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Self-Supervised Learning to Unveil Brain Dysfunctional Signatures in Brain Disorders:Methods and Applications
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作者 Ying Li Yanwu Yang +2 位作者 Yuchu Chen Chenfei Ye Ting Ma 《Health Data Science》 2025年第1期90-109,共20页
Importance:Precisely decoding brain dysfunction from high-dimensional functional recordings is crucial for advancing our understanding of brain dysfunction in brain disorders.Self-supervised learning(SSL)models offer ... Importance:Precisely decoding brain dysfunction from high-dimensional functional recordings is crucial for advancing our understanding of brain dysfunction in brain disorders.Self-supervised learning(SSL)models offer a transformative approach for mapping dependencies in functional neuroimaging data.Leveraging the intrinsic organization of brain signals for comprehensive feature extraction,these models enable the analysis of critical neurofunctional features within a clinically relevant framework,overcoming challenges related to data heterogeneity and the scarcity of labeled data.Highlight:This paper provides a comprehensive overview of SSL techniques applied to functional neuroimaging data,such as functional magnetic resonance imaging and electroencephalography,with a specific focus on their applications in various neuropsychiatric disorders.We discuss 3 main categories of SSL methods:contrastive learning,generative learning,and generative-contrastive methods,outlining their basic principles and representative methods.Critically,we highlight the potential of SSL in addressing data scarcity,multimodal integration,and dynamic network modeling for disease detection and prediction.We showcase successful applications of these techniques in understanding and classifying conditions such as Alzheimer’s disease,Parkinson’s disease,and epilepsy,demonstrating their potential in downstream neuropsychological applications.Conclusion:SSL models provide a scalable and effective methodology for individual detection and prediction in brain disorders.Despite current limitations in interpretability and data heterogeneity,the potential of SSL for future clinical applications,particularly in the areas of transdiagnostic psychosis subtyping and decoding task-based brain functional recordings,is substantial. 展开更多
关键词 contrastive learning brain signals functional neuroimaging self supervised learning analysis critical neurofunctional features within clinically relevant frameworkovercoming feature extractionthese functional neuroimaging dataleveraging brain dysfunction
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Improved Bearing Fault Diagnosis by Feature Extraction Based on GLCM, Fusion of Selection Methods, and Multiclass-Naïve Bayes Classification 被引量:1
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作者 Mireille Pouyap Laurent Bitjoka +1 位作者 Etienne Mfoumou Denis Toko 《Journal of Signal and Information Processing》 2021年第4期71-85,共15页
<span style="font-family:Verdana;">The presence of bearing faults reduces the efficiency of rotating machines and thus increases energy consumption or even the total stoppage of the machine. </span&... <span style="font-family:Verdana;">The presence of bearing faults reduces the efficiency of rotating machines and thus increases energy consumption or even the total stoppage of the machine. </span><span style="font-family:Verdana;">It becomes essential to correctly diagnose the fault caused by the bearing.</span><span style="font-family:Verdana;"> Hence the importance of determining an effective features extraction method that best describes the fault. The vision of this paper is to merge the features selection methods in order to define the most relevant featuresin the texture </span><span style="font-family:Verdana;">of the vibration signal images. In this study, the Gray Level Co-occurrence </span><span style="font-family:Verdana;">Matrix (GLCM) in texture analysis is applied on the vibration signal represented in images. Features</span><span><span><span style="font-family:;" "=""> </span></span></span><span><span><span style="font-family:;" "=""><span style="font-family:Verdana;">selection based on the merge of PCA (Principal component Analysis) method and SFE (Sequential Features Extraction) method is </span><span style="font-family:Verdana;">done to obtain the most relevant features. The multiclass-Na<span style="white-space:nowrap;">?</span>ve Bayesclassifi</span><span style="font-family:Verdana;">er is used to test the proposed approach. The success rate of this classification is 98.27%. The relevant features obtained give promising results and are more efficient than the methods observed in the literature.</span></span></span></span> 展开更多
关键词 GLCM PCA SFE Naïve Bayes relevant features
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Analysis of the Diagnostic Consistency of Chinese Medicine Specialists in Cardiovascular Disease Cases and Syndrome Identification Based on the Relevant Feature for Each Label Learning Method 被引量:1
