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评估全州全因未来一年死亡率:一项对生活质量、资源利用和医疗无效性有影响的前瞻性研究。

Assessing Statewide All-Cause Future One-Year Mortality: Prospective Study With Implications for Quality of Life, Resource Utilization, and Medical Futility.

作者信息

Guo Yanting, Zheng Gang, Fu Tianyun, Hao Shiying, Ye Chengyin, Zheng Le, Liu Modi, Xia Minjie, Jin Bo, Zhu Chunqing, Wang Oliver, Wu Qian, Culver Devore S, Alfreds Shaun T, Stearns Frank, Kanov Laura, Bhatia Ajay, Sylvester Karl G, Widen Eric, McElhinney Doff B, Ling Xuefeng Bruce

机构信息

School of Management, Zhejiang University, Hangzhou, China.

Department of Surgery, Stanford University, Stanford, CA, United States.

出版信息

J Med Internet Res. 2018 Jun 4;20(6):e10311. doi: 10.2196/10311.

DOI:10.2196/10311
PMID:29866643
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6066632/
Abstract

BACKGROUND

For many elderly patients, a disproportionate amount of health care resources and expenditures is spent during the last year of life, despite the discomfort and reduced quality of life associated with many aggressive medical approaches. However, few prognostic tools have focused on predicting all-cause 1-year mortality among elderly patients at a statewide level, an issue that has implications for improving quality of life while distributing scarce resources fairly.

OBJECTIVE

Using data from a statewide elderly population (aged ≥65 years), we sought to prospectively validate an algorithm to identify patients at risk for dying in the next year for the purpose of minimizing decision uncertainty, improving quality of life, and reducing futile treatment.

METHODS

Analysis was performed using electronic medical records from the Health Information Exchange in the state of Maine, which covered records of nearly 95% of the statewide population. The model was developed from 125,896 patients aged at least 65 years who were discharged from any care facility in the Health Information Exchange network from September 5, 2013, to September 4, 2015. Validation was conducted using 153,199 patients with same inclusion and exclusion criteria from September 5, 2014, to September 4, 2016. Patients were stratified into risk groups. The association between all-cause 1-year mortality and risk factors was screened by chi-squared test and manually reviewed by 2 clinicians. We calculated risk scores for individual patients using a gradient tree-based boost algorithm, which measured the probability of mortality within the next year based on the preceding 1-year clinical profile.

RESULTS

The development sample included 125,896 patients (72,572 women, 57.64%; mean 74.2 [SD 7.7] years). The final validation cohort included 153,199 patients (88,177 women, 57.56%; mean 74.3 [SD 7.8] years). The c-statistic for discrimination was 0.96 (95% CI 0.93-0.98) in the development group and 0.91 (95% CI 0.90-0.94) in the validation cohort. The mortality was 0.99% in the low-risk group, 16.75% in the intermediate-risk group, and 72.12% in the high-risk group. A total of 99 independent risk factors (n=99) for mortality were identified (reported as odds ratios; 95% CI). Age was on the top of list (1.41; 1.06-1.48); congestive heart failure (20.90; 15.41-28.08) and different tumor sites were also recognized as driving risk factors, such as cancer of the ovaries (14.42; 2.24-53.04), colon (14.07; 10.08-19.08), and stomach (13.64; 3.26-86.57). Disparities were also found in patients' social determinants like respiratory hazard index (1.24; 0.92-1.40) and unemployment rate (1.18; 0.98-1.24). Among high-risk patients who expired in our dataset, cerebrovascular accident, amputation, and type 1 diabetes were the top 3 diseases in terms of average cost in the last year of life.

CONCLUSIONS

Our study prospectively validated an accurate 1-year risk prediction model and stratification for the elderly population (≥65 years) at risk of mortality with statewide electronic medical record datasets. It should be a valuable adjunct for helping patients to make better quality-of-life choices and alerting care givers to target high-risk elderly for appropriate care and discussions, thus cutting back on futile treatment.

摘要

背景

对于许多老年患者而言,尽管许多积极的医疗手段会带来不适并降低生活质量,但在生命的最后一年仍会花费不成比例的医疗保健资源和支出。然而,很少有预后工具专注于在全州范围内预测老年患者的全因1年死亡率,这一问题对于在公平分配稀缺资源的同时改善生活质量具有重要意义。

目的

利用来自全州老年人口(年龄≥65岁)的数据,我们试图前瞻性地验证一种算法,以识别未来一年内有死亡风险的患者,从而将决策不确定性降至最低,改善生活质量,并减少无效治疗。

方法

使用缅因州健康信息交换中心的电子病历进行分析,该病历涵盖了全州近95%人口的记录。该模型是根据2013年9月5日至2015年9月4日期间从健康信息交换网络中的任何护理机构出院的至少65岁的125,896名患者建立的。使用2014年9月5日至2016年9月4日期间具有相同纳入和排除标准的153,199名患者进行验证。患者被分层到风险组。通过卡方检验筛选全因1年死亡率与风险因素之间的关联,并由2名临床医生进行人工审核。我们使用基于梯度树的提升算法为个体患者计算风险评分,该算法根据前一年的临床特征测量未来一年内的死亡概率。

结果

开发样本包括125,896名患者(72,572名女性,57.64%;平均年龄74.2 [标准差7.7]岁)。最终验证队列包括153,199名患者(88,177名女性,57.56%;平均年龄74.3 [标准差7.8]岁)。开发组中用于区分的c统计量为0.96(95%置信区间0.93 - 0.98),验证队列中为0.91(95%置信区间0.90 - 0.94)。低风险组的死亡率为0.99%,中风险组为16.75%,高风险组为72.12%。共识别出99个独立的死亡风险因素(n = 99)(报告为比值比;95%置信区间)。年龄位居榜首(1.41;1.06 - 1.48);充血性心力衰竭(20.90;15.41 - 28.08)以及不同的肿瘤部位也被视为主要风险因素,如卵巢癌(14.42;2.24 - 53.04)、结肠癌(14.07;10.08 - 19.08)和胃癌(13.64;3.26 - 86.57)。在患者的社会决定因素方面也发现了差异,如呼吸危害指数(1.24;0.92 - 1.40)和失业率(1.18;0.98 - 1.24)。在我们数据集中死亡的高风险患者中,脑血管意外、截肢和1型糖尿病是生命最后一年平均费用最高的前3种疾病。

结论

我们的研究利用全州电子病历数据集前瞻性地验证了一种针对有死亡风险的老年人群(≥65岁)的准确1年风险预测模型和分层方法。它对于帮助患者做出更好的生活质量选择以及提醒护理人员针对高风险老年人进行适当护理和讨论具有重要价值,从而减少无效治疗。

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