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The application and research on medical college of dynamic network training in surgical practice teaching
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2015
Jahr
Abstract
Objective: To research the application of dynamic-network probation in combination with traditional clinic probation in surgical practice teaching. Methods: Sixty four people in the undergraduate 2012(1, 2 session) set as the experimental group. 40 people in the undergraduate 2012(biochemical class) set as the control group. The traditional clinic probation was applied to the control group. The traditional clinic probation was applied to the control group. The dynamic-network probation in combination with traditional clinic probation was applied to experimental group. The teaching effects were evaluated and compared roundly. Results: The teaching effects of experimental group was significantly better than control group in all respects(x2=7.512, x2=6.797, x2=7.778, x2=4.768, x2=8.541; P0.05). Satisfaction ratio of experimental group was significantly higher than that of control group in all respects of surgery teaching(x2=4.475, x2=5.900, x2=5.005, x2=5.904, x2=4.502; P0.05). The examination performance of experimental group was significantly better than control group in theoretical knowledge and clinical skills testing(t=25.840, t=19.319; P0.05). Conclusion: Dynamicnetwork probation in combination with traditional clinical probation has a great effect on surgical practice teaching and worth to be applied.
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