受体
计算机科学
功能(生物学)
计算生物学
高通量筛选
流式细胞术
模态(人机交互)
吞吐量
人工智能
生物信息学
生物
细胞生物学
免疫学
电信
生物化学
无线
作者
Sara Martire,X. Wang,Michele McElvain,Vivek Suryawanshi,Thomas J. Gill,Breanna DiAndreth,Wooyoung Lee,Timothy P. Riley,Hong Xu,Chawita Netirojjanakul,Alexander Kamb
摘要
Abstract Logic‐gated engineered cells are an emerging therapeutic modality that can take advantage of molecular profiles to focus medical interventions on specific tissues in the body. However, the increased complexity of these engineered systems may pose a challenge for prediction and optimization of their behavior. Here we describe the design and testing of a flow cytometry‐based screening system to rapidly select functional inhibitory receptors from a pooled library of candidate constructs. In proof‐of‐concept experiments, this approach identifies inhibitory receptors that can operate as NOT gates when paired with activating receptors. The method may be used to generate large datasets to train machine learning models to better predict and optimize the function of logic‐gated cell therapeutics.
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