Entrez是NCBI提供的在线搜索系统。通过集成的全局查询,它支持布尔运算符和字段搜索,从而可以访问几乎所有已知的分子生物学数据库。它返回所有数据库的结果,并提供诸如每个数据库的命中次数,带有原始数据库链接的记录等信息。
下面列出了一些可以通过Entrez访问的流行数据库 -
- Pubmed
- Pubmed Central
- Nucleotide(GenBank序列数据库)
- Protein(序列数据库)
- Genome(整个基因组数据库)
- Structure(三维高分子结构)
- Taxonomy(GenBank中的有机体)
- SNP(单核苷酸多态性)
- UniGene(转录序列的基因导向簇)
- CDD(保守蛋白质结构域数据库)
- 3D域(来自Entrez结构的域)
除上述数据库外,Entrez还提供更多数据库来执行字段搜索。
Biopython提供了一个Entrez特定模块Bio.Entrez
来访问Entrez数据库。下面将学习如何使用Biopython访问Entrez -
1. 数据库连接步骤
要添加Entrez的功能,请导入以下模块-
>>> from Bio import Entrez
接下来设置电子邮件以识别谁与下面给出的代码相关联 -
>>> Entrez.email = '<youremail>'
然后,设置Entrez工具参数,默认情况下为Biopython。
>>> Entrez.tool = 'Demoscript'
现在,调用einfo
函数以查找索引术语计数,上次更新以及每个数据库的可用链接,如下所示-
>>> info = Entrez.einfo()
einfo
方法返回一个对象,该对象通过read
方法提供对信息的访问,如下所示 -
>>> data = info.read()
>>> print(data)
<?xml version = "1.0" encoding = "UTF-8" ?>
<!DOCTYPE eInfoResult PUBLIC "-//NLM//DTD einfo 20130322//EN"
"https://eutils.ncbi.nlm.nih.gov/eutils/dtd/20130322/einfo.dtd">
<eInfoResult>
<DbList>
<DbName>pubmed</DbName>
<DbName>protein</DbName>
<DbName>nuccore</DbName>
<DbName>ipg</DbName>
<DbName>nucleotide</DbName>
<DbName>nucgss</DbName>
<DbName>nucest</DbName>
<DbName>structure</DbName>
<DbName>sparcle</DbName>
<DbName>genome</DbName>
<DbName>annotinfo</DbName>
<DbName>assembly</DbName>
<DbName>bioproject</DbName>
<DbName>biosample</DbName>
<DbName>blastdbinfo</DbName>
<DbName>books</DbName>
<DbName>cdd</DbName>
<DbName>clinvar</DbName>
<DbName>clone</DbName>
<DbName>gap</DbName>
<DbName>gapplus</DbName>
<DbName>grasp</DbName>
<DbName>dbvar</DbName>
<DbName>gene</DbName>
<DbName>gds</DbName>
<DbName>geoprofiles</DbName>
<DbName>homologene</DbName>
<DbName>medgen</DbName>
<DbName>mesh</DbName>
<DbName>ncbisearch</DbName>
<DbName>nlmcatalog</DbName>
<DbName>omim</DbName>
<DbName>orgtrack</DbName>
<DbName>pmc</DbName>
<DbName>popset</DbName>
<DbName>probe</DbName>
<DbName>proteinclusters</DbName>
<DbName>pcassay</DbName>
<DbName>biosystems</DbName>
<DbName>pccompound</DbName>
<DbName>pcsubstance</DbName>
<DbName>pubmedhealth</DbName>
<DbName>seqannot</DbName>
<DbName>snp</DbName>
<DbName>sra</DbName>
<DbName>taxonomy</DbName>
<DbName>biocollections</DbName>
<DbName>unigene</DbName>
<DbName>gencoll</DbName>
<DbName>gtr</DbName>
</DbList>
</eInfoResult>
数据为XML格式,要获取数据作为python对象,请在调用Entrez.einfo()
方法后立即使用Entrez.read
方法-
>>> info = Entrez.einfo()
>>> record = Entrez.read(info)
在这里,record
是一本字典,它具有一个DbList
键,如下所示-
>>> record.keys()
[u'DbList']
访问DbList
键返回数据库名称的列表,如下所示 -
>>> record[u'DbList']
['pubmed', 'protein', 'nuccore', 'ipg', 'nucleotide', 'nucgss',
'nucest', 'structure', 'sparcle', 'genome', 'annotinfo', 'assembly',
'bioproject', 'biosample', 'blastdbinfo', 'books', 'cdd', 'clinvar',
