@ARTICLE{10.3389/fimmu.2021.636289, AUTHOR={Clarke, Daniel J. B. and Rebman, Alison W. and Bailey, Allison and Wojciechowicz, Megan L. and Jenkins, Sherry L. and Evangelista, John E. and Danieletto, Matteo and Fan, Jinshui and Eshoo, Mark W. and Mosel, Michael R. and Robinson, William and Ramadoss, Nitya and Bobe, Jason and Soloski, Mark J. and Aucott, John N. and Ma'ayan, Avi}, TITLE={Predicting Lyme Disease From Patients' Peripheral Blood Mononuclear Cells Profiled With RNA-Sequencing}, JOURNAL={Frontiers in Immunology}, VOLUME={12}, YEAR={2021}, URL={https://www.frontiersin.org/articles/10.3389/fimmu.2021.636289}, DOI={10.3389/fimmu.2021.636289}, ISSN={1664-3224}, ABSTRACT={Although widely prevalent, Lyme disease is still under-diagnosed and misunderstood. Here we followed 73 acute Lyme disease patients and uninfected controls over a period of a year. At each visit, RNA-sequencing was applied to profile patients' peripheral blood mononuclear cells in addition to extensive clinical phenotyping. Based on the projection of the RNA-seq data into lower dimensions, we observe that the cases are separated from controls, and almost all cases never return to cluster with the controls over time. Enrichment analysis of the differentially expressed genes between clusters identifies up-regulation of immune response genes. This observation is also supported by deconvolution analysis to identify the changes in cell type composition due to Lyme disease infection. Importantly, we developed several machine learning classifiers that attempt to perform various Lyme disease classifications. We show that Lyme patients can be distinguished from the controls as well as from COVID-19 patients, but classification was not successful in distinguishing those patients with early Lyme disease cases that would advance to develop post-treatment persistent symptoms.} }