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Karakterizacija in avtomatska klasifikacija električnih aktivnosti maternice : diplomsko delo
ID Libenšek, Sonja (Author), ID Jager, Franc (Mentor) More about this mentor... This link opens in a new window

URLURL - Presentation file, Visit http://eprints.fri.uni-lj.si/2886/ This link opens in a new window

Abstract
Napovedovanje prezgodnjega poroda je danes še vedno nezanesljivo, zato številni raziskovalci iščejo metode, ki bi izboljšale njegovo napovedljivost. Nekatere izmed trenutnih raziskav temeljijo na analizi električne aktivnosti maternice, saj vsebuje bogato informacijo o elektrofizioloških lastnostih maternice. Razvili smo algoritme za karakterizacijo, avtomatsko detekcijo in avtomatsko klasifikacijo električnih aktivnosti maternice. Karakterizirali smo jih na osnovi močnostnostnih spektrov, rezultate pa ovrednotili z enosmerno analizo variance ANOVA. Zmogljivost detektorja smo ocenili z uporabo posebnih metrik zmogljivosti. Z optimizacijo detektorja smo dosegli 80,2 % občutljivost in 69,8 % pozitivno napovedljivost. Zmogljivost klasifikatorja smo ocenili z uporabo standardnih metrik zmogljivosti. Najboljše ločevanje med popadki in drugimi električnimi aktivnostmi smo dosegli s klasifikatorjem najbližjega soseda. Dosegli smo 99,1 % občutljivost in 97,3 % specifičnost.

Language:Slovenian
Keywords:elektrohisterogram, karakterizacija, detekcija, klasifikacija, električne aktivnosti maternice, podatkovna baza terminskih in prezgodnjih porodov, TPEHG DB, računalništvo, računalništvo in matematika, univerzitetni študij, interdisciplinarni študij, diplomske naloge
Work type:Undergraduate thesis
Typology:2.11 - Undergraduate Thesis
Organization:FRI - Faculty of Computer and Information Science
Publisher:[S. Libenšek]
Year:2014
Number of pages:141 str.
PID:20.500.12556/RUL-69127 This link opens in a new window
UDC:004:618.414.1(043.2)
COBISS.SI-ID:1536185795 This link opens in a new window
Publication date in RUL:10.07.2015
Views:1227
Downloads:263
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Secondary language

Language:English
Title:Characterization and automatic classification of electrical activities of uterus
Abstract:
Nowadays, prediction of preterm birth is still uncertain and numerous scientists are searching for methods to improve its predictability. Some of the current researches are based on the analysis of electrical activity of uterus which contains rich information about it's electrophysical properties. We developed algorithms for automatic detection, characterization and automatic classification of the electrical activity of uterus. We characterized them on the basis of power spectrums and evaluated the results with the one-way analysis of the variance ANOVA. The efficiency of detector has been assessed by special rate of efficiency. With detector’s optimization we achieved 80.2 % sensitivity and 69.8 % positive predictability. The efficiency of the classifier has been assessed by the standard rate of efficiency. The best distinguishing of uterine activity we achieved with the nearest neighbor classifier. We achieved 99.1 % sensitivity and 97.3 % specificity.

Keywords:electrohysterogram, characterization, detection, classification, electrical activities of uterus, term-preterm electrohysterogram database, TPEHG DB, computer science, computer science and mathematics, interdisciplinary studies, diploma

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