Artificial Intelligence Reconstructs MRI Images to Accelerate and Better Guide Radiotherapy
By MedImaging International staff writers Posted on 28 Jun 2021 |

Image: Artificial Intelligence Reconstructs MRI Images to Accelerate and Better Guide Radiotherapy (Photo courtesy of Elekta)
An artificial intelligence (AI) that reconstructs MRI images of moving tumors can do so in seconds, offering a significant improvement on current methods to optimize radiotherapy treatment in the clinic.
The AI, called Dracula (short for ‘deep radial convolutional neural network’) developed by scientists at The Institute of Cancer Research (London, UK) can replicate four-dimensional MRI images of a patient’s whole anatomy, including tumors and healthy organs, from low quality images containing artefacts - visual anomalies not present in reality that arise from scans with incomplete information.
It can take up to several hours to reconstruct high quality 4D MRI images from these under-sampled scans, whereas the AI takes an average of 28 seconds. These reconstructed images could accurately guide the delivery of radiotherapy to tumors by tracking their movement while a patient is breathing. The process is called magnetic resonance guided radiotherapy (MRgRT) and allows radiotherapy treatment to be adapted accordingly to improve patient outcomes.
To treat patients with tumors that move as they breathe, 4D MRI images are needed to show the 3D volume of the tumor and surrounding organs at different time points during breathing - known as a respiratory phase. By combining numerous respiratory phases, the mid-position image can then be calculated from the 4D MRI image. Mid-position images reveal the average position of the tumor and its movement from breathing, and are needed to accurately plan radiotherapy treatment. An alternative to treating these types of tumors is to have a patient hold their breath so the tumor no longer moves, but this can be strenuous for the patient and makes treatment longer and more difficult.
Dracula allows 4D MRI and mid-position images to be obtained in seconds - and potentially online just before treatment - to guide the delivery of radiotherapy in real-time, as well as make treatment more adaptable based on the patient’s anatomy. In line with its name ‘neural network’, the AI works like a simplified version of neurons in the brain and learns to reconstruct higher quality 4D MRI images via a series of training examples. The researchers used low quality 4D MRI images that are unfit for clinical use as the input data for Dracula. With both information on the spatial dimensions and respiratory phases of a patient’s tumor and surrounding organs, the researchers could train Dracula to produce 4D MRI and mid-position images that were considered acceptable for use in the clinic by both a radiologist and a radiation oncologist.
Dracula’s performance was also verified against 4D MRI images reconstructed by another algorithm, MoCo-HDTV, for comparison, with image quality graded on a five-point Likert scale - zero denoting unreadable and five excellent. Dracula-reconstructed images received scores between 1.8 and 3.4, with the experts reporting some minor blurring and streaking that reduced visibility. Though not scoring as high as images produced by the time-intensive MoCo-HDTV, Dracula was still able to visualize the patient’s tumor and at-risk organs - in this case the heart and esophagus - very well, so that it could be used in practice to plan and guide radiotherapy treatment.
“Using an AI to rapidly reconstruct 4D MRI images of a cancer patient’s anatomy lets us accurately determine the location of tumors and characterize their motion right before radiotherapy treatment, which will enable us to increase the radiation dose targeting just the tumor and not healthy organs,” said study leader Dr. Andreas Wetscherek, Team Leader in Magnetic Resonance Imaging in Radiotherapy at the ICR. “This study demonstrates the potential of neural networks to achieve comparable imaging results to traditional methods in only a few seconds. It would be especially useful for cancers where we need to avoid the healthy organs around the tumor, such as pancreatic cancer, which currently limits the delivery of high doses of radiation to the tumor.”
Related Links:
The Institute of Cancer Research
The AI, called Dracula (short for ‘deep radial convolutional neural network’) developed by scientists at The Institute of Cancer Research (London, UK) can replicate four-dimensional MRI images of a patient’s whole anatomy, including tumors and healthy organs, from low quality images containing artefacts - visual anomalies not present in reality that arise from scans with incomplete information.
It can take up to several hours to reconstruct high quality 4D MRI images from these under-sampled scans, whereas the AI takes an average of 28 seconds. These reconstructed images could accurately guide the delivery of radiotherapy to tumors by tracking their movement while a patient is breathing. The process is called magnetic resonance guided radiotherapy (MRgRT) and allows radiotherapy treatment to be adapted accordingly to improve patient outcomes.
To treat patients with tumors that move as they breathe, 4D MRI images are needed to show the 3D volume of the tumor and surrounding organs at different time points during breathing - known as a respiratory phase. By combining numerous respiratory phases, the mid-position image can then be calculated from the 4D MRI image. Mid-position images reveal the average position of the tumor and its movement from breathing, and are needed to accurately plan radiotherapy treatment. An alternative to treating these types of tumors is to have a patient hold their breath so the tumor no longer moves, but this can be strenuous for the patient and makes treatment longer and more difficult.
Dracula allows 4D MRI and mid-position images to be obtained in seconds - and potentially online just before treatment - to guide the delivery of radiotherapy in real-time, as well as make treatment more adaptable based on the patient’s anatomy. In line with its name ‘neural network’, the AI works like a simplified version of neurons in the brain and learns to reconstruct higher quality 4D MRI images via a series of training examples. The researchers used low quality 4D MRI images that are unfit for clinical use as the input data for Dracula. With both information on the spatial dimensions and respiratory phases of a patient’s tumor and surrounding organs, the researchers could train Dracula to produce 4D MRI and mid-position images that were considered acceptable for use in the clinic by both a radiologist and a radiation oncologist.
