keyword
Keywords Deep Learning for medical imag...

Deep Learning for medical image processing

https://read.qxmd.com/read/38593831/baf-net-bidirectional-attention-aware-fluid-pyramid-feature-integrated-multimodal-fusion-network-for-diagnosis-and-prognosis
#21
JOURNAL ARTICLE
Huiqin Wu, Lihong Peng, Dongyang Du, Hui Xu, Guoyu Lin, Zidong Zhou, Lijun Lu, Wenbing Lv
To go beyond the deficiencies of the three conventional multimodal fusion strategies (i.e., input-, feature- and output-level fusion), we propose a bidirectional attention-aware fluid pyramid feature integrated fusion network (BAF-Net) with cross-modal interactions for multimodal medical image diagnosis and prognosis.
Approach: BAF-Net is composed of two identical branches to preserve the unimodal features and one bidirectional attention-aware distillation stream to progressively assimilate cross-modal complements and to learn supplementary features in both bottom-up and top-down processes...
April 9, 2024: Physics in Medicine and Biology
https://read.qxmd.com/read/38593644/focused-active-learning-for-histopathological-image-classification
#22
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/38589793/deep-learning-based-image-annotation-for-leukocyte-segmentation-and-classification-of-blood-cell-morphology
#23
JOURNAL ARTICLE
Vatsala Anand, Sheifali Gupta, Deepika Koundal, Wael Y Alghamdi, Bayan M Alsharbi
The research focuses on the segmentation and classification of leukocytes, a crucial task in medical image analysis for diagnosing various diseases. The leukocyte dataset comprises four classes of images such as monocytes, lymphocytes, eosinophils, and neutrophils. Leukocyte segmentation is achieved through image processing techniques, including background subtraction, noise removal, and contouring. To get isolated leukocytes, background mask creation, Erythrocytes mask creation, and Leukocytes mask creation are performed on the blood cell images...
April 8, 2024: BMC Medical Imaging
https://read.qxmd.com/read/38587421/influence-of-training-and-expertise-on-deep-neural-network-attention-and-human-attention-during-a-medical-image-classification-task
#24
JOURNAL ARTICLE
Rémi Vallée, Tristan Gomez, Arnaud Bourreille, Nicolas Normand, Harold Mouchère, Antoine Coutrot
In many different domains, experts can make complex decisions after glancing very briefly at an image. However, the perceptual mechanisms underlying expert performance are still largely unknown. Recently, several machine learning algorithms have been shown to outperform human experts in specific tasks. But these algorithms often behave as black boxes and their information processing pipeline remains unknown. This lack of transparency and interpretability is highly problematic in applications involving human lives, such as health care...
April 1, 2024: Journal of Vision
https://read.qxmd.com/read/38585210/deep-learning-model-for-real%C3%A2-time-semantic-segmentation-during-intraoperative-robotic-prostatectomy
#25
JOURNAL ARTICLE
Sung Gon Park, Jeonghyun Park, Hong Rock Choi, Jun Ho Lee, Sung Tae Cho, Young Goo Lee, Hanjong Ahn, Sahyun Pak
BACKGROUND AND OBJECTIVE: Recently, deep learning algorithms, including convolutional neural networks (CNNs), have shown remarkable progress in medical imaging analysis. Semantic segmentation, which segments an unknown image into different parts and objects, has potential applications in robotic surgery in areas where artificial intelligence (AI) can be applied, such as in AI-assisted surgery, surgeon training, and skill assessment. We aimed to investigate the performance of a CNN-based deep learning model in real-time segmentation in robot-assisted radical prostatectomy (RALP)...
April 2024: European urology open science
https://read.qxmd.com/read/38582003/sdmi-net-spatially-dependent-mutual-information-network-for-semi-supervised-medical-image-segmentation
#26
JOURNAL ARTICLE
Di Gai, Zheng Huang, Weidong Min, Yuhan Geng, Haifan Wu, Meng Zhu, Qi Wang
Semi-supervised medical image segmentation strives to polish deep models with a small amount of labeled data and a large amount of unlabeled data. The efficiency of most semi-supervised medical image segmentation methods based on voxel-level consistency learning is affected by low-confidence voxels. In addition, voxel-level consistency learning fails to consider the spatial correlation between neighboring voxels. To encourage reliable voxel-level consistent learning, we propose a dual-teacher affine consistent uncertainty estimation method to filter out some voxels with high uncertainty...
