Department of Bioengineering, University of Illinois at Urbana-Champaign, 1270 Digital Computer Laboratory, 1304 W. Springfield Ave, Urbana, IL 61801, USA.
Department of Statistics, University of Illinois at Urbana Champaign, Illini Hall, 725S Wright St. 101, 61820, Champaign, IL, USA.
Lab Chip. 2018 Apr 17;18(8):1231-1240. doi: 10.1039/C8LC00108A.
Sepsis, as a leading cause of death worldwide, relies on systemic inflammatory response syndrome (SIRS) criteria for its diagnosis. SIRS is highly non-specific as it relies on monitoring of patients' vitals for sepsis diagnosis, which are known to change with many confounding factors. Changes in leukocyte counts and CD64 expression levels are known specific biomarkers of pro-inflammatory host response at the onset of sepsis. Recently, we have developed a biosensor chip that can enumerate the leukocyte counts and quantify the neutrophil CD64 expression levels from a drop of blood. We were able to show improved sepsis diagnosis and prognosis in clinical studies by measuring these parameters during different times of the patients' stay in hospital. In this paper, we investigated the rate of cell capture with CD64 expression levels and used this in a multivariate computational model using artificial neural networks (ANNs) and showed improved accuracy of quantifying CD64 expression levels from the biosensor (n = 106 whole blood experiments). We found a high coefficient of determination and low error between biosensor- and flow cytometry-based neutrophil CD64 expression levels using multiple ANN training methods in comparison to those of univariate regression commonly employed. This approach can find many applications in biosensor data analytics by utilizing multiple features of the biosensor's data for output determination.
败血症是全球主要的死亡原因,其诊断依赖于全身炎症反应综合征(SIRS)标准。SIRS 高度非特异性,因为它依赖于监测患者的生命体征来诊断败血症,而众所周知,这些生命体征会因许多混杂因素而发生变化。白细胞计数和 CD64 表达水平的变化是败血症发病时促炎宿主反应的特异性生物标志物。最近,我们开发了一种生物传感器芯片,可从一滴血中计数白细胞并定量中性粒细胞 CD64 的表达水平。通过在患者住院期间的不同时间测量这些参数,我们在临床研究中能够提高败血症的诊断和预后。在本文中,我们研究了细胞捕获与 CD64 表达水平的比率,并使用人工神经网络 (ANN) 的多元计算模型对此进行了研究,结果表明,该模型可提高生物传感器定量 CD64 表达水平的准确性(n = 106 次全血实验)。与常用的单变量回归相比,我们发现使用多种 ANN 训练方法,生物传感器和流式细胞术之间的中性粒细胞 CD64 表达水平具有较高的决定系数和较低的误差。这种方法可以通过利用生物传感器数据的多个特征来确定输出,从而在生物传感器数据分析中找到许多应用。