journal
https://read.qxmd.com/read/38701657/deep-learning-microstructure-estimation-of-developing-brains-from-diffusion-mri-a-newborn-and-fetal-study
#1
JOURNAL ARTICLE
Hamza Kebiri, Ali Gholipour, Rizhong Lin, Lana Vasung, Camilo Calixto, Željka Krsnik, Davood Karimi, Meritxell Bach Cuadra
Diffusion-weighted magnetic resonance imaging (dMRI) is widely used to assess the brain white matter. Fiber orientation distribution functions (FODs) are a common way of representing the orientation and density of white matter fibers. However, with standard FOD computation methods, accurate estimation requires a large number of measurements that usually cannot be acquired for newborns and fetuses. We propose to overcome this limitation by using a deep learning method to map as few as six diffusion-weighted measurements to the target FOD...
April 25, 2024: Medical Image Analysis
https://read.qxmd.com/read/38688039/one-shot-neuroanatomy-segmentation-through-online-data-augmentation-and-confidence-aware-pseudo-label
#2
JOURNAL ARTICLE
Liutong Zhang, Guochen Ning, Hanying Liang, Boxuan Han, Hongen Liao
Recently, deep learning-based brain segmentation methods have achieved great success. However, most approaches focus on supervised segmentation, which requires many high-quality labeled images. In this paper, we pay attention to one-shot segmentation, aiming to learn from one labeled image and a few unlabeled images. We propose an end-to-end unified network that joints deformation modeling and segmentation tasks. Our network consists of a shared encoder, a deformation modeling head, and a segmentation head...
April 25, 2024: Medical Image Analysis
https://read.qxmd.com/read/38692098/multi-granularity-learning-of-explicit-geometric-constraint-and-contrast-for-label-efficient-medical-image-segmentation-and-differentiable-clinical-function-assessment
#3
JOURNAL ARTICLE
Yanda Meng, Yuchen Zhang, Jianyang Xie, Jinming Duan, Martha Joddrell, Savita Madhusudhan, Tunde Peto, Yitian Zhao, Yalin Zheng
Automated segmentation is a challenging task in medical image analysis that usually requires a large amount of manually labeled data. However, most current supervised learning based algorithms suffer from insufficient manual annotations, posing a significant difficulty for accurate and robust segmentation. In addition, most current semi-supervised methods lack explicit representations of geometric structure and semantic information, restricting segmentation accuracy. In this work, we propose a hybrid framework to learn polygon vertices, region masks, and their boundaries in a weakly/semi-supervised manner that significantly advances geometric and semantic representations...
April 20, 2024: Medical Image Analysis
https://read.qxmd.com/read/38657423/population-based-deep-image-prior-for-dynamic-pet-denoising-a-data-driven-approach-to-improve-parametric-quantification
#4
JOURNAL ARTICLE
Qiong Liu, Yu-Jung Tsai, Jean-Dominique Gallezot, Xueqi Guo, Ming-Kai Chen, Darko Pucar, Colin Young, Vladimir Panin, Michael Casey, Tianshun Miao, Huidong Xie, Xiongchao Chen, Bo Zhou, Richard Carson, Chi Liu
The high noise level of dynamic Positron Emission Tomography (PET) images degrades the quality of parametric images. In this study, we aim to improve the quality and quantitative accuracy of Ki images by utilizing deep learning techniques to reduce the noise in dynamic PET images. We propose a novel denoising technique, Population-based Deep Image Prior (PDIP), which integrates population-based prior information into the optimization process of Deep Image Prior (DIP). Specifically, the population-based prior image is generated from a supervised denoising model that is trained on a prompts-matched static PET dataset comprising 100 clinical studies...
April 17, 2024: Medical Image Analysis
https://read.qxmd.com/read/38663318/stepwise-incremental-pretraining-for-integrating-discriminative-restorative-and-adversarial-learning
#5
JOURNAL ARTICLE
Zuwei Guo, Nahid Ul Islam, Michael B Gotway, Jianming Liang
We have developed a United framework that integrates three self-supervised learning (SSL) ingredients (discriminative, restorative, and adversarial learning), enabling collaborative learning among the three learning ingredients and yielding three transferable components: a discriminative encoder, a restorative decoder, and an adversary encoder. To leverage this collaboration, we redesigned nine prominent self-supervised methods, including Rotation, Jigsaw, Rubik's Cube, Deep Clustering, TransVW, MoCo, BYOL, PCRL, and Swin UNETR, and augmented each with its missing components in a United framework for 3D medical imaging...
