The human metabolomics database (HMDB, http://www.hmdb.ca) includes XML documents describing 114000 metabolites. We will show how to manipulate the metadata on metabolites fairly flexibly.
The hmdbQuery package includes a function for querying HMDB directly over HTTP:
The result is parsed and encapsulated in an S4 object
## HMDB metabolite metadata for 1-Methylhistidine:
## There are 10 diseases annotated.
## Direct association reported for 5 biospecimens and 2 tissues.
## Use diseases(), biospecimens(), tissues() for more information.
The size of the complete import of information about a single metabolite suggests that it would not be too convenient to have comprehensive information about all HMDB constituents in memory. The most effective approach to managing the metadata will depend upon use cases to be developed over the long run.
Note however that this package does provide snapshots of certain direct associations derived from all available information as of Sept. 23 2017. Information about direct associations reported in the database is present in tables hmdb_disease
, hmdb_gene
, hmdb_protein
, hmdb_omim
. For example
## DataFrame with 75360 rows and 3 columns
## accession name
## <character> <character>
## 1 HMDB0000001 1-Methylhistidine
## 2 HMDB0000001 1-Methylhistidine
## 3 HMDB0000001 1-Methylhistidine
## 4 HMDB0000001 1-Methylhistidine
## 5 HMDB0000002 1,3-Diaminopropane
## ... ... ...
## 75356 HMDB0094706 Serylvaline
## 75357 HMDB0094708 Tetraethylene glycol
## 75358 HMDB0094712 Serylleucine
## 75359 HMDB0100002 TG(i-14:0/17:0/i-13:0)
## 75360 HMDB0101657 TG(15:0/i-14:0/a-21:0)[rac]
## disease
## <character>
## 1 Alzheimer's disease
## 2 Diabetes mellitus type 2
## 3 Kidney disease
## 4 Obesity
## 5 Perillyl alcohol administration for cancer treatment
## ... ...
## 75356 NA
## 75357 NA
## 75358 NA
## 75359 NA
## 75360 NA
Some HMDB metabolites have been mapped to diseases.
## DataFrame with 10 rows and 4 columns
## metabolite disease
## <character> <character>
## 1 1-Methylhistidine Kidney disease
## 2 1-Methylhistidine Early preeclampsia
## 3 1-Methylhistidine Pregnancy
## 4 1-Methylhistidine Late-onset preeclampsia
## 5 1-Methylhistidine Alzheimer's disease
## 6 1-Methylhistidine Obesity
## 7 1-Methylhistidine Diabetes mellitus type 2
## 8 1-Methylhistidine Propionic acidemia
## 9 1-Methylhistidine Maple syrup urine disease
## 10 1-Methylhistidine Eosinophilic esophagitis
## pmids accession
## <List> <character>
## 1 11380830,11418788,12865413,... HMDB0000001
## 2 22494326 HMDB0000001
## 3 3252730,663967,12833386,... HMDB0000001
## 4 23159745 HMDB0000001
## 5 17031479,11959400,8595727,... HMDB0000001
## 6 15899597,16253646,2401584,... HMDB0000001
## 7 15899597,11887176,16731998,... HMDB0000001
## 8 19809936,19551947,2226555,... HMDB0000001
## 9 12101068,10508118,10472531,... HMDB0000001
## 10 HMDB0000001
pmids = unlist(diseases(lk1)[1,]$pmids)
library(annotate)
pm = pubmed(pmids[1])
ab = buildPubMedAbst(xmlRoot(pm)[[1]])
ab
## An object of class 'pubMedAbst':
## Title: Dimethylglycine accumulates in uremia and predicts elevated
## plasma homocysteine concentrations.
## PMID: 11380830
## Authors: DO McGregor, WJ Dellow, M Lever, PM George, RA Robson, ST
## Chambers
## Journal: Kidney Int
## Date: Jun 2001
Note that pre HMDB v 4.0, biospecimens were called biofluids.
There are arbitrarily many biospecimen and tissue associations provided for each HMDB entry. We have direct accessors, and by default we capture all metadata, available through the store
method.
## [1] "Blood" "Cerebrospinal Fluid (CSF)"
## [3] "Feces" "Saliva"
## [5] "Urine"
## [1] "Muscle" "Skeletal Muscle"
## [1] "version" "creation_date" "update_date"
## [4] "accession" "status" "secondary_accessions"
## [1] 44
## protein
## "Beta-Ala-His dipeptidase"
## protein
## "Protein arginine N-methyltransferase 3"
## protein protein
## "CNDP1" "PRMT3"