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Using flow cytometry and multistage machine learning to discover label-free signatures of algal lipid accumulation

机译:使用流式细胞仪和多级机器学习发现藻类脂质累积的无标签签名

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Most applications of flow cytometry or cell sorting rely on the conjugation of fluorescent dyes to specific biomarkers. However, labeled biomarkers are not always available, they can be costly, and they may disrupt natural cell behavior. Label-free quantification based upon machine learning approaches could help correct these issues, but label replacement strategies can be very difficult to discover when applied labels or other modifications in measurements inadvertently modify intrinsic cell properties. Here we demonstrate a new, but simple approach based upon feature selection and linear regression analyses to integrate statistical information collected from both labeled and unlabeled cell populations and to identify models for accurate label-free single-cell quantification. We verify the method's accuracy to predict lipid content in algal cells (Picochlorum soloecismus) during a nitrogen starvation and lipid accumulation time course. Our general approach is expected to improve label-free single-cell analysis for other organisms or pathways, where biomarkers are inconvenient, expensive, or disruptive to downstream cellular processes.
机译:流式细胞术或细胞分选依赖于荧光染料与特定生物标志物的缀合的大多数应用。然而,标记的生物标志物并不总是可用的,它们可能是昂贵的,并且它们可能会破坏自然细胞行为。基于机器学习方法的无标签量化可以有助于纠正这些问题,但在施用标签或测量中的其他修改时,可以非常难以发现标签更换策略无意中修改内在细胞特性。在这里,我们展示了一种基于特征选择和线性回归分析的新的但简单的方法,以集成从标记和未标记的小区群中收集的统计信息,并识别用于准确的无标签单单元量化的模型。在氮饥饿和脂质累积时间过程中,我们验证了方法的准确性,以预测藻类细胞(皮氯肌肌肌)中的脂质含量。我们的一般方法预计将改善其他生物或途径的无标记单细胞分析,其中生物标志物不方便,昂贵,或破坏到下游细胞过程。

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