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首页> 外文期刊>International journal of medical informatics >Towards effective machine learning in medical imaging analysis: A novel approach and expert evaluation of high-grade glioma 'ground truth' simulation on MRI
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Towards effective machine learning in medical imaging analysis: A novel approach and expert evaluation of high-grade glioma 'ground truth' simulation on MRI

机译:对医学成像分析有效机器学习的影响:一种新的胶质瘤“基础真理”模拟对MRI的新方法和专家评价

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摘要

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 (R)), 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(3)). 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.Results: 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.Conclusion: 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.
机译:目的/目的:胶质瘤是致命的致命脑肿瘤,具有重要的神经系统和生活质量对患者。成果的改善在近20年来大大不变。 MRI(磁共振成像)通常用于诊断和管理。大规模MRI数据的机器学习分析在推进神经肿瘤学中的诊断,管理和改善结果方面是关键。强大的机器学习方法的共同挑战是缺乏大型'地面真理'数据集,用于建设分类和预测模型的监督学习。这些数据集的创建依赖于人类专家输入,并且是耗时和主观的误差,限制有效的机器学习应用。脑肿瘤的几何形状,位置和物理性质等机械方面的模拟可以产生大规模的地面实际数据集,允许比较临床应用中的分析技术。我们旨在开发一种透明,方便的方法,用于构建解剖MRI的模拟胶质瘤病变的构建“实践”演示文稿。材料/方法是使用特征操作引擎(FME(R))创建模拟工作流程,专门的数据集成平台在空间数据处理中。通过编译和集成FME的函数来读取,集成,转换,验证,保存和显示MRI数据,并尝试使用胶质瘤的演示文稿来操纵有关位置,大小,形状和信号强度的参数,我们能够在基于钆的高分辨率3D T1加权MRI(1mm(3))上产生模拟高级胶质瘤的模拟外观。典型高级肿瘤患者的数据被用作现实世界肿瘤,用于验证模拟的准确性。在MRI对脑肿瘤解释经验丰富的2名评估者独立地完成了一项调查,旨在区分模拟和现实世界脑肿瘤。计算敏感性和特异性,用于评估具有模拟VS现实世界肿瘤的二进制分类的方法的性能。在运行时分分析中使用相关性和回归,评估软件工具集在产生不同数量的模拟病变方面的效率。使用非参数kruskal-wallis测试检查组手段的差异。结果:仿真方法被开发为可解释和有用的工作流程,以便于肿瘤仿真易于创建并将其纳入3D MRI。用越来越多的生成病变观察到运行时间和内存使用情况的线性增加。受访者的准确率范围在33.3和83.3%之间。对于人类专家来说,敏感性和特异性较低,以区分来自真实胶质瘤(0.43和0.58)的模拟病变,反之亦然(0.65和0.62)。在模拟和真实的Tumours之间的平均分数没有区别没有区别。结论:可靠和用户友好的软件方法可以允许在MRI上进行高档胶质瘤的鲁棒模拟。正在进行的研究工作包括优化用于生成胶质瘤数据集的工作流程,并适应模拟额外的MRI脑变化。

著录项

  • 来源
    《International journal of medical informatics》 |2021年第2期|104348.1-104348.10|共10页
  • 作者单位

    Fraser Hlth Author Hlth Sci & Innovat Surrey Mem Hosp Surrey BC Canada|Simon Fraser Univ Dept Biomed Physiol Engn Sci Comp Sci Surrey BC Canada|Simon Fraser Univ Dept Kinesiol Engn Sci Comp Sci Surrey BC Canada;

    Fraser Hlth Author Hlth Sci & Innovat Surrey Mem Hosp Surrey BC Canada|Simon Fraser Univ Dept Biomed Physiol Engn Sci Comp Sci Surrey BC Canada|Simon Fraser Univ Dept Kinesiol Engn Sci Comp Sci Surrey BC Canada;

    Safe Software Surrey BC Canada;

    Fraser Hlth Author Hlth Sci & Innovat Surrey Mem Hosp Surrey BC Canada|Simon Fraser Univ Dept Biomed Physiol Engn Sci Comp Sci Surrey BC Canada|Simon Fraser Univ Dept Kinesiol Engn Sci Comp Sci Surrey BC Canada|CNR Ottawa ON Canada;

    BC Canc Surrey BC Canada;

    Fraser Hlth Author Hlth Sci & Innovat Surrey Mem Hosp Surrey BC Canada|Simon Fraser Univ Dept Biomed Physiol Engn Sci Comp Sci Surrey BC Canada|Simon Fraser Univ Dept Kinesiol Engn Sci Comp Sci Surrey BC Canada|Baycrest Hlth Sci Ctr Toronto ON Canada;

    Fraser Hlth Author Hlth Sci & Innovat Surrey Mem Hosp Surrey BC Canada|Simon Fraser Univ Dept Biomed Physiol Engn Sci Comp Sci Surrey BC Canada|Simon Fraser Univ Dept Kinesiol Engn Sci Comp Sci Surrey BC Canada|HealthTech Connex Surrey BC Canada;

    Safe Software Surrey BC Canada;

    Baycrest Hlth Sci Ctr Toronto ON Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Brain tumour; Glioma; Ground truth; Machine learning; Magnetic resonance imaging (MRI); Simulation;

    机译:脑肿瘤;胶质瘤;地面真相;机器学习;磁共振成像(MRI);模拟;
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