Department of Management Science and Engineering, Stanford University, Stanford, California, United States of America.
Department of Biomedical Data Sciences, Stanford University, Stanford, California, United States of America.
PLoS One. 2019 Feb 6;14(2):e0210575. doi: 10.1371/journal.pone.0210575. eCollection 2019.
Widely-prescribed prodrug opioids (e.g., hydrocodone) require conversion by liver enzyme CYP-2D6 to exert their analgesic effects. The most commonly prescribed antidepressant, selective serotonin reuptake inhibitors (SSRIs), inhibits CYP-2D6 activity and therefore may reduce the effectiveness of prodrug opioids. We used a machine learning approach to identify patients prescribed a combination of SSRIs and prodrug opioids postoperatively and to examine the effect of this combination on postoperative pain control. Using EHR data from an academic medical center, we identified patients receiving surgery over a 9-year period. We developed and validated natural language processing (NLP) algorithms to extract depression-related information (diagnosis, SSRI use, symptoms) from structured and unstructured data elements. The primary outcome was the difference between preoperative pain score and postoperative pain at discharge, 3-week and 8-week time points. We developed computational models to predict the increase or decrease in the postoperative pain across the 3 time points by using the patient's EHR data (e.g. medications, vitals, demographics) captured before surgery. We evaluate the generalizability of the model using 10-fold cross-validation method where the holdout test method is repeated 10 times and mean area-under-the-curve (AUC) is considered as evaluation metrics for the prediction performance. We identified 4,306 surgical patients with symptoms of depression. A total of 14.1% were prescribed both an SSRI and a prodrug opioid, 29.4% were prescribed an SSRI and a non-prodrug opioid, 18.6% were prescribed a prodrug opioid but were not on SSRIs, and 37.5% were prescribed a non-prodrug opioid but were not on SSRIs. Our NLP algorithm identified depression with a F1 score of 0.95 against manual annotation of 300 randomly sampled clinical notes. On average, patients receiving prodrug opioids had lower average pain scores (p<0.05), with the exception of the SSRI+ group at 3-weeks postoperative follow-up. However, SSRI+/Prodrug+ had significantly worse pain control at discharge, 3 and 8-week follow-up (p < .01) compared to SSRI+/Prodrug- patients, whereas there was no difference in pain control among the SSRI- patients by prodrug opioid (p>0.05). The machine learning algorithm accurately predicted the increase or decrease of the discharge, 3-week and 8-week follow-up pain scores when compared to the pre-operative pain score using 10-fold cross validation (mean area under the receiver operating characteristic curve 0.87, 0.81, and 0.69, respectively). Preoperative pain, surgery type, and opioid tolerance were the strongest predictors of postoperative pain control. We provide the first direct clinical evidence that the known ability of SSRIs to inhibit prodrug opioid effectiveness is associated with worse pain control among depressed patients. Current prescribing patterns indicate that prescribers may not account for this interaction when choosing an opioid. The study results imply that prescribers might instead choose direct acting opioids (e.g. oxycodone or morphine) in depressed patients on SSRIs.
广泛使用的前体药物类阿片(如氢可酮)需要通过肝酶 CYP-2D6 转化才能发挥其镇痛作用。最常开的抗抑郁药,选择性 5-羟色胺再摄取抑制剂(SSRIs),抑制 CYP-2D6 的活性,因此可能会降低前体药物类阿片的疗效。我们使用机器学习方法来识别术后同时开处方 SSRIs 和前体药物类阿片的患者,并研究这种组合对术后疼痛控制的影响。我们使用来自学术医疗中心的电子病历 (EHR) 数据,确定了在 9 年期间接受手术的患者。我们开发并验证了自然语言处理 (NLP) 算法,以从结构化和非结构化数据元素中提取与抑郁相关的信息(诊断、SSRIs 使用、症状)。主要结局是术前疼痛评分与出院时、3 周和 8 周时的术后疼痛之间的差异。我们开发了计算模型,通过使用患者手术前的 EHR 数据(例如药物、生命体征、人口统计学)来预测 3 个时间点的术后疼痛增加或减少。我们使用 10 折交叉验证方法评估模型的泛化能力,其中保留测试方法重复 10 次,考虑平均曲线下面积 (AUC) 作为预测性能的评估指标。我们确定了 4306 名有抑郁症状的手术患者。共有 14.1%的患者同时开了 SSRI 和前体药物类阿片,29.4%的患者同时开了 SSRI 和非前体药物类阿片,18.6%的患者开了前体药物类阿片但未开 SSRIs,37.5%的患者开了非前体药物类阿片但未开 SSRIs。我们的 NLP 算法在对 300 份随机抽样的临床记录进行手动注释时,识别出抑郁的 F1 评分为 0.95。平均而言,接受前体药物类阿片的患者疼痛评分较低(p<0.05),但术后 3 周随访的 SSRI+组除外。然而,与 SSRI+/Prodrug- 患者相比,SSRI+/Prodrug+ 在出院、3 周和 8 周随访时疼痛控制明显更差(p <.01),而 SSRI- 患者的疼痛控制则不受前体药物类阿片的影响(p>0.05)。与术前疼痛评分相比,机器学习算法在使用 10 折交叉验证时准确预测了出院、3 周和 8 周随访时疼痛评分的增加或减少(平均接收者操作特征曲线下面积分别为 0.87、0.81 和 0.69)。术前疼痛、手术类型和阿片类药物耐受是术后疼痛控制的最强预测因素。我们提供了第一个直接的临床证据,即 SSRIs 抑制前体药物类阿片类药物有效性的已知能力与抑郁患者的疼痛控制较差有关。目前的处方模式表明,开处方者在选择阿片类药物时可能没有考虑到这种相互作用。研究结果表明,开处方者可能会选择在 SSRIs 上使用直接作用的阿片类药物(如羟考酮或吗啡)。