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Artificial intelligence-enabled high-precision colony extraction and isolation system
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作者 ZHAO Xu-feng JIA Zhi-qiang +5 位作者 CHEN Wei-xue HU Peng-tao SU Xin-ran LI Jun-lin GE Ming-feng DONG Wen-fei 《中国光学(中英文)》 北大核心 2026年第1期190-204,共15页
Standard bacterial suspensions play a crucial role in microbiological diagnosis.Traditional prepar-ation methods,which rely heavily on manual operations,face challenges such as poor reproducibility,low ef-ficiency,and... Standard bacterial suspensions play a crucial role in microbiological diagnosis.Traditional prepar-ation methods,which rely heavily on manual operations,face challenges such as poor reproducibility,low ef-ficiency,and biosafety concerns.In this study,we propose a high-precision automated colony extraction and separation system that combines large-field imaging and artificial intelligence(AI)to facilitate intelligent screening and localization of colonies.Firstly,a large-field imaging system was developed to capture high-resolution images of 90 mm Petri dishes,achieving a physical resolution of 13.2μm and an imaging speed of 13 frames per second.Subsequently,AI technology was employed for the automatic recognition and localiza-tion of colonies,enabling the selection of target colonies with diameters ranging from 1.9 to 2.3 mm.Next,a three-axis motion control platform was designed,accompanied by a path planning algorithm for the efficient extraction of colonies.An electronic pipette was employed for accurate colony collection.Additionally,a bacterial suspension concentration measurement module was developed,incorporating a 650 nm laser diode as the light source,achieving a measurement accuracy of 0.01 McFarland concentration(MCF).Finally,the system’s performance was validated through the preparation of an Esckerichia coli(E.coli)suspension.After 17 hours of cultivation,E.coli was extracted four times,achieving the target concentration set by the system.This work is expected to enable rapid and accurate microbial sample preparation,significantly reducing de-tection cycles and alleviating the workload of healthcare personnel. 展开更多
关键词 artificial intelligence colony extraction and isolation large-field imaging AUTOMATION
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Opportunities and challenges of artificial intelligence-assisted endoscopy and high-quality data for esophageal squamous cell carcinoma
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作者 Ken Kurisaki Shinichiro Kobayashi +6 位作者 Taro Akashi Yasuhiko Nakao Masayuki Fukumoto Kaito Tasaki Tomohiko Adachi Susumu Eguchi Kengo Kanetaka 《World Journal of Gastrointestinal Oncology》 2026年第1期61-74,共14页
This review comprehensively summarized the potential of artificial intelligence(AI)in the management of esophageal cancer.It highlighted the significance of AI-assisted endoscopy in Japan where endoscopy is central to... This review comprehensively summarized the potential of artificial intelligence(AI)in the management of esophageal cancer.It highlighted the significance of AI-assisted endoscopy in Japan where endoscopy is central to both screening and diagnosis.For the clinical adaptation of AI,several challenges remain for its effective translation.The establishment of high-quality clinical databases,such as the National Clinical Database and Japan Endoscopy Database in Japan,which covers almost all cases of esophageal cancer,is essential for validating multimodal AI models.This requires rigorous external validation using diverse datasets,including those from different endoscope manufacturers and image qualities.Furthermore,endoscopists’skills significantly affect diagnostic accuracy,suggesting that AI should serve as a supportive tool rather than a replacement.Addressing these challenges,along with country-specific legal and ethical considerations,will facilitate the successful integration of multimodal AI into the management of esophageal cancer,particularly in endoscopic diagnosis,and contribute to improved patient outcomes.Although this review focused on Japan as a case study,the challenges and solutions described are broadly applicable to other high-incidence regions. 展开更多
关键词 artificial intelligence Esophageal cancer ENDOSCOPY Deep learning National database Clinical translation Multimodal artificial intelligence
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Clinical research on artificial intelligence medical diagnostic devices:A scoping review
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作者 Xiaowei Zhang Changning Liu +3 位作者 Yang Sun Liangzhen You Xiaoyu Zhang Hongcai Shang 《EngMedicine》 2026年第1期105-113,共9页
