Contrast Media & Molecular Imaging

Machine Learning Techniques for Medical Radiological and Nuclear Medicine Imaging


Publishing date
01 Sep 2022
Status
Published
Submission deadline
15 Apr 2022

1Kalasalingam University, Srivilliputhur, India

2Kalsalingam Academy of Research and Education, Krishnan Kovil, India

3Ethiopian Technical University, Addis Ababa, Ethiopia


Machine Learning Techniques for Medical Radiological and Nuclear Medicine Imaging

Description

Recent advances and future perspectives of machine learning techniques offer promising applications in medical imaging. Machine learning has the potential to improve different steps of the radiology workflow including order scheduling and triage, clinical decision support systems, detection and interpretation of findings, postprocessing and dose estimation, examination quality control, and radiology reporting. Despite this, there are still many challenges before each of these steps can be realized to be automated via machine learning.

Machine learning could make medical imaging systems intelligent. Machine learning–based data processing methods have the potential to decrease imaging time. Furthermore, intelligent imaging systems could reduce unnecessary imaging, improve positioning, and help improve the characterization of the findings. For example, an intelligent Magnetic Resonance (MR) imager may recognize a lesion and suggest modifications in the sequence to achieve optimal characterization of the lesion. This is one future challenge on which machine learning can offer a perspective. Automated detection of findings within medical images in radiology is an area where machine learning can have an impact as well. Automated detection itself is a wide area of research challenges before it can be brought down to clinical applications in assisting doctors in their decision-making. Interpretation of the detected findings in medical imaging (either normal or abnormal) requires a high level of expert knowledge, experience, and clinical judgment based on each clinical case scenario. For a machine to function as an independent image interpreter, extensive acquisition of data-derived knowledge is required. Thus, machine learning could improve the interpretation of findings as an aid to the radiologist. In addition, machine learning could be used for organ-specific classification and organ radiation dose estimation from computed tomography (CT) data sets. Machine learning can be used to make specific selections of the various contrasts used and aid in quantifying them for patient-specific based on their specific parameters. Machine learning can also be used to identify the amount of dose of nuclear medicine that can be given specifically to patients for nuclear medicine imaging. These areas bring in a lot of new features for radiological and nuclear medicine imaging.

This Special Issue will focus on listing the current advances and the next immediate challenges that are involved in the application of machine learning towards medical, radiological, and nuclear medicine imaging. In this Special Issue, we look for current applications, challenges, and future perspectives of machine learning and deep learning techniques in medical diagnostic radiology and nuclear medicine imaging, which includes magnetic resonance imaging (MRI), CT, positron emission tomography (PET), single-photon emission computed tomography (SPECT) and ultrasound imaging. The Special Issue welcomes original research that discusses the current challenges faced in MRI contrast imaging like data integration, image fusion of various radiological images for diagnosis of disease, staging of disease from radiological imaging, the necessity of big data, and ground truth annotation. We also welcome review articles.

Potential topics include but are not limited to the following:

  • Machine learning advances in MRI contrast agent handling
  • Automatic patient-specific radiation dose estimation
  • Multimodal radiological imaging-based disease detection
  • Data Integration of MRI and PET for staging, characterizing a disease
  • Challenges in a combination of various radiological imaging for specific disease detection
  • Machine learning for selection of contrast agents for MRI
  • Automated detection of the findings of an MRI Scan
  • Image fusion – challenges for a combination of SPECT, PET, MRI, and CT imaging for specific disease marking
  • Challenges in building an Intelligent Imaging System
  • Developing machine learning-based tools to aid a radiologist
  • Challenges in the application of deep learning in radiology
  • Machine learning for tumor characterization
  • Machine learning for automatic 3D tumor size detection
  • Artificial Intelligence for localizing tumors

Articles

  • Special Issue
  • - Volume 2022
  • - Article ID 7197505
  • - Research Article

Application of Pelvic Magnetic Resonance Imaging Scan Combined with Serum Pyruvate Kinase Isozyme M2, Neutrophil Gelatinase-Associated Lipocalin, and Soluble Leptin Receptor Detection in Diagnosing Endometrial Carcinoma

Shizhong Su | Liping Yin
  • Special Issue
  • - Volume 2022
  • - Article ID 1613632
  • - Research Article

Evaluation of Nursing Effects of Pelvic Floor Muscle Rehabilitation Exercise on Gastrointestinal Tract Rectal Cancer Patients Receiving Anus-preserving Operation by Intelligent Algorithm-based Magnetic Resonance Imaging

Lijuan Zhang | Feng Wang
  • Special Issue
  • - Volume 2022
  • - Article ID 9410161
  • - Research Article

Diagnostic Value and Application of Prenatal MRI and Ultrasound in Fetal Cleft Lip and Palate

Xin Yan | Guojing Xing | ... | Xiaojie Shang
  • Special Issue
  • - Volume 2022
  • - Article ID 8998231
  • - Research Article

Diagnostic Value of Magnetic Resonance Imaging Scan, Multislice Spiral Computed Tomography Three-Dimensional Reconstruction Combined with Plain Film X-Ray in Spinal Injuries

Dajiang Xin | Lei Lei
  • Special Issue
  • - Volume 2022
  • - Article ID 5373585
  • - Research Article

Early Diagnosis of Acute Ischemic Stroke by Brain Computed Tomography Perfusion Imaging Combined with Head and Neck Computed Tomography Angiography on Deep Learning Algorithm

Yi Yang | Jinjun Yang | ... | Yi Wang
  • Special Issue
  • - Volume 2022
  • - Article ID 9684584
  • - Research Article

Deep Learning-Based Computed Tomography Perfusion Imaging to Evaluate the Effectiveness and Safety of Thrombolytic Therapy for Cerebral Infarct with Unknown Time of Onset

Minlei Hu | Ning Chen | ... | Chao Ma
  • Special Issue
  • - Volume 2022
  • - Article ID 6460865
  • - Research Article

The Diagnostic Value of High-Resolution Computed Tomography Features Combined with Mycoplasma Pneumoniae Ribonucleic Acid Load Detection for Refractory Mycoplasma Pneumonia

Hongping Wei | Chunyan Wang | ... | Min Wu
  • Special Issue
  • - Volume 2022
  • - Article ID 9107021
  • - Research Article

Three-Dimensional Reconstruction of a CT Image under Deep Learning Algorithm to Evaluate the Application of Percutaneous Kyphoplasty in Osteoporotic Thoracolumbar Compression Fractures

Jiameng Li | Zhong Xiang | ... | Meng Zhang
  • Special Issue
  • - Volume 2022
  • - Article ID 7730158
  • - Research Article

Application Effect of Combining Image-Text Communication-Based Healthcare Education with Shifting of Attention on Child Patients Undergoing Inguinal Hernia Repair under General Anesthesia

Sandong Chen | Wanshun Liang | ... | Yingping Jia
  • Special Issue
  • - Volume 2022
  • - Article ID 8952355
  • - Research Article

Craniocerebral Magnetic Resonance Imaging Features of Benign Paroxysmal Positional Vertigo under Artificial Intelligence Algorithm and the Correlation with Cerebrovascular Disease

Hailong Xue | Yanli Jing | ... | Yujuan Li
Contrast Media & Molecular Imaging
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