Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/140687
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Type: Journal article
Title: Graphene and metal-organic framework hybrids for high-performance sensors for lung cancer biomarker detection supported by machine learning augmentation
Author: Tran, A.T.T.
Hassan, K.
Tung, T.T.
Tripathy, A.
Mondal, A.
Losic, D.
Citation: Nanoscale, 2024; 16(18)
Publisher: Royal Society of Chemistry
Issue Date: 2024
ISSN: 2040-3364
2040-3372
Statement of
Responsibility: 
Anh Tuan Trong Tran, Kamrul Hassan, Tran Thanh Tung, Ashis Tripathy, Ashok Mondal and Dusan Losic
Abstract: Conventional diagnostic methods for lung cancer, based on breath analysis using gas chromatography and mass spectrometry, have limitations for fast screening due to their limited availability, operational complexity, and high cost. As potential replacement, among several low-cost and portable methods, chemoresistive sensors for the detection of volatile organic compounds (VOCs) that represent biomarkers of lung cancer were explored as promising solutions, which unfortunately still face challenges. To address the key problems of these sensors, such as low sensitivity, high response time, and poor selectivity, this study presents the design of new chemoresistive sensors based on hybridised porous zeolitic imidazolate (ZIF-8) based metal–organic frameworks (MOFs) and laser-scribed graphene (LSG) structures, inspired by the architecture of the human lung. The sensing performance of the fabricated ZIF-8@LSG hybrid sensors was characterised using four dominant VOC biomarkers, including acetone, ethanol, methanol, and formaldehyde, which are identified as metabolomic signatures in lung cancer patients’ exhaled breath. The results using simulated breath samples showed that the sensors exhibited excellent performance for a set of these biomarkers, including fast response (2–3 seconds), a wide detection range (0.8 ppm to 50 ppm), a low detection limit (0.8 ppm), and high selectivity, all obtained at room temperature. Intelligent machine learning (ML) recognition using the multilayer perceptron (MLP)-based classification algorithm was further employed to enhance the capability of these sensors, achieving an exceptional accuracy (approximately 96.5%) for the four targeted VOCs over the tested range (0.8–10 ppm). The developed hybridised nanomaterials, combined with the ML methodology, showcase robust identification of lung cancer biomarkers in simulated breath samples containing multiple biomarkers and a promising solution for their further improvements toward practical applications.
Keywords: Humans
Lung Neoplasms
Zeolites
Graphite
Imidazoles
Breath Tests
Biosensing Techniques
Volatile Organic Compounds
Machine Learning
Biomarkers, Tumor
Metal-Organic Frameworks
Description: First published 08 Apr 2024 OnlinePubl
Rights: This journal is © The Royal Society of Chemistry 2024
DOI: 10.1039/d4nr00174e
Grant ID: http://purl.org/au-research/grants/arc/IH150100003
http://purl.org/au-research/grants/arc/IH210100025
Published version: http://dx.doi.org/10.1039/d4nr00174e
Appears in Collections:Research Outputs

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