Health Sciences and Innovation, Surrey Memorial Hospital, Fraser Health Authority, Surrey, BC, Canada; Departments of Biomedical Physiology & Kinesiology, Engineering Science, Computer Science, Simon Fraser University, Surrey, BC, Canada.
Safe Software, Surrey, BC, Canada.
Int J Med Inform. 2021 Feb;146:104348. doi: 10.1016/j.ijmedinf.2020.104348. Epub 2020 Nov 27.
PURPOSE/OBJECTIVE(S): Gliomas are uniformly fatal brain tumours with significant neurological and quality of life detriment to patients. Improvement in outcomes has remained largely unchanged in nearly 20 years. MRI (magnetic resonance imaging) is often used in diagnosis and management. Machine learning analyses of large-scale MRI data are pivotal in advancing the diagnosis, management and improve outcomes in neuro-oncology. A common challenge to robust machine learning approaches is the lack of large 'ground truth' datasets in supervised learning for building classification and prediction models. The creation of these datasets relies on human-expert input and is time-consuming and subjective error-prone, limiting effective machine learning applications. Simulation of mechanistic aspects such as geometry, location and physical properties of brain tumours can generate large-scale ground-truth datasets allowing for comparison of analysis techniques in clinical applications. We aimed to develop a transparent and convenient method for building 'ground truth' presentations of simulated glioma lesions on anatomical MRI.
MATERIALS/METHODS: The simulation workflow was created using the Feature Manipulation Engine (FME®), a data integration platform specializing in the spatial data processing. By compiling and integrating FME's functions to read, integrate, transform, validate, save, and display MRI data, and experimenting with ways to manipulate the parameters concerning location, size, shape, and signal intensity with the presentations of glioma, we were able to generate simulated appearances of high-grade gliomas on gadolinium-based high-resolution 3D T1-weighted MRI (1 mm). Data of patients with canonical high-grade tumours were used as real-world tumours for validating the accuracy of the simulation. Twenty raters who are experienced with brain tumour interpretation on MRI independently completed a survey, designed to distinguish simulated and real-world brain tumours. Sensitivity and specificity were calculated for assessing the performance of the approach with the binary classification of simulated vs real-world tumours. Correlation and regression were used in run time analysis, assessing the software toolset's efficiency in producing different numbers of simulated lesions. Differences in the group means were examined using the non-parametric Kruskal-Wallis test.
The simulation method was developed as an interpretable and useful workflow for the easy creation of tumour simulations and incorporation into 3D MRI. A linear increase in the running time and memory usage was observed with an increasing number of generated lesions. The respondents' accuracy rate ranged between 33.3 and 83.3 %. The sensitivity and specificity were low for a human expert to differentiate simulated lesions from real gliomas (0.43 and 0.58) or vice versa (0.65 and 0.62). The mean scores ranking the real-world gliomas did not differ between the simulated and real tumours.
The reliable and user-friendly software method can allow for robust simulation of high-grade glioma on MRI. Ongoing research efforts include optimizing the workflow for generating glioma datasets as well as adapting it to simulating additional MRI brain changes.
目的/目标:神经胶质瘤是一种普遍致命的脑部肿瘤,会对患者的神经功能和生活质量造成严重损害。近 20 年来,其治疗效果几乎没有明显改善。磁共振成像(MRI)常用于诊断和治疗。通过对大规模 MRI 数据进行机器学习分析,可以推进神经肿瘤学的诊断、治疗和改善预后。在监督学习中,建立分类和预测模型的大型“真实数据”数据集通常缺乏稳健的机器学习方法。这些数据集的创建依赖于人工输入,耗时且容易出现人为错误,限制了有效的机器学习应用。模拟脑肿瘤的几何形状、位置和物理特性等机制方面可以生成大规模的真实数据,从而可以在临床应用中比较分析技术。我们旨在开发一种透明且方便的方法,用于在解剖学 MRI 上构建模拟神经胶质瘤病变的“真实数据”。
材料/方法:使用功能操作引擎(Feature Manipulation Engine,FME®)创建仿真工作流程,FME®是一个专门用于空间数据处理的专业数据集成平台。通过编译和集成 FME 的功能,包括读取、集成、转换、验证、保存和显示 MRI 数据,并尝试使用各种方法来处理位置、大小、形状和信号强度等参数,使模拟神经胶质瘤在钆基高分辨率 3D T1 加权 MRI(1 毫米)上的外观,我们能够生成高级别神经胶质瘤的模拟外观。使用具有典型高级别肿瘤的患者数据作为真实世界的肿瘤,以验证模拟的准确性。20 名具有 MRI 脑肿瘤解读经验的评分者独立完成了一项旨在区分模拟和真实脑肿瘤的调查。使用二分类方法(模拟与真实肿瘤)计算敏感性和特异性,以评估该方法的性能。使用相关和回归分析评估了不同数量模拟病变时软件工具的效率。使用非参数 Kruskal-Wallis 检验检验组间均值的差异。
该模拟方法作为一种可解释和有用的工作流程,可以轻松地创建肿瘤模拟并将其纳入 3D MRI。随着生成的病变数量的增加,运行时间和内存使用呈线性增加。受访者的准确率在 33.3%至 83.3%之间。人类专家区分模拟病变与真实神经胶质瘤(0.43 和 0.58)或反之亦然(0.65 和 0.62)的敏感性和特异性较低。模拟肿瘤和真实肿瘤的评分者对真实神经胶质瘤的评分均值没有差异。
该可靠且用户友好的软件方法可以在 MRI 上可靠地模拟高级别神经胶质瘤。正在进行的研究工作包括优化生成神经胶质瘤数据集的工作流程,并将其适应模拟其他 MRI 脑变化。