Particle Swarm Optimization for Penalize cox models in long-term prediction of breast cancer data

Ehab Abbas Fadhil, Basad Al-Sarray
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Abstract

The particle swarm optimization algorithm (PSO) was applied to penalize the Cox model for predicting long-term outcomes of breast cancer patients. This study makes use of data on 198 patients' breast cancer survival, including their age, estrogen receptor status, tumor size, and grade, as well as the expression levels of 76 genes. The objective was to identify a subset of features that could accurately predict patient survival while controlling for overfitting and model complexity. PSO was used to search for optimal model parameters. The algorithm was designed to minimize a penalized partial likelihood function, which balances the tradeoff between an accurate model and model complexity. The values of the objective function were compared with other feature selection techniques, including the Least Absolute Shrinkage and Selection Operator (LASSO) and Elastic regression, and were found to perform better in relation to predictive accuracy and feature selection. The study results showed that PSO-based Cox models with cross-validation to regularization parameters had higher prediction accuracy than models trained with other feature selection methods. The PSO algorithm identified a subset of features that were consistently selected across multiple iterations, indicating their importance in predicting patient survival. Overall, the study demonstrates the potential of PSO-based feature selection in improving the accuracy and interpretability of Cox regression models for predicting long-term outcomes in breast cancer patients.
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粒子群优化用于乳腺癌数据长期预测中的惩罚性 cox 模型
粒子群优化算法(PSO)被用于对预测乳腺癌患者长期预后的 Cox 模型进行惩罚。这项研究利用了 198 名乳腺癌患者的生存数据,包括他们的年龄、雌激素受体状态、肿瘤大小和分级,以及 76 个基因的表达水平。研究的目的是在控制过拟合和模型复杂性的同时,找出能准确预测患者生存期的特征子集。PSO 被用来搜索最佳模型参数。该算法旨在最小化受惩罚的部分似然函数,从而平衡精确模型和模型复杂性之间的权衡。研究人员将目标函数值与其他特征选择技术(包括最小绝对缩减和选择操作器(LASSO)和弹性回归)进行了比较,发现在预测准确性和特征选择方面,PSO 的表现更好。研究结果表明,与使用其他特征选择方法训练的模型相比,基于 PSO 的 Cox 模型在对正则化参数进行交叉验证后具有更高的预测准确性。PSO 算法识别出了在多次迭代中被一致选择的特征子集,这表明了它们在预测患者生存率方面的重要性。总之,该研究证明了基于 PSO 的特征选择在提高 Cox 回归模型预测乳腺癌患者长期预后的准确性和可解释性方面的潜力。
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