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Predicting and controlling the reactivity of immune cell populations against cancer. | LitMetric

AI Article Synopsis

  • Heterogeneous cell populations, like tumor-infiltrating lymphocytes (TILs), interact in a network that influences their ability to respond to tumors, but how this network works is not well understood.
  • Researchers analyzed TIL compositions from 27 metastatic melanoma patients and developed a model that accurately predicts their reactivity based on certain subpopulations.
  • The study also demonstrated that by adjusting specific subpopulations within TILs, they could enhance anti-tumor responses in previously nonreactive cells, suggesting a new method for improving cancer treatments.

Article Abstract

Heterogeneous cell populations form an interconnected network that determine their collective output. One example of such a heterogeneous immune population is tumor-infiltrating lymphocytes (TILs), whose output can be measured in terms of its reactivity against tumors. While the degree of reactivity varies considerably between different TILs, ranging from null to a potent response, the underlying network that governs the reactivity is poorly understood. Here, we asked whether one can predict and even control this reactivity. To address this we measured the subpopulation compositions of 91 TILs surgically removed from 27 metastatic melanoma patients. Despite the large number of subpopulations compositions, we were able to computationally extract a simple set of subpopulation-based rules that accurately predict the degree of reactivity. This raised the conjecture of whether one could control reactivity of TILs by manipulating their subpopulation composition. Remarkably, by rationally enriching and depleting selected subsets of subpopulations, we were able to restore anti-tumor reactivity to nonreactive TILs. Altogether, this work describes a general framework for predicting and controlling the output of a cell mixture.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC2683719PMC
http://dx.doi.org/10.1038/msb.2009.15DOI Listing

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