ABSTRACT
Automation and quality control (QC) are critical in manufacturing safe and effective cell and gene therapy products. However, current QC methods, reliant on molecular staining, pose difficulty in in-line testing and can increase manufacturing costs. Here we demonstrate the potential of using label-free ghost cytometry (LF-GC), a machine learning-driven, multidimensional, high-content, and high-throughput flow cytometry approach, in various stages of the cell therapy manufacturing processes. LF-GC accurately quantified cell count and viability of human peripheral blood mononuclear cells (PBMCs) and identified non-apoptotic live cells and early apoptotic/dead cells in PBMCs, T cells and non-T cells in white blood cells (WBCs), activated T cells and quiescent T cells in PBMCs, and particulate impurities in PBMCs. The data support that LF-GC is a non-destructive label-free cell analytical method that can be used to monitor cell numbers, assess viability, identify specific cell subsets or phenotypic states, and remove impurities during cell therapy manufacturing. Thus, LF-GC holds the potential to enable full automation in the manufacturing of cell therapy products with reduced cost and increased efficiency.
Competing Interest Statement
S.O. is the founder and shareholder of ThinkCyte Inc., a company engaged in the development of an ultrafast imaging cell sorter. K.T., K.T., K.W., H.N., Y.Y., S.A., E.M., Y.O. and K.N. have shares of stock options from ThinkCyte Inc. K.T., K.T., K.W., H.N., Y.Y., S.A., E.M., Y.O. and K.N. are employees; H.O. and K.S. are former employees; and S.O. is a board member of ThinkCyte Inc. K.T., K.T., K.N., K.S. and S.O. filed patent applications related to the LF-GC method. S.T. and H.Y. are employees of Astellas Pharma, Inc.
Footnotes
Abstract has been corrected.