keyword
https://read.qxmd.com/read/38691433/smooth-guided-implicit-data-augmentation-for-domain-generalization
#1
JOURNAL ARTICLE
Mengzhu Wang, Junze Liu, Ge Luo, Shanshan Wang, Wei Wang, Long Lan, Ye Wang, Feiping Nie
The training process of a domain generalization (DG) model involves utilizing one or more interrelated source domains to attain optimal performance on an unseen target domain. Existing DG methods often use auxiliary networks or require high computational costs to improve the model's generalization ability by incorporating a diverse set of source domains. In contrast, this work proposes a method called Smooth-Guided Implicit Data Augmentation (SGIDA) that operates in the feature space to capture the diversity of source domains...
May 1, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38691432/learning-with-noisy-labels-over-imbalanced-subpopulations
#2
JOURNAL ARTICLE
Mingcai Chen, Yu Zhao, Bing He, Zongbo Han, Junzhou Huang, Bingzhe Wu, Jianhua Yao
Learning with noisy labels (LNL) has attracted significant attention from the research community. Many recent LNL methods rely on the assumption that clean samples tend to have a "small loss." However, this assumption often fails to generalize to some real-world cases with imbalanced subpopulations, that is, training subpopulations that vary in sample size or recognition difficulty. Therefore, recent LNL methods face the risk of misclassifying those "informative" samples (e.g., hard samples or samples in the tail subpopulations) into noisy samples, leading to poor generalization performance...
May 1, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38691218/cognitive-diagnostic-assessment-a-q-matrix-constraint-based-neural-network-method
#3
JOURNAL ARTICLE
Jinhong Tao, Wei Zhao, Yuliu Zhang, Qian Guo, Baocui Min, Xiaoqing Xu, Fengjuan Liu
Cognitive diagnosis is a crucial element of intelligent education that aims to assess the proficiency of specific skills or traits in students at a refined level and provide insights into their strengths and weaknesses for personalized learning. Researchers have developed numerous cognitive diagnostic models. However, previous studies indicate that diagnostic accuracy can be significantly influenced by the appropriateness of the model and the sample size. Thus, designing a general model that can adapt to different assumptions and sample sizes remains a considerable challenge...
April 30, 2024: Behavior Research Methods
https://read.qxmd.com/read/38689962/a-multi-scale-feature-fusion-neural-network-for-multi-class-disease-classification-on-the-maize-leaf-images
#4
JOURNAL ARTICLE
Liangliang Liu, Shixin Qiao, Jing Chang, Weiwei Ding, Cifu Xu, Jiamin Gu, Tong Sun, Hongbo Qiao
Maize is a globally important cereal crop, however, maize leaf disease is one of the most common and devastating diseases that afflict it. Artificial intelligence methods face challenges in identifying and classifying maize leaf diseases due to variations in image quality, similarity among diseases, disease severity, limited dataset availability, and limited interpretability. To address these challenges, we propose a residual-based multi-scale network (MResNet) for classifying multi-type maize leaf diseases from maize images...
April 15, 2024: Heliyon
https://read.qxmd.com/read/38689643/reinvestigating-the-performance-of-artificial-intelligence-classification-algorithms-on-covid-19-x-ray-and-ct-images
#5
JOURNAL ARTICLE
Rui Cao, Yanan Liu, Xin Wen, Caiqing Liao, Xin Wang, Yuan Gao, Tao Tan
There are concerns that artificial intelligence (AI) algorithms may create underdiagnosis bias by mislabeling patient individuals with certain attributes (e.g., female and young) as healthy. Addressing this bias is crucial given the urgent need for AI diagnostics facing rapidly spreading infectious diseases like COVID-19. We find the prevalent AI diagnostic models show an underdiagnosis rate among specific patient populations, and the underdiagnosis rate is higher in some intersectional specific patient populations (for example, females aged 20-40 years)...
