Brandon K Ashley, Jianye Sui, Mehdi Javanmard, Umer Hassan
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引用次数: 0
摘要
本文利用微流体阻抗细胞计,采用有监督的机器学习(ML)系统识别涂有不同厚度金属氧化物的纳米粒子群。这些颗粒在多频电场的作用下会产生独特的阻抗特征,可应用于多种多重生物传感技术。然而,目前的实验和数据处理技术无法灵敏地区分不同的金属氧化物涂层颗粒类型。在此,我们采用了各种机器学习模型,并收集了测量到的多种粒子指标。在报告的实验中,我们确定区分氧化铝涂层(10 纳米和 30 纳米)的准确率为 75%,明显高于仅观察不同微粒类型之间的单变量数据。这种方法将使 ML 模型能够以更高的精度区分此类微粒。
This article uses a supervised machine learning (ML) system for identifying groups of nanoparticles coated with metal oxides of varying thicknesses using a microfluidic impedance cytometer. These particles generate unique impedance signatures when probed with a multifrequency electric field and finds applications in enabling many multiplexed biosensing technologies. However, current experimental and data processing techniques are unable to sensitively differentiate different metal oxide coated particle types. Here, we employ various machine learning models and collect multiple particle metrics measured. In reported experiments, a 75% accuracy was determined to separate aluminum oxide coated (10nm and 30nm), which is significantly greater than observing only univariate data between different microparticle types. This approach will enable ML models to differentiate such particles with greater accuracies.