keyword
https://read.qxmd.com/read/38640979/development-and-validation-of-a-nomogram-prediction-model-for-adhd-in-children-based-on-individual-family-and-social-factors
#21
JOURNAL ARTICLE
Ting Gao, Lan Yang, Jiayu Zhou, Yuan Zhang, Laishuan Wang, Yan Wang, Tianwei Wang
OBJECTIVES: A reliable, user-friendly, and multidimensional prediction tool can help to identify children at high risk for ADHD and facilitate early recognition and family management of ADHD. We aimed to develop and validate a risk nomogram for ADHD in children aged 3-17 years in the United States based on clinical manifestations and complex environments. METHODS: A total of 141,356 cases were collected for the prediction model. Another 54,444 cases from a new data set were utilized for performing independent external validation...
April 17, 2024: Journal of Affective Disorders
https://read.qxmd.com/read/38640699/mtksvcr-a-novel-multi-task-multi-class-support-vector-machine-with-safe-acceleration-rule
#22
JOURNAL ARTICLE
Xinying Pang, Chang Xu, Yitian Xu
Regularized multi-task learning (RMTL) has shown good performance in tackling multi-task binary problems. Although RMTL can be used to handle multi-class problems based on "one-versus-one" and "one-versus-rest" techniques, the information of the samples is not fully utilized and the class imbalance problem occurs. Motivated by the regularization technique in RMTL, we propose an original multi-task multi-class model termed MTKSVCR based on "one-versus-one-versus-rest" strategy to achieve better testing accuracy...
April 12, 2024: Neural Networks: the Official Journal of the International Neural Network Society
https://read.qxmd.com/read/38640634/destrans-a-medical-image-fusion-method-based-on-transformer-and-improved-densenet
#23
JOURNAL ARTICLE
Yumeng Song, Yin Dai, Weibin Liu, Yue Liu, Xinpeng Liu, Qiming Yu, Xinghan Liu, Ningfeng Que, Mingzhe Li
Medical image fusion can provide doctors with more detailed data and thus improve the accuracy of disease diagnosis. In recent years, deep learning has been widely used in the field of medical image fusion. The traditional method of medical image fusion is to operate by superimposing and other methods of pixels. The introduction of deep learning methods has improved the effectiveness of medical image fusion. However, these methods still have problems such as edge blurring and information redundancy. In this paper, we propose a deep learning network model based on Transformer and an improved DenseNet network module integration that can be applied to medical images and solve the above problems...
April 9, 2024: Computers in Biology and Medicine
https://read.qxmd.com/read/38640054/magnetic-resonance-electrical-properties-tomography-based-on-modified-physics-informed-neural-network-and-multiconstraints
#24
JOURNAL ARTICLE
Guohui Ruan, Zhaonian Wang, Chunyi Liu, Ling Xia, Huafeng Wang, Li Qi, Wufan Chen
This paper presents a novel method based on leveraging physics-informed neural networks for magnetic resonance electrical property tomography (MREPT). MREPT is a noninvasive technique that can retrieve the spatial distribution of electrical properties (EPs) of scanned tissues from measured transmit radiofrequency (RF) in magnetic resonance imaging (MRI) systems. The reconstruction of EP values in MREPT is achieved by solving a partial differential equation derived from Maxwell's equations that lacks a direct solution...
April 19, 2024: IEEE Transactions on Medical Imaging
https://read.qxmd.com/read/38640044/subtask-aware-representation-learning-for-predicting-antibiotic-resistance-gene-properties-via-gating-controlled-mechanism
#25
JOURNAL ARTICLE
Weizhong Zhao, Junze Wu, Shujie Luo, Xingpeng Jiang, Tingting He, Xiaohua Hu
The crisis of antibiotic resistance has become a significant global threat to human health. Understanding properties of antibiotic resistance genes (ARGs) is the first step to mitigate this issue. Although many methods have been proposed for predicting properties of ARGs, most of these methods focus only on predicting antibiotic classes, while ignoring other properties of ARGs, such as resistance mechanisms and transferability. However, acquiring all of these properties of ARGs can help researchers gain a more comprehensive understanding of the essence of antibiotic resistance, which will facilitate the development of antibiotics...
