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1.
Shanghai Journal of Preventive Medicine ; (12): 453-457, 2021.
Article in Chinese | WPRIM | ID: wpr-881485

ABSTRACT

Objective:To analyze and compare the differences between the epidemiological data and clinical indicators of confirmed and suspected undiagnosed cases of COVID-19 in Changning District, Shanghai. Methods:A retrospective comparative study was conducted. We included 20 confirmed and 34 suspected but undiagnosed COVID-19 cases from January 20 to February 29, 2020. We analyzed the differences in epidemiological history, early clinical symptoms, blood routine indicators, and clinical imaging characteristics between the two groups. Results:The epidemic status of COVID-19 in Changning District of Shanghai was mainly imported, and most cases were promptly confirmed. Early clinical symptoms of confirmed and suspected undiagnosed cases often manifested as respiratory symptoms such as fever and dry cough. Compared with the confirmed cases, the cell counts of leukocytes, eosinophils, and neutrophils in suspected undiagnosed cases were significantly higher. Also, the concentration of serum C-reactive protein in suspected cases was higher than that in confirmed cases (P=0.230). The clinical imaging manifestations of confirmed cases were mainly ground glass opacity (GGO) scattered in both lung leaves, while the suspected undiagnosed cases mainly manifested as plain patch opacity, and the distribution of GGO was more irregular. Conclusion:There exists significant difference in blood routine indicators and clinical imaging features between confirmed and suspected cases of COVID-19.

2.
Chinese Journal of Preventive Medicine ; (12): 365-370, 2007.
Article in Chinese | WPRIM | ID: wpr-270489

ABSTRACT

<p><b>OBJECTIVE</b>To study the prediction model of O. hupensis in the lake and marshland regions in order to provide methodological basis for quantitative study of O. hupensis.</p><p><b>METHODS</b>The research sites were randomly selected from the bottomlands along Qiupu River in the Guichi District, Anhui Province. A random and stratified sampling method was administrated according to the type of vegetation; the frame size of snail survey was 0.11 m2. Snail data was collected by crosscheck-random sampling inspection survey. Elevation, soil temperature and air temperature, height of vegetation, soil humidity and types of vegetation were measured through GPS machine, T&D Recorder for Windows, tape measure and attemperator. All the data were doubly inputted into the computer and checked. The final dataset for developing the prediction model was set up after necessary data preprocessing, such as, recoding the variable of elevation. The generalized linear models were used to develop the prediction model, and the statistics of deviance and AIC were used to determine the best model structure. Model diagnostics and model evaluation of efficiency were performed with the determined best model structure.</p><p><b>RESULTS</b>The sample size was 162, and there were 6 explanatory variable including 2 categorical variables and 4 quantitative variables. A complicated relationship was observed among all the variables. Snail was positively associated with height of vegetation (r = 0.36), while negatively associated with soil humidity (r = - 0.22), and the air temperature had a close positive relations with soil temperature (r = 0.59), and the soil temperature was negatively associated with height of vegetation (r = - 0.36), the soil humidity had negative relations with the soil and air temperature (r = -0.34 and -0.12). The best structure fitting for the liner model selected in gamma distribution was the error distribution, reciprocal as the conjunction function in mathematics, and the mean square as the variance function. The results showed that the elevation, soil humidity, soil temperature, types and the height of vegetation were statistically significant to predict the O. hupensis, while t-values were -3.202, 3.124, -1.989, 2.668 and -2.371, respectively, and P-values were 0.00166, 0.00214, 0.04849, 0.00846 and 0.01897 respectively.</p><p><b>CONCLUSION</b>The generalized linear models can be used to develop the predictive model, which could broaden the area of quantitative study for O. hupensis.</p>


Subject(s)
Animals , Environmental Monitoring , Methods , Geographic Information Systems , Models, Statistical , Snails , Wetlands
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