Inter-Scanner Harmonization of High Angular Resolution DW-MRI using Null Space Deep Learning.

Computational diffusion MRI : MICCAI Workshop Pub Date : 2019-01-01 Epub Date: 2019-05-03
Vishwesh Nath, Prasanna Parvathaneni, Colin B Hansen, Allison E Hainline, Camilo Bermudez, Samuel Remedios, Justin A Blaber, Kurt G Schilling, Ilwoo Lyu, Vaibhav Janve, Yurui Gao, Iwona Stepniewska, Baxter P Rogers, Allen T Newton, L Taylor Davis, Jeff Luci, Adam W Anderson, Bennett A Landman
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Abstract

Diffusion-weighted magnetic resonance imaging (DW-MRI) allows for non-invasive imaging of the local fiber architecture of the human brain at a millimetric scale. Multiple classical approaches have been proposed to detect both single (e.g., tensors) and multiple (e.g., constrained spherical deconvolution, CSD) fiber population orientations per voxel. However, existing techniques generally exhibit low reproducibility across MRI scanners. Herein, we propose a data-driven technique using a neural network design which exploits two categories of data. First, training data were acquired on three squirrel monkey brains using ex-vivo DW-MRI and histology of the brain. Second, repeated scans of human subjects were acquired on two different scanners to augment the learning of the network proposed. To use these data, we propose a new network architecture, the null space deep network (NSDN), to simultaneously learn on traditional observed/truth pairs (e.g., MRI-histology voxels) along with repeated observations without a known truth (e.g., scan-rescan MRI). The NSDN was tested on twenty percent of the histology voxels that were kept completely blind to the network. NSDN significantly improved absolute performance relative to histology by 3.87% over CSD and 1.42% over a recently proposed deep neural network approach. Moreover, it improved reproducibility on the paired data by 21.19% over CSD and 10.09% over a recently proposed deep approach. Finally, NSDN improved generalizability of the model to a third in vivo human scanner (which was not used in training) by 16.08% over CSD and 10.41% over a recently proposed deep learning approach. This work suggests that data-driven approaches for local fiber reconstruction are more reproducible, informative and precise and offers a novel, practical method for determining these models.

Abstract Image

Abstract Image

Abstract Image

利用空域深度学习实现高角度分辨率 DW-MRI 的扫描仪间协调。
弥散加权磁共振成像(DW-MRI)可对人脑局部纤维结构进行毫米量级的无创成像。目前已提出多种经典方法来检测每个体素的单纤维群方向(如张量)和多纤维群方向(如约束球形解卷积,CSD)。然而,现有技术在不同磁共振成像扫描仪上的可重复性普遍较低。在此,我们提出了一种数据驱动技术,采用神经网络设计,利用两类数据。首先,利用体外 DW-MRI 和大脑组织学获得了三只松鼠猴大脑的训练数据。其次,在两台不同的扫描仪上对人类受试者进行了重复扫描,以增强对所提议网络的学习。为了使用这些数据,我们提出了一种新的网络架构--空域深度网络(NSDN),可同时对传统的观察/真相对(如核磁共振成像-组织学体素)以及无已知真相的重复观察(如扫描-扫描核磁共振成像)进行学习。NSDN 在百分之二十的组织学体素上进行了测试,这些体素对网络完全无知。与组织学相比,NSDN 的绝对性能大幅提高,比 CSD 提高了 3.87%,比最近提出的深度神经网络方法提高了 1.42%。此外,它还提高了配对数据的可重复性,比 CSD 提高了 21.19%,比最近提出的深度方法提高了 10.09%。最后,与 CSD 相比,NSDN 提高了模型对第三个体内人体扫描仪(未用于训练)的通用性 16.08%,与最近提出的深度学习方法相比提高了 10.41%。这项工作表明,数据驱动的局部纤维重建方法具有更高的可重复性、信息量和精确性,并为确定这些模型提供了一种新颖实用的方法。
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