Background:Artificial intelligence medical diagnostic devices(AIMDDs)show strong potential but face barriers to clinical use,emphasizing the need for rigorous clinical research.Objective:We assessed current AIMDD rese... Background:Artificial intelligence medical diagnostic devices(AIMDDs)show strong potential but face barriers to clinical use,emphasizing the need for rigorous clinical research.Objective:We assessed current AIMDD research,key challenges,and future directions.Methods:A scoping review followed Arksey and O'Malley's methodological framework and the Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews guidelines.PubMed,Web of Science Core Collection,and the Cochrane Database of Systematic Reviews(January 2020-December 2024)were searched on AIMDD design,implementation,and evaluation.Two independent researchers screened and extracted data from the literature using predefined criteria.Results:Ninety-seven articles met the inclusion criteria.Machine learning and deep learning approaches dominated across diverse disease fields,with oncology being the most frequent(41%).The key challenges identified include insufficient quantity,quality,representativeness,and diversity of data;research designs that do not adequately address clinical needs;poor patient selection;poorly defined gold standards;lack of external and prospective validation;and a disconnect between validation strategies and clinical practice.Additionally,issues such as the“black box”phenomenon,overfitting,and data privacy concerns hinder clinical translation.Completeness and standardization of reporting were also found to be lacking.Conclusions:Significant challenges remain in the development and clinical application of AIMDD.To facilitate their clinical translation,improvements are needed in dataset optimization,clinically driven research design,development of evaluation frameworks,enhanced interpretability,and standardized reporting and validation of algorithms. 展开更多
关键词 artificial intelligence DIAGNOSIS Clinical research VALIDATION
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Artificial intelligence in breast cancer:applications and advancements
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作者 Jianbin Li Zefei Jiang 《Cancer Biology & Medicine》 2026年第3期363-373,共11页
Breast cancer is the most common malignant tumor among women globally and poses a major public health challenge due to limitations in traditional diagnostic and treatment processes,such as subjective interpretation bi... Breast cancer is the most common malignant tumor among women globally and poses a major public health challenge due to limitations in traditional diagnostic and treatment processes,such as subjective interpretation biases and inefficient multidimensional data integration.Artificial intelligence(AI),particularly deep learning and machine learning technologies,has emerged as a transformative tool in addressing these issues.Clinically,AI has been widely applied in imaging screening to improve detection rates and reduce reading time,digital pathology for precise tumor typing and gene mutation prediction,treatment decisionsupport systems to enhance guideline compliance,and drug research and development to accelerate target identification and virtual screening.Despite these achievements,AI implementation faces challenges,such as data standardization issues,limited model generalization,low clinical accessibility,and unclear ethical-legal responsibilities,which require targeted solutions that include national data standards,multi-center training,hierarchical physician training,and explainable AI.Future directions involve multimodal data integration,human-AI collaborative multidisciplinary team models,and extension to full-cycle health management from prevention-to-rehabilitation.This review provides a systematic overview of the role of AI in breast cancer care,offering insights for clinical practice and scientific research innovation,and supporting the transition toward personalized and intelligent medicine in oncology. 展开更多
关键词 artificial intelligence breast cancer APPLICATION CHALLENGE
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Artificial intelligence-enabled Bioprinting 5.0
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作者 Long Bai Yi Zhang +3 位作者 Sicheng Wang Jinlong Liu Yuanyuan Liu Jiacan Su 《Bio-Design and Manufacturing》 2026年第1期32-62,I0002,共32页
With the rapid advancements in biomedical engineering,bioprinting has emerged as a pivotal solution to address the shortage of organ transplants and advance disease model research.The evolution of bioprinting has prog... With the rapid advancements in biomedical engineering,bioprinting has emerged as a pivotal solution to address the shortage of organ transplants and advance disease model research.The evolution of bioprinting has progressed from the fabrication of simple models(1.0)to the fabrication of permanent implants(2.0),tissue engineering scaffolds(3.0),and complex biostructures utilizing living cells(4.0).Nevertheless,significant challenges remain,particularly in accurately replicating the structure and function of host tissues,selecting appropriate materials,and optimizing printing parameters.The integration of artificial intelligence(AI),especially machine learning,provides promising novel opportunities in bioprinting(5.0).This review systematically summarizes the current applications of AI in bioprinting,discussing both construction strategies and application scenarios.It also explores the potential of AI to improve bioprinting in the preparation of complex functional tissues and in situ tissue repair.Overall,the synergy between AI and bioprinting is poised to drive the development of personalized medicine,facilitate high-throughput preparation of in vitro models,and provide robust tools for regenerative medicine and precision healthcare. 展开更多
