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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.
11

Real-time Classification of Biomedical Signals, Parkinson’s Analytical Model

Saghafi, Abolfazl 09 June 2017 (has links)
The reach of technological innovation continues to grow, changing all industries as it evolves. In healthcare, technology is increasingly playing a role in almost all processes, from patient registration to data monitoring, from lab tests to self-care tools. The increase in the amount and diversity of generated clinical data requires development of new technologies and procedures capable of integrating and analyzing the BIG generated information as well as providing support in their interpretation. To that extent, this dissertation focuses on the analysis and processing of biomedical signals, specifically brain and heart signals, using advanced machine learning techniques. That is, the design and implementation of automatic biomedical signal pre-processing and monitoring algorithms, the design of novel feature extraction methods, and the design of classification techniques for specific decision making processes. In the first part of this dissertation Electroencephalogram (EEG) signals that are recorded in 14 different locations on the scalp are utilized to detect random eye state change in real-time. In summary, cross channel maximum and minimum is used to monitor real-time EEG signals in 14 channels. Upon detection of a possible change, Multivariate Empirical Mode Decomposes the last two seconds of the signal into narrow-band Intrinsic Mode Functions. Common Spatial Pattern is then employed to create discriminating features for classification purpose. Logistic Regression, Artificial Neural Network, and Support Vector Machine classifiers all could detect the eye state change with 83.4% accuracy in less than two seconds. We could increase the detection accuracy to 88.2% by extracting relevant features from Intrinsic Mode Functions and directly feeding it to the classification algorithms. Our approach takes less than 2 seconds to detect an eye state change which provides a significant improvement and promising real-life applications when compared to slow and computationally intensive instance based classification algorithms proposed in literatures. Increasing the training examples could even improve the accuracy of our analytic algorithms. We employ our proposed analytic method in detecting the three different dance moves that honey bees perform to communicate the location of a food source. The results are significantly better than other alternative methods in the literature in terms of both accuracy and run time. The last chapter of the dissertation brings out a collaborative research on Parkinson's disease. As a Parkinson’s Progression Markers Initiative (PPMI) investigator, I had access to the vast database of The Michael J. Fox Foundation for Parkinson's Research. We utilized available data to study the heredity factors leading to Parkinson's disease by using Maximum Likelihood and Bayesian approach. Through sophisticated modeling, we incorporated information from healthy individuals and those diagnosed with Parkinson's disease (PD) to available historical data on their grandparents' family to draw Bayesian estimations for the chances of developing PD in five types of families. That is, families with negative history of PD (type 1) and families with positive history in which estimations provided for the prevalence of developing PD when none of the parents (type 2), one of the parents (type 3 and 4), or both of the parents (type 5) carried the disease. The results in the provided data shows that for the families with negative history of PD the prevalence is estimated to be 20% meaning that a child in this family has 20% chance of developing Parkinson. If there is positive history of PD in the family the chance increases to 33% when none of the parents had PD and to 44% when both of the parents had the disease. The chance of developing PD in a family whose solely mother is diagnosed with the disease is estimated to be 26% in comparison to 31% when only father is diagnosed with Parkinson's.
12

Investigaton and assessment of ejection murmurs and the left ventricular outflow tract in Boxer dogs

Koplitz, Shianne L., DVM 24 August 2005 (has links)
No description available.
13

Utvärdering av en ny metod för utredning av stabil kranskärlssjukdom baserad på akustisk fonokardiografi / Evaluation of a new method for the investigation of stable coronary artery disease using acoustic phonocardiography

Kurashova, Elena January 2018 (has links)
Kranskärlssjukdom (CAD) är en av de vanligast förekommande kardiovaskulära sjukdomarna och en av de dominerande dödsorsakerna hos äldre människor världen över. För att bekräfta diagnos och bedöma sjukdomens svårighetsgrad används idag flera diagnostiska strategier. Ökade hälsokostnader och lång kö för undersökningar väcker oro hos både patienter, läkare och myndigheter. Behovet av en enkel, säker och kostnadseffektiv metod som kan hjälpa till i utredning av CAD är stor. Det danska företaget Acarix utarbetade en ny apparat, CADScor®-system, som använder en icke-invasiv och strålningsfri metod för att utesluta stabil CAD baserad på akustisk fonokardiografi. Apparaten spelar in koronarblåsljud, vilket uppstår vid stenos i kranskärl, och beräknar patientens risk för CAD. Syftet med den här studien var att utvärdera metoden, testa CADScor® och beräkna apparatens sensitivitet, specificiteten samt positivt och negativt prediktivt värde (PPV och NPV). Tjugo patienter med misstänkt stabil CAD undersöktes med CADScor®-system och deras CAD-resultat jämfördes med resultatet efter myokardscintigrafi. Beräkningar visade att apparatens sensitivitet är 80 %, specificitet 60 %, PPV 40 % och NPV 90 %. Resultatet innebär att sannolikheten är 90 % för att en patient som fick CAD-score ≤ 20 är frisk. Det är tillräckligt högt för att använda CADScor® i klinisk praxis för patienter med låg risk för CAD. / Coronary artery disease (CAD) is one of the most common cardiovascular diseases and one of the dominant causes of death in older people worldwide. In order to confirm diagnosis and assess the severity of the disease, several diagnostic strategies are being used today. Increased health costs and long queues for investigations raise concerns among patients, medical doctors and authorities. A simple, safe and cost-effective method that can assist in the investigation of CAD is of major importance. The Danish company Acarix developed a new device, CADScor® system, which uses a non-invasive and radiation-free method to exclude stable CAD based on acoustic phonocardiography. The device records intracoronary murmurs, resulting from coronary stenosis, and calculates the patient's risk of CAD. The purpose of this study was to evaluate the method, test CADScor® and calculate the device's sensitivity, specificity and positive and negative predictive value (PPV and NPV). Twenty patients with suspected stable CAD were examined with CADScor® systems, and their CAD results were compared to the result after myocardial perfusion scan. Calculations showed that the device's sensitivity is 80 %, specificity 60 %, PPV 40 % and NPV 90 %. The result means that the probability is 90 % that a patient who has a CAD score ≤ 20 is healthy. It is high enough to use CADScor® in clinical practice for patients with low risk for CAD.
14

Stanovení krevního tlaku pomocí chytrého telefonu / Blood pressure estimation using smartphone

Vařečka, Martin January 2018 (has links)
Blood pressure is one of the basic indicators of the health state of the cardiovascular system. High blood pressure is the main risk factor of ischemic heart disease, atherosclerosis and stroke. Therefore, it is important to monitor long-term changes in blood pressure and respond in time to these changes. Blood pressure meters are not standard household equipment, while a well-equipped smartphone is. Smartphones contain a large number of sensors capable of measuring biomedical signals. This thesis focuses on creating an application capable of determining blood pressure using data obtained from these sensors.

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