Chen Claire Lifan, Mahjoubfar Ata, Tai Li-Chia, Blaby Ian K, Huang Allen, Niazi Kayvan Reza, Jalali Bahram
Department of Electrical Engineering, University of California, Los Angeles, California 90095, USA.
California NanoSystems Institute, Los Angeles, California 90095, USA.
Sci Rep. 2016 Mar 15;6:21471. doi: 10.1038/srep21471.
Label-free cell analysis is essential to personalized genomics, cancer diagnostics, and drug development as it avoids adverse effects of staining reagents on cellular viability and cell signaling. However, currently available label-free cell assays mostly rely only on a single feature and lack sufficient differentiation. Also, the sample size analyzed by these assays is limited due to their low throughput. Here, we integrate feature extraction and deep learning with high-throughput quantitative imaging enabled by photonic time stretch, achieving record high accuracy in label-free cell classification. Our system captures quantitative optical phase and intensity images and extracts multiple biophysical features of individual cells. These biophysical measurements form a hyperdimensional feature space in which supervised learning is performed for cell classification. We compare various learning algorithms including artificial neural network, support vector machine, logistic regression, and a novel deep learning pipeline, which adopts global optimization of receiver operating characteristics. As a validation of the enhanced sensitivity and specificity of our system, we show classification of white blood T-cells against colon cancer cells, as well as lipid accumulating algal strains for biofuel production. This system opens up a new path to data-driven phenotypic diagnosis and better understanding of the heterogeneous gene expressions in cells.
无标记细胞分析对于个性化基因组学、癌症诊断和药物开发至关重要,因为它避免了染色试剂对细胞活力和细胞信号传导的不利影响。然而,目前可用的无标记细胞检测大多仅依赖单一特征,缺乏足够的区分能力。此外,由于这些检测的通量较低,所分析的样本量有限。在此,我们将特征提取和深度学习与光子时间拉伸实现的高通量定量成像相结合,在无标记细胞分类中达到了创纪录的高精度。我们的系统捕获定量光学相位和强度图像,并提取单个细胞的多种生物物理特征。这些生物物理测量形成一个超维特征空间,在其中进行监督学习以进行细胞分类。我们比较了各种学习算法,包括人工神经网络、支持向量机、逻辑回归以及一种采用全局优化接收器操作特性的新型深度学习管道。作为对我们系统增强的灵敏度和特异性的验证,我们展示了针对结肠癌细胞的白细胞T细胞分类,以及用于生物燃料生产的脂质积累藻类菌株分类。该系统为数据驱动的表型诊断以及更好地理解细胞中的异质基因表达开辟了一条新途径。