Unraveling Normal Anatomy via Fluid-Driven Anomaly Randomization.

Peirong Liu, Ana Lawry Aguila, Juan E Iglesias
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Abstract

Data-driven machine learning has made significant strides in medical image analysis. However, most existing methods are tailored to specific modalities and assume a particular resolution (often isotropic). This limits their generalizability in clinical settings, where variations in scan appearance arise from differences in sequence parameters, resolution, and orientation. Furthermore, most general-purpose models are designed for healthy subjects and suffer from performance degradation when pathology is present. We introduce UNA (Unraveling Normal Anatomy), the first modality-agnostic learning approach for normal brain anatomy reconstruction that can handle both healthy scans and cases with pathology. We propose a fluid-driven anomaly randomization method that generates an unlimited number of realistic pathology profiles on-the-fly. UNA is trained on a combination of synthetic and real data, and can be applied directly to real images with potential pathology without the need for fine-tuning. We demonstrate UNA's effectiveness in reconstructing healthy brain anatomy and showcase its direct application to anomaly detection, using both simulated and real images from 3D healthy and stroke datasets, including CT and MRI scans. By bridging the gap between healthy and diseased images, UNA enables the use of general-purpose models on diseased images, opening up new opportunities for large-scale analysis of uncurated clinical images in the presence of pathology. Code is available at https://github.com/peirong26/UNA.

通过流体驱动的异常随机化解开正常解剖。
数据驱动的机器学习在医学图像分析方面取得了重大进展。然而,大多数现有的方法都是针对特定的模式量身定制的,并假设一个特定的分辨率(通常是各向同性的)。这限制了它们在临床环境中的普遍性,在临床环境中,扫描外观的变化是由序列参数、分辨率和方向的差异引起的。此外,大多数通用模型是为健康受试者设计的,当出现病理时,它们的性能会下降。我们介绍了UNA(解开正常解剖),这是第一个对正常大脑解剖重建进行模态不可知的学习方法,可以处理健康扫描和病理病例。我们提出了一种流体驱动的异常随机化方法,可以实时生成无限数量的现实病理概况。UNA在合成数据和真实数据的组合上进行训练,可以直接应用于具有潜在病理的真实图像,而无需进行微调。我们展示了UNA在重建健康大脑解剖结构方面的有效性,并展示了它在异常检测方面的直接应用,使用了来自3D健康和中风数据集的模拟和真实图像,包括CT和MRI扫描。通过弥合健康图像和病变图像之间的差距,UNA能够对病变图像使用通用模型,为在存在病理的情况下对未经整理的临床图像进行大规模分析开辟了新的机会。代码可从https://github.com/peirong26/UNA获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
43.50
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0.00%
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