Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386995544> ?p ?o ?g. }
- W4386995544 endingPage "2604" @default.
- W4386995544 startingPage "2604" @default.
- W4386995544 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 machine learning algorithms to not only streamline diagnostic procedures but also reduce diagnostic errors and the dependency on extensive clinical testing. Three key features—mean arterial pressure, pulsatile blood pressure index, and resistance-compliance indicator—were found to significantly improve the accuracy of machine learning algorithms in binary heart disease classification. Logistic regression achieved the highest average accuracy among the examined classifiers when utilizing these features. While such novel indicators contribute substantially to the classification process, they should be integrated into a broader diagnostic framework that includes comprehensive patient evaluations and medical expertise. Therefore, the present study offers valuable insights for leveraging data science techniques in the diagnosis and management of cardiovascular diseases." @default.
- W4386995544 created "2023-09-25" @default.
- W4386995544 creator A5024860687 @default.
- W4386995544 creator A5037117333 @default.
- W4386995544 creator A5072230711 @default.
- W4386995544 creator A5078073624 @default.
- W4386995544 creator A5079421486 @default.
- W4386995544 date "2023-09-22" @default.
- W4386995544 modified "2023-09-27" @default.
- W4386995544 title "On the Use of Machine Learning Techniques and Non-Invasive Indicators for Classifying and Predicting Cardiac Disorders" @default.
- W4386995544 cites W1510073064 @default.
- W4386995544 cites W1964422979 @default.
- W4386995544 cites W1968259981 @default.
- W4386995544 cites W1987730138 @default.
- W4386995544 cites W1989164753 @default.
- W4386995544 cites W2018758758 @default.
- W4386995544 cites W2026841079 @default.
- W4386995544 cites W2027790217 @default.
- W4386995544 cites W2050667991 @default.
- W4386995544 cites W2062302861 @default.
- W4386995544 cites W2105881518 @default.
- W4386995544 cites W2107432340 @default.
- W4386995544 cites W2111547563 @default.
- W4386995544 cites W2114260241 @default.
- W4386995544 cites W2118483385 @default.
- W4386995544 cites W2140964565 @default.
- W4386995544 cites W2142635246 @default.
- W4386995544 cites W2152714789 @default.
- W4386995544 cites W2169733482 @default.
- W4386995544 cites W2503926783 @default.
- W4386995544 cites W2611822125 @default.
- W4386995544 cites W2787894218 @default.
- W4386995544 cites W2903924721 @default.
- W4386995544 cites W2911964244 @default.
- W4386995544 cites W2978725006 @default.
- W4386995544 cites W4220701919 @default.
- W4386995544 cites W4235092540 @default.
- W4386995544 cites W4254699240 @default.
- W4386995544 cites W4298872162 @default.
- W4386995544 cites W4302027119 @default.
- W4386995544 cites W4313648730 @default.
- W4386995544 cites W4315781749 @default.
- W4386995544 cites W4317930313 @default.
- W4386995544 cites W4324143449 @default.
- W4386995544 cites W4376492258 @default.
- W4386995544 cites W4381661454 @default.
- W4386995544 cites W4384036417 @default.
- W4386995544 cites W4384341163 @default.
- W4386995544 cites W4384492788 @default.
- W4386995544 cites W4386142326 @default.
- W4386995544 cites W4386423714 @default.
- W4386995544 doi "https://doi.org/10.3390/biomedicines11102604" @default.
- W4386995544 hasPublicationYear "2023" @default.
- W4386995544 type Work @default.
- W4386995544 citedByCount "0" @default.
- W4386995544 crossrefType "journal-article" @default.
- W4386995544 hasAuthorship W4386995544A5024860687 @default.
- W4386995544 hasAuthorship W4386995544A5037117333 @default.
- W4386995544 hasAuthorship W4386995544A5072230711 @default.
- W4386995544 hasAuthorship W4386995544A5078073624 @default.
- W4386995544 hasAuthorship W4386995544A5079421486 @default.
- W4386995544 hasBestOaLocation W43869955441 @default.
- W4386995544 hasConcept C111919701 @default.
- W4386995544 hasConcept C119857082 @default.
- W4386995544 hasConcept C12267149 @default.
- W4386995544 hasConcept C124101348 @default.
- W4386995544 hasConcept C142724271 @default.
- W4386995544 hasConcept C151956035 @default.
- W4386995544 hasConcept C154945302 @default.
- W4386995544 hasConcept C41008148 @default.
- W4386995544 hasConcept C534262118 @default.
- W4386995544 hasConcept C66905080 @default.
- W4386995544 hasConcept C71924100 @default.
- W4386995544 hasConcept C98045186 @default.
- W4386995544 hasConceptScore W4386995544C111919701 @default.
- W4386995544 hasConceptScore W4386995544C119857082 @default.
- W4386995544 hasConceptScore W4386995544C12267149 @default.
- W4386995544 hasConceptScore W4386995544C124101348 @default.
- W4386995544 hasConceptScore W4386995544C142724271 @default.
- W4386995544 hasConceptScore W4386995544C151956035 @default.
- W4386995544 hasConceptScore W4386995544C154945302 @default.
- W4386995544 hasConceptScore W4386995544C41008148 @default.
- W4386995544 hasConceptScore W4386995544C534262118 @default.
- W4386995544 hasConceptScore W4386995544C66905080 @default.
- W4386995544 hasConceptScore W4386995544C71924100 @default.
- W4386995544 hasConceptScore W4386995544C98045186 @default.
- W4386995544 hasIssue "10" @default.
- W4386995544 hasLocation W43869955441 @default.
- W4386995544 hasOpenAccess W4386995544 @default.
- W4386995544 hasPrimaryLocation W43869955441 @default.
- W4386995544 hasRelatedWork W1996541855 @default.
- W4386995544 hasRelatedWork W2019868234 @default.
- W4386995544 hasRelatedWork W2376598232 @default.
- W4386995544 hasRelatedWork W2377159291 @default.
- W4386995544 hasRelatedWork W2554948173 @default.
- W4386995544 hasRelatedWork W3195168932 @default.
- W4386995544 hasRelatedWork W4316658362 @default.
- W4386995544 hasRelatedWork W4321636153 @default.