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多普勒组织成像观察培哚普利对心功能的影响(附80例分析)
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作者 李春敏 张先东 +1 位作者 高洁 王丽敏 《医学影像学杂志》 2002年第6期440-442,共3页
目的 :采用多普勒组织成像 (DTI)方法定量观察培哚普利 (perindopril)对老年人陈旧性心肌梗塞患者心功能的影响。方法 :80例患者随机分成两组 ,试验组为培哚普利 (4mg,qd ,4 0例 )与消心痛 (10mg,tid)联用 ,对照组为消心痛(10mg ,tid)... 目的 :采用多普勒组织成像 (DTI)方法定量观察培哚普利 (perindopril)对老年人陈旧性心肌梗塞患者心功能的影响。方法 :80例患者随机分成两组 ,试验组为培哚普利 (4mg,qd ,4 0例 )与消心痛 (10mg,tid)联用 ,对照组为消心痛(10mg ,tid)单用组。疗程为 16周。治疗前后患者均行常规二维超声 (2 DE)及DTI检查 ,采用DTI重点测定二尖瓣环(MVR)收缩期运动速度 (MVR Vs)、舒张早期运动速度 (MVR DeV)、舒张晚期运动速度 (MVR DaV) (速度单位为m/s) ,结合M型超声测定左心功能方法测出左室射血分数 (EF)。结果 :试验组治疗前后MVR Vs为 0 .0 76± 0 .0 14和 0 .0 87± 0 .0 13(P <0 .0 1) ;MVR DeV为 0 .0 79± 0 .0 17和 0 .0 88± 0 .0 16 (P <0 .0 5 ) ;MVR DaV为 0 .0 95± 0 .0 14和 0 .10 4± 0 .0 14 (P <0 0 1) ,以及EF为 0 .5 4 2± 0 .0 4 8和 0 .6 81± 0 .0 5 4 (P <0 .0 1)。对照组EF治疗前后为 0 .5 34± 0 .0 4 3和 0 .5 79± 0 .0 4 2 (P <0 0 1) ,而DTI观察指标治疗前后对比无统计学差异。结论 :DTI可定量分析左室壁心肌收缩与舒张功能为临床观察药物疗效、合理选择药物及预后判断提供了定量指标。 展开更多
关键词 多普勒组织成像 陈旧性心肌梗塞 培哚普利 左心功能
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Comparative analysis of GF-1,HJ-1,and Landsat-8 data for estimating the leaf area index of winter wheat 被引量:16
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作者 LI He CHEN Zhong-xin +4 位作者 JIANG Zhi-wei WU Wen-bin REN Jian-qiang LIU Bin Tuya Hasi 《Journal of Integrative Agriculture》 SCIE CAS CSCD 2017年第2期266-285,共20页
Using simultaneously collected remote sensing data and field measurements, this study firstly assessed the consistency and applicability of China high-resolution earth observation system satellite 1 (GF-1) wide fiel... Using simultaneously collected remote sensing data and field measurements, this study firstly assessed the consistency and applicability of China high-resolution earth observation system satellite 1 (GF-1) wide field of view (WFV) camera, environment and disaster monitoring and forecasting satellite (H J-l) charge coupled device (CCD), and Landsat-8 opera- tional land imager (OLI) data for estimating the leaf area index (LAI) of winter wheat via reflectance and vegetation indices (VIs). The accuracies of these LAI estimates were then assessed through comparison with an empirical model and the PROSAIL radiative transfer model. The effects of radiation calibration, spectral response functions, and spatial resolution on discrepancies in the LAI estimates between the different sensors were also analyzed. The results yielded the following observations: (1) The correlation between reflectance from different sensors is relative good, with the adjusted coefficients of determination (R2) between 0.375 to 0.818. The differences in reflectance are ranging from 0.002 to 0.054. The correlation between VIs from different sensors is high with the R2 between 0.729 and 0.933. The differences in the VIs are ranging from 0.07 to 0.156. These results show the three sensors' images can all be used for cross calibration of the reflectance and VIs. (2) The four VIs from the three sensors are all demonstrated to be highly correlated with LAI (R2 between 0.703 and 0.849). The linear models associated with the 2-band enhanced vegetation index (EVI2), which feature the highest R2 (higher than 0.746) and the lowest root mean square errors (RMSE) (less than 0.21), were selected to estimate the winter wheat LAI. The accuracy of the estimated LAI from Landsat-8 was the highest, with the relative errors (RE) of 2.18% and an RMSE of 0.13, while the H J-1 was the lowest, with the RE of 2.43% and the RMSE of 0.15. (3) The inversion errors in the different sensors' LAI estimates using the PROSAIL model are small. The accuracy of the GF-1 is the highest with the RE of 3.44%, and the RMSE of 0.22, whereas that of the H J-1 is the lowest with the RE of 4.95%, and the RMSE of 0.26. (4) The effects of the spectral response function and radiation calibration for the different sensors are small and can be ignored, but the effects of spatial resolution are significant and must be taken into consideration in practical applications. 展开更多
关键词 GF-1 WFV H J-1 CCD landsat-80li leaf area index PROSAIL vegetation indices
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Quantitative extraction of the bedrock exposure rate based on unmanned aerial vehicle data and Landsat-80LI image in a karst environment 被引量:5
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作者 Hongyan WANG Qiangzi LI +1 位作者 Xin DU Longcai ZHAO 《Frontiers of Earth Science》 SCIE CAS CSCD 2018年第3期481-490,共10页
