Smaldino & McElreath’s The Natural Selection of Bad Science paints a bleak picture: the academic ecosystem selects for speed, flash, and quantity over accuracy.
The result is an environment where low-rigour strategies often dominate.
But here’s the twist.
Even in harsh evolutionary landscapes, niches exist.
Some organisms survive not by mimicking the majority, but by exploiting openings the majority overlooks.
This essay explores evolutionarily stable strategies (ESS) for researchers who want to:
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Maintain deep methodological rigour
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Avoid questionable research practices (QRPs)
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Still build competitive careers
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Contribute meaningfully to the reliability and stability of knowledge
These strategies don’t require idealism.
They are practical, adaptive, robust—designed to work within the current environment.
Think of this as an evolutionary survival guide for conscientious scientists.
1. Specialize in Slow, Hard, Defensible Work
Become the “tortoise strategy” in a habitat full of hares
In evolution, slow strategies can win when:
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the environment punishes errors severely, or
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reliability becomes the bottleneck resource.
Academia is beginning to shift in this direction:
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Meta-analyses now dominate many fields.
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Journals increasingly value robustness and transparency.
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Institutes like HHMI and EMBL reward quality over quantity.
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Funding agencies have begun emphasizing methodological innovation and replicability.
Strategy:
Become the person whose work is trusted, cited, and used for a decade—not just a news cycle.
Concrete tactics:
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Build core datasets or reference maps that become foundational resources.
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Create hard-to-replace expertise in experimental design or statistical methodology.
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Develop tools, software, pipelines, or protocols that become industry standards.
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Focus on problems that cannot be solved with low effort or QRPs.
Think:
the approach of Sydney Brenner, Max Perutz, Jennifer Doudna, or Michael Nielsen—problems that require deep conceptual work rather than quick output.
2. Become a Methodological Apex Predator
In nature, organisms survive by being better at detecting deception than their competitors are at producing it.
High-rigour scientists can thrive by developing:
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strong statistical literacy
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fluency in experimental design
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skill in identifying confounds, biases, and artefacts
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mastery of cutting-edge analytic methods
This creates powerful advantages:
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You avoid false-positive traps others fall into.
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Your papers withstand heavy scrutiny.
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Reviewers eventually learn that “when you say something, it’s probably correct.”
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You attract collaborators who need reliability.
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You catch errors that would sink weaker labs.
In an ecosystem full of noise, clarity is currency.
3. Choose Problems Where Low Rigour Cannot Compete
An evolutionary trick: select environments where cheaters lose.
Examples:
3.1 Fields that require large datasets
You cannot p-hack millions of datapoints.
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genomics
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epidemiology
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structural biology
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neuroimaging consortia
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palaeogenomics
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protein structure prediction
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computational linguistic corpora
3.2 Fields where reproducibility is built-in
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physics
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crystallography
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materials science
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mathematical biology
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certain areas of computational neuroscience
3.3 Fields where experiments take long and shortcuts are obvious
Examples:
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long-read sequencing pipelines
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high-resolution electron microscopy
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large animal models
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field ecology with multi-year data series
Cheating is difficult when the ecosystem itself enforces rigour.
4. Build an “Open Science Shield”
Transparency as evolutionary defense and strategic advantage
You can weaponize openness as a competitive strategy.
Why?
Because:
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QRPs thrive in darkness.
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Rigour thrives in daylight.
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Transparent work attracts collaborators and citations.
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Reviewers become more lenient when they can verify things.
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Open pipelines become long-term assets.
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Public datasets act as continuous advertising.
Practical tactics:
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Release analysis code on GitHub.
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Publish preregistered study designs.
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Share intermediary results and QC plots.
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Publish negative results on preprint servers.
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Use notebooks (Jupyter, RMarkdown) that fully document workflow.
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Build reproducible pipeline containers (Docker, Singularity).
Open science is not charity.
It is reputation insurance and network-building.
5. Use the “Two-Speed Lab” Model
An evolutionary mixed strategy that exploits niche partitioning
Many successful, ethical labs operate with two parallel workstreams:
Workstream A: Deep foundational projects
Slow, careful, rigorous, and high-impact.
Workstream B: Fast, low-risk but high-quality analyses
Examples:
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method comparisons
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secondary analyses of public data
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short perspective pieces
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data visualization papers
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workflow automation papers
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replication studies with open datasets
This creates:
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a steady stream of publications
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a consistent CV signal
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protection from being outcompeted
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intellectual room for deep work
Think of it like stable foraging:
slow-growing trees + fast-growing shrubs.
