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1.
Herald of Medicine ; (12): 120-122, 2018.
Artículo en Chino | WPRIM | ID: wpr-665151

RESUMEN

Objective To survey the correlation among ADR performances of Shuxuening injection(SXN injection ) based on ADR reports and literature data by rough set theory(RST). Methods By collecting 468 ADR reports of SXN injection,data attribute reduction were processed by Rossata software,and the generated rules and each indicator were analyzed. Results 9 main indicators,which mainly belongs to medication information,had a strong relationship with ADR.There was a correlation among ADR performances.Relationship could also found between performances and medication information. Conclusion The results of the study provide reference for clinical reasonable application of SXN injection,and enrich the research method of ADR.

2.
World Science and Technology-Modernization of Traditional Chinese Medicine ; (12): 1222-1228, 2014.
Artículo en Chino | WPRIM | ID: wpr-451902

RESUMEN

Rough set theory is a powerful tool to deal with incomplete information system, which can be applied to prescription data analysis. In this paper, we suggested an improved rough set model called WVP-T model. The model combined the variable precision model with the tolerance relation model. It can overcome the shortcoming of classical model. Furthermore, attribute importance and entropy of information were combined as heuristic information. Medicine was mapped to rough set attribute in order to value its importance. Then, combined with curative effect, attribute reduction was used to investigate the relationship between prescription and medicine and the relationship between symptom and syndrome. The experimental results showed that algorithm proposed in this paper can be used in prescription data analysis and can accurately reveal the compatibility rules to guide the clinical medication.

3.
Academic Journal of Xi&#39 ; an Jiaotong University;(4): 14-18, 2008.
Artículo en Chino | WPRIM | ID: wpr-844842

RESUMEN

In order to select effective feature subsets for pattern classification, a novel statistics rough set method is presented based on generalized attribute reduction. Unlike classical reduction approaches, the objects in universe of discourse are signs of training sample sets and values of attributes are taken as statistical parameters. The binary relation and discernibility matrix for the reduction are induced by distance function. Furthermore, based on the monotony of the distance function defined by Mahalanobis distance, the effective feature subsets are obtained as generalized attribute reducts. Experiment result shows that the classification performance can be improved by using the selected feature subsets.

4.
Journal of Pharmaceutical Analysis ; (6): 14-18, 2008.
Artículo en Chino | WPRIM | ID: wpr-621699

RESUMEN

In order to select effective feature subsets for pattern classification, a novel statistics rough set method is presented based on generalized attribute reduction. Unlike classical reduction approaches, the objects in universe of discourse are signs of training sample sets and values of attributes are taken as statistical parameters. The binary relation and discernibility matrix for the reduction are induced by distance function. Furthermore, based on the monotony of the distance function defined by Mahalanobis distance, the effective feature subsets are obtained as generalized attribute reducts. Experiment result shows that the classification performance can be improved by using the selected feature subsets.

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