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Calcium-Scoring CT ScanA calcium-scoring CT scan, also known as coronary artery calcium (CAC) scan, detects calcium deposits in the coronary arteries. This test assesses the risk of coronary artery disease (CAD), which can lead to cardiovascular events such as angina, heart failure, and sudden cardiac arrest.A calcium-scoring CT scan is generally recommended for individuals at intermediate risk of CAD without symptoms. It includes:Men aged 40-75 and women aged 50-75: Especially those with a...
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Cardiac computed tomography (CT) scanning is an advanced cardiac imaging technique that utilizes CT technology, with or without intravenous (IV) contrast, to produce accurate cross-sectional virtual slices of specific areas of the heart, coronary circulation, and major blood vessels such as the aorta, pulmonary veins, and arteries. The computer processes these slices to generate three-dimensional images. Multidetector CT (MDCT) is a rapid form of CT scanning that captures multiple slices...
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Related Experiment Video

Updated: Nov 26, 2025

Lung CT Segmentation to Identify Consolidations and Ground Glass Areas for Quantitative Assesment of SARS-CoV Pneumonia
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Supervised Image Classification Algorithm Using Representative Spatial Texture Features: Application to COVID-19

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    Summary
    This summary is machine-generated.

    This study introduces a new method using representative texture samples and the Wasserstein metric to improve image classification for diagnosing COVID-19 from CT scans. The approach enhances predictive model performance by identifying key "good and bad" texture features.

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    Area of Science:

    • Computer Vision
    • Medical Imaging Analysis
    • Machine Learning for Healthcare

    Background:

    • Texture analysis is crucial for image perception and data analysis across various fields.
    • Identifying representative 'good' and 'bad' samples is key to improving predictive model performance.
    • Existing methods lack robust ways to define and utilize representative texture samples.

    Approach:

    • Proposes novel spatial texture features derived from gray-level co-occurrence matrices (GLCMs).
    • Integrates these features into a supervised image classification pipeline using Support Vector Machines (SVM).
    • Employs Bayesian optimization and the Wasserstein metric from optimal mass transport (OMT) for selecting optimal GLCM references and defining new features.

    Key Points:

    • Sample fitness is determined by Wasserstein distance and Spearman rank correlation within classes.
    • New texture features are calculated as Wasserstein distances between selected references and other samples.
    • The method was evaluated for diagnosing COVID-19 using computed tomographic (CT) images.

    Conclusions:

    • The proposed pipeline effectively incorporates representative texture features for improved image classification.
    • This approach shows promise for enhancing diagnostic accuracy in medical imaging, specifically for COVID-19 detection.
    • The integration of OMT and Bayesian optimization offers a novel strategy for feature selection and model enhancement.