4 results on '"Zhang, Chenhong"'
Search Results
2. The microbiota regulates hematopoietic stem and progenitor cell development by mediating inflammatory signals in the niche.
- Author
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Zhong, Dan, Jiang, Haowei, Zhou, Chengzhuo, Ahmed, Abrar, Li, Hongji, Wei, Xiaona, Lian, Qiuyu, Tastemel, Melodi, Xin, Hongyi, Ge, Mei, Zhang, Chenhong, and Jing, Lili
- Abstract
The commensal microbiota regulates the self-renewal and differentiation of hematopoietic stem and progenitor cells (HSPCs) in bone marrow. Whether and how the microbiota influences HSPC development during embryogenesis is unclear. Using gnotobiotic zebrafish, we show that the microbiota is necessary for HSPC development and differentiation. Individual bacterial strains differentially affect HSPC formation, independent of their effects on myeloid cells. Early-life dysbiosis in chd8
−/− zebrafish impairs HSPC development. Wild-type microbiota promote HSPC development by controlling basal inflammatory cytokine expression in kidney niche, and chd8−/− commensals elicit elevated inflammatory cytokines that reduce HSPCs and enhance myeloid differentiation. We identify an Aeromonas veronii strain with immuno-modulatory activities that fails to induce HSPC development in wild-type fish but selectively inhibits kidney cytokine expression and rebalances HSPC development in chd8−/− zebrafish. Our studies highlight the important roles of a balanced microbiome during early HSPC development that ensure proper establishment of lineal precursor for adult hematopoietic system. [Display omitted] • Microbiota depletion impairs HSPC development during embryogenesis in zebrafish • Disturbed microbiota in chd8−/− decreases HSPC formation and promotes myelopoiesis • Different strains induce different levels of cytokine expression in HSPC niche • Local cytokine expression controls HSPC formation and myeloid differentiation Zhong et al. show that commensal microbiota regulates normal HSPC development by mediating appropriate inflammatory cytokine expression in HSPC niche. The microbiota of chd8−/− zebrafish induces enhanced cytokine expression and impairs HSPC development. An Aeromonas strain selectively suppresses excessive cytokines in HSPC niche and restores HSPC development in chd8−/− zebrafish. [ABSTRACT FROM AUTHOR]- Published
- 2023
- Full Text
- View/download PDF
3. Impact of microbial transformation of food on health—from fermented foods to fermentation in the gastro-intestinal tract
- Author
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van Hylckama Vlieg, Johan ET, Veiga, Patrick, Zhang, Chenhong, Derrien, Muriel, and Zhao, Liping
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BIOSYNTHESIS , *BIOTRANSFORMATION (Metabolism) , *FERMENTATION , *FOOD microbiology , *GASTROINTESTINAL system , *FOOD composition , *NUTRITION , *MOLECULAR biology - Abstract
Fermentation of food components by microbes occurs both during certain food production processes and in the gastro-intestinal tract. In these processes specific compounds are produced that originate from either biotransformation reactions or biosynthesis, and that can affect the health of the consumer. In this review, we summarize recent advances highlighting the potential to improve the nutritional status of a fermented food by rational choice of food-fermenting microbes. The vast numbers of microbes residing in the human gut, the gut microbiota, also give rise to a broad array of health-active molecules. Diet and functional foods are important modulators of the gut microbiota activity that can be applied to improve host health. A truly multidisciplinary approach is required to increase our understanding of the molecular mechanisms underlying health beneficial effects that arise from the interaction of diet, microbes and the human body. [Copyright &y& Elsevier]
- Published
- 2011
- Full Text
- View/download PDF
4. Short-term wind speed prediction model based on GA-ANN improved by VMD.
- Author
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Zhang, Yagang, Pan, Guifang, Chen, Bing, Han, Jingyi, Zhao, Yuan, and Zhang, Chenhong
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WIND speed , *WIND power , *LOAD forecasting (Electric power systems) , *PREDICTION models , *HILBERT-Huang transform , *WIND forecasting , *ARTIFICIAL neural networks , *CLEAN energy - Abstract
Wind power, as a potential new energy generation technology, is gradually developing towards to the mainstream energy in the world. However, the inherent random volatility of wind brings severe challenges to the safe operation of the grid and the reliability of power supply, one of the effective ways to solve the problem is to improve the accuracy of wind speed prediction. However, most of wind speed prediction model cannot well mine the inherent regularity of wind speed data. Therefore, this paper introduces variational mode decomposition (VMD) algorithm. And the Short-term Wind Speed Prediction Model based on GA-ANN improved by VMD is proposed, which can effectively improve the accuracy of wind speed prediction. Firstly, hierarchical cluster method in this paper is employed to extract the historical data with high similarity to the predicted day. And then the appropriate number of decompositions K is selected by judging the value of sample entropy, so that the extracted historical data is decomposed into K subsequences by the variational mode decomposition. Next, with the global optimization ability of genetic algorithm, the artificial neural network is optimized to improve the forecasting performance. Finally, the short-term wind speed forecasting model based on GA-ANN improved by VMD is employed to predict the wind speed of each subsequence and superimposed them to obtain the final wind speed prediction sequence. The results in this paper show that (1) the model can find the periodic fluctuation of wind speed through historical data by hierarchical cluster method, so that significantly improving the accuracy of short-term wind speed prediction; (2) for the wind speed prediction, the error value of GA-ANN model is smaller than that of BP neural network; (3) in view of the inherent nature of the wind, the model proposed in this paper can use VMD to decompose the wind speed signal to obtain different scale fluctuations or trends, so as to fully exploit the potential information of wind speed, and obtain more accurate prediction results. The research work can help the relevant departments of the power system to accurately assess the risk of power grid operation, make a reasonable generation plan, effectively reduce the cost of power operation, and then greatly promote the development of green energy. • Proposing a new windspeedprediction model named HC-VMD-GA-BPmodel. • Using hierarchical cluster methodtoselect the historical wind speed data. • VMD is introduced to decomposethe original wind speed sequence. • Artificial neural networkisoptimized by GA to improve the prediction performance. • The HC-VMD-GA-BP model is comparedwith other models to verify itseffectiveness and high prediction accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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