Publications by authors named "Adria Casamitjana"

We present the "Unbiased and Smooth Longitudinal Registration" (USLR) method, a computational framework for longitudinal registration of brain MRI scans to estimate non-linear image trajectories that are smooth across time, unbiased to any timepoint, and robust to imaging artefacts. It operates on the Lie algebra parameterisation of spatial transforms (which is compatible with rigid transforms and stationary velocity fields for non-linear deformation) and takes advantage of log-domain properties to solve the problem using Bayesian inference. USRL estimates spatial transformations that: (i) bring all timepoints to an unbiased subject-specific space; and (ii) compute a smooth trajectory across the imaging time-series.

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Synthetic data have emerged as an attractive option for developing machine-learning methods in human neuroimaging, particularly in magnetic resonance imaging (MRI)-a modality where image contrast depends enormously on acquisition hardware and parameters. This retrospective paper reviews a family of recently proposed methods, based on synthetic data, for generalizable machine learning in brain MRI analysis. Central to this framework is the concept of domain randomization, which involves training neural networks on a vastly diverse array of synthetically generated images with random contrast properties.

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Magnetic resonance imaging (MRI) is the standard tool to image the human brain In this domain, digital brain atlases are essential for subject-specific segmentation of anatomical regions of interest (ROIs) and spatial comparison of neuroanatomy from different subjects in a common coordinate frame. High-resolution, digital atlases derived from histology (e.g.

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Article Synopsis
  • The text discusses open-source tools designed for 3D analysis of photographs from dissected human brain slices, which are often underutilized for quantitative studies.
  • These tools can reconstruct a 3D volume and segment brain images into 11 regions per hemisphere, serving as a cost-effective alternative to traditional MRI imaging.
  • Testing shows that the methodology provides accurate 3D reconstructions and can differentiate between Alzheimer's disease cases and healthy controls, with tools available in the FreeSurfer suite.
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The Circle of Willis (CoW) is an important network of arteries connecting major circulations of the brain. Its vascular architecture is believed to affect the risk, severity, and clinical outcome of serious neurovascular diseases. However, characterizing the highly variable CoW anatomy is still a manual and time-consuming expert task.

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Article Synopsis
  • Open-source tools have been developed for 3D analysis of brain slice photographs, which are often underutilized for quantitative research.
  • These tools can 3D reconstruct brain volumes and segment them into 22 regions, independent of slice thickness, serving as a viable alternative to costly MRI scans.
  • Tests on data from Alzheimer's Disease Research Centers show that the tools provide accurate reconstructions and detect differences related to Alzheimer's, with results comparable to those obtained from MRI.
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This paper reviews almost three decades of work on atlasing and segmentation methods for subcortical structures in human brain MRI. In writing this survey, we have three distinct aims. First, to document the evolution of digital subcortical atlases of the human brain, from the early MRI templates published in the nineties, to the complex multi-modal atlases at the subregion level that are available today.

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Nonlinear inter-modality registration is often challenging due to the lack of objective functions that are good proxies for alignment. Here we propose a synthesis-by-registration method to convert this problem into an easier intra-modality task. We introduce a registration loss for weakly supervised image translation between domains that does not require perfectly aligned training data.

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Joint registration of a stack of 2D histological sections to recover 3D structure ("3D histology reconstruction") finds application in areas such as atlas building and validation of in vivo imaging. Straightforward pairwise registration of neighbouring sections yields smooth reconstructions but has well-known problems such as "banana effect" (straightening of curved structures) and "z-shift" (drift). While these problems can be alleviated with an external, linearly aligned reference (e.

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Alzheimer's disease (AD) continuum is defined as a cascade of several neuropathological processes that can be measured using biomarkers, such as cerebrospinal fluid (CSF) levels of Aβ, -tau, and -tau. In parallel, brain anatomy can be characterized through imaging techniques, such as magnetic resonance imaging (MRI). In this work we relate both sets of measurements and seek associations between biomarkers and the brain structure that can be indicative of AD progression.

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Ex vivo imaging enables analysis of the human brain at a level of detail that is not possible in vivo with MRI. In particular, histology can be used to study brain tissue at the microscopic level, using a wide array of different stains that highlight different microanatomical features. Complementing MRI with histology has important applications in ex vivo atlas building and in modeling the link between microstructure and macroscopic MR signal.

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NeAT is a modular, flexible and user-friendly neuroimaging analysis toolbox for modeling linear and nonlinear effects overcoming the limitations of the standard neuroimaging methods which are solely based on linear models. NeAT provides a wide range of statistical and machine learning non-linear methods for model estimation, several metrics based on curve fitting and complexity for model inference and a graphical user interface (GUI) for visualization of results. We illustrate its usefulness on two study cases where non-linear effects have been previously established.

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Background: Magnetic resonance imaging (MRI) has unveiled specific alterations at different stages of Alzheimer's disease (AD) pathophysiologic continuum constituting what has been established as "AD signature". To what extent MRI can detect amyloid-related cerebral changes from structural MRI in cognitively unimpaired individuals is still an area open for exploration.

Method: Longitudinal 3D-T1 MRI scans were acquired from a subset of the ADNI cohort comprising 403 subjects: 79 controls (Ctrls), 50 preclinical AD (PreAD), and 274 MCI and dementia due to AD (MCI/AD).

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Article Synopsis
  • MRI is used to identify structural changes in the brain related to neurodegenerative diseases, serving as a biomarker.
  • Instead of focusing on categorical diagnoses, the study utilizes multiple biomarkers to capture the variability in brain morphology related to conditions like aging and Alzheimer's disease (AD).
  • The approach employs Projection to Latent Structures in regression (PLSR) to create a low-dimensional model that distinguishes between effects of aging and pathological changes in brain structure, while validating its predictive accuracy through cross-validation.
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Quantification of cerebral white matter hyperintensities (WMH) of presumed vascular origin is of key importance in many neurological research studies. Currently, measurements are often still obtained from manual segmentations on brain MR images, which is a laborious procedure. The automatic WMH segmentation methods exist, but a standardized comparison of the performance of such methods is lacking.

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Accurate segmentation of infant brain magnetic resonance (MR) images into white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF) is an indispensable foundation for early studying of brain growth patterns and morphological changes in neurodevelopmental disorders. Nevertheless, in the isointense phase (approximately 6-9 months of age), due to inherent myelination and maturation process, WM and GM exhibit similar levels of intensity in both T1-weighted (T1w) and T2-weighted (T2w) MR images, making tissue segmentation very challenging. Despite many efforts were devoted to brain segmentation, only few studies have focused on the segmentation of 6-month infant brain images.

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Article Synopsis
  • Identifying healthy individuals with amyloid pathology is crucial for secondary prevention in Alzheimer's disease (AD) clinical trials, highlighting the need for noninvasive detection methods.
  • Researchers applied machine learning to MRI scans of 96 cognitively normal subjects to identify those who are amyloid-positive, using a model trained on publicly available data.
  • The proposed approach can significantly cut costs and reduce the need for invasive testing by 60%, enhancing recruitment strategies for prevention trials and potentially aiding in the development of secondary prevention methods for AD.
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