Research

Machine Learning-Empowered Pathology

The overarching goal of our lab is to establish robust, generalizable, and fair artificial intelligence (AI) methods for quantitative pathology evaluation. We developed the first fully-automated algorithm to analyze digital whole-slide pathology images. Our methods successfully identified cancer diagnoses, predicted molecular subtypes, and informed patients' prognoses.


Publications

Quantitative Pathology

Linking Pathology with Multi-Omics Profiles

We designed data-driven methods to connect molecular profiles and microscopic imaging patterns of cancer tissues. Our approaches elucidate the molecular aberrations underpinning the diverse morphology of cancer cells.


Publications

Multi-Omics

Enhancing Clinical Practice with Real-World Data

We develop multi-modal AI models to integrate pathology, molecular, and clinical profiles of patients from diverse populations. Our approaches predicted patients' treatment responses and adverse effects, which informs clinical decisions on treatment selection.


Publications

Multi-Omics