6. Win Through Collaboration, Not Competition
In nature, cooperation often beats cheating in stable groups.
QRPs are usually individual strategies.
Rigour often emerges from collaboration, because:
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more eyes catch more errors
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reputational risk is shared
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complementary expertise increases quality
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interdisciplinary teams produce stronger papers
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multi-institutional work has higher credibility
If you build a network of trustworthy collaborators, you create an environment where:
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you gain citations
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you gain coauthorships
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you gain visibility
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you gain methodological support
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you reduce workload on data cleaning and validation
Nature’s lesson:
coalitions stabilize against cheaters.
7. Leverage Emerging “Rigour-Friendly” Incentives
Evolution shifts. Early adopters of new niches prosper.
Major meta-incentives are changing rapidly:
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NIH has begun requiring rigor & reproducibility sections
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funders request data-sharing plans
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journals offer Registered Reports
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replication studies are being funded
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computational pipelines are moving toward full reproducibility
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AI-assisted QC tools are exploding
Young scientists who master these skills early will have advantages for 10–20 years.
Examples of niche specializations that will be crucial:
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statistical QC
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pipeline reproducibility
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AI-based artefact detection
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FAIR-compliant data curation
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robust experimental design
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preregistration and meta-science expertise
This is adaptive specialization.
You evolve into a niche where selection pressures favour rigour.
8. Build a Reputation for Being Right (Not Just Prolific)
Reputations have evolutionary inertia.
Even in a flawed system, reputational signals matter:
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reviewers trust you
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editors recognize your name
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collaborators seek you out
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funders remember low-risk applicants
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your students carry forward the brand
You gain this through:
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accurate predictions
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methods that solve real problems
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papers that are cited for reliability
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refutations that are respected even when controversial
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preprints that withstand public scrutiny
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talks where you critique your own work openly
A reputation for reliability is an evolutionarily stable attractor.
It cannot be outcompeted easily because:
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it brings long-term fitness
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it attracts resources
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it increases survivability in changing environments
This is the “oak tree strategy” of academia.
9. Hide Your Rigour, Not Your Productivity
A counterintuitive strategy borrowed from animal behaviour.
Some animals survive by appearing more aggressive than they are.
Others by appearing more harmless than they are.
A scientist can survive by appearing more “productive-looking” than the raw output suggests.
Examples:
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post substantial preprint work-in-progress
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maintain an active GitHub log
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present at conferences regularly
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share datasets incrementally
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post method notes or short technical reports
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communicate findings on blogs or social media
These increase visible activity without compromising rigour.
This is a signaling strategy.
The key:
signal high engagement while practicing high caution.
10. Choose Your Predator Wisely: Strategic Advisor and Environment Selection
Your evolutionary pressure depends on where you grow.
A supportive PI or institution can offset bad incentives by:
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valuing quality explicitly
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offering stable timelines
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sheltering early-career work
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rewarding replication and careful design
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giving students intellectual independence
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maintaining ethical group norms
Some labs are survival traps.
Others are evolutionary sanctuaries.
Choosing the right environment is itself an evolutionary strategy.
11. Master the Art of Saying “No” to Bad Incentives
Survival often depends on avoiding maladaptive temptations.
You do not have to:
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chase the latest hype
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p-hack to survive
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overstate your conclusions
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rush sloppy manuscripts
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inflate your claims in grant proposals
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run underpowered studies
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manufacture novelty
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fight twenty small battles instead of one meaningful one
Adaptive restraint is a real evolutionary strategy.
It conserves energy.
It preserves integrity.
It protects long-term career arcs.
Conclusion:
Rigour Can Survive—If You Evolve Strategically
Bad incentives may dominate the environment, but evolution rarely drives all diversity to extinction.
There are always:
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niches
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mixed strategies
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hidden advantages
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long-term payoffs
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coalition-based protections
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reputational stabilizers
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structural shelters
You can survive—and thrive—through strategies that evolve around the system’s flaws.
The key principles are:
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Choose hard problems
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Become impossible to replace
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Use transparency as strength
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Build coalitions
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Specialize in future-proof skills
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Signal activity without sacrificing integrity
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Pick your environment strategically
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Aim for long-term fitness, not short-term flash
Science may be evolving badly at the systemic level.
But as an individual organism, you can evolve differently.
You can become the kind of scientist whose work sets the foundation that others rely on—even in a noisy, messy ecosystem.
And ultimately, that’s what real success looks like.