A Modified Parallel NET (MPNET)-Based Deep Learning Technique for the Segmentation of Visceral and Superficial Adipose Tissues Quantification of CT Scans

Josteve Adekanbi, Debashish Das, Nouh Elmitwally, Aliyuda Ali, Vince I. Madai, Bhatia Bahadar

    Research output: Contribution to journalArticlepeer-review

    Abstract

    This study introduces a modified parallel net (MPNET), a novel deep learning model designed for accurate segmentation and quantification of visceral and superficial adipose tissues. This was used to quantify the visceral and superficial adipose tissues found at the L3 levels of vertebra in CT scans. This will be used to predict the likelihood of the patient developing diabetes or cardiovascular diseases from existing CT scan data. MPNET was compared with state-of-the-art models like UNET, R2UNET, UNET++, and nnUNET. This approach advances the accuracy and efficiency of image segmentation demonstrating a faster learning curve and lower losses at early epochs than traditional models., We developed and validated using a limited dataset of 14 single-slice DICOM files for each patient extracted from the National Health Service UK. The outputs from MPNET not only matched but often exceeded traditional metrics such as the Dice coefficient and IoU in nuanced anatomical delineation, providing greater clinical realism and applicability in segmentation results. As a pilot study, this research paves the way for a forthcoming validation study on a larger and more ethnically diverse dataset.
    Original languageEnglish
    JournalIEEE Access
    DOIs
    Publication statusPublished (VoR) - 4 Feb 2025

    Keywords

    • Convolutional Neural Networks
    • CT Scan Analysis
    • Deep Learning
    • Image Post- Processing
    • Segmentation and Quantification
    • Visceral and Superficial Adipose Tissues

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