New doctoral dissertations

July 14, 2023
VILNIUS TECH Library invites you to follow the published new dissertations. Two dissertations are presented today:

The dissertation „Parkinsono liga sergančių žmonių biomechanika grįstos diagnostinės sistemos kūrimas ir tyrimas“ („Development and research of a diagnostic system based on the biomechanics of people with parkinson’s disease“) prepared by VILNIUS TECH, Donatas Lukšys. The dissertation was prepared in 2018–2023, scientific consultant – Prof. Dr. Julius Griškevičius.

The dissertation will be defended at the public meeting of the Dissertation Defence Council of Mechanical Engineering in the Senate Hall of Vilnius Gediminas Technical University at 9 a. m. on 14 July 2023.

This dissertation examines problems arising in the diagnosis of neurodegenerative diseases (NDDs) and NDD severity assessment based on clinical disease assessment scales. The research object is the biomechanics of the musculoskeletal system of people with Parkinson’s disease (PD). Objectives of the dissertation: to perform an analysis of the PD motor symptoms, to create a model of the body’s muscle-skeleton (MS) system of a person suffering from MS, and to create a research methodology suitable for the quantitative assessment of the motor skills of MS patients

Doctoral dissertation readers can search via VILNIUS TECH Virtual Library.


The dissertation „Statybvietės planavimo optimizavimo modelis taikant fotogrametriją“ („Photogrammetry-based model for the optimisation of construction-site planning“) prepared by VILNIUS TECH, Robertas Kontrimovičius. The dissertation was prepared in 2018–2023, supervisor Prof. Dr Habil. Leonas Ustinovičius.

The dissertation was defended at the public meeting of the Dissertation Defense Council of the Scientific Field of Civil Engineering in the Senate Hall of Vilnius Gediminas Technical University at 1 p. m. on 14 July 2023.

The dissertation examines the current relevance of the need for economically useful and reliable rational planning of the entire construction site, construction mechanisms and temporary infrastructure. The goal of this dissertation is to improve construction site planning by creating a construction site planning optimisation model using photogrammetry. The most appropriate version of the construction site plan is chosen based on arguments evaluating the current condition and project solutions in an automated way. The dissertation consists of an introduction, three chapters, a summary of the results, lists of used literature, and the author’s publications on the dissertation topic.

Doctoral dissertation readers can search via VILNIUS TECH Virtual Library.

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New doctoral dissertation
New doctoral dissertation
VILNIUS TECH Library invites you to follow the published new dissertations. The dissertation „Interaction between currency market evolution with monetary policy instruments in the age of digitisation“ („Valiutų rinkos evoliucijos sąveika su monetarinės politikos instrumentais skaitmenizacijos amžiuje“) prepared at VILNIUS TECH by Tomas Pečiuli. The dissertation was prepared in 2020–2026. Scientific consultant – Assoc. Prof. Dr Asta Vasiliauskaitė. The dissertation was defended at the public meeting of the Dissertation Defence Council of the Scientific Field of Economics in the Aula Doctoralis Meeting Hall of Vilnius Gediminas Technical University at 10 a.m. on 10 June 2026. The emergence of decentralised cryptocurrencies has created fundamental challenges for traditional monetary policy systems. Although these digital assets have the potential to increase financial inclusion and efficiency, their volatility and the lack of centralised oversight create systemic risks that cannot be properly managed using classical models. This dissertation presents an integrated hybrid analytical framework designed to quantitatively assess the impact of cryptocurrencies on monetary policy transmission mechanisms, providing policymakers with empirically grounded tools to analyse this evolving financial domain more effectively. The dissertation is divided into three main parts. The First Chapter summarises the theoretical role of cryptocurrencies in modern monetary theory. The Second Chapter presents and substantiates a new methodology that combines machine-learning techniques with advanced econometric modelling, specifically using an Elastic Net machine learning model with ARIMA residuals and MSGARCH specifications to capture regime-dependent behaviour. The Third Chapter empirically validates the framework using data from cryptocurrency markets and central bank policy operations. The empirical results show a significant asymmetric policy transmission effect, with the price of Bitcoin reacting by USD -15,348 to a 1% change in the Federal Reserve interest rate. The analysis also identifies critical volatility thresholds (σ>80%) at which cryptocurrency fluctuations increase inflation risk. These results indicate the growing systemic importance of cryptocurrencies in monetary policy dynamics. The study contributes to the emerging field of digital asset economics. The integrated modelling approach helps overcome the long-standing limitations of analysing nonlinear financial phenomena. Practical applications include real-time financial stability risk monitoring systems and evidence-based guidelines for regulatory interventions. The modular structure of the framework allows for future expansion by incorporating evolving market structures and new digital assets. The dissertation’s results have been presented to the scientific community in eight peer-reviewed publications in scientific journals and conference proceedings. This work provides central banks with essential analytical tools to maintain monetary stability and to promote responsible financial innovation in the digital era. Doctoral dissertation readers can search via VILNIUS TECH Virtual Library.
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New doctoral dissertation
New doctoral dissertation
VILNIUS TECH Library invites you to follow the published new dissertations. The dissertation „Research and application of machine learning methods for migraine attack prediction“ prepared at VILNIUS TECH by Viroslava Kapustynska. The dissertation was prepared in 2021–2026. Scientific consultant – Prof. Dr Šarūnas Paulikas. The dissertation was defended at the public meeting of the Dissertation Defense Council of the Scientific Field of Electrical and Electronic Engineering in the Aula Doctoralis Meeting Hall of Vilnius Gediminas Technical University at 2 p.m. on 9 June 2026. Migraine is a complex neurological disorder characterized by strong inter- and intra-individual variability, which makes early forecasting difficult using only clinical observations. Wearable biosensors combined with machine learning offer new opportunities to detect subtle physiological changes that may precede migraine attacks and to develop individualized prediction models. This dissertation investigates migraine analysis and next-day prediction using physiological recordings collected under real-life monitoring conditions. Data were obtained with the Empatica Embrace Plus wearable device and include electrodermal activity, pulse rate, skin temperature, and movement-related signals. The analysis focuses on nocturnal recordings, since the night period provides a more stable physiological context with fewer external disturbances. Nights were standardized using sleep-based contextual selection and consistent night-level rules. The experimental framework is organized in two stages. In the first stage, a window-level binary classification task is used as an exploratory methodological analysis to examine how design choices influence model performance. Night recordings are segmented into analysis frames ranging from 5 to 120 minutes, statistical features are extracted, and the influence of signal preprocessing and feature representation is evaluated across several classifier families, including Random Forest, XGBoost, histogram-based gradient boosting, support vector machines, and k-nearest neighbors. In the second stage, the research evaluates next-day migraine prediction based on whole-night recordings. This stage refines the experimental methodology to obtain more reliable estimates of predictive performance under a stricter validation framework. The analysis focuses on the effect of temporal aggregation while comparing the same classifier families under consistent evaluation conditions. The results demonstrate considerable variability across participants in achievable prediction performance and optimal modeling configurations. Shorter analysis frames generally preserve informative short-term physiological changes, whereas longer windows tend to smooth these variations. Signal preprocessing shows a window-dependent effect and does not consistently improve performance. Overall, the results highlight the importance of temporal resolution, rigorous validation, and individualized modeling for wearable-based migraine prediction systems. Doctoral dissertation readers can search via VILNIUS TECH Virtual Library.
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