Biosensors based on graphene field effect transistors
(GFETs) have
the potential to enable the development of point-of-care diagnostic
tools for early stage disease detection. However, issues with reproducibility
and manufacturing yields of graphene sensors, but also with Debye
screening and unwanted detection of nonspecific species, have prevented
the wider clinical use of graphene technology. Here, we demonstrate
that our wafer-scalable GFETs array platform enables meaningful clinical
results. As a case study of high clinical relevance, we demonstrate
an accurate and robust portable GFET array biosensor platform for
the detection of pancreatic ductal adenocarcinoma (PDAC) in patients’
plasma through specific exosomes (GPC-1 expression) within 45 min.
In order to facilitate reproducible detection in blood plasma, we
optimized the analytical performance of GFET biosensors via the application
of an internal control channel and the development of an optimized
test protocol. Based on samples from 18 PDAC patients and 8 healthy
controls, the GFET biosensor arrays could accurately discriminate
between the two groups while being able to detect early cancer stages
including stages 1 and 2. Furthermore, we confirmed the higher expression
of GPC-1 and found that the concentration in PDAC plasma was on average
more than 1 order of magnitude higher than in healthy samples. We
found that these characteristics of GPC-1 cancerous exosomes are responsible
for an increase in the number of target exosomes on the surface of
graphene, leading to an improved signal response of the GFET biosensors.
This GFET biosensor platform holds great promise for the development
of an accurate tool for the rapid diagnosis of pancreatic cancer.
Oil palm is an important industry that has contributed to income and support to the economic sector especially for Malaysia and Indonesia. However, most of the equipment in the oil palm industry is still operated manually. This work developed a system to separate bunches of oil palm fruit using color sensors according to maturity level. Fruit color plays a decisive point in determining fruit maturity. Here, a specific threshold point of red green blue (RGB) was obtained for the determination of the maturity level of oil palm fruit. Point values of < 120, 120 < x < 150 and > 150 represent the maturity levels of unripe, under ripe and ripe, respectively. This paper is the first to report the RGB points for use in the development of automated oil palm segregation system in the oil palm plantation industry. Thus, this paper will pave the way in producing an accurate and reliable oil palm separation system, which in turn has a positive effect in reducing human error. In the future, a set of sensors is proposed to detect a bunch of the oil palm fruits. This further can speed up the segregation process and more suitable for adaptation to the industry.
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