Publication: Differential Treatments Based on Drug-induced Gene Expression Signatures and Longitudinal Systemic Lupus Erythematosus Stratification.
Loading...
Identifiers
Date
2019-10-29
Authors
Toro-Domínguez, Daniel
Lopez-Domínguez, Raúl
García Moreno, Adrián
Villatoro-García, Juan A
Martorell-Marugán, Jordi
Goldman, Daniel
Petri, Michelle
Wojdyla, Daniel
Pons-Estel, Bernardo A
Isenberg, David
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Systemic lupus erythematosus (SLE) is a heterogeneous disease with unpredictable patterns of activity. Patients with similar activity levels may have different prognosis and molecular abnormalities. In this study, we aimed to measure the main differences in drug-induced gene expression signatures across SLE patients and to evaluate the potential for clinical data to build a machine learning classifier able to predict the SLE subset for individual patients. SLE transcriptomic data from two cohorts were compared with drug-induced gene signatures from the CLUE database to compute a connectivity score that reflects the capability of a drug to revert the patient signatures. Patient stratification based on drug connectivity scores revealed robust clusters of SLE patients identical to the clusters previously obtained through longitudinal gene expression data, implying that differential treatment depends on the cluster to which patients belongs. The best drug candidates found, mTOR inhibitors or those reducing oxidative stress, showed stronger cluster specificity. We report that drug patterns for reverting disease gene expression follow the cell-specificity of the disease clusters. We used 2 cohorts to train and test a logistic regression model that we employed to classify patients from 3 independent cohorts into the SLE subsets and provide a clinically useful model to predict subset assignment and drug efficacy.
Description
MeSH Terms
Case-Control Studies
Cluster Analysis
Cohort Studies
Female
Humans
Longitudinal Studies
Lupus Erythematosus, Systemic
Male
Severity of Illness Index
Transcriptome
Cluster Analysis
Cohort Studies
Female
Humans
Longitudinal Studies
Lupus Erythematosus, Systemic
Male
Severity of Illness Index
Transcriptome