Dracula’s performance was also verified against 4D MRI images reconstructed by another algorithm, MoCo-HDTV, for comparison, with image quality graded on a five-point Likert scale - zero denoting unreadable and five excellent. Dracula-reconstructed images received scores between 1.8 and 3.4, with the experts reporting some minor blurring and streaking that reduced visibility. Though not scoring as high as images produced by the time-intensive MoCo-HDTV, Dracula was still able to visualize the patient’s tumor and at-risk organs - in this case the heart and esophagus - very well, so that it could be used in practice to plan and guide radiotherapy treatment.
“Using an AI to rapidly reconstruct 4D MRI images of a cancer patient’s anatomy lets us accurately determine the location of tumors and characterize their motion right before radiotherapy treatment, which will enable us to increase the radiation dose targeting just the tumor and not healthy organs,” said study leader Dr. Andreas Wetscherek, Team Leader in Magnetic Resonance Imaging in Radiotherapy at the ICR. “This study demonstrates the potential of neural networks to achieve comparable imaging results to traditional methods in only a few seconds. It would be especially useful for cancers where we need to avoid the healthy organs around the tumor, such as pancreatic cancer, which currently limits the delivery of high doses of radiation to the tumor.”
Related Links:
The Institute of Cancer Research
Latest MRI News
- AI Tool Tracks Effectiveness of Multiple Sclerosis Treatments Using Brain MRI Scans
- Ultra-Powerful MRI Scans Enable Life-Changing Surgery in Treatment-Resistant Epileptic Patients
- AI-Powered MRI Technology Improves Parkinson’s Diagnoses
- Biparametric MRI Combined with AI Enhances Detection of Clinically Significant Prostate Cancer
- First-Of-Its-Kind AI-Driven Brain Imaging Platform to Better Guide Stroke Treatment Options
- New Model Improves Comparison of MRIs Taken at Different Institutions
- Groundbreaking New Scanner Sees 'Previously Undetectable' Cancer Spread
- First-Of-Its-Kind Tool Analyzes MRI Scans to Measure Brain Aging
- AI-Enhanced MRI Images Make Cancerous Breast Tissue Glow
- AI Model Automatically Segments MRI Images
- New Research Supports Routine Brain MRI Screening in Asymptomatic Late-Stage Breast Cancer Patients
- Revolutionary Portable Device Performs Rapid MRI-Based Stroke Imaging at Patient's Bedside
- AI Predicts After-Effects of Brain Tumor Surgery from MRI Scans
- MRI-First Strategy for Prostate Cancer Detection Proven Safe
- First-Of-Its-Kind 10' x 48' Mobile MRI Scanner Transforms User and Patient Experience
- New Model Makes MRI More Accurate and Reliable
Channels
Radiography
view channel
World's Largest Class Single Crystal Diamond Radiation Detector Opens New Possibilities for Diagnostic Imaging
Diamonds possess ideal physical properties for radiation detection, such as exceptional thermal and chemical stability along with a quick response time. Made of carbon with an atomic number of six, diamonds... Read more
AI-Powered Imaging Technique Shows Promise in Evaluating Patients for PCI
Percutaneous coronary intervention (PCI), also known as coronary angioplasty, is a minimally invasive procedure where small metal tubes called stents are inserted into partially blocked coronary arteries... Read moreUltrasound
view channel
AI Identifies Heart Valve Disease from Common Imaging Test
Tricuspid regurgitation is a condition where the heart's tricuspid valve does not close completely during contraction, leading to backward blood flow, which can result in heart failure. A new artificial... Read more
Novel Imaging Method Enables Early Diagnosis and Treatment Monitoring of Type 2 Diabetes
Type 2 diabetes is recognized as an autoimmune inflammatory disease, where chronic inflammation leads to alterations in pancreatic islet microvasculature, a key factor in β-cell dysfunction.... Read moreNuclear Medicine
view channel
Novel PET Imaging Approach Offers Never-Before-Seen View of Neuroinflammation
COX-2, an enzyme that plays a key role in brain inflammation, can be significantly upregulated by inflammatory stimuli and neuroexcitation. Researchers suggest that COX-2 density in the brain could serve... Read more
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 moreGeneral/Advanced Imaging
view channel
AI-Powered Imaging System Improves Lung Cancer Diagnosis
Given the need to detect lung cancer at earlier stages, there is an increasing need for a definitive diagnostic pathway for patients with suspicious pulmonary nodules. However, obtaining tissue samples... Read more
AI Model Significantly Enhances Low-Dose CT Capabilities
Lung cancer remains one of the most challenging diseases, making early diagnosis vital for effective treatment. Fortunately, advancements in artificial intelligence (AI) are revolutionizing lung cancer... 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
GE HealthCare and NVIDIA Collaboration to Reimagine Diagnostic Imaging
GE HealthCare (Chicago, IL, USA) has entered into a collaboration with NVIDIA (Santa Clara, CA, USA), expanding the existing relationship between the two companies to focus on pioneering innovation in... Read more
Patient-Specific 3D-Printed Phantoms Transform CT Imaging
New research has highlighted how anatomically precise, patient-specific 3D-printed phantoms are proving to be scalable, cost-effective, and efficient tools in the development of new CT scan algorithms... Read more
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