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Prostatome: A combined anatomical and disease based IVIRI atlas of the prostate

机译:前列腺素:结合解剖学和疾病的IVIRI前列腺图谱

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Purpose: In this work, the authors introduce a novel framework, the anatomically constrained registration (AnCoR) scheme and apply it to create a fused anatomic-disease atlas of the prostate which the authors refer to as the prostatome. The prostatome combines a MRI based anatomic and a histology based disease atlas. Statistical imaging atlases allow for the integration of information across multiple scales and imaging modalities into a single canonical representation, in turn enabling a fused anatomical-disease representation which may facilitate the characterization of disease appearance relative to anatomic structures. While statistical atlases have been extensively developed and studied for the brain, approaches that have attempted to combine pathology and imaging data for study of prostate pathology are not extant. This works seeks to address this gap.Methods: The AnCoR framework optimizes a scoring function composed of two surface (prostate and central gland) misalignment measures and one intensity-based similarity term. This ensures the correct mapping of anatomic regions into the atlas, even when regional MRI intensities are inconsistent or highly variable between subjects. The framework allows for creation of an anatomic imaging and a disease atlas, while enabling their fusion into the anatomic imaging-disease atlas. The atlas presented here was constructed using 83 subjects with biopsy confirmed cancer who had pre-operative MRI (collected at two institutions) followed by radical prostatectomy. The imaging atlas results from mapping the in vivo MRI into the canonical space, while the anatomic regions serve as domain constraints. Elastic co-registration MRI and corresponding ex vivo histology provides "ground truth" mapping of cancer extent on in vivo imaging for 23 subjects.Results: AnCoR was evaluated relative to alternative construction strategies that use either MRI intensities or the prostate surface alone for registration. The AnCoR framework yielded a central gland Dice similarity coefficient (DSC) of 90%, and prostate DSC of 88%, while the misalignment of the urethra and verumontanum was found to be 3.45 mm, and 4.73 mm, respectively, which were measured to be significantly smaller compared to the alternative strategies. As might have been anticipated from our limited cohort of biopsy confirmed cancers, the disease atlas showed that most of the tumor extent was limited to the peripheral zone. Moreover, central gland tumors were typically larger in size, possibly because they are only discernible at a much later stage.Conclusions: The authors presented the AnCoR framework to explicitly model anatomic constraints for the construction of a fused anatomic imaging-disease atlas. The framework was applied to constructing a preliminary version of an anatomic-disease atlas of the prostate, the prostatome. The prostatome could facilitate the quantitative characterization of gland morphology and imaging features of prostate cancer. These techniques, may be applied on a large sample size data set to create a fully developed prostatome that could serve as a spatial prior for targeted biopsies by urologists. Additionally, the AnCoR framework could allow for incorporation of complementary imaging and molecular data, thereby enabling their careful correlation for population based radio-omics studies.
机译:目的:在这项工作中,作者介绍了一种新颖的框架,即解剖学上受约束的注册(AnCoR)方案,并将其应用于创建前列腺的融合解剖学疾病图谱,作者将其称为前列腺素组。前列腺癌结合了基于MRI的解剖学和基于组织学的疾病图谱。统计成像图谱可将跨多个尺度和成像模态的信息整合到单个规范的表示中,进而实现融合的解剖疾病的表示,这可有助于相对于解剖结构表征疾病外观。尽管针对大脑的统计图谱已得到广泛开发和研究,但尝试将病理学和影像学数据相结合来研究前列腺病理学的方法尚不存在。方法:AnCoR框架优化了评分功能,该评分功能由两个表面(前列腺和中央腺体)失准量度和一个基于强度的相似性项组成。即使受试者之间的区域MRI强度不一致或变化很大,这也可以确保将解剖区域正确映射到地图集。该框架允许创建解剖学成像和疾病图谱,同时使它们融合到解剖学成像疾病图谱中。这里介绍的地图集是由83位经活检证实为癌症的受试者构建的,他们接受了术前MRI(在两个机构收集)并随后进行了根治性前列腺切除术。成像图谱是通过将体内MRI映射到规范空间中而得出的,而解剖区域则作为域约束。弹性共注册MRI和相应的离体组织学提供了23名受试者在体内成像上癌症程度的“真实情况”作图。结果:相对于使用MRI强度或仅前列腺表面进行注册的替代构建策略,对AnCoR进行了评估。 AnCoR框架产生的中央腺体Dice相似系数(DSC)为90%,前列腺DSC为88%,而尿道和Verumontanum的错位分别为3.45 mm和4.73 mm,经测量与替代策略相比,显着较小。正如我们有限的活检确诊癌症队列所预期的那样,该疾病图集显示大部分肿瘤范围仅限于周围区域。此外,中央腺瘤的大小通常较大,可能是因为它们只能在较晚的阶段才可辨认。结论:作者提出了AnCoR框架,以明确建模解剖约束,以构建融合的解剖成像疾病地图集。该框架用于构建前列腺的解剖疾病图谱的初步版本,即前列腺癌。前列腺癌可以促进前列腺癌腺体形态和影像学特征的定量表征。这些技术可以应用于大样本量的数据集,以创建一个完善的前列腺素组,可以作为泌尿科医师进行靶向活检的空间先验。此外,AnCoR框架可允许纳入互补的成像和分子数据,从而使它们能够与基于人群的放射组学研究进行仔细的关联。

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