fairly general conditions to quasistationary
distributions. That is,
The hazard rate will also converge to the rate of
killing in this distribution.
54Some Theorems
- Let Xt be a diffusion on a one-dimensional
interval with drift b and variance ?2, so
satisfying the SDE - dXt ?(Xt)dWt b(Xt)dt,
- and killed at the rate k(Xt). Let ? be the
smallest such that there is a positive solution ?
to - (??)"(b?)'k???.
55Some Theorems
- If both boundaries are regular then the
distribution of Xt,conditioned on survival
converges to density ?, and the mortality rate
converges to ?. - If 8 is a natural or entrance boundary and r1
regular, then this convergence still holds if
()
- In the above, condition () may be replaced
- by lim k(z)gt ?.
z?8
56Interpretation
- Mortality rates level off, not because the
process is changing, or because of selection on
populations with heterogeneous frailties. The
individuals who happen to survive a long time
simply tend to have a distribution of vitality
states which are somewhat spread out, not
arbitrarily piled up near points of killing.
57Why are there mortality-rate plateaus?
Suggested explanations
- Heterogeneity in the population selection.
- Individuals actually deteriorate more slowly at
advanced ages. - Those alive at advanced ages are, purely by
chance, inclined to be more fit than the bare
minimum required to stay alive.
58For more information, see Markov mortality
models implications of quasistationarity and
varying initial distributions by DS and Steven
Evans. (Available as a preprint.)
59Evolutionary theories
- Is mortality a trait shaped by natural selection?
- No overdesigned parts.
- Medawar, Hamilton Mutation-selection
equilibrium. - Antagonistic pleiotropy.
- Kirkwood Disposable soma.
60Can evolutionary theory explain Gompertz curve?
Mortality plateaus?
- Charlesworth says yes to Gompertz.
- Mueller and Rose say yes to mortality plateaus.
61Charlesworth Mutation-selection equilibrium
- Not an evolutionary optimum.
- B. Charlesworth for rare deleterious genes,
equilibrium frequency should be inversely
proportional to evolutionary cost. - In state of nature, most mortality is exogenous,
so should come with constant rate ?.
Evolutionary cost of a mutation that kills at age
x should be like e-?x.
62Problems with Charlesworths model
- Requires most aging to depend on genes with
age-specific effects. - What happens when you iterate? (So far, only
simulations.) - Doesnt allow for gene interactions.
- What is exogenous mortality really?
63Mueller and Rose on mortality plateaus.
- State space of age-specific mortality rates for
100 days. - Random mutations act over 2 randomly chosen
ranges of ? days. (?1 or 40) - In beneficial range
- In harmful range
- Mutant either vanishes or become fixed.
Probability depends on change in fitness.
64Mueller and Rose on mortality plateaus.
Mortality rates after simulating 105 mutations,
with several thousand going to fixation. MR
say Evolutionary theory predicts late-life
mortality plateaus.
65Ken Wachter pointed out that the graphs on MRs
paper show transient states of the population.
They didnt run the simulations long enough to
reach equilibrium. Selection reduces mortality
first at low ages, and only later starts to
transfer mortality from intermediate to higher
ages. If you stop early, it looks like a
plateau. Lesson Simulate, but verify.
66http//www.demog.berkeley.edu/dstein/agingpage.ht
ml