| Jul 23 2025
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Advanced Diagnostic & Interventional Radiology Research Center

 

Artificial Intelligence of Radiology Research Center

 

Given the vast amount of image data generated daily, radiology research centers possess immense potential for harnessing artificial intelligence. This technology can significantly improve the accuracy and speed of disease diagnosis, aiding radiologists in making informed clinical decisions. Below are some of the activities undertaken by radiology research centers in the realm of AI:

 

  1. Developing Automated Disease Detection Algorithms:

  • Tumor Detection: Developing algorithms to automatically detect various tumors in radiology images (such as CT scans, MRIs, and PET scans).
  • Pulmonary Disease Detection: Automatically detecting diseases like pneumonia, COVID-19, and pulmonary fibrosis.
  • Cardiovascular Disease Detection: Early detection of cardiovascular diseases such as aortic aneurysm and coronary artery stenosis.
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2. Optimizing Imaging Processes:

 

  • Reducing Radiation Dose: Developing algorithms to reduce radiation dose during imaging procedures, especially for children and pregnant women.
  • Improving Image Quality: Using AI to enhance radiology image quality and reduce noise.
  • Facilitating Image Interpretation: Developing tools to assist radiologists in interpreting radiology images, such as highlighting suspicious areas.

 

3. Analyzing Big Data:

 

  • Identifying Patterns: Utilizing machine learning algorithms to identify hidden patterns in radiology data and discover new correlations between diseases and risk factors.
  • Predicting Disease Progression: Predicting disease progression in patients with chronic conditions.
  • Evaluating Treatment Effectiveness: Assessing the effectiveness of various treatments based on radiology data.
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4. Developing Diagnostic Assistance Tools:

 

  • Assisting Radiologists: Developing tools to aid radiologists in disease diagnosis, such as automated measurement tools and automatic lesion classification.
  • Interpreting Radiology Reports: Developing systems for automated interpretation of radiology reports and extraction of key information.
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5. Collaborating with Other Fields:

 

  • Collaborating with Software Engineers: Developing and implementing AI algorithms.
  • Collaborating with Medical Specialists: Validating AI models and ensuring their effectiveness in clinical settings.
  • Collaborating with Data Scientists: Collecting, processing, and analyzing radiology data.

 

6. Education and Research:

 

  • Training Personnel: Conducting training courses to familiarize center staff with AI concepts and applications in radiology.
  • Conducting Fundamental Research: Conducting fundamental research in AI for radiology to develop new algorithms and improve existing methods.
  • Publishing Scientific Articles: Publishing research results in reputable scientific journals.
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In conclusion, given the rapid advancements in artificial intelligence, its role in radiology is expected to become increasingly significant in the future. Radiology research centers can make substantial contributions to medical advancements and improved diagnostic services by investing in this field.

 

Lists of AI articles:

 

  • Release Date : Jul 23 2024 - 09:00
  • : 60
  • Study time : 1 minute(s)

Deep learning-based automatic detection of tuberculosis disease in chest X-ray images

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Purpose

To train a convolutional neural network (CNN) model from scratch to automatically detect tuberculosis (TB) from chest X-ray (CXR) images and compare its performance with transfer learning based technique of different pre-trained CNNs.

Material and methods

We used two publicly available datasets of postero-anterior chest radiographs, which are from Montgomery County, Maryland, and Shenzhen, China. A CNN (ConvNet) from scratch was trained to automatically detect TB on chest radiographs. Also, a CNN-based transfer learning approach using five different pre-trained models, including Inception_v3, Xception, ResNet50, VGG19, and VGG16 was utilized for classifying TB and normal cases from CXR images. The performance of models for testing datasets was evaluated using five performances metrics, including accuracy, sensitivity/recall, precision, area under curve (AUC), and F1-score.

Results

All proposed models provided an acceptable accuracy for two-class classification. Our proposed CNN architecture (i.e., ConvNet) achieved 88.0% precision, 87.0% sensitivity, 87.0% F1-score, 87.0% accuracy, and AUC of 87.0%, which was slightly less than the pre-trained models. Among all models, Exception, ResNet50, and VGG16 provided the highest classification performance of automated TB classification with precision, sensitivity, F1-score, and AUC of 91.0%, and 90.0% accuracy.

Conclusions

Our study presents a transfer learning approach with deep CNNs to automatically classify TB and normal cases from the chest radiographs. The classification accuracy, precision, sensitivity, and F1-score for the detection of TB were found to be more than 87.0% for all models used in the study. Exception, ResNet50, and VGG16 models outperformed other deep CNN models for the datasets with image augmentation methods.

link

  • Article_DOI : 10.5114/pjr.2022.113435
  • Author(s) : eman showkatian,mohammad salehi,hamed ghaffari,reza reiazi,nahid sadighi
  • News Group : research,articles,research article,AI,AI articles
  • News Code : 277941
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