Machine Learning Analysis for Quantitative Discrimination of Dried Blood Droplets.

Sci Rep

Department of Physics and Mathematics, School of Science and Technology, Nottingham Trent University, Nottingham, Clifton Campus, NG11 8NS, United Kingdom.

Published: February 2020

AI Article Synopsis

  • The study examines the unique patterns formed by dried blood droplets on surfaces, revealing insights into a person's exhaustion level due to exercise.
  • It involved analyzing blood samples from 30 young males before and after intensive exercise, utilizing advanced image processing and machine learning techniques to assess 1800 blood droplet images.
  • The research found that a combined statistical model can predict physiological changes with up to 95% accuracy, indicating potential applications in disease identification and medical diagnostics.

Article Abstract

One of the most interesting and everyday natural phenomenon is the formation of different patterns after the evaporation of liquid droplets on a solid surface. The analysis of dried patterns from blood droplets has recently gained a lot of attention, experimentally and theoretically, due to its potential application in diagnostic medicine and forensic science. This paper presents evidence that images of dried blood droplets have a signature revealing the exhaustion level of the person, and discloses an entirely novel approach to studying human dried blood droplet patterns. We took blood samples from 30 healthy young male volunteers before and after exhaustive exercise, which is well known to cause large changes to blood chemistry. We objectively and quantitatively analysed 1800 images of dried blood droplets, developing sophisticated image processing analysis routines and optimising a multivariate statistical machine learning algorithm. We looked for statistically relevant correlations between the patterns in the dried blood droplets and exercise-induced changes in blood chemistry. An analysis of the various measured physiological parameters was also investigated. We found that when our machine learning algorithm, which optimises a statistical model combining Principal Component Analysis (PCA) as an unsupervised learning method and Linear Discriminant Analysis (LDA) as a supervised learning method, is applied on the logarithmic power spectrum of the images, it can provide up to 95% prediction accuracy, in discriminating the physiological conditions, i.e., before or after physical exercise. This correlation is strongest when all ten images taken per volunteer per condition are averaged, rather than treated individually. Having demonstrated proof-of-principle, this method can be applied to identify diseases.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7040018PMC
http://dx.doi.org/10.1038/s41598-020-59847-xDOI Listing

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