Breast Cancer Prediction Based on Feature Extraction using Hybrid Methodologies

G. Rajasekaran, D. C. S. Ram
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Abstract

The breast cancer prediction is essential for effective treatment and management of the disease. Using data mining techniques to develop predictive models can assist in identifying patients at high risk of developing breast cancer, allowing for early detection and treatment. Early detection has been shown to improve patient outcomes and survival rates. The proposed system for breast cancer prediction involves two main techniques: Linear Discriminant Analysis (LDA) based feature extraction and hyperparameter tuned LSTM-XGBoost based hybrid modelling. The LDA is used to extract the features from the input data that can be trained using a hybrid model such as LSTM and XGBoost. The hyperparameters of both models are optimized using cross-validation techniques to achieve high accuracy in breast cancer prediction. Overall, this proposed system has achieved an accuracy and efficiency of breast cancer prediction than existing.
基于混合方法特征提取的乳腺癌预测
乳腺癌的预测对乳腺癌的有效治疗和管理至关重要。使用数据挖掘技术开发预测模型可以帮助识别患乳腺癌的高风险患者,从而实现早期发现和治疗。早期发现已被证明可以改善患者的预后和生存率。提出的乳腺癌预测系统包括两种主要技术:基于线性判别分析(LDA)的特征提取和基于超参数调优LSTM-XGBoost的混合建模。LDA用于从输入数据中提取特征,这些特征可以使用混合模型(如LSTM和XGBoost)进行训练。利用交叉验证技术对两种模型的超参数进行优化,以实现乳腺癌预测的高精度。总体而言,该系统比现有的乳腺癌预测系统更准确、更高效。
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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