Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient

Abstract Background The last decade has seen a major increase in the availability of genomic data. This includes expert-curated databases that describe the biological activity of genes, as well as high-throughput assays that measure gene expression in bulk tissue and single cells. Integrating these...

Full description

Bibliographic Details
Main Authors: Haripriya Harikumar, Thomas P. Quinn, Santu Rana, Sunil Gupta, Svetha Venkatesh
Format: Article
Language:English
Published: BMC 2021-08-01
Series:BioData Mining
Online Access:https://doi.org/10.1186/s13040-021-00263-w
id doaj-862b0a4f44314d8e9aded21e456593da
record_format Article
spelling doaj-862b0a4f44314d8e9aded21e456593da2021-08-08T11:04:20ZengBMCBioData Mining1756-03812021-08-0114111510.1186/s13040-021-00263-wPersonalized single-cell networks: a framework to predict the response of any gene to any drug for any patientHaripriya Harikumar0Thomas P. Quinn1Santu Rana2Sunil Gupta3Svetha Venkatesh4Applied Artificial Intelligence Institute, Deakin UniversityApplied Artificial Intelligence Institute, Deakin UniversityApplied Artificial Intelligence Institute, Deakin UniversityApplied Artificial Intelligence Institute, Deakin UniversityApplied Artificial Intelligence Institute, Deakin UniversityAbstract Background The last decade has seen a major increase in the availability of genomic data. This includes expert-curated databases that describe the biological activity of genes, as well as high-throughput assays that measure gene expression in bulk tissue and single cells. Integrating these heterogeneous data sources can generate new hypotheses about biological systems. Our primary objective is to combine population-level drug-response data with patient-level single-cell expression data to predict how any gene will respond to any drug for any patient. Methods We take 2 approaches to benchmarking a “dual-channel” random walk with restart (RWR) for data integration. First, we evaluate how well RWR can predict known gene functions from single-cell gene co-expression networks. Second, we evaluate how well RWR can predict known drug responses from individual cell networks. We then present two exploratory applications. In the first application, we combine the Gene Ontology database with glioblastoma single cells from 5 individual patients to identify genes whose functions differ between cancers. In the second application, we combine the LINCS drug-response database with the same glioblastoma data to identify genes that may exhibit patient-specific drug responses. Conclusions Our manuscript introduces two innovations to the integration of heterogeneous biological data. First, we use a “dual-channel” method to predict up-regulation and down-regulation separately. Second, we use individualized single-cell gene co-expression networks to make personalized predictions. These innovations let us predict gene function and drug response for individual patients. Taken together, our work shows promise that single-cell co-expression data could be combined in heterogeneous information networks to facilitate precision medicine.https://doi.org/10.1186/s13040-021-00263-w
collection DOAJ
language English
format Article
sources DOAJ
author Haripriya Harikumar
Thomas P. Quinn
Santu Rana
Sunil Gupta
Svetha Venkatesh
spellingShingle Haripriya Harikumar
Thomas P. Quinn
Santu Rana
Sunil Gupta
Svetha Venkatesh
Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
BioData Mining
author_facet Haripriya Harikumar
Thomas P. Quinn
Santu Rana
Sunil Gupta
Svetha Venkatesh
author_sort Haripriya Harikumar
title Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
title_short Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
title_full Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
title_fullStr Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
title_full_unstemmed Personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
title_sort personalized single-cell networks: a framework to predict the response of any gene to any drug for any patient
publisher BMC
series BioData Mining
issn 1756-0381
publishDate 2021-08-01
description Abstract Background The last decade has seen a major increase in the availability of genomic data. This includes expert-curated databases that describe the biological activity of genes, as well as high-throughput assays that measure gene expression in bulk tissue and single cells. Integrating these heterogeneous data sources can generate new hypotheses about biological systems. Our primary objective is to combine population-level drug-response data with patient-level single-cell expression data to predict how any gene will respond to any drug for any patient. Methods We take 2 approaches to benchmarking a “dual-channel” random walk with restart (RWR) for data integration. First, we evaluate how well RWR can predict known gene functions from single-cell gene co-expression networks. Second, we evaluate how well RWR can predict known drug responses from individual cell networks. We then present two exploratory applications. In the first application, we combine the Gene Ontology database with glioblastoma single cells from 5 individual patients to identify genes whose functions differ between cancers. In the second application, we combine the LINCS drug-response database with the same glioblastoma data to identify genes that may exhibit patient-specific drug responses. Conclusions Our manuscript introduces two innovations to the integration of heterogeneous biological data. First, we use a “dual-channel” method to predict up-regulation and down-regulation separately. Second, we use individualized single-cell gene co-expression networks to make personalized predictions. These innovations let us predict gene function and drug response for individual patients. Taken together, our work shows promise that single-cell co-expression data could be combined in heterogeneous information networks to facilitate precision medicine.
url https://doi.org/10.1186/s13040-021-00263-w
work_keys_str_mv AT haripriyaharikumar personalizedsinglecellnetworksaframeworktopredicttheresponseofanygenetoanydrugforanypatient
AT thomaspquinn personalizedsinglecellnetworksaframeworktopredicttheresponseofanygenetoanydrugforanypatient
AT santurana personalizedsinglecellnetworksaframeworktopredicttheresponseofanygenetoanydrugforanypatient
AT sunilgupta personalizedsinglecellnetworksaframeworktopredicttheresponseofanygenetoanydrugforanypatient
AT svethavenkatesh personalizedsinglecellnetworksaframeworktopredicttheresponseofanygenetoanydrugforanypatient
_version_ 1721216289691664384