Semel Institute for Neuroscience and Human Behavior, Department of Psychiatry & Biobehavioral Sciences, University of California, Los Angeles, CA, United States of America; Jonsson Comprehensive Cancer Center, University of California, Los Angeles, CA, United States of America.
Department of Biostatistics, Bioinformatics, and Biomathematics, Georgetown University, Washington, DC, United States of America.
J Geriatr Oncol. 2022 Nov;13(8):1132-1140. doi: 10.1016/j.jgo.2022.08.005. Epub 2022 Aug 24.
Many cancer survivors report cognitive problems following diagnosis and treatment. However, the clinical significance of patient-reported cognitive symptoms early in survivorship can be unclear. We used a machine learning approach to determine the association of persistent self-reported cognitive symptoms two years after diagnosis and neurocognitive test performance in a prospective cohort of older breast cancer survivors.
We enrolled breast cancer survivors with non-metastatic disease (n = 435) and age- and education-matched non-cancer controls (n = 441) between August 2010 and December 2017 and followed until January 2020; we excluded women with neurological disease and all women passed a cognitive screen at enrollment. Women completed the FACT-Cog Perceived Cognitive Impairment (PCI) scale and neurocognitive tests of attention, processing speed, executive function, learning, memory and visuospatial ability, and timed activities of daily living assessments at enrollment (pre-systemic treatment) and annually to 24 months, for a total of 59 individual neurocognitive measures. We defined persistent self-reported cognitive decline as clinically meaningful decline (3.7+ points) on the PCI scale from enrollment to twelve months with persistence to 24 months. Analysis used four machine learning models based on data for change scores (baseline to twelve months) on the 59 neurocognitive measures and measures of depression, anxiety, and fatigue to determine a set of variables that distinguished the 24-month persistent cognitive decline group from non-cancer controls or from survivors without decline.
The sample of survivors and controls ranged in age from were ages 60-89. Thirty-three percent of survivors had self-reported cognitive decline at twelve months and two-thirds continued to have persistent decline to 24 months (n = 60). Least Absolute Shrinkage and Selection Operator (LASSO) models distinguished survivors with persistent self-reported declines from controls (AUC = 0.736) and survivors without decline (n = 147; AUC = 0.744). The variables that separated groups were predominantly neurocognitive test performance change scores, including declines in list learning, verbal fluency, and attention measures.
Machine learning may be useful to further our understanding of cancer-related cognitive decline. Our results suggest that persistent self-reported cognitive problems among older women with breast cancer are associated with a constellation of mild neurocognitive changes warranting clinical attention.
许多癌症幸存者在诊断和治疗后报告存在认知问题。然而,患者在生存早期报告的认知症状的临床意义可能并不明确。我们使用机器学习方法来确定在一项前瞻性的老年乳腺癌幸存者队列中,诊断后两年持续自我报告的认知症状与神经认知测试表现之间的关联。
我们在 2010 年 8 月至 2017 年 12 月期间招募了患有非转移性疾病的乳腺癌幸存者(n=435)和年龄及教育程度匹配的非癌症对照者(n=441),并随访至 2020 年 1 月;我们排除了患有神经疾病的女性和所有在入组时通过认知筛查的女性。女性在入组时(系统性治疗前)和每年至 24 个月时完成 FACT-Cog 感知认知障碍(PCI)量表以及注意力、处理速度、执行功能、学习、记忆和视空间能力的神经认知测试和计时日常生活活动评估,总共进行了 59 项个体神经认知测试。我们将 PCI 量表从入组到 12 个月的临床意义上的认知下降定义为(3.7+分),并持续到 24 个月。分析使用了四种基于 59 项神经认知测试的变化分数(基线至 12 个月)和抑郁、焦虑和疲劳的测量数据的机器学习模型,以确定一组变量,该组变量将 24 个月时持续认知下降的组与非癌症对照者或无下降的幸存者区分开来。
幸存者和对照者的样本年龄在 60-89 岁之间。33%的幸存者在 12 个月时出现自我报告的认知下降,三分之二的幸存者持续到 24 个月(n=60)出现持续下降。最小绝对值收缩和选择算子(LASSO)模型将有持续自我报告下降的幸存者与对照组(AUC=0.736)和没有下降的幸存者(n=147;AUC=0.744)区分开来。区分组的变量主要是神经认知测试表现的变化分数,包括列表学习、言语流畅性和注意力测量的下降。
机器学习可能有助于我们进一步了解与癌症相关的认知下降。我们的结果表明,老年乳腺癌女性中持续的自我报告认知问题与一系列轻度神经认知变化有关,值得临床关注。