KTH Matematik |
Tid: 8 juni 2018 kl 14.25-15.00. Seminarierummet F11, KTH, Lindstedtsvägen 22. Karta!Föredragshållare: Hanna Gruselius (Master thesis) Titel: Generative Models and Feature Extraction on Patient Images and Structure Data in Radiation Therapy Abstract This Master thesis focuses on generative models for medical patient data for radiation therapy. The objective with the project is to implement and investigate the characteristics of a Variational Autoencoder applied to this diverse and versatile data. The questions this thesis aims to answer are: (i) whether the VAE can capture salient features of medical image data, and (ii) if these features can be used to compare similarity between patients. Furthermore, (iii) if the VAE network can successfully reconstruct its input and lastly (iv) if the VAE can generate artificial data having a reasonable anatomical appearance. The experiments carried out conveyed that the VAE is a promising method for feature extraction, since it appeared to ascertain similarity between patient images. Moreover, the reconstruction of training inputs demonstrated that the method is capable of identifying and preserving anatomical details. Regarding the generative abilities, the artificial samples generally conveyed fairly realistic anatomical structures. Future work could be to investigate the VAEs ability to generalize, with respect to both the amount of data and probabilistic considerations as well as probabilistic assumptions. |
Sidansvarig: Filip Lindskog Uppdaterad: 25/02-2009 |