_Beginning Perl for Bioinformatics_, by James Tisdall
Published by O'Reilly & Associaetes, copyright 2001.
ISBN 0-596-00080-4

As the banner above the title of James Tisdall's _Beginning Perl
for Bioinformatics_ indicates, this book is "an introduction to
Perl for biologists". What the banner doesn't mention is that it's
also an introduction to biology and bioinformatics for Perl
programmers, and it's also an introduction to both Perl *and*
biology for people that have never really been exposed to either
field. The banner may not mention this, but the author has clearly
thought a lot about making one book to please these different
audiences, and he has pulled it off nicely, in a way that manages
to explain basic topics to people learning about each field for
the first time while not coming off as condescending to slow-paced
to those that might already have some exposure to it.

Superficially, this book isn't all that different from a lot of
introductory Perl books: the Perl material starts out with an
overview of the language, followed by a crash course on installing
Perl, writing programs, and running them. From there, it goes on
to introduce all the various language constructs, from variables
to statements to subroutines, that any programmer is going to have
to get comfortable with. Pretty run of the mill so far. The
interesting thing is the two assumptions that all of this is written
with: [1] that the reader may never written a computer program
before, and so needs to learn how to engineer a robust application
that will do its job efficiently & well, and [2] that the reader
wants to know how to write programs that can solve a series of
biological problems, specifically in genetics and proteomics.

As such, there is at least as much material about the problems that
a biologist faces and the places she can go to get the data she
needs as there is about the issues that a Perl programmer needs to
be aware of. The author introduces the reader to the basics of DNA
chemistry, the cellular processes that convert DNA to RNA and then
proteins, and a little bit about how & why this is important to
the biologist and what sorts of information would help a biologist's
research. The main sources of public genetic data are noted, and
the often confusing -- and *huge* -- datafiles that can be obtained
from these sources are examined in detail.

With the code he presents for solving these problems, Tisdall makes
a point of not falling into the indecipherable Perl trap:  this is
a useful language, well-suited to the essentially text-analysis
problems that bioinformatics means, and he doesn't want to encourage
the kind of dense, obscure, idiomatic coding style that has given
Perl an undeservedly bad reputation. Some of Perl's more estoeric
constructs are useful, and they show up when they're needed, but
they're left out when they would only serve to confuse the reader.
This is a good decision.

Rather, the focus is on teaching readers how to solve biological
problems with a carefully developed library of code that happens
to leverage some of Perl's most useful properties. The result is
pretty much a biologist's edition of Christiansen & Torkington's
_Perl Cookbook_ or Dave Cross' _Data Munging With Perl_. The author
presents a series of issues that a working bioinformaticist might
have to deal with daily -- parsing over BLAST, GenBank, and PDB
files, finding relevant motifs in that parsed data, and preparing
reports about all of it. If a bioinformaticist's job is to be able
to report on interesting patterns from these various sources, then
the programming techniques that Tisdall explains in clear, easy to
follow prose would be an excellent way to go about doing it.

And when I say "programming techniques", note that I'm not specifically
mentioning Perl. The code in this book is clear and organized, and
all programs are carefully decomposed into logical subroutines that
are then packaged up into a library file that each later sample
program gets to draw from. Each new program typically contains a
main section of a dozen lines of code or less, followed by no more
than two or three new subroutines, along with calls to routines
written earlier and called from the BeginPerlBioinfo.pm that is
built up as the book progresses. This sample is typically proceeded
by a description of what it's trying to accomplish and followed by
a detaild description of how it was done, as well as suggestions
of other ways that might have worked or not worked.

This modular approach is fantastic -- too many Perl books seem to
focus so heavily on the mechanics of getting short scripts to work
that they lose sight of how to build up a suite of useful methods
and, from those methods, to develop ever more sophistocated
applications. It isn't quite object oriented programming, but that's
clearly where Tisdall is headed with these samples, and given a
few more chapters he probably would have started formally wrapping
some of this code into OO packages.

If I have a complaint with the book, that's it: everything is good,
but it ends too soon. Seemingly important topics such as OO
programming, XML, graphics (charts & GUIs), CGI, and DBI are
mentioned only in passing, under "further topics" in the last
chapter. I also have a feeling that some of the biology was shorted,
and the book barely touches upon the statistical analysis that
probably is a critical aspect of the advanced bioinformaticist's
toolbox. I can understand wanting to keep the length of a beginner's
book relatively short, and this was probably the right decision,
but it would have been nice to see some of the earlier sample
problems revisited in these new contexts by, for example, formally
making an OO library, showing a sample program that provided a web
interface to some of the methods already written, or presenting
code that presented results as XML or exchanged them with a database.

But these are minor quibbles, and if the reader is comfortable with
the material up to this point, she shouldn't have a hard time
figuring out how to go a step further and do these things alone.
It's a solid book, and one that should be able to get people learning
Perl, genetics, or both up to speed and working on real world
problems quickly.





-- 
Chris Devers                           [EMAIL PROTECTED]
Apache / mod_perl / http://homepage.mac.com/chdevers/resume/


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