Efficient and optimized blood cancer detection using engineered graphene-based silicon–TiN–silicon multilayered plasmonic sensor design with behaviour prediction using machine learning
Ammar Armghan, Yogesh Sharma, Aymen Flah, Meshari Alsharari, Khaled Aliqab

TL;DR
This paper introduces a new graphene-based sensor combined with machine learning to detect blood cancer early, improving diagnosis and patient outcomes.
Contribution
The novel contribution is an optimized graphene-based plasmonic sensor with machine learning for enhanced blood cancer detection.
Findings
The sensor achieves a maximum sensitivity of 1430 nm/RIU for blood cancer detection.
It has a detection limit of 0.044 and a high-quality factor of 125.
Parametric optimization improves sensitivity and detection speed for early diagnosis.
Abstract
Blood cancer can be fatal if not detected early; innovative biosensors with machine learning optimization enable timely diagnosis by identifying cancer-specific biomarkers in blood, improving survival rates through earlier intervention and targeted treatment. A graphene-based sensor, crafted with advanced materials, enhances sensitivity for rapid and early blood cancer detection, offering improved diagnostic accuracy and timely medical intervention for better patient outcomes. Machine learning optimization is used to achieve higher sensitivity. The graphene sensor achieves a maximum sensitivity of 1430 nm/RIU, enabling highly accurate and efficient blood cancer detection performance. The developed sensor demonstrates an impressive detection limit of 0.044, offering exceptional precision and sensitivity, making it highly effective for early-stage blood cancer diagnosis and clinical…
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Taxonomy
TopicsPlasmonic and Surface Plasmon Research · Biosensors and Analytical Detection · Spectroscopy Techniques in Biomedical and Chemical Research
