1.A study on Recognition of Bronchogenic Cancer Cell using Fuzzy Neural Networks.
Journal of Korean Society of Medical Informatics 1999;5(1):77-87
A fuzzy neural network is an approach to mimic the structure and function of our brain. This method is widely applied in character recognition, but not in medical image recognition. The area of medical image recognition is challenging to our interest and can be maximally utilized the advantage of fuzzy neural networks in practice. In this paper we propose and new neural algorithm which is integrated both fuzzy self-organized and supervised learning methods. The proposed algorithm is applied for bronchogenic cancer diagnosis. The experimental results show that the correct recognition rate of our algorithm is superior to that of other neural networks.
Brain
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Diagnosis
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Fuzzy Logic
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Learning
2.Biotechnical system based on fuzzy logic prediction for surgical risk classification using analysis of current-voltage characteristics of acupuncture points.
Sergey FILIST ; Riad Taha AL-KASASBEH ; Olga SHATALOVA ; Nikolay KORENEVSKIY ; Ashraf SHAQADAN ; Zeinab PROTASOVA ; Maksim ILYASH ; Mikhail LUKASHOV
Journal of Integrative Medicine 2022;20(3):252-264
OBJECTIVE:
This study aimed to develop expert fuzzy logic model to assist physicians in the prediction of postoperative complications of prostatic hyperplasia before surgery.
METHODS:
A method for classification of surgical risks was developed. The effect of rotation of the current-voltage characteristics at biologically active points (acupuncture points) was used for the formation of classifier descriptors. The effect determined reversible and non-reversible changes in electrical resistance at acupuncture points with periodic exposure to a sawtooth probe current. Then, the developed method was tested on the prediction of the success of surgical treatment of benign prostatic hyperplasia.
RESULTS:
Input descriptors were obtained from collected data including current-voltage characteristics of 5 acupuncture points and composed of 27 arrays feeding in the model. The maximum diagnostic sensitivity of the classifier for the success of a surgical operation in the control sample was 88% and for testing data set prediction accuracy was 97%.
CONCLUSION
The use of tuples of current-voltage characteristic descriptors of acupuncture points in the classifiers could be used to predict the success of surgical treatment with satisfactory accuracy. The model can be a valuable tool to support physicians' diagnosis.
Acupuncture Points
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Acupuncture Therapy
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Fuzzy Logic
3.A modeling method for human standing balance system based on T-S fuzzy identification.
Hongrui WANG ; Kun LIU ; Jinzhuang XIAO ; Peng XIONG
Journal of Biomedical Engineering 2014;31(6):1243-1249
In order to develop safe training intensity and training methods for the passive balance rehabilitation train- ing system, we propose in this paper a mathematical model for human standing balance adjustment based on T-S fuzzy identification method. This model takes the acceleration of a multidimensional motion platform as its inputs, and human joint angles as its outputs. We used the artificial bee colony optimization algorithm to improve fuzzy C--means clustering algorithm, which enhanced the efficiency of the identification for antecedent parameters. Through some experiments, the data of 9 testees were collected, which were used for model training and model results validation. With the mean square error and cross-correlation between the simulation data and measured data, we concluded that the model was accurate and reasonable.
Algorithms
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Cluster Analysis
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Fuzzy Logic
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Humans
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Models, Theoretical
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Postural Balance
4.Selectivity rank regionalization of Paeonia lactiflora based on fuzzy method.
Jinrong LV ; Lanping GUO ; Luqi HUANG ; Liuke LIANG ; Yuzhang SUN ; Xiaobo ZHANG ; Xiaoli HAN ; Hongjun ZHANG
China Journal of Chinese Materia Medica 2009;34(7):807-811
For optimal adaptive cultivation region selection, we used ecology factors characterized Duolun region as model area to carry out the adaptive habitat division of Paeonia lactiflora. Similar priority comparison of ecology factors.in 91 cities were calculated by Fuzzy methods, then, distance of the ecology factors were transferred to spacial model by geography information system (,GIS) and modified by soil utilization map of China. The results showed that P. lactiflora were mainly distributed in the Daxing'an Mountain, Changbaishan and qinling range which were divided into six grades of suitable regions belonging to three geographical distributed units. The most similar areas to Duolun were Huade, Xilinhaote, Suolun and Zhangbei. P. lactiflora's distribution and quality are relevant with longitude and latitude, and temperature and rainfall.
China
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Environment
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Fuzzy Logic
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Paeonia
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classification
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growth & development
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Temperature
6.The applied research on neural network filtrated by rough-set in insect taxonomy.
Ruiqing DU ; Qinglin WANG ; Guangliang LIU ; Zhengtian ZHANG ; Chen LI
Journal of Biomedical Engineering 2006;23(4):862-868
This article provides demonstrations and calculations, using rough-set theory and method, of the math-morphological features (MMFs), such as form parameter, lobation and sphericity, etc. drawn from 28 species of insects of the Hemiptera, Lepidoptera and Coleoptera based on their images. The results are compared with statistical analysis made by Zhao Hanqing, and also with the traditional classifications through the pattern recognition of neural network on the basis of the rough-set disposal. The result of the experiments showed that when used in categorical taxonomy, the importance of MMF was ranked from high to low: (roundness-likelihood. eccentricity) > (hot-hole number, sphericity, circularity) > (lobation, form parameter). The results of pattern recognition by neural network were completely identical with those of traditional classifications. Accordingly, the conclusion was that this theory applied in insect taxonomy was more idealistic compared with statistical analysis method, and it had great significance when used with rough-set neural network.
Algorithms
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Animals
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Fuzzy Logic
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Insecta
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classification
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Neural Networks (Computer)
8.Application of fuzzy analytic hierarchy process in risk assessment in medicine related fields.
Chinese Journal of Epidemiology 2022;43(5):766-770
Risks exist in medicine related fields, which cannot be defined and quantified precisely. It is necessary to adopt a method for the risk assessment of uncertain and fuzzy phenomenon. This paper summarizes the thinking, procedure, advantage and application of fuzzy analytic hierarchy process in the risk assessment in medicine related fields for the purpose of providing reference for its further application.
Analytic Hierarchy Process
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Fuzzy Logic
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Humans
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Risk Assessment/methods*
9.Development of Database for Clinical Transplantation Research.
The Journal of the Korean Society for Transplantation 2005;19(2):107-118
The database that is characterized by real-time accessibility and concurrent sharing by multiple users is indispensable to large population-based clinical research. Because initial design determines the effectiveness of database, delicate and complete development is required. Understanding of research and communication between user and programmer is the first step of database development. According to the purpose of research item, the entity and attribute are determined in detail that can minimize data redundancy and maintain data consistency. The programmer should analyses the demand of final user before logical design. Also the user should provide unit information and old data to programmer. After interaction between programmer and user, the database system flow is designed by real organizational unit flow diagram. The user's view is classified by subtitle and grouped by similar data. The flow of view is concordant with real flow diagram. The active participation of final user in early phase is essential for successful development of database.
Logic
10.Professionalism: The Third Logic (Eliot Freidson).
Korean Journal of Medical Education 2008;20(3):276-276
No abstract available.
Logic