April 19, 2024: IEEE Journal of Biomedical and Health Informatics
https://read.qxmd.com/read/38639496/development-of-novel-methods-for-qsar-modeling-by-machine-learning-repeatedly-a-case-study-on-drug-distribution-to-each-tissue
#26
JOURNAL ARTICLE
Koichi Handa, Saki Yoshimura, Michiharu Kageyama, Takeshi Iijima
Artificial intelligence is expected to help identify excellent candidates in drug discovery. However, we face a lack of data, as it is time-consuming and expensive to acquire raw data perfectly for many compounds. Hence, we tried to develop a novel quantitative structure-activity relationship (QSAR) method to predict a parameter more precisely from an incomplete data set via optimizing data handling by making use of predicted explanatory variables. As a case study we focused on the tissue-to-plasma partition coefficient (Kp), which is an important parameter for understanding drug distribution in tissues and building the physiologically based pharmacokinetic model and is a representative of small and sparse data sets...
April 19, 2024: Journal of Chemical Information and Modeling
https://read.qxmd.com/read/38638648/predicting-small-molecules-solubility-on-endpoint-devices-using-deep-ensemble-neural-networks
#27
JOURNAL ARTICLE
Mayk Caldas Ramos, Andrew D White
Aqueous solubility is a valuable yet challenging property to predict. Computing solubility using first-principles methods requires accounting for the competing effects of entropy and enthalpy, resulting in long computations for relatively poor accuracy. Data-driven approaches, such as deep learning, offer improved accuracy and computational efficiency but typically lack uncertainty quantification. Additionally, ease of use remains a concern for any computational technique, resulting in the sustained popularity of group-based contribution methods...
April 17, 2024: Digit Discov
https://read.qxmd.com/read/38638522/treatment-of-aggression-regulation-problems-with-virtual-reality-study-protocol-for-a-randomized-controlled-trial
#28
JOURNAL ARTICLE
Bas R van Wolffelaar, Joan E van Horn, Larissa M Hoogsteder
BACKGROUND: Aggressive conduct among delinquents presents a pervasive issue, bearing substantial implications for not only society at large but also for the victims and the individuals displaying the aggression. Traditional approaches to treating aggression regulation deficiencies generally employ Cognitive Behavioral Therapy (CBT) in conjunction with analog role-playing exercises. A body of research supports the efficacy of various therapeutic models for aggression regulation, including Responsive Aggression Regulation Therapy (Re-ART)...
2024: Frontiers in Psychology
https://read.qxmd.com/read/38638504/real-time-surgical-tool-detection-with-multi-scale-positional-encoding-and-contrastive-learning
#29
JOURNAL ARTICLE
Gerardo Loza, Pietro Valdastri, Sharib Ali
Real-time detection of surgical tools in laparoscopic data plays a vital role in understanding surgical procedures, evaluating the performance of trainees, facilitating learning, and ultimately supporting the autonomy of robotic systems. Existing detection methods for surgical data need to improve processing speed and high prediction accuracy. Most methods rely on anchors or region proposals, limiting their adaptability to variations in tool appearance and leading to sub-optimal detection results. Moreover, using non-anchor-based detectors to alleviate this problem has been partially explored without remarkable results...
2024: Healthcare Technology Letters
https://read.qxmd.com/read/38638358/image-recognition-based-petal-arrangement-estimation
#30
JOURNAL ARTICLE
Tomoya Nakatani, Yuzuko Utsumi, Koichi Fujimoto, Masakazu Iwamura, Koichi Kise
Flowers exhibit morphological diversity in the number and positional arrangement of their floral organs, such as petals. The petal arrangements of blooming flowers are represented by the overlap position relation between neighboring petals, an indicator of the floral developmental process; however, only specialists are capable of the petal arrangement identification. Therefore, we propose a method to support the estimation of the arrangement of the perianth organs, including petals and tepals, using image recognition techniques...
