BIO Assignment Week 6

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Assignment for Week 6
Function

< Assignment 5 Assignment 7 >

Note! This assignment is currently active. All significant changes will be announced on the mailing list.

 
 

Concepts and activities (and reading, if applicable) for this assignment will be topics on next week's quiz.




 

Introduction

 

In this assignment we will first download a number of APSES domain containing sequences into our database - and we will automate the process. Then we will annotate them with domain data. First manually, and then again, we will automate this. Next we will extract the APSES domains from our database according to the annotations. And finally we will align them, and visualize domain conservation in the 3D model to study parts of the protein that are conserved.


 

Downloading Protein Data From the Web

In Assignment 3 we created a schema for a local protein sequence collection, and implemented it as an R list. We added sequences to this database by hand, but since the information should be cross-referenced and available based on a protein's RefSeq ID, we should really have a function that automates this process. It is far too easy to make mistakes and enter erroneous information otherwise.


Task:
Work through the following code examples.

# To begin, we load some libraries with functions
# we need...

# httr sends and receives information via the http
# protocol, just like a Web browser.
if (!require(httr, quietly=TRUE)) { 
	install.packages("httr")
	library(httr)
}

# NCBI's eUtils send information in XML format; we
# need to be able to parse XML.
if (!require(XML, quietly=TRUE)) {
	install.packages("XML")
	library(XML)
}

# stringr has a number of useful utility functions
# to work with strings. E.g. a function that
# strips leading and trailing whitespace from
# strings.
if (!require(stringr, quietly=TRUE)) {
	install.packages("stringr")
	library(stringr)
}


# We will walk through the process with the refSeqID
# of yeast Mbp1
refSeqID <- "NP_010227"


# UniProt.
# The UniProt ID mapping service supports a "RESTful
# API": responses can be obtained simply via a Web-
# browsers request. Such requests are commonly sent
# via the GET or POST verbs that a Webserver responds
# to, when a client asks for data. GET requests are 
# visible in the URL of the request; POST requests
# are not directly visible, they are commonly used
# to send the contents of forms, or when transmitting
# larger, complex data items. The UniProt ID mapping
# sevice can accept long lists of IDs, thus using the
# POST mechanism makes sense.

# R has a POST() function as part of the httr package.

# It's very straightforward to use: just define the URL
# of the server and send a list of items as the 
# body of the request.

# uniProt ID mapping service
URL <- "http://www.uniprot.org/mapping/"
response <- POST(URL, 
                 body = list(from = "P_REFSEQ_AC",
                             to = "ACC",
                             format = "tab",
                             query = refSeqID))

response

# If the query is successful, tabbed text is returned.
# and we capture the fourth element as the requested
# mapped ID.
unlist(strsplit(content(response), "\\s+"))

# If the query can't be fulfilled because of a problem
# with the server, a WebPage is rturned. But the server status
# is also returned and we can check the status code. I have
# lately gotten many "503" status codes: Server Not Available...

if (response$status_code == 200) { # 200: oK
	uniProtID <- unlist(strsplit(content(response), "\\s+"))[4]
	if (is.na(uniProtID)) {
	warning(paste("UniProt ID mapping service returned NA.",
	              "Check your RefSeqID."))
	}
} else {
	uniProtID <- NA
	warning(paste("No uniProt ID mapping available:",
	              "server returned status",
	              response$status_code))
}

uniProtID  # Let's see what we got...
           # This should be "P39678"
           # (or NA if the query failed)


Next, we'll retrieve data from the various NCBI databases.

It is has become unreasonably difficult to screenscrape the NCBI site since the actual page contents are dynamically loaded via AJAX. This may be intentional, or just overengineering. While NCBI offers a subset of their data via the eutils API and that works well enough, some of the data that is available to the Web browser's eyes is not served to a program.

