keyword
https://read.qxmd.com/read/38638581/sleep-deep-learner-is-taught-sleep-wake-scoring-by-the-end-user-to-complete-each-record-in-their-style
#21
JOURNAL ARTICLE
Fumi Katsuki, Tristan J Spratt, Ritchie E Brown, Radhika Basheer, David S Uygun
Sleep-wake scoring is a time-consuming, tedious but essential component of clinical and preclinical sleep research. Sleep scoring is even more laborious and challenging in rodents due to the smaller EEG amplitude differences between states and the rapid state transitions which necessitate scoring in shorter epochs. Although many automated rodent sleep scoring methods exist, they do not perform as well when scoring new datasets, especially those which involve changes in the EEG/EMG profile. Thus, manual scoring by expert scorers remains the gold standard...
2024: Sleep advances: a journal of the Sleep Research Society
https://read.qxmd.com/read/38638495/performance-evaluation-in-cataract-surgery-with-an-ensemble-of-2d-3d-convolutional-neural-networks
#22
JOURNAL ARTICLE
Ummey Tanin, Adrienne Duimering, Christine Law, Jessica Ruzicki, Gabriela Luna, Matthew Holden
An important part of surgical training in ophthalmology is understanding how to proficiently perform cataract surgery. Operating skill in cataract surgery is typically assessed by real-time or video-based expert review using a rating scale. This is time-consuming, subjective and labour-intensive. A typical trainee graduates with over 100 complete surgeries, each of which requires review by the surgical educators. Due to the consistently repetitive nature of this task, it lends itself well to machine learning-based evaluation...
2024: Healthcare Technology Letters
https://read.qxmd.com/read/38638116/em-cogload-an-investigation-into-age-and-cognitive-load-detection-using-eye-tracking-and-deep-learning
#23
JOURNAL ARTICLE
Gabriella Miles, Melvyn Smith, Nancy Zook, Wenhao Zhang
Alzheimer's Disease is the most prevalent neurodegenerative disease, and is a leading cause of disability among the elderly. Eye movement behaviour demonstrates potential as a non-invasive biomarker for Alzheimer's Disease, with changes detectable at an early stage after initial onset. This paper introduces a new publicly available dataset: EM-COGLOAD (available at https://osf.io/zjtdq/, DOI: 10.17605/OSF.IO/ZJTDQ). A dual-task paradigm was used to create effects of declined cognitive performance in 75 healthy adults as they carried out visual tracking tasks...
December 2024: Computational and Structural Biotechnology Journal
https://read.qxmd.com/read/38638112/dual-channel-deep-graph-convolutional-neural-networks
#24
JOURNAL ARTICLE
Zhonglin Ye, Zhuoran Li, Gege Li, Haixing Zhao
The dual-channel graph convolutional neural networks based on hybrid features jointly model the different features of networks, so that the features can learn each other and improve the performance of various subsequent machine learning tasks. However, current dual-channel graph convolutional neural networks are limited by the number of convolution layers, which hinders the performance improvement of the models. Graph convolutional neural networks superimpose multi-layer graph convolution operations, which would occur in smoothing phenomena, resulting in performance decreasing as the increasing number of graph convolutional layers...
2024: Frontiers in artificial intelligence
https://read.qxmd.com/read/38637651/three-dimensional-biphase-fabric-estimation-from-2d-images-by-deep-learning
#25
JOURNAL ARTICLE
Daniel Chou, Matias Etcheverry, Chloé Arson
A pruned VGG19 model subjected to Axial Coronal Sagittal (ACS) convolutions and a custom VGG16 model are benchmarked to predict 3D fabric descriptors from a set of 2D images. The data used for training and testing are extracted from a set of 600 3D biphase microstructures created numerically. Fabric descriptors calculated from the 3D microstructures constitute the ground truth, while the input data are obtained by slicing the 3D microstructures in each direction of space at regular intervals. The computational cost to train the custom ACS-VGG19 model increases linearly with p (the number of images extracted in each direction of space), and increasing p does not improve the performance of the model - or only does so marginally...
April 18, 2024: Scientific Reports
https://read.qxmd.com/read/38637605/communication-spectrum-prediction-method-based-on-convolutional-gated-recurrent-unit-network
#26
JOURNAL ARTICLE
Lige Yuan, Lulu Nie, Yangzhou Hao
In modern wireless communication systems, the scarcity of spectrum resources poses challenges to the performance and efficiency of the system. Spectrum prediction technology can help systems better plan and schedule resources to respond to the dynamic changes in spectrum. Dynamic change in the spectrum refers to the changes in the radio spectrum in a wireless communication system. It means that the available spectrum resources may change at different times and locations. In response to this current situation, this study first constructs a communication collaborative spectrum sensing model using channel aliasing dense connection networks...
