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I don't have great insight into this field but I think you overstate the science somewhat. A number of genes have been 'implicated in' intelligence but that is a long way off from the proof that inserting these genes into someone will make them intelligent. I believe there is evidence that genes can function differently in different circumstances/populations so it's not a trivial X makes Y scenario.
No, I'm not overstating it. Read this post by gwern or this post by genesmith for an overview of why embryo selection for intelligence works. Intelligence isn't caused by a few genes, but by thousands of genes that individually have a minuscule contribution but, when added up, cause >50% of existing variation in intelligence (note: i'm not claiming we understand each individual gene that's part of that, just that we've inferred that). (Note that this is in the modern environment - environmental effects have a much higher impact when malaria and starvation and infections from skin wounds are rampant, but they aren't in the modern US).
When parents have children, the DNA the child inherits from either parent is random. So we can say - okay, can we predict, just from the DNA of children, which child will be smarter? And polygenic scores indeed predict which child will be smarter.
I'm not 100% confident in these estimates, but they seem to be around the right order of magnitude. And ... that's a lot of IQ points. Even if we divide those estimates by ten, it's still well above anything that education reform can do.
I would bet good money that taking a genome, and then editing it until it had every gene which is correlated with higher intelligence, would not get you a baby that was even a single standard deviation above what you would naively predict based on the parents.
Consider a simple toy model, where
If you have this scenario, each gene IQN000...IQN999 will explain about 0.1% of the variance in IQ, and yet using CRISPR to force just 5% more of the IQN genes to the "good" variant will lead to poorer outcomes than just leaving the system alone.
All that being said, you should be able to squeeze some results out of that technique. Just not multiple SD of improvement, at least not by doing the naive linear extrapolation thing.
What do you mean by this bet? Actually waiting for gene edited baby to grow is slow, and illegal, and we're still nowhere near to being able to edit 10,000 genes of future child without breaking unintended genes .
You are entirely correct that linear model has its limits. Arguing that than it would break well before 1 SD, is... just wishful thinking. There's still a lot of low hanging fruit.
Looks like in actual world, the tradeoff was "decreases libido, increases cuckoldry and other non-reproductive activity" rather than "decreases intelligence".
I am not arguing that you can't get a single standard deviation of gain using gene editing, and I am especially not arguing that you can't get there eventually using an iterative approach. I am arguing that you will get less than +1SD of gain (and, in fact, probably a reduction) in intelligence if you follow the specific procedure of
The specific thing I want to call out is that each of the alleles you've measured to be the "better" variant is the better variant in the context of the environment the measurements occurred in. If you change a bunch of them at once, though, you're going to end up in into a completely different region of genome space, where the genotype/phenotype correlations you found in the normal human distribution probably won't hold.
I don't know if you have any experience with training ML models. I imagine not, since most people don't. Still, if you do have such experience, you can read my point as "if you take some policy that has been somewhat optimized by gradient descent for a loss function which is different from, but correlated with, the one you care about, and calculate the local gradient according to the loss function you care about, and then you take a giant step in the direction of the gradient you calculated, you are going to end up with higher loss even according to the loss function you care about, because the loss landscape is not flat". Basically my point is "going far out of distribution probably won't help you, even if you choose the direction that is optimal in-distribution -- you need to iterate".
Yep. And yet, I claim, necessary if you don't want to be limited to fairly small gains.
Note that this is "below 1SD of gains beyond what you would expect from the parents, and in a single iteration". If you were to take e.g. Terry Tao's genome, and then identify 30 places where he has "low intelligence" variants of whatever gene, and then make a clone with only those genes edited, and a second clone with no gene edits, I would expect the CRISPR clone to be a bit smarter than the unaltered clone, and many SD smarter than the average person. And, of course, at the extreme, if you take a zygote from two average-IQ parents, and replace its genome with Tao's genome then the resulting child would probably be more than 1SD smarter than you'd expect based on the IQs of the parents, because in that case you're choosing a known place in genome space to jump to, instead of choosing a direction and jumping really far in that direction from a mediocre place.
Maybe technical arguments don't belong in the CW thread, but people assuming that the loss landscape is basically a single smooth basin is a pet peeve of mine.
I am sorry for using "just wishful thinking", this was bad.
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I don't current state of art, but I think setting all genes to "high IQ allele" would have linear projection for IQ well past 300. So getting 300 IQ would need to avoid setting some alleles.
I have some experience with gradient descent methods, thought, not with ML. I challenge the premise "somewhat optimized", we are currently living in dysgenic age. If we were talking about making Borzoi dogs run faster, I'd have agreed.
Alternatively, we could just skip detection on which alleles have low IQ and just eliminate very rare alleles, which are much more likely to be deleterious (e.g. replace allele with frequency below given threshold with its most similar allele with frequency above threshold) without studying any IQ.
Well, people on this forum don't discuss genetics in detail at all.
It's a basin in some places until we travel to a mountain ridge. Since we are decades away from even trying "set all genes to specific allele" - even for model organisms - very few people discuss it.
In your hypothetical bet, how would result "IQ as intended, but baby brain too large for pregnancy to be delivered naturally" count?
The optimization happened in the ancestral environment, not the last couple hundred years. Current environment is probably mildly dysgenic but the effect is going to be tiny because the current environment just hasn't been around for very long.
I expect this would help a bit, just would be surprised if the effect size was actually anywhere near +1SD.
If the baby is healthy otherwise, that counts just fine.
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I don't think that toy model captures important features of the situation - there are people with 4SD higher intelligence, and while it's not clear how much of that is caused by non-additive genetics / idiosyncratic or random environmental contingencies, you could just clone them. I'd expect the children of two people of 3-4SD intelligence to be more than 1SD above average, and an algorithm that just randomly generated a child of two random 4SD intelligence people seems pretty close to a linear extrapolation, intuitively, yet performs above 1 SD.
The intuition for why linear extrapolation might work better than you'd expect in a complex system is that new beneficial alleles have a strong pressure to combine linearly with other alleles to spread throughout a population that'll have many different alleles in its members.
The toy model definitely does not capture the entire situation. It's mainly intended as a warning that the tails come apart. I specifically expect that the linear extrapolation would break down if you tried to use it very far outside the naturally occurring distribution, and proposed a toy mechanism of that.
Yes, I'd expect that would work fine. In fact I'd expect that "clone a very high IQ individual" would work much better than "CRISPR up a baby from two average parents so that it has all of the SNPs that GWAS said were best".
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I was more pointing to the gene editing reference. It seems more intuitive that we could select embryos as all the bits are functionally integrated via evolution.
There's a lot of reading so will tap into later. Do we really know if the causal correlation is from genes to IQ in the % of variation explained. Might they be markers of ethnicity, itself with a cultural link to IQ?
My journey in these waters is first to explore what level of evidence do we have. Aggregate associations between genetics and IQ scores would be low quality in terms of causal inference wouldn't it, in terms of evidence based medicine?
Ah, I meant direct gene editing on the alleles that the PGS identified / DNA sequences that people who are smarter than you have, so just a stronger version of embryo selection and natural reproduction, not the intentional design of entirely novel mechanisms, which I agree is far off.
That's what the sibling natural experiment is for - the ethnicity, culture, and environment for siblings are the same! Yet the sibling with a higher PGS does better in school. (outside of mutually reinforcing interactions between those and genes)
The similarity is also a problem in assigning variance to a single component but it's definitely a kind of experiment so worth taking seriously
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