Detecting Premature Ventricular Contraction by Using Regulated Discriminant Analysis with Very Sparse Training Data

Lynggaard, Per (2019) Detecting Premature Ventricular Contraction by Using Regulated Discriminant Analysis with Very Sparse Training Data. Applied Artificial Intelligence, 33 (3). pp. 229-248. ISSN 0883-9514

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Abstract

Pathological electrocardiogram is often used to diagnose abnormal cardiac disorders where accurate classification of the cardiac beat types is crucial for timely diagnosis of dangerous conditions. However, accurate, timely, and precise detection of arrhythmia-types like premature ventricular contraction is very challenging as these signals are multiform, i.e. a reliable detection of these requires expert annotations.

In this paper, a multivariate statistical classifier that is able to detect premature ventricular contraction beats is presented. This novel classifier can be trained with a very sparse amount of expert annotated data. To enable this, the dimensionality of the feature vector is kept very low, it uses strong designed features and a regularization mechanism. This approach is compared to other classifiers by using the MIT-BIH arrhythmia database. It has been found that the average accuracy, specificity, and sensitivity are above 96%, which is superior given the sparse amount of training data.

Item Type: Article
Subjects: Research Scholar Guardian > Computer Science
Depositing User: Unnamed user with email support@scholarguardian.com
Date Deposited: 19 Jun 2023 10:51
Last Modified: 06 Dec 2023 03:45
URI: http://science.sdpublishers.org/id/eprint/1191

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