术前冷痛敏感性预测术后持续性疼痛:基于机器学习衍生分析的生物标志物开发。
Prediction of persistent post-surgery pain by preoperative cold pain sensitivity: biomarker development with machine-learning-derived analysis.
机构信息
Institute of Clinical Pharmacology, Goethe-University, Theodor-Stern-Kai 7, 60590 Frankfurt am Main, Germany.
Fraunhofer Institute for Molecular Biology and Applied Ecology IME, Project Group Translational Medicine and Pharmacology TMP, Theodor-Stern-Kai 7, 60596 Frankfurt am Main, Germany.
出版信息
Br J Anaesth. 2017 Oct 1;119(4):821-829. doi: 10.1093/bja/aex236.
BACKGROUND
To prevent persistent post-surgery pain, early identification of patients at high risk is a clinical need. Supervised machine-learning techniques were used to test how accurately the patients' performance in a preoperatively performed tonic cold pain test could predict persistent post-surgery pain.
METHODS
We analysed 763 patients from a cohort of 900 women who were treated for breast cancer, of whom 61 patients had developed signs of persistent pain during three yr of follow-up. Preoperatively, all patients underwent a cold pain test (immersion of the hand into a water bath at 2-4 °C). The patients rated the pain intensity using a numerical ratings scale (NRS) from 0 to 10. Supervised machine-learning techniques were used to construct a classifier that could predict patients at risk of persistent pain.
RESULTS
Whether or not a patient rated the pain intensity at NRS=10 within less than 45 s during the cold water immersion test provided a negative predictive value of 94.4% to assign a patient to the "persistent pain" group. If NRS=10 was never reached during the cold test, the predictive value for not developing persistent pain was almost 97%. However, a low negative predictive value of 10% implied a high false positive rate.
CONCLUSIONS
Results provide a robust exclusion of persistent pain in women with an accuracy of 94.4%. Moreover, results provide further support for the hypothesis that the endogenous pain inhibitory system may play an important role in the process of pain becoming persistent.
背景
为了预防持续性术后疼痛,早期识别高危患者是临床需求。本研究采用监督机器学习技术,测试患者在术前进行的冷痛强直试验中的表现,能否准确预测持续性术后疼痛。
方法
我们分析了 900 名接受乳腺癌治疗的女性队列中的 763 名患者,其中 61 名患者在 3 年的随访中出现持续性疼痛的迹象。所有患者在术前均进行冷痛测试(将手浸入 2-4°C 的水浴中)。患者使用数字评分量表(NRS)从 0 到 10 对疼痛强度进行评分。采用监督机器学习技术构建分类器,预测持续性疼痛的风险患者。
结果
患者在冷水浸泡试验中,NRS=10 且疼痛强度评分时间小于 45 秒时,预测持续性疼痛的阴性预测值为 94.4%,可将患者分配到“持续性疼痛”组。如果患者在冷试验中从未达到 NRS=10,则无持续性疼痛的预测值接近 97%。然而,阴性预测值低至 10%意味着假阳性率较高。
结论
结果为女性提供了一种具有 94.4%准确性的持续性疼痛的可靠排除方法。此外,结果进一步支持了内源性疼痛抑制系统可能在疼痛持续性发展过程中发挥重要作用的假说。