4 results on '"Huang, Wennuo"'
Search Results
2. Knowledge, Attitude and Practice of Radiologists Regarding Artificial Intelligence in Medical Imaging.
- Author
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Huang, Wennuo, Li, Yuanzhe, Bao, Zhuqing, Ye, Jing, Xia, Wei, Lv, Yan, Lu, Jiahui, Wang, Chao, and Zhu, Xi
- Subjects
COMPUTER-assisted image analysis (Medicine) ,STRUCTURAL equation modeling ,MASTER'S degree ,ARTIFICIAL intelligence ,DIAGNOSTIC imaging - Abstract
Purpose: This study aimed to investigate the knowledge, attitudes, and practice (KAP) of radiologists regarding artificial intelligence (AI) in medical imaging in the southeast of China. Methods: This cross-sectional study was conducted among radiologists in the Jiangsu, Zhejiang, and Fujian regions from October to December 2022. A self-administered questionnaire was used to collect demographic data and assess the KAP of participants towards AI in medical imaging. A structural equation model (SEM) was used to analyze the relationships between KAP. Results: The study included 452 valid questionnaires. The mean knowledge score was 9.01± 4.87, the attitude score was 48.96± 4.90, and 75.22% of participants actively engaged in AI-related practices. Having a master's degree or above (OR=1.877, P=0.024), 5– 10 years of radiology experience (OR=3.481, P=0.010), AI diagnosis-related training (OR=2.915, P< 0.001), and engaging in AI diagnosis-related research (OR=3.178, P< 0.001) were associated with sufficient knowledge. Participants with a junior college degree (OR=2.139, P=0.028), 5– 10 years of radiology experience (OR=2.462, P=0.047), and AI diagnosis-related training (OR=2.264, P< 0.001) were associated with a positive attitude. Higher knowledge scores (OR=5.240, P< 0.001), an associate senior professional title (OR=4.267, P=0.026), 5– 10 years of radiology experience (OR=0.344, P=0.044), utilizing AI diagnosis (OR=3.643, P=0.001), and engaging in AI diagnosis-related research (OR=6.382, P< 0.001) were associated with proactive practice. The SEM showed that knowledge had a direct effect on attitude (β=0.481, P< 0.001) and practice (β=0.412, P< 0.001), and attitude had a direct effect on practice (β=0.135, P< 0.001). Conclusion: Radiologists in southeastern China hold a favorable outlook on AI-assisted medical imaging, showing solid understanding and enthusiasm for its adoption, despite half lacking relevant training. There is a need for more AI diagnosis-related training, an efficient standardized AI database for medical imaging, and active promotion of AI-assisted imaging in clinical practice. Further research with larger sample sizes and more regions is necessary. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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3. Artificial Intelligence Segmented Dynamic Video Images for Continuity Analysis in the Detection of Severe Cardiovascular Disease.
- Author
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Zhu, Xi, Xia, Wei, Bao, Zhuqing, Zhong, Yaohui, Fang, Yu, Yang, Fei, Gu, Xiaohua, Ye, Jing, and Huang, Wennuo
- Subjects
ARTIFICIAL intelligence ,CEREBROVASCULAR disease ,CARDIOVASCULAR diseases ,IMAGE analysis ,CARDIAC arrest ,VENTRICULAR fibrillation - Abstract
In this paper, an artificial intelligence segmented dynamic video image based on the process of intensive cardiovascular and cerebrovascular disease monitoring is deeply investigated, and a sparse automatic coding deep neural network with a four layers stack structure is designed to automatically extract the deep features of the segmented dynamic video image shot, and six categories of normal, atrial premature, ventricular premature, right bundle branch block, left bundle branch block, and pacing are achieved through hierarchical training and optimization. Accurate recognition of heartbeats with an average accuracy of 99.5%. It provides technical assistance for the intelligent prediction of high-risk cardiovascular diseases like ventricular fibrillation. An intelligent prediction algorithm for sudden cardiac death based on the echolocation network was proposed. By designing an echolocation network with a multilayer serial structure, an intelligent distinction between sudden cardiac death signal and non-sudden death signal was realized, and the signal was predicted 5 min before sudden death occurred, with an average prediction accuracy of 94.32%. Using the self-learning capability of stack sparse auto-coding network, a large amount of label-free data is designed to train the stack sparse auto-coding deep neural network to automatically extract deep representations of plaque features. A small amount of labeled data then introduced to micro-train the entire network. Through the automatic analysis of the fiber cap thickness in the plaques, the automatic identification of thin fiber cap-like vulnerable plaques was achieved, and the average overlap of vulnerable regions reached 87%. The overall time for the automatic plaque and vulnerable plaque recognition algorithm was 0.54 s. It provides theoretical support for accurate diagnosis and endogenous analysis of high-risk cardiovascular diseases. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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4. Study on the Patency of the Contralateral Iliac Vein After Stenting Across the Iliocaval Confluence With an Experimental In Vivo Model.
- Author
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Zhang, Xicheng, Huang, Wennuo, Yu, Huiming, Chen, Yong, Liu, Jiaxin, Gao, Qihang, and Zhao, Dengqiu
- Subjects
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THROMBOSIS risk factors , *INFERIOR vena cava surgery , *DOPPLER ultrasonography , *ANGIOGRAPHY , *ANIMAL experimentation , *VASCULAR diseases , *DOGS , *ILIAC vein , *VASCULAR resistance , *SURGICAL stents , *STENOSIS , *DISEASE complications - Abstract
Objective: Stenting is the preferred treatment for iliac vein lesions. For the treatment of occlusions in the junction of the iliac vein and the inferior vena cava (IVC), the stent needs to be positioned in the IVC to cover the lesion. However, the pathological changes in the contralateral iliac vein due to stent coverage on its ostium remain unclear. We observed the patency of the contralateral iliac vein via animal experiments. Methods: The stents were placed in the left iliac vein and extended into the IVC in 8 beagle dogs. Doppler ultrasonography, angiography, and histopathological examination were used to assess the patency and histopathological changes in the contralateral iliac vein. Results: Angiography showed patency of the contralateral iliac vein and no sign of thrombosis or stenosis. Twelve months after stenting, Doppler ultrasonography showed a stenotic change in the ostium of the contralateral iliac vein. The histopathological examination showed that the stent strut at the ostium of the contralateral iliac vein was mostly covered by the intima, and the cross-sectional stenosis rate was greater than 60%. Conclusions: The coverage of the iliac vein stent on the ostium of the contralateral iliac vein does not cause complete occlusion of the contralateral vein but can cause significant stenosis at the ostium of the contralateral iliac vein, which is considered to be a potential risk factor for thrombosis. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
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