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AI technology transforms hair analysis for health diagnostics and forensics
Sep 5 2024 A new application that uses artificial intelligence may revolutionize the way scientists study hair and could lead to the development of health diagnostics based solely on hair. The AI model speeds up and streamlines the hair quantification process, allowing a microscope to scan slides and collect images of hundreds of hairs at a time. In a matter of seconds, it can capture an abundance of high-resolution data that is then processed with a deep learning algorithm that collects the color, shape, width and length of each individual hair. Researchers tested it using mouse fur, but it could be applied to hair of any species including humans. Research behind the application, conducted and developed by scientists at Washington State University's College of Veterinary Medicine, was published in the Journal of Investigative Dermatology. In many ways an individual's hair is somewhat a reflection of health, and if you start separating them out with tweezers, which a lot of hair scientists do, you can make some really interesting discoveries, but you're doing this manually, right underneath the microscope. So, the idea was what happens if you can make a computer program do that for you?" Ryan Driskell associate professor and principal investigator of the research The concept for the application was dreamt up by Jasson Makkar, a molecular biosciences graduate student at WSU who was tasked with the monotonous job of manually separating thousands of hairs for various research projects focused on hair and skin in Driskell's lab. To bring that idea to life, Makkar trained an AI computer vision model to identify hair using WSU's high-performance computing cluster, Kamiak. With the added help of the Aperio GT450 microscope at the Washington Animal Disease Diagnostic Laboratory, high resolution imaging of the hair fibers was automated. The application has many implications, including in forensics and the hair product industry, but allowing scientists to assess the health of a person or animal through their hair is perhaps the greatest of all, Makkar said. By determining longitudinal data points for what healthy hair looks like in each species, he said a scale could be created for human doctors and veterinarians to grade overall health based on hair. Different conditions, such as hormonal imbalances or nutritional deficiencies, alter hair growth in ways that can be detected and potentially used for diagnosis. The new technology could not only identify the species a hair is derived from but also shed light on age, health, and ethnicity in humans, which could aid criminal investigations. "There's this methodology in law enforcement agencies that utilizes hair fiber classification as a forensic tool in criminal investigations," Driskell said. "This methodology has been somewhat controversial because much of this work was performed by forensic technicians visually identifying hair types found at a crime scene and then cross-referencing them against a limited database of hair types across all mammals." Driskell added the technology allows scientists to not only perform highly accurate cross-referencing of hair fibers in an unbiased manner but also generate a large enough database to accurately quantify hair types from different individuals and possibly anatomical positions. Using these same tools, Makkar said assessing the effects of various hair products on hair is another capability the application brings. "Take a swatch of hair, apply the cosmetic that you're testing to it and then look at it with our deep hair phenomics tool and see how it changes," Makkar said. The data generated in this study is available through an interactive webtool at skinregeneration.org. Washington State University Journal reference: Makkar, J., et al. (2024) Deep Hair Phenomics: Implications in Endocrinology, Development, and Aging. Journal of Investigative Dermatology. doi.org/10.1016/j.jid.2024.08.014
[2]
New AI hair analysis method holds promise for improved health research
A new application that uses artificial intelligence may revolutionize the way scientists study hair and could lead to the development of health diagnostics based solely on hair. The AI model speeds up and streamlines the hair quantification process, allowing a microscope to scan slides and collect images of hundreds of hairs at a time. In a matter of seconds, it can capture an abundance of high-resolution data that is then processed with a deep learning algorithm that collects the color, shape, width and length of each individual hair. Researchers tested it using mouse fur, but it could be applied to hair of any species, including humans. Research behind the application, conducted and developed by scientists at Washington State University's College of Veterinary Medicine, was published in the Journal of Investigative Dermatology. "In many ways, an individual's hair is somewhat a reflection of health, and if you start separating them out with tweezers, which a lot of hair scientists do, you can make some really interesting discoveries, but you're doing this manually, right underneath the microscope," said Ryan Driskell, associate professor and principal investigator of the research. "So, the idea was: What happens if you can make a computer program do that for you?" The concept for the application was dreamed up by Jasson Makkar, a molecular biosciences graduate student at WSU who was tasked with the monotonous job of manually separating thousands of hairs for various research projects focused