关键词 artificial intelligence BIOPRINTING Tissue engineering Machine learning
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Thoughts and Practices on the Ideological and Political Construction in General Artificial Intelligence Curriculum Under the Deep Integration of Industry-Academia-Research-Application
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作者 Xiaoyang Xie Xiyuan Hu 《计算机教育》 2026年第3期101-108,共8页
This study addresses the challenges confronting the ideological and political construction of general artificial intelligence curriculum-namely,the dilution of value guidance amid pluralistic intellectual currents,the... This study addresses the challenges confronting the ideological and political construction of general artificial intelligence curriculum-namely,the dilution of value guidance amid pluralistic intellectual currents,the superficial internalization of concepts resulting from didactic pedagogy,and the ineffectiveness of character cultivation stemming from fragmented and decontextualized techno-ethical cases.This paper proposes centering the value proposition on“Serving the Nation through Science and Technology”.Leveraging the deeply integrated industry-academia-research-application synergy,we integrate ideological and political elements into the comprehensive technological practice workflow.To achieve this,we(1)incorporate authentic enterprise project practicums to foster students’sense of responsibility;(2)construct a virtual debate platform on technology ethics dilemmas to develop ethical discernment;and(3)organize solution competitions targeting urgent social problems to incubate technology-for-good initiatives.Collectively,these approaches enhance students’technological mission awareness,ethical sensitivity,and social responsibility. 展开更多
关键词 Curriculum ideology artificial intelligence Industry-academia-research-application Ethical sensitivity
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The art of medical synthesis:Where Chinese medical wisdom intersects with artificial intelligence
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作者 Enoch Chi Ngai Lim Nga Chong Lisa Cheng Chi Eung Danforn Lim 《Journal of Traditional Chinese Medical Sciences》 2026年第1期51-59,共9页
Generative artificial intelligence(AI),specifically large language models,such as DeepSeek,has accelerated the digital transformation of healthcare systems in both developing and developed countries.The use of AI in d... Generative artificial intelligence(AI),specifically large language models,such as DeepSeek,has accelerated the digital transformation of healthcare systems in both developing and developed countries.The use of AI in diagnostics,image processing and interpretation,treatment personalization,clinical documentation,and drug discovery is an example of the implementation of AI in Western medicine.The need for evidence-based studies and a standardized approach to scientific medicine aligns well with these applications.AI can leave a lasting impact on the Chinese medicine(CM)landscape by increasing expectations and presenting new challenges.The analogy between the CM-specific diagnostic methods and pattern differentiation,which is holistic,pattern-oriented,patient-centered,and clinical data analysis,is significant at multiple levels.These qualities pose challenges for AI usage in CM,which heavily relies on structured data and pattern recognition.Despite these adversities,AI can still be used in CM through data standardization,prediction formulation,and treatment planning,provided that the integration of this tool considers the primary principles of CM and adheres to ethical and regulatory considerations.This review examines the dichotomous approach to health and medicine in the contexts of AI and CM,highlighting the evolving potential,inherent limitations,and ethical and regulatory issues associated with the application of AI to CM.It provides a foundation for developing technologically progressive yet culturally and philosophically sensitive strategies that are in harmony with traditional clinical values. 展开更多
关键词 artificial intelligence Chinese medicine Western medicine Regulation ETHICS
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Artificial Intelligence in Dermatology Education: Applications, Opportunities, and Strategic Principles for Sustainable Talent Development
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作者 PENG Leixuan GAO Canni LUAN Mei 《International Journal of Plant Engineering and Management》 2026年第1期49-64,共16页
