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1.
World Science and Technology-Modernization of Traditional Chinese Medicine ; (12): 1729-1733, 2018.
Article in Chinese | WPRIM | ID: wpr-752112

ABSTRACT

This study introduces 5 methods of causality assessment of adverse drug reactions (ADRs) domestic and overseas. According to the assessment of ministry of public health of China, the key points about the relevance analysis have been illuminated for the post-evaluation of Chinese patent medicine. Under the guidance of the causality assessment, we should describe the ADR reports in detail and further detect the accurate ADR warning signals. In order to supplement the ADR information, more researches concerning the ADR mechanism should be fully explored.

2.
Chinese Journal of Medical Library and Information Science ; (12): 1-6, 2017.
Article in Chinese | WPRIM | ID: wpr-610953

ABSTRACT

The relevance analysis methods for the association between environmental factors (air pollutants, fine particles, climate conditions, toxic materials) and diseases (lung cancer and asthma, etc) were studied by mining the open access scientific data in American environmental health field, which realized their practical application and can thus provide reference for studying the association between environments and diseases in our country.

3.
Rev. ing. bioméd ; 5(9): 26-34, ene.-jun. 2011. graf
Article in Spanish | LILACS | ID: lil-769106

ABSTRACT

Una etapa importante y fundamental en el reconocimiento de patrones sobre imágenes es la determinación del conjunto de características que mejor pueda describir la misma. En este artículo se presenta una etapa adicional entre la caracterización de la imagen y su posterior clasificación o recuperación de imágenes similares a una imagen dada, conocido como análisis de relevancia. Este permite reducir la dimensionalidad del conjunto inicial de características a un nuevo conjunto de menor dimensión que conserva la tasa de acierto de la recuperación. Las imágenes analizadas correspondieron a nódulos pulmonares de placas radiológicas de tórax disponibles en una base de datos de acceso libre disponible a través de la sociedad japonesa de tecnología radiológica. Se analizaron algoritmos de selección de características basados en filtros que incluyeron los métodos FOCUS, RELIEEF-F y Branch & Bound (B&B). Estos algoritmos fueron modificados e implementados en C++. En el caso de RELIEF-F se logró obtener un ahorro del 34% de características sin afectar la tasa de recuperación cuando se empleaba el 100% de las características originales. Asimismo, el algoritmo implementado presentó un desempeño superior al algoritmo original disponible en la herramienta de código abierto Weka. Asimismo se implementó una estrategia de ponderación de pesos aplicada a las características identificadas cuando se utilizaron los algoritmos RELIEF-F, FOCUS y B&B simultáneamente. Dicha estrategia permitió ponderar cada característica de acuerdo a su participación en los conjuntos mínimos de características relevantes y determinar la consistencia de los mismos. La estrategia de pesos permitió un ahorro del 48% de características necesarias para la recuperación, aunque la tasa de recuperación fue disminuida de 77% a 76%.


An important and fundamental stage in the image pattern recognition is the determination of the characteristics set that best describes the image. This paper describes a further step between the image characterization and its posterior classification or image retrieval similar to a given image, known as relevance analysis. It allows reducing the dimensionality of an initial set of features to a new set with fewer dimensions that preserves the hit rate of the retrieval. The analyzed images corresponded to lung nodules of radiological plaques of thorax, available through the open access library available through the Japanese society of radiological technology. To achieve these results, characteristic selection algorithms based on different filters such as FOCUS, RELIEEF-F, and BRANCH & BOUND (B&B) were analyzed. In the case of RELIEF-F it was possible to save as much as 34% of the initial characteristics set without affecting the retrieval rate compared to when the 100% of characteristics were used. Further, the implemented algorithm achieved a superior performance to that of the original algorithm included in the validated Weka software. Likewise, a strategy consisting in weights averaging was implemented that was applied to identified characteristics when the algorithms RELIEF-F, FOCUS and B&B were used simultaneously. Such weighting scheme, allowed the averaging of each characteristic according to its contribution in the minimal set of relevant features, allowing to determinate their consistency. The weighting strategy allowed a 48% reduction in the characteristics, although the retrieval hit rate slightly decreased from 77% to 76%.

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