S. Martire, X. Wang, M. McElvain, V. Suryawanshi, T. Gill, B. DiAndreth, W. Lee, T. P. Riley, H. Xu, C. Netirojjanakul, A. Kamb
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引用次数: 0
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.
逻辑门控工程细胞是一种新兴的治疗模式,可利用分子特征将医疗干预集中于体内的特定组织。然而,这些工程系统复杂性的增加可能会给预测和优化其行为带来挑战。在此,我们介绍了基于流式细胞仪的筛选系统的设计和测试,该系统可从候选构建体的集合库中快速筛选出功能性抑制受体。在概念验证实验中,这种方法识别出了与激活受体配对后可作为 NOT 门操作的抑制性受体。该方法可用于生成大型数据集,以训练机器学习模型,从而更好地预测和优化逻辑门控细胞疗法的功能。
期刊介绍:
Cytometry Part A, the journal of quantitative single-cell analysis, features original research reports and reviews of innovative scientific studies employing quantitative single-cell measurement, separation, manipulation, and modeling techniques, as well as original articles on mechanisms of molecular and cellular functions obtained by cytometry techniques.
The journal welcomes submissions from multiple research fields that fully embrace the study of the cytome:
Biomedical Instrumentation Engineering
Biophotonics
Bioinformatics
Cell Biology
Computational Biology
Data Science
Immunology
Parasitology
Microbiology
Neuroscience
Cancer
Stem Cells
Tissue Regeneration.