The COVID-19 pandemic is a global health emergency characterized by the high rate of transmission and ongoing increase of cases globally. Rapid point-of-care (PoC) diagnostics to detect the causative virus, SARS-CoV-2, are urgently needed to identify and isolate patients, contain its spread and guide clinical management. In this work, we report the development of a rapid PoC diagnostic test (<20 min) based on reverse transcriptase loop-mediated isothermal amplification (RT-LAMP) and semiconductor technology for the detection of SARS-CoV-2 from extracted RNA samples. The developed LAMP assay was tested on a real-time benchtop instrument (RT-qLAMP) showing a lower limit of detection of 10 RNA copies per reaction. It was validated against extracted RNA from 183 clinical samples including 127 positive samples (screened by the CDC RT-qPCR assay). Results showed 91% sensitivity and 100% specificity when compared to RT-qPCR and average positive detection times of 15.45 ± 4.43 min. For validating the incorporation of the RT-LAMP assay onto our PoC platform (RT-eLAMP), a subset of samples was tested (n = 52), showing average detection times of 12.68 ± 2.56 min for positive samples (n = 34), demonstrating a comparable performance to a benchtop commercial instrument. Paired with a smartphone for results visualization and geolocalization, this portable diagnostic platform with secure cloud connectivity will enable real-time case identification and epidemiological surveillance.
The MALDIxin test is an accurate, rapid, cost-effective and scalable method that represents a major advance in the diagnosis of polymyxin resistance by directly assessing lipid A modifications in intact bacteria.
Information about the kinetics of
PCR reactions is encoded in the
amplification curve. However, in digital PCR (dPCR), this information
is typically neglected by collapsing each amplification curve into
a binary output (positive/negative). Here, we demonstrate that the
large volume of raw data obtained from real-time dPCR instruments
can be exploited to perform data-driven multiplexing in a single fluorescent
channel using machine learning methods, by virtue of the information
in the amplification curve. This new approach, referred to as amplification
curve analysis (ACA), was shown using an intercalating dye (EvaGreen),
reducing the cost and complexity of the assay and enabling the use
of melting curve analysis for validation. As a case study, we multiplexed
3 carbapenem-resistant genes to show the impact of this approach on
global challenges such as antimicrobial resistance. In the presence
of single targets, we report a classification accuracy of 99.1% (N = 16188), which represents a 19.7% increase compared to
multiplexing based on the final fluorescent intensity. Considering
all combinations of amplification events (including coamplifications),
the accuracy was shown to be 92.9% (N = 10383). To
support the analysis, we derived a formula to estimate the occurrence
of coamplification in dPCR based on multivariate Poisson statistics
and suggest reducing the digital occupancy in the case of multiple
targets in the same digital panel. The ACA approach takes a step toward
maximizing the capabilities of existing real-time dPCR instruments
and chemistries, by extracting more information from data to enable
data-driven multiplexing with high accuracy. Furthermore, we expect
that combining this method with existing probe-based assays will increase
multiplexing capabilities significantly. We envision that once emerging
point-of-care technologies can reliably capture real-time data from
isothermal chemistries, the ACA method will facilitate the implementation
of dPCR outside of the lab.
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