2016 Computing in Cardiology Conference (CinC) 2016
DOI: 10.22489/cinc.2016.326-144
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A Novel Approach for Classification of Normal/Abnormal Phonocardiogram Recordings using Temporal Signal Analysis and Machine Learning

Abstract: This paper discusses a novel approach used for classification of phonocardiogram (PCG) excerpts into normal and abnormal classes as a part of Physionet 2016 challenge [10]. The dataset used for the competition comprises of cardiac abnormalities such as mitral valve prolapse (MVP), benign murmurs, aortic diseases, coronary artery disease, miscellaneous pathological conditions etc.[3], We present the approach used for classification from a general machine learning application standpoint, giving details on featur… Show more

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Cited by 20 publications
(21 citation statements)
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“…The suggested framework achieved 63-89% accuracy, indicating suggestive promising outcomes in comparison with other techniques attempting the challenge but on lower number of samples. It is a preliminary first attempt to utilize ANFIS on 1837 samples in contrast to other investigations, in which researchers utilized all HS samples (3126), or utilized more features and other sophisticated classifiers [37].…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…The suggested framework achieved 63-89% accuracy, indicating suggestive promising outcomes in comparison with other techniques attempting the challenge but on lower number of samples. It is a preliminary first attempt to utilize ANFIS on 1837 samples in contrast to other investigations, in which researchers utilized all HS samples (3126), or utilized more features and other sophisticated classifiers [37].…”
Section: Discussionmentioning
confidence: 99%
“…less than 1000 samples) such as references [8,30,33,38], as seen in Table V. However, some techniques in Table V employed more than 3000 HS signals [14,31,[34][35][36][37]; they had attempted some of these difficult signals, but they needed to explore high number of input parameters in the range of 13-124 different signal attributes. Thus, they reported better reliable performance than ANFIS, but this would not affect the suggestive capability of ANFIS to classify signals after training, particularly if the number of features was increased (e.g.…”
Section: Figure 6 the Anfis's Outputs On 78-test Samples For Class Amentioning
confidence: 99%
“…2 mainly contains two loops. In the first loop, there are 10 kinds of possible combinations, including C 1 10 , C 2 10 , C 3 10 , C 4 10 , C 5 10 , C 6 10 , C 7 10 , C 8 10 , C 9 10 , C 10 10 as the input of the second loop. All possible combinations (without repeating them) are enumerated rather than putting them all into the next loop.…”
Section: B Model Buildingmentioning
confidence: 99%
“…Davari et al extracted features from ECGs by frequency and nonlinear domain methods to identify CHD symptoms with support vector classifier (SVC) classifier [6]. Vernekar et al extracted Markov features along with other statistical and frequency domain features from phonocardiogram (PCG) and used the set of artificial neural network and gradient enhancement tree for model training [7]. Kumar et al also used ECG signals but with flexible analytic wavelet transform to characterize the CHD [8].…”
Section: Introductionmentioning
confidence: 99%
“…AI-assisted methods applied to biological signals can be categorized into four main categories: neural network-based and deep learning classification (Zabihi, Rad, Kiranyaz, Gabbouj, & Katsaggelos, 2016), support vector machine-based classification (Barhatte, Ghongade, & Thakare, 2015), hidden Markov-model-based classification (Vernekar, Nair, Vijaysenan, & Ranjan, 2016), and clustering-based classification (Clifford, 2016). Advanced deep learning techniques can automatically extract salient patterns directly from the input (i.e., training set) and use the produced knowledge to classify unseen samples (Shao, Wu, & Li, 2014).…”
Section: Introductionmentioning
confidence: 99%