dor_id: 4143003

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510.0.#.a: Scopus, Directory of Open Access Journals (DOAJ); Sistema Regional de Información en Línea para Revistas Científicas de América Latina, el Caribe, España y Portugal (Latindex); Indice de Revistas Latinoamericanas en Ciencias (Periódica); La Red de Revistas Científicas de América Latina y el Caribe, España y Portugal (Redalyc); Consejo Nacional de Ciencia y Tecnología (CONACyT); Google Scholar Citation

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336.#.#.3: Artículo de Investigación

336.#.#.a: Artículo

351.#.#.6: https://jart.icat.unam.mx/index.php/jart

351.#.#.b: Journal of Applied Research and Technology

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270.1.#.p: Revistas UNAM. Dirección General de Publicaciones y Fomento Editorial, UNAM en revistas@unam.mx

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856.4.0.u: https://jart.icat.unam.mx/index.php/jart/article/view/1544/964

100.1.#.a: Rani, Pooja; Kumar, Rajneesh; Jain, Anurag

524.#.#.a: Rani, Pooja, et al. (2023). An Intelligent System for Heart Disease Diagnosis using Regularized Deep Neural Network. Journal of Applied Research and Technology; Vol. 21 Núm. 1, 2023; 87-97. Recuperado de https://repositorio.unam.mx/contenidos/4143003

245.1.0.a: An Intelligent System for Heart Disease Diagnosis using Regularized Deep Neural Network

502.#.#.c: Universidad Nacional Autónoma de México

561.1.#.a: Instituto de Ciencias Aplicadas y Tecnología, UNAM

264.#.0.c: 2023

264.#.1.c: 2023-02-27

653.#.#.a: Heart Disease Diagnosis; Deep Learning; Deep Neural Network; Regularization; Loss; Accuracy

506.1.#.a: La titularidad de los derechos patrimoniales de esta obra pertenece a las instituciones editoras. Su uso se rige por una licencia Creative Commons BY-NC-SA 4.0 Internacional, https://creativecommons.org/licenses/by-nc-sa/4.0/legalcode.es, para un uso diferente consultar al responsable jurídico del repositorio por medio del correo electrónico gabriel.ascanio@icat.unam.mx

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520.3.#.a: Heart disease is one of the deadly diseases. Timely detection of the disease can prevent mortality. In this paper, an intelligent system is proposed for the diagnosis of heart disease using clinical parameters at early stages. The system is developed using the Regularized Deep Neural Network model (Reg-DNN). Cleveland heart disease dataset has been used for training the model. Regularization has been achieved by using dropout and L2 regularization. Efficiency of Reg-DNN was evaluated by using hold-out validation method.70% data was used for training the model and 30% data was used for testing the model. Results indicate that Reg-DNN provided better performance than conventional DNN. Regularization has helped to overcome overfitting. Reg-DNN has achieved an accuracy of 94.79%. Results achieved are quite promising as compared to existing systems in the literature. Authors developed a system containing a graphical user interface. So, the system can be easily used by anyone to diagnose heart disease using the clinical parameters.

773.1.#.t: Journal of Applied Research and Technology; Vol. 21 Núm. 1 (2023); 87-97

773.1.#.o: https://jart.icat.unam.mx/index.php/jart

022.#.#.a: ISSN electrónico: 2448-6736; ISSN: 1665-6423

310.#.#.a: Bimestral

300.#.#.a: Páginas: 87-97

264.#.1.b: Instituto de Ciencias Aplicadas y Tecnología, UNAM

doi: https://doi.org/10.22201/icat.24486736e.2023.21.1.1544

harvesting_date: 2023-11-08 13:10:00.0

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Artículo

An Intelligent System for Heart Disease Diagnosis using Regularized Deep Neural Network

Rani, Pooja; Kumar, Rajneesh; Jain, Anurag

Instituto de Ciencias Aplicadas y Tecnología, UNAM, publicado en Journal of Applied Research and Technology, y cosechado de Revistas UNAM

Licencia de uso

Procedencia del contenido

Cita

Rani, Pooja, et al. (2023). An Intelligent System for Heart Disease Diagnosis using Regularized Deep Neural Network. Journal of Applied Research and Technology; Vol. 21 Núm. 1, 2023; 87-97. Recuperado de https://repositorio.unam.mx/contenidos/4143003

Descripción del recurso

Autor(es)
Rani, Pooja; Kumar, Rajneesh; Jain, Anurag
Tipo
Artículo de Investigación
Área del conocimiento
Ingenierías
Título
An Intelligent System for Heart Disease Diagnosis using Regularized Deep Neural Network
Fecha
2023-02-27
Resumen
Heart disease is one of the deadly diseases. Timely detection of the disease can prevent mortality. In this paper, an intelligent system is proposed for the diagnosis of heart disease using clinical parameters at early stages. The system is developed using the Regularized Deep Neural Network model (Reg-DNN). Cleveland heart disease dataset has been used for training the model. Regularization has been achieved by using dropout and L2 regularization. Efficiency of Reg-DNN was evaluated by using hold-out validation method.70% data was used for training the model and 30% data was used for testing the model. Results indicate that Reg-DNN provided better performance than conventional DNN. Regularization has helped to overcome overfitting. Reg-DNN has achieved an accuracy of 94.79%. Results achieved are quite promising as compared to existing systems in the literature. Authors developed a system containing a graphical user interface. So, the system can be easily used by anyone to diagnose heart disease using the clinical parameters.
Tema
Heart Disease Diagnosis; Deep Learning; Deep Neural Network; Regularization; Loss; Accuracy
Idioma
eng
ISSN
ISSN electrónico: 2448-6736; ISSN: 1665-6423

Enlaces