Across clinical trials, T cell expansion and persistence following adoptive cell transfer (ACT) have correlated with superior patient outcomes. Herein, we undertook a pan-cancer analysis to identify actionable ligand-receptor pairs capable of compromising T cell durability following ACT. We discovered that FASLG, the gene encoding the apoptosis-inducing ligand FasL, is overexpressed within the majority of human tumor microenvironments (TMEs). Further, we uncovered that Fas, the receptor for FasL, is highly expressed on patient-derived T cells used for clinical ACT. We hypothesized that a cognate Fas-FasL interaction within the TME might limit both T cell persistence and antitumor efficacy. We discovered that genetic engineering of Fas variants impaired in the ability to bind FADD functioned as dominant negative receptors (DNRs), preventing FasL-induced apoptosis in Fas-competent T cells. T cells coengineered with a Fas DNR and either a T cell receptor or chimeric antigen receptor exhibited enhanced persistence following ACT, resulting in superior antitumor efficacy against established solid and hematologic cancers. Despite increased longevity, Fas DNR–engineered T cells did not undergo aberrant expansion or mediate autoimmunity. Thus, T cell–intrinsic disruption of Fas signaling through genetic engineering represents a potentially universal strategy to enhance ACT efficacy across a broad range of human malignancies.
Tori N. Yamamoto, Ping-Hsien Lee, Suman K. Vodnala, Devikala Gurusamy, Rigel J. Kishton, Zhiya Yu, Arash Eidizadeh, Robert Eil, Jessica Fioravanti, Luca Gattinoni, James N. Kochenderfer, Terry J. Fry, Bulent Arman Aksoy, Jeffrey E. Hammerbacher, Anthony C. Cruz, Richard M. Siegel, Nicholas P. Restifo, Christopher A. Klebanoff
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