AI-Powered Survival Prediction in Lung Cancer Using PET/CT Imaging


Published in: Journal of Nuclear Medicine (2024)
Cited by: 1

Breakthrough:
This study evaluates semi-supervised machine learning approaches for predicting lung cancer survival outcomes, integrating PET/CT imaging and clinical features.

Key Findings:
AI-powered PET/CT feature extraction improves prognosis accuracy.
Semi-supervised learning improves survival prediction in smaller datasets.
Model integrates radiomics and clinical biomarkers for precision medicine.

Impact:
The research provides advanced AI solutions for oncology, helping oncologists personalize treatment strategies for better patient outcomes.

Read More: [Insert Publication Link]

 


Leave a Reply

Your email address will not be published. Required fields are marked *