@article{4557, keywords = {Humans, Virus Diseases, COVID-19, SARS-CoV-2}, author = {Antonio Cappuccio and Daniel Chawla and Xi Chen and Aliza Rubenstein and Wan Cheng and Weiguang Mao and Thomas Burke and Ephraim Tsalik and Elizabeth Petzold and Ricardo Henao and Micah McClain and Christopher Woods and Maria Chikina and Olga Troyanskaya and Stuart Sealfon and Steven Kleinstein and Elena Zaslavsky}, title = {Multi-objective optimization identifies a specific and interpretable COVID-19 host response signature.}, abstract = {
The identification of a COVID-19 host response signature in blood can increase the understanding of SARS-CoV-2 pathogenesis and improve diagnostic tools. Applying a multi-objective optimization framework to both massive public and new multi-omics data, we identified a COVID-19 signature regulated at both transcriptional and epigenetic levels. We validated the signature{\textquoteright}s robustness in multiple independent COVID-19 cohorts. Using public data from 8,630 subjects and 53 conditions, we demonstrated no cross-reactivity with other viral and bacterial infections, COVID-19 comorbidities, or confounders. In contrast, previously reported COVID-19 signatures were associated with significant cross-reactivity. The signature{\textquoteright}s interpretation, based on cell-type deconvolution and single-cell data analysis, revealed prominent yet complementary roles for plasmablasts and memory T~cells. Although the signal from plasmablasts mediated COVID-19 detection, the signal from memory T~cells controlled against cross-reactivity with other viral infections. This framework identified a robust, interpretable COVID-19 signature and is broadly applicable in other disease contexts. A record of this paper{\textquoteright}s transparent peer review process is included in the supplemental information.
}, year = {2022}, journal = {Cell Syst}, volume = {13}, pages = {989-1001.e8}, month = {2022 Dec 21}, issn = {2405-4720}, doi = {10.1016/j.cels.2022.11.008}, language = {eng}, }