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Negentrope's avatar

An excellent write up. I particularly appreciate that the authors highlight the revolutions in data analysis and -omics technologies, which are arguably far more important to fundamental progress in biological engineering that CRISPR and other editing technologies are. With that said, I would offer one small criticism (apologies for the long incoming response).

While I broadly agree with the author's and your own optimism regarding the pace and potential of progress within biotech, I do worry that the complexity of biological systems and the resulting difficulty of consistently and accurately engineering them isn't given its proper weight. The model of gene -> mRNA -> protein -> trait is a simplified one that overlooks several other mechanisms and systems of control at each step in the process. It's not just a matter of making more of a transcript to make more of a protein to produce a trait.

It's been known for some time that changes in the level of mRNA transcripts only correlate with protein levels with an R^2 of 0.5 or so (obviously that is an average when looking broadly across different cell types and species). The difference comes about from various processes that determine whether or not a transcript is converted into a protein, like the rate of transcript degradation or the rate of ribosome loading. Additionally, that's only considering the protein coding genes and ignoring the vast number of RNA's that appear to play regulatory roles, the variety of which is so great that I've honestly lost track of all the acronyms that have been invented to categorize that (ncRNA, lncRNA, piwiRNA, siRNA, miRNA, etc.).

Once you actually get the protein produced there are addition levels of control affecting its function. Post-translational modifications, wherein a molecule like phosphate or glucose, is attached to the protein in a way that alters its specificity and/or reaction rate appear to be pretty ubiquitous in the cell and can alter phenotypic traits all on their own. And then of course there's the metabolome, the collection of all the various other metabolites that make up the cell and can alter the rate and direction of metabolic pathways through positive/negative feedback loops. And that's just the stuff we're aware of. I only recently learned of emerging work on a whole 'nother level of control involving tRNA's (the RNA molecules which bring individual amino acids to the ribosome for construction into proteins). Apparently many if not most of the bases of tRNA can be subject to their own modifications, each of which alters the probability that a given tRNA will be involved in protein translation and (presumably) thereby influencing protein production.

None of the above is to say that I'm not optimistic. I am. But it's worth remembering that our efforts to understand biology at a fundamental level have up until very recently been like attempting to understand the engineering principles of an alien supercomputer written in a language we can't understand. Mostly we've just been breaking things and seeing if it produces any interesting or notable effects and even with the emerging revolutions our progress with biology will still involve a fair amount of that trial and error. At least until we have a true mechanistic understanding of how all the interacting components of a cell actually lead to an observed phenotype.

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Piotr Pachota's avatar

My wife is is biotechnology PhD, and I have been following this domain for the last 13 years or so. I can say that the biotechnology hype is going strong for the last 30 years or so. To me, it's kind of like flying cars, android robots, cold fusion or manned mars exploration. We are told all the time that we are at the tipping point, at the edge of the breakthrough. But it never happens. The hype is pushing more and more young people to study the field, which results in overproduction of graduates with poor career prospects, as well described here: https://goodscience.substack.com/p/texas-gas-stations-nih-sponsored

My wife's graduate program included extra funding from a government program, created based on the government's prediction of high market demand for biotech graduates. After graduation, it turned out that the market demand for biotech graduates was actually very low. The biotech PhD meme pages suggest that the same thing happens all over the world.

I think the biggest gap in these kind of analyses driving the hype is that they are essentially missing the adoption cycle and assuming that all breakthrough technologies are adopted instantly by everyone. This is probably a bias resulting from quick adoption cycles of software and consumer electronics. My experience shows that the typical adoption cycle takes 20-30 years - from the moment the technology first becomes available, to the point it becomes widely adopted by the business and becomes the new standard. For all kinds of technology I worked with - mobile phones, office computers, engineering software such as CAD or FEM analysis, modern data analytics - the business adoption cycle worked that long, and from what I have seen in biotechnology, the adoption cycle seems similar if not longer.

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