May 17, 2024: IScience
https://read.qxmd.com/read/38689178/diffusion-probabilistic-versus-generative-adversarial-models-to-reduce-contrast-agent-dose-in-breast-mri
#6
COMPARATIVE STUDY
Gustav Müller-Franzes, Luisa Huck, Maike Bode, Sven Nebelung, Christiane Kuhl, Daniel Truhn, Teresa Lemainque
BACKGROUND: To compare denoising diffusion probabilistic models (DDPM) and generative adversarial networks (GAN) for recovering contrast-enhanced breast magnetic resonance imaging (MRI) subtraction images from virtual low-dose subtraction images. METHODS: Retrospective, ethically approved study. DDPM- and GAN-reconstructed single-slice subtraction images of 50 breasts with enhancing lesions were compared to original ones at three dose levels (25%, 10%, 5%) using quantitative measures and radiologic evaluations...
May 1, 2024: European Radiology Experimental
https://read.qxmd.com/read/38688653/artificial-intelligence-and-chatgpt-in-abdominopelvic-surgery-a-systematic-review-of-applications-and-impact
#7
REVIEW
Marta Goglia, Marco Pace, Marco Yusef, Gaetano Gallo, Matteo Pavone, Niccolò Petrucciani, Paolo Aurello
BACKGROUND/AIM: The integration of AI and natural language processing technologies, such as ChatGPT, into surgical practice has shown promising potential in enhancing various aspects of abdominopelvic surgical procedures. This systematic review aims to comprehensively evaluate the current state of research on the applications and impact of artificial intelligence (AI) and ChatGPT in abdominopelvic surgery summarizing existing literature towards providing a comprehensive overview of the diverse applications, effectiveness, challenges, and future directions of these innovative technologies...
2024: In Vivo
https://read.qxmd.com/read/38687668/policy-correction-and-state-conditioned-action-evaluation-for-few-shot-lifelong-deep-reinforcement-learning
#8
JOURNAL ARTICLE
Meng Xu, Xinhong Chen, Jianping Wang
Lifelong deep reinforcement learning (DRL) approaches are commonly employed to adapt continuously to new tasks without forgetting previously acquired knowledge. While current lifelong DRL methods have shown promising advancements in retaining acquired knowledge, they suffer from significant adaptation efforts (i.e., longer training duration) and suboptimal policy when transferring to a new task that significantly deviates from previously learned tasks, a phenomenon known as the few-shot generalization challenge...
April 30, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38687660/ood-control-generalizing-control-in-unseen-environments
#9
JOURNAL ARTICLE
Nanyang Ye, Zhaoyu Zeng, Jundong Zhou, Lin Zhu, Yuxiao Duan, Yifei Wu, Junqi Wu, Haoqi Zeng, Qinying Gu, Xinbing Wang, Chenghu Zhou
Generalizing out-of-distribution (OoD) is critical but challenging in real applications such as unmanned aerial vehicle (UAV) flight control. Previous machine learning-based control has shown promise in dealing with complex real-world environments but suffers huge performance degradation facing OoD scenarios, posing risks to the stability and safety of UAVs. In this paper, we found that the introduced random noises during training surprisingly yield theoretically guaranteed performances via a proposed functional optimization framework...
April 30, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38685890/patient-friendly-discharge-summaries-in-korea-based-on-chatgpt-software-development-and-validation
#10
JOURNAL ARTICLE
Hanjae Kim, Hee Min Jin, Yoon Bin Jung, Seng Chan You
BACKGROUND: Although discharge summaries in patient-friendly language can enhance patient comprehension and satisfaction, they can also increase medical staff workload. Using a large language model, we developed and validated software that generates a patient-friendly discharge summary. METHODS: We developed and tested the software using 100 discharge summary documents, 50 for patients with myocardial infarction and 50 for patients treated in the Department of General Surgery...