April 18, 2024: Scientific Reports
https://read.qxmd.com/read/38637587/multiclass-classification-of-diseased-grape-leaf-identification-using-deep-convolutional-neural-network-dcnn-classifier
#27
JOURNAL ARTICLE
Kerehalli Vinayaka Prasad, Hanumesh Vaidya, Choudhari Rajashekhar, Kumar Swamy Karekal, Renuka Sali, Kottakkaran Sooppy Nisar
The cultivation of grapes encounters various challenges, such as the presence of pests and diseases, which have the potential to considerably diminish agricultural productivity. Plant diseases pose a significant impediment, resulting in diminished agricultural productivity and economic setbacks, thereby affecting the quality of crop yields. Hence, the precise and timely identification of plant diseases holds significant importance. This study employs a Convolutional neural network (CNN) with and without data augmentation, in addition to a DCNN Classifier model based on VGG16, to classify grape leaf diseases...
April 18, 2024: Scientific Reports
https://read.qxmd.com/read/38637466/volumetric-segmentation-in-the-context-of-posterior-fossa-related-pathologies-a-systematic-review
#28
JOURNAL ARTICLE
Andrew J Kobets, Seyed Ahmad Naseri Alavi, Samuel Jack Ahmad, Ashley Castillo, Dejauwne Young, Aurelia Minuti, David J Altschul, Michael Zhu, Rick Abbott
BACKGROUND: Segmentation tools continue to advance, evolving from manual contouring to deep learning. Researchers have utilized segmentation to study a myriad of posterior fossa-related conditions, such as Chiari malformation, trigeminal neuralgia, post-operative pediatric cerebellar mutism syndrome, and Crouzon syndrome. Herein, we present a summary of the current literature on segmentation of the posterior fossa. The review highlights the various segmentation techniques, and their respective strengths and weaknesses, employed along with objectives and outcomes of the various studies reported in the literature...
April 19, 2024: Neurosurgical Review
https://read.qxmd.com/read/38637424/synthetic-low-energy-monochromatic-image-generation-in-single-energy-computed-tomography-system-using-a-transformer-based-deep-learning-model
#29
JOURNAL ARTICLE
Yuhei Koike, Shingo Ohira, Sayaka Kihara, Yusuke Anetai, Hideki Takegawa, Satoaki Nakamura, Masayoshi Miyazaki, Koji Konishi, Noboru Tanigawa
While dual-energy computed tomography (DECT) technology introduces energy-specific information in clinical practice, single-energy CT (SECT) is predominantly used, limiting the number of people who can benefit from DECT. This study proposed a novel method to generate synthetic low-energy virtual monochromatic images at 50 keV (sVMI50keV ) from SECT images using a transformer-based deep learning model, SwinUNETR. Data were obtained from 85 patients who underwent head and neck radiotherapy. Among these, the model was built using data from 70 patients for whom only DECT images were available...
April 18, 2024: J Imaging Inform Med
https://read.qxmd.com/read/38637423/the-classification-of-lumbar-spondylolisthesis-x-ray-images-using-convolutional-neural-networks
#30
JOURNAL ARTICLE
Wutong Chen, Du Junsheng, Yanzhen Chen, Yifeng Fan, Hengzhi Liu, Chang Tan, Xuanming Shao, Xinzhi Li
We aimed to develop and validate a deep convolutional neural network (DCNN) model capable of accurately identifying spondylolysis or spondylolisthesis on lateral or dynamic X-ray images. A total of 2449 lumbar lateral and dynamic X-ray images were collected from two tertiary hospitals. These images were categorized into lumbar spondylolysis (LS), degenerative lumbar spondylolisthesis (DLS), and normal lumbar in a proportional manner. Subsequently, the images were randomly divided into training, validation, and test sets to establish a classification recognition network...
April 18, 2024: J Imaging Inform Med
https://read.qxmd.com/read/38637299/use-of-artificial-intelligence-for-the-prediction-of-lymph-node-metastases-in-early-stage-colorectal-cancer-systematic-review
#31
JOURNAL ARTICLE
Nasya Thompson, Arthur Morley-Bunker, Jared McLauchlan, Tamara Glyn, Tim Eglinton
BACKGROUND: Risk evaluation of lymph node metastasis for early-stage (T1 and T2) colorectal cancers is critical for determining therapeutic strategies. Traditional methods of lymph node metastasis prediction have limited accuracy. This systematic review aimed to review the potential of artificial intelligence in predicting lymph node metastasis in early-stage colorectal cancers. METHODS: A comprehensive search was performed of papers that evaluated the potential of artificial intelligence in predicting lymph node metastasis in early-stage colorectal cancers...
