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Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas

机译:来自多MRI临床数据集的域映射和深度学习用于预测低等级胶质瘤中的分子亚型

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摘要

Brain tumors, such as low grade gliomas (LGG), are molecularly classified which require the surgical collection of tissue samples. The pre-surgical or non-operative identification of LGG molecular type could improve patient counseling and treatment decisions. However, radiographic approaches to LGG molecular classification are currently lacking, as clinicians are unable to reliably predict LGG molecular type using magnetic resonance imaging (MRI) studies. Machine learning approaches may improve the prediction of LGG molecular classification through MRI, however, the development of these techniques requires large annotated data sets. Merging clinical data from different hospitals to increase case numbers is needed, but the use of different scanners and settings can affect the results and simply combining them into a large dataset often have a significant negative impact on performance. This calls for efficient domain adaption methods. Despite some previous studies on domain adaptations, mapping MR images from different datasets to a common domain without affecting subtitle molecular-biomarker information has not been reported yet. In this paper, we propose an effective domain adaptation method based on Cycle Generative Adversarial Network (CycleGAN). The dataset is further enlarged by augmenting more MRIs using another GAN approach. Further, to tackle the issue of brain tumor segmentation that requires time and anatomical expertise to put exact boundary around the tumor, we have used a tight bounding box as a strategy. Finally, an efficient deep feature learning method, multi-stream convolutional autoencoder (CAE) and feature fusion, is proposed for the prediction of molecular subtypes (1p/19q-codeletion and IDH mutation). The experiments were conducted on a total of 161 patients consisting of FLAIR and T1 weighted with contrast enhanced (T1ce) MRIs from two different institutions in the USA and France. The proposed scheme is shown to achieve the test accuracy of on 1p/19q codeletion and on IDH mutation, with marked improvement over the results obtained without domain mapping. This approach is also shown to have comparable performance to several state-of-the-art methods.
机译:脑肿瘤,例如低级胶质瘤(LGG),是分子分类,其需要组织样品的手术收集。 LGG分子类型的前手术或非手术鉴定可以改善患者咨询和治疗决策。然而,目前缺乏LGG分子分类的放射线照相方法,因为临床医生无法使用磁共振成像(MRI)研究可靠地预测LGG分子类型。机器学习方法可以通过MRI改善LGG分子分类的预测,然而,这些技术的开发需要大的注释数据集。将来自不同医院的临床数据合并需要增加案例数量,但使用不同的扫描仪和设置可能会影响结果,并且只需将它们结合到大型数据集通常对性能产生显着的负面影响。此调用有效的域适应方法。尽管有一些关于域改编的研究,但尚未报告从不同数据集将来自不同数据集的MR图像映射到公共结构域,而不会报告尚未影响字幕分子 - 生物标志物信息。在本文中,我们提出了一种基于循环生成的对抗网络(Consforgan)的有效域适应方法。通过使用另一个GAN方法增强更多MRIS,进一步放大数据集。此外,为了解决需要时间和解剖专业知识的脑肿瘤分割问题,以便在肿瘤周围放置精确的边界,我们使用了一个紧张的边界盒作为策略。最后,提出了一种有效的深度特征学习方法,多流卷积自动化器(CAE)和特征融合,用于预测分子亚型(1P / 19Q-CODELELION和IDH突变)。该实验总共进行了161名患者,该患者包括来自美国和法国两种不同机构的对比增强(T1CE)MRIS的Flair和T1。所提出的方案显示在1P / 19Q Comethion和IDH突变上实现测试精度,并在没有域映射的结果上显着改善。该方法也显示出对多种最先进的方法具有相当的性能。

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