AI Article Synopsis

  • This study aims to develop an intelligent predictive system for early detection and accurate prediction of cardiovascular disease (CVD), utilizing deep learning and data mining techniques.
  • The system involves key steps like data preprocessing, feature selection, and disease classification, enhancing overall prediction effectiveness.
  • Four machine learning models achieved high accuracies, with XG-Boost reaching 99.00%, while the proposed CardioVitalNet achieved 87.45% accuracy, providing insights for better medical diagnostics.

Article Abstract

Aiming at early detection and accurate prediction of cardiovascular disease (CVD) to reduce mortality rates, this study focuses on the development of an intelligent predictive system to identify individuals at risk of CVD. The primary objective of the proposed system is to combine deep learning models with advanced data mining techniques to facilitate informed decision-making and precise CVD prediction. This approach involves several essential steps, including the preprocessing of acquired data, optimized feature selection, and disease classification, all aimed at enhancing the effectiveness of the system. The chosen optimal features are fed as input to the disease classification models and into some Machine Learning (ML) algorithms for improved performance in CVD classification. The experiment was simulated in the Python platform and the evaluation metrics such as accuracy, sensitivity, and F1_score were employed to assess the models' performances. The ML models (Extra Trees (ET), Random Forest (RF), AdaBoost, and XG-Boost) classifiers achieved high accuracies of 94.35%, 97.87%, 96.44%, and 99.00%, respectively, on the test set, while the proposed CardioVitalNet (CVN) achieved 87.45% accuracy. These results offer valuable insights into the process of selecting models for medical data analysis, ultimately enhancing the ability to make more accurate diagnoses and predictions.

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Source
http://dx.doi.org/10.1080/0954898X.2024.2343341DOI Listing

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