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作者 许朝霞 徐璡 +6 位作者 颜建军 王忆勤 郭睿 刘国萍 燕海霞 钱鹏 洪毓键 《Chinese Journal of Integrative Medicine》 SCIE CAS CSCD 2015年第3期217-222,共6页
Objective:To analyze the diagnostic consistency of Chinese medicine(CM) specialists in patients with cardiovascular disease and to study syndrome classification and identification based on the multi-label learning ... Objective:To analyze the diagnostic consistency of Chinese medicine(CM) specialists in patients with cardiovascular disease and to study syndrome classification and identification based on the multi-label learning method.Methods:Using self-developed CM clinical scales to collect cases,inquiry information,complexity,tongue manifestation and pulse manifestation were assessed.The number of cases collected was 2,218.Firstly,each case was differentiated by two CM specialists according to the same diagnostic criteria.The consistency of the diagnosis based on Cohen’s Kappa coefficient was analyzed.Secondly,take the same diagnosis syndromes of two specialists as the results of the cases.According to injury information in the CM scale "yes" or "no" was assigned "1" or "0",and according to the syndrome type in each case "yes" or "no" was assigned "1" or "0".CM information data on cardiovascular disease cases were established.We studied CM syndrome classification and identification based on the relevant feature for each label(REAL) leaming method,and the diagnostic rate of the syndrome was studied using the REAL method when the number of features selected was 5,10,15,20,30,50,70,and 100,respectively.Results:The syndromes with good diagnostic consistency were Heart(Xin)-qi deficiency,Heart-yang deficiency,Heart-yin deficiency,phlegm,stagnation of blood and stagnation of qi.Syndromes with poor diagnostic consistency were heartblood deficiency and blood deficiency of Heart and Liver(Gan).The highest diagnostic rates using the REAL method were Heart-yang deficiency followed by Heart-qi deficiency.A different number of features,such as 5,10,15,20,30,40,50,70,and 100,respectively,were selected and the diagnostic accuracy based on five features showed the highest diagnostic accuracy.The top five features which had a strong correlation with the syndromes were in accordance with the CM theory.Conclnsions:CM syndrome differentiation is strongly subjective and it is difficult to obtain good diagnostic consistency.The REAL method fully considers the relationship between syndrome types and injury symptoms,and is suitable for the establishment of models for CM syndrome classification and identification.This method can probably provide the prerequisite for objectivity and standardization of CM differentiation. 展开更多
关键词 diagnosis consistency syndromes classification syndromes identification cardiovascular disease relevant feature for each label learning method
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Bridging AI and explainability in civil engineering: the Yin‑Yang of predictive power and interpretability
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作者 Monjurul Hasan Ming Lu 《AI in Civil Engineering》 2025年第1期424-441,共18页
Civil engineering relies on data from experiments or simulations to calibrate models that approximate systembehaviors. This paper examines machine learning (ML) algorithms for AI-driven decision support in civil engin... Civil engineering relies on data from experiments or simulations to calibrate models that approximate systembehaviors. This paper examines machine learning (ML) algorithms for AI-driven decision support in civil engineering,specifically construction engineering and management, where complex input–output relationships demandboth predictive accuracy and interpretability. Explainable AI (XAI) is critical for safety and compliance-sensitiveapplications, ensuring transparency in AI decisions. The literature review identifies key XAI evaluation attributes—model type, explainability, perspective, and interpretability and assesses the Enhanced Model Tree (EMT), a novelmethod demonstrating strong potential for civil engineering applications compared to commonly applied MLalgorithms. The study highlights the need to balance AI’s predictive power with XAI’s transparency, akin to the Yin–Yang philosophy: AI advances in efficiency and optimization, while XAI provides logical reasoning behind conclusions.Drawing on insights from the literature, the study proposes a tailored XAI assessment framework addressing civilengineering’s unique needs—problem context, data constraints, and model explainability. By formalizing thissynergy, the research fosters trust in AI systems, enabling safer and more socially responsible outcomes. The findingsunderscore XAI’s role in bridging the gap between complex AI models and end-user accountability, ensuring AI’s fullpotential is realized in the field. 展开更多
关键词 Explainable AI(XAI) AI transparency Causal reasoning Sensitivity analysis Feature relevance AI in construction engineering Data-driven engineering
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