The long-term health effects of attending a selective school: a natural experiment

被引:6
作者
Butler, Jessica [1 ]
Black, Corri [1 ]
Craig, Peter [2 ]
Dibben, Chris [3 ]
Dundas, Ruth [2 ]
Boon, Michelle Hilton [2 ]
Johnston, Marjorie [1 ]
Popham, Frank [2 ]
机构
[1] Univ Aberdeen, Ctr Hlth Data Sci, Aberdeen AB25 2ZD, Scotland
[2] Univ Glasgow, MRC CSO Social & Publ Hlth Sci Unit, 200 Renfield St, Glasgow G2 3AX, Lanark, Scotland
[3] Univ Edinburgh, Inst Geog, Drummond St, Edinburgh EH8 9XP, Midlothian, Scotland
基金
英国医学研究理事会; 英国经济与社会研究理事会;
关键词
FUNDAMENTAL CAUSES; EDUCATION; INEQUALITIES; METAANALYSIS; MORTALITY; QUALITY; COHORT;
D O I
10.1186/s12916-020-01536-7
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Education is widely associated with better physical and mental health, but isolating its causal effect is difficult because education is linked with many socioeconomic advantages. One way to isolate education's effect is to consider environments where similar students are assigned to different educational experiences based on objective criteria. Here we measure the health effects of assignment to selective schooling based on test score, a widely debated educational policy. Methods In 1960s Britain, children were assigned to secondary schools via a test taken at age 11. We used regression discontinuity analysis to measure health differences in 5039 people who were separated into selective and non-selective schools this way. We measured selective schooling's effect on six outcomes: mid-life self-reports of health, mental health, and life limitation due to health, as well as chronic disease burden derived from hospital records in mid-life and later life, and the likelihood of dying prematurely. The analysis plan was accepted as a registered report while we were blind to the health outcome data. Results Effect estimates for selective schooling were as follows: self-reported health, 0.1 worse on a 4-point scale (95%CI - 0.2 to 0); mental health, 0.2 worse on a 16-point scale (- 0.5 to 0.1); likelihood of life limitation due to health, 5 percentage points higher (- 1 to 10); mid-life chronic disease diagnoses, 3 fewer/100 people (- 9 to + 4); late-life chronic disease diagnoses, 9 more/100 people (- 3 to + 20); and risk of dying before age 60, no difference (- 2 to 3 percentage points). Extensive sensitivity analyses gave estimates consistent with these results. In summary, effects ranged from 0.10-0.15 standard deviations worse for self-reported health, and from 0.02 standard deviations better to 0.07 worse for records-derived health. However, they were too imprecise to allow the conclusion that selective schooling was detrimental. Conclusions We found that people who attended selective secondary school had more advantaged economic backgrounds, higher IQs, higher likelihood of getting a university degree, and better health. However, we did not find that selective schooling itself improved health. This lack of a positive influence of selective secondary schooling on health was consistent despite varying a wide range of model assumptions.
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页数:15
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