2024: Frontiers in Plant Science
https://read.qxmd.com/read/38637255/approximate-optimal-and-safe-coordination-of-nonlinear-second-order-multirobot-systems-with-model-uncertainties
#31
JOURNAL ARTICLE
Yaohua Guo, He Huang
This paper investigates the approximate optimal coordination for nonlinear uncertain second-order multi-robot systems with guaranteed safety (collision avoidance) Through constructing novel local error signals, the collision-free control objective is formulated into an coordination optimization problem for nominal multi-robot systems. Based on approximate dynamic programming technique, the optimal value functions and control policies are learned by simplified critic-only neural networks (NNs). Then, the approximated optimal controllers are redesigned using adaptive law to handle the effects of robots' uncertain dynamics...
April 9, 2024: ISA Transactions
https://read.qxmd.com/read/38636526/super-resolution-reconstruction-of-ultrasound-image-using-a-modified-diffusion-model
#32
JOURNAL ARTICLE
Tianyu Liu, Shuai Han, Linru Xie, Wenyu Xing, Chengcheng Liu, Boyi Li, De-An Ta
OBJECTIVE: This study aims to perform super-resolution (SR) reconstruction of ultrasound images using a modified diffusion model, designated as the Diffusion Model for Ultrasound Image Super-Resolution (DMUISR). SR involves converting low-resolution images to high-resolution ones, and the proposed model is designed to enhance the suitability of diffusion models for this task in the context of ultrasound imaging. APPROACH: DMUISR incorporates a multi-layer self-attention (MLSA) mechanism and a wavelet-transform based low-resolution image (WTLR) encoder to enhance its suitability for ultrasound image SR tasks...
April 18, 2024: Physics in Medicine and Biology
https://read.qxmd.com/read/38635682/gsb-gngs-and-sag-bigru-network-for-malware-dynamic-detection
#33
JOURNAL ARTICLE
Zhanhui Hu, Guangzhong Liu, Xinyu Xiang, Yanping Li, Siqing Zhuang
With the rapid development of the Internet, the continuous increase of malware and its variants have brought greatly challenges for cyber security. Due to the imbalance of the data distribution, the research on malware detection focuses on the accuracy of the whole data sample, while ignoring the detection rate of the minority categories' malware. In the dataset sample, the normal data samples account for the majority, while the attacks' malware accounts for the minority. However, the minority categories' attacks will bring great losses to countries, enterprises, or individuals...
2024: PloS One
https://read.qxmd.com/read/38634608/dimond-diffusion-model-optimization-with-deep-learning
#34
JOURNAL ARTICLE
Zihan Li, Ziyu Li, Berkin Bilgic, Hong-Hsi Lee, Kui Ying, Susie Y Huang, Hongen Liao, Qiyuan Tian
Diffusion magnetic resonance imaging is an important tool for mapping tissue microstructure and structural connectivity non-invasively in the in vivo human brain. Numerous diffusion signal models are proposed to quantify microstructural properties. Nonetheless, accurate estimation of model parameters is computationally expensive and impeded by image noise. Supervised deep learning-based estimation approaches exhibit efficiency and superior performance but require additional training data and may be not generalizable...
April 18, 2024: Advanced Science (Weinheim, Baden-Wurttemberg, Germany)
https://read.qxmd.com/read/38633533/combining-data-augmentation-and-deep-learning-for-improved-epilepsy-detection
#35
JOURNAL ARTICLE
Yandong Ru, Zheng Wei, Gaoyang An, Hongming Chen
INTRODUCTION: In recent years, the use of EEG signals for seizure detection has gained widespread academic attention. Aiming at the problem of overfitting deep learning models due to the small number of EEG signal data during epilepsy detection, this paper proposes an epilepsy detection method that combines data augmentation and deep learning. METHODS: First, the Adversarial and Mixup Data Augmentation (AMDA) method is used to realize the data augmentation, which effectively enriches the number of training samples...