In the karst regions of southwest China, rocky desertification is one of the most serious problems in land degradation. The bedrock exposure rate is an important index to assess the degree of rocky desertification in ... In the karst regions of southwest China, rocky desertification is one of the most serious problems in land degradation. The bedrock exposure rate is an important index to assess the degree of rocky desertification in karst regions. Because of the inherent merits of macro-scale, frequency, efficiency, and synthesis, remote sensing is a promising method to monitor and assess karst rocky desertification on a large scale. However, actual measurement of the bedrock exposure rate is difficult and existing remote-sensing methods cannot directly be exploited to extract the bedrock exposure rate owing to the high complexity and heterogeneity of karst environments. Therefore, using unmanned aerial vehicle (UAV) and Landsat-8 Operational Land Imager (OLI) data for Xingren County, Guizhou Province, quantitative extraction of the bedrock exposure rate based on multi-scale remote-sensing data was developed. Firstly, we used an object-oriented method to carry out accurate classification of UAV images. From the results of rock extraction, the bedrock exposure rate was calculated at the 30 m grid scale. Parts of the calculated samples were used as training data; other data were used for model validation. Secondly, in each grid the band reflectivity ofLandsat-80LI data was extracted and a variety of rock and vegetation indexes (e.g., NDVI and SAVI) were calculated. Finally, a network model was established to extract the bedrock exposure rate. The correlation coefficient of the network model was 0.855, that of the validation model was 0.677 and the root mean square error of the validation model was 0.073. This method is valuable for wide-scale estimation of bedrock exposure rate in karst environments. Using the quantitative inversion model, a distribution map of the bedrock exposure rate in Xingren County was obtained. 展开更多
关键词 bedrock exposure rate quantitative extraction UAV and landsat-80li data karst rocky desertification
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Estimation of rice phenology date using integrated HJ-1 CCD and Landsat-8 OLI vegetation indices time-series images 被引量:3
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作者 Jing WANG Jing-feng HUANG +7 位作者 Xiu-zhen WANG Meng-ting JIN Zhen ZHOU Qiao-ying GUO Zhe-wen ZHAO Wei-jiao HUANG Yao ZHANG Xiao-dong SONG 《Journal of Zhejiang University-Science B(Biomedicine & Biotechnology)》 SCIE CAS CSCD 2015年第10期832-844,共13页
Accurate estimation of rice phenology is of critical importance for agricultural practices and studies. However, the accuracy of phenological parameters extracted by remote sensing data cannot be guaranteed because of... Accurate estimation of rice phenology is of critical importance for agricultural practices and studies. However, the accuracy of phenological parameters extracted by remote sensing data cannot be guaranteed because of the influence of climate, e.g. the monsoon season, and limited available remote sensing data. In this study, we integrate the data of H J-1 CCD and Landsat-8 operational land imager (OLI) by using the ordinary least-squares (OLS) and construct higher temporal resolution vegetation indices (VIs) time-series data to extract the phenological param- eters of single-cropped rice. Two widely used VIs, namely the normalized difference vegetation index (NDVI) and 2-band enhanced vegetation index (EVI2), were adopted to minimize the influence of environmental factors and the intrinsic difference between the two sensors. Savitzky-Golay (S-G) filters were applied to construct continuous VI profiles per pixel. The results showed that, compared with NDVI, EVI2 was more stable and comparable between the two sensors. Compared with the observed phenological data of the single-cropped rice, the integrated VI time-series had a relatively low root mean square error (RMSE), and EVI2 showed higher accuracy compared with NDVI. We also demonstrate the application of phenology extraction of the single-cropped rice in a spatial scale in the study area. While the work is of general value, it can also be extrapolated to other regions where qualified remote sensing data are the bottleneck but where complementary data are occasionally available. 展开更多
关键词 Phenological parameters INTERCAliBRATION Vegetation index H J-1 CCD landsat-80li
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