Dermatological diagnosis is inherently visual,greatly relying on clinicians′interpretation of images and accumulated experience.Traditional teaching models have long been constrained by limited case diversity,lack of... Dermatological diagnosis is inherently visual,greatly relying on clinicians′interpretation of images and accumulated experience.Traditional teaching models have long been constrained by limited case diversity,lack of personalization,and inadequate assessment of competency development.Recent advances in artificial intelligence(AI)offer new technological support for dermatology education.To address the risk of fragmented adoption,a process-oriented approach,conceptualizing AI-assisted dermatology education as an integrated system embedded throughout the learning process is adopted.Within this framework,AI is not only examined as an isolated tool but also as a component aligned with educational workflows.AI′s primary applications in dermatology education are analyzed,focusing on its potential to improve standardization so as to expand access to high-quality resources and support competency-based teaching,and facilitate lifelong learning.Meaningful educational benefits emerge when AI is systematically integrated into structured teaching processes.However,associated risks-including data bias,learner overreliance,implementation constraints,and potential impacts on medical humanities education must also be considered.Based on these findings,the strategic principles centered on educational objectives are proposed,emphasizing human-AI collaboration,transparency,and continuous governance to support the sustainable development of dermatology talent. 展开更多
关键词 artificial intelligence dermatology education talent cultivation SUSTAINABILITY
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Artificial Neural Network Model for Thermal Conductivity Estimation of Metal Oxide Water-Based Nanofluids
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作者 Nikhil S.Mane Sheetal Kumar Dewangan +3 位作者 Sayantan Mukherjee Pradnyavati Mane Deepak Kumar Singh Ravindra Singh Saluja 《Computers, Materials & Continua》 2026年第1期316-331,共16页
The thermal conductivity of nanofluids is an important property that influences the heat transfer capabilities of nanofluids.Researchers rely on experimental investigations to explore nanofluid properties,as it is a n... The thermal conductivity of nanofluids is an important property that influences the heat transfer capabilities of nanofluids.Researchers rely on experimental investigations to explore nanofluid properties,as it is a necessary step before their practical application.As these investigations are time and resource-consuming undertakings,an effective prediction model can significantly improve the efficiency of research operations.In this work,an Artificial Neural Network(ANN)model is developed to predict the thermal conductivity of metal oxide water-based nanofluid.For this,a comprehensive set of 691 data points was collected from the literature.This dataset is split into training(70%),validation(15%),and testing(15%)and used to train the ANN model.The developed model is a backpropagation artificial neural network with a 4–12–1 architecture.The performance of the developed model shows high accuracy with R values above 0.90 and rapid convergence.It shows that the developed ANN model accurately predicts the thermal conductivity of nanofluids. 展开更多
关键词 artificial neural networks nanofluids thermal conductivity PREDICTION
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Radar cross section reduction in target airspace based on ultra-wide-angle artificial electromagnetic absorbing surface
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作者 LI Liang GAO Hongwei +1 位作者 ZHANG Binchao JIN Cheng 《Journal of Systems Engineering and Electronics》 2026年第1期75-83,共9页
A methodology for the reduction of radar cross section(RCS)of cambered platforms within the target airspace is presented,which utilizes a dual-polarized ultra-wide-angle artificial electromagnetic absorbing surface.By... A methodology for the reduction of radar cross section(RCS)of cambered platforms within the target airspace is presented,which utilizes a dual-polarized ultra-wide-angle artificial electromagnetic absorbing surface.By applying the theory of generalized Brewster complex wave impedance matching,five distinct unit cell designs are developed to attain more than95%absorption rate for dual-polarized incident waves within five angular ranges:0°-30°,30°-50°,50°-60°,60°-70°,and 70°-80°.To optimally reduce the RCS of a cambered platform,the five types of units can be evenly distributed on the surface based on the local incident angles of plane waves originating from the target airspace.As an illustrative example,the leading edge of an airfoil is taken into account,and experimental measurements validate the efficiency of the proposed structure.Specifically,the absorbing surface achieves more than 10 dB of RCS reduction in the frequency ranges from 5-10 GHz(about66.7%relative bandwidth)for dual polarizations. 展开更多
关键词 artificial electromagnetic absorbing surface DUAL-POLARIZATION oblique incidence ultra-wide-angle
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Artificial Intelligence Design of Sustainable Aluminum Alloys: A Review
