129 research outputs found
Ensemble CNN Networks for GBM Tumors Segmentation Using Multi-parametric MRI
Glioblastomas are the most aggressive fast-growing primary brain cancer which originate in the glial cells of the brain. Accurate identification of the malignant brain tumor and its sub-regions is still one of the most challenging problems in medical image segmentation. The Brain Tumor Segmentation Challenge (BraTS) has been a popular benchmark for automatic brain glioblastomas segmentation algorithms since its initiation. In this year, BraTS 2021 challenge provides the largest multi-parametric (mpMRI) dataset of 2,000 pre-operative patients. In this paper, we propose a new aggregation of two deep learning frameworks namely, DeepSeg and nnU-Net for automatic glioblastoma recognition in pre-operative mpMRI. Our ensemble method obtains Dice similarity scores of 92.00, 87.33, and 84.10 and Hausdorff Distances of 3.81, 8.91, and 16.02 for the enhancing tumor, tumor core, and whole tumor regions, respectively, on the BraTS 2021 validation set, ranking us among the top ten teams. These experimental findings provide evidence that it can be readily applied clinically and thereby aiding in the brain cancer prognosis, therapy planning, and therapy response monitoring. A docker image for reproducing our segmentation results is available online at https://hub.docker.com/r/razeineldin/deepseg21
Self-supervised iRegNet for the Registration of Longitudinal Brain MRI of Diffuse Glioma Patients
Reliable and accurate registration of patient-specific brain magnetic
resonance imaging (MRI) scans containing pathologies is challenging due to
tissue appearance changes. This paper describes our contribution to the
Registration of the longitudinal brain MRI task of the Brain Tumor Sequence
Registration Challenge 2022 (BraTS-Reg 2022). We developed an enhanced
unsupervised learning-based method that extends the iRegNet. In particular,
incorporating an unsupervised learning-based paradigm as well as several minor
modifications to the network pipeline, allows the enhanced iRegNet method to
achieve respectable results. Experimental findings show that the enhanced
self-supervised model is able to improve the initial mean median registration
absolute error (MAE) from 8.20 (7.62) mm to the lowest value of 3.51 (3.50) for
the training set while achieving an MAE of 2.93 (1.63) mm for the validation
set. Additional qualitative validation of this study was conducted through
overlaying pre-post MRI pairs before and after the de-formable registration.
The proposed method scored 5th place during the testing phase of the MICCAI
BraTS-Reg 2022 challenge. The docker image to reproduce our BraTS-Reg
submission results will be publicly available.Comment: Accepted in the MICCAI BraTS-Reg 2022 Challenge (as part of the
BrainLes workshop proceedings distributed by Springer LNCS
DeepSeg: Deep Neural Network Framework for Automatic Brain Tumor Segmentation using Magnetic Resonance FLAIR Images
Purpose: Gliomas are the most common and aggressive type of brain tumors due
to their infiltrative nature and rapid progression. The process of
distinguishing tumor boundaries from healthy cells is still a challenging task
in the clinical routine. Fluid-Attenuated Inversion Recovery (FLAIR) MRI
modality can provide the physician with information about tumor infiltration.
Therefore, this paper proposes a new generic deep learning architecture; namely
DeepSeg for fully automated detection and segmentation of the brain lesion
using FLAIR MRI data.
Methods: The developed DeepSeg is a modular decoupling framework. It consists
of two connected core parts based on an encoding and decoding relationship. The
encoder part is a convolutional neural network (CNN) responsible for spatial
information extraction. The resulting semantic map is inserted into the decoder
part to get the full resolution probability map. Based on modified U-Net
architecture, different CNN models such as Residual Neural Network (ResNet),
Dense Convolutional Network (DenseNet), and NASNet have been utilized in this
study.
Results: The proposed deep learning architectures have been successfully
tested and evaluated on-line based on MRI datasets of Brain Tumor Segmentation
(BraTS 2019) challenge, including s336 cases as training data and 125 cases for
validation data. The dice and Hausdorff distance scores of obtained
segmentation results are about 0.81 to 0.84 and 9.8 to 19.7 correspondingly.
Conclusion: This study showed successful feasibility and comparative
performance of applying different deep learning models in a new DeepSeg
framework for automated brain tumor segmentation in FLAIR MR images. The
proposed DeepSeg is open-source and freely available at
https://github.com/razeineldin/DeepSeg/.Comment: Accepted to International Journal of Computer Assisted Radiology and
Surger
Slicer-DeepSeg: Open-Source Deep Learning Toolkit for Brain Tumour Segmentation
Purpose
Computerized medical imaging processing assists neurosurgeons to localize tumours precisely. It plays a key role in recent image-guided neurosurgery. Hence, we developed a new open-source toolkit, namely Slicer-DeepSeg, for efficient and automatic brain tumour segmentation based on deep learning methodologies for aiding clinical brain research.