April 16, 2024: Medical Image Analysis
https://read.qxmd.com/read/38640779/active-learning-using-adaptable-task-based-prioritisation
#6
JOURNAL ARTICLE
Shaheer U Saeed, João Ramalhinho, Mark Pinnock, Ziyi Shen, Yunguan Fu, Nina Montaña-Brown, Ester Bonmati, Dean C Barratt, Stephen P Pereira, Brian Davidson, Matthew J Clarkson, Yipeng Hu
Supervised machine learning-based medical image computing applications necessitate expert label curation, while unlabelled image data might be relatively abundant. Active learning methods aim to prioritise a subset of available image data for expert annotation, for label-efficient model training. We develop a controller neural network that measures priority of images in a sequence of batches, as in batch-mode active learning, for multi-class segmentation tasks. The controller is optimised by rewarding positive task-specific performance gain, within a Markov decision process (MDP) environment that also optimises the task predictor...
April 16, 2024: Medical Image Analysis
https://read.qxmd.com/read/38626666/unsupervised-model-adaptation-for-source-free-segmentation-of-medical-images
#7
JOURNAL ARTICLE
Serban Stan, Mohammad Rostami
The recent prevalence of deep neural networks has led semantic segmentation networks to achieve human-level performance in the medical field, provided they are given sufficient training data. However, these networks often fail to generalize when tasked with creating semantic maps for out-of-distribution images, necessitating re-training on new distributions. This labor-intensive process requires expert knowledge for generating training labels. In the medical field, distribution shifts can naturally occur due to the choice of imaging devices, such as MRI or CT scanners...
April 14, 2024: Medical Image Analysis
https://read.qxmd.com/read/38613918/a-survey-of-label-noise-deep-learning-for-medical-image-analysis
#8
REVIEW
Jialin Shi, Kailai Zhang, Chenyi Guo, Youquan Yang, Yali Xu, Ji Wu
Several factors are associated with the success of deep learning. One of the most important reasons is the availability of large-scale datasets with clean annotations. However, obtaining datasets with accurate labels in the medical imaging domain is challenging. The reliability and consistency of medical labeling are some of these issues, and low-quality annotations with label noise usually exist. Because noisy labels reduce the generalization performance of deep neural networks, learning with noisy labels is becoming an essential task in medical image analysis...
April 12, 2024: Medical Image Analysis
https://read.qxmd.com/read/38609775/corrigendum-to-gan-based-generation-of-realistic-3d-volumetric-data-a-systematic-review-and-taxonomy-medical-image-analysis-93-2024
#9
André Ferreira, Jianning Li, Kelsey L Pomykala, Jens Kleesiek, Victor Alves, Jan Egger
No abstract text is available yet for this article.
April 11, 2024: Medical Image Analysis
https://read.qxmd.com/read/38657424/a-subject-specific-unsupervised-deep-learning-method-for-quantitative-susceptibility-mapping-using-implicit-neural-representation
#10
JOURNAL ARTICLE
Ming Zhang, Ruimin Feng, Zhenghao Li, Jie Feng, Qing Wu, Zhiyong Zhang, Chengxin Ma, Jinsong Wu, Fuhua Yan, Chunlei Liu, Yuyao Zhang, Hongjiang Wei
Quantitative susceptibility mapping (QSM) is an MRI-based technique that estimates the underlying tissue magnetic susceptibility based on phase signal. Deep learning (DL)-based methods have shown promise in handling the challenging ill-posed inverse problem for QSM reconstruction. However, they require extensive paired training data that are typically unavailable and suffer from generalization problems. Recent model-incorporated DL approaches also overlook the non-local effect of the tissue phase in applying the source-to-field forward model due to patch-based training constraint, resulting in a discrepancy between the prediction and measurement and subsequently suboptimal QSM reconstruction...
