通过模式识别在认知概况中识别中风:一项前瞻性队列研究的二次分析
Pattern Recognition to Identify Stroke in the Cognitive Profile: Secondary Analyses of a Prospective Cohort Study.
作者信息
Clouston Sean A P, Zhang Yun, Smith Dylan M
机构信息
Program in Public Health and Department of Family, Population, and Preventive Medicine, Stony Brook University, Stony Brook, New York, USA,
Program in Public Health and Department of Family, Population, and Preventive Medicine, Stony Brook University, Stony Brook, New York, USA.
出版信息
Cerebrovasc Dis Extra. 2019;9(3):114-122. doi: 10.1159/000503002. Epub 2019 Oct 8.
BACKGROUND
Stroke can produce subtle changes in the brain that may produce symptoms that are too small to lead to a diagnosis. Noting that a lack of diagnosis may bias research estimates, the current study sought to examine the utility of pattern recognition relying on serial assessments of cognition to objectively identify stroke-like patterns of cognitive decline (pattern-detected stroke, p-stroke).
METHODS
Secondary data analysis was conducted using participants with no reported history of stroke in the Health and Retirement Study, a large (n = 16,113) epidemiological study of cognitive aging among respondents aged 50 years and older that measured episodic memory consistently biennially between 1996 and 2014. Analyses were limited to participants with at least 4 serial measures of episodic memory. Occurrence and date of p-stroke events were identified utilizing pattern recognition to identify stepwise declines in cognition consistent with stroke. Descriptive statistics included the percentage of the population with p-stroke, the mean change in episodic memory resulting in stroke-positive testing, and the mean time between p-stroke and first major diagnosed stroke. Statistical analyses comparing cases of p-stroke with reported major stroke relied on the area under the receiver-operating curve (AUC). Longitudinal modeling was utilized to examine rates of change in those with/without major stroke after adjusting for demographics.
RESULTS
The pattern recognition protocol identified 7,499 p-strokes that went unreported. On average, individuals with p-stroke declined in episodic memory by 1.986 (SD = 0.023) words at the inferred time of stroke. The resulting pattern recognition protocol was able to identify self--reported major stroke (AUC = 0.58, 95% CI = 0.57-0.59, p < 0.001). In those with a reported major stroke, p-stroke events were detectable on average 4.963 (4.650-5.275) years (p < 0.001) before diagnosis was first reported. The incidence of p-stroke was 40.23/1,000 (95% CI = 39.40-41.08) person-years. After adjusting for sex, age was associated with the incidence of p-stroke and major stroke at similar rates.
CONCLUSIONS
This is the first study to propose utilizing pattern recognition to identify the incidence and timing of p-stroke. Further work is warranted examining the clinical utility of pattern recognition in identifying p-stroke in longitudinal cognitive profiles.
背景
中风会在大脑中产生细微变化,这些变化可能引发一些症状,但其程度过小以至于无法据此做出诊断。鉴于缺乏诊断可能会使研究估计产生偏差,本研究旨在探讨依靠对认知的系列评估进行模式识别,以客观识别类似中风的认知衰退模式(模式检测中风,p-中风)的效用。
方法
使用健康与退休研究中无中风报告史的参与者进行二次数据分析,该研究是一项针对50岁及以上受访者的大型(n = 16113)认知老化流行病学研究,在1996年至2014年期间每两年持续测量情景记忆。分析仅限于具有至少4次情景记忆系列测量的参与者。利用模式识别来识别与中风一致的认知逐步衰退,从而确定p-中风事件的发生情况和日期。描述性统计包括p-中风人群的百分比、导致中风阳性检测的情景记忆平均变化以及p-中风与首次主要诊断中风之间的平均时间。将p-中风病例与报告的主要中风进行比较的统计分析依赖于受试者工作特征曲线下面积(AUC)。在调整人口统计学因素后,利用纵向建模来检查有/无主要中风者的变化率。
结果
模式识别方案识别出7499例未报告的p-中风。平均而言,p-中风个体在推断的中风时间情景记忆下降了1.986(标准差 = 0.023)个单词。由此产生的模式识别方案能够识别自我报告的主要中风(AUC = 0.58,95%置信区间 = 0.57 - 0.59,p < 0.001)。在报告有主要中风的人群中,p-中风事件在首次报告诊断前平均4.963(4.650 - 5.275)年即可检测到(p < 0.001)。p-中风的发病率为40.23/1000人年(95%置信区间 = 39.40 - 41.08)。在调整性别后,年龄与p-中风和主要中风的发病率以相似的速率相关。
结论
这是第一项提出利用模式识别来识别p-中风的发病率和时间的研究。有必要进一步开展工作,研究模式识别在纵向认知概况中识别p-中风的临床效用。