April 29, 2024: Journal of Korean Medical Science
https://read.qxmd.com/read/38683715/uncertainty-boosted-robust-video-activity-anticipation
#11
JOURNAL ARTICLE
Zhaobo Qi, Shuhui Wang, Weigang Zhang, Qingming Huang
Video activity anticipation aims to predict what will happen in the future, embracing a broad application prospect ranging from robot vision and autonomous driving. Despite the recent progress, the data uncertainty issue, reflected as the content evolution process and dynamic correlation in event labels, has been somehow ignored. This reduces the model generalization ability and deep understanding on video content, leading to serious error accumulation and degraded performance. In this paper, we address the uncertainty learning problem and propose an uncertainty-boosted robust video activity anticipation framework, which generates uncertainty values to indicate the credibility of the anticipation results...
April 29, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38683714/learning-to-holistically-detect-bridges-from-large-size-vhr-remote-sensing-imagery
#12
JOURNAL ARTICLE
Yansheng Li, Junwei Luo, Yongjun Zhang, Yihua Tan, Jin-Gang Yu, Song Bai
Bridge detection in remote sensing images (RSIs) plays a crucial role in various applications, but it poses unique challenges compared to the detection of other objects. In RSIs, bridges exhibit considerable variations in terms of their spatial scales and aspect ratios. Therefore, to ensure the visibility and integrity of bridges, it is essential to perform holistic bridge detection in large-size very-high-resolution (VHR) RSIs. However, the lack of datasets with large-size VHR RSIs limits the deep learning algorithms' performance on bridge detection...
April 29, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38683712/searching-to-exploit-memorization-effect-in-deep-learning-with-noisy-labels
#13
JOURNAL ARTICLE
Hansi Yang, Quanming Yao, Bo Han, James T Kwok
Sample selection approaches are popular in robust learning from noisy labels. However, how to control the selection process properly so that deep networks can benefit from the memorization effect is a hard problem. In this paper, motivated by the success of automated machine learning (AutoML), we propose to control the selection process by bi-level optimization. Specifically, we parameterize the selection process by exploiting the general patterns of the memorization effect in the upper-level, and then update these parameters using predicting accuracy obtained from model training in the lower-level...
April 29, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38683711/a-versatile-framework-for-multi-scene-person-re-identification
#14
JOURNAL ARTICLE
Wei-Shi Zheng, Junkai Yan, Yi-Xing Peng
Person Re-identification (ReID) has been extensively developed for a decade in order to learn the association of images of the same person across non-overlapping camera views. To overcome significant variations between images across camera views, mountains of variants of ReID models were developed for solving a number of challenges, such as resolution change, clothing change, occlusion, modality change, and so on. Despite the impressive performance of many ReID variants, these variants typically function distinctly and cannot be applied to other challenges...
April 29, 2024: IEEE Transactions on Pattern Analysis and Machine Intelligence
https://read.qxmd.com/read/38683705/ccp-gnn-competitive-covariance-pooling-for-improving-graph-neural-networks
#15
JOURNAL ARTICLE
Pengfei Zhu, Jialu Li, Zhe Dong, Qinghua Hu, Xiao Wang, Qilong Wang
Graph neural networks (GNNs) have advanced graph classification tasks, where a global pooling to generate graph representations by summarizing node features plays a critical role in the final performance. Most of the existing GNNs are built with a global average pooling (GAP) or its variants, which however, take no full consideration of node specificity while neglecting rich statistics inherent in node features, limiting classification performance of GNNs. Therefore, this article proposes a novel competitive covariance pooling (CCP) based on observation of graph structures, i...
April 29, 2024: IEEE Transactions on Neural Networks and Learning Systems
https://read.qxmd.com/read/38683384/automated-abdominal-ct-contrast-phase-detection-using-an-interpretable-and-open-source-artificial-intelligence-algorithm
#16
JOURNAL ARTICLE
Eduardo Pontes Reis, Louis Blankemeier, Juan Manuel Zambrano Chaves, Malte Engmann Kjeldskov Jensen, Sally Yao, Cesar Augusto Madid Truyts, Marc H Willis, Scott Adams, Edson Amaro, Robert D Boutin, Akshay S Chaudhari
OBJECTIVES: To develop and validate an open-source artificial intelligence (AI) algorithm to accurately detect contrast phases in abdominal CT scans. MATERIALS AND METHODS: Retrospective study aimed to develop an AI algorithm trained on 739 abdominal CT exams from 2016 to 2021, from 200 unique patients, covering 1545 axial series. We performed segmentation of five key anatomic structures-aorta, portal vein, inferior vena cava, renal parenchyma, and renal pelvis-using TotalSegmentator, a deep learning-based tool for multi-organ segmentation, and a rule-based approach to extract the renal pelvis...
