1.Most advance on chemical and biological investigations of gorgonian-octocorals.
Xingyun CHAI ; Liying TANG ; Hui LEI ; Changcai BAI ; Jianfan SUN ; Yunqiu LI ; Yonghong LIU
China Journal of Chinese Materia Medica 2012;37(5):667-685
This review presents the most recent chemical and biological investigations on one of the marine invertebrates, gorgonian octocoral. It summarizes all 432 new compounds published in 2002-2009, which consists of 46 sesquiterpenoids (including 2 new natural products, NNP), 282 diterpenoids (including 4 from Pennatulacea octocoral and one artifact), 76 steroids, and 29 alkaloids or other types (2 NNP included). In this paper, according to the structure division, the new compounds are described in combination with the taxonomy of the investigated animals, and its simultaneous bioactivity results. Novel skeletons and complex structures are paid most emphasis on its features, means of structural elucidation and the proposed biogenesis pathway. The source of all new compounds and the different diterpenoid skeleton types are all listed and analyzed, as well as the commonly used Chinese names or some proposed ones for diterpenoid skeletons. Furthermore, this papers deals with all biological test toward the gorgonian new metabolites, i.e. anti-cancer, anti-inflammatory, anti-bacterial(against Staphylococcus aureus bacteria, Mycobacterium tuberculosis etc), anti-malaria, and anti-fouling as well, in which anti-cancer activity and cytotoxicity were additionally, a discussion and prospect are proposed regarding chemical overview on gorgonian. This review, hopefully, can be useful in proving data and references for further chemical and biological research of China sea gorgonian, for the studies on chemical ecology, and for the discovery of new and bioactive compounds or the marine-derived leading targets.
Alkaloids
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analysis
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Animals
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Anthozoa
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chemistry
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physiology
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Diterpenes
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analysis
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Sesquiterpenes
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analysis
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Steroids
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analysis
2.Quantitative analysis of risk assessment indicators for re-introduction of imported malaria in China
Liying CHAI ; Yuanyuan CAO ; Li ZHAO ; Kaixuan LIU ; Zeyin CHONG ; Yan LU ; Guoding ZHU ; Jun CAO ; Guangyu LU
Chinese Journal of Schistosomiasis Control 2023;35(6):604-613
Objective To quantitatively analyze the risk indicators of re-introduction of imported malaria in China and their weighting coefficients, so as to investigate the difference in the contribution of risk indicators included in the current risk assessment framework for re-introduction of imported malaria in China to the risk assessment of re-introduction of imported malaria. Methods Publications pertaining to the risk assessment framework for re-introduction of imported malaria in China that reported the risk indicators and their weighting coefficients were retrieved in PubMed, Web of Science, CNKI, Wanfang Data, and VIP with terms of “malaria”, “re-introduction/re-transmission/re-establishment”, “risk assessment/risk evaluation/risk prediction” from the inception of the database through 3 August 2023, and literature search was performed in Google Scholar to ensure the comprehensiveness of the retrieval. Basic characteristics of included studies were extracted using pre-designed information extraction forms by two investigators, and data pertaining to risk indicators of re-introduction of imported malaria were cross-checked by these two investigators. The risk indicators included in the risk assessment framework for re-introduction of imported malaria in China and their weighting coefficients were visualized with the Nightingale’s rose diagrams using the software R 4.2.1, and the importance of risk indictors was evaluated with the frequency of risk indicators included in the risk assessment framework and the ranking of weighting coefficients of risk indicators. In addition, the capability of risk indicators screened by different weighting methods was compared by calculating the ratio of the maximum to the minimum of the weighting coefficients of the risk indicators screened by different weighting methods. Results A total of 2 138 publications were retrieved, and following removal of duplications and screening, a total of 8 publications were included in the final analysis. In these 8 studies, 8 risk assessment frameworks for re-introduction of imported malaria in China and 52 risk indicators of re-introduction of imported malaria were reported, in which number of imported malaria cases (n = 8) and species of malaria vectors were more frequently included in the risk assessment frameworks (n = 8), followed by species of imported malaria parasites (n = 6) and population density of local malaria vectors (n = 6), and species of local malaria vectors (n = 6), number of imported malaria cases (n = 5) and species of imported malaria parasites had the three highest weighting coefficients (n = 4). The weighting methods included expert scoring method, combination of expert scoring method and analytic hierarchy process, and combination of expert scoring method and entropy weight method in these 8 studies, and the ratios of the maximum to the minimum of the weighting coefficients of the risk indicators screened by the expert scoring method were 1.143 to 2.241, while the ratios of the maximum to the minimum of the weighting coefficients of the risk indicators screened by combination of the expert scoring method and analytic hierarchy process were 34.970 to 162.000. Conclusions Number of imported malaria cases, species of imported malaria parasites, species of local malaria vectors and population density of local malaria vectors are core indicators in the current risk assessment framework for re-introduction of imported malaria in China. Combination of the expert scoring method and analytic hierarchy process is superior to the expert scoring method alone for weighting the risk indicators.
