2023
DOI: 10.3390/biomedicines11102604
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On the Use of Machine Learning Techniques and Non-Invasive Indicators for Classifying and Predicting Cardiac Disorders

Raydonal Ospina,
Adenice G. O. Ferreira,
Hélio M. de Oliveira
et al.

Abstract: This research aims to enhance the classification and prediction of ischemic heart diseases using machine learning techniques, with a focus on resource efficiency and clinical applicability. Specifically, we introduce novel non-invasive indicators known as Campello de Souza features, which require only a tensiometer and a clock for data collection. These features were evaluated using a comprehensive dataset of heart disease cases from a machine learning data repository. Our findings highlight the ability of mac… Show more

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Cited by 5 publications
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“…from prior studies discussing the implementation of biometric systems and machine learning methods [5,19,60,[78][79][80][81][82]. Signatures are the input and they are first scaled to fit a unitary square, and interpolated in order to have the same number of data for all subjects.…”
Section: Flowchart Of the Verification Systemmentioning
confidence: 99%
“…from prior studies discussing the implementation of biometric systems and machine learning methods [5,19,60,[78][79][80][81][82]. Signatures are the input and they are first scaled to fit a unitary square, and interpolated in order to have the same number of data for all subjects.…”
Section: Flowchart Of the Verification Systemmentioning
confidence: 99%