April 29, 2024: European Radiology
https://read.qxmd.com/read/38682622/-the-development-and-innovation-of-clinical-nutrition
#17
JOURNAL ARTICLE
G H Wu
The strategy of nutrition therapy in the treatment of diseases is constantly optimized with the development and innovation of the concept and technology in the field of clinical nutrition, especially the rise of multi-disciplines such as imaging omics and artificial intelligence and the latest discoveries of clinical trials. Precise nutrition assessment, diversified products, multimodal nutrition therapy throughout the process and intelligent compliance management have efficiently improved the effect of nutrition therapy...
April 29, 2024: Zhonghua Wai Ke za Zhi [Chinese Journal of Surgery]
https://read.qxmd.com/read/38682620/-minimally-invasive-intelligent-innovative-technologies-in-foot-and-ankle-surgery-development-status-and-prospects
#18
JOURNAL ARTICLE
J C Gui, R Yin
The rapid development of technology has ushered in a new era of minimally invasive and intelligent surgery.Minimally invasive surgeries, such as small incision, percutaneous surgery, arthroscopic surgery, and endoscopic surgery, have contributed to less invasive surgical trauma, better cosmesis, and faster recovery. Furthermore, the recent adoption of artificial intelligence (AI) has introduced new assistances and tools for minimally invasive foot and ankle surgery. By the help of advanced AI algorithms, surgeons can accurately make diagnose and personalized treatment strategies...
April 29, 2024: Zhonghua Wai Ke za Zhi [Chinese Journal of Surgery]
https://read.qxmd.com/read/38682483/ai-inclusivity-in-healthcare-motivating-an-institutional-epistemic-trust-perspective
#19
JOURNAL ARTICLE
Kritika Maheshwari, Christoph Jedan, Imke Christiaans, Mariëlle van Gijn, Els Maeckelberghe, Mirjam Plantinga
This paper motivates institutional epistemic trust as an important ethical consideration informing the responsible development and implementation of artificial intelligence (AI) technologies (or AI-inclusivity) in healthcare. Drawing on recent literature on epistemic trust and public trust in science, we start by examining the conditions under which we can have institutional epistemic trust in AI-inclusive healthcare systems and their members as providers of medical information and advice. In particular, we discuss that institutional epistemic trust in AI-inclusive healthcare depends, in part, on the reliability of AI-inclusive medical practices and programs, its knowledge and understanding among different stakeholders involved, its effect on epistemic and communicative duties and burdens on medical professionals and, finally, its interaction and alignment with the public's ethical values and interests as well as background sociopolitical conditions against which AI-inclusive healthcare systems are embedded...
April 29, 2024: Cambridge Quarterly of Healthcare Ethics: CQ
https://read.qxmd.com/read/38682012/walking-forward-or-on-hold-could-the-chatgpt-be-applied-for-seeking-health-information-in-neurosurgical-settings
#20
JOURNAL ARTICLE
Si-Yu Yan, Yi-Fan Liu, Lu Ma, Ling-Long Xiao, Xin Hu, Rui Guo, Chao You, Rui Tian
Self-management is important for patients suffering from cerebrovascular events after neurosurgical procedures. An increasing number of artificial intelligence (AI)-assisted tools have been used in postoperative health management. ChatGPT is a new trend dialog-based chatbot that could be used as a supplemental tool for seeking health information. Responses from ChatGPT version 3.5 and 4.0 toward 13 questions raised by experienced neurosurgeons were evaluated in this exploratory study for their consistency and appropriateness blindly by the other three neurosurgeons...
2024: Ibrain
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