March 1, 2024: BJS Open
https://read.qxmd.com/read/38637240/a-deep-learning-model-for-predicting-molecular-subtype-of-breast-cancer-by-fusing-multiple-sequences-of-dce-mri-from-two-institutes
#32
JOURNAL ARTICLE
Xiaoyang Xie, Haowen Zhou, Mingze Ma, Ji Nie, Weibo Gao, Jinman Zhong, Xin Cao, Xiaowei He, Jinye Peng, Yuqing Hou, Fengjun Zhao, Xin Chen
RATIONALE AND OBJECTIVES: To evaluate the performance of deep learning (DL) in predicting different breast cancer molecular subtypes using DCE-MRI from two institutes. MATERIALS AND METHODS: This retrospective study included 366 breast cancer patients from two institutes, divided into training (n = 292), validation (n = 49) and testing (n = 25) sets. We first transformed the public DCE-MRI appearance to ours to alleviate small-data-size and class-imbalance issues...
April 17, 2024: Academic Radiology
https://read.qxmd.com/read/38637169/computer-aided-diagnosis-of-duchenne-muscular-dystrophy-based-on-texture-pattern-recognition-on-ultrasound-images-using-unsupervised-clustering-algorithms-and-deep-learning
#33
JOURNAL ARTICLE
Ai-Ho Liao, Chih-Hung Wang, Chong-Yu Wang, Hao-Li Liu, Ho-Chiao Chuang, Wei-Jye Tseng, Wen-Chin Weng, Cheng-Ping Shih, Po-Hsiang Tsui
OBJECTIVE: The feasibility of using deep learning in ultrasound imaging to predict the ambulatory status of patients with Duchenne muscular dystrophy (DMD) was previously explored for the first time. The present study further used clustering algorithms for the texture reconstruction of ultrasound images of DMD data sets and analyzed the difference in echo intensity between disease stages. METHODS: k-means (Kms) and fuzzy c-means (FCM) clustering algorithms were used to reconstruct the DMD data-set textures...
April 17, 2024: Ultrasound in Medicine & Biology
https://read.qxmd.com/read/38636805/histomorphometric-image-classifier-of-different-grades-of-oral-squamous-cell-carcinoma-using-transfer-learning-and-convolutional-neural-network
#34
JOURNAL ARTICLE
Dr Ayushi Jain, Nitika Gupta, Dr Pooja Sharma, Dr Om Prakash Gupta, Dr Shalini Gupta, Dr Amaresh Kumar Sahoo
BACKGROUND: Machine learning is an emerging technology in health care field with aim of fundamentally revamping the traditional system and aiding medical practitioners. The histopathological analysis of oral cancers is crucial for pathologist to ascertain its grading. Therefore, this study attempts to grade the various stained tissue samples of OSCC (Oral Squamous Cell Carcinoma) patients using different deep-learning models. METHODS: A dataset of 120 histopathological images of OSCC was collected and classified as well-differentiated (40), moderately differentiated (40), and poorly differentiated (40) according to Broders' grading system...
April 16, 2024: Journal of Stomatology, Oral and Maxillofacial Surgery
https://read.qxmd.com/read/38636675/automated-evaluation-of-hip-abductor-muscle-quality-and-size-in-hip-osteoarthritis-localized-muscle-regions-are-strongly-associated-with-overall-muscle-quality
#35
JOURNAL ARTICLE
Koren E Roach, Alyssa L Bird, Valentina Pedoia, Sharmila Majumdar, Richard B Souza
Limited information exists regarding abductor muscle quality variation across its length and which locations are most representative of overall muscle quality. This is exacerbated by time-intensive processes for manual muscle segmentation, which limits feasibility of large cohort analyses. The purpose of this study was to develop an automated and localized analysis pipeline that accurately estimates hip abductor muscle quality and size in individuals with mild-to-moderate hip osteoarthritis (OA) and identifies regions of each muscle which provide best estimates of overall muscle quality...
