Department of Biomedical Engineering, SRM Institute of Science & Technology, Tamil Nadu, 603203, India.
J Breath Res. 2019 May 1;13(3):036008. doi: 10.1088/1752-7163/ab09ae.
Several breath analysis studies have suggested a correlation between blood glucose (BG) levels and breath acetone, indicating acetone as a primary biomarker in exhaled breath for diabetes diagnosis. Herein, we have (i) fabricated and validated graphene-based chemi-resistive sensors for selective and sensitive detection of acetone, (ii) performed offline breath analysis by a static gas sensing set-up to acquire olfactory signals, and (iii) developed an LED-based portable on/off binary e-nose system for pre-screening diabetes through online analysis. The fabricated sensors showed selective detection for acetone with high sensitivity (5.66 for 1 ppm acetone vapor) and fast response and recovery times (10 s and 12 s) at low concentrations. The sensor responses of end tidal fractional breath (collected in Tedlar bags) in the fasting and postprandial conditions were compared with BG levels and glycated hemoglobin (HbA1c) levels taken at the same time in 30 volunteers (13 healthy and 17 diabetic subjects). The mean sensor responses of the diabetic subjects as obtained by offline analysis were 1.1 times higher than those of the healthy subjects. The optimal regression equation framed with the significant correlating variables for HbA1c estimation achieved an accuracy of 66.67%. The online breath analysis by on/off binary prototype exhibited an accuracy of 60.51%. Though there exists a minimal uncertainty in classification, the on/off type portable prototype is easy to operate, gives a quicker response with a refresh/recovery rate of 19 s and can be used for preliminary diagnosis, and can be used for preliminary diagnosis. This inexpensive sensor technology may revolutionize personalized medicine in the near future and greatly benefit the underprivileged.
几项呼吸分析研究表明,血糖(BG)水平与呼吸丙酮之间存在相关性,表明丙酮是用于糖尿病诊断的呼气生物标志物。在此,我们:(i)制造和验证了基于石墨烯的化学电阻传感器,用于选择性和灵敏地检测丙酮;(ii)通过静态气体感应装置进行离线呼吸分析,以获取嗅觉信号;(iii)开发了基于 LED 的便携式开/关二进制电子鼻系统,通过在线分析进行糖尿病预筛选。所制造的传感器对丙酮具有选择性检测,具有高灵敏度(对于 1 ppm 丙酮蒸气为 5.66)和快速的响应和恢复时间(在低浓度下为 10 s 和 12 s)。在 30 名志愿者(13 名健康和 17 名糖尿病患者)中,同时进行了空腹和餐后条件下的终末潮气分数呼吸(在 Tedlar 袋中收集)的传感器响应与同时进行的 BG 水平和糖化血红蛋白(HbA1c)水平的比较。通过离线分析获得的糖尿病患者的平均传感器响应比健康受试者高 1.1 倍。用于 HbA1c 估计的最佳回归方程,通过选择显著相关的变量构建,达到了 66.67%的准确性。通过开/关二进制原型进行的在线呼吸分析显示出 60.51%的准确性。尽管分类存在最小的不确定性,但这种开/关型便携式原型易于操作,响应速度更快,刷新/恢复率为 19 s,可用于初步诊断,可用于初步诊断。这种廉价的传感器技术可能会在不久的将来彻底改变个性化医疗,并使贫困人群受益匪浅。