'clone', 'gap', 'gapplus', 'grasp', 'dbvar', 'gene', 'gds', 'geoprofiles',
'homologene', 'medgen', 'mesh', 'ncbisearch', 'nlmcatalog', 'omim',
'orgtrack', 'pmc', 'popset', 'probe', 'proteinclusters', 'pcassay',
'biosystems', 'pccompound', 'pcsubstance', 'pubmedhealth', 'seqannot',
'snp', 'sra', 'taxonomy', 'biocollections', 'unigene', 'gencoll', 'gtr']
>>>
基本上,Entrez模块解析Entrez搜索系统返回的XML,并将其提供为python字典和列表。
2. 搜索数据库
要搜索任何一个Entrez数据库,需要使用Bio.Entrez.esearch()
模块。它定义如下 -
>>> info = Entrez.einfo()
>>> info = Entrez.esearch(db = "pubmed",term = "genome")
>>> record = Entrez.read(info)
>>>print(record)
DictElement({u'Count': '1146113', u'RetMax': '20', u'IdList':
['30347444', '30347404', '30347317', '30347292',
'30347286', '30347249', '30347194', '30347187',
'30347172', '30347088', '30347075', '30346992',
'30346990', '30346982', '30346980', '30346969',
'30346962', '30346954', '30346941', '30346939'],
u'TranslationStack': [DictElement({u'Count':
'927819', u'Field': 'MeSH Terms', u'Term': '"genome"[MeSH Terms]',
u'Explode': 'Y'}, attributes = {})
, DictElement({u'Count': '422712', u'Field':
'All Fields', u'Term': '"genome"[All Fields]', u'Explode': 'N'}, attributes = {}),
'OR', 'GROUP'], u'TranslationSet': [DictElement({u'To': '"genome"[MeSH Terms]
OR "genome"[All Fields]', u'From': 'genome'}, attributes = {})], u'RetStart': '0',
u'QueryTranslation': '"genome"[MeSH Terms] OR "genome"[All Fields]'},
attributes = {})
>>>
如果分配了错误的数据库,那么它将返回 -
>>> info = Entrez.esearch(db = "blastdbinfo",term = "books")
>>> record = Entrez.read(info)
>>> print(record)
DictElement({u'Count': '0', u'RetMax': '0', u'IdList': [],
u'WarningList': DictElement({u'OutputMessage': ['No items found.'],
u'PhraseIgnored': [], u'QuotedPhraseNotFound': []}, attributes = {}),
u'ErrorList': DictElement({u'FieldNotFound': [], u'PhraseNotFound':
['books']}, attributes = {}), u'TranslationSet': [], u'RetStart': '0',
u'QueryTranslation': '(books[All Fields])'}, attributes = {})
如果要跨数据库搜索,则可以使用Entrez.egquery
。它与Entrez.esearch
相似,只不过它足以指定关键字并跳过数据库参数。
>>>info = Entrez.egquery(term = "entrez")
>>> record = Entrez.read(info)
>>> for row in record["eGQueryResult"]:
... print(row["DbName"], row["Count"])
...
pubmed 458
pmc 12779 mesh 1
...
...
...
biosample 7
biocollections 0
3. 提取记录
Enterz提供了一种特殊的方法,即从Entrez检索和下载记录的全部详细信息。考虑以下简单示例 -
>>> handle = Entrez.efetch(
db = "nucleotide", id = "EU490707", rettype = "fasta")
现在,可以简单地使用SeqIO
对象读取记录:
>>> record = SeqIO.read( handle, "fasta" )
>>> record
SeqRecord(seq = Seq('ATTTTTTACGAACCTGTGGAAATTTTTGGTTATGACAATAAATCTAGTTTAGTA...GAA',
SingleLetterAlphabet()), id = 'EU490707.1', name = 'EU490707.1',
description = 'EU490707.1
Selenipedium aequinoctiale maturase K (matK) gene, partial cds; chloroplast',
dbxrefs = [])