March 28, 2024: Computers in Biology and Medicine
https://read.qxmd.com/read/38575824/a-novel-machine-learning-model-for-breast-cancer-detection-using-mammogram-images
#27
JOURNAL ARTICLE
P Kalpana, P Tamije Selvy
The most fatal disease affecting women worldwide now is breast cancer. Early detection of breast cancer enhances the likelihood of a full recovery and lowers mortality. Based on medical imaging, researchers from all around the world are developing breast cancer screening technologies. Due to their rapid progress, deep learning algorithms have caught the interest of many in the field of medical imaging. This research proposes a novel method in mammogram image feature extraction with classification and optimization using machine learning in breast cancer detection...
April 5, 2024: Medical & Biological Engineering & Computing
https://read.qxmd.com/read/38574544/robustness-evaluation-of-deep-neural-networks-for-endoscopic-image-analysis-insights-and-strategies
#28
JOURNAL ARTICLE
Tim J M Jaspers, Tim G W Boers, Carolus H J Kusters, Martijn R Jong, Jelmer B Jukema, Albert J de Groof, Jacques J Bergman, Peter H N de With, Fons van der Sommen
Computer-aided detection and diagnosis systems (CADe/CADx) in endoscopy are commonly trained using high-quality imagery, which is not representative for the heterogeneous input typically encountered in clinical practice. In endoscopy, the image quality heavily relies on both the skills and experience of the endoscopist and the specifications of the system used for screening. Factors such as poor illumination, motion blur, and specific post-processing settings can significantly alter the quality and general appearance of these images...
March 29, 2024: Medical Image Analysis
https://read.qxmd.com/read/38573565/on-the-fly-point-annotation-for-fast-medical-video-labeling
#29
JOURNAL ARTICLE
Adrien Meyer, Jean-Paul Mazellier, Jérémy Dana, Nicolas Padoy
PURPOSE: In medical research, deep learning models rely on high-quality annotated data, a process often laborious and time-consuming. This is particularly true for detection tasks where bounding box annotations are required. The need to adjust two corners makes the process inherently frame-by-frame. Given the scarcity of experts' time, efficient annotation methods suitable for clinicians are needed. METHODS: We propose an on-the-fly method for live video annotation to enhance the annotation efficiency...
April 4, 2024: International Journal of Computer Assisted Radiology and Surgery
https://read.qxmd.com/read/38572141/post-hoc-explainability-of-bi-rads-descriptors-in-a-multi-task-framework-for-breast-cancer-detection-and-segmentation
#30
JOURNAL ARTICLE
Mohammad Karimzadeh, Aleksandar Vakanski, Min Xian, Boyu Zhang
Despite recent medical advancements, breast cancer remains one of the most prevalent and deadly diseases among women. Although machine learning-based Computer-Aided Diagnosis (CAD) systems have shown potential to assist radiologists in analyzing medical images, the opaque nature of the best-performing CAD systems has raised concerns about their trustworthiness and interpretability. This paper proposes MT-BI-RADS, a novel explainable deep learning approach for tumor detection in Breast Ultrasound (BUS) images...
September 2023: IEEE International Workshop on Machine Learning for Signal Processing: [proceedings]
https://read.qxmd.com/read/38571686/artificial-intelligence-in-senology-where-do-we-stand-and-what-are-the-future-horizons
#31
EDITORIAL
Alexander Mundinger, Carolin Mundinger
Artificial Intelligence (AI) is defined as the simulation of human intelligence by a digital computer or robotic system and has become a hype in current conversations. A subcategory of AI is deep learning, which is based on complex artificial neural networks that mimic the principles of human synaptic plasticity and layered brain architectures, and uses large-scale data processing. AI-based image analysis in breast screening programmes has shown non-inferior sensitivity, reduces workload by up to 70% by pre-selecting normal cases, and reduces recall by 25% compared to human double reading...
