Duan Ran, Wen ZiLi, Zhang Ting, Liu Juan, Feng Tong, Ren Tao
School of Clinical Medicine, Chengdu Medical College, Chengdu, 610500, Xindu, China.
Department of Oncology, The First Affiliated Hospital of Chengdu Medical College, Chengdu, 610500, China.
Clin Exp Med. 2025 Mar 6;25(1):74. doi: 10.1007/s10238-025-01590-6.
Cancer-related cognitive impairment (CRCI) has emerged as a significant long-term complication in cancer survivors, particularly those undergoing chemotherapy, radiotherapy, or targeted therapies. Despite advances in treatment, CRCI affects patients' quality of life, impacting their daily functioning, work capacity, and psychological well-being. In recent years, research has focused on identifying predictive factors for CRCI and developing risk prediction models to facilitate early intervention. This review summarizes the latest progress in CRCI risk prediction models, including traditional statistical approaches such as logistic regression and advanced machine learning techniques. While machine learning models demonstrate superior predictive performance, limitations such as data availability and model interpretability remain. Additionally, the review highlights key risk factors-such as age, cancer type, and treatment modalities-and evaluates the strengths and weaknesses of various predictive models in terms of accuracy, generalizability, and clinical applicability. Finally, this paper discusses the challenges in validating these models across diverse populations and the need for further research to enhance model reliability and personalization of interventions.
癌症相关认知障碍(CRCI)已成为癌症幸存者,尤其是那些接受化疗、放疗或靶向治疗患者的一种重要长期并发症。尽管治疗取得了进展,但CRCI会影响患者的生活质量,对其日常功能、工作能力和心理健康产生影响。近年来,研究集中在确定CRCI的预测因素以及开发风险预测模型以促进早期干预。本综述总结了CRCI风险预测模型的最新进展,包括逻辑回归等传统统计方法和先进的机器学习技术。虽然机器学习模型表现出卓越的预测性能,但诸如数据可用性和模型可解释性等局限性仍然存在。此外,该综述强调了年龄、癌症类型和治疗方式等关键风险因素,并从准确性、普遍性和临床适用性方面评估了各种预测模型的优缺点。最后,本文讨论了在不同人群中验证这些模型所面临的挑战以及进一步研究以提高模型可靠性和干预措施个性化的必要性。