Breast Cancer
Data: Stanford C-path, USA
Colorectal Cancer (CRC)
Data: TCGA, USA
Ulcer/IBD
Data: Dhaliwal Lab, GI, CCHMC, USA
AI for Pathology
AI is becoming commonplace and in the last few years foundation models (FMs) and vision large language models (VLMs) are increasingly used in processing various pathology data (WSIs, TMAs, pathology reports,...). Prasath Lab is interested in leveraging AI/ML/DL to solve challenges in large-scale image processing in the computational pathology domain. Given the expertise and experience with the multidisciplinary projects and the proven track-record in bringing quantitative approaches from mathematics, computer science, and statistics we are well-poised to be a connector among different domains. Prasath Lab is interested in harnessing LLMs, VLMs, and FMs for extracting valuable insights from imaging and text data in the pathology.
We are also part of multiple collaborative efforts and our research interests span the full spectrum of clinical, and basic research pathology informatics:
AI/ML for tissue analytics
Generative AI for pathology
Interpretable AI Tools
Multimodal Fusion (text, imaging, genomics,...)
Foundation Models
Selected publications:
A. Yonekura, H. Kawanaka, V. B. S. Prasath, B. J. Aronow, H. Takase. Automatic disease stage classification of glioblastoma multiforme histopathological images using deep convolutional neural network. Biomedical Engineering Letters, 8(3), 321-327, August 2018. doi:10.1007/s13534-018-0077-0
T. Hayakawa, V. B. S. Prasath, H. Kawanaka, B. J. Aronow, S. Tsuruoka. Computational nuclei segmentation methods in digital pathology - A survey. Archives of Computational Methods in Engineering, 28(1), 1-13, January 2021. doi:10.1007/s11831-019-09366-4
R. Nakagaki, S. S. Debsarkar, H. Kawanaka, B. Aronow, V. B. S. Prasath. Deep learning-based IDH1 gene mutation prediction using histopathological imaging and clinical data. Computers in Biology and Medicine, 179, 108902, September 2024. doi:10.1016/j.compbiomed.2024.108902