Department of Chemical Engineering and Russell Berrie Nanotechnology Institute, Technion-Israel Institute of Technology , Haifa 3200003, Israel.
Department of Chemical Engineering, Complutense University of Madrid , Madrid 28040, Spain.
ACS Nano. 2016 Jul 26;10(7):7047-57. doi: 10.1021/acsnano.6b03127. Epub 2016 Jul 14.
Two of the biggest challenges in medicine today are the need to detect diseases in a noninvasive manner and to differentiate between patients using a single diagnostic tool. The current study targets these two challenges by developing a molecularly modified silicon nanowire field effect transistor (SiNW FET) and showing its use in the detection and classification of many disease breathprints (lung cancer, gastric cancer, asthma, and chronic obstructive pulmonary disease). The fabricated SiNW FETs are characterized and optimized based on a training set that correlate their sensitivity and selectivity toward volatile organic compounds (VOCs) linked with the various disease breathprints. The best sensors obtained in the training set are then examined under real-world clinical conditions, using breath samples from 374 subjects. Analysis of the clinical samples show that the optimized SiNW FETs can detect and discriminate between almost all binary comparisons of the diseases under examination with >80% accuracy. Overall, this approach has the potential to support detection of many diseases in a direct harmless way, which can reassure patients and prevent numerous unpleasant investigations.
当今医学面临的两大挑战是需要以非侵入性的方式进行疾病检测,以及使用单一诊断工具来区分患者。本研究通过开发一种分子修饰的硅纳米线场效应晶体管(SiNW FET)来应对这两个挑战,并展示了其在检测和分类多种疾病呼吸特征(肺癌、胃癌、哮喘和慢性阻塞性肺疾病)中的应用。基于与各种疾病呼吸特征相关的挥发性有机化合物(VOCs)的相关性,对所制备的 SiNW FET 进行了特征和优化。然后,使用来自 374 个受试者的呼吸样本,在实际临床条件下对训练集中获得的最佳传感器进行检查。对临床样本的分析表明,优化后的 SiNW FET 可以以>80%的准确率检测和区分几乎所有正在检查的疾病的二元比较。总的来说,这种方法有可能以直接无害的方式支持许多疾病的检测,从而使患者安心并避免许多不必要的检查。