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开发安全的基于网络的医学影像分析平台:AWESOMME 项目。

Development of a Secure Web-Based Medical Imaging Analysis Platform: The AWESOMME Project.

机构信息

INSA-Lyon, Université Claude Bernard Lyon 1, CNRS, Inserm, CREATIS UMR 5220, U1294, Lyon, F-69XXX, France.

Department of Radiology, Centre Léon Bérard, 28 Prom. Léa et Napoléon Bullukian, Lyon, 69008, France.

出版信息

J Imaging Inform Med. 2024 Oct;37(5):2612-2626. doi: 10.1007/s10278-024-01110-0. Epub 2024 Apr 30.

DOI:10.1007/s10278-024-01110-0
PMID:38689149
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11522235/
Abstract

Precision medicine research benefits from machine learning in the creation of robust models adapted to the processing of patient data. This applies both to pathology identification in images, i.e., annotation or segmentation, and to computer-aided diagnostic for classification or prediction. It comes with the strong need to exploit and visualize large volumes of images and associated medical data. The work carried out in this paper follows on from a main case study piloted in a cancer center. It proposes an analysis pipeline for patients with osteosarcoma through segmentation, feature extraction and application of a deep learning model to predict response to treatment. The main aim of the AWESOMME project is to leverage this work and implement the pipeline on an easy-to-access, secure web platform. The proposed WEB application is based on a three-component architecture: a data server, a heavy computation and authentication server and a medical imaging web-framework with a user interface. These existing components have been enhanced to meet the needs of security and traceability for the continuous production of expert data. It innovates by covering all steps of medical imaging processing (visualization and segmentation, feature extraction and aided diagnostic) and enables the test and use of machine learning models. The infrastructure is operational, deployed in internal production and is currently being installed in the hospital environment. The extension of the case study and user feedback enabled us to fine-tune functionalities and proved that AWESOMME is a modular solution capable to analyze medical data and share research algorithms with in-house clinicians.

摘要

精准医学研究受益于机器学习,能够创建稳健的模型,适用于处理患者数据。这既适用于图像中的病理学识别,例如注释或分割,也适用于计算机辅助诊断中的分类或预测。这需要充分利用和可视化大量的图像和相关医学数据。本文所开展的工作是在癌症中心进行的一项主要案例研究的基础上进行的。它提出了一种针对骨肉瘤患者的分析流程,通过分割、特征提取和应用深度学习模型来预测治疗反应。AWESOMME 项目的主要目标是利用这项工作,并在易于访问、安全的网络平台上实现该流程。所提出的 WEB 应用程序基于三部分架构:数据服务器、繁重计算和身份验证服务器以及具有用户界面的医学成像网络框架。这些现有组件已得到增强,以满足安全和可追溯性的需求,以持续生成专家数据。它的创新之处在于涵盖了医学图像处理的所有步骤(可视化和分割、特征提取和辅助诊断),并能够测试和使用机器学习模型。该基础设施已投入运行,部署在内部生产中,目前正在医院环境中安装。案例研究的扩展和用户反馈使我们能够对功能进行微调,并证明 AWESOMME 是一个模块化的解决方案,能够分析医学数据并与内部临床医生共享研究算法。