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Imaging Studies I: CT and MRI01:14

Imaging Studies I: CT and MRI

Introduction: MRI and CT scans are crucial advancements in medical imaging techniques, playing a vital role in diagnosing conditions related to the gastrointestinal (GI) system. Each scan serves distinct purposes, targets specific areas, and requires unique nursing duties.
Description of the Procedures
Computed Tomography (CT) scan:
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DefinitionComputed Tomography (CT) of the genitourinary (GU) tract is a non-invasive imaging modality that utilizes X-rays and computer processing to generate detailed cross-sectional images of the urinary system, encompassing the kidneys, ureters, bladder, and adjacent structures such as the adrenal glands.PurposeCT scans of the GU tract serve several diagnostic and therapeutic purposes, including:Diagnosis of Urinary Tract Diseases: Detects kidney stones, tumors, cysts, and congenital...

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One-shot Federated Learning on Medical Data using Knowledge Distillation with Image Synthesis and Client Model

Myeongkyun Kang1,2, Philip Chikontwe1, Soopil Kim1,2

  • 1Robotics and Mechatronics Engineering, Daegu Gyeongbuk Institute of Science and Technology (DGIST), Daegu, Korea.

Medical Image Computing and Computer-Assisted Intervention : MICCAI ... International Conference on Medical Image Computing and Computer-Assisted Intervention
|January 11, 2024
PubMed
Summary
This summary is machine-generated.

Federated learning (FL) trains AI models without sharing sensitive data. This new method, FedISCA, uses synthetic images and knowledge distillation to improve accuracy in medical AI, even with limited data.

Keywords:
Client Model AdaptationImage SynthesisKnowledge DistillationNoiseOne-Shot Federated Learning

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Area of Science:

  • Artificial Intelligence
  • Machine Learning
  • Medical Imaging

Background:

  • One-shot federated learning (FL) is valuable when multiple communication rounds are impractical.
  • Training robust global models with FL on medical data is challenging due to less discriminative features and overfitting risks.

Purpose of the Study:

  • To introduce FedISCA, a novel one-shot FL framework using image synthesis and client adaptation with knowledge distillation.
  • To enhance global model training robustness and alleviate data privacy concerns in medical AI.

Main Methods:

  • FedISCA generates diverse synthetic images to prevent overfitting and facilitate robust training via knowledge distillation (KD).
  • Noise-adapted client models are designed to mitigate domain disparity during synthesis by updating batch normalization statistics.
  • The global model is trained iteratively using KD with both original and noise-adapted client models and synthetic images.

Main Results:

  • FedISCA demonstrated superior accuracy compared to existing methods on multiple medical image classification datasets.
  • The framework effectively alleviates data privacy concerns while enabling robust global model training.

Conclusions:

  • FedISCA offers an effective solution for one-shot federated learning in medical imaging, particularly when data is limited or privacy is a concern.
  • The proposed image synthesis and client adaptation strategy significantly improves model performance and robustness.