Adjei Tricia, Von Rosenberg Wilhelm, Goverdovsky Valentin, Powezka Katarzyna, Jaffer Usman, Mandic Danilo P
Department of Electrical and Electronic EngineeringImperial College London.
St. Mary's Hospital.
IEEE J Transl Eng Health Med. 2017 Sep 8;5:2800310. doi: 10.1109/JTEHM.2017.2734647. eCollection 2017.
Varicose vein surgeries are routine outpatient procedures, which are often performed under local anaesthesia. The use of local anaesthesia both minimises the risk to patients and is cost effective, however, a number of patients still experience pain during surgery. Surgical teams must therefore decide to administer either a general or local anaesthetic based on their subjective qualitative assessment of patient anxiety and sensitivity to pain, without any means to objectively validate their decision. To this end, we develop a 3-D polynomial surface fit, of physiological metrics and numerical pain ratings from patients, in order to model the link between the modulation of cardiovascular responses and pain in varicose vein surgeries. Spectral and structural complexity features found in heart rate variability signals, recorded immediately prior to 17 varicose vein surgeries, are used as pain metrics. The so obtained pain prediction model is validated through a leave-one-out validation, and achieved a Kappa coefficient of 0.72 (substantial agreement) and an area below a receiver operating characteristic curve of 0.97 (almost perfect accuracy). This proof-of-concept study conclusively demonstrates the feasibility of the accurate classification of pain sensitivity, and introduces a mathematical model to aid clinicians in the objective administration of the safest and most cost-effective anaesthetic to individual patients.
静脉曲张手术是常规门诊手术,通常在局部麻醉下进行。使用局部麻醉既能将患者风险降至最低,又具有成本效益,然而,仍有一些患者在手术过程中感到疼痛。因此,手术团队必须根据对患者焦虑和疼痛敏感度的主观定性评估来决定使用全身麻醉还是局部麻醉,而没有任何客观验证其决定的方法。为此,我们对患者的生理指标和数字疼痛评分进行三维多项式曲面拟合,以建立静脉曲张手术中心血管反应调节与疼痛之间的联系模型。在17例静脉曲张手术前立即记录的心率变异性信号中发现的频谱和结构复杂性特征被用作疼痛指标。通过留一法验证对如此获得的疼痛预测模型进行验证,其卡帕系数为0.72(高度一致),受试者工作特征曲线下面积为0.97(几乎完美的准确性)。这项概念验证研究最终证明了准确分类疼痛敏感度的可行性,并引入了一个数学模型,以帮助临床医生客观地为个体患者施用最安全、最具成本效益的麻醉剂。