Applied Computing in Medicine and Health 2016
DOI: 10.1016/b978-0-12-803468-2.00006-0
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Prediction of Intrapartum Hypoxia from Cardiotocography Data Using Machine Learning

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Cited by 9 publications
(6 citation statements)
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“…Because sensitivity concentrates on the actual positives that are correctly predicted and since our data set is highly imbalanced (9% negative class and 91% positive class), one can achieve very high sensitivity by predicting all the cases to be a positive class. In other words, classifiers are biased towards detecting the majority class and less sensitive to the minority class, and this leads to bias in classification [49], [50]. In such highly imbalanced data, the main interest will be to correctly classify the minority class.…”
Section: Resultsmentioning
confidence: 99%
“…Because sensitivity concentrates on the actual positives that are correctly predicted and since our data set is highly imbalanced (9% negative class and 91% positive class), one can achieve very high sensitivity by predicting all the cases to be a positive class. In other words, classifiers are biased towards detecting the majority class and less sensitive to the minority class, and this leads to bias in classification [49], [50]. In such highly imbalanced data, the main interest will be to correctly classify the minority class.…”
Section: Resultsmentioning
confidence: 99%
“…An essential diagnostic tool, CXR [ 157 159 ], and CT scans [ 160 ] provide a fast and easily accessible overview of the chest’s internal structures like the heart, lungs, ribs, and diaphragm. Moreover, few studies [ 137 142 ] used cough sounds for the identification of several chest diseases.…”
Section: Resultsmentioning
confidence: 99%
“…When imbalanced datasets are supplied, one class will have the majority of the instances, while the other classes will only have a small number of instances among them. This results in an uneven distribution of classes and the incorrect categorization of examples belonging to minority groups since the classifier system tends to be biased and promotes cases belonging to the majority [ 137 ]. It has been observed that (see Tables 2 & 3 ) most of the lung disease classes of the CXR, CT scan, and cough sound datasets are imbalanced.…”
Section: Methodsmentioning
confidence: 99%
“…Furthermore, a study by Francis et al [37] recommended utilizing the Apgar score in the ML model as a hypoxia measure. The study's primary objective was to use ML algorithms to identify fetal hypoxia at delivery.…”
Section: Fetal Hypoxia During Labor Using DLmentioning
confidence: 99%