April 9, 2024: Medical Image Analysis
https://read.qxmd.com/read/38626665/histopathology-language-image-representation-learning-for-fine-grained-digital-pathology-cross-modal-retrieval
#11
JOURNAL ARTICLE
Dingyi Hu, Zhiguo Jiang, Jun Shi, Fengying Xie, Kun Wu, Kunming Tang, Ming Cao, Jianguo Huai, Yushan Zheng
Large-scale digital whole slide image (WSI) datasets analysis have gained significant attention in computer-aided cancer diagnosis. Content-based histopathological image retrieval (CBHIR) is a technique that searches a large database for data samples matching input objects in both details and semantics, offering relevant diagnostic information to pathologists. However, the current methods are limited by the difficulty of gigapixels, the variable size of WSIs, and the dependence on manual annotations. In this work, we propose a novel histopathology language-image representation learning framework for fine-grained digital pathology cross-modal retrieval, which utilizes paired diagnosis reports to learn fine-grained semantics from the WSI...
April 9, 2024: Medical Image Analysis
https://read.qxmd.com/read/38615431/domain-generalization-for-retinal-vessel-segmentation-via-hessian-based-vector-field
#12
JOURNAL ARTICLE
Dewei Hu, Hao Li, Han Liu, Ipek Oguz
Blessed by vast amounts of data, learning-based methods have achieved remarkable performance in countless tasks in computer vision and medical image analysis. Although these deep models can simulate highly nonlinear mapping functions, they are not robust with regard to the domain shift of input data. This is a significant concern that impedes the large-scale deployment of deep models in medical images since they have inherent variation in data distribution due to the lack of imaging standardization. Therefore, researchers have explored many domain generalization (DG) methods to alleviate this problem...
April 6, 2024: Medical Image Analysis
https://read.qxmd.com/read/38608510/anat-sfseg-anatomically-guided-superficial-fiber-segmentation-with-point-cloud-deep-learning
#13
JOURNAL ARTICLE
Di Zhang, Fangrong Zong, Qichen Zhang, Yunhui Yue, Fan Zhang, Kun Zhao, Dawei Wang, Pan Wang, Xi Zhang, Yong Liu
Diffusion magnetic resonance imaging (dMRI) tractography is a critical technique to map the brain's structural connectivity. Accurate segmentation of white matter, particularly the superficial white matter (SWM), is essential for neuroscience and clinical research. However, it is challenging to segment SWM due to the short adjacent gyri connection in a U-shaped pattern. In this work, we propose an Anatomically-guided Superficial Fiber Segmentation (Anat-SFSeg) framework to improve the performance on SWM segmentation...
April 6, 2024: Medical Image Analysis
https://read.qxmd.com/read/38593644/focused-active-learning-for-histopathological-image-classification
#14
JOURNAL ARTICLE
Arne Schmidt, Pablo Morales-Álvarez, Lee Ad Cooper, Lee A Newberg, Andinet Enquobahrie, Rafael Molina, Aggelos K Katsaggelos
Active Learning (AL) has the potential to solve a major problem of digital pathology: the efficient acquisition of labeled data for machine learning algorithms. However, existing AL methods often struggle in realistic settings with artifacts, ambiguities, and class imbalances, as commonly seen in the medical field. The lack of precise uncertainty estimations leads to the acquisition of images with a low informative value. To address these challenges, we propose Focused Active Learning (FocAL), which combines a Bayesian Neural Network with Out-of-Distribution detection to estimate different uncertainties for the acquisition function...
April 4, 2024: Medical Image Analysis
https://read.qxmd.com/read/38569379/spatial-attention-based-implicit-neural-representation-for-arbitrary-reduction-of-mri-slice-spacing
#15
JOURNAL ARTICLE
Xin Wang, Sheng Wang, Honglin Xiong, Kai Xuan, Zixu Zhuang, Mengjun Liu, Zhenrong Shen, Xiangyu Zhao, Lichi Zhang, Qian Wang
Magnetic resonance (MR) images collected in 2D clinical protocols typically have large inter-slice spacing, resulting in high in-plane resolution and reduced through-plane resolution. Super-resolution technique can enhance the through-plane resolution of MR images to facilitate downstream visualization and computer-aided diagnosis. However, most existing works train the super-resolution network at a fixed scaling factor, which is not friendly to clinical scenes of varying inter-slice spacing in MR scanning...
