Cabrera Vives, Guillermo FelipeVasquez Venegas, Constanza Paz2021-05-032024-08-282021-05-032024-08-282020https://repositorio.udec.cl/handle/11594/5383Tesis presentada para optar al grado de Magíster en Ciencias de la Computación.Brain tumors are one of the leading cancer-related causes of death in all ages. The diversity of tumor shapes and the varying degrees of the visibility of their edges makes the analysis of tumors complex. The development of automatic tools can enhance tumor visualization and improve understanding and support of tumor-focused tasks. We propose an automatic brain tumor extraction method based on image inpainting. Using weak labels containing the approximate shape of the tumor, we are able to successfully remove the tumor from a Magnetic Resonance Image (MRI) by replacing it with non-tumor tissue through a partial convolution neural network trained over non-tumor tissue regions. Brain tumor extraction is then performed by calculating the residual between the original MRI and the reconstructed image without the tumor. The isolated tumor in the extracted tumor image is amenable to further analysis. To demonstrate the extracted tumor image potential, we performed tumor delineation using an active contour method. By clearly showing the tumor, the proposed method is valuable in helping experts come to an agreement when segmenting biomedical images.esCC BY-NC-ND 4.0 DEED Attribution-NonCommercial-NoDerivs 4.0 InternationalDiagnóstico por ImagenCáncer del CerebroDiagnóstico por ImagenSistemas de Formación de Imágenes en MedicinaImágenes Tridimensionales en MedicinaIndustria Innovación e InfraestructuraDeep image inpainting for automatic brain tumor extraction using weak labels.Tesis