Advanced Diagnostic & Interventional Radiology Research Center | Non-invasive PNET grading using CT radiomics and machine learnin

Advanced Diagnostic & Interventional Radiology Research Center | Non-invasive PNET grading using CT radiomics and machine learnin
| Dec 11 2025
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Advanced Diagnostic & Interventional Radiology Research Center

COVID-19 pandemic 

During the COVID-19 pandemic, the Radiology Research Center at Tehran University of Medical Sciences continued its research activities despite the challenges posed by the increased demand for CT scans of COVID-19 patients and the necessity of adhering to strict health protocols. This center played a crucial role in improving medical imaging techniques, optimizing diagnostic protocols, and advancing technologies related to CT scan image analysis.

Faculty members, researchers, and staff remained committed to ensuring the safety and well-being of healthcare professionals and patients while actively engaging in imaging data analysis, developing artificial intelligence algorithms for faster disease detection, publishing scientific articles, and presenting their findings at international conferences. These efforts aimed to enhance diagnostic accuracy, improve treatment processes, and alleviate pressure on healthcare systems.

 

Key achievements of the Radiology Research Center during the COVID-19 pandemic include:


✔️ Development and optimization of lung imaging protocols for faster and more accurate COVID-19 diagnosis
✔️ Implementation of artificial intelligence technologies for automated CT scan analysis and reduced diagnosis time
✔️ Publication of high-impact research articles on innovative imaging methods for COVID-19 patients
✔️ Participation in national and international projects focused on COVID-19 diagnosis and patient management

The center remains dedicated to advancing research in medical imaging and continues to contribute as a leading scientific institution in improving the quality of diagnostic and therapeutic services.

 

Some of the center's significant achievements during the pandemic include:

 

  • Release Date : Jun 18 2025 - 09:59
  • : 67
  • Study time : 1 minute(s)

Non invasive PNET grading using CT radiomics and machine learning

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Pancreatic cancer is a major cause of cancer-related fatalities globally, with a poor prognosis. Machine learning-based medical image analysis has emerged as a promising approach for improving clinical decision-making. The purpose is to determine the most effective machine learning method and phase of CT scan to provide clinicians with an efficient tool for accurately identifying pathological grades of pancreatic neuroendocrine tumours (PNET). This will be achieved by analysing contrast-enhanced computed tomography scans of both arterial and portal phases. An investigation was conducted on a cohort of 100 patients diagnosed with pancreatic neuroendocrine tumours. Radiomic features were extracted using Pyradiomics. These features were subsequently utilised in different machine learning classifiers. The classification model’s performance was assessed using sensitivity, specificity, area under the curve (AUC) and accuracy metrics. Our analysis demonstrates that combining CT-based radiomic features with a machine-learning approach can identify the pathological grades of pancreatic neuroendocrine tumours. the combination of Portal_RFE and K-Nearest Neighbour (KNN) demonstrated the highest predictive performance with an AUC of 0.76 and 0.69 in training and validation models, respectively. The use of CT radiomic features and machine learning effectively determines PNET pathological grades, aiding in classifying patients for clinical decisions.

  • Article_DOI :
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  • News Group : research,research article
  • News Code : 299822
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