Unit of Neurosurgery, Fondazione IRCCS Ca' Granda Ospedale Maggiore Policlinico, Milan, Italy -
Department of Oncology and Hemato-Oncology, University of Milan, Milan, Italy -
J Neurosurg Sci. 2023 Aug;67(4):393-407. doi: 10.23736/S0390-5616.21.05295-4. Epub 2021 Aug 3.
Despite advances in endoscopic transnasal transsphenoidal surgery (E-TNS) for pituitary adenomas (PAs), cerebrospinal fluid (CSF) leakage remains a life-threatening complication predisposing to major morbidity and mortality. In the current study we developed a supervised ML model able to predict the risk of intraoperative CSF leakage by comparing different machine learning (ML) methods and explaining the functioning and the rationale of the best performing algorithm.
A retrospective cohort of 238 patients treated via E-TNS for PAs was selected. A customized pipeline of several ML models was programmed and trained; the best five models were tested on a hold-out test and the best classifier was then prospectively validated on a cohort of 35 recently treated patients.
Intraoperative CSF leak occurred in 54 (22,6%) of 238 patients. The most important risk's predictors were: non secreting status, older age, x-, y- and z-axes diameters, ostedural invasiveness, volume, ICD and R-ratio. The random forest (RF) classifier outperformed other models, with an AUC of 0.84, high sensitivity (86%) and specificity (88%). Positive predictive value and negative predictive value were 88% and 80% respectively. F1 score was 0.84. Prospective validation confirmed outstanding performance metrics: AUC (0.81), sensitivity (83%), specificity (79%), negative predictive value (95%) and F1 score (0.75).
The RF classifier showed the best performance across all models selected. RF models might predict surgical outcomes in heterogeneous multimorbid and fragile populations outperforming classical statistical analyses and other ML models (SVM, ANN etc.), improving patient management and reducing preventable morbidity and additional costs.
尽管经鼻蝶窦内镜手术(E-TNS)在治疗垂体腺瘤(PA)方面取得了进展,但脑脊液(CSF)漏仍然是一种危及生命的并发症,可导致严重的发病率和死亡率。在本研究中,我们开发了一个监督机器学习(ML)模型,通过比较不同的机器学习(ML)方法来预测术中 CSF 漏的风险,并解释表现最佳算法的功能和原理。
选择了 238 例接受 E-TNS 治疗的 PA 患者的回顾性队列。编程并训练了一个定制的多个 ML 模型流水线;在保留测试中测试了最好的五个模型,然后在最近治疗的 35 例患者的队列中前瞻性验证了最佳分类器。
238 例患者中术中 CSF 漏发生 54 例(22.6%)。最重要的风险预测因子为:非分泌状态、年龄较大、x、y 和 z 轴直径、ostedural 侵袭性、体积、ICD 和 R-比值。随机森林(RF)分类器优于其他模型,AUC 为 0.84,敏感性(86%)和特异性(88%)较高。阳性预测值和阴性预测值分别为 88%和 80%。F1 评分为 0.84。前瞻性验证证实了出色的性能指标:AUC(0.81)、敏感性(83%)、特异性(79%)、阴性预测值(95%)和 F1 评分(0.75)。
RF 分类器在所有选定的模型中表现最佳。RF 模型可能会预测异质性、多合并症和脆弱人群的手术结果,优于经典统计分析和其他 ML 模型(SVM、ANN 等),从而改善患者管理,降低可预防的发病率和额外成本。