April 2024: European Journal of Breast Health
https://read.qxmd.com/read/38571502/breast-cancer-risk-prediction-using-machine-learning-a-systematic-review
#32
Sadam Hussain, Mansoor Ali, Usman Naseem, Fahimeh Nezhadmoghadam, Munsif Ali Jatoi, T Aaron Gulliver, Jose Gerardo Tamez-Peña
BACKGROUND: Breast cancer is the leading cause of cancer-related fatalities among women worldwide. Conventional screening and risk prediction models primarily rely on demographic and patient clinical history to devise policies and estimate likelihood. However, recent advancements in artificial intelligence (AI) techniques, particularly deep learning (DL), have shown promise in the development of personalized risk models. These models leverage individual patient information obtained from medical imaging and associated reports...
2024: Frontiers in Oncology
https://read.qxmd.com/read/38569380/diabetic-foot-ulcers-segmentation-challenge-report-benchmark-and-analysis
#33
JOURNAL ARTICLE
Moi Hoon Yap, Bill Cassidy, Michal Byra, Ting-Yu Liao, Huahui Yi, Adrian Galdran, Yung-Han Chen, Raphael Brüngel, Sven Koitka, Christoph M Friedrich, Yu-Wen Lo, Ching-Hui Yang, Kang Li, Qicheng Lao, Miguel A González Ballester, Gustavo Carneiro, Yi-Jen Ju, Juinn-Dar Huang, Joseph M Pappachan, Neil D Reeves, Vishnu Chandrabalan, Darren Dancey, Connah Kendrick
Monitoring the healing progress of diabetic foot ulcers is a challenging process. Accurate segmentation of foot ulcers can help podiatrists to quantitatively measure the size of wound regions to assist prediction of healing status. The main challenge in this field is the lack of publicly available manual delineation, which can be time consuming and laborious. Recently, methods based on deep learning have shown excellent results in automatic segmentation of medical images, however, they require large-scale datasets for training, and there is limited consensus on which methods perform the best...
March 24, 2024: Medical Image Analysis
https://read.qxmd.com/read/38569237/lrfnet-a-real-time-medical-image-fusion-method-guided-by-detail-information
#34
JOURNAL ARTICLE
Dan He, Weisheng Li, Guofen Wang, Yuping Huang, Shiqiang Liu
Multimodal medical image fusion (MMIF) technology plays a crucial role in medical diagnosis and treatment by integrating different images to obtain fusion images with comprehensive information. Deep learning-based fusion methods have demonstrated superior performance, but some of them still encounter challenges such as imbalanced retention of color and texture information and low fusion efficiency. To alleviate the above issues, this paper presents a real-time MMIF method, called a lightweight residual fusion network...
March 27, 2024: Computers in Biology and Medicine
https://read.qxmd.com/read/38569143/estimate-and-compensate-head-motion-in-non-contrast-head-ct-scans-using-partial-angle-reconstruction-and-deep-learning
#35
JOURNAL ARTICLE
Zhennong Chen, Quanzheng Li, Dufan Wu
BACKGROUND: Patient head motion is a common source of image artifacts in computed tomography (CT) of the head, leading to degraded image quality and potentially incorrect diagnoses. The partial angle reconstruction (PAR) means dividing the CT projection into several consecutive angular segments and reconstructing each segment individually. Although motion estimation and compensation using PAR has been developed and investigated in cardiac CT scans, its potential for reducing motion artifacts in head CT scans remains unexplored...
