1Surgical Outcomes Center for Kids, and.
2Vanderbilt University School of Medicine, Medical Scientist Training Program.
Neurosurg Focus. 2018 Nov 1;45(5):E2. doi: 10.3171/2018.8.FOCUS17773.
OBJECTIVEModern surgical planning and prognostication requires the most accurate outcomes data to practice evidence-based medicine. For clinicians treating children following traumatic brain injury (TBI) these data are severely lacking. The first aim of this study was to assess published CT classification systems in the authors' pediatric cohort. A pediatric-specific machine-learning algorithm called an artificial neural network (ANN) was then created that robustly outperformed traditional CT classification systems in predicting TBI outcomes in children.METHODSThe clinical records of children under the age of 18 who suffered a TBI and underwent head CT within 24 hours after TBI (n = 565) were retrospectively reviewed.RESULTS"Favorable" outcome (alive with Glasgow Outcome Scale [GOS] score ≥ 4 at 6 months postinjury, n = 533) and "unfavorable" outcome (death at 6 months or GOS score ≤ 3 at 6 months postinjury, n = 32) were used as the primary outcomes. The area under the receiver operating characteristic (ROC) curve (AUC) was used to delineate the strength of each CT grading system in predicting survival (Helsinki, 0.814; Rotterdam, 0.838; and Marshall, 0.781). The AUC for CT score in predicting GOS score ≤ 3, a measure of overall functionality, was similarly predictive (Helsinki, 0.717; Rotterdam, 0.748; and Marshall, 0.663). An ANN was then constructed that was able to predict 6-month outcomes with profound accuracy (AUC = 0.9462 ± 0.0422).CONCLUSIONSThis study showed that machine-learning can be leveraged to more accurately predict TBI outcomes in children.
现代外科手术规划和预后需要最准确的结果数据来实践循证医学。对于治疗创伤性脑损伤 (TBI) 后儿童的临床医生来说,这些数据严重缺乏。本研究的首要目的是评估作者的儿科队列中发表的 CT 分类系统。然后创建了一种名为人工神经网络 (ANN) 的儿科专用机器学习算法,该算法在预测儿童 TBI 结果方面的表现明显优于传统 CT 分类系统。
回顾性分析了年龄在 18 岁以下、TBI 后 24 小时内接受头部 CT 检查的儿童 (n = 565) 的临床记录。
“良好”结局(伤后 6 个月时格拉斯哥结局量表 [GOS] 评分≥4,n = 533)和“不良”结局(伤后 6 个月时死亡或 GOS 评分≤3,n = 32)作为主要结局。接收者操作特征 (ROC) 曲线下的面积 (AUC) 用于描绘每个 CT 分级系统预测生存率的强度(赫尔辛基,0.814;鹿特丹,0.838;马歇尔,0.781)。预测总体功能 GOS 评分≤3 的 CT 评分的 AUC 也具有类似的预测性(赫尔辛基,0.717;鹿特丹,0.748;马歇尔,0.663)。然后构建了一个 ANN,能够以极高的准确性预测 6 个月的结局(AUC = 0.9462 ± 0.0422)。
本研究表明,可以利用机器学习更准确地预测儿童 TBI 结局。