58 research outputs found
Deep Grading based on Collective Artificial Intelligence for AD Diagnosis and Prognosis
Accurate diagnosis and prognosis of Alzheimer's disease are crucial to
develop new therapies and reduce the associated costs. Recently, with the
advances of convolutional neural networks, methods have been proposed to
automate these two tasks using structural MRI. However, these methods often
suffer from lack of interpretability, generalization, and can be limited in
terms of performance. In this paper, we propose a novel deep framework designed
to overcome these limitations. Our framework consists of two stages. In the
first stage, we propose a deep grading model to extract meaningful features. To
enhance the robustness of these features against domain shift, we introduce an
innovative collective artificial intelligence strategy for training and
evaluating steps. In the second stage, we use a graph convolutional neural
network to better capture AD signatures. Our experiments based on 2074 subjects
show the competitive performance of our deep framework compared to
state-of-the-art methods on different datasets for both AD diagnosis and
prognosis.Comment: arXiv admin note: substantial text overlap with arXiv:2206.0324
3D Transformer based on deformable patch location for differential diagnosis between Alzheimer's disease and Frontotemporal dementia
Alzheimer's disease and Frontotemporal dementia are common types of
neurodegenerative disorders that present overlapping clinical symptoms, making
their differential diagnosis very challenging. Numerous efforts have been done
for the diagnosis of each disease but the problem of multi-class differential
diagnosis has not been actively explored. In recent years, transformer-based
models have demonstrated remarkable success in various computer vision tasks.
However, their use in disease diagnostic is uncommon due to the limited amount
of 3D medical data given the large size of such models. In this paper, we
present a novel 3D transformer-based architecture using a deformable patch
location module to improve the differential diagnosis of Alzheimer's disease
and Frontotemporal dementia. Moreover, to overcome the problem of data
scarcity, we propose an efficient combination of various data augmentation
techniques, adapted for training transformer-based models on 3D structural
magnetic resonance imaging data. Finally, we propose to combine our
transformer-based model with a traditional machine learning model using brain
structure volumes to better exploit the available data. Our experiments
demonstrate the effectiveness of the proposed approach, showing competitive
results compared to state-of-the-art methods. Moreover, the deformable patch
locations can be visualized, revealing the most relevant brain regions used to
establish the diagnosis of each disease
Brain Structure Ages -- A new biomarker for multi-disease classification
Age is an important variable to describe the expected brain's anatomy status
across the normal aging trajectory. The deviation from that normative aging
trajectory may provide some insights into neurological diseases. In
neuroimaging, predicted brain age is widely used to analyze different diseases.
However, using only the brain age gap information (\ie the difference between
the chronological age and the estimated age) can be not enough informative for
disease classification problems. In this paper, we propose to extend the notion
of global brain age by estimating brain structure ages using structural
magnetic resonance imaging. To this end, an ensemble of deep learning models is
first used to estimate a 3D aging map (\ie voxel-wise age estimation). Then, a
3D segmentation mask is used to obtain the final brain structure ages. This
biomarker can be used in several situations. First, it enables to accurately
estimate the brain age for the purpose of anomaly detection at the population
level. In this situation, our approach outperforms several state-of-the-art
methods. Second, brain structure ages can be used to compute the deviation from
the normal aging process of each brain structure. This feature can be used in a
multi-disease classification task for an accurate differential diagnosis at the
subject level. Finally, the brain structure age deviations of individuals can
be visualized, providing some insights about brain abnormality and helping
clinicians in real medical contexts
Deep grading for MRI-based differential diagnosis of Alzheimer's disease and Frontotemporal dementia
Alzheimer's disease and Frontotemporal dementia are common forms of
neurodegenerative dementia. Behavioral alterations and cognitive impairments
are found in the clinical courses of both diseases and their differential
diagnosis is sometimes difficult for physicians. Therefore, an accurate tool
dedicated to this diagnostic challenge can be valuable in clinical practice.
However, current structural imaging methods mainly focus on the detection of
each disease but rarely on their differential diagnosis. In this paper, we
propose a deep learning based approach for both problems of disease detection
and differential diagnosis. We suggest utilizing two types of biomarkers for
this application: structure grading and structure atrophy. First, we propose to
train a large ensemble of 3D U-Nets to locally determine the anatomical
patterns of healthy people, patients with Alzheimer's disease and patients with
Frontotemporal dementia using structural MRI as input. The output of the
ensemble is a 2-channel disease's coordinate map able to be transformed into a
3D grading map which is easy to interpret for clinicians. This 2-channel map is
coupled with a multi-layer perceptron classifier for different classification
tasks. Second, we propose to combine our deep learning framework with a
traditional machine learning strategy based on volume to improve the model
discriminative capacity and robustness. After both cross-validation and
external validation, our experiments based on 3319 MRI demonstrated competitive
results of our method compared to the state-of-the-art methods for both disease
detection and differential diagnosis
DeepLesionBrain: Towards a broader deep-learning generalization for multiple sclerosis lesion segmentation
Recently, segmentation methods based on Convolutional Neural Networks (CNNs)
showed promising performance in automatic Multiple Sclerosis (MS) lesions
segmentation. These techniques have even outperformed human experts in
controlled evaluation conditions such as Longitudinal MS Lesion Segmentation
Challenge (ISBI Challenge). However state-of-the-art approaches trained to
perform well on highly-controlled datasets fail to generalize on clinical data
from unseen datasets. Instead of proposing another improvement of the
segmentation accuracy, we propose a novel method robust to domain shift and
performing well on unseen datasets, called DeepLesionBrain (DLB). This
generalization property results from three main contributions. First, DLB is
based on a large group of compact 3D CNNs. This spatially distributed strategy
ensures a robust prediction despite the risk of generalization failure of some
individual networks. Second, DLB includes a new image quality data augmentation
to reduce dependency to training data specificity (e.g., acquisition protocol).
