Reference
Gardeux, Vincent, et al. “ Medicine: Personal Transcriptome Response to Rhinovirus”. J. Am. Med. Inform. Assoc., vol. 24, no. 6, Nov. 2017, pp. 1116–1126.
Abstract
Abstract Objective To introduce a disease prognosis framework
enabled by a robust classification scheme derived from
patient-specific transcriptomic response to stimulation.
Materials and Methods Within an illustrative case study to
predict asthma exacerbation, we designed a stimulation assay
that reveals individualized transcriptomic response to human
rhinovirus. Gene expression from peripheral blood mononuclear
cells was quantified from 23 pediatric asthmatic patients and
stimulated in vitro with human rhinovirus. Responses were
obtained via the single-subject gene set testing methodology
``N-of-1-pathways.'' The classifier was trained on a related
independent training dataset (n = 19). Novel visualizations of
personal transcriptomic responses are provided. Results Of the
23 pediatric asthmatic patients, 12 experienced recurrent
exacerbations. Our classifier, using individualized responses
and trained on an independent dataset, obtained 74% accuracy
(area under the receiver operating curve of 71%; 2-sided P =
.039). Conventional classifiers using messenger RNA (mRNA)
expression within the viral-exposed samples were unsuccessful
(all patients predicted to have recurrent exacerbations;
accuracy of 52%). Discussion Prognosis based on single time
point, static mRNA expression alone neglects the importance of
dynamic genome-by-environment interplay in phenotypic
presentation. Individualized transcriptomic response quantified
at the pathway (gene sets) level reveals interpretable signals
related to clinical outcomes. Conclusion The proposed framework
provides an innovative approach to precision medicine. We show
that quantifying personal pathway–level transcriptomic response
to a disease-relevant environmental challenge predicts disease
progression. This genome-by-environment interaction assay offers
a noninvasive opportunity to translate omics data to clinical
practice by improving the ability to predict disease
exacerbation and increasing the potential to produce more
effective treatment decisions.