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医生的医疗事故索赔历史与后续索赔之间的关系。过去能否预测未来?

The relationship between physicians' malpractice claims history and later claims. Does the past predict the future?

作者信息

Bovbjerg R R, Petronis K R

机构信息

Urban Institute, Health Policy Center, Washington, DC 20037.

出版信息

JAMA. 1994 Nov 9;272(18):1421-6.

PMID:7933423
Abstract

OBJECTIVE

To investigate whether an association exists between physicians' past and subsequent claims of medical malpractice, particularly whether a history of even unpaid claims ($0) or small claims (< $30,000) predicts subsequently higher rates of claims, especially large paid claims (> or = $30,000) (all in 1990 dollars).

DATA

All medical malpractice claims closed in the state of Florida from January 1975 through August 1988 (N = 20,016, 92% involving physicians), matched with the American Medical Association's Physician Masterfile on all practicing physicians in the state of Florida during that period. Claims history was automated into physician-year claims files, then partitioned into a baseline period (1975 through 1980) and a subsequent period (1981 through 1983). Inconsequential claims were excluded, ie, cases closed without a named claimant and without expense for investigation (30.4% of raw claims).

METHODS

Descriptive analysis of all physician claims; odds ratio analysis of physicians in practice throughout both periods (N = 8247), comparing claims experience in baseline vs subsequent period, adjusted for specialty of practice.

RESULTS

For all consequential physician claims, 60% were unpaid claims, 17% were small paid claims, and 23% were large paid claims. The 8247 continuously practicing physicians had a total of 6614 claims, averaging 0.9 per year, but 59.2% of physicians had no claims in 9 years, only 13.4% had any paid claims, and 7.2% had multiple paid claims. Less than 8% of physicians had any large paid claims during the baseline period, and less than 7% had any in the subsequent period. Physicians with any baseline claims (whether paid or unpaid, small or large, single or multiple) had elevated odds of subsequent claims (whether defined as any claims, any paid claims, any large claims, or multiple claims) relative to physicians with no baseline claims. With a baseline of all small claims, the adjusted odds ratio for any subsequent claim was 2.84 (95% confidence interval [CI], 2.32 to 3.49), for any subsequent paid claim was 2.97 (95% CI, 2.34 to 3.77), for all large subsequent claims was 2.42 (95% CI, 1.76 to 3.33), and for subsequent multiple claims was 2.83 (95% CI, 2.08 to 3.86). Even having a single unpaid baseline claim approximately doubled the odds.

CONCLUSIONS

Claims history had predictive value, even with only unpaid claims. Small paid claims were better predictors than unpaid claims, large paid claims were better predictors than small paid claims, and multiple paid claims were better predictors than single paid claims. Claims history of all kinds is a reasonable statistical measure, eg, for the screening purposes of the National Practitioner Data Bank.

摘要

目的

调查医生过去的医疗事故索赔与其随后的索赔之间是否存在关联,特别是即使是未支付的索赔(0美元)或小额索赔(<30,000美元)的历史记录是否预示着随后更高的索赔率,尤其是大额已支付索赔(≥30,000美元)(均以1990年美元计)。

数据

1975年1月至1988年8月在佛罗里达州结案的所有医疗事故索赔(N = 20,016,92%涉及医生),与同期佛罗里达州所有执业医生的美国医学协会医生主文件相匹配。索赔历史被自动录入医生年度索赔文件,然后分为基线期(1975年至1980年)和随后时期(1981年至1983年)。无关紧要的索赔被排除,即没有指定索赔人且没有调查费用就结案的案件(占原始索赔的30.4%)。

方法

对所有医生索赔进行描述性分析;对两个时期都在执业的医生(N = 8247)进行优势比分析,比较基线期与随后时期的索赔经历,并根据执业专业进行调整。

结果

对于所有重要的医生索赔,60%是未支付索赔,17%是小额已支付索赔,23%是大额已支付索赔。8247名持续执业的医生共有6614起索赔,平均每年0.9起,但59.2%的医生在9年中没有索赔,只有13.4%有任何已支付索赔,7.2%有多次已支付索赔。在基线期,不到8%的医生有任何大额已支付索赔,在随后时期不到7%。与没有基线索赔的医生相比,有任何基线索赔(无论是已支付还是未支付、小额还是大额、单次还是多次)的医生随后索赔(无论是定义为任何索赔、任何已支付索赔、任何大额索赔还是多次索赔)的几率更高。以所有小额索赔为基线,任何随后索赔的调整优势比为2.84(95%置信区间[CI],2.32至3.49),任何随后已支付索赔的调整优势比为2.97(95%CI,2.34至3.77),所有随后大额索赔的调整优势比为2.42(95%CI,1.76至3.33),随后多次索赔的调整优势比为2.83(95%CI,2.08至3.86)。即使只有一次未支付的基线索赔,几率也会增加近一倍。

结论

索赔历史具有预测价值,即使只有未支付的索赔。小额已支付索赔比未支付索赔是更好的预测指标,大额已支付索赔比小额已支付索赔是更好的预测指标,多次已支付索赔比单次已支付索赔是更好的预测指标。各类索赔历史是一种合理的统计指标,例如用于国家执业者数据库的筛选目的。

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