Centre for Medicine Use and Safety, Faculty of Pharmacy and Pharmaceutical Sciences, Monash University, Melbourne, Australia.
Institute of Cardiovascular and Medical Sciences, University of Glasgow, Glasgow, UK.
Cochrane Database Syst Rev. 2023 Jun 2;6(6):CD014885. doi: 10.1002/14651858.CD014885.pub2.
BACKGROUND: Dementia, a global health priority, has no current cure. Around 50 million people worldwide currently live with dementia, and this number is expected to treble by 2050. Some health conditions and lifestyle behaviours can increase or decrease the risk of dementia and are known as 'predictors'. Prognostic models combine such predictors to measure the risk of future dementia. Models that can accurately predict future dementia would help clinicians select high-risk adults in middle age and implement targeted risk reduction. OBJECTIVES: Our primary objective was to identify multi-domain prognostic models used in middle-aged adults (aged 45 to 65 years) for predicting dementia or cognitive impairment. Eligible multi-domain prognostic models involved two or more of the modifiable dementia predictors identified in a 2020 Lancet Commission report and a 2019 World Health Organization (WHO) report (less education, hearing loss, traumatic brain injury, hypertension, excessive alcohol intake, obesity, smoking, depression, social isolation, physical inactivity, diabetes mellitus, air pollution, poor diet, and cognitive inactivity). Our secondary objectives were to summarise the prognostic models, to appraise their predictive accuracy (discrimination and calibration) as reported in the development and validation studies, and to identify the implications of using dementia prognostic models for the management of people at a higher risk for future dementia. SEARCH METHODS: We searched MEDLINE, Embase, PsycINFO, CINAHL, and ISI Web of Science Core Collection from inception until 6 June 2022. We performed forwards and backwards citation tracking of included studies using the Web of Science platform. SELECTION CRITERIA: We included development and validation studies of multi-domain prognostic models. The minimum eligible follow-up was five years. Our primary outcome was an incident clinical diagnosis of dementia based on validated diagnostic criteria, and our secondary outcome was dementia or cognitive impairment determined by any other method. DATA COLLECTION AND ANALYSIS: Two review authors independently screened the references, extracted data using a template based on the CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modelling Studies (CHARMS), and assessed risk of bias and applicability of included studies using the Prediction model Risk Of Bias ASsessment Tool (PROBAST). We synthesised the C-statistics of models that had been externally validated in at least three comparable studies. MAIN RESULTS: We identified 20 eligible studies; eight were development studies and 12 were validation studies. There were 14 unique prognostic models: seven models with validation studies and seven models with development-only studies. The models included a median of nine predictors (range 6 to 34); the median number of modifiable predictors was five (range 2 to 11). The most common modifiable predictors in externally validated models were diabetes, hypertension, smoking, physical activity, and obesity. In development-only models, the most common modifiable predictors were obesity, diabetes, hypertension, and smoking. No models included hearing loss or air pollution as predictors. Nineteen studies had a high risk of bias according to the PROBAST assessment, mainly because of inappropriate analysis methods, particularly lack of reported calibration measures. Applicability concerns were low for 12 studies, as their population, predictors, and outcomes were consistent with those of interest for this review. Applicability concerns were high for nine studies, as they lacked baseline cognitive screening or excluded an age group within the range of 45 to 65 years. Only one model, Cardiovascular Risk Factors, Ageing, and Dementia (CAIDE), had been externally validated in multiple studies, allowing for meta-analysis. The CAIDE model included eight predictors (four modifiable predictors): age, education, sex, systolic blood pressure, body mass index (BMI), total cholesterol, physical activity and APOEƐ4 status. Overall, our confidence in the prediction accuracy of CAIDE was very low; our main reasons for downgrading the certainty of the evidence were high risk of bias across all the studies, high concern of applicability, non-overlapping confidence intervals (CIs), and a high degree of heterogeneity. The summary C-statistic was 0.71 (95% CI 0.66 to 0.76; 3 studies; very low-certainty evidence) for the incident clinical diagnosis of dementia, and 0.67 (95% CI 0.61 to 0.73; 3 studies; very low-certainty evidence) for dementia or cognitive impairment based on cognitive scores. Meta-analysis of calibration measures was not possible, as few studies provided these data. AUTHORS' CONCLUSIONS: We identified 14 unique multi-domain prognostic models used in middle-aged adults for predicting subsequent dementia. Diabetes, hypertension, obesity, and smoking were the most common modifiable risk factors used as predictors in the models. We performed meta-analyses of C-statistics for one model (CAIDE), but the summary values were unreliable. Owing to lack of data, we were unable to meta-analyse the calibration measures of CAIDE. This review highlights the need for further robust external validations of multi-domain prognostic models for predicting future risk of dementia in middle-aged adults.
