Department of Electrical and Computer Engineering, Rutgers University, Piscataway, NJ 08854, USA.
Department of Genetics, Yale University School of Medicine, 333 Cedar Street, New Haven, CT 06520, USA.
Biosensors (Basel). 2023 Feb 24;13(3):316. doi: 10.3390/bios13030316.
Determining nucleic acid concentrations in a sample is an important step prior to proceeding with downstream analysis in molecular diagnostics. Given the need for testing DNA amounts and its purity in many samples, including in samples with very small input DNA, there is utility of novel machine learning approaches for accurate and high-throughput DNA quantification. Here, we demonstrated the ability of a neural network to predict DNA amounts coupled to paramagnetic beads. To this end, a custom-made microfluidic chip is applied to detect DNA molecules bound to beads by measuring the impedance peak response (IPR) at multiple frequencies. We leveraged electrical measurements including the frequency and imaginary and real parts of the peak intensity within a microfluidic channel as the input of deep learning models to predict DNA concentration. Specifically, 10 different deep learning architectures are examined. The results of the proposed regression model indicate that an R_Squared of 97% with a slope of 0.68 is achievable. Consequently, machine learning models can be a suitable, fast, and accurate method to measure nucleic acid concentration in a sample. The results presented in this study demonstrate the ability of the proposed neural network to use the information embedded in raw impedance data to predict the amount of DNA concentration.
在进行分子诊断的下游分析之前,确定样品中的核酸浓度是一个重要步骤。鉴于需要测试许多样本中的 DNA 量及其纯度,包括输入 DNA 量非常小的样本,因此新型机器学习方法在准确和高通量 DNA 定量方面具有实用性。在这里,我们展示了神经网络预测与顺磁珠偶联的 DNA 量的能力。为此,应用定制的微流控芯片通过测量多个频率下的阻抗峰响应 (IPR) 来检测与珠结合的 DNA 分子。我们利用包括微流道内的频率以及峰强度的虚部和实部在内的电测量作为深度学习模型的输入来预测 DNA 浓度。具体来说,检查了 10 种不同的深度学习架构。所提出的回归模型的结果表明,实现了 97%的 R_Squared 和 0.68 的斜率。因此,机器学习模型可以成为测量样品中核酸浓度的一种合适、快速和准确的方法。本研究中的结果表明,所提出的神经网络能够利用原始阻抗数据中嵌入的信息来预测 DNA 浓度的量。