Rapid Sensing of Heat Stress using Machine Learning of Micrographs of Red Blood Cells Dispersed in Liquid Crystals
Prateek Verma, Elizabeth Adeogun, Elizabeth S. Greene, Sami Dridi,, Ukash Nakarmi, Karthik Nayani

TL;DR
This study demonstrates that machine learning applied to micrographs of red blood cells in liquid crystals can rapidly and accurately detect heat stress in organisms, offering a potential tool for quick disease diagnosis.
Contribution
The paper introduces a CNN-based approach to analyze liquid crystal micrographs for heat stress detection, achieving up to 99% accuracy, and explores cross-species cell simulation for model training.
Findings
CNN models achieved up to 99% accuracy in detecting heat stress.
Liquid crystal micrographs reveal mechanical property changes due to heat stress.
Crosslinking cells effectively simulates diseased states for model training.
Abstract
An imbalance between bodily heat production and heat dissipation leads to heat stress in organisms. In addition to diminished animal well-being, heat stress is detrimental to the poultry industry as poultry entails fast growth and high yield, resulting in greater metabolic activity and higher body heat production. When stressed, cells overexpress heat shock proteins (such as HSP70, a well-established intracellular stress indicator) and may undergo changes in their mechanical properties. Liquid crystals (LCs, fluids with orientational order) have been recently employed to rapidly characterize changes in mechanical properties of cells enabling a means of optically reporting the presence of disease in organisms. In this work, we explore the difference in the expression of HSP70 to a change in the LC response pattern via the use of convolutional neural networks (CNNs). The machine-learning…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Erythrocyte Function and Pathophysiology · Blood properties and coagulation
