An Intestinal Centerline Extraction Algorithm Based on Federated Framework

Author:

Wang Xiaodong1ORCID,He Zhen’an1ORCID,Wang Ying2,Dang Linlin3,Han Weifang4,Zhang Cheng1

Affiliation:

1. Shaanxi Institute of Medical Device Quality Inspection, Xi’an 712046, China

2. Xi’an North Photoelectric Technology Defense Co., Ltd., Xi’an 710043, China

3. Shaanxi Provincial Drug and Vaccine Inspection Center, Xi’an 710065, China

4. Xi’an Institute of Applied Optics, Xi’an 710065, China

Abstract

The intestine is an important organ of the human body, and its internal structure always needs to be observed in clinical applications so as to provide a basis for accurate diagnosis. However, due to the limited intestinal data obtained by a single institution, deep learning cannot effectively train the intestines, and the effect is not satisfied. For this reason, we propose a distributed training method to carry out federated learning to alleviate the situation of patient sample data shortage, not shared and uneven data distribution. And the blockchain is introduced to enhance the interaction between networks, to solve the problem of a single point of failure of the federated learning server. Fully excavate the multiscale features of samples, to construct a fusion enhancement model and intestinal segmentation module for accurate positioning. At the local end, the centerline extraction algorithm is optimized, with the edge as the main and the source as the auxiliary to realize centerline extraction.

Funder

Shaanxi Provincial Key R&D Plan

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Information Systems

Reference31 articles.

1. Centerline extraction from 3D airway trees using anchored shrinking;K. Palágyi,2019

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5. Multi-institutional deep learning modeling without sharing patient data: a feasibility study on brain tumor segmentation;M. J. Sheller,2018

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