Jupyter Notebook

Gene Ontology (GO)#

Pathways represent interconnected molecular networks of signaling cascades that govern critical cellular processes. They provide understandings cellular behavior mechanisms, insights of disease progression and treatment responses. In an R&D organization, managing pathways across different datasets are crucial for gaining insights of potential therapeutic targets and intervention strategies.

In this notebook we manage a pathway registry based on “2023 GO Biological Process” ontology. We’ll walk you through the steps of registering pathways and link them to genes.

In the following Standardize metadata on-the-fly notebook, we’ll demonstrate how to perform a pathway enrichment analysis and track the dataset with LaminDB.

Setup#

!lamin init --storage ./use-cases-registries --schema bionty
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💡 connected lamindb: testuser1/use-cases-registries
import lamindb as ln
import bionty as bt
import gseapy as gp

bt.settings.organism = "human"  # globally set organism
💡 connected lamindb: testuser1/use-cases-registries
2024-03-26 11:58:31,905:INFO - Failed to extract font properties from /usr/share/fonts/truetype/noto/NotoColorEmoji.ttf: In FT2Font: Can not load face (unknown file format; error code 0x2)
2024-03-26 11:58:31,976:INFO - generated new fontManager

Fetch GO pathways annotated with human genes using Enrichr#

First we fetch the “GO_Biological_Process_2023” pathways for humans using GSEApy which wraps GSEA and Enrichr.

go_bp = gp.get_library(name="GO_Biological_Process_2023", organism="Human")
print(f"Number of pathways {len(go_bp)}")
2024-03-26 11:58:32,952:INFO - Downloading and generating Enrichr library gene sets...
2024-03-26 11:58:45,770:INFO - 0001 gene_sets have been filtered out when max_size=2000 and min_size=0
Number of pathways 5406
go_bp["ATF6-mediated Unfolded Protein Response (GO:0036500)"]
['MBTPS1', 'MBTPS2', 'XBP1', 'ATF6B', 'DDIT3', 'CREBZF']

Parse out the ontology_id from keys, convert into the format of {ontology_id: (name, genes)}

def parse_ontology_id_from_keys(key):
    """Parse out the ontology id.

    "ATF6-mediated Unfolded Protein Response (GO:0036500)" -> ("GO:0036500", "ATF6-mediated Unfolded Protein Response")
    """
    id = key.split(" ")[-1].replace("(", "").replace(")", "")
    name = key.replace(f" ({id})", "")
    return (id, name)
go_bp_parsed = {}

for key, genes in go_bp.items():
    id, name = parse_ontology_id_from_keys(key)
    go_bp_parsed[id] = (name, genes)
go_bp_parsed["GO:0036500"]
('ATF6-mediated Unfolded Protein Response',
 ['MBTPS1', 'MBTPS2', 'XBP1', 'ATF6B', 'DDIT3', 'CREBZF'])

Register pathway ontology in LaminDB#

bionty = bt.Pathway.public()
bionty
PublicOntology
Entity: Pathway
Organism: all
Source: go, 2023-05-10
#terms: 47514

📖 .df(): ontology reference table
🔎 .lookup(): autocompletion of terms
🎯 .search(): free text search of terms
✅ .validate(): strictly validate values
🧐 .inspect(): full inspection of values
👽 .standardize(): convert to standardized names
🪜 .diff(): difference between two versions
🔗 .to_pronto(): Pronto.Ontology object

Next, we register all the pathways and genes in LaminDB to finally link pathways to genes.

Register pathway terms#

To register the pathways we make use of .from_values to directly parse the annotated GO pathway ontology IDs into LaminDB.

pathway_records = bt.Pathway.from_values(go_bp_parsed.keys(), bt.Pathway.ontology_id)
ln.save(pathway_records, parents=False)  # not recursing through parents

Register gene symbols#

Similarly, we use .from_values for all Pathway associated genes to register them with LaminDB.

all_genes = {g for genes in go_bp.values() for g in genes}
gene_records = bt.Gene.from_values(all_genes, bt.Gene.symbol)
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❗ ambiguous validation in Bionty for 1082 records: 'SCARF1', 'PTEN', 'HLA-DOA', 'MED10', 'OR9G4', 'PRKACA', 'YTHDC1', 'KEL', 'RPL7A', 'BRME1', 'SCAMP3', 'RYBP', 'MRPS36', 'ZNF707', 'KCNQ1', 'NSDHL', 'GCSH', 'NOTCH4', 'PNP', 'SMARCB1', ...
did not create Gene records for 37 non-validated symbols: 'AFD1', 'AZF1', 'CCL4L1', 'DGS2', 'DUX3', 'DUX5', 'FOXL3-OT1', 'IGL', 'LOC100653049', 'LOC102723475', 'LOC102723996', 'LOC102724159', 'LOC107984156', 'LOC112268384', 'LOC122319436', 'LOC122513141', 'LOC122539214', 'LOC344967', 'MDRV', 'MTRNR2L1', ...
gene_records[:3]
[Gene(uid='421H69em2din', symbol='OR5L1', ensembl_gene_id='ENSG00000279395', ncbi_gene_ids='219437', biotype='protein_coding', description='olfactory receptor family 5 subfamily L member 1 ', synonyms='OST262', organism_id=1, public_source_id=9, created_by_id=1),
 Gene(uid='5xy1yVEJPmT4', symbol='MAP2K1', ensembl_gene_id='ENSG00000169032', ncbi_gene_ids='5604', biotype='protein_coding', description='mitogen-activated protein kinase kinase 1 ', synonyms='PRKMK1|MEK1|MAPKK1', organism_id=1, public_source_id=9, created_by_id=1),
 Gene(uid='5Eq6D8nIfAAW', symbol='RGS19', ensembl_gene_id='ENSG00000171700', ncbi_gene_ids='10287', biotype='protein_coding', description='regulator of G protein signaling 19 ', synonyms='GAIP|RGSGAIP', organism_id=1, public_source_id=9, created_by_id=1)]
ln.save(gene_records);