• Español
  • English
Iniciar sesión
¿Nuevo Usuario? Registrarse ¿Has olvidado tu contraseña?
Logotipo del repositorio
  • Inicio
  • Comunidades
  • Navegar
  • Estadísticas y Analíticas
  1. Inicio
  2. Buscar por autor

Examinando por Autor "Roque Paredes, Ofelia"

Seleccione resultados tecleando las primeras letras
Mostrando 1 - 2 de 2
  • Resultados por página
  • Opciones de ordenación
  • Cargando...
    Miniatura
    PublicaciónAcceso abierto
    Convolutional Neural Networks with Transfer Learning for Pneumonia Detection
    (Science and Information Organization, 2022) Iparraguirre-Villanueva, Orlando; Guevara-Ponce, Victor; Roque Paredes, Ofelia; Sierra-Liñan, Fernando; Zapata-Paulini, Joselyn; Cabanillas-Carbonell, Michael
    “Pneumonia is a type of acute respiratory infection caused by microbes, and viruses that affect the lungs. Pneumonia is the leading cause of infant mortality in the world, accounting for 81% of deaths in children under five years of age. There are approximately 1.2 million cases of pneumonia in children under five years of age and 180 000 died in 2016. Early detection of pneumonia can help reduce mortality rates. Therefore, this paper presents four convolutional neural network (CNN) models to detect pneumonia from chest X-ray images. CNNs were trained to classify X-ray images into two types: normal and pneumonia, using several convolutional layers. The four models used in this work are pre-trained: VGG16, VGG19, ResNet50, and InceptionV3. The measures that were used for the evaluation of the results are Accuracy, recall, and F1-Score. The models were trained and validated with the dataset. The results showed that the Inceptionv3 model achieved the best performance with 72.9% accuracy, recall 93.7%, and F1-Score 82%. This indicates that CNN models are suitable for detecting pneumonia with high accuracy.“
  • Cargando...
    Miniatura
    PublicaciónAcceso abierto
    Convolutional Neural Networks with Transfer Learning for Pneumonia Detection
    (Science and Information Organization, 2022) Iparraguirre-Villanueva, Orlando; Guevara-Ponce, Victor; Roque Paredes, Ofelia; Sierra-Liñan, Fernando; Zapata-Paulini, Joselyn; Cabanillas-Carbonell, Michael
    “Pneumonia is a type of acute respiratory infection caused by microbes, and viruses that affect the lungs. Pneumonia is the leading cause of infant mortality in the world, accounting for 81% of deaths in children under five years of age. There are approximately 1.2 million cases of pneumonia in children under five years of age and 180 000 died in 2016. Early detection of pneumonia can help reduce mortality rates. Therefore, this paper presents four convolutional neural network (CNN) models to detect pneumonia from chest X-ray images. CNNs were trained to classify X-ray images into two types: normal and pneumonia, using several convolutional layers. The four models used in this work are pre-trained: VGG16, VGG19, ResNet50, and InceptionV3. The measures that were used for the evaluation of the results are Accuracy, recall, and F1-Score. The models were trained and validated with the dataset. The results showed that the Inceptionv3 model achieved the best performance with 72.9% accuracy, recall 93.7%, and F1-Score 82%. This indicates that CNN models are suitable for detecting pneumonia with high accuracy.“
Más sobre Wiener...
  • Admisión
  • Nosotros
  • Bolsa de trabajo
  • Posgrado
  • Portal para el estudiante
  • Contáctenos
  • Libro de Reclamaciones
  • Transparencia
  • Canal Ético
Carreras
  • Farmacia y Bioquímica
  • Tecnología Médica en Terapia Física y Rehabilitación
  • Tecnología Médica en Laboratorio Clínico y Anatomía Patológica
  • Psicología
  • Odontología
  • Obstetricia
  • Nutrición y Dietética
  • Medicina Humana
  • Enfermería
  • Arquitectura
  • Ingeniería Civil
  • Ingeniería de Sistemas e Informática
  • Ingeniería Industrial y de Gestión Empresarial
  • Derecho y Ciencia Política
  • Administración y Marketing
  • Contabilidad y Auditoría
  • Administración y Negocios Internacionales
  • Administración y Dirección de Empresas
  • Administración en Turismo y Hotelería
  • Comunicación en Medios Digitales
Centros Wiener
  • Centro de Análisis Clínicos
  • Centro Odontológico
  • Centro de Terapia Física y Rehabilitación
Servicios
  • Biblioteca
  • Responsabilidad Social
  • Registros Académicos
  • Secretaría General
  • Bienestar Estudiantil
  • Dirección de Empleabilidad y Alumni
  • Defensoría Universitaria
Novedades
  • Eventos
  • Noticias
  • Info Wiener
  • Boletín de Calidad
  • Wiener Guía del Estudiante Pregrado
  • Trabaja con Nosotros
Jr. Larraburre y Unanue 110 Lima
Av. Arequipa 440 Lima
Jr. Saco Oliveros 150 Lima
Av. Arenales 1555 Lince
Escríbenos:
administrador.repositorio@uwiener.edu.pe
Síguenos en:
Sistema DSPACE 7 - Metabiblioteca | logo