Department of Women's Anesthesia, KK Women's and Children's Hospital, 100 Bukit Timah Road, Singapore, 229899, Singapore.
Anesthesiology and Perioperative Sciences Academic Clinical Program, Duke-NUS Medical School, 8 College Road, Singapore, Singapore.
BMC Anesthesiol. 2021 Oct 18;21(1):246. doi: 10.1186/s12871-021-01466-8.
Ultrasonography for neuraxial anesthesia is increasingly being used to identify spinal structures and the identification of correct point of needle insertion to improve procedural success, in particular in obesity. We developed an ultrasound-guided automated spinal landmark identification program to assist anesthetists on spinal needle insertion point with a graphical user interface for spinal anesthesia.
Forty-eight obese patients requiring spinal anesthesia for Cesarean section were recruited in this prospective cohort study. We utilized a developed machine learning algorithm to determine the needle insertion point using automated spinal landmark ultrasound imaging of the lumbar spine identifying the L3/4 interspinous space (longitudinal view) and the posterior complex of dura mater (transverse view). The demographic and clinical characteristics were also recorded.
The first attempt success rate for spinal anesthesia was 79.1% (38/48) (95%CI 65.0 - 89.5%), followed by successful second attempt of 12.5% (6/48), third attempt of 4.2% (2/48) and 4th attempt (4.2% or 2/48). The scanning duration of L3/4 interspinous space and the posterior complex were 21.0 [IQR: 17.0, 32.0] secs and 11.0 [IQR: 5.0, 22.0] secs respectively. There is good correlation between the program recorded depth of the skin to posterior complex and clinician measured depth (r = 0.915).
The automated spinal landmark identification program is able to provide assistance to needle insertion point identification in obese patients. There is good correlation between program recorded and clinician measured depth of the skin to posterior complex of dura mater. Future research may involve imaging algorithm improvement to assist with needle insertion guidance during neuraxial anesthesia.
This study was registered on clinicaltrials.gov registry ( NCT03687411 ) on 22 Aug 2018.
神经轴麻醉的超声检查越来越多地被用于识别脊柱结构和确定正确的进针点,以提高手术成功率,尤其是在肥胖患者中。我们开发了一种超声引导的自动脊柱标志识别程序,通过图形用户界面为脊髓麻醉协助麻醉师进行脊柱针插入点定位。
本前瞻性队列研究纳入了 48 例需行脊髓麻醉行剖宫产术的肥胖患者。我们利用开发的机器学习算法,通过腰椎的自动脊柱标志超声成像确定进针点,识别 L3/4 棘突间空间(纵切面)和硬脊膜后复合体(横切面)。还记录了人口统计学和临床特征。
脊髓麻醉的首次尝试成功率为 79.1%(38/48)(95%CI 65.0-89.5%),随后第二次尝试成功率为 12.5%(6/48),第三次尝试成功率为 4.2%(2/48),第四次尝试成功率为 4.2%(2/48)。L3/4 棘突间空间和硬脊膜后复合体的扫描时间分别为 21.0[IQR:17.0,32.0]秒和 11.0[IQR:5.0,22.0]秒。程序记录的皮肤到硬脊膜后复合体的深度与临床医生测量的深度之间有很好的相关性(r=0.915)。
自动脊柱标志识别程序能够为肥胖患者的进针点识别提供帮助。程序记录的皮肤到硬脊膜后复合体的深度与临床医生测量的深度之间具有良好的相关性。未来的研究可能涉及成像算法的改进,以协助神经轴麻醉中的针插入引导。
本研究于 2018 年 8 月 22 日在 clinicaltrials.gov 注册(NCT03687411)。