Predictive modeling for metastasis in oncology: current methods and future directions.

IF 1.7 Q2 MEDICINE, GENERAL & INTERNAL
Annals of Medicine and Surgery Pub Date : 2025-05-21 eCollection Date: 2025-06-01 DOI:10.1097/MS9.0000000000003279
Ghulam H Abbas, Edmon R Khouri, Omar Thaher, Safwan Taha, Miljana Vladimirov, Rodolfo J Oviedo, Jeremias Schmidt, Dirk Bausch, Sjaak Pouwels
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引用次数: 0

Abstract

Predictive modeling for metastasis in oncology has gained significant traction due to its potential to improve prognosis, guide treatment strategies and enhance patient outcomes. Current methods leverage advancements in machine learning, genomics and imaging technologies to predict the likelihood of cancer spread. Techniques such as logistic regression, decision trees, support vector machines and neural networks have been employed to analyze clinical, pathological, and molecular data. Genomic profiling, liquid biopsies, and radiomics are increasingly integrated into these models to identify metastatic patterns and risk factors. Despite these advances, challenges persist, including data heterogeneity, model interpretability, and the need for larger, high-quality datasets for validation. Furthermore, the integration of artificial intelligence with precision medicine offers promising avenues for more personalized metastasis predictions. Future directions focus on enhancing model accuracy through deep learning, improving the interpretability of black-box models, and incorporating multi-omics data to capture the complexity of metastatic mechanisms. With the advent of advanced computational tools and growing datasets, predictive modeling in oncology is poised to revolutionize metastasis management, offering clinicians' valuable insights for early detection and tailored treatment strategies.

肿瘤转移的预测建模:目前的方法和未来的方向。
肿瘤转移的预测建模由于其改善预后、指导治疗策略和提高患者预后的潜力而获得了显著的牵引力。目前的方法利用机器学习、基因组学和成像技术的进步来预测癌症扩散的可能性。诸如逻辑回归、决策树、支持向量机和神经网络等技术已被用于分析临床、病理和分子数据。基因组图谱、液体活检和放射组学越来越多地集成到这些模型中,以确定转移模式和危险因素。尽管取得了这些进步,但挑战依然存在,包括数据异质性、模型可解释性以及需要更大、更高质量的数据集进行验证。此外,人工智能与精准医学的结合为更个性化的转移预测提供了有希望的途径。未来的方向是通过深度学习提高模型的准确性,提高黑箱模型的可解释性,并结合多组学数据来捕捉转移机制的复杂性。随着先进的计算工具和不断增长的数据集的出现,肿瘤学预测建模有望彻底改变转移管理,为临床医生提供早期发现和量身定制治疗策略的宝贵见解。
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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来源期刊
Annals of Medicine and Surgery
Annals of Medicine and Surgery MEDICINE, GENERAL & INTERNAL-
自引率
5.90%
发文量
1665
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