Based on Smaldino & McElreath (2016), “The Natural Selection of Bad Science”
Introduction: When a Body Stops Fighting Infections
In biology, the immune system acts as the organism’s defense mechanism. It detects pathogens, neutralizes them, and remembers patterns to prevent future infections. A healthy immune system keeps the organism stable despite continuous exposure to new threats.
Science has its own immune system: replication.
Replication checks whether published findings are real or illusions created by noise, bias, or methodological sloppiness. It is one of the core pillars of scientific progress.
Yet today, the immune system of science is malfunctioning.
Replication rates are low. Replication studies are systematically discouraged. Large-scale replication projects expose entire fields where more than half the findings do not replicate. And instead of strengthening the scientific body, the ecosystem appears to be spiraling toward chronic autoimmune disorders and epidemics of unreliability.
In this post, we examine:
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The biological analogy: What makes replication an immune system?
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Why the “immune system” is suppressed by modern incentives.
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What Smaldino & McElreath’s model reveals about the evolutionary decline of replication attempts.
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Real-world replication crisis examples from psychology, cancer biology, neuroscience, and economics.
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How academia ends up with “opportunistic infections.”
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What an immune-restoration program for science might look like.
1. Replication as the Immune System: A Deep Analogy
The immune system’s key functions:
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Detect errors and invaders
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Neutralize harmful pathogens
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Maintain homeostasis
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Build long-term resilience
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Evolve and adapt as threats evolve
Replication in science performs precisely the same functions:
1.1 Detection
Independent researchers check:
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Did the experiment produce the same effect size?
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Was the result driven by noise?
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Were the statistical methods sufficiently robust?
1.2 Neutralization
If a result fails replication:
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journals may issue corrections
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meta-analyses update effect sizes
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failed ideas lose prominence
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fraudulent or careless work gets exposed
1.3 Homeostasis
Replication maintains epistemic stability—the idea that science converges on truth over time.
1.4 Memory
Each replication teaches the field something:
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which methods are reliable
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which sample sizes are needed
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what effect sizes are realistic
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what pitfalls must be avoided
1.5 Evolution
Replication helps the field adapt by promoting better practices.
So why does the immune system seem to be failing?
2. The Immune Suppression: Pressures Against Replication
Smaldino & McElreath’s model shows that incentives suppress replication, making it rare, weak, and strategically unprofitable.
2.1 Replication is slow
A replication attempt may take:
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months of careful method reconstruction
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large sample sizes
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precise controls
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detailed statistical transparency
Meanwhile, original (and often weaker) studies can be completed faster.
2.2 Replication is low-status
In modern academia:
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journals seldom publish replications
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hiring committees value novelty
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grants rarely fund confirmatory work
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replication is seen as derivative or uncreative
In other words, replication is treated as menial labor, not scientific contribution.
2.3 Replication is risky
If you attempt to replicate another lab’s work:
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you may antagonize senior scientists
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you may be labeled confrontational
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you may face pushback or retaliation
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you may damage collaborative relationships
Few early-career researchers want to risk such conflicts.
2.4 Replication is costly
Unlike exploratory studies, replication requires:
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larger sample sizes
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stricter controls
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more preregistration
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more time investment
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specialized skills in forensic-level methodology
Thus, replication is expensive but undervalued.
3. What the Smaldino & McElreath Model Shows
The model reveals a deadly evolutionary dynamic:
3.1 Labs with low rigor but high output are rewarded
They produce many “positive” findings—even if false.
3.2 Scientists with high rigor produce fewer papers
They lose in grant competitions and job markets.
3.3 Replication becomes too costly
As labs adopt weaker methods, replication attempts become:
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harder
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rarer
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less successful
3.4 The success rate of replication falls over time
A direct prediction of the model:
As bad methods spread, replication rates collapse.
3.5 The ecosystem adapts to noise
The population of labs evolves toward:
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smaller sample sizes
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higher flexibility in analysis
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greater p-hacking
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lower reproducibility
In evolutionary terms:
The “species” of high-quality research goes extinct.
4. Real-World Evidence: The Replication Crisis Across Disciplines
Smaldino & McElreath wrote before many major replication reports came out. Yet their predictions match reality.
