Model-Agnostic Binary Patch Grouping for Bone Marrow Whole Slide Image Representation

Histopathology is the reference standard for pathology diagnosis, and has evolved with the digitization of glass slides [ie, whole slide images (WSIs)]. Trained histopathologists can help diagnose disease by examining WSIs visually, but this process is time consuming and prone to variability. To address these issues, artificial intelligence models are being developed to generate slide-level representations of WSIs, summarizing the entire slide as a single vector. This enables various computational pathology applications, including interslide search, multimodal training, and slide-level classification.
Source: American Journal of Pathology - Category: Pathology Authors: Tags: Regular article Source Type: research