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作者 Zhijie Lin Chao Yang 《Computers, Materials & Continua》 2026年第2期63-95,共33页
Sustainable aluminum alloys,renowned for their lower energy consumption and carbon emissions,present a critical path towards a circular materials economy.However,their design is fraught with challenges,including compl... Sustainable aluminum alloys,renowned for their lower energy consumption and carbon emissions,present a critical path towards a circular materials economy.However,their design is fraught with challenges,including complex performance variability due to impurity elements and the time-consuming,cost-prohibitive nature of traditional trial-and-error methods.The high-dimensional parameter space in processing optimization and the reliance on human expertise for quality control further complicate their development.This paper provides a comprehensive review of Artificial Intelligence(AI)techniques applied to sustainable aluminum alloy design,analyzing their methodologies and identifying key challenges and optimization strategies.We review how AI methods such as knowledge graphs,evolutionary algorithms,and machine learning transformconventional processes into efficient,data-driven workflows,thereby enhancing development speed and precision.The review explicitly highlights existing bottlenecks,including insufficient data quality and standardization,the complexity of cross-scale modeling,and the need for industrial coordination.We conclude that AI holds immense potential to drive the recycled aluminum industry toward a more sustainable and intelligent future.Future research is poised to leverage generative AI,autonomous experimental platforms,and blockchain for improved life-cycle management,while also focusing on developing physics-informed models and establishing standardized data ecosystems. 展开更多
关键词 artificial intelligence sustainable aluminum alloys
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Integrating artificial intelligence in the diagnostic pathway of duodenal gastrointestinal stromal tumors:A case report
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作者 Himanshu Agrawal Garima Dwivedi +3 位作者 Rahul Rohitaj Himanshu Tanwar Shailender Maurya Nikhil Gupta 《Artificial Intelligence in Gastroenterology》 2026年第1期36-43,共8页
BACKGROUND Gastrointestinal stromal tumors(GISTs)are rare mesenchymal neoplasms primarily originating in the stomach or small intestine.Duodenal GISTs are particularly uncommon,accounting for only a small fraction of ... BACKGROUND Gastrointestinal stromal tumors(GISTs)are rare mesenchymal neoplasms primarily originating in the stomach or small intestine.Duodenal GISTs are particularly uncommon,accounting for only a small fraction of GIST cases.These tumors often present with nonspecific symptoms,making early detection challenging.This case discusses a duodenal GIST misdiagnosed as pancreatic cancer due to obstructive jaundice.CASE SUMMARY A 40-year-old male with jaundice and abdominal symptoms underwent imaging,which suggested a malignant periampullary tumor.Preoperative misdiagnosis of pancreatic cancer was made,and surgery was performed.Postoperative histopathology confirmed a duodenal GIST.The role of artificial intelligence in the diagnostic pathway is explored,emphasizing its potential to differentiate between duodenal GISTs and other similar conditions using advanced imaging analysis.CONCLUSION Artificial intelligence in radiomic imaging holds significant promise in enhancing the diagnostic process for rare cancers like duodenal GISTs,ensuring timely and accurate treatment. 展开更多
关键词 Gastrointestinal stromal tumor DUODENUM artificial intelligence Radiomics Preoperative diagnosis
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An artificial synapse capable of regulating signal transmission speed in a neuromorphic network
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作者 Jingru Sun Xiaosong Li +2 位作者 Yichuang Sun Zining Xiong Jiqi He 《Chinese Physics B》 2026年第1期66-77,共12页
The regulation of signal transmission speed is one of the most important capabilities of the biological nervous system.This study explores the mechanisms and methods for regulating signal transmission speed among nonm... The regulation of signal transmission speed is one of the most important capabilities of the biological nervous system.This study explores the mechanisms and methods for regulating signal transmission speed among nonmyelinated neurons within the same brain region,starting from spike-timing-dependent plasticity(STDP)of synapses.Building upon the Hodgkin-Huxley model,the dynamic behavior of synapses is incorporated,and the adaptive growth neuron(AGN)model is proposed.Artificial synaptic structures and neuronal physical nodes are also designed.The artificial synaptic structure exhibits unidirectionality,memory capacity,and STDP,enabling it to connect neuronal physical nodes through branching and merging structures.Furthermore,the artificial synapse can adjust signal transmission speed,regulate functional competition between different regions of the neuromorphic network,and promote information interaction.The findings of this study endow neuromorphic networks with the ability to regulate signal transmission speed over the long term,providing new insights into the development of neuromorphic networks. 展开更多
