A Bayesian analysis integrating expert beliefs to better understand how new evidence ought to update what we believe: a use case of chiropractic care and acute lumbar disc herniation with early surgery.

IF 3.9 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES BMC Medical Research Methodology Pub Date : 2024-11-15 DOI:10.1186/s12874-024-02359-3
Léonie Hofstetter, Michelle Fontana, George A Tomlinson, Cesar A Hincapié
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Abstract

Background: A Bayesian approach may be useful in the study of possible treatment-related rare serious adverse events, particularly when there are strongly held opinions in the absence of good quality previous data. We demonstrate the application of a Bayesian analysis by integrating expert opinions with population-based epidemiologic data to investigate the association between chiropractic care and acute lumbar disc herniation (LDH) with early surgery.

Methods: Experts' opinions were used to derive probability distributions of the incidence rate ratio (IRR) for acute LDH requiring early surgery associated with chiropractic care. A 'community of priors' (enthusiastic, neutral, and skeptical) was built by dividing the experts into three groups according to their perceived mean prior IRR. The likelihood was formed from the results of a population-based epidemiologic study comparing the relative incidence of acute LDH with early surgery after chiropractic care versus primary medical care, with sensitive and specific outcome case definitions and surgery occurring within 8- and 12-week time windows after acute LDH. The robustness of results to the community of priors and specific versus sensitive case definitions was assessed.

Results: The most enthusiastic 25% of experts had a prior IRR of 0.42 (95% credible interval [CrI], 0.03 to 1.27), while the most skeptical 25% of experts had a prior IRR of 1.66 (95% CrI, 0.55 to 4.25). The Bayesian posterior estimates across priors and outcome definitions ranged from an IRR of 0.39 (95% CrI, 0.21 to 0.68) to an IRR of 1.40 (95% CrI, 0.52 to 2.55). With a sensitive definition of the outcome, the analysis produced results that confirmed prior enthusiasts' beliefs and that were precise enough to shift prior beliefs of skeptics. With a specific definition of the outcome, the results were not strong enough to overcome prior skepticism.

Conclusion: A Bayesian analysis integrating expert beliefs highlighted the value of eliciting informative priors to better understand how new evidence ought to update prior existing beliefs. Clinical epidemiologists are encouraged to integrate informative and expert opinions representing the end-user community of priors in Bayesian analyses, particularly when there are strongly held opinions in the absence of definitive scientific evidence.

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贝叶斯分析法整合专家信念,更好地理解新证据应如何更新我们的信念:脊骨神经治疗和急性腰椎间盘突出症与早期手术的应用案例。
背景:贝叶斯方法可能有助于研究可能与治疗相关的罕见严重不良事件,尤其是在缺乏高质量的既往数据而存在强烈观点的情况下。我们将专家意见与基于人群的流行病学数据相结合,研究了脊骨神经治疗与急性腰椎间盘突出症(LDH)及早手术之间的关联,从而展示了贝叶斯分析法的应用:方法: 利用专家意见推导出脊骨神经治疗与需要早期手术的急性腰椎间盘突出症发病率比(IRR)的概率分布。根据专家的先验IRR平均值将其分为三组,从而建立了一个 "先验群体"(热情、中立和怀疑)。这种可能性是根据一项基于人群的流行病学研究结果形成的,该研究比较了脊骨神经治疗后急性LDH与早期手术的相对发生率,以及急性LDH后8周和12周内手术的敏感性和特异性结果病例定义。评估了结果对社区先验和特定与敏感病例定义的稳健性:结果:最热心的 25% 专家的先验 IRR 为 0.42(95% 可信区间 [CrI],0.03 至 1.27),而最持怀疑态度的 25% 专家的先验 IRR 为 1.66(95% 可信区间 [CrI],0.55 至 4.25)。不同先验和结果定义的贝叶斯后验估计值从 0.39(95% CrI,0.21 至 0.68)到 1.40(95% CrI,0.52 至 2.55)不等。在对结果进行敏感定义的情况下,分析得出的结果证实了热衷者先前的观点,并且精确到足以改变怀疑论者先前的观点。在对结果进行特定定义的情况下,分析结果不足以克服先前的怀疑态度:整合专家信念的贝叶斯分析凸显了激发信息先验的价值,从而更好地理解新证据应如何更新先验信念。我们鼓励临床流行病学家在贝叶斯分析中整合代表先验的最终用户群体的信息和专家意见,尤其是在缺乏明确科学证据的情况下存在强烈意见时。
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来源期刊
BMC Medical Research Methodology
BMC Medical Research Methodology 医学-卫生保健
CiteScore
6.50
自引率
2.50%
发文量
298
审稿时长
3-8 weeks
期刊介绍: BMC Medical Research Methodology is an open access journal publishing original peer-reviewed research articles in methodological approaches to healthcare research. Articles on the methodology of epidemiological research, clinical trials and meta-analysis/systematic review are particularly encouraged, as are empirical studies of the associations between choice of methodology and study outcomes. BMC Medical Research Methodology does not aim to publish articles describing scientific methods or techniques: these should be directed to the BMC journal covering the relevant biomedical subject area.
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