Evaluation of machine learning algorithms and computational structural validation of CYP2D6 in predicting the therapeutic response to tamoxifen in breast cancer.

IF 3.3 4区 医学 Q1 Medicine
K Sridharan, K Sekaran, C George Priya Doss
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引用次数: 0

Abstract

Objective: CYP2D6 plays a critical role in metabolizing tamoxifen into its active metabolite, endoxifen, which is crucial for its therapeutic effect in estrogen receptor-positive breast cancer. Single nucleotide polymorphisms (SNPs) in the CYP2D6 gene can affect enzyme activity and thus impact tamoxifen efficacy. This study aimed to use machine learning algorithms (MLAs) to identify significant predictors of Breast Cancer-Free Interval (BCFI) and to apply bioinformatics tools to investigate the structural and functional implications of CYP2D6 SNPs.

Patients and methods: The study utilized data from 4,974 breast cancer patients recruited by the International Tamoxifen Pharmacogenomics Consortium (ITPC), focusing on 898 patients with available BCFI data. Predictors included age, ethnicity, menopausal status, breast cancer grade, CYP2D6 genotype, and BCFI. An ensemble MLA model was developed, incorporating regression, CHAID, artificial neural networks (ANN), and classification and regression trees (CART). Bioinformatics tools, such as STRING-DB and GEPIA2, were used to analyze protein-protein interactions and survival data related to CYP2D6.

Results: The ensemble model identified age and CYP2D6 genotypes as significant predictors of BCFI. The mean prediction error for the training and testing cohorts was 13.8 and 40.2 days, respectively. Bioinformatics analysis revealed reduced CYP2D6 functional activity associated with decreased survival, and Kaplan-Meier analysis demonstrated that lower CYP2D6 expression significantly reduced survival rates.

Conclusions: This study highlights the utility of MLAs in identifying key predictors of tamoxifen response and the value of bioinformatics in understanding CYP2D6's role in breast cancer outcomes. Personalized treatment approaches based on CYP2D6 metabolizer status could enhance tamoxifen therapy effectiveness.

机器学习算法的评估和CYP2D6的计算结构验证预测乳腺癌对他莫昔芬的治疗反应。
目的:CYP2D6在他莫昔芬代谢为其活性代谢物endoxifen的过程中起关键作用,对其治疗雌激素受体阳性乳腺癌的疗效至关重要。CYP2D6基因的单核苷酸多态性(snp)可以影响酶的活性,从而影响他莫昔芬的疗效。本研究旨在利用机器学习算法(MLAs)识别乳腺癌无癌间隔(BCFI)的重要预测因子,并应用生物信息学工具研究CYP2D6 snp的结构和功能意义。患者和方法:该研究利用了国际他莫昔芬药物基因组学联盟(ITPC)招募的4,974名乳腺癌患者的数据,重点关注898名具有BCFI数据的患者。预测因素包括年龄、种族、绝经状态、乳腺癌分级、CYP2D6基因型和BCFI。建立了一个集成了回归、CHAID、人工神经网络(ANN)和分类回归树(CART)的集成MLA模型。使用生物信息学工具,如STRING-DB和GEPIA2,分析与CYP2D6相关的蛋白-蛋白相互作用和存活数据。结果:集合模型确定年龄和CYP2D6基因型是BCFI的重要预测因子。训练组和测试组的平均预测误差分别为13.8天和40.2天。生物信息学分析显示CYP2D6功能活性降低与生存率降低相关,Kaplan-Meier分析显示CYP2D6表达降低显著降低生存率。结论:本研究强调了MLAs在确定他莫昔芬反应的关键预测因素方面的效用,以及生物信息学在了解CYP2D6在乳腺癌预后中的作用方面的价值。基于CYP2D6代谢状态的个性化治疗方法可以提高他莫昔芬的治疗效果。
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来源期刊
CiteScore
5.30
自引率
6.10%
发文量
906
审稿时长
2-4 weeks
期刊介绍: European Review for Medical and Pharmacological Sciences, a fortnightly journal, acts as an information exchange tool on several aspects of medical and pharmacological sciences. It publishes reviews, original articles, and results from original research. The purposes of the Journal are to encourage interdisciplinary discussions and to contribute to the advancement of medicine. European Review for Medical and Pharmacological Sciences includes: -Editorials- Reviews- Original articles- Trials- Brief communications- Case reports (only if of particular interest and accompanied by a short review)
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