The eutils API returns data in XML format. Have a look at the following URL in your browser to see what that looks like:

http://eutils.ncbi.nlm.nih.gov/entrez/eutils/esearch.fcgi?db=protein&term=NP_010227


# In order to parse such data, we need tools from the 
# XML package. 

# First we build a query URL...
eUtilsBase <- "http://eutils.ncbi.nlm.nih.gov/entrez/eutils/"


# Then we assemble an URL that will search for get the
# unique, NCBI internal identifier,  the GI number,
# for our refSeqID...
URL <- paste(eUtilsBase,
             "esearch.fcgi?",     # ...using the esearch program
                                  # that finds an entry in an
                                  # NCBI database
             "db=protein",
             "&term=", refSeqID,
             sep="")
# Copy the URL and paste it into your browser to see
# what the response should look like.
URL

# To fetch a response in R, we use the function htmlParse()
# with our URL as its argument.
response <- htmlParse(URL)
response

# This is XML. We can take the response apart into
# its indvidual components with the xmlToList function.

xmlToList(response)

# Note how the XML "tree" is represented as a list of
# lists of lists ...
# If we know exactly what elelement we are looking for,
# we can extract it from this structure:
xmlToList(response)[["body"]][["esearchresult"]][["idlist"]][["id"]]

# But this is not very robus, it would break with the
# slightest change that the NCBI makes to their response
# and the NCBI changes things A LOT!

# Somewhat more robust is to specify the type of element
# we want - its the text contained in an <id>...</id>
# elelement, and use the XPath XML parsing language to
# retrieve it.

# getNodeSet() lets us fetch tagged contents by 
# applying toString.XMLNode() to it...

node <- getNodeSet(response, "//id/text()")
unlist(lapply(l, toString.XMLNode))  # "6320147 "

# We will be doing this a lot, so we write a function
# for it...
node2string <- function(doc, tag) {
    # an extractor function for the contents of elements
    # between given tags in an XML response.
    # Contents of all matching elements is returned in
    # a vector of strings.
	path <- paste("//", tag, "/text()", sep="")
	nodes <- getNodeSet(doc, path)
	return(unlist(lapply(nodes, toString.XMLNode)))
}

# using node2string() ...
GID <- node2string(response, "id")
GID

# The GI is the pivot for all our data requests at the
# NCBI. 

# Let's first get the associated data for this GI
URL <- paste(eUtilsBase,
             "esummary.fcgi?",
             "db=protein",
             "&id=",
             GID,
             "&version=2.0",
             sep="")
response <- htmlParse(URL)
URL
response

taxID <- node2string(response, "taxid")
organism <- node2string(response, "organism")
taxID
organism


# Next, fetch the actual sequence
URL <- paste(eUtilsBase,
             "efetch.fcgi?",
             "db=protein",
             "&id=",
             GID,
             "&retmode=text&rettype=fasta",
             sep="")
response <- htmlParse(URL)
URL
response

fasta <- node2string(response, "p")
fasta

seq <- unlist(strsplit(fasta, "\\n"))[-1] # Drop the first elelment,
                                          # it is the FASTA header.
seq


# Next, fetch the crossreference to the NCBI Gene
# database
URL <- paste(eUtilsBase,
             "elink.fcgi?",
             "dbfrom=protein",
             "&db=gene",
             "&id=",
             GID,
             sep="")
response <- htmlParse(URL)
URL
response

geneID <- node2string(response, "linksetdb/id")
geneID

# ... and the actual Gene record:
URL <- paste(eUtilsBase,
             "esummary.fcgi?",
             "&db=gene",
             "&id=",
             geneID,
             sep="")
response <- htmlParse(URL)
URL
response

name <- node2string(response, "name")
genome_xref <- node2string(response, "chraccver")
genome_from <- node2string(response, "chrstart")[1]
genome_to <- node2string(response, "chrstop")[1]
name
genome_xref
genome_from
genome_to

# So far so good. But since we need to do this a lot
# we need to roll all of this into a function. 

# I have added the function to the dbUtilities code
# so you can update it easily.

# Run:

updateDbUtilities("55ca561e2944af6e9ce5cf2a558d0a3c588ea9af")

# If that is successful, try these three testcases

myNewDB <- createDB()
tmp <- fetchProteinData("NP_010227") # Mbp1p
tmp
myNewDB <- addToDB(myNewDB, tmp)
myNewDB

tmp <- fetchProteinData("NP_011036") # Swi4p
tmp
myNewDB <- addToDB(myNewDB, tmp)
myNewDB

tmp <- fetchProteinData("NP_012881") # Phd1p
tmp
myNewDB <- addToDB(myNewDB, tmp)
myNewDB


TBC


 



 


Footnotes and references


 

Ask, if things don't work for you!

If anything about the assignment is not clear to you, please ask on the mailing list. You can be certain that others will have had similar problems. Success comes from joining the conversation.



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