1.CLINICAL ANALYSIS OF TEN PATIENTS WITH RADIATION PNEUMONITIS
Jishun HU ; Zhongji MA ; Zeda JIANG
Chinese Journal of Radiation Oncology 1992;0(04):-
From Jan. 1987 to Dec. 1988, a total of 230 patients (135 lung cancer, 95 breast cancer) were treated by irradiation. The frequency of radiation pneumonitis was 5.1%(7/135) in lung cancer and 3.1%(3/95) in breast cancer. The frequency of lung cancer (n=16) complicated with pleunal effusion and treated by whole chest moving-strip irradiation was 31.2%(5/16) as compared with 2.3%(5/214) in those treated by the conventional radiation. The incidence of radiation pneumonitis was related to dose in the target volume, area of radiation and chemotherapy before radiotherapy.
2.RADIOTHERAPY OF MALIGNANT PLEURAL EFFUSION WITH MOVING STRIP TECHNIQUE
Jishun HU ; Zhongji MA ; Zeda JIANG
Chinese Journal of Radiation Oncology 1992;0(01):-
From Oct. 1985 through 1989, 38 patients with malignant pleural effusion were treated with 60Co moving strip technic. Complete response was 19/38 and marked response 10/38. The 1-,2-, and 3-year survival rates were 42.9%, 33.2% and 4.8% in radiation only group. The 1-, 2-, and 3 year survial rates were 47.1%, 35.3%, 11.8% in radiation combined with chemotherapy group. It is proved that radiation be surperior to intracavitary chemotherapy or radiation combind with systemic chemotherapy. This treatmet is safe and well tolerated by patients.
3.A study on the rapidly non-destructive detection method of Huoxiang Zhengqi oral liquid using near infrared spectroscopy
Qian LI ; Le-ting SI ; Yan-qin HE ; Jun WANG ; Tao PENG ; Zi-liang DONG ; Yong-jiang WU
Acta Pharmaceutica Sinica 2022;57(2):453-459
Based on near infrared spectroscopy and high performance liquid chromatography, this paper established the regression relationship between near infrared spectroscopy and index component content of Huoxiang Zhengqi oral liquid, so as to realize the rapid detection of index component content based on near infrared spectroscopy. Magnolol, honokiol and hesperidin were used as the quality indexes of Huoxiang Zhengqi oral liquid. After using the first derivative and normalization pretreatment method, characteristic variables were screened by CARS, and the correction model was finally established by partial least-squares regression (PLSR) method. The method accuracy was evaluated with the external validation, and the prediction results were tested for significance. The results indicated that when the near infrared spectrum was scanned through the bottle, the model's correlation coefficients of prediction (
4.Application of near infrared spectroscopy to predict contents of various lactones in chromatographic process of Ginkgo Folium.
Yan-Qin HE ; Chu-Hong ZONG ; Jun WANG ; Qian LI ; Jun WANG ; Yong-Jiang WU ; Yong CHEN ; Xue-Song LIU
China Journal of Chinese Materia Medica 2022;47(5):1293-1299
This study established a method for rapid quantification of terpene lactone, bilobalide, ginkgolide C, ginkgolide A and ginkgolide B in the chromatographic process of Ginkgo Folium based on near infrared spectroscopy(NIRS). The effects of competitive adaptive reweighting sampling(CARS), random frog(RF), and synergy interval partial least squares(siPLS) on the performance of partial least squares regression(PLSR) model were compared to the reference values measured by HPLC. Among them, the correlation coefficients of prediction(Rp) of validation sets of terpene lactone, bilobalide, and ginkgolide C were all higher than 0.98, and the relative standard errors of prediction(RSEPs) were 5.87%, 6.90% and 6.63%, respectively. Aiming at ginkgolide A and ginkgolide B with relatively low content, the genetic algorithm joint extreme learning machine(GA-ELM) was used to establish the optimized quantitative analysis model. Compared with CARS-PLSR model, the CARS-GA-ELM models of ginkgolide A and ginkgolide B exhibited a reduction in RSEP from 15.65% to 8.52% and from 21.28% to 10.84%, respectively, which met the needs of quantitative ana-lysis. It has been proved that NIRS can be used for the rapid detection of various lactone components in the chromatographic process of Ginkgo Folium.
Chromatography, High Pressure Liquid
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Ginkgo biloba
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Lactones/analysis*
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Least-Squares Analysis
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Spectroscopy, Near-Infrared/methods*
5.Rapid determination of active components in Ginkgo biloba leaves by near infrared spectroscopy combined with genetic algorithm joint extreme learning machine.
Hong-Fei NI ; Le-Ting SI ; Jia-Peng HUANG ; Qiong ZAN ; Yong CHEN ; Lian-Jun LUAN ; Yong-Jiang WU ; Xue-Song LIU
China Journal of Chinese Materia Medica 2021;46(1):110-117
Near-infrared spectroscopy(NIRS) combined with band screening method and modeling algorithm can be used to achieve the rapid and non-destructive detection of the traditional Chinese medicine(TCM) production process. This paper focused on the ginkgo leaf macroporous resin purification process, which is the key technology of Yinshen Tongluo Capsules, in order to achieve the rapid determination of quercetin, kaempferol and isorhamnetin in effluent. The abnormal spectrum was eliminated by Mahalanobis distance algorithm, and the data set was divided by the sample set partitioning method based on joint X-Y distances(SPXY). The key information bands were selected by synergy interval partial least squares(siPLS); based on that, competitive adaptive reweighted sampling(CARS), successive projections algorithm(SPA) and Monte Carlo uninformative variable(MC-UVE) were used to select wavelengths to obtain less but more critical variable data. With selected key variables as input, the quantitative analysis model was established by genetic algorithm joint extreme learning machine(GA-ELM) algorithm. The performance of the model was compared with that of partial least squares regression(PLSR). The results showed that the combination with siPLS-CARS-GA-ELM could achieve the optimal model performance with the minimum number of variables. The calibration set correlation coefficient R_c and the validation set correlation coefficient R_p of quercetin, kaempferol and isorhamnetin were all above 0.98. The root mean square error of calibration(RMSEC), the root mean square error of prediction(RMSEP) and the relative standard errors of prediction(RSEP) were 0.030 0, 0.029 2 and 8.88%, 0.041 4, 0.034 8 and 8.46%, 0.029 3, 0.027 1 and 10.10%, respectively. Compared with the PLSR me-thod, the performance of the GA-ELM model was greatly improved, which proved that NIRS combined with GA-ELM method has a great potential for rapid determination of effective components of TCM.
Algorithms
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Ginkgo biloba
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Least-Squares Analysis
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Plant Leaves
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Spectroscopy, Near-Infrared