Current treatment planning of patients diagnosed with a brain tumor, such as glioma, could significantly benefit by accessing the spatial distribution of tumor cell concentration. Existing diagnostic modalities, e.g. magnetic resonance imaging (MRI), contrast sufficiently well areas of high cell density. In gliomas, however, they do not portray areas of low cell concentration, which can often serve as a source for the secondary appearance of the tumor after treatment. To estimate tumor cell densities beyond the visible boundaries of the lesion, numerical simulations of tumor growth could complement imaging information by providing estimates of full spatial distributions of tumor cells. Over recent years a corpus of literature on medical image-based tumor modeling was published. It includes different mathematical formalisms describing the forward tumor growth model. Alongside, various parametric inference schemes were developed to perform an efficient tumor model personalization, i.e. solving the inverse problem. However, the unifying drawback of all existing approaches is the time complexity of the model personalization which prohibits a potential integration of the modeling into clinical settings. In this work, we introduce a deep learning based methodology for inferring the patient-specific spatial distribution of brain tumors from T1Gd and FLAIR MRI medical scans. Coined as Learn-Morph-Infer the method achieves real-time performance in the order of minutes on widely available hardware and the compute time is stable across tumor models of different complexity, such as reaction-diffusion and reaction-advection-diffusion models. We believe the proposed inverse solution approach not only bridges the way for clinical translation of brain tumor personalization but can also be adopted to other scientific and engineering domains.
翻译:现有诊断模式,例如磁共振成像(MRI),与高细胞密度地区形成充分对比。但是,在古摩,它们没有描绘低细胞集中的地区,而这些地方往往可以作为肿瘤治疗后的二次外观的来源。但是,所有现有方法的统一性退缩是模型个人化的时间复杂性,它只禁止将模型化方法纳入临床环境,但只能提供肿瘤细胞全面空间分布的估计。在这项工作中,我们推出了一套基于医学图像的肿瘤模型模型模型的文献。它包括描述前脑肿瘤生长模型的不同数学形式主义。此外,还制定了各种参数推论计划,以实施高效的肿瘤模型个人化,即解决治疗后肿瘤的二次出现。然而,所有现有方法的统一性退缩是模型个人化的时间复杂性,它只禁止将模型化方法纳入临床环境,但只能提供肿瘤细胞细胞全面空间分布的估计数。我们采用了一套基于深层次的理论,用以推断基于基于医学图像的肿瘤模型,而不是基于大脑肿瘤生长模型的精确度分布。此外,通过直径定位的直径模型,通过直径直径直径直径直径直径直径直径的直径直径直径直径直径直径直径直径,从直径直径直的直径直径直射法,通过直地算,从直径直地算取取取取,从直地算取的直径直径直径直地算取取取取取取取取取取取取取取取取取取取取取取取取取。