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基于机器学习算法预测基层医疗患者心房颤动高危风险的预算影响分析。

Budget impact analysis of a machine learning algorithm to predict high risk of atrial fibrillation among primary care patients.

机构信息

Imperial College Health Partners, London NW1 2FB, UK.

UCLPartners, London W1T 7HA, UK.

出版信息

Europace. 2022 Sep 1;24(8):1240-1247. doi: 10.1093/europace/euac016.

DOI:10.1093/europace/euac016
PMID:35226101
Abstract

AIMS

We investigated whether the use of an atrial fibrillation (AF) risk prediction algorithm could improve AF detection compared with opportunistic screening in primary care and assessed the associated budget impact.

METHODS AND RESULTS

Eligible patients were registered with a general practice in UK, aged 65 years or older in 2018/19, and had complete data for weight, height, body mass index, and systolic and diastolic blood pressure recorded within 1 year. Three screening scenarios were assessed: (i) opportunistic screening and diagnosis (standard care); (ii) standard care replaced by the use of the algorithm; and (iii) combined use of standard care and the algorithm. The analysis considered a 3-year time horizon, and the budget impact for the National Health Service (NHS) costs alone or with personal social services (PSS) costs. Scenario 1 would identify 79 410 new AF cases (detection gap reduced by 22%). Scenario 2 would identify 70 916 (gap reduced by 19%) and Scenario 3 would identify 99 267 new cases (gap reduction 27%). These rates translate into 2639 strokes being prevented in Scenario 1, 2357 in Scenario 2, and 3299 in Scenario 3. The 3-year NHS budget impact of Scenario 1 would be £45.3 million, £3.6 million (difference ‒92.0%) with Scenario 2, and £46.3 million (difference 2.2%) in Scenario 3, but for NHS plus PSS would be ‒£48.8 million, ‒£80.4 million (64.8%), and ‒£71.3 million (46.1%), respectively.

CONCLUSION

Implementation of an AF risk prediction algorithm alongside standard opportunistic screening could close the AF detection gap and prevent strokes while substantially reducing NHS and PSS combined care costs.

摘要

目的

我们旨在研究在初级保健中使用房颤(AF)风险预测算法是否能提高 AF 的检出率,优于机会性筛查,并评估相关的预算影响。

方法和结果

符合条件的患者在英国的全科医生处登记,2018/19 年年龄在 65 岁或以上,且在 1 年内有完整的体重、身高、体重指数和收缩压及舒张压记录。评估了三种筛查方案:(i)机会性筛查和诊断(标准护理);(ii)用算法替代标准护理;(iii)标准护理与算法联合使用。分析考虑了 3 年时间范围,仅考虑国家卫生服务(NHS)成本或同时考虑个人社会服务(PSS)成本的预算影响。方案 1 将发现 79410 例新的 AF 病例(检出差距缩小 22%)。方案 2 将发现 70916 例(差距缩小 19%),方案 3 将发现 99267 例新病例(差距缩小 27%)。这些比率转化为方案 1 可预防 2639 例中风,方案 2 为 2357 例,方案 3 为 3299 例。方案 1 的 3 年 NHS 预算影响将为 4530 万英镑,方案 2 为负 360 万英镑(差异为-92.0%),方案 3 为正 4630 万英镑(差异为 2.2%),但 NHS 加 PSS 的方案则为负 4880 万英镑、负 8040 万英镑(64.8%)和负 7130 万英镑(46.1%)。

结论

在标准机会性筛查的基础上实施 AF 风险预测算法可以缩小 AF 的检出差距,预防中风,同时大幅降低 NHS 和 PSS 联合护理成本。

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