Methods
Our developed toolkit consists of three main components. First, Slicer-DeepSeg extends the 3D Slicer application and thus provides support for multiple data input/ output data formats and 3D visualization libraries. Second, Slicer core modules offer powerful image processing and analysis utilities. Third, the Slicer-DeepSeg extension provides a customized GUI for brain tumour segmentation using deep learning-based methods.
Results
The developed Slicer-DeepSeg was validated using a public dataset of high-grade glioma patients. The results showed that our proposed platform’s performance considerably outperforms other 3D Slicer cloud-based approaches.
Conclusions
Developed Slicer-DeepSeg allows the development of novel AI-assisted medical applications in neurosurgery. Moreover, it can enhance the outcomes of computer-aided diagnosis of brain tumours. Open-source Slicer-DeepSeg is available at github.com/razeineldin/Slicer-DeepSeg
Deep automatic segmentation of brain tumours in interventional ultrasound data
Intraoperative imaging can assist neurosurgeons to define brain tumours and other surrounding brain structures. Interventional ultrasound (iUS) is a convenient modality with fast scan times. However, iUS data may suffer from noise and artefacts which limit their interpretation during brain surgery. In this work, we use two deep learning networks, namely UNet and TransUNet, to make automatic and accurate segmentation of the brain tumour in iUS data. Experiments were conducted on a dataset of 27iUS volumes. The outcomes show that using a transformer with UNet is advantageous providing an efficient segmentation modelling long-range dependencies between each iUS image. In particular, the enhanced TransUNet was able to predict cavity segmentation in iUS data with an inference rate of more than 125 FPS.These promising results suggest that deep learning networks can be successfully deployed to assist neurosurgeons in the operating room
Ectopic callose deposition into woody biomass modulates the nano-architecture of macrofibrils
Plant biomass plays an increasingly important role in the circular bioeconomy, replacing non-renewable fossil resources. Genetic engineering of this lignocellulosic biomass could benefit biorefinery transformation chains by lowering economic and technological barriers to industrial processing. However, previous efforts have mostly targeted the major constituents of woody biomass: cellulose, hemicellulose and lignin. Here we report the engineering of wood structure through the introduction of callose, a polysaccharide novel to most secondary cell walls. Our multiscale analysis of genetically engineered poplar trees shows that callose deposition modulates cell wall porosity, water and lignin contents and increases the lignin-cellulose distance, ultimately resulting in substantially decreased biomass recalcitrance. We provide a model of the wood cell wall nano-architecture engineered to accommodate the hydrated callose inclusions. Ectopic polymer introduction into biomass manifests in new physico-chemical properties and offers new avenues when considering lignocellulose engineering.Bourdon et al. demonstrate the possibility to ectopically synthesize callose, a polymer restricted to primary cell walls, into Arabidopsis and aspen secondary cell walls to manipulate their ultrastructure and ultimately reduce their recalcitrance
Tropical Data: Approach and Methodology as Applied to Trachoma Prevalence Surveys
PURPOSE: Population-based prevalence surveys are essential for decision-making on interventions to achieve trachoma elimination as a public health problem. This paper outlines the methodologies of Tropical Data, which supports work to undertake those surveys. METHODS: Tropical Data is a consortium of partners that supports health ministries worldwide to conduct globally standardised prevalence surveys that conform to World Health Organization recommendations. Founding principles are health ministry ownership, partnership and collaboration, and quality assurance and quality control at every step of the survey process. Support covers survey planning, survey design, training, electronic data collection and fieldwork, and data management, analysis and dissemination. Methods are adapted to meet local context and needs. Customisations, operational research and integration of other diseases into routine trachoma surveys have also been supported. RESULTS: Between 29th February 2016 and 24th April 2023, 3373 trachoma surveys across 50 countries have been supported, resulting in 10,818,502 people being examined for trachoma. CONCLUSION: This health ministry-led, standardised approach, with support from the start to the end of the survey process, has helped all trachoma elimination stakeholders to know where interventions are needed, where interventions can be stopped, and when elimination as a public health problem has been achieved. Flexibility to meet specific country contexts, adaptation to changes in global guidance and adjustments in response to user feedback have facilitated innovation in evidence-based methodologies, and supported health ministries to strive for global disease control targets
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