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New AI tool accurately detects six different cancer types on whole-body PET/CT scans

New AI tool accurately detects six different cancer types on whole-body PET/CT scans
Illustrative examples of the predicted tumor segmentations by the deep transfer learning approach across six cancer types. Pre-therapy and post-therapy scans are shown for breast cancer. Credit: Kevin H. Leung et al., Johns Hopkins University, Baltimore, MD.

A novel AI approach can accurately detect six different types of cancer on whole-body PET/CT scans, according to research presented at the 2024 Society of Nuclear Medicine and Molecular Imaging Annual Meeting. By automatically quantifying tumor burden, the new tool can be useful for assessing patient risk, predicting treatment response, and estimating survival.

"Automatic detection and characterization of cancer are important clinical needs to enable early treatment," said Kevin H. Leung, Ph.D., research associate at Johns Hopkins University School of Medicine in Baltimore, Maryland. "Most AI models that aim to detect cancer are built on small to moderately sized datasets that usually encompass a single malignancy and/or radiotracer. This represents a critical bottleneck in the current training and evaluation paradigm for AI applications in medical imaging and radiology."

To address this issue, researchers have developed a deep transfer learning approach (a type of AI) for fully automated, whole-body tumor segmentation and prognosis on PET/CT scans. Data from 611 FDG PET/CT scans of patients with , melanoma, lymphoma, head and , and , as well as 408 PSMA PET/CT scans of prostate cancer patients, were analyzed in the study.

The AI approach automatically extracted radiomic features and whole-body imaging measures from the predicted tumor segmentations to quantify molecular and uptake across all cancer types. Quantitative features and imaging measures were used to build to demonstrate prognostic value for risk stratification, survival estimation, and prediction of in patients with cancer.

"In addition to performing cancer prognosis, the approach provides a framework that will help improve patient outcomes and survival by identifying robust predictive biomarkers, characterizing tumor subtypes, and enabling the early detection and treatment of cancer," noted Leung. "The approach may also assist in the early management of patients with advanced, end-stage disease by identifying appropriate treatment regimens and predicting response to therapies, such as radiopharmaceutical therapy."

Leung noted that in the future generalizable, fully automated AI tools will play a major role in imaging centers by assisting physicians in interpreting PET/CT scans of patients with cancer. The deep learning approach may also lead to the discovery of important molecular insights about the underlying biological processes that may be currently understudied in large-scale patient populations.

More information: Abstract 241979: Fully Automated Whole-Body Tumor Segmentation on PET/CT using Deep Transfer Learning, Journal of Nuclear Medicine (2024).

Journal information: Journal of Nuclear Medicine
Provided by Society of Nuclear Medicine and Molecular Imaging
Citation: New AI tool accurately detects six different cancer types on whole-body PET/CT scans (2024, June 10) retrieved 18 June 2024 from https://medicalxpress.com/news/2024-06-ai-tool-accurately-cancer-body.html
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