背景:痴呆症是一项全球健康重点,目前尚无治愈方法。全球约有 5000 万人患有痴呆症,预计到 2050 年,这一数字将增加两倍。一些健康状况和生活方式行为会增加或降低痴呆症的风险,这些因素被称为“预测因素”。预后模型将这些预测因素结合起来,以衡量未来发生痴呆症的风险。能够准确预测未来痴呆症的模型将有助于临床医生在中年时选择高风险的成年人,并实施有针对性的降低风险措施。
目的:我们的主要目标是确定用于预测中年(45 至 65 岁)人群痴呆症或认知障碍的多领域预后模型。合格的多领域预后模型涉及 2020 年柳叶刀委员会报告和 2019 年世界卫生组织(WHO)报告中确定的两种或多种可改变的痴呆症预测因素(受教育程度较低、听力损失、创伤性脑损伤、高血压、过量饮酒、肥胖、吸烟、抑郁、社会隔离、缺乏身体活动、糖尿病、空气污染、不良饮食和认知不活跃)。我们的次要目标是总结这些预后模型,评估它们在开发和验证研究中报告的预测准确性(区分度和校准度),并确定使用痴呆症预后模型对未来痴呆症风险较高的人群进行管理的意义。
检索方法:我们检索了 MEDLINE、Embase、PsycINFO、CINAHL 和 ISI Web of Science 核心合集,检索时间截至 2022 年 6 月 6 日。我们还利用 Web of Science 平台对纳入研究进行了向前和向后的引文追踪。
选择标准:我们纳入了多领域预后模型的开发和验证研究。最低合格随访时间为 5 年。我们的主要结局是基于验证性诊断标准的临床确诊痴呆症,次要结局是通过任何其他方法确定的痴呆症或认知障碍。
数据收集和分析:两名综述作者独立筛选参考文献,使用基于检查表的模板提取数据,该模板基于预测模型风险评估工具(PROBAST)对系统综述进行了关键性评估和数据提取,用于评估纳入研究的偏倚风险和适用性。我们综合了在至少三项可比研究中进行外部验证的模型的 C 统计量。
主要结果:我们确定了 20 项符合条件的研究;其中 8 项是开发研究,12 项是验证研究。有 14 个独特的预后模型:7 个有验证研究的模型和 7 个仅有开发研究的模型。这些模型纳入的预测因素中位数为 9 个(范围为 6 至 34 个);可改变的预测因素中位数为 5 个(范围为 2 至 11 个)。在外部验证的模型中,最常见的可改变预测因素是糖尿病、高血压、吸烟、身体活动和肥胖。在仅有开发研究的模型中,最常见的可改变预测因素是肥胖、糖尿病、高血压和吸烟。没有模型将听力损失或空气污染作为预测因素。根据 PROBAST 评估,19 项研究存在高偏倚风险,主要原因是分析方法不当,特别是缺乏报告的校准措施。12 项研究的适用性问题较低,因为其研究人群、预测因素和结局与本综述的研究人群一致。9 项研究的适用性问题较高,因为它们缺乏基线认知筛查或排除了 45 至 65 岁年龄范围内的年龄组。只有一个模型,心血管风险因素、年龄和痴呆症(CAIDE),在多项研究中进行了外部验证,允许进行荟萃分析。CAIDE 模型纳入了 8 个预测因素(4 个可改变的预测因素):年龄、教育程度、性别、收缩压、体重指数(BMI)、总胆固醇、身体活动和 APOEε4 状态。总体而言,我们对 CAIDE 预测准确性的信心非常低;我们降低证据确定性的主要原因是所有研究的偏倚风险高、适用性问题高、置信区间(CI)不重叠、异质性高。对于临床确诊的痴呆症,CAIDE 的汇总 C 统计量为 0.71(95%CI 0.66 至 0.76;3 项研究;极低确定性证据),对于基于认知评分的痴呆症或认知障碍,汇总 C 统计量为 0.67(95%CI 0.61 至 0.73;3 项研究;极低确定性证据)。由于缺乏数据,我们无法对校准措施进行荟萃分析。
作者结论:我们确定了 14 个用于预测中年人群未来痴呆症的独特多领域预后模型。糖尿病、高血压、肥胖和吸烟是模型中最常用的可改变风险因素作为预测因素。我们对一个模型(CAIDE)进行了 C 统计量的荟萃分析,但汇总值不可靠。由于缺乏数据,我们无法对 CAIDE 的校准措施进行荟萃分析。本综述强调了需要进一步对多领域预后模型进行严格的外部验证,以预测中年人群未来发生痴呆症的风险。
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