Finally, to learn a more generalizable representation of MS lesions, we propose
a hierarchical specialization learning (HSL). HSL is performed by pre-training
a generic network over the whole brain, before using its weights as
initialization to locally specialized networks. By this end, DLB learns both
generic features extracted at global image level and specific features
extracted at local image level. DLB generalization was validated in
cross-dataset experiments on MSSEG'16, ISBI challenge, and in-house datasets.
During experiments, DLB showed higher segmentation accuracy, better
segmentation consistency and greater generalization performance compared to
state-of-the-art methods. Therefore, DLB offers a robust framework well-suited
for clinical practice
Brain Communications
Brain charts for the human lifespan have been recently proposed to build dynamic models of brain anatomy in normal aging and various neurological conditions. They offer new possibilities to quantify neuroanatomical changes from preclinical stages to death, where longitudinal MRI data are not available. In this study, we used brain charts to model the progression of brain atrophy in progressive supranuclear palsy – Richardson syndrome (PSPRS). We combined multiple datasets (n=8170 quality controlled MRI of healthy subjects from 22 cohorts covering the entire lifespan, and n=62 MRI of PSP-RS patients from the 4 Repeat Tauopathy Neuroimaging Initiative) to extrapolate lifetime volumetric models of healthy and PSP-RS brain structures. We then mapped in time and space the sequential divergence between healthy and PSP-RS charts. We found six major consecutive stages of atrophy progression: (i) ventral diencephalon (including subthalamic nuclei, substantia nigra, and red nuclei), (ii) pallidum, (iii) brainstem, striatum and amygdala, (iv) thalamus, (v) frontal lobe and (vi) occipital lobe. The three structures with most severe atrophy over time were the thalamus, followed by the pallidum and the brainstem. These results match the neuropathological staging of tauopathy progression in PSP-RS, where the pathology is supposed to start in the pallido-nigro-luysian system and spreads rostrally via the striatum and the amygdala to the cerebral cortex, and caudally to the brainstem. This study supports the use of brain charts for the human lifespan to study the progression of neurodegenerative diseases, especially in the absence of specific biomarkers as in PSP.Apprentissage profond pour la volumétrie cérébrale : vers le BigData en neuroscienceInitiative d'excellence de l'Université de Bordeau
PEANUT: Personalised Emotional Agent for Neurotechnology User-Training
International audienceMental-Imagery based Brain-Computer Interfaces (MI-BCI) are neurotechnologies enabling users to control applications using their brain activity alone. Although promising, they are barely used outside laboratories because they are poorly reliable, partly due to inappropriate training protocols. Indeed, it has been shown that tense and non-autonomous users, that is to say those who require the greatest social presence and emotional support, struggle to use MI-BCI. Yet, the importance of such support during MI-BCI training is neglected. Therefore we designed and tested PEANUT, the first Learning Companion providing social presence and emotional support dedicated to the improvement of MI-BCI user-training. PEANUT was designed based on the literature , data analyses and user-studies. Promising results revealed that participants accompanied by PEANUT found the MI-BCI system significantly more usable
Brain Commun.
The chronological progression of brain atrophy over decades, from pre-symptomatic to dementia stages, has never been formally depicted in Alzheimer's disease. This is mainly due to the lack of cohorts with long enough MRI follow-ups in cognitively unimpaired young participants at baseline. To describe a spatiotemporal atrophy staging of Alzheimer's disease at the whole-brain level, we built extrapolated lifetime volumetric models of healthy and Alzheimer's disease brain structures by combining multiple large-scale databases (n = 3512 quality controlled MRI from 9 cohorts of subjects covering the entire lifespan, including 415 MRI from ADNI1, ADNI2 and AIBL for Alzheimer's disease patients). Then, we validated dynamic models based on cross-sectional data using external longitudinal data. Finally, we assessed the sequential divergence between normal aging and Alzheimer's disease volumetric trajectories and described the following staging of brain atrophy progression in Alzheimer's disease: (i) hippocampus and amygdala; (ii) middle temporal gyrus; (iii) entorhinal cortex, parahippocampal cortex and other temporal areas; (iv) striatum and thalamus and (v) middle frontal, cingular, parietal, insular cortices and pallidum. We concluded that this MRI scheme of atrophy progression in Alzheimer's disease was close but did not entirely overlap with Braak staging of tauopathy, with a 'reverse chronology' between limbic and entorhinal stages. Alzheimer's disease structural progression may be associated with local tau accumulation but may also be related to axonal degeneration in remote sites and other limbic-predominant associated proteinopathies. © 2022 The Author(s). Published by Oxford University Press on behalf of the Guarantors of Brain.Apprentissage profond pour la volumétrie cérébrale : vers le BigData en neuroscienceTranslational Research and Advanced Imaging Laborator
Rushes summarization by IRIM consortium: redundancy removal and multi-feature fusion
International audienceIn this paper, we present the first participation of a consortium of French laboratories, IRIM, to the TRECVID 2008 BBC Rushes Summarization task. Our approach resorts to video skimming. We propose two methods to reduce redundancy, as rushes include several takes of scenes. We also take into account low and midlevel semantic features in an ad-hoc fusion method in order to retain only significant content
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