Instrumentation, microfluidics and machine learning for rapid, ultrasensitive, and high throughput bioburden detection
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Author/Creator ORCID
Date
2023-01-01
Type of Work
Department
Computer Science and Electrical Engineering
Program
Engineering, Electrical
Citation of Original Publication
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Distribution Rights granted to UMBC by the author.
Distribution Rights granted to UMBC by the author.
Subjects
Abstract
Thousands of lives are lost every year, and millions are infected due to food, water, ormedicine contamination. The lack of rapid low-cost tools for pathogen identification results
in misdiagnoses that worsen the outcome and promote over-prescription of antibiotics as
well. As the threat of antibiotic-resistant bacteria continues to rise, there is an increasing
demand for diagnostic devices that can quickly identify bacteria and their antibiotic
susceptibilities in a wide range of applications. Contamination detection often requires
lengthy culturing steps to detect low-level bioburden. To increase the rate of detection and
decrease the limit of detection (LOD), in this dissertation, a system featuring microfluidics
and a multichannel fluorometer is presented. This low-cost system utilizes the slope of
fluorescence intensity that serves as the criterion for bioburden detection. The sample under
investigation is spiked with an indicator dye resazurin and loaded in a special-design
microfluidic cassette and the rate of change was observed via the fluorometer. We have
validated and tested the assay and the device for different laboratory-cultured samples and
different real-world surface and water samples. The multichannel fluorometer successfully
detects the bioburden with comparable performance with the spectrophotometer and the7
golden standard plate count method within 8 hours of incubation which is much faster than
the conventional methods.
Microfluidics is a critical and integral part of this application, but the requirement
for complex fabrication techniques, cleanroom facilities, and advanced microfabrication
equipment hinders the path toward mass production of microfluidic systems. As most of
the thermoplastics are not biodegradable, it has resulted in large-scale pollution and an
environmental threat. This thesis also aims to find out an easy and simple way of bonding
microfluidic chips using green biodegradable thermoplastic material easily adaptable for
bioburden detection. We introduce an environment-friendly, low-cost, and safe welding
technology used in the fabrication of microcassettes from polymethyl methacrylate
(PMMA) and biodegradable cellulose acetate (CA) thermoplastics. Also, microfluidic
chips are designed and bonded with low-cost plywood materials. These microfluidic
devices are adapted for various applications, including rapid detection of microbial
contamination and monitoring vitamin C content which follows the same reduction
mechanism as bacterial detection. Additionally, using the novel microwave-induced
technique, a novel microfluidic device has been fabricated and bonded for bioburden
detection which shows much higher sensitivity than the normal microfluidic cassettes and
the standard device spectrophotometer.
All biosensors along with the multichannel fluorometer exhibit some irregular
signal noise. The accuracy and reliability of most biosensors caused by noise limit their
commercialization. In this context, machine learning (ML) can provide novel strategies for
overcoming the challenges faced by biosensors. In this thesis, various machine learning
algorithms have been implemented on the data collected over different experiments using8
different primary culture cell samples for five different strains. As opposed to previously
used only slope criterion for bioburden detection, ML is applied for the automatic
qualitative detection of bacteria, prediction of bioburden level of the same strain of
bacteria, and identification of different strains of bacteria. We have primarily applied
different conventional ML algorithms along with the normal feedforward neural network
(NN) and recurrent neural network (RNN) particularly suited for time-series data. Both
classification and regression analysis are performed for the identification and prediction of
bioburden levels present in the sample from the multichannel fluorometer data. Our
classification and regression analysis show promising results in identifying and predicting
bioburden strains and levels that have the potential to detect bioburden in real time for
different field applications.