中华护理教育 ›› 2024, Vol. 21 ›› Issue (8): 1018-1024.doi: 10.3761/j.issn.1672-9234.2024.08.020
• 综述 • 上一篇
收稿日期:
2023-11-28
出版日期:
2024-08-15
发布日期:
2024-08-06
通讯作者:
王爱平,硕士,教授,E-mail:jianghaoran88@hotmail.com
作者简介:
吕俭霞,女,硕士(博士在读),主管护师,E-mail:626710213 @qq.com
基金资助:
Received:
2023-11-28
Online:
2024-08-15
Published:
2024-08-06
摘要:
近年来,患者自我报告结局在癌症领域的研究逐渐深入,生成大量数据,而机器学习因其具有处理大数据的优势,在癌症患者自我报告结局领域得到初步应用,且相关机器学习模型性能较好。该文综述了机器学习在预测癌症患者治疗后并发症、生存及死亡率,以及纵向监测癌症患者健康相关生活质量变化和辅助癌症治疗决策方面的应用,可在癌症患者症状预测、结局预测、生活质量监测、合理临床治疗决策方面为临床护理实践提供参考。
吕俭霞, 王爱平. 机器学习在癌症患者自我报告结局中的应用研究进展[J]. 中华护理教育, 2024, 21(8): 1018-1024.
LÜ Jianxia, WANG Aiping. Progress for research and application of machine learning in the patient-reported outcomes of cancer patients[J]. Chinese Journal of Nursing Education, 2024, 21(8): 1018-1024.
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