2024: Frontiers in Neurology
https://read.qxmd.com/read/38633025/collaborative-implementation-of-an-evidence-based-package-of-integrated-primary-mental-healthcare-using-quality-improvement-within-a-learning-health-systems-approach-lessons-from-the-mental-health-integration-programme-in-south-africa
#36
JOURNAL ARTICLE
Sithabisile Gugulethu Gigaba, Zamasomi Luvuno, Arvin Bhana, Andre Janse van Rensburg, Londiwe Mthethwa, Deepa Rao, Nikiwe Hongo, Inge Petersen
INTRODUCTION: The treatment gap for mental health disorders persists in low- and middle-income countries despite overwhelming evidence of the efficacy of task-sharing mental health interventions. Key barriers in the uptake of these innovations include the absence of policy to support implementation and diverting of staff from usual routines in health systems that are already overstretched. South Africa enjoys a conducive policy environment; however, strategies for operationalizing the policy ideals are lacking...
April 2024: Learning Health Systems
https://read.qxmd.com/read/38632686/magnetic-resonance-imaging-images-based-brain-tumor-extraction-segmentation-and-detection-using-convolutional-neural-network-and-vgc-16-model
#37
JOURNAL ARTICLE
Ganesh Shunmugavel, Kannadhasan Suriyan, Jayachandran Arumugam
BACKGROUND: In this paper, we look at how to design and build a system to find tumors using 2 Convolutional Neural Network (CNN) models. With the help of digital image processing and deep Learning, we can make a system that automatically diagnoses and finds different diseases and abnormalities. The tumor detection system may include image enhancement, segmentation, data enhancement, feature extraction, and classification. These options are set up so that the CNN model can give the best results...
April 18, 2024: American Journal of Clinical Oncology
https://read.qxmd.com/read/38632492/discovery-of-potent-inhibitors-of-%C3%AE-synuclein-aggregation-using-structure-based-iterative-learning
#38
JOURNAL ARTICLE
Robert I Horne, Ewa A Andrzejewska, Parvez Alam, Z Faidon Brotzakis, Ankit Srivastava, Alice Aubert, Magdalena Nowinska, Rebecca C Gregory, Roxine Staats, Andrea Possenti, Sean Chia, Pietro Sormanni, Bernardino Ghetti, Byron Caughey, Tuomas P J Knowles, Michele Vendruscolo
Machine learning methods hold the promise to reduce the costs and the failure rates of conventional drug discovery pipelines. This issue is especially pressing for neurodegenerative diseases, where the development of disease-modifying drugs has been particularly challenging. To address this problem, we describe here a machine learning approach to identify small molecule inhibitors of α-synuclein aggregation, a process implicated in Parkinson's disease and other synucleinopathies. Because the proliferation of α-synuclein aggregates takes place through autocatalytic secondary nucleation, we aim to identify compounds that bind the catalytic sites on the surface of the aggregates...
April 17, 2024: Nature Chemical Biology
https://read.qxmd.com/read/38632166/intracranial-aneurysm-detection-an-object-detection-perspective
#39
REVIEW
Youssef Assis, Liang Liao, Fabien Pierre, René Anxionnat, Erwan Kerrien
PURPOSE: Intracranial aneurysm detection from 3D Time-Of-Flight Magnetic Resonance Angiography images is a problem of increasing clinical importance. Recently, a streak of methods have shown promising performance by using segmentation neural networks. However, these methods may be less relevant in a clinical settings where diagnostic decisions rely on detecting objects rather than their segmentation. METHODS: We introduce a 3D single-stage object detection method tailored for small object detection such as aneurysms...
April 17, 2024: International Journal of Computer Assisted Radiology and Surgery
https://read.qxmd.com/read/38631100/elastic-parameter-identification-of-three-dimensional-soft-tissue-based-on-deep-neural-network
#40
JOURNAL ARTICLE
Ziyang Hu, Shenghui Liao, Jianda Zhou, Qiuyang Chen, Renzhong Wu
In the field of virtual surgery and deformation simulation, the identification of elastic parameters of human soft tissues is a critical technology that directly affects the accuracy of deformation simulation. Current research on soft tissue deformation simulation predominantly assumes that the elasticity of tissues is fixed and already known, leading to the difficulty in populating with the elasticity measured or identified from specific tissues of real patients. Existing elasticity modeling efforts struggle to be implemented on irregularly structured soft tissues, failing to adapt to clinical surgical practices...
April 12, 2024: Journal of the Mechanical Behavior of Biomedical Materials
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