I hope to pursue a career in biostatistics/epidemiology and am currently working toward a computation biology/bioinformatics minor at my university. Some of the courses in my minor has SQL, Perl, Java, C++, etc as part of the curriculum. I have some freedom in choosing which classes to take, so I was wondering, which programming language is most often used in statistical applications to health/medicine? As of now I only have a basic knowledge of C and R.
closed as primarily opinion-based by LittleBobbyTables, Juhana, Mat, animuson♦ Jul 10 '13 at 0:42
Many good questions generate some degree of opinion based on expert experience, but answers to this question will tend to be almost entirely based on opinions, rather than facts, references, or specific expertise.If this question can be reworded to fit the rules in the help center, please edit the question.
As a bioinformatician, don't waste your time on .NET bio. If you're in biostats, you want to know R and know it well. Learn about the packages in bioconductor and other repos, and how to create useful visualizations.
For more heavy lifting and data munging, learn a little perl or python, and learn basic unix utilities well (awk, sed, sort, cut, etc).
If you really plan to work on computation-heavy programs, where no good algorithms are available, then knowing some C or C++ can be useful, for speed and memory management.
Really, though, start with R.
This is a really broad question, so the only real answer I can give is "it depends".
I've been working in bioinformatics for a few years now, mostly with next generation sequencing and from experience all I can say is you will end up using whatever languages the rest of the team you're working with has used, or is using. Solid knowledge of algorithms and programming concepts is going to be more useful than any particular languages themselves, because those skills will make it easier for you to join and contribute to many research projects.
With that said, knowledge of R (or any other stats program) is certainly handy for data visualisation and some machine learning data crunching, so that is a good start.
If you're green to bioinformatics and are not afraid of the .NET platform, I suggest checking out .NET Bio; an open source library library dedicated to bioinformatics. I specifically suggest it if you are new, because it provides a number of tutorials on a plethora of "basic" bioinformatics operations which will be useful to you regardless of the languages you eventually work with. And, if you're looking for work in the field later on, a contribution to an open source bioinformatics project is likely to put you in a favourable light.