整合机器学习,为口腔癌患者定制化疗方案

Saraswati Patel , Divya Yadav , Dheeraj Kumar
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引用次数: 0

摘要

口腔癌,特别是口腔鳞状细胞癌(OSCC),造成了重大的全球健康负担,每年有超过35万例新病例。尽管化疗是晚期治疗的关键,但其缺乏个性化往往导致反应不一致,副作用严重,疗效有限。当前的方法,如基于规则的系统和传统的统计模型,未能考虑到患者特定因素和药物反应之间复杂的非线性相互作用,强调需要先进的解决方案。本文介绍了一个机器学习驱动的框架来优化口腔癌患者的化疗方案。通过利用多模态数据集,包括基因组谱、临床病史、肿瘤负担指数和药物毒性指标,该模型取得了显著的结果。利用随机森林和神经网络的集合,该框架实现了92%的准确率,优于现有的机器学习方法(85%)和传统方法(78%)。此外,它还表明化疗引起的毒性降低了25%,治疗费用降低了20%。关键的创新包括一种新的有效性-毒性权衡度量和适应性,通过强化学习实时方案改进。为了解决数据隐私问题,该框架结合了联邦学习,确保了跨不同医疗保健系统的可扩展性。初步结果表明,与现有方法相比,治疗效果提高了15 - 20%,不良反应减少了10%。这种跨学科的方法弥合了肿瘤学和ML之间的差距,为个性化医疗提供了坚实的基础。通过定制化疗方案,该框架旨在提高全球口腔癌患者的生存率,最大限度地减少治疗相关并发症,并提高生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating machine learning to customize chemotherapy for oral cancer patients
Oral cancer, particularly oral squamous cell carcinoma (OSCC), poses a significant global health burden, with over 350,000 new cases annually. Despite chemotherapy being critical for advanced-stage treatment, its lack of personalization often results in inconsistent responses, severe side effects, and limited efficacy. Current methodologies, such as rule-based systems and traditional statistical models, fail to account for the complex, nonlinear interactions between patient-specific factors and drug responses, underscoring the need for advanced solutions. This paper introduces a machine learning (ML)-driven framework to optimize chemotherapy regimens for oral cancer patients. By leveraging multi-modal datasets, including genomic profiles, clinical histories, tumor burden indices, and drug toxicity metrics, the proposed model achieves remarkable results. Utilizing an ensemble of random forests and neural networks, the framework achieves an accuracy of 92 %, outperforming existing ML methods (85 %) and traditional approaches (78 %). Additionally, it demonstrates a 25 % reduction in chemotherapy-induced toxicity and a 20 % decrease in treatment costs. Key innovations include a novel efficacy-toxicity trade-off metric and adaptability through reinforcement learning for real-time regimen refinement. To address data privacy concerns, the framework incorporates federated learning, ensuring scalability across diverse healthcare systems. Preliminary results highlight a 15–20 % improvement in treatment efficacy and a 10 % reduction in adverse effects compared to existing methods. This interdisciplinary approach bridges the gap between oncology and ML, offering a robust foundation for personalized medicine. By tailoring chemotherapy regimens, this framework aims to improve survival rates, minimize treatment-related complications, and enhance the quality of life for oral cancer patients globally.
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