关键词 artificial synapse neuromorphic networks Hodgkin-Huxley model neuron circuit MEMRISTOR NEURODYNAMICS
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Creation of an Artificial Layer for Boosting Zn^(2+)Mass Transfer and Anode Stability in Aqueous Zinc Metal Batteries
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作者 Mingcong Tang Qun Liu +5 位作者 Gang Liu Xiaohong Zou Kouer Zhang Zhenlu Yu Biao Zhang Liang An 《Nano-Micro Letters》 2026年第4期467-486,共20页
Aqueous zinc metal batteries(AZMBs)are promising candidates for next-generation energy storage,but their commercialization is hindered by zinc anode challenges,notably parasitic reactions and dendrite growth.Herein,we... Aqueous zinc metal batteries(AZMBs)are promising candidates for next-generation energy storage,but their commercialization is hindered by zinc anode challenges,notably parasitic reactions and dendrite growth.Herein,we present a biodegradable biomass-derived protective layer,primarily composed of curcumin,as a zincophilic interface for AZMBs.The curcumin-based layer,fabricated via a homogeneous solution process,exhibits strong adhesion,uniform coverage,and robust mechanical integrity.Rich polar functional groups in curcumin facilitate homogeneous Zn~(2+)flux and suppress side reactions.The curcumin-based layer shows a favorable affinity for zinc trifluoromethanesulfonate(Zn(OTf)_(2))electrolyte,which is the representative of organic zinc salts,enabling optimal thickness for both protection and ion transport.The protected Zn anodes demonstrate an extended lifespan of 2500 h in symmetrical cells and a high Coulombic efficiency of 99.15%.Furthermore,Zn(OTf)_(2)-based system typically exhibits poor stability at high current densities.Fortunately,the lifespan of symmetrical cells was extended by 40-fold at the high current density.When paired with an Na V_(3)O_(8)·1.5H_(2)O(NVO)cathode,the system achieves 86.5%capacity retention after 3000 cycles at a large specific current density of 10 A g^(-1).These results underscore the efficacy of the curcumin-based protective layer in enhancing the reversibility and stability of metal electrodes,specifically relieving the instability of Zn(OTf)_(2)-based systems at high current densities,advancing its commercial viability. 展开更多
关键词 Aqueous zinc metal battery artificial layer CURCUMIN Zinc anode
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Artificial intelligence and machine learning-driven advancements in gastrointestinal cancer:Paving the way for precision medicine
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作者 Chahat Suri Yashwant K Ratre +2 位作者 Babita Pande LVKS Bhaskar Henu K Verma 《World Journal of Gastroenterology》 2026年第1期14-36,共23页
Gastrointestinal(GI)cancers remain a leading cause of cancer-related morbidity and mortality worldwide.Artificial intelligence(AI),particularly machine learning and deep learning(DL),has shown promise in enhancing can... Gastrointestinal(GI)cancers remain a leading cause of cancer-related morbidity and mortality worldwide.Artificial intelligence(AI),particularly machine learning and deep learning(DL),has shown promise in enhancing cancer detection,diagnosis,and prognostication.A narrative review of literature published from January 2015 to march 2025 was conducted using PubMed,Web of Science,and Scopus.Search terms included"gastrointestinal cancer","artificial intelligence","machine learning","deep learning","radiomics","multimodal detection"and"predictive modeling".Studies were included if they focused on clinically relevant AI applications in GI oncology.AI algorithms for GI cancer detection have achieved high performance across imaging modalities,with endoscopic DL systems reporting accuracies of 85%-97%for polyp detection and segmentation.Radiomics-based models have predicted molecular biomarkers such as programmed cell death ligand 2 expression with area under the curves up to 0.92.Large language models applied to radiology reports demonstrated diagnostic accuracy comparable to junior radiologists(78.9%vs 80.0%),though without incremental value when combined with human interpretation.Multimodal AI approaches integrating imaging,pathology,and clinical data show emerging potential for precision oncology.AI in GI oncology has reached clinically relevant accuracy levels in multiple diagnostic tasks,with multimodal approaches and predictive biomarker modeling offering new opportunities for personalized care.However,broader validation,integration into clinical workflows,and attention to ethical,legal,and social implications remain critical for widespread adoption. 展开更多
关键词 artificial intelligence Gastrointestinal cancer Precision medicine Multimodal detection Machine learning