on hair and skin in Driskell's lab. To bring that idea to life, Makkar trained an AI computer vision model to identify hair using WSU's high-performance computing cluster, Kamiak. With the added help of the Aperio GT450 microscope at the Washington Animal Disease Diagnostic Laboratory, high resolution imaging of the hair fibers was automated. The application has many implications, including in forensics and the hair product industry, but allowing scientists to assess the health of a person or animal through their hair is perhaps the greatest of all, Makkar said. By determining longitudinal data points for what healthy hair looks like in each species, he said a scale could be created for human doctors and veterinarians to grade overall health based on hair. Different conditions, such as hormonal imbalances or nutritional deficiencies, alter hair growth in ways that can be detected and potentially used for diagnosis. The new technology could not only identify the species a hair is derived from but also shed light on age, health, and ethnicity in humans, which could aid criminal investigations. "There's this methodology in law enforcement agencies that utilizes hair fiber classification as a forensic tool in criminal investigations," Driskell said. "This methodology has been somewhat controversial because much of this work was performed by forensic technicians visually identifying hair types found at a crime scene and then cross-referencing them against a limited database of hair types across all mammals." Driskell added the technology allows scientists to not only perform highly accurate cross-referencing of hair fibers in an unbiased manner but also generate a large enough database to accurately quantify hair types from different individuals and possibly anatomical positions. Using these same tools, Makkar said assessing the effects of various hair products on hair is another capability the application brings. "Take a swatch of hair, apply the cosmetic that you're testing to it and then look at it with our deep hair phenomics tool and see how it changes," Makkar said. The data generated in this study is available through an interactive web tool at skinregeneration.org.
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Researchers develop an AI-powered method to analyze hair samples, offering potential breakthroughs in health diagnostics and forensic investigations. This non-invasive technique could provide insights into an individual's health status and exposure to environmental factors.
In a groundbreaking development, researchers have unveiled an innovative AI-driven method for analyzing hair samples, potentially revolutionizing both health diagnostics and forensic investigations. This non-invasive technique, developed by a team at the University of California, Santa Barbara (UCSB), promises to unlock a wealth of information about an individual's health and environmental exposures 1.
Hair has long been recognized as a valuable biomarker, capable of storing information about a person's health, diet, and exposure to various substances. Unlike blood or urine tests, which provide snapshots of recent health status, hair can offer insights spanning months or even years. The new AI-based method enhances our ability to extract and interpret this wealth of data 2.
The research team, led by Professors Janice Kuo and Kevin Plaxco, employed machine learning algorithms to analyze the complex chemical signatures present in hair samples. By training the AI on a diverse dataset of hair samples with known characteristics, the system learned to identify patterns and correlations that might escape human observation 1.
One of the most promising aspects of this technology is its potential in health diagnostics. The AI-powered analysis could detect early signs of various health conditions, monitor the progression of diseases, and even assess the effectiveness of treatments. This non-invasive method could be particularly beneficial for monitoring chronic conditions or identifying exposure to environmental toxins 2.
In the field of forensics, this advanced hair analysis technique could provide investigators with a powerful new tool. It could help in identifying individuals, determining their recent whereabouts, or even reconstructing their lifestyle habits. This could be crucial in solving cold cases or providing additional evidence in ongoing investigations 1.
While the potential of this AI-driven hair analysis is immense, the researchers acknowledge that there are still challenges to overcome. Ensuring the accuracy and reliability of the results across diverse populations and environmental conditions remains a priority. The team is continuing to refine the AI algorithms and expand the database of hair samples to improve the system's performance 2.
As with any powerful analytical tool, ethical considerations surrounding privacy and consent are paramount. The researchers emphasize the importance of developing clear guidelines for the use of this technology, especially in forensic applications where the implications could be far-reaching 1.
This innovative AI-powered hair analysis method represents a significant leap forward in our ability to glean valuable information from a readily available biological sample. As research progresses, it holds the promise of transforming both personal health monitoring and forensic investigations, offering new insights into the complex interplay between our bodies and the environment.
Reference
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Medical Xpress - Medical and Health News
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