Residual Connection Networks in Medical Image Processing: Exploration of ResUnet++ Model Driven by Human Computer Interaction
Journal:
arXiv
Published Date:
Dec 30, 2024
Abstract
Accurate identification and localisation of brain tumours from medical images
remain challenging due to tumour variability and structural complexity.
Convolutional Neural Networks (CNNs), particularly ResNet and Unet, have made
significant progress in medical image processing, offering robust capabilities
for image segmentation. However, limited research has explored their
integration with human-computer interaction (HCI) to enhance usability,
interpretability, and clinical applicability. This paper introduces ResUnet++,
an advanced hybrid model combining ResNet and Unet++, designed to improve
tumour detection and localisation while fostering seamless interaction between
clinicians and medical imaging systems. ResUnet++ integrates residual blocks in
both the downsampling and upsampling phases, ensuring critical image features
are preserved. By incorporating HCI principles, the model provides intuitive,
real-time feedback, enabling clinicians to visualise and interact with tumour
localisation results effectively. This fosters informed decision-making and
supports workflow efficiency in clinical settings. We evaluated ResUnet++ on
the LGG Segmentation Dataset, achieving a Jaccard Loss of 98.17%. The results
demonstrate its strong segmentation performance and potential for real-world
applications. By bridging advanced medical imaging techniques with HCI,
ResUnet++ offers a foundation for developing interactive diagnostic tools,
improving clinician trust, decision accuracy, and patient outcomes, and
advancing the integration of AI in healthcare workflows.