Indian Scientists Develop Eco-Friendly Cholesterol Detection Device

Published On 2025-04-26 02:45 GMT   |   Update On 2025-04-26 02:45 GMT
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A highly sensitive, eco-friendly and cost-effective optical sensing platform developed for cholesterol detection can help identify early symptoms of diseases like atherosclerosis, venous thrombosis, cardiovascular diseases, heart disease, myocardial infarction, hypertension, and cancer. The work was published in the “Nanoscale” Journal, published by Royal Society of Chemistry.
Detecting fatal diseases at their earliest symptoms is essential, as abnormal biochemical markers may sometimes accompany such disorders. Therefore, reliable point-of-care (POC) detection of biomarkers associated with these diseases is necessary for personalized health monitoring.
Cholesterol is an essential lipid in humans, produced by the liver. There are two types of cholesterol: LDL (low-density lipoprotein), often referred to as 'bad' cholesterol because it can accumulate in the walls of arteries and contribute to severe diseases, and HDL (high-density lipoprotein), known as 'good' cholesterol.
However, maintaining a balance in cholesterol levels is crucial. Both high and low cholesterol levels can lead to various diseases, including atherosclerosis, venous thrombosis, cardiovascular diseases, heart disease, myocardial infarction, hypertension, and cancer. Atherosclerotic plaques form when excess cholesterol builds up on artery walls, hindering proper blood flow.
A team of interdisciplinary researchers at the Institute of Advanced Study in Science and Technology (IASST) in Guwahati, an autonomous institute under the Department of Science and Technology (DST, has developed an optical sensing platform for cholesterol detection based on silk fibre functionalized using phosphorene quantum dots.
A point-of-care (POC) device has been developed in the laboratory scale for detecting cholesterol using this. It can sense cholesterol in trace amounts, even below the preferred range. It can be an efficient tool for routine monitoring of cholesterol levels in the human body.
The project, led by Prof. Neelotpal Sen Sarma, a retired Professor; Dr. Asis Bala, an Associate Professor; and Ms. Nasrin Sultana, a DST INSPIRE Senior Research Fellow incorporated the material – the silk fibre, into a cellulose nitrate membrane to create an electrical sensing platform for cholesterol detection.
The synthesized sensors were highly sensitive as well as selective for cholesterol detection. Furthermore, the electrical sensing platform generates no e-waste, a key advantage of the fabricated device. Both sensing platforms respond similarly to real-world media such as human blood serum, experimental rat blood serum, and milk.
Reference:https://pib.gov.in/PressReleasePage.aspx PRID=2123766#:~:text=A team of interdisciplinary researchers,silk fibre functionalized using phosphorene
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Article Source : Nanoscale Journal

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