The path from bench to computational biology requires a piecemeal learning approach
The tagline of this newsletter is “Pathways to Computational Biology.” So far in 2024 I have interpreted this tagline to mean the pathway leading computational biology talent to solve problems in biotech/pharma. I have focused quite a lot on helping college/master’s/PhD students with some degree of quantitative training to walk this path and have achieved some success on that front. I’m pretty happy about that, but that’s just one very specific pathway. There are others that I have neglected thus far.
A pathway I have not paid enough attention to is the one that helps biologists without strong quantitative foundations to transition from bench work to compbio work. I’m talking about you wonderful folks who are performing cell/tissue culture, flow cytometry, and animal model experiments, just to name a few.
Bench biologists have great potential to become computational biologists. You already have intimate knowledge of the biology of the systems you are investigating. Many of you already think about your data quantitatively and have the desire to cement that thinking with more rigorous statistical analysis. You are actually latent computational biologists who just need a bit of help getting activated. But it’s also just hard to find the time to sit down to learn to code. Because you have to run experiments. Read papers. Plan the next experiment. So your learning has to happen piecemeal. I know, because I was in your shoes not that long ago.
I remember regularly having to run a 7-hour wet-lab protocol that included many 15-30 minute incubation steps. So during those short, built-in breaks in the protocol, I would stuff my tissue slides in the oven, set a timer, and rush right back to my computer to learn or practice data analysis
What would have helped me back then? A structured analysis
But just to be clear, I don’t think that structured content bypassing theory and leading to quick results is enough to get biologists fully proficient in doing compbio work. You need a lot more independent, intentional practice
All this is to say that I am now working on that kind of structured content. This is still in line with the learning philosophy promoted by Figure One Lab, except it will be tailored more to bench biologists.
Stay tuned.
SWE | ML
9moWhat about the path of a computer science student in BioTech? How do you think, what kind of steps should we take, in order to familiarise ourselves with Biotechnology
University Lecturer with expertise in Bioinformatics and Microbiology Education
10moAs a bench microbiologist who is now learning compbio workflows . I find this motivating because I am learn all the coding and sometimes I think I made a mistake by trying to learn dry lab techniques/ computational biology
Aspiring Bioinformatician || Academic Writer and Researcher || Microbiologist
10moI can totally relate to this. Having to learn to code and learn most of the tech part myself hasn't been really easy. I have a Bsc in microbiology and working towards getting post grad degrees in bioinformatics and self learning hasn't been easy although it's been really worth it. Thanks for sharing this!
Tech Enthusiast | Projects Management | Biotechnology | Researcher
10moVery informative
Biotech Research Scientist | Data Science | PhD in Biological Sciences and Biotechnology | Drug Dev | Fulbright fellow. AAUW alumni.
10moOh, this article reminds me of my years as PhD student.…setting up new protocols and taking stats and programming courses during the night after my kids fall asleep. It was hard, I won't romanticize those days but it paid off 🙌