4.1 Psychology
The Open Science Collaboration (2015) reproduced 100 classic findings.
Result?
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Only 39% replicated.
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Effect sizes were on average half the original.
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Some foundational theories were undermined.
This was essentially the equivalent of screening an entire population and discovering widespread immune deficiency.
4.2 Cancer Biology
The Reproducibility Project: Cancer Biology attempted to replicate 50 high-profile papers.
Outcome so far:
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Only 11% fully replicated.
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Many results showed drastically reduced effects.
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Some relied on materials or methods that labs refused to share.
Given cancer biology drives billions in funding, this is like discovering that most of the medical literature for a disease is unreliable.
4.3 Neuroscience
Button et al. (2013) demonstrated that median sample sizes in neuroscience are too small, creating “power failure” so severe that:
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effect sizes are inflated
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false-positive rates skyrocket
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replication is nearly impossible
This is akin to a diagnostic test with 20% sensitivity being used as the gold standard.
4.4 Economics
The “Many Analysts” projects showed:
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same dataset + same question
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120 analysis teams
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wildly different answers
How can we replicate a result if analysts cannot even agree on the method?
4.5 Genomics & Biomedical Sciences
Ioannidis (2005) famously explained mathematically why most published findings are false.
Replication failures in genetics revealed:
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missing heritability
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misinterpreted associations
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population structure artifacts
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pervasive p-hacking in GWAS
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difficulty reproducing basic gene-expression studies
Across disciplines, the story is the same:
Replication is sick, and the organism is weakening.
5. Opportunistic Infections: What Happens When Replication Fails
In medicine, when the immune system collapses, opportunistic pathogens thrive:
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fungal infections
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latent viruses
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cancers
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antibiotic-resistant bacteria
Academia shows similar symptoms.
5.1 Fraud spreads more easily
Fraudulent papers go unnoticed because nobody replicates them.
5.2 Noise becomes indistinguishable from signal
Low-powered studies create a fog of contradictory results.
5.3 Predatory journals explode
They take advantage of weak replication policing.
5.4 Entire fields diverge
Separate subfields evolve incompatible methodologies.
5.5 Incentive-driven false positives become dominant
The ecosystem becomes a breeding ground for low-quality but high-output “pathogens.”
6. Why the Immune System Fails: A Systemic Evolutionary Explanation
Smaldino & McElreath argue that replication declines because the system evolves toward lower rigor.
6.1 Replication costs increase
As methods weaken, replication becomes harder.
6.2 Novelty bias becomes stronger
Early-career researchers must publish flashy papers to survive.
6.3 Institutions mismeasure success
Counting papers instead of verifying impact.
6.4 Labs evolve toward quantity-maximizing strategies
This crowds out replication-focused labs.
6.5 Replication becomes a public good
Like clean air, everyone benefits from replication—but individuals do not benefit from contributing to it.
This is a classic game-theoretic tragedy of the commons.
7. How to Restore the Immune System: A Treatment Plan
Fixing replication is like rebuilding immune function.
7.1 Mandate data and code availability
A vaccine against method ambiguity.
7.2 Institute replication grants
Fund replication explicitly.
7.3 Create publication incentives for confirmatory work
Journal prestige should attach to quality, not novelty.
7.4 Registered reports as immune boosters
If a study is accepted before data collection, p-hacking incentive evaporates.
7.5 Large-scale collaborative replications
Economies of scale reduce the cost barrier.
7.6 Penalize non-replicable labs
Introduce metrics for long-term reproducibility.
7.7 Teach statistical literacy rigorously
More immune cells = more protection.
Conclusion: Science Needs Its Immune System Back
Replication is not optional.
It is not secondary.
It is not an afterthought.
It is the immune system of science, required to detect, eliminate, and prevent the spread of false findings. But as the incentives of academia shift toward quantity, speed, and novelty, replication is increasingly suppressed—just as an immune system collapses under chronic stress or malnourishment.
Smaldino & McElreath’s evolutionary model demonstrates that this suppression is not an accident. It is the inevitable outcome of the selective pressures that dominate modern academia.
If we want science to be healthy, we must restore and strengthen the immune system. That means rebuilding replication as a mainstream, celebrated, well-funded, and high-prestige component of scientific practice.