Daniya Zamalieva, MS has joined the clinical image analysis group as a new Ph.D. student majoring in Computer Science and Engineering program. She received her B.S. degree in Computer Engineering in 2007 from Hacettepe University and M.S. degree in 2009 from Bilkent University, Turkey. During her graduate study, she was interested in Computer Vision and Pattern Recognition and she worked on processing and analysis of remotely sensed images. During her PhD studies, she will focus on computer-assisted diagnosis and creation of imaging biomarkers.
The CIA lab has recently had 4 articles published in PLOS One and the Journal of Urology. Automated Staging Of T1 Bladder Cancer Using Digital Pathologic H&E Images: A Deep Learning approach (Journal of Urology). The paper discusses the need for accurately gauging tumor cell intrusion into Lamina Propria in an effort to substage bladder cancer. It explains how transfer learning in conjunction with Convolutional Neural Networks can be used to accurately identify different bladder layers and then compute the distance between tumor nuclei and Lamina Propria. The article is available here: https://www.jurology.com/article/S0022-5347(18)41148-2/pdf Identifying tumor in pancreatic neuroendocrine neoplasms from Ki67 images using transfer learning (PLOS One). This paper examines a proposed methodology to automatically differentiate between NET and non-tumor regions based on images of Ki67 stained biopsies. It also uses transfer learning to exploit a rich set of features ...
Comments
Post a Comment