ADALINE Neural Network For Early Detection Of Cervical Cancer Based On Behavior Determinant

Dwi Marisa Midyanti, Syamsul Bahri, H. I. Midyanti
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引用次数: 1

Abstract

Purpose: Cervical cancer is one of the most common types of cancer that kills women worldwide. One way for early detection of cervical cancer risk is by looking at human behavior determinants. Detection of cervical cancer based on behavior determinants has been researched before using Naïve Bayes and Logistic Regression but has never using ADALINE Neural Network. Methods: In this paper, ADALINE proposes to detect early cervical cancer based on the behavior on the UCI dataset. The data used are 72 data, consisting of 21 cervical cancer patients and 51 non-cervical cancer patients. The dataset is divided 70% for training data and 30% for testing data. The learning parameters used are maximum epoch, learning rate, and MSE. Result: MSE generated from ADALINE training process is 0.02 using a learning rate of 0.006 with a maximum epoch of 19. Twenty-two test data obtained an accuracy of 95.5%, and overall data got an accuracy value of 97.2%. Novelty: One alternative method for early detection of cervical cancer based on behavior is ADALINE Neural Network. 
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基于行为决定因素的ADALINE神经网络宫颈癌早期检测
目的:宫颈癌是世界范围内导致女性死亡的最常见癌症之一。早期发现宫颈癌风险的一种方法是观察人类行为的决定因素。基于行为决定因素的宫颈癌检测在使用Naïve贝叶斯和逻辑回归之前有过研究,但从未使用过ADALINE神经网络。方法:本文提出基于UCI数据集上行为的ADALINE检测早期宫颈癌。所用资料为72份资料,包括21名宫颈癌患者和51名非宫颈癌患者。数据集分为70%的训练数据和30%的测试数据。使用的学习参数是最大epoch、学习率和MSE。结果:ADALINE训练过程生成的MSE为0.02,学习率为0.006,最大历元为19。22个测试数据的准确率为95.5%,总体数据的准确率为97.2%。新颖:一种基于行为的宫颈癌早期检测的替代方法是ADALINE神经网络。
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24 weeks
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