March 30, 2024: Medical Image Analysis
https://read.qxmd.com/read/38574545/boundary-aware-information-maximization-for-self-supervised-medical-image-segmentation
#16
JOURNAL ARTICLE
Jizong Peng, Ping Wang, Marco Pedersoli, Christian Desrosiers
Self-supervised representation learning can boost the performance of a pre-trained network on downstream tasks for which labeled data is limited. A popular method based on this paradigm, known as contrastive learning, works by constructing sets of positive and negative pairs from the data, and then pulling closer the representations of positive pairs while pushing apart those of negative pairs. Although contrastive learning has been shown to improve performance in various classification tasks, its application to image segmentation has been more limited...
March 28, 2024: Medical Image Analysis
https://read.qxmd.com/read/38574543/keyhole-aware-laparoscopic-augmented-reality
#17
JOURNAL ARTICLE
Yamid Espinel, Navid Rabbani, Thien Bao Bui, Mathieu Ribeiro, Emmanuel Buc, Adrien Bartoli
Augmented Reality (AR) from preoperative data is a promising approach to improve intraoperative tumour localisation in Laparoscopic Liver Resection (LLR). Existing systems register the preoperative tumour model with the laparoscopic images and render it by direct camera projection, as if the organ were transparent. However, a simple geometric reasoning shows that this may induce serious surgeon misguidance. This is because the tools enter in a different keyhole than the laparoscope. As AR is particularly important for deep tumours, this problem potentially hinders the whole interest of AR guidance...
March 28, 2024: Medical Image Analysis
https://read.qxmd.com/read/38574542/multi-domain-stain-normalization-for-digital-pathology-a-cycle-consistent-adversarial-network-for-whole-slide-images
#18
JOURNAL ARTICLE
Martin J Hetz, Tabea-Clara Bucher, Titus J Brinker
The variation in histologic staining between different medical centers is one of the most profound challenges in the field of computer-aided diagnosis. The appearance disparity of pathological whole slide images causes algorithms to become less reliable, which in turn impedes the wide-spread applicability of downstream tasks like cancer diagnosis. Furthermore, different stainings lead to biases in the training which in case of domain shifts negatively affect the test performance. Therefore, in this paper we propose MultiStain-CycleGAN, a multi-domain approach to stain normalization based on CycleGAN...
March 28, 2024: Medical Image Analysis
https://read.qxmd.com/read/38615432/dermsynth3d-synthesis-of-in-the-wild-annotated-dermatology-images
#19
JOURNAL ARTICLE
Ashish Sinha, Jeremy Kawahara, Arezou Pakzad, Kumar Abhishek, Matthieu Ruthven, Enjie Ghorbel, Anis Kacem, Djamila Aouada, Ghassan Hamarneh
In recent years, deep learning (DL) has shown great potential in the field of dermatological image analysis. However, existing datasets in this domain have significant limitations, including a small number of image samples, limited disease conditions, insufficient annotations, and non-standardized image acquisitions. To address these shortcomings, we propose a novel framework called DermSynth3D. DermSynth3D blends skin disease patterns onto 3D textured meshes of human subjects using a differentiable renderer and generates 2D images from various camera viewpoints under chosen lighting conditions in diverse background scenes...
March 26, 2024: Medical Image Analysis
https://read.qxmd.com/read/38547665/sensorless-volumetric-reconstruction-of-fetal-brain-freehand-ultrasound-scans-with-deep-implicit-representation
#20
JOURNAL ARTICLE
Pak-Hei Yeung, Linde S Hesse, Moska Aliasi, Monique C Haak, Weidi Xie, Ana I L Namburete
Three-dimensional (3D) ultrasound imaging has contributed to our understanding of fetal developmental processes by providing rich contextual information of the inherently 3D anatomies. However, its use is limited in clinical settings, due to the high purchasing costs and limited diagnostic practicality. Freehand 2D ultrasound imaging, in contrast, is routinely used in standard obstetric exams, but inherently lacks a 3D representation of the anatomies, which limits its potential for more advanced assessment...
March 26, 2024: Medical Image Analysis
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