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Integrating multi-omic liquid biopsies and artificial intelligence:The next frontier in early cancer detection
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作者 Esmaeil Mahmoudi Mona Ebrahimi Elham Bahramian 《Intelligent Oncology》 2026年第1期64-77,共14页
The integration of multi-omic liquid biopsies with artificial intelligence(AI)represents a rapidly evolving frontier in early cancer detection,offering the potential to enhance personalized medicine and improve patien... The integration of multi-omic liquid biopsies with artificial intelligence(AI)represents a rapidly evolving frontier in early cancer detection,offering the potential to enhance personalized medicine and improve patient outcomes.This review explores the current state and emerging directions of this approach,focusing on the synergistic value of combining genomics,epigenomics,transcriptomics,proteomics,and metabolomics with AIdriven analytics.We discuss advances in multi-analyte blood tests such as CancerSEEK,which have demonstrated promising multi-cancer detection capabilities in early studies,as well as efforts to integrate liquid biopsy data with imaging modalities to improve diagnostic performance.The review also highlights ongoing challenges,including the need for greater analytical sensitivity,improved specificity for early-stage disease,standardization of workflows,and harmonization with existing screening modalities.We outline the prospective—but still largely investigational—impact of these technologies on cancer management,including early detection,treatment monitoring,and minimal residual disease assessment,along with their potential economic implications.Ultimately,we envision a future in which multi-omic liquid biopsies integrated with AI may contribute to more effective,noninvasive cancer detection strategies,while recognizing that substantial validation,regulatory approval,and health-system integration are required before widespread clinical adoption can occur. 展开更多
关键词 Liquid biopsy Multi-omic integration artificial intelligence Early cancer detection
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The Application of Artificial Intelligence in Smart Education for Nursing Students
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作者 Yingdong Cao Xiaoxiao Lin +1 位作者 Zhenti Cui Qin Bai 《Journal of Clinical and Nursing Research》 2026年第1期83-88,共6页
Nursing education is undergoing a paradigm shift from skill training to clinical thinking cultivation.The integration of artificial intelligence technology offers technical possibilities for this transformation,but it... Nursing education is undergoing a paradigm shift from skill training to clinical thinking cultivation.The integration of artificial intelligence technology offers technical possibilities for this transformation,but it also brings about a deep tension between the cultivation of humanistic qualities and a standardized training.Based on the analysis of the practical forms of nursing smart education,this paper examines the cognitive gap between the deterministic feedback of virtual simulation systems and the complexity of real clinical scenarios,reveals the potential narrowing effect of data-driven ability profiling on the all-round development of nursing students,and then proposes the design logic of intelligent teaching resources centered on real clinical problems,a hierarchical teaching model with clear human-machine division of labor,and a dynamic assessment mechanism for technology application led by professional nursing teachers,in an attempt to find a balance between technological empowerment and humanistic commitment in smart nursing education. 展开更多
关键词 artificial Intelligence Nursing education Smart education Virtual simulation Adaptive learning
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Ethical and legal risks with hierarchical regulation of artificial intelligence in China’s medical field
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作者 Xin Xing Hao Qiu 《History and Philosophy of Medicine》 2026年第1期22-31,共10页
Background:Medical artificial intelligence(MAI)is a synthesis of medical science and artificial intelligence development,serving as a crucial field in the current advancement and application of AI.In the process of de... Background:Medical artificial intelligence(MAI)is a synthesis of medical science and artificial intelligence development,serving as a crucial field in the current advancement and application of AI.In the process of developing medical AI,there may arise not only legal risks such as infringement of privacy rights and health rights but also ethical risks stemming from violations of the principles of beneficence and non-maleficence.Methods:To effectively address the damages caused by MAI in the future,it is necessary to establish a hierarchical governance system with MAI.This paper examines the systematic collection of local practices in China and the induction and integration of legal remedies for the damage of MAI.Results:To effectively address the ethical and legal challenges of medical artificial intelligence,a hierarchical regulatory system should be established,which based on the impact of intervention measures on natural rights and differences in intervention timing.This paper finally obtains a legal hierarchical governance system corresponding to the ethical risks and legal risks of MAI in China.Conclusion:The Chinese government has formed a multi-agent governance system based on the impact of risks on rights and the timing of legal intervention,which provides a reference for other countries to follow up on the research on MAI risk management. 展开更多
