Zanier Olivier, Zoli Matteo, Staartjes Victor E, Alalfi Mohammed O, Guaraldi Federica, Asioli Sofia, Rustici Arianna, Pasquini Ernesto, Faustini-Fustini Marco, Erlic Zoran, Hugelshofer Michael, Voglis Stefanos, Regli Luca, Mazzatenta Diego, Serra Carlo
Machine Intelligence in Clinical Neuroscience (MICN) Laboratory, Department of Neurosurgery, Clinical Neuroscience Center, University Hospital Zurich, University of Zurich, Zurich, Switzerland.
IRCCS Istituto Delle Scienze Neurologiche di Bologna. Programma Neurochirurgia Ipofisi - Pituitary Unit, Bologna, Italy.
Brain Spine. 2023 Aug 28;3:102668. doi: 10.1016/j.bas.2023.102668. eCollection 2023.
Gross total resection (GTR), Biochemical Remission (BR) and restitution of a priorly disrupted hypothalamus pituitary axis (new improvement, IMP) are important factors in pituitary adenoma (PA) resection surgery. Prediction of these metrics using simple and preoperatively available data might help improve patient care and contribute to a more personalized medicine.
This study aims to develop machine learning models predicting GTR, BR, and IMP in PA resection surgery, using preoperatively available data.
With data from patients undergoing endoscopic transsphenoidal surgery for PAs machine learning models for prediction of GTR, BR and IMP were developed and externally validated. Development was carried out on a registry from Bologna, Italy while external validation was conducted using patient data from Zurich, Switzerland.
The model development cohort consisted of 1203 patients. GTR was achieved in 207 (17.2%, 945 (78.6%) missing), BR in 173 (14.4%, 992 (82.5%) missing) and IMP in 208 (17.3%, 167 (13.9%) missing) cases. In the external validation cohort 206 patients were included and GTR was achieved in 121 (58.7%, 32 (15.5%) missing), BR in 46 (22.3%, 145 (70.4%) missing) and IMP in 42 (20.4%, 7 (3.4%) missing) cases. The AUC at external validation amounted to 0.72 (95% CI: 0.63-0.80) for GTR, 0.69 (0.52-0.83) for BR, as well as 0.82 (0.76-0.89) for IMP.
All models showed adequate generalizability, performing similarly in training and external validation, confirming the possible potentials of machine learning in helping to adapt surgical therapy to the individual patient.
全切除(GTR)、生化缓解(BR)以及恢复先前受损的下丘脑 - 垂体轴(新改善,IMP)是垂体腺瘤(PA)切除手术中的重要因素。利用简单且术前可得的数据预测这些指标可能有助于改善患者护理,并推动更个性化的医疗。
本研究旨在利用术前可得的数据,开发预测PA切除手术中GTR、BR和IMP的机器学习模型。
利用接受PA内镜经蝶窦手术患者的数据,开发并外部验证了预测GTR、BR和IMP的机器学习模型。模型开发基于意大利博洛尼亚的一个登记处的数据,而外部验证则使用了瑞士苏黎世患者的数据。
模型开发队列包括1203例患者。207例(17.2%,945例(78.6%)数据缺失)实现了GTR,173例(14.4%,992例(82.5%)数据缺失)实现了BR,208例(17.3%,167例(13.9%)数据缺失)实现了IMP。外部验证队列纳入了206例患者,121例(58.7%,32例(15.5%)数据缺失)实现了GTR,46例(22.3%,145例(70.4%)数据缺失)实现了BR,42例(20.4%,7例(3.4%)数据缺失)实现了IMP。外部验证时,GTR的曲线下面积(AUC)为0.72(95%可信区间:0.63 - 0.80),BR为0.69(0.52 - 0.83),IMP为0.82(0.76 - 0.89)。
所有模型均显示出足够的泛化能力,在训练和外部验证中的表现相似,证实了机器学习在帮助使手术治疗适应个体患者方面的潜在可能性。