Author:
Pavillon N.,Lim E. L.,Tanaka A.,Hori S.,Sakaguchi S.,Smith N. I.
Abstract
AbstractRegulatory T cells (Tregs) are a type of lymphocyte that is key to maintaining immunological self-tolerance, with great potential for therapeutic applications. A long-standing challenge in the study of Tregs is that the only way they can be unambiguously identified is by using invasive intracellular markers. Practically, the purification of live Tregs is often compromised by other cell types since only surrogate surface markers can be used. We present here a non-invasive method based on Raman spectroscopy that can detect live unaltered Tregs by coupling optical detection with machine learning implemented with regularized logistic regression. We demonstrate the validity of this approach first on murine cells expressing a surface Foxp3 reporter, and then on peripheral blood human T cells. By including methods to account for sample purity, we could generate reliable models that can identify Tregs with an accuracy higher than 80%, which is already comparable with typical sorting purities achievable with standard methods that use proxy surface markers. We could also demonstrate that it is possible to reliably detect Tregs in fully independent donors that are not part of the model training, a key milestone for practical applications.
Funder
Japan Society for the Promotion of Science
IFReC Advanced Postdoctoral Fellowship research grant
Japan Agency for Medical Research and Development
Ministry of Education, Sports, and Culture of Japan
Osaka University Photonics Center
Uehara Foundation
Publisher
Springer Science and Business Media LLC