Research Progress of Metabolomics Techniques Combined with Machine Learning Algorithm in Wound Age Estimation / 法医学杂志
Journal of Forensic Medicine
;
(6): 596-600, 2023.
Article
Dans Anglais
| WPRIM
| ID: wpr-1009392
ABSTRACT
Wound age estimation is the core content in the practice of forensic medicine. Accurate estimation of wound age is a scientific question that needs to be urgently solved by forensic scientists at home and abroad. Metabolomics techniques can effectively detect endogenous metabolites produced by internal or external stimulating factors and describe the dynamic changes of metabolites in vivo. It has the advantages of strong operability, high detection efficiency and accurate quantitative results. Machine learning algorithm has special advantages in processing high-dimensional data sets, which can effectively mine biological information and truly reflect the physiological, disease or injury state of the body. It is a new technical means for efficiently processing high-throughput big data. This paper reviews the status and advantages of metabolomic techniques combined with machine learning algorithm in the research of wound age estimation, and provides new ideas for this research.
Texte intégral:
Disponible
Indice:
WPRIM (Pacifique occidental)
Sujet Principal:
Algorithmes
/
Métabolomique
/
Apprentissage machine
/
Médecine légale
/
Mégadonnées
langue:
Anglais
Texte intégral:
Journal of Forensic Medicine
Année:
2023
Type:
Article
Documents relatifs à ce sujet
MEDLINE
...
LILACS
LIS