deepPERFECT: Novel Deep Learning CT Synthesis Method for Expeditious Pancreatic Cancer Radiotherapy
Hamed Hooshangnejad, Quan Chen, Xue Feng, Rui Zhang, Kai Ding

TL;DR
deepPERFECT is a deep learning model that rapidly synthesizes treatment-ready CT images from diagnostic scans, streamlining pancreatic cancer radiotherapy planning and potentially improving patient outcomes.
Contribution
This study introduces a novel deep learning approach, specifically a 3D GAN, for fast CT synthesis to expedite pancreatic cancer radiotherapy workflows.
Findings
3D GAN achieved DSC of 0.93 for body contours
Hausdorff distance was 4.6 mm, indicating high accuracy
Workflow shortened by at least one week
Abstract
Pancreatic cancer with more than 60,000 new cases each year has less than 10 percent 5-year overall survival. Radiation therapy (RT) is an effective treatment for Locally advanced pancreatic cancer (LAPC). The current clinical RT workflow is lengthy and involves separate image acquisition for diagnostic CT (dCT) and planning CT (pCT). Studies have shown a reduction in mortality rate from expeditious radiotherapy treatment. dCT and pCT are acquired separately because of the differences in the image acquisition setup and patient body. We are presenting deepPERFECT: deep learning-based model to adapt the shape of the patient body on dCT to the treatment delivery setup. Our method expedites the treatment course by allowing the design of the initial RT planning before the pCT acquisition. Thus, the physicians can evaluate the potential RT prognosis ahead of time, verify the plan on the…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Pancreatic and Hepatic Oncology Research · Medical Imaging Techniques and Applications