April 16, 2024: Magnetic Resonance Imaging
https://read.qxmd.com/read/38636355/parental-status-and-markers-of-brain-and-cellular-age-a-3d-convolutional-network-and-classification-study
#36
JOURNAL ARTICLE
Ann-Marie G de Lange, Esten H Leonardsen, Claudia Barth, Louise S Schindler, Arielle Crestol, Madelene C Holm, Sivaniya Subramaniapillai, Dónal Hill, Dag Alnæs, Lars T Westlye
Recent research shows prominent effects of pregnancy and the parenthood transition on structural brain characteristics in humans. Here, we present a comprehensive study of how parental status and number of children born/fathered links to markers of brain and cellular ageing in 36,323 UK Biobank participants (age range 44.57-82.06 years; 52% female). To assess global effects of parenting on the brain, we trained a 3D convolutional neural network on T1-weighted magnetic resonance images, and estimated brain age in a held-out test set...
April 2, 2024: Psychoneuroendocrinology
https://read.qxmd.com/read/38636140/attention-based-deep-convolutional-neural-network-for-classification-of-generalized-and-focal-epileptic-seizures
#37
JOURNAL ARTICLE
Taimur Shahzad Gill, Syed Sajjad Haider Zaidi, Muhammad Ayaz Shirazi
Epilepsy affects over 50 million people globally. Electroencephalography is critical for epilepsy diagnosis, but manual seizure classification is time-consuming and requires extensive expertise. This paper presents an automated multi-class seizure classification model using EEG signals from the Temple University Hospital Seizure Corpus ver. 1.5.2. 11 features including time-based correlation, time-based eigenvalues, power spectral density, frequency-based correlation, frequency-based eigenvalues, sample entropy, spectral entropy, logarithmic sum, standard deviation, absolute mean, and ratio of Daubechies D4 wavelet transformed coefficients were extracted from 10-second sliding windows across channels...
April 17, 2024: Epilepsy & Behavior: E&B
https://read.qxmd.com/read/38635832/the-multi-strategy-hybrid-forecasting-base-on-ssa-vmd-wst-for-complex-system
#38
JOURNAL ARTICLE
Huiqiang Su, Shaojuan Ma, Xinyi Xu
In view of the strong randomness and non-stationarity of complex system, this study suggests a hybrid multi-strategy prediction technique based on optimized hybrid denoising and deep learning. Firstly, the Sparrow search algorithm (SSA) is used to optimize Variational mode decomposition (VMD) which can decompose the original signal into several Intrinsic mode functions (IMF). Secondly, calculating the Pearson correlation coefficient (PCC) between each IMF component and the original signal, the subsequences with low correlation are eliminated, and the remaining subsequence are denoised by Wavelet soft threshold (WST) method to obtain effective signals...
2024: PloS One
https://read.qxmd.com/read/38634859/deep-learning-based-optimization-of-field-geometry-for-total-marrow-irradiation-delivered-with-volumetric-modulated-arc-therapy
#39
JOURNAL ARTICLE
Nicola Lambri, Giorgio Longari, Daniele Loiacono, Ricardo Coimbra Brioso, Leonardo Crespi, Carmela Galdieri, Francesca Lobefalo, Giacomo Reggiori, Roberto Rusconi, Stefano Tomatis, Luisa Bellu, Stefania Bramanti, Elena Clerici, Chiara De Philippis, Damiano Dei, Pierina Navarria, Carmelo Carlo-Stella, Ciro Franzese, Marta Scorsetti, Pietro Mancosu
BACKGROUND: Total marrow (lymphoid) irradiation (TMI/TMLI) is a radiotherapy treatment used to selectively target the bone marrow and lymph nodes in conditioning regimens for allogeneic hematopoietic stem cell transplantation. A complex field geometry is needed to cover the large planning target volume (PTV) of TMI/TMLI with volumetric modulated arc therapy (VMAT). Five isocenters and ten overlapping fields are needed for the upper body, while, for patients with large anatomical conformation, two specific isocenters are placed on the arms...
April 18, 2024: Medical Physics
https://read.qxmd.com/read/38634017/brain-tumor-segmentation-using-neuro-technology-enabled-intelligence-cascaded-u-net-model
#40
JOURNAL ARTICLE
Haewon Byeon, Mohannad Al-Kubaisi, Ashit Kumar Dutta, Faisal Alghayadh, Mukesh Soni, Manisha Bhende, Venkata Chunduri, K Suresh Babu, Rubal Jeet
According to experts in neurology, brain tumours pose a serious risk to human health. The clinical identification and treatment of brain tumours rely heavily on accurate segmentation. The varied sizes, forms, and locations of brain tumours make accurate automated segmentation a formidable obstacle in the field of neuroscience. U-Net, with its computational intelligence and concise design, has lately been the go-to model for fixing medical picture segmentation issues. Problems with restricted local receptive fields, lost spatial information, and inadequate contextual information are still plaguing artificial intelligence...
2024: Frontiers in Computational Neuroscience
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