Investigator

Xiaofeng Liu

Assistant Professor · Yale University, Radiology&Biomedical Imaging; Biomedical Informatics&Data Science; Biomedical Engineering

XLXiaofeng Liu
Papers(1)
Dendrite cross attent…
Collaborators(1)
Sourav Saini
Institutions(2)
Unknown InstitutionIndian Institute of T…

Papers

Dendrite cross attention for high-dose-rate brachytherapy distribution planning

Cervical cancer is a significant global health issue, and high-dose-rate brachytherapy (HDR-BT) is crucial for its treatment. However, manually creating HDR-BT plans is time-consuming and heavily relies on the planner's expertise, making standardization difficult. This study introduces two advanced deep learning models to address this need: Bi-branch Cross-Attention UNet (BiCA-UNet) and Dendrite Cross-Attention UNet (DCA-UNet). BiCA-UNet enhances the correlation between the CT scan and segmentation maps of the clinical target volume (CTV), applicator, bladder, and rectum. It uses two branches: one processes the stacked input of CT scans and segmentations, and the other focuses on the CTV segmentation. A cross-attention mechanism integrates these branches, improving the model's understanding of the CTV region for accurate dose predictions. Building on BiCA-UNet, DCA-UNet further introduces a primary branch of stacked inputs and three secondary branches for CTV, bladder, and rectum segmentations forming a dendritic structure. Cross attention with bladder and rectum segmentation helps the model understand the regions of organs at risk (OAR), refining dose prediction. Evaluation of these models using multiple metrics indicates that both BiCA-UNet and DCA-UNet significantly improve HDR-BT dose prediction accuracy for various applicator types. The cross-attention mechanisms enhance the feature representation of critical anatomical regions, leading to precise and reliable treatment plans. This research highlights the potential of BiCA-UNet and DCA-UNet in advancing HDR-BT planning, contributing to the standardization of treatment plans, and offering promising directions for future research to improve patient outcomes in the source data.

79Works
1Papers
1Collaborators
Global Burden of Disease

Positions

2024–

Assistant Professor

Yale University · Radiology&Biomedical Imaging; Biomedical Informatics&Data Science; Biomedical Engineering

2019–

Assistant Professor

Harvard University

2020–

Investigator/Research Staff

Massachusetts General Hospital · Radiology

2019–

Pre/Post-Doc Fellow

Beth Israel Deaconess Medical Center · Neurology

2016–

Research Associate

Carnegie Mellon University · Electrical and Computer Engineering

Education

2019

PhD

University of Chinese Academy of Sciences

2019

Carnegie Mellon University · ECE

2014

B.A. Communication

University of Science and Technology of China

2014

B.Eng of Automation

University of Science and Technology of China · Automation

Country

US

Keywords
Deep LearningAIImage ProcessingMedical Image Analysis