3.Risk predictive models of healthcare-seeking delay among imported malaria patients in Jiangsu Province based on the machine learning
Yuying ZHANG ; Yuanyuan CAO ; Kai YANG ; Weiming WANG ; Mengmeng YANG ; Liying CHAI ; Jiyue GU ; Mengyue LI ; Yan LU ; Huayun ZHOU ; Guoding ZHU ; Jun CAO ; Guangyu LU
Chinese Journal of Schistosomiasis Control 2023;35(3):225-235
Objective To create risk predictive models of healthcare-seeking delay among imported malaria patients in Jiangsu Province based on machine learning algorithms, so as to provide insights into early identification of imported malaria cases in Jiangsu Province. Methods Case investigation, first symptoms and time of initial diagnosis of imported malaria patients in Jiangsu Province in 2019 were captured from Infectious Disease Report Information Management System and Parasitic Disease Prevention and Control Information Management System of Chinese Center for Disease Control and Prevention. The risk predictive models of healthcare-seeking delay among imported malaria patients were created with the back propagation (BP) neural network model, logistic regression model, random forest model and Bayesian model using thirteen factors as independent variables, including occupation, species of malaria parasite, main clinical manifestations, presence of complications, severity of disease, age, duration of residing abroad, frequency of malaria parasite infections abroad, incubation period, level of institution at initial diagnosis, country of origin, number of individuals travelling with patients and way to go abroad, and time of healthcare-seeking delay as a dependent variable. Logistic regression model was visualized using a nomogram, and the nomogram was evaluated using calibration curves. In addition, the efficiency of the four models for prediction of risk of healthcare-seeking delay among imported malaria patients was evaluated using the area under curve (AUC) of receiver operating characteristic curve (ROC). The importance of each characteristic was quantified and attributed by using SHAP to examine the positive and negative effects of the value of each characteristic on the predictive efficiency. Results A total of 244 imported malaria patients were enrolled, including 100 cases (40.98%) with the duration from onset of first symptoms to time of initial diagnosis that exceeded 24 hours. Logistic regression analysis identified a history of malaria parasite infection [odds ratio (OR) = 3.075, 95% confidential interval (CI): (1.597, 5.923)], long incubation period [OR = 1.010, 95% CI: (1.001, 1.018)] and seeking healthcare in provincial or municipal medical facilities [OR = 12.550, 95% CI: (1.158, 135.963)] as risk factors for delay in seeking healthcare among imported malaria cases. BP neural network modeling showed that duration of residing abroad, incubation period and age posed great impacts on delay in healthcare-seek among imported malaria patients. Random forest modeling showed that the top five factors with the greatest impact on healthcare-seeking delay included main clinical manifestations, the way to go abroad, incubation period, duration of residing abroad and age among imported malaria patients, and Bayesian modeling revealed that the top five factors affecting healthcare-seeking delay among imported malaria patients included level of institutions at initial diagnosis, age, country of origin, history of malaria parasite infection and individuals travelling with imported malaria patients. ROC curve analysis showed higher overall performance of the BP neural network model and the logistic regression model for prediction of the risk of healthcare-seeking delay among imported malaria patients (Z = 2.700 to 4.641, all P values < 0.01), with no statistically significant difference in the AUC among four models (Z = 1.209, P > 0.05). The sensitivity (71.00%) and Youden index (43.92%) of the logistic regression model was higher than those of the BP neural network (63.00% and 36.61%, respectively), and the specificity of the BP neural network model (73.61%) was higher than that of the logistic regression model (72.92%). Conclusions Imported malaria cases with long duration of residing abroad, a history of malaria parasite infection, long incubation period, advanced age and seeking healthcare in provincial or municipal medical institutions have a high likelihood of delay in healthcare-seeking in Jiangsu Province. The models created based on the logistic regression and BP neural network show a high efficiency for prediction of the risk of healthcare-seeking among imported malaria patients in Jiangsu Province, which may provide insights into health management of imported malaria patients.