Department of Neurosurgery, Nagoya University Graduate School of Medicine, 65 Tsurumai-cho, Showa-ku, Nagoya, 466-8550, Japan.
Division of Neurogenetics, Nagoya University Graduate School of Medicine, Nagoya, Japan.
Pituitary. 2023 Apr;26(2):237-249. doi: 10.1007/s11102-023-01311-w. Epub 2023 Mar 30.
Delayed hyponatremia (DHN), a unique complication, is the leading cause of unexpected readmission after pituitary surgery. Therefore, this study aimed to develop tools for predicting postoperative DHN in patients undergoing endoscopic transsphenoidal surgery (eTSS) for pituitary neuroendocrine tumors (PitNETs).
This was a single-center, retrospective study involving 193 patients with PitNETs who underwent eTSS. The objective variable was DHN, defined as serum sodium levels < 135 mmol/L at ≥ 1 time between post operative days 3 and 9. We trained four machine learning models to predict this objective variable using the clinical variables available preoperatively and on the first postoperative day. The clinical variables included patient characteristics, pituitary-related hormone levels, blood test results, radiological findings, and postoperative complications.
The random forest (RF) model demonstrated the highest (0.759 ± 0.039) area under the curve of the receiver operating characteristic curve (ROC-AUC), followed by the support vector machine (0.747 ± 0.034), the light gradient boosting machine (LGBM: 0.738 ± 0.026), and the logistic regression (0.710 ± 0.028). The highest accuracy (0.746 ± 0.029) was observed in the LGBM model. The best-performing RF model was based on 24 features, nine of which were clinically available preoperatively.
The proposed machine learning models with pre- and post-resection features predicted DHN after the resection of PitNETs.
迟发性低钠血症(DHN)是一种独特的并发症,是垂体手术后意外再入院的主要原因。因此,本研究旨在为内镜经蝶窦手术(eTSS)治疗垂体神经内分泌肿瘤(PitNETs)的患者开发预测术后 DHN 的工具。
这是一项单中心、回顾性研究,纳入了 193 例接受 eTSS 的 PitNETs 患者。因变量为 DHN,定义为术后第 3 至 9 天至少 1 次血清钠水平<135mmol/L。我们使用术前和术后第 1 天的临床变量训练了四个机器学习模型来预测这个因变量。临床变量包括患者特征、垂体相关激素水平、血液检查结果、影像学发现和术后并发症。
随机森林(RF)模型的受试者工作特征曲线(ROC-AUC)下面积最高(0.759±0.039),其次是支持向量机(0.747±0.034)、轻梯度提升机(LGBM:0.738±0.026)和逻辑回归(0.710±0.028)。LGBM 模型的准确率最高(0.746±0.029)。表现最佳的 RF 模型基于 24 个特征,其中 9 个特征在术前即可获得。
基于术前和术后切除特征的机器学习模型预测了切除 PitNETs 后 DHN 的发生。