April 3, 2024: Medical Physics
https://read.qxmd.com/read/38569054/a-medical-image-segmentation-method-for-rectal-tumors-based-on-multi-scale-feature-retention-and-multiple-attention-mechanisms
#36
JOURNAL ARTICLE
Jumin Zhao, Linjun Liu, Xiaotang Yang, Yanfen Cui, Dengao Li, Huiting Zhang, Kenan Zhang
BACKGROUND: With the continuous development of deep learning algorithms in the field of medical images, models for medical image processing based on convolutional neural networks have made great progress. Since medical images of rectal tumors are characterized by specific morphological features and complex edges that differ from natural images, achieving good segmentation results often requires a higher level of enrichment through the utilization of semantic features. PURPOSE: The efficiency of feature extraction and utilization has been improved to some extent through enhanced hardware arithmetic and deeper networks in most models...
April 3, 2024: Medical Physics
https://read.qxmd.com/read/38567422/wet-unet-wavelet-integrated-efficient-transformer-networks-for-nasopharyngeal-carcinoma-tumor-segmentation
#37
JOURNAL ARTICLE
Yan Zeng, Jun Li, Zhe Zhao, Wei Liang, Penghui Zeng, Shaodong Shen, Kun Zhang, Chong Shen
Nasopharyngeal carcinoma is a malignant tumor that occurs in the epithelium and mucosal glands of the nasopharynx, and its pathological type is mostly poorly differentiated squamous cell carcinoma. Since the nasopharynx is located deep in the head and neck, early diagnosis and timely treatment are critical to patient survival. However, nasopharyngeal carcinoma tumors are small in size and vary widely in shape, and it is also a challenge for experienced doctors to delineate tumor contours. In addition, due to the special location of nasopharyngeal carcinoma, complex treatments such as radiotherapy or surgical resection are often required, so accurate pathological diagnosis is also very important for the selection of treatment options...
2024: Science Progress
https://read.qxmd.com/read/38564618/automatic-segmentation-of-lower-limb-muscles-from-mr-images-of-post-menopausal-women-based-on-deep-learning-and-data-augmentation
#38
JOURNAL ARTICLE
William H Henson, Xinshan Li, Zhicheng Lin, Lingzhong Guo, Claudia Mazzá, Enrico Dall'Ara
Individual muscle segmentation is the process of partitioning medical images into regions representing each muscle. It can be used to isolate spatially structured quantitative muscle characteristics, such as volume, geometry, and the level of fat infiltration. These features are pivotal to measuring the state of muscle functional health and in tracking the response of the body to musculoskeletal and neuromusculoskeletal disorders. The gold standard approach to perform muscle segmentation requires manual processing of large numbers of images and is associated with significant operator repeatability issues and high time requirements...
2024: PloS One
https://read.qxmd.com/read/38560492/super-resolution-segmentation-network-for-inner-ear-tissue-segmentation
#39
JOURNAL ARTICLE
Ziteng Liu, Yubo Fan, Ange Lou, Jack H Noble
Cochlear implants (CIs) are considered the standard-of-care treatment for profound sensory-based hearing loss. Several groups have proposed computational models of the cochlea in order to study the neural activation patterns in response to CI stimulation. However, most of the current implementations either rely on high-resolution histological images that cannot be customized for CI users or CT images that lack the spatial resolution to show cochlear structures. In this work, we propose to use a deep learning-based method to obtain μCT level tissue labels using patient CT images...
October 2023: Simulation and synthesis in medical imaging: ... International Workshop, SASHIMI ..., held in conjunction with MICCAI ..., proceedings
https://read.qxmd.com/read/38559808/a-unified-deep-learning-based-framework-for-cochlear-implant-electrode-array-localization
#40
JOURNAL ARTICLE
Yubo Fan, Jianing Wang, Yiyuan Zhao, Rui Li, Han Liu, Robert F Labadie, Jack H Noble, Benoit M Dawant
Cochlear implants (CIs) are neuroprosthetics that can provide a sense of sound to people with severe-to-profound hearing loss. A CI contains an electrode array (EA) that is threaded into the cochlea during surgery. Recent studies have shown that hearing outcomes are correlated with EA placement. An image-guided cochlear implant programming technique is based on this correlation and utilizes the EA location with respect to the intracochlear anatomy to help audiologists adjust the CI settings to improve hearing...
October 2023: Medical Image Computing and Computer-assisted Intervention: MICCAI ..
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