Deep Learning Based Algorithms Improve Tumor Detection in PET/CT Scans
By MedImaging International staff writers Posted on 03 Jan 2025 |

Imaging techniques are essential for cancer diagnosis, as accurately determining the location, size, and type of tumors is critical for selecting the appropriate treatment. The key imaging methods include positron emission tomography (PET) and computed tomography (CT). PET utilizes radionuclides to visualize metabolic activity within the body, with malignant tumors exhibiting significantly higher metabolic rates than benign tissues. For this, fluorine-18-deoxyglucose (FDG), a radioactively labeled glucose, is commonly employed. In CT, the body is scanned layer by layer using an X-ray tube to visualize anatomical structures and pinpoint tumors. Cancer patients often present with numerous lesions—pathological changes resulting from tumor growth—and capturing all lesions for a comprehensive view is necessary. Typically, doctors manually mark tumor lesions on 2D slice images, a process that is very time-consuming. An automated algorithm for evaluation could drastically reduce time and enhance diagnostic accuracy.
In 2022, researchers from the Karlsruhe Institute of Technology (KIT, Karlsruhe, Germany) participated in the international autoPET competition and placed fifth out of 27 teams, comprising 359 participants globally. autoPET combined imaging with machine learning to automate the segmentation of metabolically active tumor lesions visible on whole-body PET/CT scans. Teams had access to a large, annotated PET/CT dataset to train their algorithms. All final submissions relied on deep learning, a type of machine learning using multi-layered artificial neural networks to identify complex patterns and correlations in large datasets. The seven leading teams from the competition recently shared their findings in the journal Nature Machine Intelligence, highlighting the potential of automated analysis in medical imaging.
The researchers found that an ensemble of the best-performing algorithms outperformed individual models. This ensemble approach allowed for more efficient and accurate detection of tumor lesions. While the algorithm's performance is influenced by the quality and quantity of data, the design of the algorithm, particularly decisions made in post-processing the predicted segmentations, also plays a critical role. The researchers noted that further improvements are needed to enhance the algorithms’ resilience to external factors, with the goal of making them suitable for routine clinical use. The ultimate aim is to fully automate the analysis of PET and CT medical image data in the near future.
Latest Nuclear Medicine News
- Novel Radiotracer Identifies Biomarker for Triple-Negative Breast Cancer
- Innovative PET Imaging Technique to Help Diagnose Neurodegeneration
- New Molecular Imaging Test to Improve Lung Cancer Diagnosis
- Novel PET Technique Visualizes Spinal Cord Injuries to Predict Recovery
- Next-Gen Tau Radiotracers Outperform FDA-Approved Imaging Agents in Detecting Alzheimer’s
- Breakthrough Method Detects Inflammation in Body Using PET Imaging
- Advanced Imaging Reveals Hidden Metastases in High-Risk Prostate Cancer Patients
- Combining Advanced Imaging Technologies Offers Breakthrough in Glioblastoma Treatment
- New Molecular Imaging Agent Accurately Identifies Crucial Cancer Biomarker
- New Scans Light Up Aggressive Tumors for Better Treatment
- AI Stroke Brain Scan Readings Twice as Accurate as Current Method
- AI Analysis of PET/CT Images Predicts Side Effects of Immunotherapy in Lung Cancer
- New Imaging Agent to Drive Step-Change for Brain Cancer Imaging
- Portable PET Scanner to Detect Earliest Stages of Alzheimer’s Disease
- New Immuno-PET Imaging Technique Identifies Glioblastoma Patients Who Would Benefit from Immunotherapy
- PET Software Enhances Diagnosis and Monitoring of Alzheimer's Disease
Channels
Radiography
view channel
AI-Powered Mammography Screening Boosts Cancer Detection in Single-Reader Settings
A new study has revealed that an artificial intelligence (AI)-powered solution significantly improves cancer detection in single-reader mammography settings without increasing recall rates, offering a... Read more
Photon Counting Detectors Promise Fast Color X-Ray Images
For many years, healthcare professionals have depended on traditional 2D X-rays to diagnose common bone fractures, though small fractures or soft tissue damage, such as cancers, can often be missed.... Read moreMRI
view channel
Biparametric MRI Combined with AI Enhances Detection of Clinically Significant Prostate Cancer
Artificial intelligence (AI) technologies are transforming the way medical images are analyzed, offering unprecedented capabilities in quantitatively extracting features that go beyond traditional visual... Read more
First-Of-Its-Kind AI-Driven Brain Imaging Platform to Better Guide Stroke Treatment Options
Each year, approximately 800,000 people in the U.S. experience strokes, with marginalized and minoritized groups being disproportionately affected. Strokes vary in terms of size and location within the... Read moreUltrasound
view channel
Artificial Intelligence Detects Undiagnosed Liver Disease from Echocardiograms
Echocardiography is a diagnostic procedure that uses ultrasound to visualize the heart and its associated structures. This imaging test is commonly used as an early screening method when doctors suspect... Read more
Ultrasound Imaging Non-Invasively Tracks Tumor Response to Radiation and Immunotherapy
While immunotherapy holds promise in the fight against triple-negative breast cancer, many patients fail to respond to current treatments. A major challenge has been predicting and monitoring how individual... Read moreNuclear Medicine
view channel
Novel Radiotracer Identifies Biomarker for Triple-Negative Breast Cancer
Triple-negative breast cancer (TNBC), which represents 15-20% of all breast cancer cases, is one of the most aggressive subtypes, with a five-year survival rate of about 40%. Due to its significant heterogeneity... Read more
Innovative PET Imaging Technique to Help Diagnose Neurodegeneration
Neurodegenerative diseases, such as amyotrophic lateral sclerosis (ALS) and Alzheimer’s disease, are often diagnosed only after physical symptoms appear, by which time treatment may no longer be effective.... Read moreImaging IT
view channel
New Google Cloud Medical Imaging Suite Makes Imaging Healthcare Data More Accessible
Medical imaging is a critical tool used to diagnose patients, and there are billions of medical images scanned globally each year. Imaging data accounts for about 90% of all healthcare data1 and, until... Read more
Global AI in Medical Diagnostics Market to Be Driven by Demand for Image Recognition in Radiology
The global artificial intelligence (AI) in medical diagnostics market is expanding with early disease detection being one of its key applications and image recognition becoming a compelling consumer proposition... Read moreIndustry News
view channel
Siemens and Sectra Collaborate on Enhancing Radiology Workflows
Siemens Healthineers (Forchheim, Germany) and Sectra (Linköping, Sweden) have entered into a collaboration aimed at enhancing radiologists' diagnostic capabilities and, in turn, improving patient care... Read more