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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Realita v československých kriminálních filmech z 60. let (s důrazem na postavu vyšetřovatele a kriminalistické metody) / Realism in the Czechoslovak crime films from 60's (with the emphasis on the figure of criminalist and criminalistic methods)

Staňková, Nikola January 2019 (has links)
Films and series with criminal themes are very popular among audience. They also have quite a long tradition in the Czech (Czechoslovak) cinematography. Specifically in the 60's a lot of quality films with detective plots were made and they are appreciated among the audience until today. They are also repeated in television frequently. These films demonstrate both crime and further investigation, focused on the police activity. This representation is frequently portrayed as a reality and the audience tend to view it as such. Therefore, it is interesting to observe if this representation corresponds to real forensic practice. This diploma thesis deals with the given matter. It analyses five Czechoslovak crime films from the 60's and its goal is to determine if the forensic methods correspond to then reality. It also focuses on the figure of the investigator as the representative of the law and as the main character. The first part of the thesis is comprised of the theoretical background. It describes the principles of film narrathology and mainly the principles of forensic methodology and practice. The second part of the thesis is practical. The theoretical background is applied here to analyse each of the chosen films. The summary responds to the research question and summarizes results of the analysis.
2

Applied Machine Learning Predicts the Postmortem Interval from the Metabolomic Fingerprint

Arpe, Jenny January 2024 (has links)
In forensic autopsies, accurately estimating the postmortem interval (PMI) is crucial. Traditional methods, relying on physical parameters and police data, often lack precision, particularly after approximately two days have passed since the person's death. New methods are increasingly focusing on analyzing postmortem metabolomics in biological systems, acting as a 'fingerprint' of ongoing processes influenced by internal and external molecules. By carefully analyzing these metabolomic profiles, which span a diverse range of information from events preceding death to postmortem changes, there is potential to provide more accurate estimates of the PMI. The limitation of available real human data has hindered comprehensive investigation until recently. Large-scale metabolomic data collected by the National Board of Forensic Medicine (RMV, Rättsmedicinalverket) presents a unique opportunity for predictive analysis in forensic science, enabling innovative approaches for improving  PMI estimation. However, the metabolomic data appears to be large, complex, and potentially nonlinear, making it difficult to interpret. This underscores the importance of effectively employing machine learning algorithms to manage metabolomic data for the purpose of PMI predictions, the primary focus of this project.  In this study, a dataset consisting of 4,866 human samples and 2,304 metabolites from the RMV was utilized to train a model capable of predicting the PMI. Random Forest (RF) and Artificial Neural Network (ANN) models were then employed for PMI prediction. Furthermore, feature selection and incorporating sex and age into the model were explored to improve the neural network's performance.  This master's thesis shows that ANN consistently outperforms RF in PMI estimation, achieving an R2 of 0.68 and an MAE of 1.51 days compared to RF's R2 of 0.43 and MAE of 2.0 days across the entire PMI-interval. Additionally, feature selection indicates that only 35% of total metabolites are necessary for comparable results with maintained predictive accuracy. Furthermore, Principal Component Analysis (PCA) reveals that these informative metabolites are primarily located within a specific cluster on the first and second principal components (PC), suggesting a need for further research into the biological context of these metabolites.  In conclusion, the dataset has proven valuable for predicting PMI. This indicates significant potential for employing machine learning models in PMI estimation, thereby assisting forensic pathologists in determining the time of death. Notably, the model shows promise in surpassing current methods and filling crucial gaps in the field, representing an important step towards achieving accurate PMI estimations in forensic practice. This project suggests that machine learning will play a central role in assisting with determining time since death in the future.

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