通过扫描仪集成的机器学习实现实时,在线定量MRI: NODDI的原理证明。

ArXiv Pub Date : 2025-07-16
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引用次数: 0

摘要

目的:由于资源密集,离线参数估计,许多先进的定量MRI (qMRI)技术的临床可行性和转译受到“研究模式”的限制。这项工作旨在实现“临床模式”qMRI,通过实时,内联参数估计与训练有素的神经网络(NN)完全集成到供应商的图像重建环境中,从而促进和鼓励临床采用先进的qMRI技术。方法:定制西门子图像计算环境(ICE)管道,部署经过训练的神经网络,使用开放神经网络交换(ONNX)运行时进行高级弥散MRI参数估计。使用常规估计(NNMLE)或基础真值(NNGT)参数作为训练标签,使用神经突方向弥散和密度成像(NODDI)模型合成的数据离线训练两个完全连接的神经网络。该策略通过体内采集进行在线演示,并通过合成测试数据进行离线评估。结论:基于所提出的可推广框架的实时、内联参数估计解决了临床采用先进qMRI方法的一个关键实际障碍,并使其能够有效地集成到临床工作流程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time, inline quantitative MRI enabled by scanner-integrated machine learning: a proof of principle with NODDI.

Purpose: The clinical feasibility and translation of many advanced quantitative MRI (qMRI) techniques are inhibited by their restriction to 'research mode', due to resource-intensive, offline parameter estimation. This work aimed to achieve 'clinical mode' qMRI, by real-time, inline parameter estimation with a trained neural network (NN) fully integrated into a vendor's image reconstruction environment, therefore facilitating and encouraging clinical adoption of advanced qMRI techniques.

Methods: The Siemens Image Calculation Environment (ICE) pipeline was customised to deploy trained NNs for advanced diffusion MRI parameter estimation with Open Neural Network Exchange (ONNX) Runtime. Two fully-connected NNs were trained offline with data synthesised with the neurite orientation dispersion and density imaging (NODDI) model, using either conventionally estimated (NNMLE) or ground truth (NNGT) parameters as training labels. The strategy was demonstrated online with an in vivo acquisition and evaluated offline with synthetic test data.

Results: NNs were successfully integrated and deployed natively in ICE, performing inline, whole-brain, in vivo NODDI parameter estimation in <10 seconds. DICOM parametric maps were exported from the scanner for further analysis, generally finding that NNMLE estimates were more consistent than NNGT with conventional estimates. Offline evaluation confirms that NNMLE has comparable accuracy and slightly better noise robustness than conventional fitting, whereas NNGT exhibits compromised accuracy at the benefit of higher noise robustness.

Conclusion: Real-time, inline parameter estimation with the proposed generalisable framework resolves a key practical barrier to clinical uptake of advanced qMRI methods and enables their efficient integration into clinical workflows.

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