• Mashup Score: 0
    BIR Publications - 7 month(s) ago

    Abstract This machine was the first linear accelerator designed for medical use and the first to be installed in a hospital. The first patient was treated in 1953 and the last in 1969. During this period the machine was used for research during the evenings and latterly it was available for research all day long. It was switched off for the last time in February 1984. In addition to the X-ray beam, electrons were used for treatment and for research, where the high dose rate and large field size were particularly useful. An account is given of some of the highlights of the clinical and research programmes.

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    • @alison_tree Reference is here: https://t.co/2bFwmpyQYy

  • Mashup Score: 2
    BIR Publications - 7 month(s) ago

    Objectives: Magnetic resonance imaging (MRI) using 1.5T or 3.0T systems is routinely employed for assessing wrist pathology; however, due to off-resonance artifacts and high power deposition, these high-field systems have drawbacks for real-time (RT) imaging of the moving wrist. Recently, high-performance 0.55T MRI systems have become available. In this proof-of-concept study, we tested the hypothesis that RT-MRI during continuous, active, and uninterrupted wrist motion is feasible with a high-performance 0.55T system at temporal resolutions below 100 ms and that the resulting images provide visualization of tissues commonly interrogated for assessing dynamic wrist instability. Methods: Participants were scanned during uninterrupted wrist radial-ulnar deviation and clenched fist maneuvers. Resulting images (nominal temporal resolution of 12.7–164.6 ms per image) were assessed for image quality. Feasibility of static MRI to supplement RT-MRI acquisition was also tested. Results: The RT

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    • Real-time #MRI captures wrists in motion https://t.co/acOsTwxq1U https://t.co/ahDLD1wqeo

  • Mashup Score: 1
    BIR Publications - 7 month(s) ago

    Artificial intelligence has been introduced to clinical practice, especially radiology and radiation oncology, from image segmentation, diagnosis, treatment planning and prognosis. It is not only crucial to have an accurate artificial intelligence model, but also to understand the internal logic and gain the trust of the experts. This review is intended to provide some insights into core concepts of the interpretability, the state-of-the-art methods for understanding the machine learning models, the evaluation of these methods, identifying some challenges and limits of them, and gives some examples of medical applications.

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    • RT @BJR_Radiology: Interpretable artificial intelligence in radiology and radiation oncology https://t.co/zoNFPG7MoA #RadOnc #Radiotherapy…

  • Mashup Score: 0
    BIR Publications - 8 month(s) ago

    Objectives: To review the methodology of interobserver variability studies; including current practice and quality of conducting and reporting studies. Methods: Interobserver variability studies between January 2019 and January 2020 were included; extracted data comprised of study characteristics, populations, variability measures, key results, and conclusions. Risk of bias was assessed using the COSMIN tool for assessing reliability and measurement error. Results: Seventy-nine full-text studies were included covering various imaging tests and clinical areas. The median number of patients was 47 (IQR:23–88), and observers were 4 (IQR:2–7), with sample size justified in 12 (15%) studies. Most studies used static images (n = 75, 95%), where all observers interpreted images for all patients (n = 67, 85%). Intraclass correlation coefficients (ICC) (n = 41, 52%), Kappa (κ) statistics (n = 31, 39%) and percentage agreement (n = 15, 19%) were most commonly used. Interpretation of variability

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    • RT @BJR_Radiology: Interobserver variability studies in diagnostic imaging: a methodological systematic review https://t.co/ILQxkwYbwk #Rad…

  • Mashup Score: 1
    BIR Publications - 3 year(s) ago

    Objective:Pneumonia is a lung infection and causes the inflammation of the small air sacs (Alveoli) in one or both lungs. Proper and faster diagnosis of pneumonia at an early stage is imperative fo…

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    • Check out a recent Br J Radiol article on radiology #AI: Automated detection of pneumonia cases using deep transfer learning with paediatric chest X-ray images https://t.co/ffH9tYTMkJ @BJR_Radiology @BIR_News #ArtificialIntelligence https://t.co/TnvFwGfzNZ

  • Mashup Score: 3
    BIR Publications - 3 year(s) ago

    Objective:Demonstrate the importance of combining multiple readers’ opinions, in a context-aware manner, when establishing the reference standard for validation of artificial intelligence (AI) appl…

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    • RT @BJR_Radiology: Improving reference standards for validation of AI-based radiography https://t.co/IrqGFq6c5v #Radiography #ArtificialInt…

  • Mashup Score: 5
    BIR Publications - 3 year(s) ago

    Artificial intelligence, including deep learning, is currently revolutionising the field of medical imaging, with far reaching implications for almost every facet of diagnostic imaging, including p…

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    • RT @BJR_Radiology: Artificial intelligence in medical imaging: implications for patient radiation safety https://t.co/wcRn9M979t #Radiology…

  • Mashup Score: 2
    BIR Publications - 3 year(s) ago

    Objectives:Mandible osteoradionecrosis (ORN) is one of the most severe toxicities in patients with head and neck cancer (HNC) undergoing radiotherapy (RT). The existing literature focuses on the co…

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    • Journal Watch: Comparison of machine learning methods for prediction of osteoradionecrosis incidence in patients with head and neck cancer (Br J Radiol) https://t.co/LLbOxORL4i @BJR_Radiology @BIR_News #radiology #AI https://t.co/2AsoH7SnH6