Low-Hanging Fruit in Automating Biology

(adamashwal.com)

37 points | by ashwal 1017 days ago

4 comments

  • sinab 1017 days ago
    I read this essay with interest as I work at the intersection of biology and engineering; I was disappointed. The essay fails to identify low-hanging fruit in automating biology and fails to explain how their company (Transistor Bio) is "picking" those low-hanging fruit. In retrospect it reads more like a poorly argued marketing pitch than an exposition on interesting and achievable problems in biology automation.

    The company's website also leaves much to be desired; though they have reinvented the liquid handling robot [1].

    [1] https://publish.obsidian.md/serve?url=transistor.bio/busines...

    • dsign 1017 days ago
      As with all such ventures, the chances of success are, I daresay, one in one hundred, or even lower. But since I would very much like to see at least 10 of those ventures succeed in my lifetime, because as the author said, "Assuming it is true that you want to live longer, healthier lives — a position not shared by the dull and dreary", I think we must do everything we can to have thousands of these startups all over the world. Even if all we can do is give them moral support.

      We have thrown far more money to adware-crap-companies of what we have thrown to systems biology startups, even if only the later can have a meaningful impact on human health.

      • cinntaile 1017 days ago
        A good start would be to actually mention the low hanging fruit in an article titled that. This is a bad ad and it doesn't leave me with a good impression of the company.
    • inciampati 1017 days ago
      I unfortunately came away with the same impression. I was hoping for an integrative perspective on changes that do make a big difference in everyday biology, such as open source systems for critical parts of the research process (e.g. https://www.opentrons.com/).

      From the informatics side, bio ~ computer science. Major advances in data structures are driven by the absurdly data-heavy problems in biology. But when you get into the wet, things are messy and there is not a culture of automation. If lab automation can go fully open source, then we have the chance to see the same transition on the wet side of things.

  • frisco 1017 days ago
    As someone who used to think a lot of the stuff in here, and definitely no longer does, I can say that this is not someone who is a practitioner.

    Adam, if you’re reading this, I would definitely encourage you to take a step back and go deep on how you might prove that the problems are where you think they are. The stuff you’re describing has all been done many times at this point and just either hasn’t turned out to be valuable to solve, or now has big effective companies doing it, or is extremely difficult for non-obvious reasons. Your characterization of total doom in modern experimentation is inaccurate.

    • udp 1017 days ago
      It would be more helpful to point out some specific examples of what has already been tried and what went wrong than just saying “don’t go there”
      • frisco 1017 days ago
        Sure, that’s fair.

        An API driven vivarium as a service with instrumented cages was tried to tens of $M by Vium. That didn’t take off, though there are lots of vendors of sophisticated cage instrumentation now, including based on computer vision. DeepLabCut is amazing and open source.

        In terms of general progress in experimental tools, there has been tons. The modern super resolution confocals; affordable femtosecond light sources like the Coherent Monaco enables all kinds of awesome stuff; or newer methods like MERFISH and PatchSeq (or hell, just the total commodification of sequencing generally).

        Microfludics are now widely used and super valuable as “ASICs”, though I think the lack of a general purpose “CPU” lab of a chip has misled people not in the field.

        In terms of molecular tools, it’s just night and day from 10 years ago. iPSCs, CRISPR, expansion microscopy, tons of new labels and stains etc.

        Ginkgo and Zymergen have enormous scale, invest heavily in software and robotics, and are working “in vivo.” Recursion also invests heavily in automation, and while I don’t think they run animals in house, it’s not clear what Transistor is proposing that would outperform them.

        Lots of companies run lots of studies in tons of different species all the time. Less so in academia, but I don’t think saying “well everyone else is working in vitro and we will work in vivo” is the kind of arbitrage opportunity Transistor seems to think it is. Where there are bottlenecks that I think could be improved, they are either unsexy (an easy Stripe-product-quality 3rd party IACUC would be super useful) or hinge on showing up with an enormous bucket of money so you can do things like set up your own breeding colonies.

        And of course scientists really do care about being right and finding lasting results that are big effects. It is so much harder than it looks to do that well, but the people working in it are super smart and, at least outside of academia, generally have good incentives.

        Edit: I clicked through to their “Business” page, which reads in part:

        > Transistor will instead build a system designed with speed and scale in mind from the beginning: an automated wet lab with an API interface. Current CROs require bureaucratic back and forth which can extend into the months and are extraordinarily expensive for results that one crosses their fingers and hopes are correct.

        May I point them to a company I founded 9 years ago, which raised a $56M series B last week: https://strateos.com/

        Does this mean an opportunity exists? Maybe. But I think Transistor has some education to do on where the true problems that would be valuable to solve lie.

        • gkk 1017 days ago
          As someone with software background and interested in bio, it's a real pleasure to see a commentary from an experienced practitioner.

          While we're discussing venues of progress, it's clear that software (and deep learning advances specifically) is poised to have a large impact on how bio research is conducted, and what categories of questions we'll be able to answer. The current consensus on how you leverage software in practice is to put both bio and software teams under one roof (Insitro and Recursion are canonical examples). I wonder if you think software-only company makes sense in this space? The analogy I like to use: people used to roll out their own accounting software within large enterprises until spreadsheets came along. Is there room for an equivalent in some segment of bio?

        • agumonkey 1017 days ago
          Incredible amount of stuff I never hear about, is there a journal or conference to track to follow advances in this field ?
    • Gatsky 1017 days ago
      Yeah, only someone with the most cursory undersanding of experimental life science could write something like this.
      • dnautics 1017 days ago
        as someone who has worked in biology and "building fault tolerant systems" (erlang), I think this might be a real problem (I don't know if it is; the last lab stuff I did was just before automation), but it's simultaneously obvious that the writer has no clue about how to correctly merge the two concepts.
  • vikramkr 1017 days ago
    Putting a layer of robotics over an in vivo organism still has the extreme complexities of an in vivo system at the core. Im not exactly sure what the breakthrough is supposed to be here. I guess I was maybe hoping for a more technical explanation of the bio of what they're doing but maybe this seems more meant as a marketing pitch?
  • foolinaround 1017 days ago
    i have been wondering why blood tests have to be so expensive? See [1]

    Once the human person has interacted in drawing the blood, then a few drops might be needed to do some additional tests, like check for adequate Vitamin D, etc that the doctor did not prescribe, but is still useful to know, and can be an upsell, there should be just a marginal cost to automated machines/processes doing that test.

    A further improvisation is to be able to track a person's details like past history, current complaints, and make a recommendation to add a few additional tests for a few dollars each?

    [1] https://www.letsgetchecked.com/us/en/home-micronutrient-test