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精准护理干预在老年2型糖尿病护理中的实施效果评价
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作者 赵贵娟 陈明诺 王彩英 《中外医疗》 2024年第15期148-151,共4页
目的 研究精准护理干预对老年2型糖尿病(Type 2 Diabetes Mellitus,T2DM)的效果。方法 简单随机选取2023年3—10月邹城市人民医院内分泌科室收治的60例老年T2DM患者为研究对象,按不同时间段分组,2023年7—10月作为研究组和2023年3—6月... 目的 研究精准护理干预对老年2型糖尿病(Type 2 Diabetes Mellitus,T2DM)的效果。方法 简单随机选取2023年3—10月邹城市人民医院内分泌科室收治的60例老年T2DM患者为研究对象,按不同时间段分组,2023年7—10月作为研究组和2023年3—6月作为对照组,分析两组患者血糖指标、自我管理能力以及并发症发生率。结果 研究组护理后空腹血糖(Fasting Blood Glucose,FBG)为(4.28±1.11)mmol/L、餐后2 h血糖(2-hour Postprandial Blood Glucose,2 hBG)为(5.18±1.13)mmol/L低于对照组的(6.38±1.01)、(8.23±1.22)mmol/L,差异有统计学意义(t=7.664、10.046,P均<0.05)。研究组护理后合理饮食、坚持锻炼、生活规律、症状管理以及情绪管理评分高于对照组,差异有统计学意义(P均<0.05)。结论 对于老年T2DM患者,需要持续进行治疗和护理,以便有效地管理血糖水平和相关的代谢失衡,缓解其临床症状,并提高其生活品质。将精准护理方式运用在T2DM老年患者护理中,可改善其血糖指标、自我管理能力。 展开更多
关键词 精准护理 常规护理 老年2型糖尿病 血糖指标 自我管理
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Research on optimized GA-SVM vehicle speed prediction model based on driver-vehicle-road-traffic system 被引量:5
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作者 LI YuFang chen mingnuo +1 位作者 LU XiaoDing ZHAO WanZhong 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2018年第5期782-790,共9页
The accurate prediction of vehicle speed plays an important role in vehicle's real-time energy management and online optimization control. However, the current forecast methods are mostly based on traffic conditio... The accurate prediction of vehicle speed plays an important role in vehicle's real-time energy management and online optimization control. However, the current forecast methods are mostly based on traffic conditions to predict the speed, while ignoring the impact of the driver-vehicle-road system on the actual speed profile. In this paper, the correlation of velocity and its effect factors under various driving conditions were firstly analyzed based on driver-vehicle-road-traffic data records for a more accurate prediction model. With the modeling time and prediction time considered separately, the effectiveness and accuracy of several typical artificial-intelligence speed prediction algorithms were analyzed. The results show that the combination of niche immunegenetic algorithm-support vector machine(NIGA-SVM) prediction algorithm on the city roads with genetic algorithmsupport vector machine(GA-SVM) prediction algorithm on the suburb roads and on the freeway can sharply improve the accuracy and timeliness of vehicle speed forecasting. Afterwards, the optimized GA-SVM vehicle speed prediction model was established in accordance with the optimized GA-SVM prediction algorithm at different times. And the test results verified its validity and rationality of the prediction algorithm. 展开更多
关键词 driver-vehicle-road-traffic data records vehicle speed forecast optimized GA-SVM mode
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