Artificial Intelligence based Cervical Cancer Risk Prediction Using M1 Algorithms

N. Ch., Pendurthi Pallavi Sai, G. Madhuri, Kota Srinath Reddy, Devireddy Venkata BharathSimha Reddy
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引用次数: 8

Abstract

Cervical cancer growth is the fourth maximum of regular diseases in females. It is brought about by long haul disease in skin cells and mucous film cells of the genital region. The World Health Organization (WHO) considers malignant growth a nonexclusive term for a huge gathering of infections that can influence any piece of the body, which is profoundly risky. In 2018, an expected 5,70,000 females were determined to have cervical malignancy worldwide, and around 3,11,000 females passed on from the illness. Hence proposing a model with high precision and high accuracy for diagnosing at the right phase of contamination will help a lot. This paper aims to develop machine learning(ML) algorithms like Support Vector Machine(SVM), Random Forest(RF) and Deep Learning (DL)models like Convolutional Neural Networks (CNN), Artificial Neural Networks (ANN) using python, which gives more accurate results compared to existing models. The accuracy of each model SVM, CNN, RF and ANN obtained was 97%, 95.3%, 94% and 9 5.2%, respectively, where SVM has higher precision among ML algorithms similarly, CNN has the highest precision among the neural network algorithms, So to anticipate the cervical disease and to help in its initial judgments which can shield women in huge scope from being affected to this disease.
基于人工智能的M1算法宫颈癌风险预测
宫颈癌在女性常见病中排名第四。它是由生殖器区域皮肤细胞和粘膜细胞的长期疾病引起的。世界卫生组织(WHO)认为恶性生长是一个非排他性术语,指的是大量感染的聚集,可以影响身体的任何部位,这是非常危险的。2018年,全球预计有570,000名女性被确定患有宫颈恶性肿瘤,约有311,000名女性因该疾病而死亡。因此,提出一个精度高、准确度高的模型,在污染的正确阶段进行诊断,将会有很大的帮助。本文旨在使用python开发机器学习(ML)算法,如支持向量机(SVM),随机森林(RF)和深度学习(DL)模型,如卷积神经网络(CNN),人工神经网络(ANN),与现有模型相比,它提供了更准确的结果。所得模型SVM、CNN、RF和ANN的准确率分别为97%、95.3%、94%和9.5.2%,其中SVM在ML算法中准确率较高,CNN在神经网络算法中准确率最高,因此对宫颈疾病进行预测和初步判断,可以使大范围的女性免受该病的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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