Application of Micro-Computed Tomography for the Estimation of the Post-Mortem Interval of Human Skeletal Remains.
Verena-Maria SchmidtPhilipp ZelgerClaudia WoessAnton K PalluaRohit AroraGerald DegenhartAndrea BrunnerBettina ZelgerSchirmer MichaelWalter RablJohannes Dominikus PalluaPublished in: Biology (2022)
It is challenging to estimate the post-mortem interval (PMI) of skeletal remains within a forensic context. As a result of their interactions with the environment, bones undergo several chemical and physical changes after death. So far, multiple methods have been used to follow up on post-mortem changes. There is, however, no definitive way to estimate the PMI of skeletal remains. This research aimed to propose a methodology capable of estimating the PMI using micro-computed tomography measurements of 104 human skeletal remains with PMIs between one day and 2000 years. The present study indicates that micro-computed tomography could be considered an objective and precise method of PMI evaluation in forensic medicine. The measured parameters show a significant difference regarding the PMI for Cort Porosity p < 0.001, BV/TV p > 0.001, Mean1 p > 0.001 and Mean2 p > 0.005. Using a machine learning approach, the neural network showed an accuracy of 99% for distinguishing between samples with a PMI of less than 100 years and archaeological samples.
Keyphrases
- computed tomography
- endothelial cells
- positron emission tomography
- neural network
- machine learning
- magnetic resonance imaging
- induced pluripotent stem cells
- contrast enhanced
- mental health
- pluripotent stem cells
- image quality
- physical activity
- lps induced
- squamous cell carcinoma
- artificial intelligence
- deep learning
- locally advanced