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", "text/html": [ "
" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "## Path to your ENSEMBL GTF file, counts matrix file, and metadata file\n", "ensembl_gtf_path = \"../../tests/test_data/Homo_sapiens_chr21_and_Y.GRCh38.110.gtf\"\n", "counts_matrix_path = \"../../tests/test_data/counts_matrix_chr21_and_Y.tsv\"\n", "metadata_path = \"../../tests/test_data/sample_metadata.tsv\"\n", "\n", "\n", "## Read ENSEMBL GTF and counts matrix with metadata and normalization\n", "annotation = RNApy.read_ensembl_gtf(ensembl_gtf_path)\n", "counts_matrix = RNApy.read_expression_matrix(expression_matrix_path=counts_matrix_path,\n", " metadata_path=metadata_path,\n", " cpm_normalization=True, relative_abundance=True)\n", "\n", "\n", "## Filter APP gene and keep only top 5 expressed transcripts\n", "app_annotation, app_expresison_matrix = RNApy.gene_filtering(annotation=annotation, expression_matrix=counts_matrix, target_gene=\"APP\",\n", " order_by_expression=True, order_by_expression_column=\"counts\",\n", " keep_top_expressed_transcripts=5)\n", "\n", "## Rescale introns\n", "app_annotation = RNApy.shorten_gaps(app_annotation)\n", "\n", "\n", "## Create traces without annotation\n", "traces = RNApy.make_traces(expression_matrix=app_expresison_matrix, \n", " x_start=\"rescaled_start\", x_end=\"rescaled_end\",\n", " y='transcript_id', hover_start=\"start\", hover_end=\"end\",\n", " expression_columns=[\"counts\", \"CPM\", \"relative_abundance\"],\n", " expression_hue=\"AD status\", marker_size=3, arrow_size=7)\n", "\n", "## Make figure only with RNA isoform expression plots\n", "fig = RNApy.make_plot(traces=traces, subplot_titles=[\"Counts\", \"CPM\", \"Relative Abundance\"], \n", " width=1200, height=500, boxgap=0.1, boxgroupgap=0.5)\n", "\n", "## Show figure\n", "fig.show()\n" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Notes:\n", "\n", "You can click on the legend items to make figure elements appear and disappear.\n", "\n", "The legend title will get grayed out when clicking on the first legend item. I could not find a workaround for that with the current plotly release (version 5).\n", "\n", "The hovering for exons and CDS works best if you hover your mouse over the corners of the CDS/exon boxes." ] } ], "metadata": { "kernelspec": { "display_name": "Python 3 (ipykernel)", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.9.12" } }, "nbformat": 4, "nbformat_minor": 4 }