关键词 medical artificial intelligence ethical risks legal risks legal layered regulation
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Artificial Intelligence Empowered New Materials:Discovery,Synthesis,Prediction to Validation
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作者 Ying Cao Hong Fu +4 位作者 Jian Lu Yuejiao Chen Titao Jing Xi Fan Bingang Xu 《Nano-Micro Letters》 2026年第4期114-152,共39页
Recent years have witnessed the significant breakthrough in the field of new materials discovery brought about by the artificial intelligence(AI).AI has successfully been applied for predicting the formability,reveali... Recent years have witnessed the significant breakthrough in the field of new materials discovery brought about by the artificial intelligence(AI).AI has successfully been applied for predicting the formability,revealing the properties,and guiding the experimental synthesis of materials.Rapid progress has been made in the integration of increasing database and improved computing power.Though some reviews present the development from their unique aspects,reviews from the view of how AI empowered both discovery of new materials and cognition of existing materials that covers the completed contents with two synergistical aspects are few.Here,the newest development is systematically reviewed in the field of AI empowered materials,reflecting advanced design of the intelligent systems for discovery,synthesis,prediction and validation of materials.First,background and mechanisms are briefed,after which the design for the AI systems with data,machine learning and automated laboratory included is illustrated.Next,strategies are summarized to obtain the AI systems for materials with improved performance which comprehensively cover the aspects from the in-depth cognizance of existing material and the rapid discovery of new materials,and then,the design thought for future AI systems in material science is pointed out.Finally,some perspectives are put forward. 展开更多
关键词 artificial intelligence Material discovery and cognition Design tactics Review and perspective
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Artificial intelligence-assisted biliary stent length selection for common bile duct strictures in endoscopic retrograde cholangiopancreatography:Model development and validation
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作者 Wen-Lin Zhang Xue-Jun Shao +5 位作者 Xuan-Yuan Dong Hong-Ting Shao Guang-Chao Li Zhen Li Ning Zhong Rui Ji 《Hepatobiliary & Pancreatic Diseases International》 2026年第1期76-82,共7页
Background:Biliary stent placement during endoscopic retrograde cholangiopancreatography(ERCP)is important for drainage in common bile duct(CBD)strictures,while the stent length is associated with many stent-related c... Background:Biliary stent placement during endoscopic retrograde cholangiopancreatography(ERCP)is important for drainage in common bile duct(CBD)strictures,while the stent length is associated with many stent-related complications.We aimed to develop an artificial intelligence(AI)model for stent length selection during ERCP.Methods:Images of the patients who underwent ERCP and were diagnosed with CBD strictures were collected.Training involved identifying and delineating the duodenoscope,CBD and guidewire,calculating the pixel distance of the target guidewire and determining the required biliary stent length based on the diameter of the duodenoscope.The performance of the model,accuracy for length calculation and the assistance for endoscopists were validated using the testing set.Results:A total of 794 images from 431 patients were included and data augmentation was conducted.The mean intersection over union(mIoU)for duodenoscope,CBD and guidewire were 90.46%,84.79%and 84.64%,respectively.The accuracy in identifying the strictures was 97.58%(121/124).The accuracy for stent length calculation achieved 85.95%(104/121)with an error margin of±1 cm.The mean absolute error(MAE)and mean relative error(MRE)of the AI model was 0.81 cm and 0.13,respectively.The AI model could reduce approximately 202 mGycm^(2)of the radiation exposure for each patient.It significantly improved both MAE and MRE for less experienced endoscopists(P=0.01 and P=0.02,respectively).Conclusions:The AI model could accurately identify duodenoscope,CBD and guidewire,enabling accurate strictures identification and stent length selection. 展开更多
关键词 Endoscopic retrograde CHOLANGIOPANCREATOGRAPHY artificial intelligence Common bile duct stricture Stent placement
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