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    Home > Medical News > Medical Research Articles > Deep learning models can classify brain tumors from a single MRI scan

    Deep learning models can classify brain tumors from a single MRI scan

    • Last Update: 2021-08-28
    • Source: Internet
    • Author: User
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    Picture: (A) High-grade glioma (HGG), low-grade glioma (LGG), brain metastases (METS), acoustic neuroma (AN), pituitary adenoma (PA), meningioma (MEN), health (HLTH) category of t1-weighted enhanced scan (axial slice, RAS orientation) sample (white arrow), (B) classification data distribution, (C) image and data segmentation process for cross-validation, internal and external testing



    Oak Creek, sick


    Satrajit Chakrabarty ms, a doctoral student under the supervision of Dr.


    The six most common types of intracranial tumors are high-grade glioma, low-grade glioma, brain metastases, meningioma, pituitary adenoma, and acoustic neuroma


    Chakrabarty said that machines and deep learning methods using MRI data may automatically detect and classify brain tumors


    "Non-invasive MRI can be used as a supplement, or in some cases, as an alternative to histopathological examination," he said


    To build their machine learning model (called a convolutional neural network), Chakrabarty and researchers from the Mallinckrodt Institute of Radiology developed a large, multi-institutional, intracranial 3D MRI scan data set from four public sources


    The researchers divided a total of 2,105 scans into three data subsets: 1396 for training, 361 for internal testing, and 348 for external testing


    Using internal detection data, the model achieved an accuracy of 93.


    For an external test data set containing only two tumor types (high-grade glioma and low-grade glioma), the accuracy of the model was 91.


    Chakrabarty said: "These results show that deep learning is a very promising method to automatically classify and evaluate brain tumors


    Chakrabarty said that by improving the existing 2D methods, the 3D deep learning model is closer to the goal of achieving end-to-end automated workflows


    Dr.


    Chakrabarty added: “This network is the first step in the development of an AI-enhanced radiology workflow that can support image interpretation by providing quantitative information and statistics


    "MRI-based Identification and Classification of Major Intracranial Tumor Types Using a 3D Convolutional Neural Network: A Retrospective Multi-Institutional Analysis.
    " Collaborating with Satrajit Chakrabarty and Drs.
    Sotiras and Marcus were Mikhail Milchenko, Ph.
    D.
    , Pamela LaMontagne, Ph .
    D.
    , and Michael Hileman, BS

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