The Bradley Department of Electrical and Computer Engineering , Virginia Tech , Blacksburg , Virginia 24061 , United States.
Howard University Hospital, Providence Hospital, Washington, DC 20017 , United States.
ACS Sens. 2018 Aug 24;3(8):1510-1521. doi: 10.1021/acssensors.8b00301. Epub 2018 Jul 18.
A high-throughput multiconstriction microfluidic channels device can distinguish human breast cancer cell lines (MDA-MB-231, HCC-1806, MCF-7) from immortalized breast cells (MCF-10A) with a confidence level of ∼81-85% at a rate of 50-70 cells/min based on velocity increment differences through multiconstriction channels aligned in series. The results are likely related to the deformability differences between nonmalignant and malignant breast cells. The data were analyzed by the methods/algorithms of Ridge, nonnegative garrote on kernel machine (NGK), and Lasso using high-dimensional variables, including the cell sizes, velocities, and velocity increments. In kernel learning based methods, the prediction values of 10-fold cross-validations are used to represent the difference between two groups of data, where a value of 100% indicates the two groups are completely distinct and identifiable. The prediction value is used to represent the difference between two groups using the established algorithm classifier from high-dimensional variables. These methods were applied to heterogeneous cell populations prepared using primary tumor and adjacent normal tissue obtained from two patients. Primary breast cancer cells were distinguished from patient-matched adjacent normal cells with a prediction ratio of 70.07%-75.96% by the NGK method. Thus, this high-throughput multiconstriction microfluidic device together with the kernel learning method can be used to perturb and analyze the biomechanical status of cells obtained from small primary tumor biopsy samples. The resultant biomechanical velocity signatures identify malignancy and provide a new marker for evaluation in risk assessment.
高通量多收缩微流控通道装置能够以 50-70 个/分钟的速度,基于通过串联多收缩通道的速度增量差异,以约 81-85%的置信水平区分人乳腺癌细胞系(MDA-MB-231、HCC-1806、MCF-7)与永生化乳腺细胞(MCF-10A)。结果可能与非恶性和恶性乳腺细胞之间的变形能力差异有关。数据通过基于核机器的 Ridge、非负套索(NGK)和 Lasso 等高维变量的方法/算法进行分析,包括细胞大小、速度和速度增量。在基于核学习的方法中,使用 10 倍交叉验证的预测值来表示两组数据之间的差异,其中 100%的值表示两组数据完全不同且可识别。使用建立的算法分类器从高维变量中使用预测值来表示两组之间的差异。这些方法应用于使用来自两位患者的原发性肿瘤和相邻正常组织制备的异质细胞群体。原发性乳腺癌细胞与患者匹配的相邻正常细胞通过 NGK 方法区分的预测率为 70.07%-75.96%。因此,这种高通量多收缩微流控装置与核学习方法一起可用于扰动和分析从小型原发性肿瘤活检样本获得的细胞的生物力学状态。所得的生物力学速度特征可识别恶性肿瘤,并提供用于风险评估中评估的新标志物。