Laboratory of Computing, Medical Informatics and Biomedical-Imaging Technologies, School of Medicine, Faculty of Health Sciences, Aristotle University of Thessaloniki, Greece; Department of Clinical Physiology, Clinical Sciences, Lund University and Lund University Hospital, Lund, Sweden.
Laboratory of Computing, Medical Informatics and Biomedical-Imaging Technologies, School of Medicine, Faculty of Health Sciences, Aristotle University of Thessaloniki, Greece.
Comput Methods Programs Biomed. 2021 Jan;198:105817. doi: 10.1016/j.cmpb.2020.105817. Epub 2020 Oct 27.
Supervised Machine Learning techniques have shown significant potential in medical image analysis. However, the training data that need to be collected for these techniques in the field of MRI 1) may not be available, 2) may be available but the size is small, 3) may be available but not representative and 4) may be available but with weak labels. The aim of this study was to overcome these limitations through advanced MR simulations on a realistic computer model of human anatomy without using a real MRI scanner, without scanning patients and without having personnel and the associated expenses.
The 4D-XCAT model was used with the coreMRI simulation platform for generating artificial short-axis MR-images for training a neural-network to automatic delineate the LV endocardium and epicardium. Its performance was assessed on real MR-images acquired from eight healthy volunteers. The neural-network was also trained on real MR-images from a publicly available dataset and its performance was assessed on the same volunteers' data.
The proposed solution demonstrated a performance of 94% (endocardium) and 90% DICE (epicardium) in real mid-ventricular slices, whereas a 10% addition of real MR-images in the artificial training dataset increased the performance to 97% DICE. The use of artificial MR-images that cover the entire LV yielded 85% (endocardium) and 88% DICE (epicardium) when combined with real MR data with an 80%-20% mix respectively.
This study suggests a low-cost solution for constructing artificial training datasets for supervised learning techniques in the field of MR by using advanced MR simulations without the use of a real MRI scanner, without scanning patients and without having to use specialized personnel, such as technologists and radiologists.
监督机器学习技术在医学图像分析中显示出了巨大的潜力。然而,在 MRI 领域,这些技术需要采集的数据可能存在以下问题:1)不可用;2)虽然可用,但规模较小;3)虽然可用,但不具有代表性;4)虽然可用,但标签较弱。本研究的目的是通过在逼真的人体解剖学计算机模型上进行高级的 MR 模拟,克服这些限制,而无需使用真实的 MRI 扫描仪,无需对患者进行扫描,也无需使用技术人员和相关费用。
使用 4D-XCAT 模型和核心 MRI 模拟平台,为训练神经网络自动勾画 LV 心内膜和心外膜,生成人工短轴 MR 图像。在从 8 名健康志愿者获得的真实 MR 图像上评估其性能。该神经网络还在一个公开的数据集上的真实 MR 图像上进行了训练,并在相同志愿者的数据上评估其性能。
所提出的解决方案在真实的中部心室切片上表现出 94%(心内膜)和 90% DICE(心外膜)的性能,而在人工训练数据集中增加 10%的真实 MR 图像则将性能提高到 97% DICE。当与分别具有 80%-20%混合比例的真实 MR 数据结合使用时,使用覆盖整个 LV 的人工 MR 图像可分别获得 85%(心内膜)和 88% DICE(心外膜)的性能。
本研究提出了一种在不使用真实 MRI 扫描仪、不扫描患者以及无需使用技术人员和放射科医生等专业人员的情况下,通过使用高级的 MR 模拟构建监督学习技术在 MRI 领域的人工训练数据集的低成本解决方案。