医学诊断任务中的自适应概率神经模糊系统及其混合学习

Q3 Computer Science Open Bioinformatics Journal Pub Date : 2021-11-19 DOI:10.2174/18750362021140100123
Yevgeniy V. Bodyanskiy, A. Deineko, I. Pliss, O. Chala
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引用次数: 1

摘要

考虑了有限数据集和重叠类条件下的医学诊断任务。这种限制在现实世界的任务中经常发生。在解决医学诊断问题的实际任务期间,缺乏长时间的训练数据集,导致无法使用深度学习的数学仪器。此外,考虑到其他因素,例如在数据集中,类可以在特征空间中重叠;数据也可以以各种尺度指定:在数值区间、数值比率、序数(秩)、标称和二进制,这不允许使用已知的神经网络。为了克服出现的限制和问题,提出了一种基于概率神经网络和自适应神经模糊干扰系统的混合神经模糊系统,该系统可以解决这些情况下的任务。计算智能、人工神经网络、神经模糊系统与传统的人工神经网络相比,所提出的系统需要更少的训练时间,并且与神经模糊系统相比,它在模糊化层中包含的隶属函数更少。介绍了基于“赢家通吃”原理的自学习和基于“数据点神经元”原理的懒惰学习的混合学习算法。所提出的系统通过计算形成的诊断对各种可能类别的隶属度来解决在重叠类别的条件下的分类问题。所提出的系统在数值实现方面相当简单,其特点是在学习过程和决策过程中信息处理速度快;它很容易适应在系统运行过程中诊断功能数量发生变化的情况。
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Adaptive Probabilistic Neuro-Fuzzy System and its Hybrid Learning in Medical Diagnostics Task
The medical diagnostic task in conditions of the limited dataset and overlapping classes is considered. Such limitations happen quite often in real-world tasks. The lack of long training datasets during solving real tasks in the problem of medical diagnostics causes not being able to use the mathematical apparatus of deep learning. Additionally, considering other factors, such as in a dataset, classes can be overlapped in the feature space; also data can be specified in various scales: in the numerical interval, numerical ratios, ordinal (rank), nominal and binary, which does not allow the use of known neural networks. In order to overcome arising restrictions and problems, a hybrid neuro-fuzzy system based on a probabilistic neural network and adaptive neuro-fuzzy interference system that allows solving the task in these situations is proposed. Computational intelligence, artificial neural networks, neuro-fuzzy systems compared to conventional artificial neural networks, the proposed system requires significantly less training time, and in comparison with neuro-fuzzy systems, it contains significantly fewer membership functions in the fuzzification layer. The hybrid learning algorithm for the system under consideration based on self-learning according to the principle “Winner takes all” and lazy learning according to the principle “Neurons at data points” has been introduced. The proposed system solves the problem of classification in conditions of overlapping classes with the calculation of the membership levels of the formed diagnosis to various possible classes. The proposed system is quite simple in its numerical implementation, characterized by a high speed of information processing, both in the learning process and in the decision-making process; it easily adapts to situations when the number of diagnostics features changes during the system's functioning.
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来源期刊
Open Bioinformatics Journal
Open Bioinformatics Journal Computer Science-Computer Science (miscellaneous)
CiteScore
2.40
自引率
0.00%
发文量
4
期刊介绍: The Open Bioinformatics Journal is an Open Access online journal, which publishes research articles, reviews/mini-reviews, letters, clinical trial studies and guest edited single topic issues in all areas of bioinformatics and computational biology. The coverage includes biomedicine, focusing on large data acquisition, analysis and curation, computational and statistical methods for the modeling and analysis of biological data, and descriptions of new algorithms and databases. The Open Bioinformatics Journal, a peer reviewed journal, is an important and reliable source of current information on the developments in the field. The emphasis will be on publishing quality articles rapidly and freely available worldwide.
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