Skoch Jesse, Tahir Rizwan, Abruzzo Todd, Taylor John M, Zuccarello Mario, Vadivelu Sudhakar
Division of Neurosurgery, Cincinnati Children's Hospital Medical Center, 3333 Burnet Ave, Cincinnati, OH, 45229, USA.
Department of Neurosurgery, University of Cincinnati College of Medicine, 231 Albert Sabin Way, Cincinnati, OH, 45267, USA.
Childs Nerv Syst. 2017 Dec;33(12):2153-2157. doi: 10.1007/s00381-017-3573-0. Epub 2017 Aug 29.
Artificial neural networks (ANN) are increasingly applied to complex medical problem solving algorithms because their outcome prediction performance is superior to existing multiple regression models. ANN can successfully identify symptomatic cerebral vasospasm (SCV) in adults presenting after aneurysmal subarachnoid hemorrhage (aSAH). Although SCV is unusual in children with aSAH, the clinical consequences are severe. Consequently, reliable tools to predict patients at greatest risk for SCV may have significant value. We applied ANN modeling to a consecutive cohort of pediatric aSAH cases to assess its ability to predict SCV.
A retrospective chart review was conducted to identify patients < 21 years of age who presented with spontaneously ruptured, non-traumatic, non-mycotic, non-flow-related intracranial arterial aneurysms to our institution between January 2002 and January 2015. Demographics, clinical, radiographic, and outcome data were analyzed using an adapted ANN model using learned value nodes from the adult aneurysmal SAH dataset previously reported. The strength of the ANN prediction was measured between - 1 and 1 with - 1 representing no likelihood of SCV and 1 representing high likelihood of SCV.
Sixteen patients met study inclusion criteria. The median age for aSAH patients was 15 years. Ten underwent surgical clipping and 6 underwent endovascular coiling for definitive treatment. One patient experienced SCV and 15 did not. The ANN applied here was able to accurately predict all 16 outcomes. The mean strength of prediction for those who did not exhibit SCV was - 0.86. The strength for the one patient who did exhibit SCV was 0.93.
Adult-derived aneurysmal SAH value nodes can be applied to a simple AAN model to accurately predict SCV in children presenting with aSAH. Further work is needed to determine if ANN models can prospectively predict SCV in the pediatric aSAH population in toto; adapted to include mycotic, traumatic, and flow-related origins as well.
人工神经网络(ANN)越来越多地应用于复杂的医学问题解决算法,因为其结果预测性能优于现有的多元回归模型。ANN能够成功识别成人动脉瘤性蛛网膜下腔出血(aSAH)后出现的症状性脑血管痉挛(SCV)。虽然SCV在儿童aSAH中并不常见,但其临床后果严重。因此,可靠的工具来预测SCV风险最高的患者可能具有重要价值。我们将ANN建模应用于一组连续的儿童aSAH病例,以评估其预测SCV的能力。
进行回顾性病历审查,以确定2002年1月至2015年1月期间在我们机构就诊的21岁以下自发性破裂、非创伤性、非霉菌性、非血流相关性颅内动脉瘤患者。使用从先前报道的成人动脉瘤性SAH数据集中学习到的价值节点,通过一个经过调整的ANN模型分析人口统计学、临床、影像学和结局数据。ANN预测的强度在-1至1之间测量,-1表示SCV可能性为零,1表示SCV可能性高。
16名患者符合研究纳入标准。aSAH患者的中位年龄为15岁。10例接受了手术夹闭,6例接受了血管内栓塞进行确定性治疗。1例患者发生SCV,15例未发生。此处应用的ANN能够准确预测所有16例结局。未出现SCV的患者的平均预测强度为-0.86。出现SCV的1例患者的预测强度为0.93。
源自成人的动脉瘤性SAH价值节点可应用于简单的AAN模型,以准确预测儿童aSAH患者的SCV。需要进一步的研究来确定ANN模型是否能够前瞻性地预测儿童aSAH总体人群中的SCV;同时也需要进行调整以纳入霉菌性、创伤性和血流相关性病因。